A deep-learning based system using multi-modal data for diagnosing gastric neoplasms in real-time (with video)

医学 情态动词 人工智能 特征(语言学) 模式识别(心理学) 放射科 核医学 计算机科学 语言学 哲学 化学 高分子化学
作者
Hongliu Du,Zehua Dong,Lianlian Wu,Yanxia Li,Jun Liu,Chaijie Luo,Xiaoquan Zeng,Yunchao Deng,Cheng Du,Wenxiu Diao,Yijie Zhu,Tao Xiao,Junxiao Wang,Chenxia Zhang,Honggang Yu
出处
期刊:Gastric Cancer [Springer Science+Business Media]
卷期号:26 (2): 275-285 被引量:19
标识
DOI:10.1007/s10120-022-01358-x
摘要

White light (WL) and weak-magnifying (WM) endoscopy are both important methods for diagnosing gastric neoplasms. This study constructed a deep-learning system named ENDOANGEL-MM (multi-modal) aimed at real-time diagnosing gastric neoplasms using WL and WM data. WL and WM images of a same lesion were combined into image-pairs. A total of 4201 images, 7436 image-pairs, and 162 videos were used for model construction and validation. Models 1–5 including two single-modal models (WL, WM) and three multi-modal models (data fusion on task-level, feature-level, and input-level) were constructed. The models were tested on three levels including images, videos, and prospective patients. The best model was selected for constructing ENDOANGEL-MM. We compared the performance between the models and endoscopists and conducted a diagnostic study to explore the ENDOANGEL-MM's assistance ability. Model 4 (ENDOANGEL-MM) showed the best performance among five models. Model 2 performed better in single-modal models. The accuracy of ENDOANGEL-MM was higher than that of Model 2 in still images, real-time videos, and prospective patients. (86.54 vs 78.85%, P = 0.134; 90.00 vs 85.00%, P = 0.179; 93.55 vs 70.97%, P < 0.001). Model 2 and ENDOANGEL-MM outperformed endoscopists on WM data (85.00 vs 71.67%, P = 0.002) and multi-modal data (90.00 vs 76.17%, P = 0.002), significantly. With the assistance of ENDOANGEL-MM, the accuracy of non-experts improved significantly (85.75 vs 70.75%, P = 0.020), and performed no significant difference from experts (85.75 vs 89.00%, P = 0.159). The multi-modal model constructed by feature-level fusion showed the best performance. ENDOANGEL-MM identified gastric neoplasms with good accuracy and has a potential role in real-clinic.
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