Artificial intelligence in knee osteoarthritis: A comprehensive review for 2022.

Osteoarthritis imaging Pub Date : 2023-09-01 Epub Date: 2023-07-30 DOI:10.1016/j.ostima.2023.100161
Ozkan Cigdem, Cem M Deniz
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引用次数: 0

Abstract

Objective: The aim of this literature review is to yield a comprehensive and exhaustive overview of the existing evidence and up-to-date applications of artificial intelligence for knee osteoarthritis.

Methods: A literature review was performed by using PubMed, Google Scholar, and IEEE databases for articles published in peer-reviewed journals in 2022. The articles focusing on the use of artificial intelligence in diagnosis and prognosis of knee osteoarthritis and accelerating the image acquisition were selected. For each selected study, the code availability, considered number of patients and knees, imaging type, covariates, grading type of osteoarthritis, models, validation approaches, objectives, and results were reviewed.

Results: 395 articles were screened, and 35 of them were reviewed. Eight articles were based on diagnosis, six on prognosis prediction, three on classification, three on accelerated image acquisition, and 15 on segmentation of knee osteoarthritis. 57% of the articles used MRI, 26% radiography, 6% MRI together with radiography, 6% ultrasonography, and 6% only clinical data. 23% of the articles made the computer codes available for their study, and 26% used clinical data. External validation and nested cross-validation were used in 17% and 14% of articles, respectively.

Conclusions: The use of artificial intelligence provided a promising potential to enhance the detection and management of knee osteoarthritis. Translating the developed models into clinics is still in the early stages of development. The translation of artificial intelligence models is expected to be further examined in prospective studies to support clinicians in improving routine healthcare practice.

人工智能在膝关节骨关节炎中的应用综述
目的本文献综述旨在全面、详尽地概述膝骨关节炎人工智能的现有证据和最新应用:通过使用 PubMed、Google Scholar 和 IEEE 数据库,对 2022 年发表在同行评审期刊上的文章进行了文献综述。所选文章侧重于人工智能在膝关节骨性关节炎诊断和预后中的应用以及加速图像采集。对每篇入选研究的代码可用性、考虑的患者和膝关节数量、成像类型、协变量、骨关节炎分级类型、模型、验证方法、目标和结果进行了审查:共筛选出 395 篇文章,对其中 35 篇进行了审查。8篇文章基于诊断,6篇文章基于预后预测,3篇文章基于分类,3篇文章基于加速图像采集,15篇文章基于膝骨关节炎的分割。57%的文章使用了核磁共振成像技术,26%使用了放射摄影技术,6%使用了核磁共振成像技术和放射摄影技术,6%使用了超声波技术,6%仅使用了临床数据。23%的文章在研究中使用了计算机代码,26%使用了临床数据。分别有17%和14%的文章使用了外部验证和嵌套交叉验证:人工智能的使用为加强膝关节骨性关节炎的检测和管理提供了广阔的前景。将开发的模型应用于临床仍处于早期开发阶段。人工智能模型的转化有望在前瞻性研究中得到进一步检验,以支持临床医生改善常规医疗实践。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Osteoarthritis imaging
Osteoarthritis imaging Radiology and Imaging
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