Polyp Identification from a Colonoscopy Image Using Semantic Segmentation Approach

Wahyu Hauzan Rafi, Mahmud Dwi Sulistiyo, Sugondo Hadiyoso, Untari Novia Wisesty
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Abstract

Colorectal Cancer (CRC) is a major contributor to cancer-related mortality worldwide, necessitating early detection and treatment of polyps to prevent cancer progression. A colonoscopy is a critical diagnostic procedure for identifying colon abnormalities and removing premalignant polyps. However, accurately segmenting polyps in colonoscopy images poses challenges due to their diverse appearance and indistinct boundaries. In this study, we investigate augmentation techniques to enhance polyp semantic segmentation using the U-Net model. Our analysis reveals that the most effective technique is found in sub-scenario 2.6.c with an input size of 320×320, striking a favorable balance between accuracy and efficiency. Additionally, we explore the benefits of larger input sizes, taking into account resource considerations. Moreover, we conduct further testing of the best augmentation technique identified in previous experiments with the SegNet model. The results show a 3.5% improvement in the dice coefficient and slightly better qualitative outcomes. However, it is important to note that this enhancement comes with a nearly fivefold increase in training time. Moving forward, our objective is to develop a unified model for segmenting diverse medical images, pushing the boundaries of polyp detection and medical imaging. This research provides valuable insights and lays the foundation for more advanced applications in polyp detection and medical image analysis.
基于语义分割方法的结肠镜图像息肉识别
结直肠癌(CRC)是全球癌症相关死亡的主要原因,因此需要早期发现和治疗息肉以防止癌症进展。结肠镜检查是识别结肠异常和切除癌前息肉的关键诊断程序。然而,准确分割结肠镜图像中的息肉由于其多样的外观和模糊的边界提出了挑战。在这项研究中,我们研究了使用U-Net模型增强息肉语义分割的技术。我们的分析表明,最有效的技术是在子场景2.6.c中,输入大小为320×320,在准确性和效率之间取得了良好的平衡。此外,考虑到资源因素,我们探讨了更大的投入规模的好处。此外,我们使用SegNet模型对先前实验中确定的最佳增强技术进行了进一步测试。结果表明,骰子系数提高了3.5%,定性结果略有改善。然而,重要的是要注意,这种增强伴随着训练时间的近五倍增加。展望未来,我们的目标是开发一个统一的模型来分割不同的医学图像,突破息肉检测和医学成像的界限。本研究提供了有价值的见解,为息肉检测和医学图像分析的更高级应用奠定了基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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