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Application of deep learning as an ancillary diagnostic tool for thyroid FNA cytology

机译:深度学习作为甲状腺FNA细胞学辅助诊断工具的应用

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BackgroundSeveral studies have used artificial intelligence (AI) to analyze cytology images, but AI has yet to be adopted in clinical practice. The objective of this study was to demonstrate the accuracy of AI-based image analysis for thyroid fine-needle aspiration cytology (FNAC) and to propose its application in clinical practice. MethodsIn total, 148,395 microscopic images of FNAC were obtained from 393 thyroid nodules to train and validate the data, and EfficientNetV2-L was used as the image-classification model. The 35 nodules that were classified as atypia of undetermined significance (AUS) were predicted using AI training. ResultsThe precision-recall area under the curve (PR AUC) was >0.95, except for poorly differentiated thyroid carcinoma (PR AUC = 0.49) and medullary thyroid carcinoma (PR AUC = 0.91). Poorly differentiated thyroid carcinoma had the lowest recall (35.4) and was difficult to distinguish from papillary thyroid carcinoma, medullary thyroid carcinoma, and follicular thyroid carcinoma. Follicular adenomas and follicular thyroid carcinomas were distinguished from each other by 86.7 and 93.9 recall, respectively. For two-dimensional mapping of the data using t-distributed stochastic neighbor embedding, the lymphomas, follicular adenomas, and anaplastic thyroid carcinomas were divided into three, two, and two groups, respectively. Analysis of the AUS nodules showed 94.7 sensitivity, 14.4 specificity, 56.3 positive predictive value, and 66.7 negative predictive value. ConclusionsThe authors developed an AI-based approach to analyze thyroid FNAC cases encountered in routine practice. This analysis could be useful for the clinical management of AUS and follicular neoplasm nodules (e.g., an online AI platform for thyroid cytology consultations).
机译:背景一些研究已经使用人工智能(AI)来分析细胞学图像,但人工智能尚未在临床实践中得到应用。本研究旨在证明基于人工智能的图像分析在甲状腺细针穿刺细胞学(FNAC)中的准确性,并提出其在临床实践中的应用。方法从393个甲状腺结节中获取FNAC显微图像148,395张,对数据进行训练和验证,并采用EfficientNetV2-L作为图像分类模型。使用 AI 训练预测了被归类为意义未明异型性 (AUS) 的 35 个结节。结果除低分化甲状腺癌(PR AUC = 0.49)和甲状腺髓样癌(PR AUC = 0.91)外,曲线下精确召回面积(PR AUC)为>0.95。低分化甲状腺癌的召回率最低(35.4%),难以与甲状腺状癌、甲状腺髓样癌和滤泡性甲状腺癌相鉴别。滤泡性腺瘤和滤泡性甲状腺癌的召回率分别为86.7%和93.9%。使用t分布随机邻嵌入对数据进行二维映射,将淋巴瘤、滤泡腺瘤和甲状腺未分化癌分别分为三组、两组和两组。AUS结节分析显示敏感性为94.7%,特异性为14.4%,阳性预测值为56.3%,预测值为66。7% 阴性预测值。结论作者开发了一种基于人工智能的方法来分析常规实践中遇到的甲状腺FNAC病例。该分析可用于 AUS 和滤泡性肿瘤结节的临床管理(例如,用于甲状腺细胞学咨询的在线 AI 平台)。

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