iScan:利用深度学习从 CT 扫描图像中检测结直肠癌

Sagnik Ghosal, Debanjan Das, Jay Kumar Rai, Akanksha Singh Pandaw, Sakshi Verma
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引用次数: 0

摘要

大肠癌是一种致死率极高的癌症,如果能及早发现,就能得到有效治疗。然而,目前的诊断过程需要对 CT 扫描图像进行耗时的人工检查,以确定癌变区域和癌变行为,这导致了资源消耗、主观性和对人工评估的依赖。为了应对这些挑战,我们提出了一种利用 CT 扫描图像自动检测结直肠癌的三阶段深度神经系统。该系统包括用于识别肿瘤位置的 SegNet 网络、用于将肿瘤分为良性和恶性的 InceptionResNet V2 网络,以及用于预测癌症分期的肿瘤面积和周长分析。所提出的模型将这些功能整合在一起,提供了一个全自动的解决方案。在37名患者的真实CT扫描中,所提出的模型达到了95.8的ROI分割准确率、0.6214的骰子系数、69.75的IoU得分和95.83的肿瘤分类准确率。使用径向长度(RL)和圆周率(C)参数的独特方法预测T期的准确率接近85%。基于这些结果,所提出的系统通过利用自动化、深度学习和创新参数分析的力量,成为传统癌症诊断技术的可靠和合适的替代方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
iScan: Detection of Colorectal Cancer From CT Scan Images Using Deep Learning
Colorectal cancer, a highly lethal form of cancer, can be treated effectively if detected early. However, the current diagnosis process involves a time-consuming and manual review of CT scans to identify cancerous regions and behavior, leading to resource consumption, subjectivity, and dependency on manual assessment. We propose a 3-phase deep neural system for automated colorectal cancer detection using CT scan images to address these challenges. It includes a SegNet network to identify tumor locations, an InceptionResNet V2 network to classify tumors as benign or malignant, and an analysis of tumor area cum perimeter to predict the cancer stage. The proposed model offers a fully automated solution by combining these functionalities under a single umbrella. In real-life CT scans from 37 patients, the proposed model achieved 95.8 \(\%\) ROI segmentation accuracy, a dice coefficient of 0.6214, 69.75 \(\%\) IoU score, and 95.83 \(\%\) tumor classification accuracy. The unique approach using Radial Length (RL) and Circularity (C) parameters predicted the T-stage with close to 85 \(\%\) accuracy. Based on these outcomes, the proposed system establishes itself as a reliable and suitable alternative to traditional cancer diagnosis techniques by leveraging the power of automation, deep learning, and innovative parameter analysis.
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