Renna Francesco, Martins Miguel, Neto Alexandre, Cunha António, Libânio Diogo, Dinis-Ribeiro Mário, Coimbra Miguel
Instituto de Engenharia de Sistemas e Computadores, Tecnologia e Ciência, 3200-465 Porto, Portugal.
Faculdade de Ciências, Universidade do Porto, 4169-007 Porto, Portugal.
Diagnostics (Basel). 2022 May 21;12(5):1278. doi: 10.3390/diagnostics12051278.
Stomach cancer is the third deadliest type of cancer in the world (0.86 million deaths in 2017). In 2035, a 20% increase will be observed both in incidence and mortality due to demographic effects if no interventions are foreseen. Upper GI endoscopy (UGIE) plays a paramount role in early diagnosis and, therefore, improved survival rates. On the other hand, human and technical factors can contribute to misdiagnosis while performing UGIE. In this scenario, artificial intelligence (AI) has recently shown its potential in compensating for the pitfalls of UGIE, by leveraging deep learning architectures able to efficiently recognize endoscopic patterns from UGIE video data. This work presents a review of the current state-of-the-art algorithms in the application of AI to gastroscopy. It focuses specifically on the threefold tasks of assuring exam completeness (i.e., detecting the presence of blind spots) and assisting in the detection and characterization of clinical findings, both gastric precancerous conditions and neoplastic lesion changes. Early and promising results have already been obtained using well-known deep learning architectures for computer vision, but many algorithmic challenges remain in achieving the vision of AI-assisted UGIE. Future challenges in the roadmap for the effective integration of AI tools within the UGIE clinical practice are discussed, namely the adoption of more robust deep learning architectures and methods able to embed domain knowledge into image/video classifiers as well as the availability of large, annotated datasets.
胃癌是全球第三大致命性癌症(2017年有86万人死亡)。如果不采取干预措施,到2035年,由于人口结构的影响,发病率和死亡率预计将上升20%。上消化道内镜检查(UGIE)在早期诊断中起着至关重要的作用,因此有助于提高生存率。另一方面,人为因素和技术因素可能导致在进行UGIE时出现误诊。在这种情况下,人工智能(AI)最近通过利用能够有效识别UGIE视频数据中内镜模式的深度学习架构,展示了其在弥补UGIE缺陷方面的潜力。本文综述了人工智能在胃镜检查应用中的当前先进算法。它特别关注确保检查完整性(即检测盲点的存在)以及协助检测和识别临床发现(包括胃癌前病变和肿瘤病变变化)这三个方面的任务。使用著名的计算机视觉深度学习架构已经取得了早期且有前景的结果,但在实现人工智能辅助UGIE的愿景方面仍存在许多算法挑战。本文还讨论了将人工智能工具有效整合到UGIE临床实践路线图中的未来挑战,即采用更强大的深度学习架构和方法,能够将领域知识嵌入图像/视频分类器,以及提供大量带注释的数据集。