| Literature DB >> 34205398 |
Jean-Emmanuel Bibault1,2, Steven Hancock3, Mark K Buyyounouski3, Hilary Bagshaw3, John T Leppert4, Joseph C Liao4, Lei Xing3.
Abstract
Prostate cancer treatment strategies are guided by risk-stratification. This stratification can be difficult in some patients with known comorbidities. New models are needed to guide strategies and determine which patients are at risk of prostate cancer mortality. This article presents a gradient-boosting model to predict the risk of prostate cancer mortality within 10 years after a cancer diagnosis, and to provide an interpretable prediction. This work uses prospective data from the PLCO Cancer Screening and selected patients who were diagnosed with prostate cancer. During follow-up, 8776 patients were diagnosed with prostate cancer. The dataset was randomly split into a training (n = 7021) and testing (n = 1755) dataset. Accuracy was 0.98 (±0.01), and the area under the receiver operating characteristic was 0.80 (±0.04). This model can be used to support informed decision-making in prostate cancer treatment. AI interpretability provides a novel understanding of the predictions to the users.Entities:
Keywords: artificial intelligence; machine learning; prediction; prostate cancer
Year: 2021 PMID: 34205398 DOI: 10.3390/cancers13123064
Source DB: PubMed Journal: Cancers (Basel) ISSN: 2072-6694 Impact factor: 6.639