Department of Gastroenterology, Chaim Sheba Medical Center, Ramat Gan, Israel.
Faculty of Medicine, Tel Aviv University, Tel Aviv, Israel.
Tech Coloproctol. 2024 Apr 1;28(1):44. doi: 10.1007/s10151-024-02917-3.
Imaging is vital for assessing rectal cancer, with endoanal ultrasound (EAUS) being highly accurate in large tertiary medical centers. However, EAUS accuracy drops outside such settings, possibly due to varied examiner experience and fewer examinations. This underscores the need for an AI-based system to enhance accuracy in non-specialized centers. This study aimed to develop and validate deep learning (DL) models to differentiate rectal cancer in standard EAUS images.
A transfer learning approach with fine-tuned DL architectures was employed, utilizing a dataset of 294 images. The performance of DL models was assessed through a tenfold cross-validation.
The DL diagnostics model exhibited a sensitivity and accuracy of 0.78 each. In the identification phase, the automatic diagnostic platform achieved an area under the curve performance of 0.85 for diagnosing rectal cancer.
This research demonstrates the potential of DL models in enhancing rectal cancer detection during EAUS, especially in settings with lower examiner experience. The achieved sensitivity and accuracy suggest the viability of incorporating AI support for improved diagnostic outcomes in non-specialized medical centers.
影像学对于评估直肠癌至关重要,在大型三级医疗中心,腔内超声(EAUS)具有高度准确性。然而,在这些环境之外,EAUS 的准确性会下降,可能是由于检查者经验的差异和检查次数较少。这突显了需要基于人工智能的系统来提高非专业中心的准确性。本研究旨在开发和验证深度学习(DL)模型,以区分标准 EAUS 图像中的直肠癌。
采用迁移学习方法和微调的 DL 架构,利用包含 294 张图像的数据集进行研究。通过十折交叉验证评估 DL 模型的性能。
DL 诊断模型的灵敏度和准确率均为 0.78。在识别阶段,自动诊断平台在诊断直肠癌方面的曲线下面积表现为 0.85。
本研究表明,DL 模型在增强 EAUS 中直肠癌检测方面具有潜力,特别是在检查者经验较低的情况下。所达到的灵敏度和准确率表明,在非专业医疗中心中引入人工智能支持以改善诊断结果具有可行性。