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Introduction to Risk Factors & Measures of Effect Meg McCarron, CDC.

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Presentation on theme: "Introduction to Risk Factors & Measures of Effect Meg McCarron, CDC."— Presentation transcript:

1 Introduction to Risk Factors & Measures of Effect Meg McCarron, CDC

2 Introduction to Risk Analysis 2

3 What is a risk analysis? The analysis of an association between a variable (e.g. underlying condition) and an outcome (e.g. death) Why do risk analysis? The probability of an outcome is often dependent on the interplay between a variety of factors Follow up on suggested associations observed in descriptive analysis (e.g. the elderly appear to die more frequently than healthy young adults; a risk analysis might tell you whether or not that is a true observation) Determine the severity of risk Identify significant risk factors Using this type of analysis we can measure risk ratio (RR), odds ratio (OR) 3

4 What is a risk factor?  A risk factor is a factor that is associated with increased chance of getting a disease.  In epidemiological terms: A risk factor is a variable (determinant) associated with an increased risk of disease or infection (outcome).  Example: Obesity (determinant/exposure) is associated with increased risk of heart attack (outcome)  When we measure risk factors we assess  Strength  Direction  Shape 4

5 Risk factors in SARI surveillance Information about a number of potential risk factors and outcomes is often recorded e.g. Outcomes: death, influenza status Risk factors: age, co-morbid conditions Surveillance data can be analyzed to increase the understanding of the association of risk factors with severe outcomes Surveillance data describing exposures allows analysis of associations without expensive in- depth studies 5

6 Is a risk factor the cause of a disease?  Risk factors are correlational and not necessarily causal  Correlation does not imply causation  The statistical methods used do not consider the direction of effects  For an effect to be causal the exposure must have occurred before the outcome  e.g. young age does not cause measles (Morbillivirus causes measles), but young people are at greater risk because they are less likely to have developed immunity due to previous exposure or vaccination 6

7 The Correlation-Causation Problem Somalia has many pirates, but low carbon emissions

8 How are risk factors/disease determinants identified?  Individual-level data  Two key variables  Outcome: e.g. influenza  Exposure: e.g. vaccination  Should consider multiple risk factors  Epidemiological study designs used to identify risk factors  Case-control  Cohort  Surveillance data may approximate a cohort study  Biological plausibility  e.g. age and influenza infection  Exposure (risk factor) must occur prior to outcome (disease)

9 Types of variables  Continuous  E.g. Age  Categorical variables  Binary  E.g. Gender, vaccination status  Ordinal  E.g. Age group, socioeconomic status (SES)  Nominal/Categorical  E.g. Geographic region  Count  E.g. number of ILI symptoms

10 How are risk factors/disease determinants identified? 10

11 How are risk factors/disease determinants identified? (… continue …) 11

12 Cohort study  Follow people over time  Collect data on their exposures (risks)  Monitor their outcomes  Compare risk of disease among exposed versus unexposed Participant 1 2 D 3 4 D 5 6 01234 time

13 Example: cohort study  e.g. Risk of death among SARI admissions  Outcome: death  Risk factors: age, underlying conditions, influenza-positive  Source population: all patients admitted with SARI, followed until death or discharge 13

14 Case control study 14  Cases: people with disease  Deliberately over- selected  Controls: people without disease  Represent exposure distribution of the source population  Find out their exposure status  Compare risk of exposure among diseased and non- diseased ED 1 Participant D 2 ED 3 4 E 5 6 time

15 Example: case-control study  Risk of influenza among vaccinated patients  Cases: people with influenza  Controls: people without influenza  Outcome: influenza status  Risk factors: vaccination status, age, underlying comorbidity 15

16 Statistical significance: is the association due to chance alone?  A statistical test is used to assess if an association may be due to chance alone (random error)  In statistics, a result is called statistically significant if it is unlikely to have occurred by chance alone, according to a pre-determined threshold probability, the significance level (e.g. α: 0.05). 16

17 Common statistical tests  Categorical data:  Chi-square (  2 ) test,  Fisher’s test  McNemar’s test  Continuous data:  T-test  Wilcoxon rank-sum test  ANOVA  These tests can tell if there’s a difference between groups but do not convey the size or direction of effects

18 Common measures of association / effect  Measure the size of an association (effect)  Compare some measure of disease in exposed versus unexposed  Absolute difference  Y 1 -Y 2  Risk difference  Relative difference (ratio)  Y 1 /Y 2  Odds ratio  Risk ratio  Incidence rate ratio  Hazard ratio (survival data)  Attributable risk 18

19 Odds ratios 19  Most common measure of association used in epidemiology  Binary outcome  Odds Ratios (OR): compares the odds of exposure among cases (people with disease) with controls (people without disease)  Odds: ratio of the probability (p) of an event occurring versus it not occurring  Odds = p/(1-p) Calculation of the RR & OR CasesControls Exposedab Unexposedcd OR = (a/c) / (b/d) OR = 1 = no association OR < 1 = negative association (reduces risk) OR > 1 = positive association (increases risk)

20 Example of OR Calculations Outcome (Influenza patients that died) Outcome (Influenza patients that died) 20 Calculation of the RR & OR DiedAlive Flu+200 (a)150 (b) Flu-50 (c)100 (d) OR = (a/c) / (b/d) = (a*d) / (b*c) OR=(200/50)/(150/100)=2.7 Calculation of the RR & OR DiedAlive Female200 (a)180 (b) Male98 (c)100 (d) OR=(200*100)/(180*98)=1.1

21 Confidence intervals  OR is a point estimate  Confidence interval (CI) is a measure of uncertainty around your point estimate  CI is based on the standard error (SE)   SE=narrower confidence interval  If CI includes 1, then not statistically significant  wide CI also a problem  Usually use 95%CI CasesControls Exposedab Unexposedcd SE = √1/a + 1/b + 1/c + 1/d 95%CI = e (OR  1.96 * SE)

22 22 OR=1.1 95%CI=1.01,1.4

23 Confidence intervals e.g. 2007 Victorian surveillance data, adults, influenza B Flu+Flu- Vaccinated44 (a)95 (b) Unvaccinated205 (c)260 (d) OR = (44/205) / (95/260) = 0.59 ln(OR) = ln(0.25)= -0.53 SE = √1/44 + 1/95+ 1/205 + 1/260 = 0.20 95%CI = e (-0.53 + 1.96*0.20) = e (0.09) = 0.39 (UL) = e (-0.53 - 1.96*0.20) = e (-2.87) = 0.88 (LL)

24 Interpreting Results  Size of the CI is an indicator of uncertainty  Wide CI =  uncertainty  Narrow CI =  uncertainty  If CI includes 1, then not statistically significant  The observed effect could just be due to chance  P-values are often used to convey statistical significance  The p-value for a OR is calculated from a chi- squared test  The p-value reference for a 95%CI is 5% or 0.05

25 P-values  The p-values help us to determine whether the difference between the two groups might be due to random variation  CI and p-values  95%CI=1.0, 2.3 indicates that the two-sided p-value for no association is about 0.05.  95%CI=0.9, 2.4 suggests p>0.05  95%CI=0.9, 2.4 indicate that the data are compatible with a two-fold higher risk (i.e. upper limit includes 2)  The p-value is a measure of the compatibility of the data and the null hypothesis

26 Implementation of a statistical test  We start with a research hypothesis  State the relevant null (H0)  No effect (effect is due to chance)  Alternative hypotheses (HA)  An effect exists  Decide which test is appropriate (see earlier list)  Compute the test statistic and the associated p-(probability) value  Compare the computed p-value to a reference p value (usually 0.05) to accept or reject the null hypothesis  If the p-value of the test is lower than the reference value the H0 is rejected  The effect is not likely to be due to chance

27 Example: Implementation of a statistical test  Influenza prevalence in hospitalized patients:  Non pregnant women: 100/1000 = 10%  Pregnant women: 30/200 = 15%  Question:  Is the influenza prevalence in hospitalized pregnant women different to non- pregnant women?  Hypothesis  H0: p1 = p2 ; p1 - p2 = 0  HA: p1 = p2 ; p1 - p2 = 0  Reject H0 if p (test) is < α: 0.05  Test results:  Z (test statistic): 0.119  p value: 0.037  0.037<0.05 → Reject H0

28 Example: factors associated with influenza-positive diagnosis among ILI patients OR p-value 95% CI Lower limitUpper limit Vaccinated0.540.020.320.89 Underlying condition1.200.470.722.00 Epi week1.040.011.011.08 Age group <20ref 20-640.760.170.511.13 65+1.090.850.452.62 Adjusted OR=0.54 (95%CI=0.32,0.89) Crude OR=0.59 (95%CI=0.39,0.88) Adjusted OR=0.54 (95%CI=0.32,0.89) Crude OR=0.59 (95%CI=0.39,0.88)

29 Summary  A risk factor is a variable which increases (or decreases) the risk of an outcome  We can assess the influence of risk factors using individual- level data from case-control and cohort studies  The size of the effect can be measured by effect measures  Most common effect measure is the odds ratio  The uncertainty of the effect can be measured by the confidence interval  Understanding whether an effect is due to random error is indicated by the p-value and tested using a statistical test  Multivariable methods can tell us how much influence one risk factor has compared with others


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