Deep Learning Framework for Liver Segmentation from T1-Weighted MRI Images
Date
2023-11-01Author
Hossain, Md Sakib AbrarGul, Sidra
Chowdhury, Muhammad E.H.
Khan, Muhammad Salman
Sumon, Md Shaheenur Islam
Bhuiyan, Enamul Haque
Khandakar, Amith
Hossain, Maqsud
Sadique, Abdus
Al-Hashimi, Israa
Ayari, Mohamed Arselene
Mahmud, Sakib
Alqahtani, Abdulrahman
...show more authors ...show less authors
Metadata
Show full item recordAbstract
The human liver exhibits variable characteristics and anatomical information, which is often ambiguous in radiological images. Machine learning can be of great assistance in automatically segmenting the liver in radiological images, which can be further processed for computer-aided diagnosis. Magnetic resonance imaging (MRI) is preferred by clinicians for liver pathology diagnosis over volumetric abdominal computerized tomography (CT) scans, due to their superior representation of soft tissues. The convenience of Hounsfield unit (HoU) based preprocessing in CT scans is not available in MRI, making automatic segmentation challenging for MR images. This study investigates multiple state-of-the-art segmentation networks for liver segmentation from volumetric MRI images. Here, T1-weighted (in-phase) scans are investigated using expert-labeled liver masks from a public dataset of 20 patients (647 MR slices) from the Combined Healthy Abdominal Organ Segmentation grant challenge (CHAOS). The reason for using T1-weighted images is that it demonstrates brighter fat content, thus providing enhanced images for the segmentation task. Twenty-four different state-of-the-art segmentation networks with varying depths of dense, residual, and inception encoder and decoder backbones were investigated for the task. A novel cascaded network is proposed to segment axial liver slices. The proposed framework outperforms existing approaches reported in the literature for the liver segmentation task (on the same test set) with a dice similarity coefficient (DSC) score and intersect over union (IoU) of 95.15% and 92.10%, respectively.
Collections
- Civil and Environmental Engineering [851 items ]
- Electrical Engineering [2649 items ]