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Swimmers itch drivers in northern MI lakes Thomas R. Raffel, Ph.D. Department of Biological Sciences Oakland University Rochester, MI

Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

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Page 1: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

Swimmers itch drivers in northern MI lakes

Thomas R. Raffel, Ph.D.

Department of Biological Sciences

Oakland University

Rochester, MI

Page 2: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

Schistosomiasis:• 2-host life cycle (SNAILS)

• Exposure in water

• Human schistosomes (3 spp)• 2nd most important tropical disease worldwide

• 200-300 million people infected/yr; 800,000 deaths

• Avian schistosomes (12-15 spp)• Trying to infect birds

• Itchy bumps 1-2 days post-exposure

• Gradually fade over ~1 week

Adult worms (in blood vessel)

Trichobilharzia cercariapenetrating skin

Page 3: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

• Trichobilharzia spp.• First described by Cort in

Douglas Lake (1928 )

Michigan: home of swimmer’s itch!

Physa integra

Stagnicola catescopium* (= Stagnicola emarginata)

Page 4: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

Research Goals

1. Temporal dynamics

• Generate daily field data for cercaria abundance

• Test predictions for potential warning systems

2. Spatial distribution

• Identify landscape-level predictors of snail and parasite abundance

• Inform management decisions

Page 5: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

• High day to day variation reported, but no daily

field data available for cercaria abundance

• Trematode biology is temperature-dependent

- Snail growth & reproductive rates

- Cercaria production rate

• Most studies ignore temperature fluctuations

I. Temporal dynamics: Gaps in Knowledge

19

20

21

22

23

24

25

26

6/1 6/8 6/15 6/22 6/29 7/6 7/13 7/20 7/27

Tem

per

ature

, C

elsi

us

Date

Page 6: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

Thermal Stress Hypothesis (Paull et al 2015)

• Proposed that high temperatures are energetically stressful to snails, depleting energy stores (e.g., fat reserves) during long warm periods.

• Depleted host energy limits cercaria production by trematode parasites

I. Temporal dynamics:

Page 7: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

I. Temporal dynamics: Thermal Stress Hypothesis

Warm

Temperatures

Metabolism

(reaction rates)

Energy budget of

snail (fat reserve)

Cercaria

Immediate Effect

Delayed Effect

Page 8: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

Higher levels when currentwater temperature is high

Lower levels following

multiple days of warm

temperatures

I. Temporal dynamics: Thermal Stress Hypothesis

Predictions:

Page 9: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

Summer 2015 – Madelyn Messner

• Needed a large number of daily cercaria samples from

natural sites during peak swimmer’s itch season

Page 10: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

Citizen scientists!

• Volunteer recruitment & training

• Daily samples: July 6 – August 2

Page 11: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

Temporal dynamics: July 6 – August 2, 2015

Daily samples- filter

50L water

Hourly temperature

& light

Page 12: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

Sample ProcessingCollect filter sample

Extract DNA

qPCR to estimate

cercaria abundance

Page 13: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

• 378 individual sample tubes

• DNA extraction from dried sample

− 1 mL lysis buffer + 10 uL proteinase K

• qPCR – DNA quantification

− TaqMan Assay (Jothikumar et al 2015)

− Target itch-causing schistosomes

− Singlicate reactions w/reruns for inhibited reactions

IPC measures reaction inhibition (reduces measurement bias)

Singlicate reactions (low precision for individual measurements)

Temporal dynamics: sample processing

Page 14: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

Temporal dynamics: statistical analysis

Response variable:

Cercaria/ 50L

Substantial day to day

variation

Random effects:

- Location

- Snail population

- Snail infection levels

- Bird visitation

- Water currents

Log cercaria/ 50L

Min Daily Temp

Page 15: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

EXAMPLE: (Hypothetical)

• Pirate attacks correlate

with ocean wind speed

• Can we conclude increased

wind speed caused the

increase in pirate attacks

through time?

Temporal dynamics: temporal confoundment

YEAR17901755 1780 17851750

Pir

ate

atta

cks

Ocean

win

d sp

eed

Problem:

• THOUSANDS of possibly relevant variables increased or decreased during this time period, making this a potentially CONFOUNDED predictor variable

Poor evidence for causality (temporally confounded analysis)

Page 16: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

Standard method – account for

long-term trend first, before

testing for relationships

Method 1:

• “Detrend” cercaria data

using deviations from a

spline curve fit to data

Temporal dynamics: temporal confoundment

*Method 2:

• Use past cercaria levels (over 3, 5, or 7 days) as a covariate in the

analysis. Past levels predict current levels.

AFTER accounting for the long-term trend, we tested for effects of current & past daily temperatures on cercaria abundance

Better evidence for a meaningful relationship

Page 17: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

Random variation…. (singlicate analyses)

Best model according to AIC: 3 predictors

1. Higher cercaria levels in past 5 days →

higher cercaria levels today

2. Current temps positive trend

3. Past temps significant negative effect

Predictor variable Coefficient χ2 p-value

Log cercaria prev 5 days 1.94 23.9 <0.001

Min daily water temp 0.24 2.66 0.10

Previous 5 day water temp -0.69 14.0 <0.001

Temporal dynamics: Results

Page 18: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

Temporal dynamics: Conclusions

• Field evidence for

Thermal Stress Hypothesis

• Positive effect of current temps

- Widely cited in literature

- Weaker (non-significant) effect in our analysis

Negative effect of past temps

- Novel finding; highly significant and predictive

- Higher-precision assays might help improve predictions in the future

Page 19: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

Research Goals

1. Temporal dynamics

• Generate daily field data for cercaria abundance

• Test predictions for potential warning systems

2. Spatial distribution

• Identify landscape-level predictors of snail and parasite abundance

• Inform management decisions

Page 20: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

II. Large-Scale Spatial Survey (16 lakes; 38 sites)

Maddie&

Jenna

Jason&

Ryan

Aleena & Alex

• >50 volunteers trained• >1040 cercaria samples collected• >3000 miles driven• >2500 qPCR assays run

What determines patterns of schistosome cercariaeabundance across a broad landscape?

Page 21: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

What determines swimmer’s itch at a particular SITE?

Snail population density

Percent snails infected

Cercariae produced per snail

Bird infection?

Temperature? Algal

growth?

Cercariaein water

SWIMMER’S ITCH!

Wind/Waves?

Possible environmental drivers…..

Page 22: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

Land Use • Urbanization• Agriculture• Vegetation• Development

Physical charateristics• Wave action• Lake size/depth• Substrate type• Temperature

Cercariae in water

Herbicide runoff

Zebra mussels

Insecticide runoff

Nutrient pollution (N, P)

Snail density

Arthropod predators (crayfish)

Attached algae

Water clarity

−Hypothesized drivers:

Bird visitation

Water clarity hypotheses*:

1. Clear water lets light penetrate to bottom of lake2. Algal periphyton is often light-limited, especially in deeper water3. Snail populations are often limited by periphyton (food) abundance 4. Trematode abundance often limited by abundance of host snails

Infected snailsTemperature

Page 23: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

Continuous/Daily monitoring:• Cercaria density - daily filtered-water samples (volunteers + qPCR)• Wind speed & direction (volunteers)• Water temperature & light penetration (HOBO loggers)• Bird visitation

Weekly surveys:• Snail quadrat sampling & collection (identification, size distribution)• Turbidity & zebra mussel densities (quadrats)• Crayfish trapping• Zooplankton sampling (density, composition)

Site-level measurements:• Attached algae (periphyton) growth & composition• Zebra mussel settling rates• Water chemistry (nitrates+nitrites+ammonia, organophosphate)• Pesticides (2,4-D; glyphosate)• Sediment cores (Phosphorus, Organic carbon)• Substrate & shoreline characteristics; fetch; slope

Lake-level characteristics:• Land use in watershed & near shore• Lake size & depth

2016 survey parameters (>60 possible predictors….):

Page 24: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

Results Part 1: Snails responded to water clarity

Supported a core prediction of our water clarity hypotheses….

Page 25: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

HOWEVER: Snails were dominated by Pleurocera…

Page 26: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

Pleurocera drove the Turbidity pattern…

Page 27: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

… and Pleurocera are NON-HOST snails.

Characteristics:• Thick-walled shells• Operculate• Common in larger rivers• MI is northern edge of

known distribution

Not known to host Trichobilharzia sp. parasites

Encyclopedia of Life:Pleurocera collection records

Page 28: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

Results 2: Cercariae responded to Stagnicola

• No added predictive power by adding other snail species to the analysis

Page 29: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

Cercaria levels versus Stagnicola density:

Page 30: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

Comparing 2015 & 2016 datasets:

Page 31: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

“Stagnicola” snails:

Encyclopedia of Life:Stagnicola collection records

Characteristics: Known hosts for Trichobilharzia spp.

parasites• Non-Operculate• ARCTIC taxon – rare south of MI• Eat algal periphyton & macrophytes• Lives in deep water (up to 30 feet for

L. catascopium)• Prefer solid substrates• Regulation by fish predators…?

“Stagnicola” snails:

Stagnicolacatascopium/emarginata/elodes

Page 32: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

“Stagnicola” snails:

Stagnicolacatascopium/emarginata/elodes

Page 33: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

Some sites had cercariae despite no Stagnicola….

• Might indicate influx of cercariae from offsite via water currents

• Can we account for any of this variation in our analysis?

Page 34: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

F1,35 = 7.0; P = 0.012

Sites with few or no Stagnicola snails

How could submerged vegetation reduce the influx of cercariae from other sites?

Results 3: Submerged vegetation reduced cercariae(after accounting for snail density)

Page 35: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

Plants as physical barriers? Plants as accidental “hosts”?

Hedychia coronarium (mariposa)(Warren & Peters 1968)

Floating water plants(Christensen 1979)

How could submerged vegetation reduce the influx of cercariae from other sites?

Page 36: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

Bladderwort (Utricularia spp.)

• Carnivorous water plant• Known to eat cercariae!• Widespread in MI• Sometimes mistaken for milfoil

Eurasian milfoilBladderwort

Gibson & Warren 1970

Cercariae

Page 37: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

Cercariae

Submerged vegetation Stagnicola

Maximum Lake Depth

Deciduous trees

Summary – Swimmer’s itch apparent risk factors

Page 38: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

Shallow Lake:

Deep Lake:

HIGH Risk

LOW Risk Medium Risk

Medium Risk

Summary – Swimmer’s itch apparent risk factors

Page 39: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

THANK YOU!!!

Funds & Lodging (still compiling names for 2016…):

RAFFEL LAB:Madelyn Messner*Jason Sckrabulis*Ryan McWhinnie*Jenna McBride*Alex BagerisAleena HajekKarie Altman

Collaborators:Pieter Johnson, Sara Paull, Bryan LaFonte, Curt Blankespoor, Ronald Reimink, David Szlag

Oakland University Support:Doug Wendell (chair), Arik Dvir, Cathy Starnes, Sheryl Hugger, Jan Bills, Kathy Lesich, Shawn Rasanen

Oakland Undergraduate researchers:Fieldwork: R. McWhinnie, J. McBride, A. Hajek, A. Bageris; qPCR: J. McBride, S. Trotter, G. Everett, J. Willis; Invertebrate counts: Melissa Ostrowski, James Willis, Rima Stepanian, Aman Singh

Oakland University StartupAl Flory & Monika SchultzChimney Corners ResortPlatte Lake Improvement AssnGlen Lake AssociationLake Leelanau Lake AssnLeelanau Clean WaterWalloon Lake AssociationLime Lake AssociationHiggins Lake Property Owners Assn

SICON LLCTwin Lakes Property Owners AssnElk-Skegemog Lake AssnCrystal Lake & Watershed Org.Lake Margrethe Foundation FundHamlin Lake Preservation SocietyPortage Lake Watershed ForeverIntermediate Lake Association

ALL OUR CITIZEN SCIENTIST VOLUNTEERS! (NEXT SLIDE)

Page 40: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

• (Crystal Lake) Al Flory & Monica Schultz; Ted & Barb Fischer; Pat & Sherry Grant• (Glen Lake) Mike & Sara Litch; Rob Karner; John DePuy; John Kassarjian• (Lake Leelanau) John Lutchko; Dave Hunter; John Popa; Wayne Swallow• (Platte Lake) Bob & Mason Blank; Wilfred Swieki• (Little Traverse Lake) Len Allgaier• (Lime Lake) Dean Manikas• (Walloon Lake) Russ Kittleson• (Higgins Lake) Ron Reimink; Curt Blankespoor

• (Crystal Lake) Al Flory & Monica Schultz; Ted Fischer; Jana Way; Joel Buzzell; Shary Grant

• (Deer Lake) Todd Sorenson; Alec Sherman

• (Douglas Lake) Curt Blankespoor; Kira Surber

• (Elk Lake) Bob & Bryce Kingon; Dean Ginther; Ruth Bay

• (Glen Lake) John Kassarjian; Mike Litch; Denny Becker; Bill Meserve; Jack Laitala; Chris Dorsey Shugart

• (Hamlin Lake) Ginny Hluchan; Linda & Ted Leibole; Judi Cartier & Ed Franckowiak; Paula & Mike Veronie; Denny Lavis; Joe

Muzzo; Mara DeChene; Gail Hanna; Kathy Grossenbacher; Jim Gallie

• (Higgins Lake) Jim Vondale; Charlene Cornell; Richard Weadock; John & Susan Osler; Anne Grein; Ken Dennings; Greg Douglas;

Rebekah Gibson; Sue Gederbloom

• (Intermediate Lake) Steve & Kathy Young; Jim & Karen Gilleylen; Scott Zimmerman; Marcia Collins; Claude & Joyce Gilkerson;

Sheridan & Bob Haack

• (Lake Leelanau) David Hunter; John Popa; John Lutchko; Nick Fleezanis; Page Sikes

• (Lime Lake) Dean Manikas

• (Little Traverse Lake) Len Allgaier and Kristin Race

• (Lake Margrethe) Sandra & Ken Michalik; Mike Ravesi; Lisa Jaenicke; Nancy Atchison

• (Platte Lake) Wilfred J. Swiecki; Bob Blank; Tom & Christian Inman; Jackie & John Randall

• (Portage Lake) Al Taylor; Mary Reed; Tammy Messner; Ted Lawrence

• (Lake Skegemog) Dave Hauser; Kathi Gober

• (Walloon Lake) Christine Wedge; Russ & Kathy Kittleson; John Markewitz; Megan Muller-Girard

2015 survey volunteers (8 lakes)

2016 survey volunteers (16 lakes)

Page 41: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using
Page 42: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

What does thermal stress predict through time?

Cold to Warm: initial increase in parasite production followed by steady decline

Constant Warm: parasite production declines longer it is held at warm temps

Paull et al 2015

Page 43: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

I. Large-Scale Survey (16 lakes; 38 sites)

Page 44: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

Primary drivers of Pleurocera:

Page 45: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

D45L

D90

D45R

Effective Fetch (Lf )

𝐸𝑓𝑓𝑒𝑐𝑡𝑖𝑣𝑒 𝐹𝑒𝑡𝑐ℎ =σ 𝐷𝑖 × 𝑐𝑜𝑠 𝛾𝑖

σ𝑐𝑜𝑠 𝛾𝑖

• Distance wind can blow over water more wave action (in theory)

• Correlates with lake size & depth

𝑀𝑜𝑑𝑖𝑓𝑖𝑒𝑑 𝐸𝑓𝑓𝑒𝑐𝑡𝑖𝑣𝑒 𝐹𝑒𝑡𝑐ℎ =𝐷45𝐿𝑐𝑜𝑠 45° + 𝐷90𝑐𝑜𝑠 90° + 𝐷45𝑅𝑐𝑜𝑠 45°

𝑐𝑜𝑠 45° + 𝑐𝑜𝑠 90° + 𝑐𝑜𝑠 45°

But why are Pleurocerid snails more abundant at high-Fetch sites?

Possible hypothesis:• Adapted for shallow water & high wave action

Page 46: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

Drivers of water clarity:

Page 47: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

Drivers of mussel abundance:

Page 48: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

Conifers – effects on turbidity, snails, & mussels?

Page 49: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

Conifers – effects on turbidity, snails, & mussels?

• Conifers release terpenes (“turpentine”)

Toxic to algae? (few studies)

• Less algae → lower turbidity

Less food for mussels

More food for snails

Page 50: Swimmers itch drivers in northern MI lakes · Standard method –account for long-term trend first, before testing for relationships Method 1: • “Detrend” cercaria data using

D45L

D90

D45R

Water clarity

Pleurocera(Dominant snail)

Fetch

Temperature

Mussels

Alkalinity

Gravel

Conifers −−

Summary – factors affecting snail (Pleurocera) abundance