Department of Software Engineering, Sami Shamoon College of Engineering, Beer-Sheba, Israel.
Program for Experimental and Theoretical Modeling, Division of Hepatology, Department of Medicine, Stritch School of Medicine, Loyola University Chicago, Maywood, IL, USA.
Math Biosci. 2022 Jan;343:108756. doi: 10.1016/j.mbs.2021.108756. Epub 2021 Dec 6.
Mathematical models for hepatitis C virus (HCV) dynamics have provided a means for evaluating the antiviral effectiveness of therapy and estimating treatment outcomes such as the time to cure. Recently, a mathematical modeling approach was used in the first proof-of-concept clinical trial assessing in real-time the utility of response-guided therapy with direct-acting antivirals (DAAs) in chronic HCV-infected patients. Several retrospective studies have shown that mathematical modeling of viral kinetics predicts time to cure of less than 12 weeks in the majority of individuals treated with sofosbuvir-based as well as other DAA regimens. A database of these studies was built, and machine learning methods were evaluated for their ability to estimate the time to cure for each patient to facilitate real-time modeling studies. Data from these studies exploring mathematical modeling of HCV kinetics under DAAs in 266 chronic HCV-infected patients were gathered. Different learning methods were applied and trained on part of the dataset ('train' set), to predict time to cure on the untrained part ('test' set). Our results show that this machine learning approach provides a means for establishing an accurate time to cure prediction that will support the implementation of individualized treatment.
用于 HCV 动力学的数学模型为评估治疗的抗病毒效果和估计治疗结果(如治愈时间)提供了一种手段。最近,一种数学建模方法被用于首次概念验证临床试验,实时评估直接作用抗病毒药物(DAA)在慢性 HCV 感染患者中基于反应的治疗的效用。几项回顾性研究表明,病毒动力学的数学建模预测了大多数接受基于索非布韦和其他 DAA 方案治疗的个体在 12 周内治愈的时间。建立了这些研究的数据库,并评估了机器学习方法估计每个患者治愈时间的能力,以促进实时建模研究。从这些研究中收集了 266 名慢性 HCV 感染患者接受 DAA 治疗时 HCV 动力学数学建模的数据。应用了不同的学习方法,并在数据集的一部分(“训练”集)上进行了训练,以预测未训练部分(“测试”集)的治愈时间。我们的结果表明,这种机器学习方法为建立准确的治愈时间预测提供了一种手段,这将支持个体化治疗的实施。