Duong-Tran Duy, Magsino Mark, Goñi Joaquín, Shen Li
Department of Mathematics, United States Naval Academy, Annapolis, Maryland, USA.
Dept. of Biostatistics, Epidemiology & Informatics, University of Pennsylvania, Philadelphia, USA.
Proc IEEE Int Symp Biomed Imaging. 2024 May;2024. doi: 10.1109/isbi56570.2024.10635372. Epub 2024 Aug 22.
The complex etiology of various neurodegenerative diseases and psychiatric disorders, especially at the individual level, has posed unmatched challenges to the advancement of personalized medicine. Recent technical advancements in functional magnetic resonance imaging has enabled researchers to map brain large-scale connectivity at an unprecedented level of subject precision. Nonetheless, along with the early dawn of promises in personalized medicine using various neuroimaging modalities rose the challenge of clinical utility of brain connectomics (e.g., functional connectomes). Besides many established challenges of functional connectome utility such as edge reliability, there exists an easily overlooked challenge that does not get the same level of attention: computationality of functional connectome. To improve clinical utility of functional connectomics, we propose a random projection method that would preserve a practically similar level of subject identifiability while sampling and retaining only a proportion of functional edges in subjects' functional connectome. Our work pave a way towards computational improvements, hence clinical utility, of functional connectomes while not compromising the integrity of biomarkers learnt from whole-brain large-scale functional connectivity imaging modality.
各种神经退行性疾病和精神疾病的复杂病因,尤其是在个体层面,给个性化医疗的发展带来了前所未有的挑战。功能磁共振成像技术的最新进展使研究人员能够以前所未有的个体精度绘制大脑大规模连接图谱。尽管如此,随着使用各种神经成像模式的个性化医疗前景初现,大脑连接组学(如功能连接组)的临床实用性也面临挑战。除了功能连接组实用性的许多既定挑战,如边缘可靠性外,还存在一个容易被忽视且未得到同等关注的挑战:功能连接组的计算性。为了提高功能连接组学的临床实用性,我们提出了一种随机投影方法,该方法在对受试者功能连接组中的功能边进行采样并仅保留一部分的同时,能保持几乎相似的个体可识别水平。我们的工作为功能连接组的计算改进以及临床实用性铺平了道路,同时不损害从全脑大规模功能连接成像模式中获得的生物标志物的完整性。