A new method incorporating deep learning with shape priors for left ventricular segmentation in myocardial perfusion SPECT images.

Journal: Computers in biology and medicine
PMID:

Abstract

Accurate segmentation of the left ventricle (LV) is crucial for evaluating myocardial perfusion SPECT (MPS) and assessing LV functions. In this study, a novel method combining deep learning with shape priors was developed and validated to extract the LV myocardium and automatically measure LV functional parameters. The method integrates a three-dimensional (3D) V-Net with a shape deformation module that incorporates shape priors generated by a dynamic programming (DP) algorithm to guide its output during training. A retrospective analysis was performed on an MPS dataset comprising 31 subjects without or with mild ischemia, 32 subjects with moderate ischemia, and 12 subjects with severe ischemia. Myocardial contours were manually annotated as the ground truth. A 5-fold stratified cross-validation was used to train and validate the models. The clinical performance was evaluated by measuring LV end-systolic volume (ESV), end-diastolic volume (EDV), left ventricular ejection fraction (LVEF), and scar burden from the extracted myocardial contours. There were excellent agreements between segmentation results by our proposed model and those from the ground truth, with a Dice similarity coefficient (DSC) of 0.9573 ± 0.0244, 0.9821 ± 0.0137, and 0.9903 ± 0.0041, as well as Hausdorff distances (HD) of 6.7529 ± 2.7334 mm, 7.2507 ± 3.1952 mm, and 7.6121 ± 3.0134 mm in extracting the LV endocardium, myocardium, and epicardium, respectively. Furthermore, the correlation coefficients between LVEF, ESV, EDV, stress scar burden, and rest scar burden measured from our model results and the ground truth were 0.92, 0.958, 0.952, 0.972, and 0.958, respectively. The proposed method achieved a high accuracy in extracting LV myocardial contours and assessing LV functions.

Authors

  • Fubao Zhu
    School of Computer and Communication Engineering, Zhengzhou University of Light Industry, Zhengzhou, Henan, China.
  • Longxi Li
    School of Computer and Communication Engineering, Zhengzhou University of Light Industry, Zhengzhou, 450001, China.
  • Jinyu Zhao
    School of Computer and Communication Engineering, Zhengzhou University of Light Industry, Zhengzhou, 450001, China.
  • Chen Zhao
    Department of Ophthalmology, Fudan Eye & ENT Hospital, Shanghai, China.
  • Shaojie Tang
    School of Automation, Xi'an University of Posts & Telecommunications, Xi'an 710121, China.
  • Jiaofen Nan
    School of Computer and Communication Engineering, Zhengzhou University of Light Industry, Zhengzhou, Henan, China.
  • Yanting Li
    School of Computer and Communication Engineering, Zhengzhou University of Light Industry, Zhengzhou, 450001, China.
  • Zhongqiang Zhao
    Department of Cardiology, The First Affiliated Hospital of Nanjing Medical University (Jiangsu Provincial Hospital), Nanjing, 210029, China.
  • Jianzhou Shi
    Department of Cardiology, The First Affiliated Hospital of Nanjing Medical University, Guangzhou Road 300, Nanjing, 210029, Jiangsu, China.
  • Zenghong Chen
    Department of Cardiology, The First Affiliated Hospital of Nanjing Medical University (Jiangsu Provincial Hospital), Nanjing, 210029, China.
  • Chuang Han
    School of Electrical Engineering, Zhengzhou University, NO. 100 Kexue Road, Zhengzhou, Henan 450000, China.
  • Zhixin Jiang
    Department of Cardiology, The First Affiliated Hospital of Nanjing Medical University, Guangzhou Road 300, Nanjing, 210029, Jiangsu, China. zhixin_jiang@njmu.edu.cn.
  • Weihua Zhou
    School of Computing, University of Southern Mississippi, Hattiesburg, MS, United States of America.