基于病历的模糊c均值聚类技术动态患者分类

Devi Fajar Wati, F. Renaldi, I. Santikarama
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摘要

卫生机构在纸质病历基础上积极实施电子病历(EMR)。目前,EMR在提取有用信息或跟踪患者疾病方面的信息量并不大。可以通过数据挖掘删除的隐藏模式可以帮助从业者理解谨慎的关系,例如住院患者分类。在医院对患者进行分组,有助于医务人员了解工作和行动,提供正确的决策和快速的行动。然而,使用数据挖掘对患者进行分类存在一些挑战,其中之一是根据所使用的数据选择正确聚类结果的方法。虽然已经有许多研究讨论了患者的分类,但没有人讨论动态患者的分类,特别是在医疗记录中。我们认为这是一个重要的问题,因为在医疗记录中,一个数据与另一个数据之间存在相似性,这导致一个患者数据分为两类,并影响医疗从业者的决策。使用动态患者分类可以克服这些挑战。在实现之后,我们做了一个准确性测试。测试使用剪影、和平方误差和Duns模糊系数完成。结果表明,该方法的准确率接近85.2%。确定成为聚类标签的疾病类型是未来一项很好的工作。
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Dynamic Patient Categorization Based on Medical Records Using Fuzzy C-Means Clustering Technique
Health agencies have actively implemented electronic medical records (EMR) on paper-based medical records. Currently, EMR is not very informative for extracting useful information or for tracking the patient disease. Hidden patterns that can be removed through data mining can help practitioners understand discreet relationships, such as inpatient categorization. Categorizing patients in determining groups in hospitals is very helpful for medical personnel in understanding work and actions to provide the right decisions and fast in taking action. However, there are several challenges in categorizing patients using data mining, one of which is selecting methods for the right cluster results according to the data used. Although there have been many studies that discuss the categorization of patients, no one has addressed the categorization of dynamic patients, especially in medical records. We consider this an important issue because, in medical records, there are similarities between one data and another, which causes one patient data to fall into two categories and affects health practitioner decision making. These challenges can be overcome using dynamic patient categorization. After implementation, we do an accuracy test. The test is done using Silhouette, Sum Squared Error, and Duns Fuzziness Coefficients. The result is that the accuracy is close to 85.2%. Identifying the types of diseases that become cluster labels is a good future work to do.
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