基于磁共振成像的卷积神经网络对早期股骨头坏死的辅助诊断与分类。

IF 1.1 4区 医学 Q3 ORTHOPEDICS Indian Journal of Orthopaedics Pub Date : 2024-12-04 eCollection Date: 2025-01-01 DOI:10.1007/s43465-024-01272-7
Chen Liang, Yingkai Ma, Xiang Li, Yong Qin, Minglei Li, Chuanxin Tong, Xiangning Xu, Jinping Yu, Ren Wang, Songcen Lv, Hao Luo
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引用次数: 0

摘要

导读:Steinberg分类系统通常被骨科医生用于对股骨头坏死(ONFH)患者的严重程度进行分级,它根据受影响股骨头的面积分为轻度、中度和重度。然而,临床医生大多通过视觉评估来评分,或者根本不评分。为了准确区分早期ONFH的轻、中、重度,我们提出了一种基于患者髋关节磁共振成像(MRI)的卷积神经网络(CNN)来准确分级和辅助ONFH的诊断。材料与方法:收集诊断为早期ONFH患者的T1-MRI图像。三位骨科医生选择了261张包含股骨头图像的切片,并将每个病例标记为股骨头坏死分类。我们的CNN模型在所有数据中学习、训练和分割股骨头坏死区域。结果:本文提出的CNN股骨头分割准确率为97.73%,灵敏度为91.17%,特异性为99.40%,阳性预测值为96.98%。整体框架的诊断准确率为90.80%。结论:我们提出的CNN模型可以在MRI上有效分割股骨头所在区域,并能识别早期股骨头坏死的区域,以辅助诊断。
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Aiding Diagnosis and Classifying of Early Stage Osteonecrosis of the Femoral Head with Convolutional Neural Network Based on Magnetic Resonance Imaging.

Introduction: The Steinberg classification system is commonly used by orthopedic surgeons to stage the severity of patients with osteonecrosis of the femoral head (ONFH), and it includes mild, moderate, and severe grading of each stage based on the area of the femoral head affected. However, clinicians mostly grade approximately by visual assessment or not at all. To accurately distinguish the mild, moderate, or severe grade of early stage ONFH, we propose a convolutional neural network (CNN) based on magnetic resonance imaging (MRI) of the hip joint of patients to accurately grade and aid diagnosis of ONFH.

Materials and methods: T1-MRI images of patients diagnosed with early stage ONFH were collected. Three orthopedic surgeons selected 261 slices containing images of the femoral head and labeled each case with the femoral head necrosis classification. Our CNN model learned, trained, and segmented the regions of femoral head necrosis in all the data.

Results: The accuracy of the proposed CNN for femoral head segmentation is 97.73%, sensitivity is 91.17%, specificity is 99.40%, and positive predictive value is 96.98%. The diagnostic accuracy of the overall framework is 90.80%.

Conclusions: Our proposed CNN model can effectively segment the region where the femoral head is in MRI and can identify the region of early stage femoral head necrosis for the purpose of aiding diagnosis.

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来源期刊
CiteScore
1.80
自引率
0.00%
发文量
185
审稿时长
9 months
期刊介绍: IJO welcomes articles that contribute to Orthopaedic knowledge from India and overseas. We publish articles dealing with clinical orthopaedics and basic research in orthopaedic surgery. Articles are accepted only for exclusive publication in the Indian Journal of Orthopaedics. Previously published articles, articles which are in peer-reviewed electronic publications in other journals, are not accepted by the Journal. Published articles and illustrations become the property of the Journal. The copyright remains with the journal. Studies must be carried out in accordance with World Medical Association Declaration of Helsinki.
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