Assessment of the deep resection margin during oral cancer surgery: A systematic review

医学 科克伦图书馆 触诊 切除缘 边距(机器学习) 采样(信号处理) 外科 系统回顾 医学物理学 放射科 梅德林 切除术 计算机科学 随机对照试验 机器学习 滤波器(信号处理) 计算机视觉 政治学 法学
作者
Susan G. Brouwer de Koning,Anouk W. M. A. Schaeffers,Winnie Schats,Michiel W. M. van den Brekel,T.J.M. Ruers,Barış Karakullukçu
出处
期刊:Ejso [Elsevier BV]
卷期号:47 (9): 2220-2232 被引量:60
标识
DOI:10.1016/j.ejso.2021.04.016
摘要

Abstract The main challenge for radical resection in oral cancer surgery is to obtain adequate resection margins. Especially the deep margin, which can only be estimated based on palpation during surgery, is often reported inadequate. To increase the percentage of radical resections, there is a need for a quick, easy, minimal invasive method, which assesses the deep resection margin without interrupting or prolonging surgery. This systematic review provides an overview of technologies that are currently being studied with the aim of fulfilling this demand. A literature search was conducted through the databases Medline, Embase and the Cochrane Library. A total of 62 studies were included. The results were categorized according to the type of technique: ‘Frozen Section Analysis’, ‘Fluorescence’, ‘Optical Imaging’, ‘Conventional imaging techniques’, and ‘Cytological assessment’. This systematic review gives for each technique an overview of the reported performance (accuracy, sensitivity, specificity, positive predictive value, negative predictive value, or a different outcome measure), acquisition time, and sampling depth. At the moment, the most prevailing technique remains frozen section analysis. In the search for other assessment methods to evaluate the deep resection margin, some technologies are very promising for future use when effectiveness has been shown in larger trials, e.g., fluorescence (real-time, sampling depth up to 6 mm) or optical techniques such as hyperspectral imaging (real-time, sampling depth few mm) for microscopic margin assessment and ultrasound (less than 10 min, sampling depth several cm) for assessment on a macroscopic scale.
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