Xia Eryu, Liu Haifeng, Li Jing, Mei Jing, Li Xuejun, Xu Enliang, Li Xiang, Hu Gang, Xie Guotong, Xu Meilin
IBM Research - China, Beijing, China.
Department of Endocrinology and Diabetes, the First Affiliated Hospital, Xiamen University, Xiamen, Fujian, China.
Stud Health Technol Inform. 2017;245:1185-1189.
Clinical decision support systems are information technology systems that assist clinical decision-making tasks, which have been shown to enhance clinical performance. Cluster analysis, which groups similar patients together, aims to separate patient cases into phenotypically heterogenous groups and defining therapeutically homogeneous patient subclasses. Useful as it is, the application of cluster analysis in clinical decision support systems is less reported. Here, we describe the usage of cluster analysis in clinical decision support systems, by first dividing patient cases into similar groups and then providing diagnosis or treatment suggestions based on the group profiles. This integration provides data for clinical decisions and compiles a wide range of clinical practices to inform the performance of individual clinicians. We also include an example usage of the system under the scenario of blood lipid management in type 2 diabetes. These efforts represent a step toward promoting patient-centered care and enabling precision medicine.
临床决策支持系统是辅助临床决策任务的信息技术系统,已被证明可提高临床绩效。聚类分析将相似患者归为一组,旨在将患者病例分为表型异质的组,并定义治疗上同质的患者亚类。尽管聚类分析很有用,但在临床决策支持系统中的应用报道较少。在此,我们描述聚类分析在临床决策支持系统中的用法,首先将患者病例分为相似的组,然后根据组概况提供诊断或治疗建议。这种整合为临床决策提供数据,并汇编广泛的临床实践以指导个体临床医生的工作。我们还包括该系统在2型糖尿病血脂管理场景下的示例用法。这些努力代表了朝着促进以患者为中心的护理和实现精准医学迈出的一步。