Turtoi Daria Claudia, Brata Vlad Dumitru, Incze Victor, Ismaiel Abdulrahman, Dumitrascu Dinu Iuliu, Militaru Valentin, Munteanu Mihai Alexandru, Botan Alexandru, Toc Dan Alexandru, Duse Traian Adrian, Popa Stefan Lucian
Faculty of Medicine, "Iuliu Hatieganu" University of Medicine and Pharmacy, 400000 Cluj-Napoca, Romania.
2nd Medical Department, "Iuliu Hatieganu" University of Medicine and Pharmacy, 400000 Cluj-Napoca, Romania.
J Clin Med. 2024 Aug 15;13(16):4818. doi: 10.3390/jcm13164818.
: Gastritis represents one of the most prevalent gastrointestinal diseases and has a multifactorial etiology, many forms of manifestation, and various symptoms. Diagnosis of gastritis is made based on clinical, endoscopic, and histological criteria, and although it is a thorough process, many cases are misdiagnosed or overlooked. This systematic review aims to provide an extensive overview of current artificial intelligence (AI) applications in gastritis diagnosis and evaluate the precision of these systems. This evaluation could highlight the role of AI as a helpful and useful tool in facilitating timely and accurate diagnoses, which in turn could improve patient outcomes. : We have conducted an extensive and comprehensive literature search of PubMed, Scopus, and Web of Science, including studies published until July 2024. : Despite variations in study design, participant numbers and characteristics, and outcome measures, our observations suggest that implementing an AI automatic diagnostic tool into clinical practice is currently feasible, with the current systems achieving high levels of accuracy, sensitivity, and specificity. Our findings indicate that AI outperformed human experts in most studies, with multiple studies exhibiting an accuracy of over 90% for AI compared to human experts. These results highlight the significant potential of AI to enhance diagnostic accuracy and efficiency in gastroenterology. : AI-based technologies can now automatically diagnose using images provided by gastroscopy, digital pathology, and radiology imaging. Deep learning models exhibited high levels of accuracy, sensitivity, and specificity while assessing the diagnosis, staging, and risk of neoplasia for different types of gastritis, results that are superior to those of human experts in most studies.
胃炎是最常见的胃肠道疾病之一,其病因是多因素的,有多种表现形式和各种症状。胃炎的诊断基于临床、内镜和组织学标准,尽管这是一个全面的过程,但许多病例仍被误诊或漏诊。本系统评价旨在全面概述当前人工智能(AI)在胃炎诊断中的应用,并评估这些系统的准确性。这种评估可以凸显人工智能作为一种有助于及时准确诊断的有用工具的作用,进而改善患者的治疗结果。
我们对PubMed、Scopus和Web of Science进行了广泛而全面的文献检索,包括截至2024年7月发表的研究。
尽管研究设计、参与者数量和特征以及结果测量存在差异,但我们的观察结果表明,目前将人工智能自动诊断工具应用于临床实践是可行的,当前的系统具有较高的准确性、敏感性和特异性。我们的研究结果表明,在大多数研究中,人工智能的表现优于人类专家,多项研究显示,与人类专家相比,人工智能的准确率超过90%。这些结果凸显了人工智能在提高胃肠病学诊断准确性和效率方面的巨大潜力。
基于人工智能的技术现在可以使用胃镜检查、数字病理学和放射学成像提供的图像进行自动诊断。深度学习模型在评估不同类型胃炎的诊断、分期和肿瘤形成风险时表现出较高的准确性、敏感性和特异性,在大多数研究中,这些结果优于人类专家。