School of Information Technology, Manipal University Jaipur, Jaipur, Rajasthan, India; School of Computer Science and Engineering, Manipal University Jaipur, Jaipur, Rajasthan, India.
School of Information Technology, Manipal University Jaipur, Jaipur, Rajasthan, India; School of Computer Science and Engineering, Manipal University Jaipur, Jaipur, Rajasthan, India.
Comput Biol Med. 2024 Mar;170:108096. doi: 10.1016/j.compbiomed.2024.108096. Epub 2024 Feb 2.
The development of automated methods for analyzing medical images of colon cancer is one of the main research fields. A colonoscopy is a medical treatment that enables a doctor to look for any abnormalities like polyps, cancer, or inflammatory tissue inside the colon and rectum. It falls under the category of gastrointestinal illnesses, and it claims the lives of almost two million people worldwide. Video endoscopy is an advanced medical imaging approach to diagnose gastrointestinal disorders such as inflammatory bowel, ulcerative colitis, esophagitis, and polyps. Medical video endoscopy generates several images, which must be reviewed by specialists. The difficulty of manual diagnosis has sparked research towards computer-aided techniques that can quickly and reliably diagnose all generated images. The proposed methodology establishes a framework for diagnosing coloscopy diseases. Endoscopists can lower the risk of polyps turning into cancer during colonoscopies by using more accurate computer-assisted polyp detection and segmentation. With the aim of creating a model that can automatically distinguish polyps from images, we presented a modified DeeplabV3+ model in this study to carry out segmentation tasks successfully and efficiently. The framework's encoder uses a pre-trained dilated convolutional residual network for optimal feature map resolution. The robustness of the modified model is tested against state-of-the-art segmentation approaches. In this work, we employed two publicly available datasets, CVC-Clinic DB and Kvasir-SEG, and obtained Dice similarity coefficients of 0.97 and 0.95, respectively. The results show that the improved DeeplabV3+ model improves segmentation efficiency and effectiveness in both software and hardware with only minor changes.
开发用于分析结肠癌医学图像的自动化方法是主要研究领域之一。结肠镜检查是一种医疗手段,可让医生在结肠和直肠内寻找息肉、癌症或炎症组织等异常情况。它属于胃肠道疾病范畴,在全球范围内导致近 200 万人死亡。视频内窥镜检查是一种先进的医学成像方法,可用于诊断胃肠道疾病,如炎症性肠病、溃疡性结肠炎、食管炎和息肉。医学视频内窥镜会生成多幅图像,这些图像必须由专家进行审查。由于手动诊断的难度较大,因此已经开展了针对计算机辅助技术的研究,这些技术可以快速可靠地诊断所有生成的图像。本研究提出的方法为诊断结肠镜疾病建立了一个框架。通过使用更准确的计算机辅助息肉检测和分割,内窥镜医生可以降低结肠镜检查中息肉癌变的风险。为了创建能够自动从图像中区分息肉的模型,我们在这项研究中提出了一种改进的 DeeplabV3+模型,以成功高效地执行分割任务。该框架的编码器使用预训练的空洞卷积残差网络来实现最佳特征图分辨率。改进后的模型的稳健性通过与最先进的分割方法进行了测试。在这项工作中,我们使用了两个公开可用的数据集,即 CVC-Clinic DB 和 Kvasir-SEG,并分别获得了 0.97 和 0.95 的 Dice 相似系数。结果表明,改进后的 DeeplabV3+模型在软件和硬件方面都具有较小的改动,提高了分割效率和有效性。