Dataset for: Statistical Consequences of a Successful Lung Allocation System - Recovering Information and Reducing Bias in Models for Urgency
收藏Figshare2017-04-06 更新2026-04-29 收录
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https://figshare.com/articles/dataset/Dataset_for_Statistical_Consequences_of_a_Successful_Lung_Allocation_System_-_Recovering_Information_and_Reducing_Bias_in_Models_for_Urgency/4818349
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The lung allocation system has reduced the number of waitlist deaths by ranking transplant candidates based on a lung allocation score (LAS) that requires estimation of the current 1-year restricted mean waitlist survival (urgency). Fewer waitlist deaths and the systematic removal of candidates from the waitlist for transplantation present statistical challenges that must be addressed when using recent waitlist data. Multiple overlapping 1-year follow-up windows are used in a restricted mean model that estimates patient urgency based on updated risk factors at the start of the window. In simulation studies, our proposed multiple imputation procedure was able to produce unbiased parameter estimates with similar efficiency to those obtained if censoring had never occurred. The analysis of 10,740 lung transplant candidates revealed that for most risk factors incorporating additional follow-up windows produced more efficient estimates.
创建时间:
2017-04-06



