Impact of artificial intelligence in the management of esophageal, gastric and colorectal malignancies

Ayrton I Bangolo, Nikita Wadhwani, V. Nagesh, Shraboni Dey, Hadrian Hoang-Vu Tran, Izage Kianifar Aguilar, Auda Auda, Aman Sidiqui, Aiswarya Menon, Deborah Daoud, James Liu, Sai Priyanka Pulipaka, Blessy George, Flor Furman, Nareeman Khan, Adewale Plumptre, Imranjot Sekhon, Abraham Lo, Simcha I Weissman
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Abstract

The incidence of gastrointestinal malignancies has increased over the past decade at an alarming rate. Colorectal and gastric cancers are the third and fifth most commonly diagnosed cancers worldwide but are cited as the second and third leading causes of mortality. Early institution of appropriate therapy from timely diagnosis can optimize patient outcomes. Artificial intelligence (AI)-assisted diagnostic, prognostic, and therapeutic tools can assist in expeditious diagnosis, treatment planning/response prediction, and post-surgical prognostication. AI can intercept neoplastic lesions in their primordial stages, accurately flag suspicious and/or inconspicuous lesions with greater accuracy on radiologic, histopathological, and/or endoscopic analyses, and eliminate over-dependence on clinicians. AI-based models have shown to be on par, and sometimes even outperformed experienced gastroenterologists and radiologists. Convolutional neural networks (state-of-the-art deep learning models) are powerful computational models, invaluable to the field of precision oncology. These models not only reliably classify images, but also accurately predict response to chemotherapy, tumor recurrence, metastasis, and survival rates post-treatment. In this systematic review, we analyze the available evidence about the diagnostic, prognostic, and therapeutic utility of artificial intelligence in gastrointestinal oncology.
人工智能对食管、胃和结直肠恶性肿瘤治疗的影响
在过去十年中,胃肠道恶性肿瘤的发病率以惊人的速度增长。结肠直肠癌和胃癌是全球第三大和第五大最常诊断出的癌症,但却被列为第二大和第三大致死原因。通过及时诊断及早采取适当的治疗措施可以优化患者的预后。人工智能(AI)辅助诊断、预后和治疗工具可协助快速诊断、治疗计划/反应预测和手术后预后。人工智能可以在肿瘤病变的初始阶段对其进行拦截,在放射学、组织病理学和/或内窥镜分析中更准确地标记可疑和/或不明显的病变,并消除对临床医生的过度依赖。基于人工智能的模型已被证明与经验丰富的胃肠病学家和放射学家不相上下,有时甚至超过他们。卷积神经网络(最先进的深度学习模型)是一种功能强大的计算模型,在精准肿瘤学领域具有不可估量的价值。这些模型不仅能可靠地对图像进行分类,还能准确预测化疗反应、肿瘤复发、转移和治疗后的存活率。在这篇系统综述中,我们分析了人工智能在胃肠道肿瘤学诊断、预后和治疗方面的现有证据。
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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