人工智能可用于平片上肩关节骨关节炎和血管性坏死的识别和分类:对 7,139 张平片的训练研究。

IF 2.5 2区 医学 Q1 ORTHOPEDICS Acta Orthopaedica Pub Date : 2024-06-17 DOI:10.2340/17453674.2024.40905
Martin Magnéli, Michael Axenhus, Johan Fagrell, Petter Ling, Jacob Gislén, Yilmaz Demir, Erica Domeij-Arverud, Kristofer Hallberg, Björn Salomonsson, Max Gordon
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引用次数: 0

摘要

背景和目的:目前还缺乏使用人工智能模型对肱骨头盂肱骨关节炎(GHOA)和血管性坏死(AVN)进行分级的相关知识。我们的目的是分析一个经过训练的深度学习(DL)模型如何在平片上识别和分级 GHOA。我们的第二个目标是训练一个深度学习模型,以识别普通X光片上的AVN并对其进行分级:我们在一家大型三甲医院的肩部放射检查数据集上训练了一个改良的 ResNet 型网络。共包含 7,139 张射线照片。数据集包括肩部的各种投影,网络采用随机梯度下降法进行训练。性能评估指标、接收者工作特征曲线下面积(AUC)、灵敏度和特异性用于评估网络对每种结果的性能:该网络在 GHOA 分类中的 AUC 值为 0.73 至 0.93,在所有 AVN 分类中的 AUC 值均大于 0.90。与明确的 GHOA 病例相比,网络对轻度病例的 AUC 值较低。当合并无分级和轻度分级时,AUC 增加了,这表明很难区分这两个分级:结论:我们发现,可以训练一个 DL 模型来识别平片上的 GHOA 并对其进行分级。此外,我们还发现 DL 模型可以识别普通 X 光片上的 AVN 并对其进行分级。该网络表现良好,尤其是在明确的 GHOA 病例和任何程度的 AVN 病例中。不过,在区分无 GHOA 和轻度 GHOA 等级方面仍存在挑战。
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Artificial intelligence can be used in the identification and classification of shoulder osteoarthritis and avascular necrosis on plain radiographs: a training study of 7,139 radiograph sets.

Background and purpose: Knowledge concerning the use AI models for the classification of glenohumeral osteoarthritis (GHOA) and avascular necrosis (AVN) of the humeral head is lacking. We aimed to analyze how a deep learning (DL) model trained to identify and grade GHOA on plain radiographs performs. Our secondary aim was to train a DL model to identify and grade AVN on plain radiographs.

Patients and methods: A modified ResNet-type network was trained on a dataset of radiographic shoulder examinations from a large tertiary hospital. A total of 7,139 radiographs were included. The dataset included various projections of the shoulder, and the network was trained using stochastic gradient descent. Performance evaluation metrics, area under the receiver operating characteristic curve (AUC), sensitivity, and specificity were used to assess the network's performance for each outcome.

Results: The network demonstrated AUC values ranging from 0.73 to 0.93 for GHOA classification and > 0.90 for all AVN classification classes. The network exhibited lower AUC for mild cases compared with definitive cases of GHOA. When none and mild grades were combined, the AUC increased, suggesting difficulties in distinguishing between these 2 grades.

Conclusion: We found that a DL model can be trained to identify and grade GHOA on plain radiographs. Furthermore, we show that a DL model can identify and grade AVN on plain radiographs. The network performed well, particularly for definitive cases of GHOA and any level of AVN. However, challenges remain in distinguishing between none and mild GHOA grades.

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来源期刊
Acta Orthopaedica
Acta Orthopaedica 医学-整形外科
CiteScore
6.40
自引率
8.10%
发文量
105
审稿时长
4-8 weeks
期刊介绍: Acta Orthopaedica (previously Acta Orthopaedica Scandinavica) presents original articles of basic research interest, as well as clinical studies in the field of orthopedics and related sub disciplines. Ever since the journal was founded in 1930, by a group of Scandinavian orthopedic surgeons, the journal has been published for an international audience. Acta Orthopaedica is owned by the Nordic Orthopaedic Federation and is the official publication of this federation.
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