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Using the PCI-LF - a draft user guide
Paul Tett
Napier University, Edinburgh
(v1.2) 2006
This document explains how to use the Matlab script PCI1ED2 and provides some
explanatory material to help users of the PCI-LF tool. It is best read before using the script
and tool, but you may go directly to the practical instructions (section 5) and run the script
with the test data provided, reading the explanatory material afterwards. A licensed copy of
Matlab version 7 or later is needed in order to run the script.
Table of contents
1. Phytoplankton and sources of phytoplankton data .......................................................22. What is phytoplankton community structure and what is a PCI? .................................33. The PCI-LF explained.................................................................................................44. Lifeform theory ..........................................................................................................85. Using the Matlab script PCI1ED2 to calculate the PCI..............................................10
Overview..................................................................................................................10Running the Matlab script.........................................................................................11Data file preparation .................................................................................................12Preparing the run control file ....................................................................................12Problems...................................................................................................................13
6. Interpreting the PCI-LF.............................................................................................147. Acknowledgements...................................................................................................168. References ................................................................................................................17
Figures and Tables will be found on the page(s) following their legend(s)
Using the PCI-LF page 2 2/7/06
1. Phytoplankton and sources of phytoplankton data
Phytoplankton is the community of pelagic photosynthetic micro-organisms. Typically, this
community includes many species: these, and individual organisms, are referred to as
phytoplankters. The species, as exemplified in Figure 11, belong to several high-level taxa,
such as the diatoms (Baccillariophyta), dinoflagellates (Dinophyta) and prymnesiophyte
flagellates (Haptophyta). Views on the status and relationship of these high-level taxa are
rapidly changing as a result of sequencing of the nucleic acids that dictate the genotypes of
the member species. Table 1* gives a current summary. Species are sometimes also
categorized according to lifeform, exemplified here by pelagic diatoms - those members of
the Bacillariophyta living in the water column, in contrast to benthic diatoms, found in or on
the seabed.
Phytoplankton abundance and species composition is highly variable in time and
space. This variability can be monitored in two main ways. The major taxa differ in their
photosynthetic pigments, and it has been argued that chemical measurements of the
concentrations of these pigments in samples of seawater, or measurements of ocean colour
(by remote, or in-water, sensing) or pigment-specific fluorescence emission (in flow
cytometers), can be used for efficient monitoring. However, with the exception of flow
cytometry for the smallest members of the phytoplankton, such methods have not yet replaced
microscopic analysis as the main source of phytoplankton data.
In the Uttermohl microscopic method, a water sample is preserved with Lugol's
iodine. Phytoplankters present in a few millilitres (or decilitres) of the sample are allowed to
sink onto the transparent base of a sedimentation chamber and there identified and counted
using an inverted microscope. Alternatively, a sample is collected by a fine-mesh net. Such a
net is used, in the form of a moving band, called a silk, in the Continuous Plankton Recorder
(CPR). As part of the CPR Survey, recorders are towed behind ships of opportunity, unit
length of the silk corresponding to a certain distance towed. As each instrument is towed, its
1 Figure 1. Example phytoplankters, drawn living material in samples from Scottish westcoast waters (modified from Tett, 1992). 1-3 are diatoms (Bacillariophyta); 4 - 6 aredinoflagellates (Dinophyta); 7-9 are ' flagellates', 7 being an euglenoid (Euglenophyceae), 8 acryptomonad (Cryptophyta), and 9 a set of 'small flagellates' including at least one member ofthe Haptophyta.* Table 1. Taxonomy of photosynthetic organisms.
Figure 1
Table 1: Taxonomy of photosynthetic organisms
Originally based on Margulis (1993) who put most groups at the level of a phylum, with name ending in -[phyt]a) and the algal taxonomy of Tomas (ed.) (1997), who put most groups at the level of a class, with name ending in -[phyc]eae. However, the high-level taxonomy has been revised according to the 'Tree of Life' web project (Patterson & Sogin, 2001) and the NCBI taxonomy browser (Wheeler et al., 2000; NCBI, 2002). In the 'Group' column the names of the highest-order taxa, which may be considered Kingdoms, are given in CAPITALS; a colon (:) shows hierarchy, a slash (/) separates alternative names.
Group typical marine phytoplanktonic forms example marinegenera
Prokaryote Domain (EU)BACTERIA
CYANOBACTERIA/ Cyanophyta/ Cyanophyceae
cyanobacteria: 'blue-green algae', mostly contain phycobiliprotein; filiamentous or otherwise colonial Oscillatoriales and heterocystous Nostocales include N-fixers; there picoplanktonic members in Chroococcales and Chloroxybacteria (without phycobiliprotein)
Trichodesmium, Synechococcus, Prochlorococcus
Domain EUCARYA/EUKARYOTA, grade PROTOCTISTA
EUGLENOZOA:Euglenida/ -phyceae
elastic-bodied uni- or bi- euglenoid flagellates Eutreptiella
ALVEOLATA: Ciliophora
ciliates: functionally photoautotrophic Mesodinium with symbiotic cryptomonads
Mesodinium = Myrionecta
Dinophyta/ -phyceae
dinoflagellates: 2 dissimilar flagella; many heterotrophic probably originally photoautotrophic by secondary symbiosis with alga. (a) Dinophysidae, (b) Prorocentrales, (c) Gymnodiniales, (d) Gonyaulacales, (h) Pyrocystales.
Dinophysis, Prorocentrum, Gyrodinium, Gonyaulax, Ceratium
Cryptophyta/ -phycea
crytomonads: flagellates with phycobiliprotein, arisen by symbiosis between heterorophic flagellate and red alga
Cryptomonas
STRAMEN-OPHILES (HETEROKONTS):
Bacillariophyta/ -phyceae
diatoms: cells with box-like silicified wall, often forming loose chains, photoautotrophic by secondary symbiosis with alga, (a) Coscinodiscophyceae, centric diatoms - radially symetrical (b) Fragilariophyceae - araphid, pennate diatoms; (c) Bacillariophyceae- raphid, pennate diatoms, bilaterally symmetrical
Asterionella, Chaetoceros, Leptocylindrus, Skeletonema, Thalassiosira, Pseudo-nitzschia
Chrysophyta/ -phyceae
small uni- or bi- flagellates including silicoflagellates with silicified scales or cases. (a) Ochromonodales, (b) Synurales
Ochromonas, Dinobryon
Dictyochophyceae silicoflagellates with many chloroplasts and semi-internal silica skeleton
Dictyocha
Eustigmatophyta/ -phyceae
very small coccoid algae and small flagellates Nannochloropsis
Pelagophyceae small or picoplanktonic coccoid algae Aureococcus,
Raphidophyta/ -phyceae
small bi-flagellates with many chloroplasts Chatonella, Heterosigma
Haptophyta/ -phyceae or Prymesiophyta/ -phyceae
small, bi-flagellates with haptonema: (a) Coccosphaerales, and (b) Isochrysidales, are flagellates, often with coccoliths and/or spiny organic scales; (c) Pavlovales: flagellates; (d) Prymnesiales: flagellates, some colonial.
Pavlova, Chrysochromulina, Emiliana, Phaeocystis
VIRIDIOPLANTAE: Chlorophyta: Chlorophyceae
green algae: (a) Volvocales: small flagellates with 1, 2,4,8 flagella, some forming flagellated colonies; (b) Chlorococcales: small coccoid cells
Brachiomonas, Dunaliella, Nannochloris
Chlorophyta: Prasinophyceae
small flagellates with 1,2,4,8.. stiff flagella and organic scales; some colonial.
Pyramimonas, Tetra-selmis, Halosphaera
Using the PCI-LF page 3 2/7/06
silk is wound into a tank of formaldehyde preservative. Subsequently, back in the SAHFOS
laboratory, the silk is unwound beneath a microscope, allowing the retained phytoplankters to
be identified and counted.
2. What is phytoplankton community structure and what is a PCI?
Some biological communities, such as woods and coral reefs, have recognizable physical
structure as well as a diversity of primary producers, and both can be seen as contributing to
community structure. Thus in the case of temperate deciduous woodland, the member species
are seen as belonging to tree, shrub (or understorey) and herb (or ground) layers of vegetation.
In the case of the phytoplankton, what we mean by 'community structure' includes the
diversity of phytoplankters but not the physical structure element - which is absent,
phytoplankters by definition being passively dispersed through the watery medium. Instead,
the seasonal changes in dominant species can be considered as fulfilling the same ecological
function as layers in woodland.
As in the case of the herb, shrub and tree lifeforms that characterize these layers,
phytoplankters can be categorized into lifeform types. The exact basis for this is part of the
challenge of devising PCIs, but it can be exemplified by the customary distinction between
diatoms and other phytoplankters. This distinction, based on the former's unique need for
silica, leads to a simple index, which is the ratio of diatom cells to cells of other
phytoplankters, averaged over the year or during the growth season. The 'lifeform-based'
PCI-LF is a more sophisticated form of this index, taking account not only of seasonal
variability but also of a 'deeper' understanding of the ecophysiology of different
phytoplankters.
Alternative descriptions of community structure have been derived from the
distribution of abundances amongst species and the way in which the distribution changes
during the year . These descriptions include information-based diversity indexes such as that
of Margalef (1958), and the fitted parameters of log-normal distributions of species-
abundance (Tett, 1973). Such descriptions, however, throw away all information about
species themselves except their relative abundance. Another approach starts from a data set
consisting of regular records of species' abundance and, retaining species' identities, searches
for patterns amongst these abundances. In this approach, such patterns are determined
empirically, by the data themselves, rather than imposed by theory. The patterns might consist
of groups of species that behave seasonally in the same way, or that show similar patterns of
Using the PCI-LF page 4 2/7/06
interannual change. The PCI-MDS, also developed during the project but not further
described here, uses standard multivariate methods to extract patterns and changes in pattern.
Thus, what is meant by phytoplankton community structure might be either the very
complex patterns of seasonal changing abundances apparent in regularly sampled
phytoplankton, or the simpler essences of these patterns captured by empirical statistical
reduction or theory-based aggregation of species into lifeforms.
The phytoplankton community index that is proposed here is not a measure of
structure but of change in structure from a reference state. From the perspective of the Water
Framework Directive, such a state in principle exists in water bodies undisturbed by human
activities. More practically, 'undisturbed' is interpreted to mean 'before the industrial
revolution'. In relation to the original aim of the phytoplankton community index project,
'undisturbed' meant 'not suffering from anthropogenic nutrient enrichment'. However, it
became clear during this project that eutrophication as a driver of change could not be
separated from other pressures on UK marine ecosystems, including those due to natural and
human-driven climate change, fisheries impacts of ecosystems, and other forms of pollution.
Thus the reference state has been deemed to be that of the oldest reliable data, and what we
have sought during the calibration phase of the project are links between the change in
phytoplankton and the change in ecological pressures from the reference state. A final point
is that reference states are (according to the WFD) characteristic of particular water types: for
example we would expect greater numbers of diatoms in well-stirred waters than in stratified
waters during Summer.
3. The PCI-LF explained.
This 'handbook' is intended for users of the PCI-LF tool. In contrast to the PCI-MDS, which
uses well-known if complex statistical methods, the calculation basis for the PCI-LF was
developed during the project. It will be explained here using data from the CPR survey.
Observations of segments of the CPR 'silk' were used to make estimates of the
abundance of phytoplankters per unit of tow. An average value was calculated from the
estimates for all tows in each month in the 'Central North Sea' region for years between 1958
Using the PCI-LF page 5 2/7/06
and 2003. This was done automatically by data extraction software. Figure 22 shows time
series for 1959-1964 of monthly means for pairs of example species: the centric diatoms
Skeletonema costatum and Thalassiosira spp; the (raphid) pennate diatoms Nitzschia seriata
and N. delicatissima (now groups of species of the genus Pseudo-nitzschia) and the
autotrophic, ceratioid dinoflagellates Ceratium fusus and C. furca. The left-hand column
plots the calculated mean abundances on linear axes; in the right hand column are plots of
abundances transformed to logarithms to base 10 after adding 500 cells/tow unit (to deal with
zero values).
The taxa were chosen as examples of lifeform groups. In the final row of Fig. 2 are
shown the aggregate abundances of each pair: pelagic diatoms being the sum of S. costatum
and Thalassiosira spp; weed diatoms the sum of the Nitzschia spp., and dinoflagellates the
sum of the two Ceratium spp. shown above. The log transformation was performed after
adding 500 cells/tow unit to the sums. The groupings used here are sparsely populated, in the
interests of simplifying explanations. For example, the life-form grouping called pelagic
diatoms is likely to include several dozen other taxa of lightly-silicified diatoms as well as S.
costatum and Thalassiosira spp.; the label 'pelagic' is used in contrast to heavily-silicified
'tychopelagic' diatoms.
Lifeform theory is one part of the basis of the PCI-LF. A second part is provided by
the an approach from system state theory. In such theory, a complex system is described in
terms of a set of state variables, a particular state of the system being specified by a set of
values of these variables. Each set of values defines a position in a multidimensional system
state space. In the PCI-LF the set of state variables is the set of lifeform abundances, and the
system state space has axes corresponding to these abundances. This is shown for the
example data set in Figure 3(a)3, where the co-ordinates of each point are the abundances of
pelagic diatoms, weed diatoms and dinoflagellates for a given month. This is a 3-
dimensional space; in principle there will be as many dimensions as there are lifeforms for
2 Figure 2. Timeseries of data from CPR sampling of the Central North Sea, to illustratelifeform variability. Left hand column: linear scale of abundance; right-hand column:logarithmically transformed abundances (after adding 500 cells/tow unit).3 Figure 3 . The idea of ecosystem state space, as instanced in (a) for the 3 phytoplanktoniclife-forms of Figure 2. The co-ordinates for each (red, open circle) point are the abundancesof pelagic diatoms, weed diatoms, and autotrophic dinoflagellates in one of 60 monthsbetween January 1959 and December 1963. The dashed (black) lines link median values foreach of the 12 months of the year. Part (b) is taken from Tett et al. (in press).
1959 1960 1961 1962 1963 19640
0.5
1
1.5
2
2.5x 10
5
year
cells
/tow
uni
texample pelagic diatoms
Skel costThal spp
1959 1960 1961 1962 1963 19642
3
4
5
6
year
log
cells
/tow
uni
t
from CPR − Central North Sea
1959 1960 1961 1962 1963 19640
0.5
1
1.5
2
2.5x 10
5
year
cells
/tow
uni
t
example weed diatoms
Nit serNit del
1959 1960 1961 1962 1963 19642
3
4
5
6
year
log
cells
/tow
uni
t
from CPR − Central North Sea
1959 1960 1961 1962 1963 19640
0.5
1
1.5
2
2.5x 10
5
year
cells
/tow
uni
t
example dinoflagellates
Cer fusCer fur
1959 1960 1961 1962 1963 19642
3
4
5
6
year
log
cells
/tow
uni
t
from CPR − Central North Sea
1959 1960 1961 1962 1963 19640
0.5
1
1.5
2
2.5x 10
5
year
cells
/tow
uni
t
aggregated to lifeforms
pel diaweed diadino
1959 1960 1961 1962 1963 19642
3
4
5
6
year
log
cells
/tow
uni
t
from CPR − Central North Sea
Figure 2
2
4
6
23
45
62
3
4
5
6
log pelagic diatom cells/tow unitlog weed dia cells/tow unit
log
dino
cel
ls/to
w u
nit
(a)
y 2 -
stat
e va
riabl
e 2
y1 - state variable 1
stippled region shows 'normal' domainof healthy ecosystemas it varies seasonally, etc
slight disturbance
undesirable disturbance
(b)
Figure 3
Using the PCI-LF page 6 2/7/06
which data are available; but for simplicity all subsequent examples are plotted in 2-
dimensions, by taking pairs of lifeforms.
Fig 3(b) reproduces a diagram from Tett et al. (in press) which suggests that a
reference domain may be defined for a particular ecosystem component in an appropriate
state space. Deviations from this domain may be small, ultimately returning to set of states
that comprise the reference condition, or large and leading to a new domain. Such large
change is often seen as a shift to an alternative stable state (in fact, to an alternative set of
states), and is deemed to be undesirable. In order to monitor against such changes, what is
needed is to:
• plot points whose coordinates are given by the monthly values of abundances of
each life form,
• find a way to draw an envelope around these points to define a reference
domain,
• and then plot new data into the same state space for comparison with the
reference domain.
The method used to do this, is illustrated in Figure 44. Data from the years 1959-1963
have been chosen to characterize a reference condition, and are plotted in part (a). The co-
ordinates of each point are the abundances of the true lifeform groups pelagic diatoms and
autotrophic dinoflagellates. Each abundance has been summed over all relevant taxa taken
by the CPR, rather than just the species pairs used in Fig. 2. A state-space plot does not have
a time axis because when the state variables of a system plot at a particular set of co-
ordinates, the system is considered to be in a unique state, irrespective of when, or how many
times, it has been in that state. Nevertheless, the points are coloured to show in which season
of the year they were observed, and successive points are linked to each other, to demonstrate
that phytoplankton state tends to describe a seasonal ellipse around an empty centre.
In part (b) the colours and links have been omitted, and envelopes have been drawn,
using a convex hull procedure (Sunday, 2004; Weisstein, 2006), to include all these points on
the assumption that these five years, 1959-1963, provide a reference condition. The convex
hull procedure for 2 dimensions can be likened to stretching an elastic band around the cloud
4 Figure 4. Showing the plotting of reference envelopes and the calculation of the PCI. Inparts (a) to (d) this is shown for pelagic diatoms and autotrophic dinoflagellates; in parts (e)and (f), the process is shown for tychopelagic diatoms and weed diatoms.
2 4 61
2
3
4
5
6
7Reference years 1959−1963min set at: 500 : all data used
months 1−3months 4−6months 7−9months 10−12
(a) CPR Central North Sea
(log10) pel dia/tow unit
(log1
0) a
uto
dino
/tow
uni
t
2 4 61
2
3
4
5
6
7(b) reference data and envelope
(log10) pel dia/tow unit
(log1
0) a
uto
dino
/tow
uni
t
2 4 61
2
3
4
5
6
7(c) reference envelope
(log10) pel dia/tow unit
(log1
0) a
uto
dino
/tow
uni
t
2 4 61
2
3
4
5
6
7(d) change in 1995−1999
(log10) pel dia/tow unit
(log1
0) a
uto
dino
/tow
uni
t
new: 60; out: 21PCI: 0.65
binom prob0.0000
chi−square108.0
2 4 61
2
3
4
5
6
7Reference years 1959−1963min set at: 500 : all data used
months 1−3months 4−6months 7−9months 10−12
(e) CNS−reference
(log10) tycho dia/tow unit
(log1
0) w
eed
dia/
tow
uni
t
2 4 61
2
3
4
5
6
7(f) change in 1995−1999
(log10) tycho dia/tow unit
(log1
0) w
eed
dia/
tow
uni
t
PCI1ED2demo on 01−Jul−2006
new: 60; out: 8PCI: 0.87
binom prob0.0098
chi−square8.3
Figure 4
Using the PCI-LF page 7 2/7/06
of points, thus identifying those points that define the outer envelope. Finding the inner
envelope involved inverting the cloud of points about their centre (with co-ordinates defined
by diatom and dinoflagellate medians), fitting a convex hull, and re-inverting. The existence
of a central hole is justified on theoretical grounds relating to competition for limiting
nutrients, but not further discussed here. Including it makes the PCI more sensitive to change.
In part (c) the reference domain - that included between the inner and outer envelopes
- is shown alone for clarity. In part (d) some new points from a later half-decade are plotted
over the reference envelopes. The value of the PCI-LF is obtained in this case from counting
the number of new points that do not lie within the reference domain. More precisely, the
value is:
PCI = 1 - (new points outside the reference envelope)/(total new points)
A value of one indicates no change, and a value of zero indicates a complete change.
'Outside' includes inside the inner envelope.
Two methods are used to estimate the significance of this PCI value. The properties
of the binomial series can be used to give the exact probability of finding the observed
number of points, or more points, outside the reference envelope. This becomes difficult to
calculate for more than about 200 points, and so a chi-square approximation has also been
used. In both cases, an expectation is required. It is assumed that up to 5% of new points can
be allowed to fall outside the reference envelope without concluding that ecosystem condition
has changed. The binomial and chi-square tests therefore calculate the probability that an
observed fraction of new points could have fallen outside the envelope by chance, given
random sampling from a population of points of which 5% are outside the envelope.
Parts (e) and (f) complete this analysis with a second pair of 2-D plots, for weed
diatoms and tychopelagic diatoms. The pair (d) and (f) are projections onto a flat plane from a
4-D state space, and in principle the PCI-LF should be calculated by counting points 'outside'
a 4-D reference domain. This version of the PCI handbook, however, uses 2D plots and
calculation schemes in the interests of clarity. The user may decide how to combine resulting
sets of PCI values - perhaps as a simple average, or perhaps by giving more weight to the
main components.
Using the PCI-LF page 8 2/7/06
4. Lifeform theory
The idea of marine phytoplanktonic lifeforms dates back at least to Margalef (1978), and may
also influenced by older views from limnology concerning the correspondence between
certain types of phytoplankter and the trophic status of lakes. It is related to ideas about
biomes in terrestrial plant communities, a biome being characterised by a uniform life form
of vegetation, such as grass or coniferous trees (Smith, 1992) and the origin of the lifeform
concept in Raunkiaer's classification of plant life in 1903.
Margelef considered that phytoplanktonic life forms lay along a continuum from r-
selected species, with high growth rates but needing high nutrient concentrations, to K-
selected species, which could accumulate biomass slowly but persistently at low nutrient
concentrations. Such growth was opposed by losses due to vertical mixing or patch
spreading, and so diatoms dominated the spring bloom (high nutrients, high losses) and
dinoflagellates dominated summer conditions (low nutrients, low losses). Later developments
in the theory are reviewed by Tett et al (2003), who distinguished the following groups of
factors that might identify and distinguish lifeforms in relation to ecosystem sustainability:
• functionality in relation to biogeochemical cycling of bio-limiting elements C,
N, P, Si, S, O and perhaps Fe and Co;
• functionality in relation to the marine food web;
• relationship to the physical environment as considered by Margalef and others;
• high level taxonomy.
The argument in respect of sustainability is that the theory of lifeforms used here goes beyond
the Margalevian link to the physico-chemical environment by assuming that an adequate
complement of primary producer lifeforms is required for a properly functioning marine
ecosystem. This theory does not require any particular species to be present for such
functioning, nor does it identify single species as characteristic of particular water types.
Within the taxonomic and morphological diversity of the more than 3000 known
phytoplanktonic species (Sournia et al., 1991) it is possible to discern clearly the distinctive
and important biogeochemical roles of N-fixing cyanobacteria, Si-cycling diatoms (as well as
silicoflagellates), DIC-cycling coccolithopores and S-cycling haptophytes, as well as the more
general carbon and energy-cycling role of different lifeforms under different physical
conditions. As is becoming increasingly apparent, the various combinations of size,
biochemistry, and seasonal patterns of growth and abundance, are important in generating a
Using the PCI-LF page 9 2/7/06
variety of links in the marine pelagic food web. Table 2* sets out a possible list of marine
phytoplanktonic lifeforms for consideration, raising a theoretical question and two practical
matters.
The theoretical question concerns the comparative importance of high-level
taxonomy versus species-level adaptation to niche in determining lifeforms. For example, r-
selected or K-selected might be an evolutionary choice that each new species makes
independently of what related species do. Conversely, some of the evolutionary events that
determine lifeform might have taken place a very long time ago, and thus would now be built
into the characteristics of high-level taxa. Margulis (1993) saw some of these events as
involving the acquisition of semes, gene sequences coding biochemical pathways for
functions such as N-fixation or the production of particular photosynthetic accessory
pigments. Because of repeated symbioses amongst the primitive eukaryotes (Delwiche et al.,
2004), such semes might however be spread widely amongst the major taxa. Riegman (1998)
offers a compromise view, arguing that we should expect the biochemistry of major taxa to
determine their basic characteristics, whilst not forgetting that individual species can evolve
into particular ecological niches (and hence, in my interpretation, into new lifeforms) by
changing some of their nutrient uptake or growth parameters. Table 2 takes a view that is
primarily taxonomic, with some distinctions within the major taxa on the basis of
biogeochemistry (e.g. DIC-cycling coccolithophorids separated from the other haptomonads)
or on relationship to the pelagic environment (e.g. the proposed distinction between 3 types of
diatom). Quantitative distinctions, for example based on nutrient-limited growth half-
saturation constants (Tilman et al., 1982) have not been used, nor has the suggestion (Smayda
& Reynolds, 2001) that marine coastal dinoflagellates should be assigned 9 functional groups,
each characteristic of particular physical conditions.
Nevertheless, the list in Table 2 is quite long. The first practical matter is that
organisms belonging to many of the lifeforms listed here are not routinely recorded or
distinguished during phytoplankton monitoring. The PCI-LF methodology described here
was designed to be used with existing data, and requires information about a minimum of 2
lifeforms to be routinely available. Data on additional lifeforms can be added as it becomes
available, and research continues into the utility of including this extra information. At
* Table 2. Lifeforms of pelagic photoautrophic micro-organisms - a possible list.
Table 2: Lifeforms of pelagic photoautrophic micro-organisms
Includes some myxotrophs, but not heterotrophs
Lifeform High-level taxa:low-level example
biogeo-chemistry
sink-ing
floating orswimming
pig-ments*
other features
diatoms Bacillariophyta: Si-users
pelagic diatoms Thalassiosira + + C many chain-forming
weed diatoms Pseudo-Nitzschia + + C grow on surfaces?
tychopelagic diatoms Gyrosigma ++ ++ C
dinoflagellates Dinophyta:naked gymnodinioid Karenia ++ C
small armoured Prorocentrum,Gonyaulax
++ C cellulose armourplates
large armoured Ceratium ++ C "
ciliates CiliophoraMyrionecta P functionally
autotrophic
flagellateseuglenoids Euglenophyceae:
Eutreptiella+
cryptomonads Cryptophyta:Cryptomonas
+ P
raphidophytes Raphidophyta:Heterosigma
+ C
haptomonads Haptophyta: esp.Prymnesiales:Chrysochromulina
S-cycling + C
green monads Chlorophyta: +silicoflagellates
silicoflagellates Chrysophyta: DinobryonDictyochophyceae:Dictyocha
Si-users: + + C
coccolithophorescoccolithophores Haptophyta:
Coccosphaerales, Isochrysidales: Emiliana
CaCO3plates: ++
S-cycling
+ C
colonialPhaeocystis Haptophyta:Prymnesiale
s: Phaeocystisgelatinous colonies;also monad stage
cynanobacteria CyanobacteriaN-fixing CB N-fixing ++ P filiamentous
non-N-fixing CB ++ P filiamentouspicoplankton
prokaryotic pp Cynanobacteria:Synechoccus
(P)
eukaryotic pp Eustigmatophyta,,Chlorophyta,Pelagophyta: Aureococcus
(C)
* pigments: chlorophyll a (green) always present, often some other chlorophylls; C = plus carotenoids (yellow-brown-orange); P = +phycobilin (red-blue); ( ) = in some some cases
Using the PCI-LF page 10 2/7/06
present, it is the choice of the analyst or data interpreter how species are assigned to lifeform
categories, so long as a scientific case can be made for the assignments, and provided that the
same categorization is used for reference and new conditions. It is hoped that more guidance
will be provided in a later edition of this handbook.
The second practical matter concerns the 'diatom' and 'dinoflagellate' lifeforms. It
may be thought that the use of these categories alone would be merely an extreme case of the
simplifications suggested above, and indeed some use of such aggregated data was made
during the development of the PCI. However, care must be taken to exclude heterotrophic
dinoflagellates from the dinoflagellate category, and an attempt should be made to
distinguish, at least, the 'pelagic' and 'tychopelagic' categories of diatom, since the second are
typically benthic organisms that have been resuspended by strong tidal or wind-wave stirring.
5. Using the Matlab script PCI1ED2 to calculate the PCI
Overview
This handbook refers to five ASCII text files. These are:
• PCI1ED2.m - the main Matlab script used to calculate the PCI; this calls two
additional script files containing functions:
• extract.m
• findenv.m
• cf1.m is a 'run control file' which is read by PCI1ED2 in order to obtain values
of certain parameters used during the run; you will need to modify this file if you use
other data sets other than:
• DDR.txt an example data file with monthly-averaged CPR data for pelagic
diatoms and autotrophic dinoflagellates from the Central North Sea.
The files can be got from: http://www.lifesciences.napier.ac.uk/research/Envbiofiles/PCI.htm
A licensed copy of a recent version of Matlab, and some knowledge of how to use Matlab, are
needed to run the script. Script and data files are best installed in the same directory within
the Matlab 'toolbox'.
To become familiar with the PCI calculation, start by running the script with the
example files provided. Subsequently, in order to run data of your own , you will need to
aggregate species into lifeforms and to make a file of the structure that PCI1ED2 expect to
Using the PCI-LF page 11 2/7/06
read. The run control file may need modification to work with your new data file.
Instructions for doing this are provided in subsections below.
Running the Matlab script
Before you can run PCI1ED2 for the first time, you must edit line 24, which currently reads:
cd('/Applications/MATLAB71/toolbox/Paul/PCI');
and change the address to give the path to the folder or directory where you keep PCI1ED2
and related files. Thereafter, the working directory becomes this directory when PCI1ED2 is
run for the first time in a Matlab session. You must also use the 'set path' command to add
this folder or directory to Matlab's search path. Having done this, you can type the command:
run PCI1ED2
at the prompt in the Matlab Command Window. This will start the script. Unless you have
changed the contents of the run control file cf1.m, the script will begin to process the CPR
data contained in the file DDR.txt. Output should appear automatically in the Command
window, and a Figure window will open to show reference data and envelope.
The script will then stop, awaiting input to the Control window from you. At the
prompt:
Now to plot data for comparison period and calculate PCI : Enter start year for comparison, <RET>
type, for example, 1995 and press the 'return' key. At the prompt:
Enter (inclusive) end year for comparison, <RET>
enter, for example, 1999. The Figure window will now be completed - you may have to click
on it to see. The script will go on to save the Figure as a postscript file5, printing its name to
the Command window.
The script will continue to run, with new inputs sought from the Command Window.
Suggested values for your first trial are included, in bold:
Optionally calculate a time-series of PCI -- Enter (either) 0 to end (or) integer year interval for time-series,
<RET> 5Enter (integer) commencement year for time-series, <RET> 1958
5 Figure 5. Example output from PCI1ED2, using CPR data from the Central North Sea.
1 2 3 4 5 6 71
2
3
4
5
6
7Reference years 1959−1963min set at: 500 : all data used
months 1−3months 4−6months 7−9months 10−12
CPR Central North Sea
(log10) pel diatoms/tow unit
(log1
0) a
uto
dino
flag/
tow
uni
t
1 2 3 4 5 6 71
2
3
4
5
6
7change in 1995−1999
(log10) pel diatoms/tow unit
(log1
0) a
uto
dino
flag/
tow
uni
tdrawn by PCI1ED2 on 01−Jul−2006from DDR.txt
New: 60; Out: 21PCI : 0.65
binom prob0.0000
chi−square108.0 (df=1)
Figure 5
Using the PCI-LF page 12 2/7/06
A table of PCIs value will appear in the Command Window. The final set of prompts, and
suggested inputs, is:
Optionally graph time-series of abundances --Enter (either) 0 to end (or) start year for time-series, <RET> 1960Enter last full year for time-series, <RET> 1970
Another Figure Window will open, to display the time series. The script will then save this
second Figure as a postscript file, printing its name to the Command Window. It will then
end.
Data file preparation
Data must be prepared as a plain text file, with data in tab-separated columns that contain
only numbers. The file DDR.txt provides an example. Its first row is:
1958.083333 1667 0
The first number is the date, as year and decimal fraction. In this case it represents year 1958,
month 1 (January), and might have better been entered as 1958.043 for the middle of January.
The second number is the value for the first life-form in this month. In this case the
lifeform is pelagic diatoms and the units are cells per unit tow. The units can be any
consistent units, including cells per litre and micrograms of carbon biomass per litre. The
third column is the value for the second life-form, in this case autotrophic dinoflagellates.
There may be more columns of lifeform abundance; no limit has been set for the number of
these columns. However, PCI1ED2 will deal only with one pair of columns at a time.
In most cases, the main data preparation task is to aggregate values for the abundance
of individual species (or other taxa) into the chosen lifeforms. Table 3* is the listing of CPR
phytoplankton (and heterotrophic dinoflagellate) taxa, categorized by lifeform, that was used
to prepare the data in DDR.txt.
Preparing the run control file
The run control file mf1.m is a plain text file that is read into the Matlab script when the
script is run. It contains comment lines, starting with %, which have no effect on
calculations, and assignment lines in which a variable is given a name and a value. Values can
be changed, but names must not be changed and semicolons should be left in place. It is
* Table 3: Lifeforms used with CPR taxa
Table 3: Lifeforms used with CPR taxa
CPR surveyshort name full name main group lifeform
member ofOrder
size(1) (2) (3)
ast glac Asterionella glacialis DIATOM pelagic diatom Fragilariales S L C
bacillaria Bacillaria spp. DIATOM pelagic diatom Bacillariales S M C
bacteriastrum Bacteriastrum spp. DIATOM pelagic diatom Chaetocerotales M L C
cer fur Ceratium furca DINOFLAG auto dino Peridiniales L L S
cer fus Ceratium fusus DINOFLAG auto dino Peridiniales L L S
cer hor Ceratium horridum DINOFLAG auto dino Peridiniales L L S
cer lin Ceratium lineatum DINOFLAG auto dino Peridiniales L L S
cer long Ceratium longipes DINOFLAG auto dino Peridiniales L L S
cer mac Ceratium macroceros DINOFLAG auto dino Peridiniales L L S
cer tri Ceratium tripos DINOFLAG auto dino Peridiniales L L S
corethron Corethron spp. DIATOM pelagic diatom Corethrales M M S
cosc con Coscinodiscus concinnus DIATOM tychopelagic diatom Coscinodiscales L M S
cosc spp Coscinodiscus … DIATOM tychopelagic diatom Coscinodiscales L M S
cylindro clo Cylindrotheca closterium DIATOM weed diatom Bacillariales S M S
dact med Dactylosolen mediterr... DIATOM pelagic diatom Rhizosoleniales M M S
dinophysis Dinophysis spp. DINOFLAG auto dino Dinophysiales M M S
dity bri Ditylium brightwellii DIATOM pelagic diatom Lithodesmiales M M S
eucampia Eucampia zodiacus DIATOM pelagic diatom Hemiaulales M L C
frag spp Fragilaria spp. DIATOM pelagic diatom Fragilariales S M C
gonyaulax Gonyaulax spp. DINOFLAG auto dino Gonyaulacales M M S
gyrosigma Gyrosigma spp. DIATOM tychopelagic diatom Naviculales M M S
hyal Chaetoceros sg Hyalochaete DIATOM pelagic diatom Chaetocerotales S M C
leptocyl Leptocylindrus spp. DIATOM pelagic diatom Leptocylindrales S M C
navic sp Navicula spp. DIATOM tychopelagic diatom Naviculales M M S
nit deli(Pseudo-)nitzschiadelicatissima group DIATOM weed diatom Bacillariales S M C
nit ser (Pseudo-)nitzschia seriata grp DIATOM weed diatom Bacillariales S M C
odon aur Odontella … DIATOM pelagic diatom Triceratiales M M S
odon regia Odontella … DIATOM pelagic diatom Triceratiales M M S
odon sin Odontella sinenses DIATOM pelagic diatom Triceratiales M M S
paralia Paralia spp. DIATOM tychopelagic diatom Paraliales M M S
peridin (Proto)peridinium spp. DINOFLAG hetero dino Peridiniales M M S
phaeceros Chaetoceros sg Phaeoceros DIATOM pelagic diatom Chaetocerotales M L C
prorocent Prorocentrum spp. DINOFLAG auto dino Prorocentrales M M S
rhiz al al Rhizosolenia alata alata DIATOM pelagic diatom Rhizosoleniales S L S
rhiz heb semiRhizosolenia hebetatasemispina DIATOM pelagic diatom Rhizosoleniales S L S
rhiz ind Rhizosolenia ind.... DIATOM pelagic diatom Rhizosoleniales S L S
rhiz inerm Rhizosolenia inermis DIATOM pelagic diatom Rhizosoleniales S L S
rhiz shrub Rhizosolenia shrubsolei DIATOM pelagic diatom Rhizosoleniales S L S
rhiz stol Rhizosolenia stolterfolthii DIATOM pelagic diatom Rhizosoleniales S L S
rhiz styl Rhizosolenia styliformis DIATOM pelagic diatom Rhizosoleniales S L S
skel cost Skeletonema costatum DIATOM pelagic diatom Thalassiosirales S M C
thal nitz Thalasionema nitzshoides DIATOM pelagic diatom Thalassionem (4) S L C
thallas Thalassiosira spp. DIATOM pelagic diatom Thalassiosirales M M C
thx long Thlassiothrix long... DIATOM pelagic diatom Thalassionem. (4) S L C(1) width of cells; (2) length - cells, or chains if chainforming, or colonies if colonial; (3) typically single or in chains orcolonies. (4) Thalassionem. = Thalassionematales
Using the PCI-LF page 13 2/7/06
hoped that the comments in this file make it largely self-explanatory; a few control variables,
however, need further explanation:
dfn='DDR.txt';
the variable called dfn is given the (string) value 'DDR.txt', which is the name of the data
file to be read in when PCI1ED2 runs. The first part of the name, given here as DDR, may be
changed, but the single quotes must be left in place, as must the suffix .txt.
% column number and description of first state variablecsv1=2;dsv1='pel diatoms/tow unit';
this tells PCI1ED2 to look for the first state variable in column 2 of the data file - any column
can be specified - and also that the legend pel diatoms/tow unit is to be plotted on
the appropriate axis in Figures. This legend may be changed as needed, preserving the single
quotes.
% data are transformed, log10(z+x)z=500.0;
the value z should be appropriate for the data being processed. As a guide, its value should be
roughly half the minimum observed abundance in the (aggregated) data. For example, if the
units are micrograms C/L and the minimum biomass is 0.1 µg/L, write z=0.05;
% if mf is > 0.5, data are averaged over month% if mf is < 0, data are chosen at random with probability of 1/-mfmf=0;
the value of the variable mf controls how the abundance data are used. If mf=0, all data are
used.
Problems
The script has been run with several types of data, including sets from microscopically
analysed coastal samples (expressed in cells/L) and results generated by a numerical model
(expressed in µg C/L), and a number of numerical problems and software bugs have been
identified and remedied during this testing. During its later stages it was developed using
Matlab 7.1 on Macintosh computers (using OS X version 10.3.9 and the X11 (1.0) Window
System), and it has also been run under Windows XP. The script should thus be moderately
robust, but is not guaranteed to be error-free.
If you encounter problems, you should first seek help from a local Matlab expert, if
you have one. Some Matlab errors will occur if the data files are in an incorrect format, but
Using the PCI-LF page 14 2/7/06
others may be deeper, due to the nature of the data themselves. Nevertheless, they may be
fixable locally. In addition, check the PCI web site for updates to the script:
http://www.lifesciences.napier.ac.uk/research/Envbiofiles/PCI.htm.
A long-term mechanism for dealing with PCI calculation problems is to be considered.
In the meantime, you can also seek help by emailing the author ([email protected]) with a
copy of the data file and the run control file that you used, some comments on what happened,
and a copy of the script if it has been revised locally. This will be an ad hoc arrangement
until other mechanisms are identified in discussion with Defra and the PCI team.
6. Interpreting the PCI-LF
The PCI-LF is a measure of impact in the DPSIR scheme. Intended originally to be used
specifically in the context of eutrophication - i.e. to show the extent of change caused by a
nutrient loading pressure - it has become clear that it is a more general indicator of change
from a reference condition. Thus, as one of the set of phytoplankton 'tools' under
development by the UK Marine Plants Team, it can aid in the assessment of ecological
quality according to Annex V of the Water Framework Directive (WFD).
By WFD definition, any value of the PCI that is significantly below 1.0 must indicate
worse than 'high' status. Tett et al. (in press) suggested that an undesirably disturbed
ecosystem corresponded to WFD 'poor' and 'bad' categories. The WFD Annex V diagnosis of
'poor' is to be made where biological communities deviate substantially from those normally
associated with the surface water body type under undisturbed conditions. In Undesirable
Disturbance theory, as illustrated in Figure 3(b), such disturbance is one that leads to a
substantial shift in the nature of the community, a shift that may not be immediately reversed
if the pressure is relaxed. Ecology has yet to develop a theory of ecosystem state that can
predict the tipping point quantitatively, and hence critical values of the PCI needed to be
obtained empirically. Application of the PCI-LF to CPR data from the North Sea tentatively
suggests that values above 0.40 do not indicate an undesirable disturbance. It is hoped in,
later revisions of this handbook, to provide firmer guidance on the critical values of the PCI-
LF that separate WFD quality categories or indicate undesirable disturbance. Meanwhile, the
PCI-LF can provide a useful monitoring tool if time series of its values are matched with time
series of nutrient loadings. Correlation of trends may be interpreted to show a move in the
direction of an undesirable disturbance, even if the value of the PCI remains above the
Using the PCI-LF page 15 2/7/06
tentative threshold. Conversely, absence of correlation, given adequate time-series, can be
taken to show that the ecosystem is resistant to nutrient-induced change.
The PCI-LF has been designed as a flexible tool for application to existing data sets.
It may be used with data resulting from incomplete analysis of phytoplankton samples, so
long as the basis of the analysis is consistent between reference and new conditions. The
minimum requirement is information about two lifeforms; although these should ideally be
characterized on the theoretical basis set out in section 4, they could simply be 'diatoms' and
'dinoflagellates' if only that distinction has been made. However, even thus calculated, the
PCI-LF is more than a diatom:dinoflagellate ratio. It takes account of seasonal variations in
the contributions of each group to the phytoplankton, diatoms being expected to be more
abundant during Spring and dinoflagellates in Summer. Rather than mapping a scalar ratio to
a scalar quality threshold, it quantifies vector deviation from the 'normal' seasonal pattern.
As illustrated in this handbook, the PCI-LF is able to take account of additional
components of phytoplankton community structure. Where such additional data are available,
it can in principle be used to define ecosystem state and domain in 3 or more dimensions, and
the envelopes, shown in this handbook as pairs of polygons in 2 dimensions, become
(hyper)surfaces enclosing all reference states. The PCI-LF would continue to be estimated by
counting the number of new observations that fall 'outside' the reference hypersurfaces.
However, the hypergeometric calculation schemes for such estimation have not been
implemented in the existing software. It is thus suggested that the script PCI1ED2 should be
run for each pair of lifeforms for which data are available. Resulting values of the PCI-LF
may be combined using weighting factors. If there is an odd number of lifeforms is used, one
pair should include an already used lifeform, and the weighting factor should be a half of the
value that would be used if the pair was independent of other pairs.
It is hoped to develop guidance on these weighting factors at a later stage. It may be
that particular combinations of life-forms will be found that are more sensitive to the nutrient
enrichment pressure than to other pressures such as climate change, and weightings can then
reflect the purpose for which the PCI-LF is to be employed..
Using the PCI-LF page 16 2/7/06
The final matter to be considered in interpreting PCI-LF values is that of the
frequency of sampling. Figure 66 shows the results of several treatments of phytoplankton
data from the FRS station at Stonehaven, which has been sampled at weekly intervals since
the start of 1997. The data were provided as weekly values in cells/L, pre-aggregated into
'diatoms' and 'flagellates'. Data from 1997-1999 was used to define reference conditions.
Three separate analyses were carried out by varying the value of the switch mf in mf1.m.
In one analysis, all the data were used; in the second case, data were averaged over (calendar)
months; and in the third case, one in 4 values were randomly selected, approximating a
monthly sampling programme.
The greater variability evident in the weekly data resulted in more inclusive reference
envelopes, and hence a higher value of the PCI for the new data (Fig. 6(b)). The 'flat bottom'
(and vertical left side) apparent in parts (a) and (b) suggest insufficient dynamic range in the
data - i.e. that it would be desirable to examine a larger volume of water during the Winter, to
get a better estimate of abundance during periods of low phytoplankton biomass. Month-
averaging of the data improved this, as shown in parts (c) and (d). Because the resulting
reference domain was smaller, the analysis was more sensitive to deviations in the new data,
giving a lower and more significant value of the PCI.
The proposed UK sampling scheme for WFD phytoplankton monitoring (at monthly
intervals) corresponds to case 3, and should prove sufficiently intense to detect change, on the
basis of the result shown in Fig. 6 (e, f). However, this is one of many possible realizations,
differing in both the reference condition envelopes and the new data. Repeated runs with new
random selections gave a PCI range from 0.95 to 0.68, with just over 2 in 3 proving
significant. This needs further study.
7. Acknowledgements
The work described here was funded by a Defra contract to CEFAS for 'Development of a
UK Phytoplankton Trophic Index', CSA 6754/ME2204, and a subcontract from CEFAS to
6 Figure 6. State space plots for FRS Stonehaven data, supplied pre-aggregated into 'diatom'and 'dinoflagellate' cells/L. The left hand column shows data for 1997-99, assumed to bereference conditions, and the right-hand column plots data for 2000-05 onto the referenceenvelopes, allowing PCI values to be calculated. (a) and (b) plot all (weekly) values; (c) and(d) plot month averages; (e) and (f) plot randomly selected data rows simulating (roughly)one sample per month. (These plots were made by an earlier version of the PCI1ED2 scriptand differ in some details from those of fig. 5. )
2 3 4 5 6 72
2.5
3
3.5
4
4.5
5
5.5
6
6.5
7
Reference years 1997�- 1999min set at: 500 : data month �- averaged
months 1- 3months 4�- 6months 7�- 9months 10�- 12
(c) FRS Stonehaven
(log10) diatoms/L
(log1
0) d
inof
lag/
L
2 3 4 5 6 72
2.5
3
3.5
4
4.5
5
5.5
6
6.5
7(d) Change in 2000-2005
(log10) diatoms/L
(log1
0) d
inof
lag/
L
PCI1ED2 drawn : 25- Mar�- 2006
Nnew: 72; Nnewout: 10PCI : 0.86
binom prob0.00305
2 3 4 5 6 72
2.5
3
3.5
4
4.5
5
5.5
6
6.5
7
Reference years 1997�- 1999min set at: 500 , all data used
months 1�- 3months 4- 6months 7�- 9months 10�- 12
(a) FRS Stonehaven
(log10) diatoms/L
(log1
0) d
inof
lag/
L
2 3 4 5 6 72
2.5
3
3.5
4
4.5
5
5.5
6
6.5
7(b) Change in 2000-2005
(log10) diatoms/L
(log1
0) d
inof
lag/
L
PCI1ED2 drawn : 25�- Mar�- 2006
Nnew: 283; Nnewout: 21PCI : 0.93
binom prob0.0478
2 3 4 5 6 72
2.5
3
3.5
4
4.5
5
5.5
6
6.5
7
Reference years 1997�- 1999min set at: 500 , 1/4 data at random
months 1- 3months 4- 6months 7�- 9months 10�- 12
(e) FRS Stonehaven
(log10) diatoms/L
(log1
0) d
inof
lag/
L
2 3 4 5 6 72
2.5
3
3.5
4
4.5
5
5.5
6
6.5
7(f) Change in 2000-2005�
(log10) diatoms/L
(log1
0) d
inof
lag/
L
PCI1ED2 drawn : 25- Mar�- 2006
Nnew: 59; Nnewout: 19PCI : 0.68
binom prob3.82e�- 11
Figure 6
Using the PCI-LF page 17 2/7/06
Napier University. PT is grateful to other members of the project team who contributed
advice and data, especially to Martin Edwards from SAHFOS for the CPR data and Eileen
Bresnan for the FRS Stonehaven data used in the examples; also to Alex Ford and Sabine
Schäfer in Napier University for work during the development of the index; and to Dave Mills
of CEFAS for leading the project to a successful outcome.
8. References
Delwiche, C.F., Andersen, R.A., Bhattacharya, D., Mischler, B.D., & McCourt, R.N. (2004).Algal evolution and the early radiation of green plants. In Assembling the Tree of Life(eds J. Cracraft & M.J. Donoghue), pp. 121-137. Oxford University Press, New York.
Margalef, R. (1958) Information theory in ecology. General Systems, 3.
Margalef, R. (1978) Life forms of phytoplankton as survival alternatives in an unstableenvironment. Oceanologica Acta, 1, 493-509.
Margulis, L. (1993) Symbiosis in cell evolution: microbial communities in the Archean andProterozoic eons, 2nd edn. W H Freeman & Co, New York.
Patterson, D.J. & Sogin, M.L. (2001) Tree of Life: Eukaryotes (Eukaryota),http://tolweb.org/tree/eukaryotes/accessory/treeoverview.html (seen August 2002).
Riegman, R. (1998). Species composition of harmful algal blooms in relation tomacronutrient dynamics. In Physiological Ecology of Harmful Algal Blooms (edsD.M. Anderson, A.D. Cembella & G.M. Hallegraef), pp. 475-488. Springer-Verlag,Berlin, Heidelberg.
Smayda, T.J. & Reynolds, C.S. (2001) Community assembly in marine phytoplankton:application of recent models to harmful dinoflagellate blooms. Journal of PlanktonResearch, 23, 447-461.
Smith, R.L. (1992) Elements of Ecology, 3rd ed. Harper Collins, New York.
Sournia, A., Chrétiennot-Dinet, M.-J., & Ricard, M. (1991) Marine phytoplankton: how manyspecies in the world ocean? Journal of Plankton Research, 13, 1093-1099.
Sunday, D. (2004). The Convex Hull of a 2D Point Set or Polygon,http://softsurfer.com/Archive/algorithm_0109/algorithm_0109.htm.
Tett, P. (1973) The use of log-normal statistics to describe phytoplankton populations fromthe Firth of Lorne area. Journal of Experimental Marine Biology and Ecology, 11,121-136.
Tett, P., Hydes, D., & Sanders, R. (2003). Influence of nutrient biogeochemistry on theecology of North-West European shelf seas. In Biogeochemistry of Marine Systems(eds G. Schimmield & K. Black), pp. 293-363. Sheffield Academic Press Ltd,Sheffield.
Tett, P., Gowen, R., Mills, D., Fernandes, T., Gilpin, L., Huxham, M., Kennington, K., Read,P., Service, M., Wilkinson, M., & Malcolm, S. (in press) Defining and detectingUndesirable Disturbance in the context of Eutrophication. Marine Pollution Bulletin.
Tilman, D., Kilham, S.S., & Kilham, H. (1982) Phytoplankton community ecology - the roleof limiting nutrients. Annual Review of Ecology and Systematics, 13, 349-372.
Using the PCI-LF page 18 2/7/06
Tomas, C.R., ed. (1997) Identifying marine phytoplankton, pp xv+858. Academic Press, SanDiego & London.
Weisstein, E.W. (2006). "Convex Hull." From MathWorld--A Wolfram Web Resource.,http://mathworld.wolfram.com/ConvexHull.html.
Wheeler, D.L., Chappey, C., Lash, A.E., Leipe, D.D., Madden, T.L., Schuler, G.D., Tatusova,T.A., & Rapp, B.A. (2000). Database resources of the National Center forBiotechnology Information, Rep. No. Nucleic Acids Res 2000 Jan 1;28(1):10-4.