3D CoAt U SegNet-enhanced deep learning framework for accurate segmentation of acute ischemic stroke lesions from non-contrast CT scans.
Authors
Affiliations (5)
Affiliations (5)
- Department of Biomedical Engineering, Central University of Rajasthan, Bandar Sindri, Rajasthan, 305817, India.
- EKO Diagnostics, Medical College and Hospitals Campus, Kolkata, 700073, India.
- Department of Data science and Engineering, Indian Institute of Science Education and Research Bhopal, Bhopal, 462066, India.
- Department of Biomedical Engineering, Central University of Rajasthan, Bandar Sindri, Rajasthan, 305817, India. [email protected].
- Department of Biomedical Engineering, Central University of Rajasthan, Bandar Sindri, Rajasthan, 305817, India. [email protected].
Abstract
Segmenting ischemic stroke lesions from Non-Contrast CT (NCCT) scans is a complex task due to the hypo-intense nature of these lesions compared to surrounding healthy brain tissue and their iso-intensity with lateral ventricles in many cases. Identifying early acute ischemic stroke lesions in NCCT remains particularly challenging. Computer-assisted detection and segmentation can serve as valuable tools to support clinicians in stroke diagnosis. This paper introduces CoAt U SegNet, a novel deep learning model designed to detect and segment acute ischemic stroke lesions from NCCT scans. Unlike conventional 3D segmentation models, this study presents an advanced 3D deep learning approach to enhance delineation accuracy. Traditional machine learning models have struggled to achieve satisfactory segmentation performance, highlighting the need for more sophisticated techniques. For model training, 50 NCCT scans were used, with 10 scans for validation and 500 scans for testing. The encoder convolution blocks incorporated dilation rates of 1, 3, and 5 to capture multi-scale features effectively. Performance evaluation on 500 unseen NCCT scans yielded a Dice similarity score of 75% and a Jaccard index of 70%, demonstrating notable improvement in segmentation accuracy. An enhanced similarity index was employed to refine lesion segmentation, which can further aid in distinguishing the penumbra from the core infarct area, contributing to improved clinical decision-making.