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A comparative data analytic approach to construct a risk trade-off for cardiac patients' re-admissions

机译:一种比较数据分析方法来构建心脏病患者再次入院的风险权衡

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Purpose The purpose of this paper is to formulate a framework to construct a patient-specific risk score and therefore to classify these patients into various risk groups that can be used as a decision support mechanism by the medical decision makers to augment their decision-making process, allowing them to optimally use the limited resources available. Design/methodology/approach A conventional statistical model (logistic regression) and two machine learning-based (i.e. artificial neural networks (ANNs) and support vector machines) data mining models were employed by also using five-fold cross-validation in the classification phase. In order to overcome the data imbalance problem, random undersampling technique was utilized. After constructing the patient-specific risk score, k-means clustering algorithm was employed to group these patients into risk groups. Findings Results showed that the ANN model achieved the best results with an area under the curve score of 0.867, while the sensitivity and specificity were 0.715 and 0.892, respectively. Also, the construction of patient-specific risk scores offer useful insights to the medical experts, by helping them find a trade-off between risks, costs and resources. Originality/value The study contributes to the existing body of knowledge by constructing a framework that can be utilized to determine the risk level of the targeted patient, by employing data mining-based predictive approach.
机译:目的本文的目的是建立一个框架,以构建特定于患者的风险评分,从而将这些患者分类为各种风险组,医疗决策者可以将其用作决策支持机制,以扩大他们的决策过程,使他们可以最佳地利用有限的可用资源。设计/方法/方法在分类阶段还使用五重交叉验证,采用了传统的统计模型(逻辑回归)和两个基于机器学习(即人工神经网络(ANN)和支持向量机)的数据挖掘模型。 。为了克服数据不平衡的问题,采用了随机欠采样技术。构建了患者特定的风险评分后,采用k均值聚类算法将这些患者分组为风险组。研究结果表明,ANN模型的最佳结果是曲线下的面积为0.867,而敏感性和特异性分别为0.715和0.892。同样,通过帮助患者在风险,成本和资源之间进行权衡取舍,构建针对患者的风险评分可以为医学专家提供有用的见解。独创性/价值通过采用基于数据挖掘的预测方法,构建可用于确定目标患者风险水平的框架,该研究有助于现有知识体系。

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