Department of Pathology, Obstetrics and Gynecology Hospital, Fudan University, Shanghai, China.
Ping An Healthcare Technology, Shanghai, China.
Cancer Cytopathol. 2022 Jun;130(6):407-414. doi: 10.1002/cncy.22560. Epub 2022 Mar 15.
Atypical squamous cells of undetermined significance (ASC-US) is the most frequent but ambiguous abnormal Papanicolaou (Pap) interpretation and is generally triaged by high-risk human papillomavirus (hrHPV) testing before colposcopy. This study aimed to evaluate the performance of an artificial intelligence (AI)-based triage system to predict ASC-US cytology for cervical intraepithelial neoplasia 2+ lesions (CIN2+).
More than 60,000 images were used to train this proposed deep learning-based ASC-US triage system, where both cell-level and slide-level information were extracted. In total, 1967 consecutive ASC-US Paps from 2017 to 2019 were included in this study. Histological follow-ups were retrieved to compare the triage performance between the AI system and hrHPV in 622 patients with simultaneous hrHPV testing.
In the triage of women with ASC-US cytology for CIN2+, our system attained equivalent sensitivity (92.9%; 95% confidence interval [CI], 75.0%-98.8%) and higher specificity (49.7%; 95% CI, 45.6%-53.8%) than hrHPV testing (sensitivity: 89.3%; 95% CI, 70.6%-97.2%; specificity: 34.3%; 95% CI, 30.6%-38.3%) without requiring additional patient examination or testing. Additionally, the independence of this system from hrHPV testing (κ = 0.138) indicated that these 2 different methods could be used to triage ASC-US as an alternative way.
This de novo deep learning-based system can triage ASC-US cytology for CIN2+ with a performance superior to hrHPV testing and without incurring additional expenses.
非典型鳞状细胞意义不明确(ASC-US)是最常见但也最模糊的巴氏涂片异常解读,通常在阴道镜检查前通过高危型人乳头瘤病毒(hrHPV)检测进行分流。本研究旨在评估一种基于人工智能(AI)的分流系统预测 ASC-US 细胞学为宫颈上皮内瘤变 2+(CIN2+)病变的性能。
该深度学习为基础的 ASC-US 分流系统使用了超过 60000 张图像进行训练,其中提取了细胞级和切片级信息。本研究共纳入了 2017 年至 2019 年的 1967 例连续的 ASC-US 巴氏涂片,其中 622 例患者同时进行了 hrHPV 检测,获取了组织学随访结果,以比较 AI 系统和 hrHPV 在分流 ASC-US 细胞学为 CIN2+中的表现。
在对 ASC-US 细胞学为 CIN2+的女性进行分流中,我们的系统达到了与 hrHPV 检测相当的敏感性(92.9%;95%置信区间 [CI],75.0%-98.8%)和更高的特异性(49.7%;95% CI,45.6%-53.8%),优于 hrHPV 检测(敏感性:89.3%;95% CI,70.6%-97.2%;特异性:34.3%;95% CI,30.6%-38.3%),而无需进行额外的患者检查或检测。此外,该系统与 hrHPV 检测的独立性(κ=0.138)表明,这两种不同的方法可以作为替代方法用于 ASC-US 分流。
这个全新的基于深度学习的系统可以对 ASC-US 细胞学为 CIN2+进行分流,其性能优于 hrHPV 检测,且不会增加额外的费用。