医学
莫氏手术
基底细胞癌
隆突性皮肤纤维肉瘤
皮肤癌
皮肤病科
边距(机器学习)
基底细胞
癌症
外科
病理
内科学
机器学习
计算机科学
作者
Yaohui Xu,Young Jin Lim,Jeremy S. Bordeaux,Sumaira Z. Aasi,Murad Alam,Pei-Ling Chen,Carlo M. Contreras,Dominick J. DiMaio,Jessica M. Donigan,Jeffrey M. Farma,Roy C. Grekin,Lawrence A. Mark,Kishwer S. Nehal,Paul Nghiem,Kelly Olino,Tejesh Patel,Jeffrey Scott,Ashok R. Shaha,Divya Srivastava,Chrysalyne D. Schmults
出处
期刊:Journal of The National Comprehensive Cancer Network
日期:2024-11-01
卷期号:22 (9)
标识
DOI:10.6004/jnccn.2024.7037
摘要
Peripheral and deep en face margin assessment (PDEMA), formerly termed by NCCN as complete circumferential peripheral and deep margin assessment (CCPDMA), has the advantages of histologic visualization of the entire marginal surface, highly accurate resection of involved tissue, and sparing of uninvolved tissue. Owing to its highest reported cure rates, PDEMA is the NCCN-preferred treatment for dermatofibrosarcoma protuberans, high-risk basal cell carcinoma, and very-high-risk cutaneous squamous cell carcinoma. In the United States, Mohs micrographic surgery (Mohs) is the most common method of PDEMA. In Germany and some other countries, non-Mohs methods of PDEMA referred to as the Tubingen torte and muffin techniques are more widely used. The Tubingen methods of PDEMA require close communication between surgeon and pathologist. This article describes the background of both Mohs and Tubingen PDEMA, reviews what constitutes PDEMA, and provides a protocol for Tubingen PDEMA detailing critical components in a stepwise fashion using illustrative photos and diagrams. We hope to broaden understanding of the NCCN Guidelines and their rationale, align practice, and optimize patient outcomes.
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