医学
静脉曲张
食管静脉曲张
肝硬化
放射科
瓦利克斯
食道疾病
食管
胃肠病学
内科学
门脉高压
作者
Ali Borhani,Harry Luu,Alireza Mohseni,Ziyi Xu,Mohammadreza Shaghaghi,Celestina Tolosa,Mohammad Mirza‐Aghazadeh‐Attari,Seyedeh Panid Madani,Haneyeh Shahbazian,Pegah Khoshpouri,Shadi Afyouni,Ghazal Zandieh,Ihab R. Kamel,Amy K. Kim
标识
DOI:10.1016/j.clinimag.2024.110168
摘要
Background & aim Esophageal varices (EV) screening guidelines have evolved with improved risk stratification to avoid unnecessary esophagogastroduodenoscopy (EGD) in individuals with low bleeding risks. However, uncertainties persist in the recommendations for certain patient groups, particularly those with hepatocellular carcinoma (HCC) and/or receiving non-selective beta-blockers (NSBB) without prior endoscopy. This study assessed the efficacy of imaging in ruling out EVs and their high-risk features associated with bleeding in patients with cirrhosis and with HCC. We also evaluated the impact of NSBB on the detection of these characteristics. Methods A total of 119 patients undergoing EGD with CT and/or MRI within 90 days of the procedure were included. 87 patients had HCC. A new imaging grading system was developed utilizing the size of EVs and the extent of their protrusion into the esophagus lumen. The negative predictive value (NPV) of EVimaging(−) versus EVimaging (+) (grades 1–3) in ruling out the presence of EV and/or high-risk features by EGD was calculated. The predictive performance of imaging was determined by logistic regression. Results The NPV of imaging for detecting EV and high-risk features was 81 % and 92 %, respectively. Among HCC patients, the NPV for EV and high-risk features was 80 % and 64 %, respectively. Being on NSBB didn't statistically impact the imaging detection of EV. Imaging was a better predictor of high-risk EGD findings than Child-Turcotte-Pugh scores. Conclusions Our results suggest that imaging can effectively rule out the presence of EV and high-risk features during EGD, even in patients with HCC and/or receiving NSBB.
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