Detecting Inaccurate Predictions of Pediatric Surgical Durations

2016 IEEE International Conference on Data Science and Advanced Analytics (DSAA)(2016)

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摘要
Accurate predictions of surgical case lengths are useful for patient scheduling in hospitals. In pediatric hospitals, this prediction problem is particularly difficult. Predictions are typically provided by highly trained medical staff, but these predictions are not necessarily accurate. We present a novel decision support tool that detects when expert predictions are inaccurate so that these predictions can be re-evaluated. We explore several different algorithms. We provide methodological insights and suggest directions of future work.
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关键词
surgical case lengths,statistical learning,medical analytics
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