Author:
Zagidullin Bulat,Pasanen Annukka,Loukovaara Mikko,Bützow Ralf,Tang Jing
Abstract
AbstractEndometrial carcinoma (EC) is one of the most common gynecological cancers in the world. In this work we apply Cox proportional hazards (CPH) and optimal survival tree (OST) algorithms to the retrospective prognostic modeling of disease-specific survival in 842 EC patients. We demonstrate that linear CPH models are preferred for the EC risk assessment based on clinical features alone, while interpretable, non-linear OST models are favored when patient profiles can be supplemented with additional biomarker data. We show how visually interpretable tree models can help generate and explore novel research hypotheses by studying the OST decision path structure, in which L1 cell adhesion molecule expression and estrogen receptor status are correctly indicated as important risk factors in the p53 abnormal EC subgroup. To aid further clinical adoption of advanced machine learning techniques, we stress the importance of quantifying model discrimination and calibration performance in the development of explainable clinical prediction models.
Funder
European Research Council
Otto A. Malm Foundation
University of Helsinki Integrative Life Science Doctoral Programme
Helsinki University Hospital
Cancer Foundation Finland
Publisher
Springer Science and Business Media LLC
Cited by
1 articles.
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