Research Center of Electrical and Information Technology, Seoul National University of Science and Technology, Seoul 01811, Korea.
Department of Industrial Engineering, Yonsei University, Seoul 03722, Korea.
Sensors (Basel). 2021 Dec 25;22(1):131. doi: 10.3390/s22010131.
Patient similarity research is one of the most fundamental tasks in healthcare, helping to make decisions without incurring additional time and costs in clinical practices. Patient similarity can also apply to various medical fields, such as cohort analysis and personalized treatment recommendations. Because of this importance, patient similarity measurement studies are actively being conducted. However, medical data have complex, irregular, and sequential characteristics, making it challenging to measure similarity. Therefore, measuring accurate similarity is a significant problem. Existing similarity measurement studies use supervised learning to calculate the similarity between patients, with similarity measurement studies conducted only on one specific disease. However, it is not realistic to consider only one kind of disease, because other conditions usually accompany it; a study to measure similarity with multiple diseases is needed. This research proposes a convolution neural network-based model that jointly combines feature learning and similarity learning to define similarity in patients with multiple diseases. We used the cohort data from the National Health Insurance Sharing Service of Korea for the experiment. Experimental results verify that the proposed model has outstanding performance when compared to other existing models for measuring multiple-disease patient similarity.
患者相似性研究是医疗保健中最基本的任务之一,有助于在临床实践中做出决策,而无需额外花费时间和成本。患者相似性也可应用于各种医学领域,如队列分析和个性化治疗建议。由于其重要性,患者相似性测量研究正在积极进行。然而,医疗数据具有复杂、不规则和顺序的特征,因此很难测量相似性。因此,准确测量相似性是一个重大问题。现有的相似性测量研究使用监督学习来计算患者之间的相似性,仅对一种特定疾病进行相似性测量研究。然而,只考虑一种疾病是不现实的,因为通常会伴随其他情况;需要进行测量多种疾病相似性的研究。本研究提出了一种基于卷积神经网络的模型,该模型联合结合特征学习和相似性学习来定义多种疾病患者的相似性。我们使用了来自韩国国家健康保险共享服务的队列数据进行实验。实验结果验证了与其他现有的多疾病患者相似性测量模型相比,所提出的模型具有出色的性能。