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Application of artificial intelligence using convolutional neural networks in determining the invasion depth of esophageal squamous cell carcinoma

机译:人工智能利用卷积神经网络在测定食管鳞状细胞癌侵袭深度时的应用

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Objectives In Japan, endoscopic resection (ER) is often used to treat esophageal squamous cell carcinoma (ESCC) when invasion depths are diagnosed as EP-SM1, whereas ESCC cases deeper than SM2 are treated by surgical operation or chemoradiotherapy. Therefore, it is crucial to determine the invasion depth of ESCC via preoperative endoscopic examination. Recently, rapid progress in the utilization of artificial intelligence (AI) with deep learning in medical fields has been achieved. In this study, we demonstrate the diagnostic ability of AI to measure ESCC invasion depth. Methods We retrospectively collected 1751 training images of ESCC at the Cancer Institute Hospital, Japan. We developed an AI-diagnostic system of convolutional neural networks using deep learning techniques with these images. Subsequently, 291 test images were prepared and reviewed by the AI-diagnostic system and 13 board-certified endoscopists to evaluate the diagnostic accuracy. Results The AI-diagnostic system detected 95.5% (279/291) of the ESCC in test images in 10 s, analyzed the 279 images and correctly estimated the invasion depth of ESCC with a sensitivity of 84.1% and accuracy of 80.9% in 6 s. The accuracy score of this system exceeded those of 12 out of 13 board-certified endoscopists, and its area under the curve (AUC) was greater than the AUCs of all endoscopists. Conclusions The AI-diagnostic system demonstrated a higher diagnostic accuracy for ESCC invasion depth than those of endoscopists and, therefore, can be potentially used in ESCC diagnostics.
机译:日本的目标,内镜切除(ER)通常用于治疗食管鳞状细胞癌(ESCC)当侵袭深度被诊断为EP-SM1时,而ESCC病例比SM2更深入地通过外科手术或化学疗法治疗。因此,通过术前内窥镜检查确定ESCC的侵袭深度至关重要。最近,已经实现了在医学领域深入学习的人工智能(AI)利用的快速进展。在这项研究中,我们展示了AI测量ESCC入侵深度的诊断能力。方法我们回顾性收集了日本癌症学院医院ESCC的1751次培训图像。我们使用这些图像的深度学习技术开发了一种卷积神经网络的AI诊断系统。随后,通过AI诊断系统和13个板认证的内窥镜师制备和审查291个测试图像,以评估诊断准确性。结果IS-Diagnostic系统检测到10 s中的测试图像中的ESCC的95.5%(279/291),分析了279个图像,并正确估计了ESCC的侵袭深度,灵敏度为84.1%,精度为80.9% 。该系统的精度得分超过了13个董事会认证的内窥镜师中的12名中的12位,其曲线下的区域(AUC)大于所有内窥镜手的AUC。结论AI诊断系统表明ESCC侵袭深度的诊断精度高于内窥镜师,因此可以在ESCC诊断中使用。

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