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Machine learning performance in a microbial molecular autopsy context: A cross-sectional postmortem human population study.

Yu ZhangJennifer L PechalCarl J SchmidtHeather R JordanWesley W WangMark Eric BenbowSing-Hoi SzeAaron M Tarone
Published in: PloS one (2019)
All algorithms performed well but with distinct features to their performance. Xgboost often produced the most accurate predictions but may also be more prone to overfitting. Random forest was the most stable across predictions that included more anatomic areas. Analysis of postmortem microbiota from more than three anatomic areas appears to yield limited returns on accuracy, with the eyes and rectum providing the most useful information correlating with circumstances of death in most cases for this dataset.
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