Annals, Academy of Medicine, Singapore (Mar 2024)

Bridging expertise with machine learning and automated machine learning in clinical medicine

  • Chien-Chang Lee,
  • James Yeongjun Park,
  • Wan-Ting Hsu

DOI
https://doi.org/10.47102/annals-acadmedsg.202481
Journal volume & issue
Vol. 53, no. 3
pp. 129 – 131

Abstract

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In this issue of the Annals, Thirunavukarasu et al.’s systematic review on the clinical performance of automated machine learning (autoML) highlights its extensive applicability across 22 clinical specialties, showcasing its potential to redefine healthcare by making artificial intelligence (AI) technologies accessible to those without advanced computational skills.1 This enables the development of effective AI models that could rival or exceed the accuracy of traditional machine learning (ML) approaches and human diagnostic methods.