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用于慢性心力衰竭药物推荐的非互斥决策树构建

Construction of a Non-Mutually Exclusive Decision Tree for Medication Recommendation of Chronic Heart Failure.

作者信息

Bai Yongyi, Yao Haishen, Jiang Xuehan, Bian Suyan, Zhou Jinghui, Sun Xingzhi, Hu Gang, Sun Lan, Xie Guotong, He Kunlun

机构信息

Department of Cardiology, The Second Medical Center and National Clinical Research Center for Geriatric Diseases, Chinese PLA General Hospital, Beijing, China.

Beijing Key Laboratory of Precision Medicine for Chronic Heart Failure, Chinese PLA General Hospital, Beijing, China.

出版信息

Front Pharmacol. 2022 Feb 23;12:758573. doi: 10.3389/fphar.2021.758573. eCollection 2021.

Abstract

Although guidelines have recommended standardized drug treatment for heart failure (HF), there are still many challenges in making the correct clinical decisions due to the complicated clinical situations of HF patients. Each patient would satisfy several recommendations, meaning the decision tree of HF treatment should be nonmutually exclusive, and the same patient would be allocated to several leaf nodes in the decision tree. In the current study, we aim to propose a way to ensemble a nonmutually exclusive decision tree for recommendation system for complicated diseases, such as HF. The nonmutually exclusive decision tree was constructed via knowledge rules summarized from the HF clinical guidelines. Then similar patients were defined as those who followed the same pattern of leaf node allocation according to the decision tree. The frequent medication patterns for each similar patient were mined using the Apriori algorithms, and we also carried out the outcome prognosis analyses to show the capability for the evidence-based medication recommendations of our nonmutually exclusive decision tree. Based on a large database that included 29,689 patients with 84,705 admissions, we tested the framework for HF treatment recommendation. In the constructed decision tree, the HF treatment recommendations were grouped into two independent parts. The first part was recommendations for new cases, and the second part was recommendations when patients had different historical medication. There are 14 leaf nodes in our decision tree, and most of the leaf nodes had a guideline adherence of around 90%. We reported the top 10 popular similar patients, which accounted for 32.84% of the whole population. In addition, the multiple outcome prognosis analyses were carried out to assess the medications for one of the subgroups of similar patients. Our results showed even for the subgroup of the same similar patients that no one medication pattern would benefit all outcomes. In the present study, the methodology to construct a nonmutually exclusive decision tree for medication recommendations for HF and its application in CDSS was proposed. Our framework is universal for most diseases and could be generally applied in developing the CDSS for treatment.

摘要

尽管指南已推荐针对心力衰竭(HF)的标准化药物治疗,但由于HF患者临床情况复杂,在做出正确的临床决策方面仍存在许多挑战。每位患者可能符合多项推荐,这意味着HF治疗的决策树不应相互排斥,同一患者可能会被分配到决策树中的多个叶节点。在本研究中,我们旨在提出一种方法,为诸如HF等复杂疾病的推荐系统集成一个非相互排斥的决策树。非相互排斥的决策树是通过从HF临床指南总结的知识规则构建的。然后,将遵循决策树中叶节点分配相同模式的患者定义为相似患者。使用Apriori算法挖掘每个相似患者的频繁用药模式,并且我们还进行了结局预后分析,以展示我们的非相互排斥决策树在循证用药推荐方面的能力。基于一个包含29,689名患者、84,705次入院记录的大型数据库,我们测试了HF治疗推荐框架。在所构建的决策树中,HF治疗推荐分为两个独立部分。第一部分是针对新病例的推荐,第二部分是患者有不同既往用药情况时的推荐。我们的决策树中有14个叶节点,大多数叶节点的指南遵循率约为90%。我们报告了前10名最常见的相似患者,其占总人群的32.84%。此外,对其中一个相似患者亚组进行了多项结局预后分析,以评估用药情况。我们的结果表明,即使对于同一相似患者亚组,也没有一种用药模式能使所有结局都受益。在本研究中,提出了为HF构建非相互排斥决策树以进行用药推荐及其在临床决策支持系统(CDSS)中的应用的方法。我们的框架对大多数疾病具有通用性,可普遍应用于开发治疗用的CDSS。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b36a/8904717/394f96cecb7b/fphar-12-758573-g001.jpg

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