Concepedia

Publication | Open Access

Pathologist Validation of a Machine Learning–Derived Feature for Colon Cancer Risk Stratification

55

Citations

11

References

2023

Year

Abstract

In this prognostic study, pathologists were able to learn and reproducibly score for TAF, providing significant risk stratification on this independent data set. Although additional work is warranted to understand the biological significance of this feature and to establish broadly reproducible TAF scoring, this work represents the first validation to date of human expert learning from machine learning in pathology. Specifically, this validation demonstrates that a computationally identified histologic feature can represent a human-identifiable, prognostic feature with the potential for integration into pathology practice.

References

YearCitations

Page 1