Deep learning based diagnosis of Parkinson's Disease using diffusion magnetic resonance imaging.

Journal: Brain imaging and behavior
Published Date:

Abstract

The diagnostic performance of a combined architecture on Parkinson's disease using diffusion tensor imaging was evaluated. A convolutional neural network was trained from multiple parcellated brain regions. A greedy algorithm was proposed to combine the models from individual regions into a complex one. Total 305 Parkinson's disease patients (aged 59.9±9.7 years old) and 227 healthy control subjects (aged 61.0±7.4 years old) were enrolled from 3 retrospective studies. The participants were divided into training with ten-fold cross-validation (N = 432) and an independent blind dataset (N = 100). Diffusion-weighted images were acquired from a 3T scanner. Fractional anisotropy and mean diffusivity were calculated and was subsequently parcellated into 90 cerebral regions of interest based on the Automatic Anatomic Labeling template. A convolutional neural network was implemented which contained three convolutional blocks and a fully connected layer. Each convolutional block consisted of a convolutional layer, activation layer, and pooling layer. This model was trained for each individual region. A greedy algorithm was implemented to combine multiple regions as the final prediction. The greedy algorithm predicted the area under curve of 94.1±3.2% from the combination of fractional anisotropy from 22 regions. The model performance analysis showed that the combination of 9 regions is equivalent. The best area under curve was 74.7±5.4% from the right postcentral gyrus. The current study proposed an architecture of convolutional neural network and a greedy algorithm to combine from multiple regions. With diffusion tensor imaging, the algorithm showed the potential to distinguish patients with Parkinson's disease from normal control with satisfactory performance.

Authors

  • Hengling Zhao
    School of Information and Communication Engineering, University of Electronic Science and Technology of China (UESTC), Chengdu, China.
  • Chih-Chien Tsai
    Healthy Aging Research Center, Chang Gung University, Taoyuan, Taiwan.
  • Mingyi Zhou
    School of Information and Communication Engineering, University of Electronic Science and Technology of China (UESTC), Chengdu, China.
  • Yipeng Liu
    School of Information and Communication EngineeringUniversity of Electronic Science and Technology of China (UESTC)Chengdu611731China.
  • Yao-Liang Chen
    Department of Medical Imaging and Intervention, Chang Gung Memorial Hospital at Linkou, Taoyuan, Taiwan.
  • Fan Huang
  • Yu-Chun Lin
    Department of Medical Imaging and Intervention, Chang Gung Memorial Hospital, Linkou, Chang Gung University, Taoyuan, Taiwan.
  • Jiun-Jie Wang
    Department of Medical Imaging and Radiological Sciences, Chang Gung University, Taoyuan, Taiwan.