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Victor Babes” Victor Babes” UNIVERSITY OF MEDICINE UNIVERSITY OF MEDICINE AND PHARMACY AND PHARMACY TIMISOARA TIMISOARA DEPARTMENT OF DEPARTMENT OF MEDICAL INFORMATICS AND BIOPHYSICS MEDICAL INFORMATICS AND BIOPHYSICS Medical Informatics Division Medical Informatics Division www.medinfo.umft.ro/dim www.medinfo.umft.ro/dim 2007 / 2008 2007 / 2008

“Victor Babes” UNIVERSITY OF MEDICINE AND PHARMACY TIMISOARA

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“Victor Babes” UNIVERSITY OF MEDICINE AND PHARMACY TIMISOARA. DEPARTMENT OF MEDICAL INFORMATICS AND BIOPHYSICS Medical Informatics Division www.medinfo.umft.ro/dim 2007 / 2008. CORRELATION ANALYSIS EPIDEMIOLOGY. COURSE 6. 1. RELATIONS BETWEEN TWO QUANTITATIVE VARIABLES . - PowerPoint PPT Presentation

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Page 1: “Victor Babes”  UNIVERSITY  OF MEDICINE  AND  PHARMACY  TIMISOARA

““Victor Babes” Victor Babes” UNIVERSITY OF MEDICINE UNIVERSITY OF MEDICINE

AND PHARMACY AND PHARMACY TIMISOARATIMISOARADEPARTMENT OFDEPARTMENT OF

MEDICAL INFORMATICS AND BIOPHYSICSMEDICAL INFORMATICS AND BIOPHYSICS

Medical Informatics DivisionMedical Informatics Divisionwww.medinfo.umft.ro/dimwww.medinfo.umft.ro/dim

2007 / 20082007 / 2008

Page 2: “Victor Babes”  UNIVERSITY  OF MEDICINE  AND  PHARMACY  TIMISOARA

CORRELATION ANALYSISCORRELATION ANALYSISEPIDEMIOLOGYEPIDEMIOLOGY

COURSE 6COURSE 6

Page 3: “Victor Babes”  UNIVERSITY  OF MEDICINE  AND  PHARMACY  TIMISOARA

• 1. RELATIONS BETWEEN 1. RELATIONS BETWEEN TWO QUANTITATIVE TWO QUANTITATIVE

VARIABLES .VARIABLES .• 1.1. DEPENDENCY DEGREE 1.1. DEPENDENCY DEGREE

. .– STATE SPACE (DIAGRAM)STATE SPACE (DIAGRAM)– 1 INDIVIDUAL = 1 POINT1 INDIVIDUAL = 1 POINT

Page 4: “Victor Babes”  UNIVERSITY  OF MEDICINE  AND  PHARMACY  TIMISOARA

a) INDEPENDENT VARIABLESa) INDEPENDENT VARIABLESHG = hemoglobin concentrationHG = hemoglobin concentrationh = heighth = height

Page 5: “Victor Babes”  UNIVERSITY  OF MEDICINE  AND  PHARMACY  TIMISOARA

b) DEPENDENT VARIABLESb) DEPENDENT VARIABLES Causal relation - mathematical modelCausal relation - mathematical model [O [O22] in the blood - atmospheric pO] in the blood - atmospheric pO22

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c) CORRELATED VARIABLESc) CORRELATED VARIABLESG = weight, h = heightG = weight, h = height

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• 1.2. LINEAR CORRELATION1.2. LINEAR CORRELATION

• a) CORRELATION COEFFICIENT a) CORRELATION COEFFICIENT (Pearson)(Pearson)

• rrxyxy = s = sxyxy / s / sxx s syy • ssxyxy = covariance = covariance• ssxx = variance of x = variance of x• ssyy = variance of y = variance of y

Page 8: “Victor Babes”  UNIVERSITY  OF MEDICINE  AND  PHARMACY  TIMISOARA

• b) PROPERTIES:b) PROPERTIES:– VALUES = [ -1, +1]VALUES = [ -1, +1]– r > 0 ==> DIRECT CORRELATIONr > 0 ==> DIRECT CORRELATION– r < 0 ==> INVERSE CORRELATIONr < 0 ==> INVERSE CORRELATION– WEAK / STRONG CORRELATIONWEAK / STRONG CORRELATION

• WEAK = CLOSE TO 0WEAK = CLOSE TO 0• STRONG = CLOSE TO -1 OR +1STRONG = CLOSE TO -1 OR +1

– TESTING TESTING rr : WITH : WITH tt TEST - significance TEST - significance

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Direct and inverse correlationsDirect and inverse correlations

Page 10: “Victor Babes”  UNIVERSITY  OF MEDICINE  AND  PHARMACY  TIMISOARA

1.3. REGRESSION LINE1.3. REGRESSION LINE(“best line” among the points)(“best line” among the points)

• a) EXAMPLE:a) EXAMPLE:– HEIGHT: CHILDREN - PARENTSHEIGHT: CHILDREN - PARENTS

– hhcc > h > hpp

– SLOPE < 1 ==> REGRESSIONSLOPE < 1 ==> REGRESSION– TENDENCY TOWARDS MIDDLE REGIONTENDENCY TOWARDS MIDDLE REGION

• b) LINE PARAMETERS: y = a + b xb) LINE PARAMETERS: y = a + b x– a = INTERCEPTa = INTERCEPT– b = SLOPEb = SLOPE

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1.5. NONLINEAR CORRELATIONS1.5. NONLINEAR CORRELATIONS

• a) EXPONENTIALa) EXPONENTIAL

y = a . ey = a . e b.x b.x

• Increasing (b > 0): ABSORBTIONIncreasing (b > 0): ABSORBTION

• Decreasing (b < 0): CLEARANCEDecreasing (b < 0): CLEARANCE

Page 12: “Victor Babes”  UNIVERSITY  OF MEDICINE  AND  PHARMACY  TIMISOARA

• b) LOGARITHMIC:b) LOGARITHMIC:

y = a + b . log xy = a + b . log x• WEBER - FECHNER LAW (Sensation)WEBER - FECHNER LAW (Sensation)

• c) POWER:c) POWER:

y = a . xy = a . x b b

• STEVANS LAW (Neural frequency)STEVANS LAW (Neural frequency)

Page 13: “Victor Babes”  UNIVERSITY  OF MEDICINE  AND  PHARMACY  TIMISOARA

• d) HYPERBOLIC:d) HYPERBOLIC:

(x - a) . (y - b) = k(x - a) . (y - b) = k• HILL LAW (Muscular contraction), ABBEYHILL LAW (Muscular contraction), ABBEY

• e) LOGISTIC:e) LOGISTIC:

y = a . x / (k + x)y = a . x / (k + x)• MICHAELIS - MENTEN (Enzymatic kinetics)MICHAELIS - MENTEN (Enzymatic kinetics)

• ARIENS (Dose - response curves)ARIENS (Dose - response curves)

Page 14: “Victor Babes”  UNIVERSITY  OF MEDICINE  AND  PHARMACY  TIMISOARA

2. CORRELATIONS FOR ORDINAL 2. CORRELATIONS FOR ORDINAL VARIABLESVARIABLES

• 2.1. RANK CORRELATION 2.1. RANK CORRELATION COEFFICIENTCOEFFICIENT– SPEARMAN “R”SPEARMAN “R”– Comparing two classificationsComparing two classifications

• 2.2. KENDALL CORRELATION 2.2. KENDALL CORRELATION COEFFICIENTCOEFFICIENT– Appl. for ordinal and nominal variablesAppl. for ordinal and nominal variables

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2. EPIDEMIOLOGICAL 2. EPIDEMIOLOGICAL BIOSTATISTICSBIOSTATISTICS

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1. RISK ANALYSIS1. RISK ANALYSIS

• 1.1. RISK FACTORS1.1. RISK FACTORS– a) DEFINITION : a) DEFINITION : – Hypothetical cause for disease Hypothetical cause for disease

occurrence or facilitationoccurrence or facilitation– b) CLASSIFICATION :b) CLASSIFICATION :

• EnvironmentalEnvironmental• SocialSocial• BehaviorialBehaviorial• BiologicalBiological

Page 17: “Victor Babes”  UNIVERSITY  OF MEDICINE  AND  PHARMACY  TIMISOARA

1.2. DATA TABLES 1.2. DATA TABLES (Contingency tables)(Contingency tables)

D+(disease)

D-(no dis.)

Totallines

E+(exposed)

N11 N12 L1

E-(unexpos.)

N21 N22 L2

Totalcolumns

C1 C2 N

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• 1.3. METHODS1.3. METHODS

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• 1.3. METHODS1.3. METHODS

– A- EXPERIMENTAL A- EXPERIMENTAL • RISK FACTOR CONTROLRISK FACTOR CONTROL• DISADVANTAGE: ETHICAL DISADVANTAGE: ETHICAL

REASONSREASONS

– B- OBSERVATION-BASEDB- OBSERVATION-BASED

Page 20: “Victor Babes”  UNIVERSITY  OF MEDICINE  AND  PHARMACY  TIMISOARA

• a) CROSS - SECTIONAL a) CROSS - SECTIONAL – TRANSVERSAL: Moment situation in a large sampleTRANSVERSAL: Moment situation in a large sample

• b) COHORT - PROSPECTIVEb) COHORT - PROSPECTIVE– LONGITUDINALLONGITUDINAL– Two groups: Exposed / UnexposedTwo groups: Exposed / Unexposed

• c) COHORT - RETROSPECTIVEc) COHORT - RETROSPECTIVE• d) CASE - CONTROLd) CASE - CONTROL

– Two groups: Disease / No-diseaseTwo groups: Disease / No-disease• e) Comparison:e) Comparison:

– EXP > COH.pr. > COH.ret. > CASE-C. > CR.S.EXP > COH.pr. > COH.ret. > CASE-C. > CR.S.

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Page 22: “Victor Babes”  UNIVERSITY  OF MEDICINE  AND  PHARMACY  TIMISOARA

• 1.4. FONDAMENTAL 1.4. FONDAMENTAL PARAMETERS IN EPIDEMIOLOGYPARAMETERS IN EPIDEMIOLOGY

• ‘‘ODD’ INDEX (success / fail):ODD’ INDEX (success / fail): ODD (E+) = N11 / N12ODD (E+) = N11 / N12 ODD (E-) = N21 / N22ODD (E-) = N21 / N22

• ODDS RATIO (OR):ODDS RATIO (OR): OR = ODD(E+) / ODD(E-)OR = ODD(E+) / ODD(E-)

OR = N11 . N22 / N12 . N21 OR = N11 . N22 / N12 . N21

Page 23: “Victor Babes”  UNIVERSITY  OF MEDICINE  AND  PHARMACY  TIMISOARA

• ‘‘ABSOLUTE’ RISK (success rate):ABSOLUTE’ RISK (success rate): R (E+) = N11 / L1R (E+) = N11 / L1 R (E-) = N21 / L2R (E-) = N21 / L2

• RELATIVE RISK (RR):RELATIVE RISK (RR): RR = R(E+) / R(E-)RR = R(E+) / R(E-)

RR = N11 . L2 / N21 . L1 RR = N11 . L2 / N21 . L1 • Usually OR > RRUsually OR > RR• IF OR > 1 (RR > 1) ==> RISK !IF OR > 1 (RR > 1) ==> RISK !

Page 24: “Victor Babes”  UNIVERSITY  OF MEDICINE  AND  PHARMACY  TIMISOARA

3. SURVIVAL3. SURVIVALANALYSISANALYSIS

Page 25: “Victor Babes”  UNIVERSITY  OF MEDICINE  AND  PHARMACY  TIMISOARA

1. CHARACTERISTICS1. CHARACTERISTICS• missing data, long duration of studymissing data, long duration of study• heterogenous conditionsheterogenous conditions• several influencing factorsseveral influencing factors 2. DATA PROCESSING2. DATA PROCESSING• life tableslife tables• actuarial methodactuarial method• Kaplan Mayer curvesKaplan Mayer curves

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Data collectionData collection

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Actuarial methodActuarial method

Bitmap Image

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Kaplan Mayer plotsKaplan Mayer plots

Page 29: “Victor Babes”  UNIVERSITY  OF MEDICINE  AND  PHARMACY  TIMISOARA

3.3. INDICATORS3.3. INDICATORS

• Life Years (Survival years)Life Years (Survival years)• QoL Index = Quality of LifeQoL Index = Quality of Life• Adjusting “Life Years” to QALY Adjusting “Life Years” to QALY

(Quality Adjusted Life Years)(Quality Adjusted Life Years)

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