Affiliation:
1. Department of Biomedical Engineering, College of Engineering and Technology, SRM Institute of Science and Technology, Kattankulathur, Chengalpattu 603203, Tamil Nadu, India
2. Department of Medical Gastroenterology, SRM Medical College Hospital and Research Centre, SRM Institute of Science and Technology, Kattankulathur, Chengalpattu 603203, Tamil Nadu, India
Abstract
Purpose: This study aimed to achieve two primary goals. First, we sought to develop a lightweight convolutional neural network (CNN) model, COLRECTSEG-UNet, for the purpose of automated polyp segmentation and localization. Second, we evaluated the generalizability of the proposed model by testing it on a proprietary colonoscopy image dataset (own dataset) in addition to a publicly available benchmark (CVC-ColonDB and Kvasir dataset). Methods: The COLRECTSEG-UNet architecture was employed to perform polyp segmentation. Subsequently, the model was trained and validated using an 80:20 data split from the CVC-ColonDB dataset. The efficacy of these data split was confirmed through [Formula: see text]-fold cross-validation. To elucidate the significance of each layer within the COLRECTSEG-UNet design, an ablation study was conducted. The performance of the model was assessed using various metrics on the CVC-ClinicDB, own dataset and Kvasir dataset during the testing phase. These metrics were then compared to those achieved by current state-of-the-art models and findings reported in recent literature. Results: When evaluated on the CVC-ClinicDB dataset, the COLRECTSEG-UNet model achieved outstanding accuracy of 0.9591, intersection over union (IoU) of 0.9299 and F1-Score of 0.9530. Similarly, impressive results were obtained on the own dataset, with accuracy, IoU and F1-Score values of 0.955, 0.9346 and 0.9539, respectively. Additionally, Kvasir dataset attained the accuracy, IoU and F1-Score of 0.9542, 0.9291 and 0.9565, respectively. These results demonstrate that the proposed COLRECTSEG-UNet outperforms the existing benchmark models and surpasses the performance reported in current literature. Conclusion: The implementation of COLRECTSEG-UNet as a lightweight model paves the way for its integration as a backend component within medical imaging system software. This has the potential to significantly aid gastroenterologists in clinical decision-making during interventions.
Publisher
National Taiwan University