Faculdade de Odontologia da Universidade Federal da Bahia Av. Araujo Pinho, 62, 7o andar, Canela Salvador, Bahia, CEP: 40110-040, Brasil
Med Oral Patol Oral Cir Bucal. 2021 May 1;26(3):e368-e378. doi: 10.4317/medoral.24238.
This study aimed to search for scientific evidence concerning the accuracy of computer-assisted analysis for diagnosing odontogenic cysts.
A systematic review was conducted according to the PRISMA statements and considering eleven databases, including the grey literature. Protocol was registered in PROSPERO (CRD [Blinding]). The PECO strategy was used to define the eligibility criteria and only studies involving diagnostic accuracy were included. Their risk of bias was investigated using the Joanna Briggs Institute Critical Appraisal tool.
Out of 437 identified citations, five papers, published between 2006 and 2019, fulfilled the criteria and were included in this systematic review. A total of 5,264 images from 508 lesions, classified as radicular cyst, odontogenic keratocyst, lateral periodontal cyst, glandular odontogenic cyst, or dentigerous cyst, were analyzed. All selected articles scored low risk of bias. In three studies, the best performances were achieved when the two subtypes of odontogenic keratocysts (solitary or syndromic) were pooled together, the case-wise analysis showing a success rate of 100% for odontogenic keratocysts and radicular cysts, in one of them. In two studies, the dentigerous cyst was associated with the majority of misclassifications, and its omission from the dataset improved significantly the classification rates.
The overall evaluation showed all studies presented high accuracy rates of computer-aided systems in classifying odontogenic cysts in digital images of histological tissue sections. However, due to the heterogeneity of the studies, a meta-analysis evaluating the outcomes of interest was not performed and a pragmatic recommendation about their use is not possible.
本研究旨在寻找有关计算机辅助分析诊断牙源性囊肿准确性的科学证据。
根据 PRISMA 声明并考虑到包括灰色文献在内的十一个数据库进行了系统评价。方案在 PROSPERO(CRD [盲法])中进行了注册。使用 PECO 策略来定义纳入标准,仅纳入涉及诊断准确性的研究。使用 Joanna Briggs 研究所的批判性评估工具评估其偏倚风险。
在 437 条识别出的引文中外,有五篇发表于 2006 年至 2019 年的论文符合标准并被纳入本系统评价。共分析了 508 个病变的 5264 张图像,这些病变被分类为根型囊肿、牙源性角化囊肿、牙周侧囊肿、腺牙源性囊肿或含牙囊肿。所有选定的文章偏倚风险评分均较低。在三项研究中,当将两种牙源性角化囊肿亚型(单发或综合征)合并在一起进行分析时,表现最佳,其中一项研究显示牙源性角化囊肿和根型囊肿的成功率为 100%。在两项研究中,含牙囊肿与大多数错误分类相关,从数据集中排除该囊肿可显著提高分类率。
总体评估显示,所有研究都表明计算机辅助系统在对组织切片数字图像中的牙源性囊肿进行分类时具有较高的准确性。然而,由于研究的异质性,未进行评估感兴趣结果的荟萃分析,因此无法提出关于其使用的实用建议。