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Integrating Machine Learning Into a Medical Decision Support System to Address the Problem of Missing Patient Data

机译:将机器学习集成到医疗决策支持系统中,以解决患者数据丢失的问题

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In this paper, we present a framework which enables medical decision making in the presence of partial information. At its core is ontology-based automated reasoning, machine learning techniques are integrated to enhance existing patient datasets in order to address the issue of missing data. Our approach supports interoperability between different health information systems. This is clarified in a sample implementation that combines three separate datasets (patient data, drug-drug interactions and drug prescription rules) to demonstrate the effectiveness of our algorithms in producing effective medical decisions. In short, we demonstrate the potential for machine learning to support a task where there is a critical need from medical professionals by coping with missing or noisy patient data and enabling the use of multiple medical datasets.
机译:在本文中,我们提出了一个框架,该框架可以在存在部分信息的情况下做出医疗决策。它的核心是基于本体的自动推理,它集成了机器学习技术以增强现有的患者数据集,以解决丢失数据的问题。我们的方法支持不同健康信息系统之间的互操作性。在将三个独立的数据集(患者数据,药物相互作用和药物处方规则)组合在一起的示例实现中对此进行了澄清,以证明我们的算法在制定有效的医疗决策中的有效性。简而言之,我们通过应对丢失或嘈杂的患者数据并支持使用多个医学数据集,证明了机器学习在满足医疗专业人员迫切需求的任务中的潜力。

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