[卷积神经网络在甲状腺结节细胞学诊断中的应用展望]。

M V Solopov, A S Kavelina, A G Popandopulo, V V Turchin, R V Ishchenko, D A Filimonov
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引用次数: 0

摘要

目的:分析和评估卷积神经网络在甲状腺病理细胞学诊断中的作用,探讨其在提高诊断过程准确性和自动化方面的潜力。方法:使用关键词“甲状腺”、“细胞学”、“细胞病理学”、“细针穿刺活检”、“神经网络”和“卷积神经网络”对Pubmed、谷歌Scholar和科学电子图书馆library.ru的文献进行分析。选择2018 - 2023年发表的12篇文章进行分析。结果:本文讨论了卷积神经网络设计的基本原理和用于评估其质量的指标。对卷积神经网络在甲状腺病理细胞学诊断中的应用进行了分析。根据结果,这些神经网络对病理状况进行分类,具有很高的准确性和灵敏度,可与经验丰富的细胞学家的工作相媲美。乳头状癌的分类准确率可达99.7%。然而,缺乏统一的标准来准备训练神经网络的图像,使用多中心数据的研究数量不足,以及可用的神经网络模型的诊断范围狭窄,仍然限制了这种人工智能系统在细胞学诊断实践中的实施。结论:利用卷积神经网络在甲状腺病理细胞学诊断中的各种选择的现有研究结果有可能成为传统细胞病理学向数字化和计算细胞病理学的重大范式转变的开端,其中主要功能将由人工智能系统执行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

[Prospects for the application of convolutional neural networks in the cytological diagnosis of thyroid nodules].

[Prospects for the application of convolutional neural networks in the cytological diagnosis of thyroid nodules].

Aim:  Analysis and assessment of the role of convolutional neural networks in the cytological diagnosis of the thyroid pathology, exploring their potential for increasing the accuracy and automation of diagnostic processes.

Methods:  Analysis of literature from Pubmed, Google Scholar and the scientific electronic library elibrary.ru using the keywords «thyroid», «cytology», «cytopathology», «fine-needle aspiration biopsy», «neural network» and «convolutional neural network». 12 articles published from 2018 to 2023 were selected for analysis.

Results:  The paper discusses the basic principles of the design of convolutional neural networks and the metrics that are used to assess their quality. An analysis of studies on the use of convolutional neural networks in the cytological diagnosis of the thyroid pathology was performed. According to the results, these neural networks classify pathological conditions with high accuracy and sensitivity, comparable to the work of an experienced cytologist. The accuracy of classification of papillary carcinoma can reach 99.7%. However, the lack of uniform standards for preparing images for training neural networks, the insufficient number of studies using multicenter data, and the narrow diagnostic range of available neural network models still limit the implementation of such AI systems in cytological diagnostic practice.

Conclusion:  The available research results on various options for using convolutional neural networks in the cytological diagnosis of the thyroid pathology have every chance of becoming the initiator of a serious paradigm shift in conventional cytopathology towards digital and computational cytopathology, in which the main functions will be performed by AI systems.

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