Genomics, Proteomics & Bioinformatics (Aug 2019)

Identification of Cognitive Dysfunction in Patients with T2DM Using Whole Brain Functional Connectivity

  • Zhenyu Liu,
  • Jiangang Liu,
  • Huijuan Yuan,
  • Taiyuan Liu,
  • Xingwei Cui,
  • Zhenchao Tang,
  • Yang Du,
  • Meiyun Wang,
  • Yusong Lin,
  • Jie Tian

Journal volume & issue
Vol. 17, no. 4
pp. 441 – 452

Abstract

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Majority of type 2 diabetes mellitus (T2DM) patients are highly susceptible to several forms of cognitive impairments, particularly dementia. However, the underlying neural mechanism of these cognitive impairments remains unclear. We aimed to investigate the correlation between whole brain resting state functional connections (RSFCs) and the cognitive status in 95 patients with T2DM. We constructed an elastic net model to estimate the Montreal Cognitive Assessment (MoCA) scores, which served as an index of the cognitive status of the patients, and to select the RSFCs for further prediction. Subsequently, we utilized a machine learning technique to evaluate the discriminative ability of the connectivity pattern associated with the selected RSFCs. The estimated and chronological MoCA scores were significantly correlated with R = 0.81 and the mean absolute error (MAE) = 1.20. Additionally, cognitive impairments of patients with T2DM can be identified using the RSFC pattern with classification accuracy of 90.54% and the area under the receiver operating characteristic (ROC) curve (AUC) of 0.9737. This connectivity pattern not only included the connections between regions within the default mode network (DMN), but also the functional connectivity between the task-positive networks and the DMN, as well as those within the task-positive networks. The results suggest that an RSFC pattern could be regarded as a potential biomarker to identify the cognitive status of patients with T2DM. Keywords: Type 2 diabetes mellitus, Resting state functional connectivity, Elastic net, Support vector machines, MoCA