Song Qingyuan, Seigne John D, Schned Alan R, Kelsey Karl T, Karagas Margaret R, Hassanpour Saeed
Department of Biomedical Data Science, Dartmouth College, Hanover, NH.
Department of Surgery, Division of Urology, Dartmouth-Hitchcock Medical Center, Lebanon, NH.
AMIA Jt Summits Transl Sci Proc. 2020 May 30;2020:607-616. eCollection 2020.
Improving the consistency and reproducibility of bladder cancer prognoses necessitates the development of accurate, predictive prognostic models. Current methods of determining the prognosis of bladder cancer patients rely on manual decision-making, including factors with high intra- and inter-observer variability, such as tumor grade. To advance the long-term prediction of bladder cancer prognoses, we developed and tested a computational model to predict the 10-year overall survival outcome using population-based bladder cancer data, without considering tumor grade classification. The resulted predictive model demonstrated promising performance using a combination of clinical and molecular features, and was also strongly related to patient overall survival in Cox models. Our study suggests that machine learning methods can provide reliable long-term prognoses for bladder cancer patients, without relying on the less consistent tumor grade. If validated in clinical trials, this automated approach could guide and improve personalized management and treatment for bladder cancer patients.
提高膀胱癌预后的一致性和可重复性需要开发准确的预测性预后模型。目前确定膀胱癌患者预后的方法依赖于人工决策,包括观察者内和观察者间变异性较高的因素,如肿瘤分级。为了推进膀胱癌预后的长期预测,我们开发并测试了一种计算模型,该模型使用基于人群的膀胱癌数据预测10年总生存结果,而不考虑肿瘤分级分类。所得的预测模型在结合临床和分子特征时表现出良好的性能,并且在Cox模型中也与患者总生存密切相关。我们的研究表明,机器学习方法可以为膀胱癌患者提供可靠的长期预后,而不依赖于一致性较低的肿瘤分级。如果在临床试验中得到验证,这种自动化方法可以指导和改善膀胱癌患者的个性化管理和治疗。