Department of Medicine, Nazarbayev University School of Medicine, Nur-Sultan 010000, Kazakhstan.
Spanish Network of Health Services Research and Chronic Diseases, REDISSEC, 28001 Madrid, Spain.
Int J Environ Res Public Health. 2020 Dec 18;17(24):9523. doi: 10.3390/ijerph17249523.
Diabetes Mellitus is a chronic and lifelong disease that incurs a huge burden to healthcare systems. Its prevalence is on the rise worldwide. Diabetes is more complex than the classification of Type 1 and 2 may suggest. The purpose of this systematic review was to identify the research studies that tried to find new sub-groups of diabetes patients by using unsupervised learning methods. The search was conducted on Pubmed and Medline databases by two independent researchers. All time publications on cluster analysis of diabetes patients were selected and analysed. Among fourteen studies that were included in the final review, five studies found five identical clusters: Severe Autoimmune Diabetes; Severe Insulin-Deficient Diabetes; Severe Insulin-Resistant Diabetes; Mild Obesity-Related Diabetes; and Mild Age-Related Diabetes. In addition, two studies found the same clusters, except Severe Autoimmune Diabetes cluster. Results of other studies differed from one to another and were less consistent. Cluster analysis enabled finding non-classic heterogeneity in diabetes, but there is still a necessity to explore and validate the capabilities of cluster analysis in more diverse and wider populations.
糖尿病是一种慢性的、终身性疾病,给医疗系统带来了巨大的负担。它的发病率在全球范围内呈上升趋势。糖尿病比 1 型和 2 型的分类更为复杂。本系统综述的目的是确定使用无监督学习方法试图寻找新的糖尿病亚组的研究。通过两名独立研究人员在 Pubmed 和 Medline 数据库中进行了检索。选择并分析了所有关于糖尿病患者聚类分析的时间性出版物。在最终综述中纳入的 14 项研究中,有 5 项研究发现了 5 个相同的聚类:严重自身免疫性糖尿病;严重胰岛素缺乏性糖尿病;严重胰岛素抵抗性糖尿病;轻度肥胖相关糖尿病;和轻度年龄相关性糖尿病。此外,有 2 项研究发现了相同的聚类,除了严重自身免疫性糖尿病聚类。其他研究的结果彼此不同,一致性较差。聚类分析能够发现糖尿病中的非经典异质性,但仍有必要在更多样化和更广泛的人群中探索和验证聚类分析的能力。