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Benchmarking clinical risk prediction algorithms with ensemble machine learning for the noninvasive diagnosis of liver fibrosis in NAFLD.

Vivek CharuJane W LiangAjitha MannalitharaAllison J KwongLu TianW Ray Kim
Published in: Hepatology (Baltimore, Md.) (2024)
Notably, the SAFE score performed similarly to the superlearner, both of which outperformed FIB-4, APRI, Forns, and BARD scores in the validation data sets. Surprisingly, the superlearner derived from 12 base models matched the performance of one with 90 base models. Overall, the superlearner, being the "best-in-class" machine-learning predictor, excelled in detecting fibrotic NASH, and this approach can be used to benchmark the performance of conventional clinical risk prediction models.
Keyphrases
  • machine learning
  • liver fibrosis
  • big data
  • artificial intelligence
  • deep learning
  • electronic health record
  • systemic sclerosis
  • convolutional neural network