Webb-Robertson Bobbie-Jo M, Wu Wenting, Flores Javier E, Bramer Lisa M, Syed Farooq, Tersey Sarah A, May Sarah C, Sims Emily K, Evans-Molina Carmella, Mirmira Raghavendra G
Biological Sciences Division, Pacific Northwest National Lab, Richland, WA 99354, USA.
Center for Diabetes and Metabolic Diseases, Indiana University School of Medicine, Indianapolis, IN 46202, USA.
J Clin Endocrinol Metab. 2025 Mar 17;110(4):1148-1157. doi: 10.1210/clinem/dgae622.
Alterations in RNA splicing may influence protein isoform diversity that contributes to or reflects the pathophysiology of certain diseases. Whereas specific RNA splicing events in pancreatic islets have been investigated in models of inflammation in vitro, how RNA splicing in the circulation correlates with or is reflective of type 1 diabetes (T1D) disease pathophysiology in humans remains unexplored.
To use machine learning to investigate if alternative RNA splicing events differ between individuals with and without new-onset T1D and to determine if these splicing events provide insight into T1D pathophysiology.
RNA deep sequencing was performed on whole blood samples from 2 independent cohorts: a training cohort consisting of 12 individuals with new-onset T1D and 12 age- and sex-matched nondiabetic controls and a validation cohort of the same size and demographics. Machine learning analysis was used to identify specific isoforms that could distinguish individuals with T1D from controls.
Distinct patterns of RNA splicing differentiated participants with T1D from unaffected controls. Notably, certain splicing events, particularly involving retained introns, showed significant association with T1D. Machine learning analysis using these splicing events as features from the training cohort demonstrated high accuracy in distinguishing between T1D subjects and controls in the validation cohort. Gene Ontology pathway enrichment analysis of the retained intron category showed evidence for a systemic viral response in T1D subjects.
Alternative RNA splicing events in whole blood are significantly enriched in individuals with new-onset T1D and can effectively distinguish these individuals from unaffected controls. Our findings also suggest that RNA splicing profiles offer the potential to provide insights into disease pathogenesis.
RNA剪接的改变可能会影响蛋白质异构体的多样性,而这种多样性有助于或反映某些疾病的病理生理学。虽然在体外炎症模型中已经研究了胰岛中的特定RNA剪接事件,但循环中的RNA剪接与人类1型糖尿病(T1D)疾病病理生理学之间的相关性或反映情况仍未得到探索。
使用机器学习来研究新发T1D患者与未患T1D的个体之间的可变RNA剪接事件是否存在差异,并确定这些剪接事件是否能为T1D的病理生理学提供见解。
对来自2个独立队列的全血样本进行RNA深度测序:一个训练队列由12名新发T1D患者和12名年龄及性别匹配的非糖尿病对照组成,另一个验证队列规模和人口统计学特征相同。使用机器学习分析来识别能够区分T1D患者和对照的特定异构体。
RNA剪接的不同模式区分了T1D患者与未受影响的对照。值得注意的是,某些剪接事件,特别是涉及保留内含子的事件,与T1D有显著关联。使用这些剪接事件作为训练队列特征的机器学习分析在验证队列中区分T1D受试者和对照时显示出高精度。对保留内含子类别进行的基因本体通路富集分析表明,T1D受试者存在全身性病毒反应的证据。
新发T1D个体的全血中可变RNA剪接事件显著富集,并且可以有效地将这些个体与未受影响的对照区分开来。我们的研究结果还表明,RNA剪接谱有可能为疾病发病机制提供见解。