69 / 2023-08-30 23:49:04
Using Multi-modal MRI Data for Parkinson's disease Diagnosis Based on 3D Convolutional Neural Network
Parkinson's disease, Multi-modal, MRI, Convolution Neural Network, Machine learning
Final Paper
Kai Ji / Beijing University of Chemical Technology
Ke Zhang / China-Japan Friendship Hospital
Wei Xin / Beijing University of Chemical Technology
Xiaocai Shan / Institute of Geology and Geophysics Chinese Academy of Sciences
Peiyao Zhang / China-Japan Friendship Hospital
Yingying Hu / China-Japan Friendship Hospital
Yuan Luo / China-Japan Friendship Hospital
Currently, clinical methods for Parkinson's disease (PD) diagnosis are not very effective, and there is an urgent need for a more accurate diagnostic approach. When using MRI for PD diagnosis, relying solely on T1 or QSM modality cannot comprehensively consider the information about different types of brain lesions, leading to a bottleneck in improving the classification accuracy. This study utilize a 3D convolutional neural network (3D-CNN) to integrate multi-modal MRI data for PD diagnosis. Clinical data shows accuracy of multi-modal 3D-CNN is higher than accuracy of single-modal 3D-CNN, when all tissue data is used as input, the classification accuracy of multi-modal 3D-CNN can reach 91%, which can prove that the multi-modal fusion method is superior to the direct use of single-modal data. Furthermore, by focusing on several basal ganglia structures that were reported to be significantly affected by PD, this 3D-CNN model shows that substantia nigra, caudate, and especially thalamus have a high sensitivity for PD diagnosis. The findings indicate the potential of using multi-modal deep learning approaches for PD diagnosis and suggest that the selected basal ganglia structures are highly sensitive markers for PD detection. These results offer promising prospects for the development of more effective and accurate PD diagnostic methods.

 
Important Date
  • Conference Date

    Nov 02

    2023

    to

    Nov 04

    2023

  • Dec 15 2023

    Draft paper submission deadline

  • Dec 20 2023

    Registration deadline

Sponsored By
IEEE Instrumentation and Measurement Society
Xidian University