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首页> 外文期刊>BMC Medical Informatics and Decision Making >Systematic literature review of machine learning methods used in the analysis of real-world data for patient-provider decision making
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Systematic literature review of machine learning methods used in the analysis of real-world data for patient-provider decision making

机译:系统文献综述用于分析患者提供者决策的现实世界数据分析

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Machine learning is a broad term encompassing a number of methods that allow the investigator to learn from the data. These methods may permit large real-world databases to be more rapidly translated to applications to inform patient-provider decision making. This systematic literature review was conducted to identify published observational research of employed machine learning to inform decision making at the patient-provider level. The search strategy was implemented and studies meeting eligibility criteria were evaluated by two independent reviewers. Relevant data related to study design, statistical methods and strengths and limitations were identified; study quality was assessed using a modified version of the Luo checklist. A total of 34 publications from January 2014 to September 2020 were identified and evaluated for this review. There were diverse methods, statistical packages and approaches used across identified studies. The most common methods included decision tree and random forest approaches. Most studies applied internal validation but only two conducted external validation. Most studies utilized one algorithm, and only eight studies applied multiple machine learning algorithms to the data. Seven items on the Luo checklist failed to be met by more than 50% of published studies. A wide variety of approaches, algorithms, statistical software, and validation strategies were employed in the application of machine learning methods to inform patient-provider decision making. There is a need to ensure that multiple machine learning approaches are used, the model selection strategy is clearly defined, and both internal and external validation are necessary to be sure that decisions for patient care are being made with the highest quality evidence. Future work should routinely employ ensemble methods incorporating multiple machine learning algorithms.
机译:机器学习是一项广泛的术语,包括许多方法,允许调查人员从数据中学习。这些方法可以允许大型现实数据库更迅速翻译成申请以告知患者提供者决策。进行了该系统文献综述,以确定对采用机器学习的公布的观察研究,以便在患者提供者级别通知决策。实施了搜索策略,并通过两个独立审稿人评估了会议资格标准的研究。有关与研究设计相关的相关数据,确定了统计方法和强度和限制;使用罗核清单的修改版本评估研究质量。鉴定并评估了2014年1月至9月20日至9月20日的34个出版物。有多种方法,统计包和方法,用于识别的研究。最常见的方法包括决策树和随机森林方法。大多数研究应用内部验证,但只有两个进行了外部验证。大多数研究利用了一种算法,只有八项研究将多个机器学习算法应用于数据。罗核清单上的七件物品未能超过50%的发布研究。采用各种方法,算法,统计软件和验证策略在应用机器学习方法中,通知患者提供者决策。需要确保使用多种机器学习方法,明确定义了模型选择策略,并且内部和外部验证都是必要的,以确保患者护理的决策是以最高质量的证据制定的。未来的工作应经常使用包含多种机器学习算法的集合方法。

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