Robles-Medranda Carlos, Baquerizo-Burgos Jorge, Puga-Tejada Miguel, Cunto Domenica, Egas-Izquierdo Maria, Mendez Juan Carlos, Arevalo-Mora Martha, Alcivar Vasquez Juan, Lukashok Hannah, Tabacelia Daniela
Gastroenterology, Instituto Ecuatoriano de Enfermedades Digestivas - IECED, Guayaquil, Ecuador.
Research and Development, mdconsgroup, Guayaquil, Ecuador.
Endosc Int Open. 2024 Oct 10;12(10):E1118-E1126. doi: 10.1055/a-2404-5699. eCollection 2024 Oct.
Artificial intelligence (AI) models have demonstrated high diagnostic performance identifying neoplasia during digital single-operator cholangioscopy (DSOC). To date, there are no studies directly comparing AI vs. DSOC-guided probe-base confocal laser endomicroscopy (DSOC-pCLE). Thus, we aimed to compare the diagnostic accuracy of a DSOC-based AI model with DSOC-pCLE for identifying neoplasia in patients with indeterminate biliary strictures. This retrospective cohort-based diagnostic accuracy study included patients ≥ 18 years old who underwent DSOC and DSOC-pCLE (June 2014 to May 2022). Four methods were used to diagnose each patient's biliary structure, including DSOC direct visualization, DSOC-pCLE, an offline DSOC-based AI model analysis performed in DSOC recordings, and DSOC/pCLE-guided biopsies. The reference standard for neoplasia was a diagnosis based on further clinical evolution, imaging, or surgical specimen findings during a 12-month follow-up period. A total of 90 patients were included in the study. Eighty-six of 90 (95.5%) had neoplastic lesions including cholangiocarcinoma (98.8%) and tubulopapillary adenoma (1.2%). Four cases were inflammatory including two cases with chronic inflammation and two cases of primary sclerosing cholangitis. Compared with DSOC-AI, which obtained an area under the receiver operator curve (AUC) of 0.79, DSOC direct visualization had an AUC of 0.74 ( = 0.763), DSOC-pCLE had an AUC of 0.72 ( = 0.634), and DSOC- and pCLE-guided biopsy had an AUC of 0.83 ( = 0.809). The DSOC-AI model demonstrated an offline diagnostic performance similar to that of DSOC-pCLE, DSOC alone, and DSOC/pCLE-guided biopsies. Larger multicenter, prospective, head-to-head trials with a proportional sample among neoplastic and nonneoplastic cases are advisable to confirm the obtained results.
人工智能(AI)模型在数字单操作者胆管镜检查(DSOC)期间识别肿瘤方面已显示出较高的诊断性能。迄今为止,尚无研究直接比较AI与DSOC引导的探头式共聚焦激光内镜检查(DSOC-pCLE)。因此,我们旨在比较基于DSOC的AI模型与DSOC-pCLE在识别胆管狭窄不确定患者肿瘤方面的诊断准确性。这项基于回顾性队列的诊断准确性研究纳入了年龄≥18岁且接受了DSOC和DSOC-pCLE检查的患者(2014年6月至2022年5月)。使用四种方法诊断每位患者的胆管结构,包括DSOC直接可视化、DSOC-pCLE、在DSOC记录中进行的基于离线DSOC的AI模型分析以及DSOC/pCLE引导的活检。肿瘤的参考标准是基于12个月随访期内进一步的临床进展、影像学或手术标本结果做出的诊断。该研究共纳入90例患者。90例中的86例(95.5%)有肿瘤性病变,包括胆管癌(98.8%)和管状乳头状腺瘤(1.2%)。4例为炎症性病变,包括2例慢性炎症和2例原发性硬化性胆管炎。与接受者操作特征曲线(AUC)下面积为0.79的DSOC-AI相比,DSOC直接可视化的AUC为0.74(P = 0.763),DSOC-pCLE的AUC为0.72(P = 0.634),DSOC和pCLE引导的活检的AUC为0.83(P = 0.809)。DSOC-AI模型显示出与DSOC-pCLE、单独的DSOC以及DSOC/pCLE引导的活检相似的离线诊断性能。建议进行更大规模的多中心、前瞻性、头对头试验,并在肿瘤性和非肿瘤性病例中按比例抽样,以证实所得结果。