Foundation for Detection of Early Gastric Carcinoma, 2-6-12 Nihombashikayabacho Chuo Ward, Tokyo, 103-0025, Japan.
Medical Simulation Center, Jichi Medical University, Tochigi, Japan.
Gastric Cancer. 2020 Nov;23(6):1033-1040. doi: 10.1007/s10120-020-01077-1. Epub 2020 May 7.
Helicobacter pylori (H. pylori) eradication is required to reduce incidence related to gastric cancer. Recently, it was found that even after the successful eradication of H. pylori, an increased, i.e., moderate, risk of gastric cancer persists in patients with advanced mucosal atrophy and/or intestinal metaplasia. This study aimed to develop a computer-aided diagnosis (CAD) system to classify the status of H. pylori infection of patients into three categories: uninfected (with no history of H. pylori infection), currently infected, and post-eradication.
The CAD system was based on linked color imaging (LCI) combined with deep learning (DL). First, a validation dataset was formed for the CAD systems by recording endoscopic movies of 120 subjects. Next, a training dataset of 395 subjects was prepared to enable DL. All endoscopic examinations were recorded using both LCI and white-light imaging (WLI). These endoscopic data were used to develop two different CAD systems, one for LCI (LCI-CAD) and one for WLI (WLI-CAD) images.
The diagnostic accuracy of the LCI-CAD system was 84.2% for uninfected, 82.5% for currently infected, and 79.2% for post-eradication status. Comparisons revealed superior accuracy of diagnoses based on LCI-CAD data relative based on WLI-CAD for uninfected, currently infected, and post-eradication cases. Furthermore, the LCI-CAD system demonstrated comparable diagnostic accuracy to that of experienced endoscopists with the validation data set of LCI.
The results of this study suggest the feasibility of an innovative gastric cancer screening program to determine cancer risk in individual subjects based on LCI-CAD.
为了降低胃癌相关发病率,需要根除幽门螺杆菌(H. pylori)。最近发现,即使 H. pylori 成功根除后,在黏膜萎缩和/或肠化生程度较重的患者中,胃癌的发生风险仍会增加,即中度增加。本研究旨在开发一种计算机辅助诊断(CAD)系统,将患者的 H. pylori 感染状态分为三类:未感染(无 H. pylori 感染史)、现感染和根除后。
CAD 系统基于链接彩色成像(LCI)结合深度学习(DL)。首先,通过记录 120 例患者的内镜电影,为 CAD 系统建立验证数据集。接下来,准备了 395 例患者的训练数据集,以实现 DL。所有内镜检查均使用 LCI 和白光成像(WLI)记录。这些内镜数据用于开发两种不同的 CAD 系统,一种用于 LCI(LCI-CAD),另一种用于 WLI(WLI-CAD)图像。
LCI-CAD 系统对未感染、现感染和根除后状态的诊断准确率分别为 84.2%、82.5%和 79.2%。比较显示,基于 LCI-CAD 数据的诊断准确性优于基于 WLI-CAD 的诊断准确性,无论是未感染、现感染还是根除后。此外,LCI-CAD 系统在验证 LCI 数据集时,与经验丰富的内镜医生具有可比的诊断准确性。
本研究结果表明,基于 LCI-CAD 可对个体患者进行胃癌风险筛查,为创新性胃癌筛查计划提供了可行性。