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Identifying cognitive impairment in Type 2 Diabetes with functional connectivity: a multivariate pattern analysis of resting state fMRI data

机译:通过功能连接性识别2型糖尿病的认知障碍:静息状态fMRI数据的多变量模式分析

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Previous researches have shown that type 2 diabetes mellitus (T2DM) is associated with an increased risk of cognitive impairment. Early detection of brain abnormalities at the preclinical stage can be useful for developing preventive interventions to abate cognitive decline. We aimed to investigate the whole-brain resting-state functional connectivity (RSFC) patterns of T2DM patients between 90 regions of interest (ROIs) based on the RS-fMRI data, which can be used to test the feasibility of identifying T2DM patients with cognitive impairment from other T2DM patients. 74 patients were recruited in this study and multivariate pattern analysis was utilized to assess the prediction performance. Elastic net was firstly used to select the key features for prediction, and then a linear discrimination model was constructed. 23 RSFCs were selected and it achieved the performance with classification accuracy of 90.54% and areas under the receiver operating characteristic curve (AUC) of 0.944 using ten-fold cross-validation. The results provide strong evidence that functional interactions of brain regions undergo notable alterations between T2DM patients with cognitive impairment or not. By analyzing the RSFCs that were selected as key features, we found that most of them involved the frontal or temporal. We speculated that cognitive impairment in T2DM patients mainly impacted these two lobes. Overall, the present study indicated that RSFCs undergo notable alterations associated with the cognitive impairment in T2DM patients, and it is possible to predicted cognitive impairment early with RSFCs.
机译:先前的研究表明2型糖尿病(T2DM)与认知障碍的风险增加有关。在临床前阶段及早发现脑部异常有助于开发预防性干预措施,以减轻认知能力下降。我们旨在基于RS-fMRI数据调查90个感兴趣区域(ROI)之间的T2DM患者的全脑静止状态功能连接(RSFC)模式,该数据可用于测试识别具有认知功能的T2DM患者的可行性其他T2DM患者的疾病。本研究招募了74位患者,并使用多变量模式分析来评估预测性能。首先利用弹性网选择关键特征进行预测,然后建立线性判别模型。通过十次交叉验证,选择了23种RSFC,并获得了90.54%的分类精度和0.944的接收器工作特性曲线(AUC)下面积的性能。该结果提供了有力的证据,表明有或没有认知障碍的T2DM患者之间大脑区域的功能相互作用发生了显着变化。通过分析被选为关键特征的RSFC,我们发现它们大多数涉及额叶或颞叶。我们推测,T2DM患者的认知障碍主要影响这两个肺叶。总体而言,本研究表明,RSFC在T2DM患者中发生与认知障碍相关的显着变化,并且有可能通过RSFC早期预测认知障碍。

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