Department of EECS, University of Cincinnati, Cincinnati, Ohio, USA.
Department of Psychological and Brain Sciences, Indiana University, Bloomington, Indiana, USA.
Hum Brain Mapp. 2021 Aug 15;42(12):3717-3732. doi: 10.1002/hbm.25379. Epub 2021 Jun 2.
The ability to uniquely characterize individual subjects based on their functional connectome (FC) is a key requirement for progress toward precision psychiatry. FC fingerprinting is increasingly studied in the neuroimaging community for this purpose, where a variety of approaches have been developed for effective FC fingerprinting. Recent independent studies showed that fingerprinting accuracy suffers at large sample sizes and when coarser parcellations are used for computing the FC. Quantifying this problem and understanding the reasons these factors impact fingerprinting accuracy is crucial to develop more accurate fingerprinting methods for large sample sizes. Part of the challenge in fingerprinting is that FC captures both generic and subject-specific information. A systematic approach for identifying subject-specific FC information is crucial for making progress in addressing the fingerprinting problem. In this study, we addressed three gaps in our understanding of the FC fingerprinting problem. First, we studied the joint effect of sample size and parcellation granularity. Second, we explained the reason for reduced fingerprinting accuracy with increased sample size and reduced parcellation granularity. To this end, we used a clustering quality metric from the data mining community. Third, we developed a general feature selection framework for systematically identifying resting-state functional connectivity (RSFC) elements that capture information to uniquely identify subjects. In sum, we evaluated six different approaches from this framework by quantifying both subject-specific fingerprinting accuracy and the decrease in accuracy with an increase in sample size to identify which approach improved quality metrics the most.
基于功能连接体(FC)对个体进行独特特征描述的能力是精准精神病学发展的关键要求。为此,神经影像学领域越来越多地研究 FC 指纹识别,已经开发出多种方法来实现有效的 FC 指纹识别。最近的独立研究表明,在大样本量和使用更粗糙的分割进行 FC 计算的情况下,指纹识别的准确性会受到影响。量化这个问题并理解这些因素影响指纹识别准确性的原因,对于开发针对大样本量的更准确的指纹识别方法至关重要。指纹识别的部分挑战在于 FC 既捕捉通用信息又捕捉特定于个体的信息。因此,对于识别特定于个体的 FC 信息的系统方法,对于解决指纹识别问题取得进展至关重要。在这项研究中,我们解决了我们对 FC 指纹识别问题理解的三个差距。首先,我们研究了样本量和分割粒度的联合效应。其次,我们解释了随着样本量的增加和分割粒度的减小导致指纹识别准确性降低的原因。为此,我们使用了来自数据挖掘领域的聚类质量度量。第三,我们开发了一种通用的特征选择框架,用于系统地识别能够唯一识别个体的静息态功能连接(RSFC)元素。总之,我们通过量化特定于个体的指纹识别准确性和随着样本量增加而准确性降低的情况,评估了来自该框架的六种不同方法,以确定哪种方法能够最大程度地提高质量指标。