National Cancer Center/National Clinical Research Center for Cancer, Cancer Hospital, Chinese Academy of Medical Sciences and Peking Union Medical College, Beijing, China.
Department of Epidemiology and Biostatistics, School of Public Health, Chinese Academy of Medical Sciences and Peking Union Medical College, Beijing, China.
BMC Med. 2020 Jun 3;18(1):169. doi: 10.1186/s12916-020-01613-x.
The World Health Organization (WHO) called for global action towards the elimination of cervical cancer. One of the main strategies is to screen 70% of women at the age between 35 and 45 years and 90% of women managed appropriately by 2030. So far, approximately 85% of cervical cancers occur in low- and middle-income countries (LMICs). The colposcopy-guided biopsy is crucial for detecting cervical intraepithelial neoplasia (CIN) and becomes the main bottleneck limiting screening performance. Unprecedented advances in artificial intelligence (AI) enable the synergy of deep learning and digital colposcopy, which offers opportunities for automatic image-based diagnosis. To this end, we discuss the main challenges of traditional colposcopy and the solutions applying AI-guided digital colposcopy as an auxiliary diagnostic tool in low- and middle- income countries (LMICs).
Existing challenges for the application of colposcopy in LMICs include strong dependence on the subjective experience of operators, substantial inter- and intra-operator variabilities, shortage of experienced colposcopists, consummate colposcopy training courses, and uniform diagnostic standard and strict quality control that are hard to be followed by colposcopists with limited diagnostic ability, resulting in discrepant reporting and documentation of colposcopy impressions. Organized colposcopy training courses should be viewed as an effective way to enhance the diagnostic ability of colposcopists, but implementing these courses in practice may not always be feasible to improve the overall diagnostic performance in a short period of time. Fortunately, AI has the potential to address colposcopic bottleneck, which could assist colposcopists in colposcopy imaging judgment, detection of underlying CINs, and guidance of biopsy sites. The automated workflow of colposcopy examination could create a novel cervical cancer screening model, reduce potentially false negatives and false positives, and improve the accuracy of colposcopy diagnosis and cervical biopsy.
We believe that a practical and accurate AI-guided digital colposcopy has the potential to strengthen the diagnostic ability in guiding cervical biopsy, thereby improves cervical cancer screening performance in LMICs and accelerates the process of global cervical cancer elimination eventually.
世界卫生组织(WHO)呼吁全球采取行动消除宫颈癌。主要策略之一是到 2030 年,对 35 至 45 岁的 70%的女性和 90%的经适当管理的女性进行筛查。迄今为止,约 85%的宫颈癌发生在中低收入国家(LMICs)。阴道镜引导下活检对于检测宫颈上皮内瘤变(CIN)至关重要,并且成为限制筛查性能的主要瓶颈。人工智能(AI)的空前进步使深度学习和数字阴道镜的协同作用成为可能,为自动基于图像的诊断提供了机会。为此,我们讨论了传统阴道镜检查的主要挑战以及在中低收入国家(LMICs)中应用 AI 引导的数字阴道镜作为辅助诊断工具的解决方案。
阴道镜在 LMICs 中的应用面临的现有挑战包括对操作人员主观经验的强烈依赖、操作人员之间和内部的大量变异性、经验丰富的阴道镜医生短缺、完善的阴道镜培训课程以及难以遵循的统一诊断标准和严格的质量控制,导致诊断能力有限的阴道镜医生的报告和记录不一致。有组织的阴道镜培训课程应被视为提高阴道镜医生诊断能力的有效途径,但在实践中实施这些课程可能并不总是可行的,无法在短时间内提高整体诊断性能。幸运的是,AI 有可能解决阴道镜的瓶颈问题,这可以帮助阴道镜医生进行阴道镜成像判断、检测潜在的 CIN 并指导活检部位。阴道镜检查的自动化工作流程可以创建一种新的宫颈癌筛查模型,减少潜在的假阴性和假阳性,并提高阴道镜诊断和宫颈活检的准确性。
我们相信,实用且准确的 AI 引导的数字阴道镜有可能增强指导宫颈活检的诊断能力,从而提高 LMICs 中的宫颈癌筛查性能,并最终加速全球宫颈癌消除进程。