2型糖尿病
医学
疾病
糖尿病
人口
生物信息学
内科学
生物
内分泌学
环境卫生
作者
Anand Thakarakkattil Narayanan Nair,Agata Wesolowska‐Andersen,Caroline Brorsson,Aravind Lathika Rajendrakumar,Simona Hapca,Sushrima Gan,Adem Y. Dawed,Louise A. Donnelly,Rory J. McCrimmon,Alex S. F. Doney,Nicholette D. Palmer,Viswanathan Mohan,Ranjit Mohan Anjana,Andrew T. Hattersley,John Dennis,Ewan R. Pearson
出处
期刊:Nature Medicine
[Springer Nature]
日期:2022-05-01
卷期号:28 (5): 982-988
被引量:78
标识
DOI:10.1038/s41591-022-01790-7
摘要
Type 2 diabetes (T2D) is a complex chronic disease characterized by considerable phenotypic heterogeneity. In this study, we applied a reverse graph embedding method to routinely collected data from 23,137 Scottish patients with newly diagnosed diabetes to visualize this heterogeneity and used partitioned diabetes polygenic risk scores to gain insight into the underlying biological processes. Overlaying risk of progression to outcomes of insulin requirement, chronic kidney disease, referable diabetic retinopathy and major adverse cardiovascular events, we show how these risks differ by patient phenotype. For example, patients at risk of retinopathy are phenotypically different from those at risk of cardiovascular events. We replicated our findings in the UK Biobank and the ADOPT clinical trial, also showing that the pattern of diabetes drug monotherapy response differs for different drugs. Overall, our analysis highlights how, in a European population, underlying phenotypic variation drives T2D onset and affects subsequent diabetes outcomes and drug response, demonstrating the need to incorporate these factors into personalized treatment approaches for the management of T2D. A new analysis of patients newly diagnosed with diabetes uses a data dimenionality reduction approach to understand how phenotypic variation drives diseaese onset, clinical outcomes and responses to glycemic-lowering medications.
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