Internal Validation of Automated Visual Evaluation (AVE) on Smartphone Images for Cervical Cancer Screening in a Prospective Study in Zambia.

Liming Hu, Mulindi H Mwanahamuntu, Vikrant V Sahasrabuddhe, Caroline Barrett, Matthew P Horning, Ishan Shah, Zohreh Laverriere, Dipayan Banik, Ye Ji, Aaron Lunda Shibemba, Samson Chisele, Mukatimui Kalima Munalula, Friday Kaunga, Francis Musonda, Evans Malyangu, Karen Milch Hariharan, Groesbeck P Parham
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Abstract

Objectives: Visual inspection with acetic acid (VIA) is a low-cost approach for cervical cancer screening used in most low- and middle-income countries (LMICs) but, similar to other visual tests like histopathology, is subjective and requires sustained training and quality assurance. We developed, trained, and validated an artificial-intelligence-based "Automated Visual Evaluation" (AVE) tool that can be adapted to run on smartphones to assess smartphone-captured images of the cervix and identify precancerous lesions, helping augment performance of VIA.

Design: Prospective study.

Setting: Eight public health facilities in Zambia.

Participants: 8,204 women aged 25-55.

Interventions: Cervical images captured on commonly used low-cost smartphone models were matched with key clinical information including human immunodeficiency virus (HIV) and human papillomavirus (HPV) status, plus histopathology analysis (where applicable), to develop and train an AVE algorithm and evaluate its performance for use as a primary screen and triage test for women who are HPV positive.

Main outcome measures: Area under the receiver operating curve (AUC); sensitivity; specificity.

Results: As a general population screening for cervical precancerous lesions, AVE identified cases of cervical precancerous and cancerous (CIN2+) lesions with high performance (AUC = 0.91, 95% confidence interval [CI] = 0.89 to 0.93), which translates to a sensitivity of 85% (95% CI = 81% to 90%) and specificity of 86% (95% CI = 84% to 88%) based on maximizing the Youden's index. This represents a considerable improvement over VIA, which a meta-analysis by the World Health Organization (WHO) estimates to have sensitivity of 66% and specificity of 87%. For women living with HIV, the AUC of AVE was 0.91 (95% CI = 0.88 to 0.93), and among those testing positive for high-risk HPV types, the AUC was 0.87 (95% CI = 0.83 to 0.91).

Conclusions: These results demonstrate the feasibility of utilizing AVE on images captured using a commonly available smartphone by screening nurses and support our transition to clinical evaluation of AVE's sensitivity, specificity, feasibility, and acceptability across a broader range of settings. The performance of the algorithm as reported may be inflated, as biopsies were obtained only from study participants with visible aceto-white cervical lesions, which can lead to verification bias; and the images and data sets used for testing of the model, although "unseen" by the algorithm during training, were acquired from the same set of patients and devices, limiting the study to that of an internal validation of the AVE algorithm.

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在赞比亚的一项前瞻性研究中,对用于宫颈癌筛查的智能手机图像进行自动视觉评估 (AVE) 的内部验证。
目的:醋酸目视检查(VIA)是大多数中低收入国家(LMIC)使用的一种低成本宫颈癌筛查方法,但它与组织病理学等其他目视检查类似,都是主观的,需要持续的培训和质量保证。我们开发、训练并验证了一种基于人工智能的 "自动视觉评估"(AVE)工具,该工具可在智能手机上运行,用于评估智能手机捕获的宫颈图像并识别癌前病变,从而帮助提高 VIA 的性能:设计:前瞻性研究:参与者:8204 名 25-55 岁的女性:将常用的低成本智能手机拍摄的宫颈图像与关键临床信息(包括人类免疫缺陷病毒(HIV)和人类乳头瘤病毒(HPV)状态)以及组织病理学分析(如适用)进行比对,以开发和训练 AVE 算法,并评估其作为 HPV 阳性女性初筛和分流检测的性能:主要结果测量指标:受体操作曲线下面积(AUC);灵敏度;特异性:作为宫颈癌前病变的普通人群筛查,AVE能高效识别宫颈癌前病变和癌变(CIN2+)病例(AUC = 0.91,95% 置信区间 [CI] = 0.89 至 0.93),根据尤登指数最大化,灵敏度为 85%(95% CI = 81% 至 90%),特异性为 86%(95% CI = 84% 至 88%)。世界卫生组织(WHO)的一项荟萃分析估计,VIA 的灵敏度为 66%,特异性为 87%。对于感染 HIV 的妇女,AVE 的 AUC 为 0.91(95% CI = 0.88 至 0.93),而在高危 HPV 类型检测呈阳性的妇女中,AUC 为 0.87(95% CI = 0.83 至 0.91):这些结果证明了筛查护士在使用普通智能手机采集的图像上使用 AVE 的可行性,并支持我们在更广泛的环境中对 AVE 的灵敏度、特异性、可行性和可接受性进行临床评估。报告中的算法性能可能被夸大了,因为活检样本仅来自有可见醋白宫颈病变的研究参与者,这可能会导致验证偏差;而且用于测试模型的图像和数据集虽然在训练过程中未被算法 "看到",但却是从同一组患者和设备中获取的,因此该研究仅限于 AVE 算法的内部验证。
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