论文标题
使用替代贝叶斯模型计划可操作治疗过程的健康改进框架
Health improvement framework for planning actionable treatment process using surrogate Bayesian model
论文作者
论文摘要
基于个人特征的治疗的临床决策可有效改善健康。根据全面的患者信息,机器学习(ML)一直是诊断支持的主要问题。但是,其余的突出问题是在临床情况下的客观治疗过程的发展。这项研究提出了一个新颖的框架,以数据驱动的方式计划治疗过程。框架的一个关键点是通过使用代理贝叶斯模型对个人健康改善的“可行性”的评估,此外除了高性能的非线性ML模型。我们首先使用合成数据集从其方法的角度评估了框架。随后,将该框架应用于实际的健康检查数据集,该数据集包含来自3,132名参与者的数据,以提高单个级别的收缩压值。我们确认计算的治疗过程是可起作的,并且与降低血压的临床知识一致。这些结果表明,我们的框架可能有助于医疗领域的决策,从而为临床医生提供更深入的见解。
Clinical decision making regarding treatments based on personal characteristics leads to effective health improvements. Machine learning (ML) has been the primary concern of diagnosis support according to comprehensive patient information. However, the remaining prominent issue is the development of objective treatment processes in clinical situations. This study proposes a novel framework to plan treatment processes in a data-driven manner. A key point of the framework is the evaluation of the "actionability" for personal health improvements by using a surrogate Bayesian model in addition to a high-performance nonlinear ML model. We first evaluated the framework from the viewpoint of its methodology using a synthetic dataset. Subsequently, the framework was applied to an actual health checkup dataset comprising data from 3,132 participants, to improve systolic blood pressure values at the individual level. We confirmed that the computed treatment processes are actionable and consistent with clinical knowledge for lowering blood pressure. These results demonstrate that our framework could contribute toward decision making in the medical field, providing clinicians with deeper insights.