Journal article
A BERT model generates diagnostically relevant semantic embeddings from pathology synopses with active learning
Abstract
BackgroundPathology synopses consist of semi-structured or unstructured text summarizing visual information by observing human tissue. Experts write and interpret these synopses with high domain-specific knowledge to extract tissue semantics and formulate a diagnosis in the context of ancillary testing and clinical information. The limited number of specialists available to interpret pathology synopses restricts the utility of the inherent …
Authors
Mu Y; Tizhoosh HR; Tayebi RM; Ross C; Sur M; Leber B; Campbell CJV
Journal
Communications Medicine, Vol. 1, No. 1,
Publisher
Springer Nature
DOI
10.1038/s43856-021-00008-0
ISSN
2730-664X