Feb. 9, 2024, 5:43 a.m. | Thomas A. Lasko John M. Still Thomas Z. Li Marco Barbero Mota William W. Stead Eric V. Strobl Bennett

cs.LG updates on arXiv.org arxiv.org

Insufficiently precise diagnosis of clinical disease is likely responsible for many treatment failures, even for common conditions and treatments. With a large enough dataset, it may be possible to use unsupervised machine learning to define clinical disease patterns more precisely. We present an approach to learning these patterns by using probabilistic independence to disentangle the imprint on the medical record of causal latent sources of disease. We inferred a broad set of 2000 clinical signatures of latent sources from 9195 …

clinical cs.lg dataset diagnosis discovery disease machine machine learning patterns stat.ap stat.ml treatment unsupervised unsupervised machine learning

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