Deep Learning and Gastric Cancer: Systematic Review of AI-Assisted Endoscopy

被引:7
作者
Klang, Eyal [1 ,2 ,3 ]
Sourosh, Ali [1 ,2 ]
Nadkarni, Girish N. [1 ,2 ]
Sharif, Kassem [4 ]
Lahat, Adi [4 ]
机构
[1] Icahn Sch Med Mt Sinai, Div Data Driven & Digital Med D3M, New York, NY 10029 USA
[2] Icahn Sch Med Mt Sinai, Charles Bronfman Inst Personalized Med, New York, NY 10029 USA
[3] Affiliated Tel Aviv Univ, ARC Innovat Ctr, Sheba Med Ctr, Med Sch, IL-52621 Ramat Gan, Tel Aviv, Israel
[4] Affiliated Tel Aviv Univ, Sheba Med Ctr, Dept Gastroenterol, Med Sch, IL-52621 Ramat Gan, Tel Aviv, Israel
基金
英国科研创新办公室;
关键词
gastric cancer; deep learning; artificial intelligence; systematic review; endoscopy; CONVOLUTIONAL NEURAL-NETWORK; IMAGE-ENHANCED ENDOSCOPY; ARTIFICIAL-INTELLIGENCE; DIFFERENTIATION; MULTICENTER; NEOPLASMS;
D O I
10.3390/diagnostics13243613
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Background: Gastric cancer (GC), a significant health burden worldwide, is typically diagnosed in the advanced stages due to its non-specific symptoms and complex morphological features. Deep learning (DL) has shown potential for improving and standardizing early GC detection. This systematic review aims to evaluate the current status of DL in pre-malignant, early-stage, and gastric neoplasia analysis. Methods: A comprehensive literature search was conducted in PubMed/MEDLINE for original studies implementing DL algorithms for gastric neoplasia detection using endoscopic images. We adhered to the Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) guidelines. The focus was on studies providing quantitative diagnostic performance measures and those comparing AI performance with human endoscopists. Results: Our review encompasses 42 studies that utilize a variety of DL techniques. The findings demonstrate the utility of DL in GC classification, detection, tumor invasion depth assessment, cancer margin delineation, lesion segmentation, and detection of early-stage and pre-malignant lesions. Notably, DL models frequently matched or outperformed human endoscopists in diagnostic accuracy. However, heterogeneity in DL algorithms, imaging techniques, and study designs precluded a definitive conclusion about the best algorithmic approach. Conclusions: The promise of artificial intelligence in improving and standardizing gastric neoplasia detection, diagnosis, and segmentation is significant. This review is limited by predominantly single-center studies and undisclosed datasets used in AI training, impacting generalizability and demographic representation. Further, retrospective algorithm training may not reflect actual clinical performance, and a lack of model details hinders replication efforts. More research is needed to substantiate these findings, including larger-scale multi-center studies, prospective clinical trials, and comprehensive technical reporting of DL algorithms and datasets, particularly regarding the heterogeneity in DL algorithms and study designs.
引用
收藏
页数:22
相关论文
共 50 条
[31]   Diagnosis of Depth of Submucosal Invasion in Colorectal Cancer with AI Using Deep Learning [J].
Minami, Soichiro ;
Saso, Kazuhiro ;
Miyoshi, Norikatsu ;
Fujino, Shiki ;
Kato, Shinya ;
Sekido, Yuki ;
Hata, Tsuyoshi ;
Ogino, Takayuki ;
Takahashi, Hidekazu ;
Uemura, Mamoru ;
Yamamoto, Hirofumi ;
Doki, Yuichiro ;
Eguchi, Hidetoshi .
CANCERS, 2022, 14 (21)
[32]   Comparative bibliometric analysis of artificial intelligence-assisted polyp diagnosis and AI-assisted digestive endoscopy: trends and growth in AI gastroenterology (2003-2023) [J].
Peng, Ziye ;
Wang, Xiangyu ;
Li, Jiaxin ;
Sun, Jiayi ;
Wang, Yuwei ;
Li, Yanru ;
Li, Wen ;
Zhang, Shuyi ;
Wang, Ximo ;
Pei, Zhengcun .
FRONTIERS IN MEDICINE, 2024, 11
[33]   Goal Setting in Accounting Research: A Systematic Review and Reflections on Future Research Opportunities With AI-Assisted Augmentation [J].
Richins, Greg .
ACCOUNTING AND FINANCE, 2025,
[34]   Effects of ai-assisted colonoscopy on adenoma miss rate/adenoma detection rate: A protocol for systematic review and meta-analysis [J].
Shao, Lei ;
Yan, Xinzong ;
Liu, Chengjiang ;
Guo, Can ;
Cai, Baojia .
MEDICINE, 2022, 101 (46) :E31945
[35]   Artificial intelligence in gastric cancer: a systematic review [J].
Jin, Peng ;
Ji, Xiaoyan ;
Kang, Wenzhe ;
Li, Yang ;
Liu, Hao ;
Ma, Fuhai ;
Ma, Shuai ;
Hu, Haitao ;
Li, Weikun ;
Tian, Yantao .
JOURNAL OF CANCER RESEARCH AND CLINICAL ONCOLOGY, 2020, 146 (09) :2339-2350
[36]   AI-assisted diffuse correlation tomography for identifying breast cancer [J].
Zhang, Ruizhi ;
Lu, Jianju ;
Di, Wenqi ;
Gui, Zhiguo ;
Chan, Shun Wan ;
Yang, Fengbao ;
Shang, Yu .
JOURNAL OF BIOMEDICAL OPTICS, 2025, 30 (05)
[37]   Systematic Review of Deep Learning Techniques for Lung Cancer Detection [J].
Aharonu, Mattakoyya ;
Kumar, R. Lokesh .
INTERNATIONAL JOURNAL OF ADVANCED COMPUTER SCIENCE AND APPLICATIONS, 2023, 14 (03) :725-736
[38]   AI-Assisted Detection of Interproximal, Occlusal, and Secondary Caries on Bite-Wing Radiographs: A Single-Shot Deep Learning Approach [J].
Karakus, Rabia ;
Ozic, Muhammet Usame ;
Tassoker, Melek .
JOURNAL OF IMAGING INFORMATICS IN MEDICINE, 2024, 37 (06) :3146-3159
[39]   MRI deep learning models for assisted diagnosis of knee pathologies: a systematic review [J].
Mead, Keiley ;
Cross, Tom ;
Roger, Greg ;
Sabharwal, Rohan ;
Singh, Sahaj ;
Giannotti, Nicola .
EUROPEAN RADIOLOGY, 2025, 35 (05) :2457-2469
[40]   Learning About AI: A Systematic Review of Reviews on AI Literacy [J].
Zhang, Shan ;
Prasad, Priyadharshini Ganapathy ;
Schroeder, Noah L. .
JOURNAL OF EDUCATIONAL COMPUTING RESEARCH, 2025, 63 (05) :1292-1322