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外阴鳞状细胞癌的当前术前管理:概述

Current Preoperative Management of Vulvar Squamous Cell Carcinoma: An Overview.

作者信息

Della Corte Luigi, Cafasso Valeria, Guarino Maria Chiara, Gullo Giuseppe, Cucinella Gaspare, Lopez Alessandra, Zaami Simona, Riemma Gaetano, Giampaolino Pierluigi, Bifulco Giuseppe

机构信息

Department of Neuroscience, Reproductive Sciences and Dentistry, School of Medicine, University of Naples Federico II, 80131 Naples, Italy.

Department of Public Health, University of Naples Federico II, 80131 Naples, Italy.

出版信息

Cancers (Basel). 2024 May 11;16(10):1846. doi: 10.3390/cancers16101846.

Abstract

Vulvar carcinoma is a rare cancer affecting the genital tract, constituting 4% of gynecological tumors. Vulvar squamous cell carcinoma (VSCC) is the most common type. Diagnosis relies on biopsy during vulvoscopy, plus imaging such as ultrasonography (USG), magnetic resonance imaging (MRI) and positron emission tomography (PET). This review aims to lay out a thorough overview as to the current preoperative management of VSCC, both in case of vulvar and lymph node involvement. The data research was conducted using the following databases: MEDLINE, EMBASE, Web of Sciences, Scopus, ClinicalTrial.gov, OVID and Cochrane Library from 2010 to 2024. The selection criteria included only original articles. Seventeen studies were assessed for eligibility. A concordance rate of 62.3% for vHSIL and 65.2% for carcinoma at vulvoscopy, with a sensitivity of 98%, specificity of 40%, PPV (Positive Predictive Value) of 37% and NPV (Negative Predictive Value) of 98% in identifying malignant lesions was found. Regarding the reliability of PET for staging and assessing lymph node involvement, a mean SUV (Standardized Uptake Value) for malignant vulvar lesions of 8.4 (range 2.5-14.7) was reported. In the case of MRI, useful for the evaluation of loco-regional infiltration and lymph node involvement, the ratio of the short-to-long-axis diameter and the reader's diagnostic confidence for the presence of lymph node metastasis yielded accuracy of 84.8% and 86.9%, sensitivity of 86.7% and 87.5%, specificity of 81.3% and 86.2%, PPV of 89.7% and 87.5% and NPV of 76.5% and 86.2%, respectively. A long lymph node axis >10 mm and a short diameter >5.8 mm were found to be predictors of malignancy. At USG, instead, the two main characteristics of potentially malignant lymph nodes are cortical thickness and short axis length; the combination of these ultrasound parameters yielded the highest accuracy in distinguishing between negative and positive lymph nodes. Despite the heterogeneity of the included studies and the lack of randomized clinical trials, this review provides a broad overview of the three imaging tools used for the presurgical management of VSCC. Nowadays, although MRI and PET represent the gold standard, ultrasound evaluation is taking on a growing role, as long as it is carried out by expert sonographer. The management of this rare disease should be always performed by a multidisciplinary team in order to precisely stage the tumor and determine the most suitable treatment approach.

摘要

外阴癌是一种影响生殖道的罕见癌症,占妇科肿瘤的4%。外阴鳞状细胞癌(VSCC)是最常见的类型。诊断依赖于外阴镜检查时的活检,以及超声检查(USG)、磁共振成像(MRI)和正电子发射断层扫描(PET)等影像学检查。本综述旨在全面概述VSCC目前的术前管理,包括外阴和淋巴结受累的情况。数据研究使用了以下数据库:2010年至2024年的MEDLINE、EMBASE、科学网、Scopus、ClinicalTrial.gov、OVID和Cochrane图书馆。选择标准仅包括原创文章。对17项研究进行了资格评估。在外阴镜检查中,vHSIL的符合率为62.3%,癌的符合率为65.2%,在识别恶性病变方面,敏感性为98%,特异性为40%,阳性预测值(PPV)为37%,阴性预测值(NPV)为98%。关于PET在分期和评估淋巴结受累方面的可靠性,报告恶性外阴病变的平均标准化摄取值(SUV)为8.4(范围2.5 - 14.7)。在MRI方面,其对局部区域浸润和淋巴结受累的评估很有用,短轴与长轴直径之比以及读者对淋巴结转移存在的诊断信心的准确率分别为84.8%和86.9%,敏感性分别为86.7%和87.5%,特异性分别为81.3%和86.2%,PPV分别为89.7%和87.5%,NPV分别为76.5%和86.2%。发现淋巴结长轴>10 mm和短径>5.8 mm是恶性肿瘤的预测指标。而在USG中,潜在恶性淋巴结的两个主要特征是皮质厚度和短轴长度;这些超声参数的组合在区分阴性和阳性淋巴结方面具有最高的准确率。尽管纳入研究存在异质性且缺乏随机临床试验,但本综述提供了用于VSCC术前管理的三种影像学工具的广泛概述。如今,虽然MRI和PET是金标准,但只要由专业超声检查医师进行,超声评估的作用也越来越大。这种罕见疾病的管理应由多学科团队进行,以便准确分期肿瘤并确定最合适的治疗方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/bf49/11119127/3814541fb395/cancers-16-01846-g001.jpg

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