Digital colposcopy image analysis techniques requirements and their role in clinical diagnosis: a systematic review.

Expert review of medical devices Pub Date : 2024-10-01 Epub Date: 2024-10-06 DOI:10.1080/17434440.2024.2407549
Parimala Tamang, Mousumi Gupta, Annet Thatal
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Abstract

Introduction: Colposcopy is a medical procedure for detecting cervical lesions. Access to devices required for colposcopy procedures is limited in low- and middle-income countries. However, various existing digital imaging techniques based on artificial intelligence offer solutions to analyze colposcopy images and address accessibility challenges.

Methods: We systematically searched PubMed, National Library of Medicine, and Crossref, which met our inclusion criteria for our study. Various methods and research gaps are addressed, including how variability in images and sample size affect the accuracy of the methods. The quality and risk of each study were assessed following the QUADAS-2 guidelines.

Results: Development of image analysis and compression algorithms, and their efficiency are analyzed. Most of the studied algorithms have attained specificity, sensitivity, and accuracy which range from 86% to 95%, 75%-100%, and 100%, respectively, and these results were validated by the clinician to analyze the images quickly and thus minimize biases among the clinicians.

Conclusion: This systematic review provides a comprehensive study on colposcopy image analysis stages and the advantages of utilizing digital imaging techniques to enhance image analysis and diagnostic procedures and ensure prompt consultations. Furthermore, compression techniques can be applied to send medical images over media for further analysis among periphery hospitals.

数字阴道镜图像分析技术要求及其在临床诊断中的作用:系统综述。
简介阴道镜检查是一种检测宫颈病变的医疗程序。在中低收入国家,获得阴道镜检查所需设备的机会有限。然而,现有的各种基于人工智能的数字成像技术为分析阴道镜检查图像和应对可及性挑战提供了解决方案:我们系统地搜索了符合我们研究纳入标准的 PubMed、美国国家医学图书馆和 Crossref。我们探讨了各种方法和研究空白,包括图像的可变性和样本量如何影响这些方法的准确性。根据 QUADAS-2 指南对每项研究的质量和风险进行了评估:结果:分析了图像分析和压缩算法的发展及其效率。大多数研究算法的特异性、灵敏度和准确性分别达到了86%至95%、75%至100%和100%,这些结果得到了临床医生的验证,可以快速分析图像,从而最大限度地减少临床医生的偏差:本系统综述全面研究了阴道镜检查图像分析阶段,以及利用数字成像技术加强图像分析和诊断程序并确保及时会诊的优势。此外,还可应用压缩技术通过媒体发送医学影像,供周边医院进一步分析。
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