Applying Deep-Learning Algorithm Interpreting Kidney, Ureter, and Bladder (KUB) X-Rays to Detect Colon Cancer.

Ling Lee, Chin Lin, Chia-Jung Hsu, Heng-Hsiu Lin, Tzu-Chiao Lin, Yu-Hong Liu, Je-Ming Hu
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Abstract

Early screening is crucial in reducing the mortality of colorectal cancer (CRC). Current screening methods, including fecal occult blood tests (FOBT) and colonoscopy, are primarily limited by low patient compliance and the invasive nature of the procedures. Several advanced imaging techniques such as computed tomography (CT) and histological imaging have been integrated with artificial intelligence (AI) to enhance the detection of CRC. There are still limitations because of the challenges associated with image acquisition and the cost. Kidney, ureter, and bladder (KUB) radiograph which is inexpensive and widely used for abdominal assessments in emergency settings and shows potential for detecting CRC when enhanced using advanced techniques. This study aimed to develop a deep learning model (DLM) to detect CRC using KUB radiographs. This retrospective study was conducted using data from the Tri-Service General Hospital (TSGH) between January 2011 and December 2020, including patients with at least one KUB radiograph. Patients were divided into development (n = 28,055), tuning (n = 11,234), and internal validation (n = 16,875) sets. An additional 15,876 patients were collected from a community hospital as the external validation set. A 121-layer DenseNet convolutional network was trained to classify KUB images for CRC detection. The model performance was evaluated using receiver operating characteristic curves, with sensitivity, specificity, and area under the curve (AUC) as metrics. The AUC, sensitivity, and specificity of the DLM in the internal and external validation sets achieved 0.738, 61.3%, and 74.4%, as well as 0.656, 47.7%, and 72.9%, respectively. The model performed better for high-grade CRC, with AUCs of 0.744 and 0.674 in the internal and external sets, respectively. Stratified analysis showed superior performance in females aged 55-64 with high-grade cancers. AI-positive predictions were associated with a higher long-term risk of all-cause mortality in both validation cohorts. AI-enhanced KUB X-ray analysis can enhance CRC screening coverage and effectiveness, providing a cost-effective alternative to traditional methods. Further prospective studies are necessary to validate these findings and fully integrate this technology into clinical practice.

应用深度学习算法解读肾脏、输尿管和膀胱 (KUB) X 射线以检测结肠癌。
早期筛查对于降低结直肠癌(CRC)死亡率至关重要。目前的筛查方法,包括粪便潜血试验(FOBT)和结肠镜检查,主要受限于患者依从性低和手术的侵入性。一些先进的成像技术,如计算机断层扫描(CT)和组织学成像,已与人工智能(AI)相结合,以提高对 CRC 的检测。但由于图像采集和成本方面的挑战,这些技术仍存在局限性。肾脏、输尿管和膀胱(KUB)X光片价格低廉,广泛应用于紧急情况下的腹部评估,在使用先进技术进行增强后,显示出检测 CRC 的潜力。本研究旨在开发一种深度学习模型(DLM),利用 KUB 放射线照片检测 CRC。这项回顾性研究使用了三军总医院(TSGH)2011 年 1 月至 2020 年 12 月期间的数据,其中包括至少有一张 KUB X 光片的患者。患者被分为开发组(28055 人)、调整组(11234 人)和内部验证组(16875 人)。另外从一家社区医院收集了 15876 名患者作为外部验证集。对 121 层 DenseNet 卷积网络进行了训练,以对 KUB 图像进行分类,从而检测出 CRC。使用接收者操作特征曲线评估模型性能,以灵敏度、特异性和曲线下面积(AUC)作为衡量指标。在内部和外部验证集中,DLM 的 AUC、灵敏度和特异性分别达到了 0.738、61.3% 和 74.4%,以及 0.656、47.7% 和 72.9%。该模型对高级别 CRC 的表现更好,内部和外部集的 AUC 分别为 0.744 和 0.674。分层分析表明,55-64 岁女性高级别癌症患者的表现更佳。在两个验证队列中,AI阳性预测与较高的长期全因死亡风险相关。AI增强型KUB X射线分析可提高CRC筛查的覆盖率和有效性,为传统方法提供了一种具有成本效益的替代方法。有必要开展进一步的前瞻性研究来验证这些发现,并将这项技术完全融入临床实践中。
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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