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基于静息态功能磁共振成像的功能脑连接组学,通过机器学习分类预测超级老人。

Predicting superagers by machine learning classification based on the functional brain connectome using resting-state functional magnetic resonance imaging.

机构信息

Department of Radiology, College of Medicine, Catholic University of Korea, Seoul 06591, Korea.

Center for Neuroprosthetics and Brain Mind Institute, Swiss Federal Institute of Technology (EPFL), 1202 Geneva, Switzerland.

出版信息

Cereb Cortex. 2022 Sep 19;32(19):4183-4190. doi: 10.1093/cercor/bhab474.

DOI:10.1093/cercor/bhab474
PMID:34969093
Abstract

Superagers are defined as older adults who have youthful memory performance comparable to that of middle-aged adults. Classifying superagers based on the brain connectome using machine learning modeling can provide important insights on the physiology underlying successful aging. We aimed to investigate the unique patterns of functional brain connectome of superagers and develop predictive models to differentiate superagers from typical agers based on machine learning methods. We obtained resting-state functional magnetic resonance imaging (rsfMRI) data and cognitive measures from 32 superagers and 58 typical agers. The accuracies of three machine learning methods including the linear support vector machine classifier (SV), the random forest classifier (RF), and the logistic regression classifier (LR) in predicting superagers were comparable (SV = 0.944, RF = 0.944, LR = 0.944); however, RF achieved the highest area under the curve (AUC; 0.979). An ensemble learning method combining the three classifiers achieved the highest AUC (0.986). The most discriminative nodes for predicting superagers encompassed areas in the precuneus; posterior cingulate gyrus; insular cortex; and superior, middle, and inferior frontal gyrus, which were located in default, salient, and multiple-demand networks. Thus, rsfMRI data can provide high accuracy for predicting superagers, thereby capturing and describing the unique characteristics of their functional brain connectome.

摘要

超级老年人被定义为记忆力表现与中年人相当的老年人。使用机器学习模型基于大脑连接组学对超级老年人进行分类,可以为成功老龄化的生理基础提供重要的见解。我们旨在研究超级老年人的功能性大脑连接组的独特模式,并开发基于机器学习方法的预测模型,将超级老年人与典型老年人区分开来。我们从 32 名超级老年人和 58 名典型老年人中获得了静息态功能磁共振成像 (rsfMRI) 数据和认知测量值。三种机器学习方法(线性支持向量机分类器 (SV)、随机森林分类器 (RF) 和逻辑回归分类器 (LR))在预测超级老年人方面的准确性相当(SV=0.944、RF=0.944、LR=0.944);然而,RF 达到了最高的曲线下面积 (AUC;0.979)。结合这三个分类器的集成学习方法达到了最高的 AUC(0.986)。用于预测超级老年人的最具判别力的节点包括顶内小叶、后扣带回、脑岛以及额上、中、下回,它们位于默认、突显和多需求网络中。因此,rsfMRI 数据可以提供预测超级老年人的高精度,从而捕捉和描述他们功能性大脑连接组的独特特征。

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