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Overview of Linear Models Webinar : Tuesday, May 22, 2012

Overview of Linear Models Webinar : Tuesday, May 22, 2012. Deborah Rosenberg, PhD Research Associate Professor Division of Epidemiology and Biostatistics University of IL School of Public Health Training Course in MCH Epidemiology. Training Course in MCH EPI, 2012.

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Overview of Linear Models Webinar : Tuesday, May 22, 2012

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  1. Overview of Linear ModelsWebinar: Tuesday, May 22, 2012 Deborah Rosenberg, PhD Research Associate Professor Division of Epidemiology and Biostatistics University of IL School of Public Health Training Course in MCH Epidemiology

  2. Training Course in MCH EPI, 2012 • Course Topics Focusing on Multivariable Regression • Model Building Approaches • Modeling Ordinal and Nominal Outcomes • Multilevel Modeling • Trend Analysis • Population Attributable Fraction • Propensity Scores • Modeling Risk Differences • We need to have some perspective ...

  3. Introduction • So, let's keep this in mind: • "...technical expertise and methodology are not substitutes for conceptual coherence. Or, as one student remarked a few years ago, public health spends too much time on the "p" values of biostatistics and not enough time on values." • Medicine and Public Health, Ethics and Human Rights • Jonathan M. Mann • The Hastings Center Report , Vol. 27, No. 3 (May - Jun., 1997), pp. 6-13 • Published by: The Hastings Center

  4. Introduction • Multivariable analysis implies acknowledging and accounting for the intricacies of the real world reflected in the relationships among a set of variables • Multivariable analysis is complex, particularly with observational as opposed to experimental data. • The accuracy of estimates from multivariable analysis and therefore the accuracy of conclusions drawn and any public health action taken is dependent on the application of appropriate analytic methods.

  5. Introduction The challenge for an MCH epidemiologist goes beyond carrying out complex multivariable analysis to include: advocating for and facilitating the routine incorporation of complex multivariable methods into the work of public health agencies, and • guiding interpretation of findings • working to design reporting templates • working to build dissemination strategies • working to link findings with action plans or policy recommendations

  6. Review of the Basics • Basic Components of Any Statistical Analysis • Sample statistic(s) (observed value(s)) • Population parameter(s) (expected value(s)) • Sample Size • Sample variance(s)/standard error(s) • Critical values from the appropriate • probability distribution , p, r , ,  n z, t, chi-square, F

  7. Review of the Basics • The study design and the sampling strategy—cohort, case-control, cross-sectional, longitudinal, etc. will have an impact on the statistical analysis that can be carried out: • Which measures of occurrence can be reported • Which measures of association can be reported • How will standard errors for confidence intervals and statistical testing be calculated

  8. Review of the Basics • Measures of Occurrence • Means summarize continuous variables and are assumed to follow a normal distribution. • Proportions summarize discrete variables and are assumed to follow the Binomial distribution. • Some proportions are also said to be Poisson distributed if the numerator is very small compared to the denominator. • Rates, also based on discrete variables, are typically said to be Poisson distributed.

  9. Review of the Basics • Measures of Association • Difference Measures • Between two or more means • Between two or more proportions (attributable risk) • Between a mean & a standard • Between a proportion & a standard • Ratio Measures • Relative Risk / Relative Prevalence • Odds Ratio • Rate Ratio / Hazard Ratio

  10. Review of the Basics • The 2x2 table—framework for constructing the ratio measures

  11. Review of the Basics • Assessing the Accuracy of Statistics • We use probability distributions to evaluate how close or far from the “truth” our statistics are by calculating a range of values which includes the “true” population value with a given probability. This range is a confidence interval, and can be calculated around both measures of occurrence, e.g. incidence or prevalence, and measures of association, e.g. odds ratios or relative risks..

  12. Review of the Basics • Tests of Statistical Significance • Confidence intervals around measures of association provide evidence for or against equality. • Statistical tests go beyond this by generating a specific probability that a given difference we see in our sample is due solely to chance imposed by the sampling process. • This probability is thep-value.

  13. Review of the Basics • We again use probability distributions to formally test hypotheses about sample statistics.

  14. Review of the Basics • Multivariable modeling should be the culmination of an analytic strategy that includes articulating a conceptual framework and carrying out preliminary analysis. • BEFORE any multivariable modeling— • Select variables of interest • Define levels of measurement, sometimes more than once, for a given variable • Examine univariate distributions • Examine bivariate distributions

  15. Review of the Basics • BEFORE any multivariable modeling— • Perform single factor stratified analysis to assess confounding and effect modification • Rethink variables and levels of measurement • Perform multiple factor stratified analysis with different combinations of potential confounders / effect modifiers • These steps should never be skipped!

  16. Review of the Basics With confounding, the association between a risk factor and a health outcome is the same (or close to the same) in each stratum, but the adjusted association differs from the crude. With effect modification, the association between a risk factor and a health outcome varies from stratum to stratum.

  17. Review of the Basics • Assessing Effect Modification • Stratified Analysis: Are the stratum-specific measures of association different (heterogeneous)? • Regression Analysis: Is the beta coefficient resulting from the multiplication of two variables large? • Regardless of the method, if the stratum-specific estimates differ, then reporting a weighted average will mask the important stratum-specific differences. • Stratum-specific differences can be statistically tested.

  18. Review of the Basics • Assessing Confounding • Standardization: Does the standardized measure differ from the unstandardized measure? • Stratified Analysis: Does the adjusted measure of association differ from the crude measure of association? • Regression Analysis: Does the beta coefficient for a variable in a model that includes a potential confounder differ from the beta coefficient for that same variable in a model that does not include the potential confounder?

  19. Review of the Basics • Assessing Confounding • Regardless of the method, if the adjusted estimate differs from the crude estimate of association, then confounding is present. • Determining whether a difference between the crude and adjusted measures is meaningful is a matter of judgment, since there is • no formal statistical test for the presence of confounding. • By convention, epidemiologists consider confounding to be present if the adjusted measure of association differs from the crude measure by >= 10%

  20. Review of the Basics • Moving toward Multivariable Modeling: • Jointly Assessing a Set (but which set?) of Variables • “A sufficient confounder group is a minimal set of one or more risk factors whose simultaneous control in the analysis will correct for joint confounding in the estimation of the effect of interest. Here, 'minimal' refers to the property that, for any such set of variables, no variable can be removed from the set without sacrificing validity.” • Kleinbaum, DG, Kupper, LL., Morgenstern,H. Epidemiologic Research: Principles and Quantitative Methods, Nostrand Reinhold Company, New York, 1982, p 276.

  21. Linear Models: General Considerations The most common regression models used to analyze health data express the hypothesized association between risk or other factors and an outcome as a linear (straight line) relationship: Dependent Var. = ------Independent Variables------ This equation is relevant to any linear model; what differentiates one modeling approach from another is • the structure of the outcome variable, and • the corresponding structure of the errors.

  22. Linear Models: General Considerations The straight line relationship includes an intercept and one or more slope parameters. The differences between the actual data points and the regression line are the errors.

  23. Linear Models: General Considerations Regression analysis is an alternative to and an extension of simpler methods used to test hypotheses about associations: • For means,regression analysis is an extension of t-tests and analysis of variance. • Forproportions or rates,, regression analysis is an extension of chi-square tests from contingency tables – crude and stratified analysis.

  24. Linear Models: General Considerations Why not just do stratified analysis? Why Use Regression Modeling Approaches? Unlike stratified analysis, regression approaches: • more efficiently handle many variables and the sparse data that stratification by many factors may imply • can accommodate both continuous and discrete variables, both as outcomes and as independent variables.

  25. Linear Models: General Considerations • Unlike stratified analysis, regression approaches: • allow for examination of multiple factors (independent variables) simultaneously in relation to an outcome (dependent variable)—all variables can be considered "exposures" or "covariates" depending on the hypotheses • provide more flexibility in assessing effect modification and controlling confounding.

  26. Linear Models: General Considerations The Purpose of Modeling Sometimes, regression modeling is carried out in order to assess one association; other variables are included to adjust for confounding or account for effect modification. In this scenario, the focus is on obtaining the ‘best’ estimate of the single association. Sometimes, regression modeling is carried out in order to assess multiple, competing exposures, or to identify a set of variables that together predict the outcome.

  27. Linear Model: General Considerations • The utility of regression models is their ability to simultaneously handle many independent variables. • Models may be quite complex, including both continuous and discrete measures, and measures at the individual level and/or at an aggregate level such as census tract, zip code, or county. • Interpretation of the slopes or “beta coefficients” can be equally complex as they reflect measures of occurrence (means, proportions, rates) or measures of association (odds ratios, relative risks rate ratios) when used singly or in combination.

  28. Linear Models: General Considerations The Traditional, 'Normal' Regression Model This model has the following properties: • The outcome "Y" is continuous & normally distributed. • The Y values are independent. • The errors are independent, normally distributed; their sum equals 0, with constant variance across levels of X. • The expected value (mean) of the Y's is linearly related to X (a straight line relationship exists).

  29. Linear Models: General Considerations When the outcome variable is not continuous and normally distributed, a linear model cannot be written in the same way, and the properties listed above no longer pertain. For example, if the outcome variable is a proportion or rate: • The errors are not normally distributed • The variance across levels of X is not constant. (By definition, p(1-p) changes with p and r changes with r). • The expected value (proportion or rate) is not linearly related to X (a straight line relationship does not exist).

  30. Linear Models: General Considerations Proportion with the outcome When an outcome is a proportion or rate, its relationship with a risk factors is not linear. x

  31. Linear Models: General Considerations General Linear Models How can a linear modeling approach be applied to the many health outcomes that are proportions or rates? The normal, binomial, Poisson, exponential, chi-square, and multinomial distributions are all in the exponential family. Therefore, it is possible to define a “link function” that transforms an outcome variable from any of these distributions so that it is linearly related to a set of independent variables; the error terms can also be defined to correspond to the form of the outcome variable.

  32. Linear Models: General Considerations General Linear Models Some common link functions: • identity (untransformed) • natural log • logit • cumulative logit • generalized logit The interpretation of the parameter estimates—the beta coefficients—changes depending on whether and how the outcome variable has been transformed (which link function has been used).

  33. Linear Models:General Considerations Linear equation The logit link function: (logistic regression) Non-linear equation

  34. Linear Models:General Considerations The natural log link function: log-binomial or Poisson regression with count data Non-linear model The linear model

  35. Linear Models: General Considerations 'Normal' Regression—Link=Identity, Dist=Normal Logistic Regression—Link=Logit, Dist=Binomial Log-Binomial or Poisson Regression with Count Data— Link=Log, Dist=Binomial or Dist=Poisson

  36. Linear Models: General Considerations Ordinal and Nominal Model For an ordinal outcome For a nominal outcome with k+1 categories with k+1 categories Both the numerator and Fixed denominator denominator change (reference) category http://www.indiana.edu/%7Estatmath/stat/all/cat/2b1.html

  37. Linear Models: General Considerations Some Models with Correlated Errors Mixed Models • Multilevel/clustered data • Repeated measures/longitudinal data • Matched data • Time series analysis • Spatial analysis

  38. Linear Models: General Considerations Some Other Multivariable Statistical Approaches • Survival Analysis—censored data Parametric Semi-parametric / proportional hazards • Structural Equation Modeling / mediation analysis—exploring causal pathways • Bayesian modeling

  39. Linear Models: General Considerations Regression Modeling Results Measures of Occurrence Predicted Values: Crude, Adjusted, or Stratum-Specific The predicted values are points on the regression line given particular values of the set of independent variables • ‘Normal’ model yields means • Logistic model yields ln(odds) • Binomial / Poisson models yield ln(proportions / rates)

  40. Linear Models:General Considerations Regression Modeling Results Measures of Association Beta coefficients: Crude, Adjusted, or Stratum-Specific The measures of association are comparisons of points on the regression line at differing values of the independent variables

  41. Linear Models:General Considerations Regression Modeling Approaches Measures of Association

  42. Linear Models: General Considerations Regression Modeling Results Measures of Association General Form of Confidence Intervals and Hypothesis Testing for a Simple Comparison— a Single Beta Coefficient

  43. Common Linear Regression Models Examples with Smoking and Birthweight

  44. ‘Normal’ Regression Predicted Values (Means): Predicted values use the entire regression equation, including the intercept. Measures of Association (Differences Between Means): When comparing two predicted values—a measure of association— the intercept terms cancel out.

  45. ‘Normal’ Regression in SAS • /* Continuous Birthweight, OLS Regression */ • procregdata=one; • model dbirwt = smoking; • run; • procregdata=one; • model dbirwt = smoking late_no_pnc; • run; • /* Continuous Birthweight, Regression Using ML */ • procgenmoddata=one; • model dbirwt = smoking / link=identity dist=normal; • run; • procgenmoddata=one; • model dbirwt = smoking late_no_pnc • / link=identity dist=normal; • run;

  46. ‘Normal’ Regression • Descriptive Statistics and • Simple t-test for Smoking and Birthweight

  47. 'Normal' Regression “dbirwt” = Birthweight (grams) from vital records

  48. 'Normal' Regression • model dbirwt = smoking; • Predicted value for smokers: • Mean birthweight = 3155.85 = 3352.74–196.89(1) • Predicted value for non-smokers: • Mean birthweight = 3352.74 = 3352.74–196.89(0) • Measure of Association / comparison of predicted values: • Difference between means = 3155.85-3352.74= -196.89 • 95% CI = -196.89 +/- 1.96*6.29 = (-184.6, -209.2)

  49. 'Normal' Regression with OLS in SAS

  50. Logistic Regression Predicted Values When the outcome is a proportion with a logistic transformation, the predicted values are log odds Dichotomous Independent Variable Coded 1 and 0: In general:

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