Author:
Saito Shinpei,Sakamoto Shinichi,Higuchi Kosuke,Sato Kodai,Zhao Xue,Wakai Ken,Kanesaka Manato,Kamada Shuhei,Takeuchi Nobuyoshi,Sazuka Tomokazu,Imamura Yusuke,Anzai Naohiko,Ichikawa Tomohiko,Kawakami Eiryo
Abstract
AbstractMachine learning technology is expected to support diagnosis and prognosis prediction in medicine. We used machine learning to construct a new prognostic prediction model for prostate cancer patients based on longitudinal data obtained from age at diagnosis, peripheral blood and urine tests of 340 prostate cancer patients. Random survival forest (RSF) and survival tree were used for machine learning. In the time-series prognostic prediction model for metastatic prostate cancer patients, the RSF model showed better prediction accuracy than the conventional Cox proportional hazards model for almost all time periods of progression-free survival (PFS), overall survival (OS) and cancer-specific survival (CSS). Based on the RSF model, we created a clinically applicable prognostic prediction model using survival trees for OS and CSS by combining the values of lactate dehydrogenase (LDH) before starting treatment and alkaline phosphatase (ALP) at 120 days after treatment. Machine learning provides useful information for predicting the prognosis of metastatic prostate cancer prior to treatment intervention by considering the nonlinear and combined impacts of multiple features. The addition of data after the start of treatment would allow for more precise prognostic risk assessment of patients and would be beneficial for subsequent treatment selection.
Funder
Grant-in-Aid for Scientific Research
Japan Science and Technology Agency (JST) CREST Grant
Publisher
Springer Science and Business Media LLC
Cited by
8 articles.
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