2605.13933
2026-05-15
cs.LG
cs.AI
stat.ML
Unsupervised learning of acquisition variability in structural connectomes via hybrid latent space modeling
Gaurav Rudravaram, Lianrui Zuo, Karthik Ramadass, Elyssa McMaster, Jongyeon Yoon, Aravind R. Krishnan, Adam M. Saunders, Chenyu Gao, Nancy R. Newlin, Praitayini Kanakaraj, Lori L. Beason Held, Murat Bilgel, Laura A. Barquero, Micah DArchangel, Tin Q. Nguyen, Laurie B. Cutting, Derek Archer, Timothy J. Hohman, Daniel C. Moyer, Bennett A. Landman
发表机构
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Department of Electrical and Computer Engineering, Vanderbilt University(范德比尔特大学电气与计算机工程系)
;
Department of Computer Science, Vanderbilt University(范德比尔特大学计算机科学系)
;
Memorial Sloan Kettering Cancer Center(纪念斯隆凯特琳癌症中心)
;
Laboratory of Behavioral Neuroscience, National Institute on Aging, National Institutes of Health(衰老行为神经科学实验室,国家老龄化研究所,国家卫生研究院)
;
Peabody College of Education and Human Development, Nashville, Tennessee, USA(教育与人类发展学院,纳什维尔,田纳西州,美国)
AI总结
该研究旨在解决扩散磁共振成像(dMRI)数据中因采集设备、地点和协议不同而引入的结构连接组变异问题。提出了一种无需手动调参的无监督框架,通过架构层面的退火机制,使模型在训练过程中自适应地平衡离散与连续潜在变量,从而更有效地分离采集相关变异与生物变异。实验表明,该方法在多个数据集上表现出更强的站点识别能力,展示了其在捕捉dMRI采集变异方面的有效性。