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Mark Pletcher 6/9/2011

Prognostic and Genetic Tests. Mark Pletcher 6/9/2011. An Example. “Mammaprint” Gene expression profiling for Breast CA Grind up the tumor, extract RNA Incubate with a microarray of DNA fragments to estimate expression for each gene 70 previously identified genes predict outcomes.

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Mark Pletcher 6/9/2011

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  1. Prognostic and Genetic Tests Mark Pletcher 6/9/2011

  2. An Example • “Mammaprint” • Gene expression profiling for Breast CA • Grind up the tumor, extract RNA • Incubate with a microarray of DNA fragments to estimate expression for each gene • 70 previously identified genes predict outcomes

  3. Van de Vijver et al. NEJM 2002;347(25):1999-2009

  4. An Example • “Mammaprint” • Pattern of expression correlates with disease-free and overall survival

  5. Van de Vijver et al. NEJM 2002;347(25):1999-2009

  6. An Example • “Mammaprint” 10-year probability of: SurvivalFree of mets “Good” pattern 95% 85% “Bad” pattern 55% 51% Van de Vijver et al. NEJM 2002;347(25):1999-2009

  7. Outline • Prognostic vs. Diagnostic Tests • Evaluating a Prognostic Test • Accuracy • Utility • Genetic Tests (very briefly)

  8. Prognostic vs. Diagnostic Tests • How is a prognostic test different from a diagnostic test?

  9. Prognostic vs. Diagnostic Tests Identify Prevalent Disease Predict Incident Disease/Outcome Prior to Test After Test Cross-Sectional Cohort 1 (gold standard) <1 (not clairvoyant)

  10. Prognostic vs. Diagnostic Tests • Classic prognosis: • Prediction of death after diagnosis of a disease

  11. Prognostic vs. Diagnostic Tests • Prognosis, broadly speaking: • Prediction of any future event • Death or recurrence of cancer • Stroke after presentation for TIA • Peri-operative MI in surgical patients • First MI in asymptomatic persons

  12. Prognostic vs. Diagnostic Tests • Prognosis vs. Diagnosis: A Spectrum • Grey areas • Pre-clinical disease: Coronary calcium • “Reversible” disease: Tiny lung CA • Irreversible predisposition: Huntington’s gene

  13. Prognostic vs. Diagnostic Tests • Prognostication ≠ Etiology • Risk factor • Causes the disease • Reducing it may prevent disease • Confounding is crucial issue in observational studies • Risk marker (i.e., prognostic factor) • Predicts the disease • Need not be concerned about unmeasured confounders • Not all risk markers are risk factors…(e.g., CRP)

  14. Evaluating Prognostic Tests • Test Performance • Association • Discrimination • Calibration • Reclassification • Pitfalls • Test Utility

  15. Evaluating Prognostic Tests • Association • Is the marker associated with development of the disease? • Odds ratio, relative risk, hazard ratio • “Independently associated” means after adjustment for other known predictors

  16. Evaluating Prognostic Tests • HRadj = 4.6 • P<.001 Van de Vijver et al. NEJM 2002;347(25):1999-2009

  17. Evaluating Prognostic Tests • Discrimination • Ability to distinguish between people with higher or lower risk of disease • Metrics: just like diagnostic tests!? • Sensitivity/specificity • ROC curves

  18. Evaluating Prognostic Tests • Mammaprint Sensitivity = 28/30 = 93% Specificity = 41/83 = 49% Mets <5yrNo mets

  19. Evaluating Prognostic Tests • Coronary artery calcium • Predictor of CHD events • Adds discrimination • AUROC .63.68 FRS = Framingham Risk Score CACS = Coronary Artery Calcium Score Greenland et al. JAMA 2004;291(2):210-215

  20. Evaluating Prognostic Tests • Discrimination • Results are specific to a particular time point • 5-year risk of metastases or death • 90-day risk of stroke

  21. Evaluating Prognostic Tests • Discrimination Different results at 5 years….

  22. Evaluating Prognostic Tests • Discrimination …than at 10 years

  23. Evaluating Prognostic Tests • Discrimination • Often 1 time point is most relevant or easily communicated, but information is lost… • Can think of a “set” of discrimination statistics/ROC curves • Harell’s C-Statistic • Integrated C-statistic for survival data • Similar interpretation as AUROC Harrell et al. Stat Med 1996;15(4):361-87.

  24. Evaluating Prognostic Tests • Calibration • How close is predicted risk to actual risk?

  25. Evaluating Prognostic Tests • Prognostic test results are often converted into absolute risk estimates • Like post-test probabilities in diagnosis • Required for clinical interpretation • Estimated directly in a longitudinal study

  26. Evaluating Prognostic Tests • But absolute risk estimates can be “off” • When derivation population different than target population, etc • Framingham example

  27. D’Agostino et al. JAMA 2001;286(2):180-187

  28. Evaluating Prognostic Tests • Calibration is “orthogonal” to discrimination • Awful discrimination but good calibration • Awful calibration but good discrimination • Miscalibration leads to worse errors, but it’s easier to fix…

  29. Evaluating Prognostic Tests • Reclassification • How often does the test lead to reclassification across a treatment threshold? • i.e., how often might the test lead to a change in treatment? • CRP reclassification example

  30. Evaluating Prognostic Tests • Reclassification • How often does the test lead to reclassification across a treatment threshold? Cook et al. Annals of Int Med 2006;145(1):21-29

  31. Evaluating Prognostic Tests • Reclassification metrics • Net Reclassification Improvement (NRI) • Net % reclassified correctly • Depends on specified treatment thresholds/categories

  32. Evaluating Prognostic Tests • Pitfalls for prognostic test studies • Loss to follow-up and competing risks • Especially problematic if loss is “differential”

  33. Evaluating Prognostic Tests • Pitfalls for prognostic test studies • Bias if clinician knows the test result • e.g. – persons with coronary calcium+ are: • More likely to get revascularization • More likely to get referred to ED if they have chest pain

  34. Evaluating Prognostic Tests • Pitfalls for prognostic test studies • Overfitting • Test will perform best in sample from which it is derived • More variables and “choices”  more danger of overfitting • Gene expression arrays, proteomics

  35. Evaluating Prognostic Tests • Clinical Utility • Does it improve health?

  36. Evaluating Prognostic Tests Better patient understanding of disease/risk 1 2 Healthier patient behaviors Better health Test Result 3 Better clinical decisions Pletcher et al. Circulation 2011;123;1116-1124

  37. Evaluating Prognostic Tests • Clinical Utility • Cannot be estimated from test performance metrics alone • Need to understand downstream consequences, including • Benefits and harms of interventions based on test result • Harms from test itself • Quality and length of life • Costs

  38. Evaluating Prognostic Tests • Clinical Utility • Can be estimated directly… • Randomized trial of test-and-treat strategy • …or indirectly • Decision analysis/cost-effectiveness modeling • Same issues for diagnostic tests, and especially important when screening apparently healthy people… Pletcher et al. Circulation 2011;123;1116-1124

  39. Genetic Tests • Potentially useful for mechanistic insight • Prognostic implications across individuals in a family • Otherwise, must meet same standards for prognostic utility as other tests • Single gene studies often disappointing

  40. Key concepts • For prognostic tests, an element of time and chance remain (perfect test impossible) • Discrimination vs. Calibration • Reclassification indices help us understand how often a test might change management • Clinical utility depends on accounting for net benefits and harms (and costs)

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