Gomes Rômulo Sérgio Araújo, de Oliveira Guilherme Henrique Peixoto, de Moura Diogo Turiani Hourneaux, Kotinda Ana Paula Samy Tanaka, Matsubayashi Carolina Ogawa, Hirsch Bruno Salomão, Veras Matheus de Oliveira, Ribeiro Jordão Sasso João Guilherme, Trasolini Roberto Paolo, Bernardo Wanderley Marques, de Moura Eduardo Guimarães Hourneaux
Department of Gastroenterology, Hospital das Clínicas da Faculdade de Medicina da Universidade de São Paulo, São Paulo 05403-010, Brazil.
Division of Hepatology and Endoscopy, Department of Gastroenterology, Harvard Medical School, Brigham and Women's Hospital, Boston, MA 02115, United States.
World J Gastrointest Endosc. 2023 Aug 16;15(8):528-539. doi: 10.4253/wjge.v15.i8.528.
Subepithelial lesions (SELs) are gastrointestinal tumors with heterogeneous malignant potential. Endoscopic ultrasonography (EUS) is the leading method for evaluation, but without histopathological analysis, precise differentiation of SEL risk is limited. Artificial intelligence (AI) is a promising aid for the diagnosis of gastrointestinal lesions in the absence of histopathology.
To determine the diagnostic accuracy of AI-assisted EUS in diagnosing SELs, especially lesions originating from the muscularis propria layer.
Electronic databases including PubMed, EMBASE, and Cochrane Library were searched. Patients of any sex and > 18 years, with SELs assessed by EUS AI-assisted, with previous histopathological diagnosis, and presented sufficient data values which were extracted to construct a 2 × 2 table. The reference standard was histopathology. The primary outcome was the accuracy of AI for gastrointestinal stromal tumor (GIST). Secondary outcomes were AI-assisted EUS diagnosis for GIST gastrointestinal leiomyoma (GIL), the diagnostic performance of experienced endoscopists for GIST, and GIST GIL. Pooled sensitivity, specificity, positive, and negative predictive values were calculated. The corresponding summary receiver operating characteristic curve and post-test probability were also analyzed.
Eight retrospective studies with a total of 2355 patients and 44154 images were included in this meta-analysis. The AI-assisted EUS for GIST diagnosis showed a sensitivity of 92% [95% confidence interval (CI): 0.89-0.95; < 0.01), specificity of 80% (95%CI: 0.75-0.85; < 0.01), and area under the curve (AUC) of 0.949. For diagnosis of GIST GIL by AI-assisted EUS, specificity was 90% (95%CI: 0.88-0.95; = 0.02) and AUC of 0.966. The experienced endoscopists' values were sensitivity of 72% (95%CI: 0.67-0.76; < 0.01), specificity of 70% (95%CI: 0.64-0.76; < 0.01), and AUC of 0.777 for GIST. Evaluating GIST GIL, the experts achieved a sensitivity of 73% (95%CI: 0.65-0.80; < 0.01) and an AUC of 0.819.
AI-assisted EUS has high diagnostic accuracy for fourth-layer SELs, especially for GIST, demonstrating superiority compared to experienced endoscopists' and improving their diagnostic performance in the absence of invasive procedures.
上皮下病变(SELs)是具有异质性恶性潜能的胃肠道肿瘤。内镜超声检查(EUS)是主要的评估方法,但在缺乏组织病理学分析的情况下,对SEL风险的精确区分有限。在没有组织病理学的情况下,人工智能(AI)是诊断胃肠道病变的一种有前景的辅助手段。
确定AI辅助EUS诊断SELs,尤其是起源于固有肌层的病变的诊断准确性。
检索包括PubMed、EMBASE和Cochrane图书馆在内的电子数据库。纳入任何性别且年龄大于18岁、接受EUS AI辅助评估的SELs患者,这些患者有既往组织病理学诊断,且提供了足够的数据值,将其提取以构建2×2表格。参考标准为组织病理学。主要结局是AI诊断胃肠道间质瘤(GIST)的准确性。次要结局是AI辅助EUS诊断GIST与胃肠道平滑肌瘤(GIL)、经验丰富的内镜医师对GIST的诊断性能,以及GIST与GIL。计算合并敏感性、特异性、阳性和阴性预测值。还分析了相应的汇总受试者工作特征曲线和检验后概率。
本荟萃分析纳入了8项回顾性研究,共2355例患者和44154张图像。AI辅助EUS诊断GIST的敏感性为92%[95%置信区间(CI):0.89 - 0.95;P < 0.01],特异性为80%(95%CI:0.75 - 0.85;P < 0.01),曲线下面积(AUC)为0.949。AI辅助EUS诊断GIST与GIL时,特异性为90%(95%CI:0.88 - 0.95;P = 0.02),AUC为0.966。经验丰富的内镜医师诊断GIST的值为敏感性72%(95%CI:0.67 - 0.76;P < 0.01),特异性70%(95%CI:0.64 - 0.76;P < 0.01),AUC为0.777。评估GIST与GIL时,专家的敏感性为73%(95%CI:0.65 - 0.80;P < 0.01),AUC为0.819。
AI辅助EUS对第四层SELs具有较高的诊断准确性,尤其是对GIST,与经验丰富的内镜医师相比显示出优越性,并在无侵入性操作的情况下提高了他们的诊断性能。