Using deep learning convolutional neural networks to automatically perform cerebral aqueduct CSF flow analysis.

Journal: Journal of clinical neuroscience : official journal of the Neurosurgical Society of Australasia
Published Date:

Abstract

Since the development of phase-contrast magnetic resonance imaging (PC-MRI), quantification of cerebrospinal fluid (CSF) flow across the cerebral aqueduct has been utilized for diagnosis of conditions such as normal pressure hydrocephalus (NPH). This study aims to develop an automated method of aqueduct CSF flow analysis using convolution neural networks (CNNs), which can replace the current standard involving manual segmentation of aqueduct region of interest (ROI). Retrospective analysis was performed on 333 patients who underwent PC-MRI, totaling 353 imaging studies. Aqueduct flow measurements using manual ROI placement was performed independently by two radiologists. Two types of CNNs, MultiResUNet and UNet, were trained using ROI data from the senior radiologist, with PC-MRI studies being randomly divided into training (80%) and validation (20%) datasets. Segmentation performance was assessed using Dice similarity coefficient (DSC), and CSF flow parameters were calculated from both manual and CNN-derived ROIs. MultiResUNet, UNet and second radiologist (Rater 2) had DSCs of 0.933, 0.928, and 0.867, respectively, with p < 0.001 between CNNs and Rater 2. Comparison of CSF flow parameters showed excellent intraclass correlation coefficients (ICCs) for MultiResUNet, with lowest correlation being 0.67. For UNet, lower ICCs of -0.01 to 0.56 were observed. Only 3/353 (0.8%) studies failed to have appropriate ROIs placed by MultiResUNet, compared to 12/353 (3.4%) failed cases for UNet. In conclusion, CNNs were able to measure aqueductal CSF flow with similar performance to a senior neuroradiologist. MultiResUNet demonstrated fewer cases of segmentation failure and more consistent flow measurements compared to the widely adopted UNet.

Authors

  • Cheng-Hsien Tsou
    Department of Radiology, Taichung Veterans General Hospital, 1650 Sect. 4 Taiwan Boulevard, Taichung 40705, Taiwan, ROC.
  • Yun-Chung Cheng
    Department of Neuroradiology, Department of Radiology, Taichung Veterans General Hospital, 1650 Sect. 4 Taiwan Boulevard, Taichung 40705, Taiwan, ROC; Department of Industrial Engineering and Enterprise Information, Tunghai University, Taichung 407224, Taiwan, ROC. Electronic address: iancheng@vghtc.gov.tw.
  • Chin-Yin Huang
    Department of Industrial Engineering and Enterprise Information, Tunghai University, P.O. Box 985, Taichung 40704, Taiwan; Program for Health Administration, Tunghai University, P.O. Box 985, Taichung 40704, Taiwan. Electronic address: huangcy@thu.edu.tw.
  • Jeon-Hor Chen
    Department of Radiology, E-Da Hospital and I-Shou University, Kaohsiung 82445, Taiwan and Tu and Yuen Center for Functional Onco-Imaging and Department of Radiological Science, University of California, Irvine, California 92697.
  • Wen-Hsien Chen
    Department of Neuroradiology, Department of Radiology, Taichung Veterans General Hospital, 1650 Sect. 4 Taiwan Boulevard, Taichung 40705, Taiwan, ROC.
  • Jyh-Wen Chai
    Department of Radiology, Taichung Veterans General Hospital, Taichung, Taiwan.
  • Clayton Chi-Chang Chen
    Department of Neuroradiology, Department of Radiology, Taichung Veterans General Hospital, 1650 Sect. 4 Taiwan Boulevard, Taichung 40705, Taiwan, ROC.