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关于用于检测甲状腺疾病的人工智能技术的系统综述。

A systematic review on artificial intelligence techniques for detecting thyroid diseases.

作者信息

Aversano Lerina, Bernardi Mario Luca, Cimitile Marta, Maiellaro Andrea, Pecori Riccardo

机构信息

Department of Engineering, University of Sannio, Benevento, Italy.

Dept. of Law and Digital Society, UnitelmaSapienza University, Rome, Italy.

出版信息

PeerJ Comput Sci. 2023 Jun 6;9:e1394. doi: 10.7717/peerj-cs.1394. eCollection 2023.

Abstract

The use of artificial intelligence approaches in health-care systems has grown rapidly over the last few years. In this context, early detection of diseases is the most common area of application. In this scenario, thyroid diseases are an example of illnesses that can be effectively faced if discovered quite early. Detecting thyroid diseases is crucial in order to treat patients effectively and promptly, by saving lives and reducing healthcare costs. This work aims at systematically reviewing and analyzing the literature on various artificial intelligence-related techniques applied to the detection and identification of various diseases related to the thyroid gland. The contributions we reviewed are classified according to different viewpoints and taxonomies in order to highlight pros and cons of the most recent research in the field. After a careful selection process, we selected and reviewed 72 papers, analyzing them according to three main research questions, , which diseases of the thyroid gland are detected by different artificial intelligence techniques, which datasets are used to perform the aforementioned detection, and what types of data are used to perform the detection. The review demonstrates that the majority of the considered papers deal with supervised methods to detect hypo- and hyperthyroidism. The average accuracy of detection is high (96.84%), but the usage of private and outdated datasets with a majority of clinical data is very common. Finally, we discuss the outcomes of the systematic review, pointing out advantages, disadvantages, and future developments in the application of artificial intelligence for thyroid diseases detection.

摘要

在过去几年中,人工智能方法在医疗保健系统中的应用迅速增长。在这种背景下,疾病的早期检测是最常见的应用领域。在这种情况下,甲状腺疾病就是一种如果能尽早发现就能有效应对的疾病实例。为了有效且及时地治疗患者,挽救生命并降低医疗成本,检测甲状腺疾病至关重要。这项工作旨在系统地回顾和分析有关应用于检测和识别各种甲状腺相关疾病的各种人工智能相关技术的文献。我们所回顾的文献根据不同观点和分类法进行分类,以突出该领域最新研究的优缺点。经过仔细的筛选过程,我们选择并回顾了72篇论文,根据三个主要研究问题对它们进行分析,即不同人工智能技术检测哪些甲状腺疾病、用于执行上述检测的数据集以及用于执行检测的数据类型。该综述表明,大多数被考虑的论文涉及检测甲状腺功能减退和亢进的监督方法。检测的平均准确率很高(96.84%),但使用包含大量临床数据的私有和过时数据集的情况非常普遍。最后,我们讨论了系统综述的结果,指出了人工智能在甲状腺疾病检测应用中的优点、缺点和未来发展方向。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a021/10280452/8efb5e946cb9/peerj-cs-09-1394-g001.jpg

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