论文标题
功能连接指纹和认知状态解码的高准确机器学习技术
High-Accuracy Machine Learning Techniques for Functional Connectome Fingerprinting and Cognitive State Decoding
论文作者
论文摘要
人脑是一个复杂的网络,由功能和解剖上互连的大脑区域组成。越来越多的研究表明,对脑网络的经验估计可能有助于发现疾病和认知状态的生物标志物。但是,意识到这一目标的先决条件是大脑网络也是个人的可靠标记。在这里,使用人类连接项目数据,我们基于最新的研究,研究了基于认知的任务基于认知任务的单个受试者和认知状态的基于大脑的指纹,例如评估例如工作记忆,心理理论和运动功能。我们的方法可以达到识别fMRI扫描主题的准确性,以及在扫描中对以前未见受试者的认知状态进行分类。更广泛地说,我们使用来自许多认知状态的大量受试者(865)的功能连通性数据探索了五种不同的机器学习技术对受试者指纹和认知状态解码目标的准确性和可靠性(8)。这些结果代表了基于功能连通性的大脑指纹和状态解码的现有技术的进步。此外,比较了16种不同的预处理管道,以表征功能连接组(FCS)不同方面对受试者和任务分类准确性的影响,并确定可能的混杂。
The human brain is a complex network comprised of functionally and anatomically interconnected brain regions. A growing number of studies have suggested that empirical estimates of brain networks may be useful for discovery of biomarkers of disease and cognitive state. A prerequisite for realizing this aim, however, is that brain networks also serve as reliable markers of an individual. Here, using Human Connectome Project data, we build upon recent studies examining brain-based fingerprints of individual subjects and cognitive states based on cognitively-demanding tasks that assess, for example, working memory, theory of mind, and motor function. Our approach achieves accuracy of up to 99\% for both identification of the subject of an fMRI scan, and for classification of the cognitive state of a previously-unseen subject in a scan. More broadly, we explore the accuracy and reliability of five different machine learning techniques on subject fingerprinting and cognitive state decoding objectives, using functional connectivity data from fMRI scans of a high number of subjects (865) across a number of cognitive states (8). These results represent an advance on existing techniques for functional connectivity-based brain fingerprinting and state decoding. Additionally, 16 different pre-processing pipelines are compared in order to characterize the effects of different aspects of the production of functional connectomes (FCs) on the accuracy of subject and task classification, and to identify possible confounds.