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用于甲状腺细胞学病变研究的径向基函数人工神经网络

Radial Basis Function Artificial Neural Network for the Investigation of Thyroid Cytological Lesions.

作者信息

Fragopoulos Christos, Pouliakis Abraham, Meristoudis Christos, Mastorakis Emmanouil, Margari Niki, Chroniaris Nicolaos, Koufopoulos Nektarios, Delides Alexander G, Machairas Nicolaos, Ntomi Vasileia, Nastos Konstantinos, Panayiotides Ioannis G, Pikoulis Emmanouil, Misiakos Evangelos P

机构信息

Department of Cytopathology, Kavala General Hospital, Region of Eastern Macedonia and Thrace, Greece.

2nd Department of Pathology, National and Kapodistrian University of Athens, "Attikon" University Hospital, Athens, Greece.

出版信息

J Thyroid Res. 2020 Nov 24;2020:5464787. doi: 10.1155/2020/5464787. eCollection 2020.

Abstract

OBJECTIVE

This study investigates the potential of an artificial intelligence (AI) methodology, the radial basis function (RBF) artificial neural network (ANN), in the evaluation of thyroid lesions. . The study was performed on 447 patients who had both cytological and histological evaluation in agreement. Cytological specimens were prepared using liquid-based cytology, and the histological result was based on subsequent surgical samples. Each specimen was digitized; on these images, nuclear morphology features were measured by the use of an image analysis system. The extracted measurements (41,324 nuclei) were separated into two sets: the training set that was used to create the RBF ANN and the test set that was used to evaluate the RBF performance. The system aimed to predict the histological status as benign or malignant.

RESULTS

The RBF ANN obtained in the training set has sensitivity 82.5%, specificity 94.6%, and overall accuracy 90.3%, while in the test set, these indices were 81.4%, 90.0%, and 86.9%, respectively. Algorithm was used to classify patients on the basis of the RBF ANN, the overall sensitivity was 95.0%, the specificity was 95.5%, and no statistically significant difference was observed.

CONCLUSION

AI techniques and especially ANNs, only in the recent years, have been studied extensively. The proposed approach is promising to avoid misdiagnoses and assists the everyday practice of the cytopathology. The major drawback in this approach is the automation of a procedure to accurately detect and measure cell nuclei from the digitized images.

摘要

目的

本研究探讨一种人工智能(AI)方法——径向基函数(RBF)人工神经网络(ANN)在甲状腺病变评估中的潜力。该研究对447例细胞学和组织学评估结果一致的患者进行。采用液基细胞学方法制备细胞学标本,组织学结果基于后续手术样本。每个标本都进行了数字化处理;在这些图像上,使用图像分析系统测量核形态特征。提取的测量值(41324个细胞核)被分为两组:用于创建RBF ANN的训练集和用于评估RBF性能的测试集。该系统旨在预测组织学状态为良性或恶性。

结果

在训练集中获得的RBF ANN的灵敏度为82.5%,特异性为94.6%,总体准确率为90.3%,而在测试集中这些指标分别为81.4%、90.0%和86.9%。使用算法根据RBF ANN对患者进行分类,总体灵敏度为95.0%,特异性为95.5%,未观察到统计学显著差异。

结论

人工智能技术,尤其是人工神经网络,直到最近几年才得到广泛研究。所提出的方法有望避免误诊并辅助细胞病理学的日常实践。这种方法的主要缺点是从数字化图像中准确检测和测量细胞核的程序自动化。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d200/7707952/5c0671d7873c/JTR2020-5464787.001.jpg

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