Jin Emily, Noble J Alison, Gomes Mireille
Department of Computer Science, University of Oxford, United Kingdom.
Institute of Biomedical Engineering, Department of Engineering Science, University of Oxford, United Kingdom.
Mayo Clin Proc Digit Health. 2023 Jun 13;1(3):247-257. doi: 10.1016/j.mcpdig.2023.04.007. eCollection 2023 Sep.
Female genital schistosomiasis (FGS) affects an estimated 56 million women and girls in Africa. Nevertheless, this neglected tropical disease remains largely understudied and underdiagnosed. In this literature review, we examine the effectiveness of published computer-aided diagnostic (CAD) algorithms for cervical cancer that use colposcopy images and assess their applicability to the design of an automated image diagnostic algorithm for FGS. We searched 2 databases (Embase and MEDLINE) from database inception to June 10, 2022. We identified 393 studies, of which 13 were relevant for FGS diagnosis. These 13 studies were analyzed for their key image analysis model components and compared with the features that would be beneficial in an FGS diagnostic image analysis system.
据估计,非洲有5600万妇女和女孩感染了女性生殖器血吸虫病(FGS)。然而,这种被忽视的热带病在很大程度上仍未得到充分研究和诊断。在这篇文献综述中,我们研究了已发表的利用阴道镜图像诊断宫颈癌的计算机辅助诊断(CAD)算法的有效性,并评估了其在设计FGS自动图像诊断算法中的适用性。我们检索了2个数据库(Embase和MEDLINE),检索时间从数据库建立至2022年6月10日。我们共识别出393项研究,其中13项与FGS诊断相关。我们分析了这13项研究的关键图像分析模型组件,并与FGS诊断图像分析系统中有益的特征进行了比较。