Abstract

Analyses of imperfectly assessed time to event outcomes give rise to biased hazard ratio estimates. This bias is a common challenge for studies of Alzheimer’s Disease (AD) because AD neuropathology can only be identified through brain autopsy and is therefore not available for most study participants. Clinical AD diagnosis, although more widely available, has imperfect sensitivity and specificity relative to AD neuropathology. In this study we present a sensitivity analysis approach using a bias-adjusted discrete proportional hazards model to quantify robustness of results to misclassification of a time to event outcome and apply this method to data from a longitudinal panel study of AD. Using data on 1,955 participants from the Adult Changes in Thought study we analyzed the association between average glucose level and AD neuropathology and conducted sensitivity analyses to explore how estimated hazard ratios varied according to AD classification accuracy. Unadjusted hazard ratios were closer to the null than estimates obtained under most scenarios for misclassification investigated. Confidence interval estimates from the unadjusted model were substantially underestimated compared to adjusted estimates. This study demonstrates the importance of exploring outcome misclassification in time to event analyses and provides an approach that can be undertaken without requiring validation data.

Highlights

  • Estimates of the relationship between time to event outcomes and exposures are biased in the presence of imperfect ascertainment of the outcome of interest

  • We investigated the association between average glucose levels and Alzheimer’s Disease (AD) neuropathology, demonstrating the effect of outcome misclassification resulting from the use of clinical diagnosis data to make inference about risk factors for underlying neuropathologic changes

  • To illustrate the use of the adjusted discrete proportional hazards model, we investigated the association between glucose levels and development of AD neuropathology

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Summary

Introduction

Estimates of the relationship between time to event outcomes and exposures are biased in the presence of imperfect ascertainment of the outcome of interest. When misclassification in the outcome is small and independent of predictor variables, the effect of misclassification on the measure of association is correspondingly small and towards the null. Assessing robustness of hazard ratio estimates to outcome misclassification

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