Subtyping of Alzheimer's disease (AD) can facilitate diagnosis, treatment, prognosis and disease management. It can also support the testing of new prevention and treatment strategies through clinical trials. In this study, we employed spectral clustering to cluster 29,922 AD patients in the OneFlorida Data Trust using their longitudinal EHR data of diagnosis and conditions into four subtypes. These subtypes exhibit different patterns of progression of other conditions prior to the first AD diagnosis. In addition, according to the results of various statistical tests, these subtypes are also significantly different with respect to demographics, mortality, and prescription medications after the AD diagnosis. This study could potentially facilitate early detection and personalized treatment of AD as well as data-driven generalizability assessment of clinical trials for AD.
翻译:对阿尔茨海默氏病(AD)进行分解可以促进诊断、治疗、预测和疾病管理,也可以通过临床试验支持对新的预防和治疗战略的测试,在这项研究中,我们利用一个佛罗里达数据信托基金中的29 922名AD病人的光谱集群,利用他们的诊断和病情纵向EHR数据,将其分为四个子类型,这些子类型在第一次AD诊断之前呈现出其他病症的不同演变模式,此外,根据各种统计测试的结果,这些子类型在人口、死亡率和自毁诊断后处方药方面也有很大差异,这一研究有可能促进对AD的早期发现和个性化治疗,以及数据驱动的对AD临床试验的通用性评估。