深度学习模型在胸腰椎CT上自动检测新旧椎体骨折。

IF 2.6 3区 医学 Q2 CLINICAL NEUROLOGY European Spine Journal Pub Date : 2025-03-01 Epub Date: 2024-12-21 DOI:10.1007/s00586-024-08623-w
Jianan Chen, Song Liu, Yong Li, Zaoqiang Zhang, Nianchun Liao, Huihong Shi, Wenjun Hu, Youxi Lin, Yanbo Chen, Bo Gao, Dongsheng Huang, Anjing Liang, Wenjie Gao
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引用次数: 0

摘要

目的:开发用于胸腰椎CT压缩骨折椎体自动分割及新老骨折区分的深度学习系统。方法:纳入2020年1月至2023年12月在我院南校区治疗的胸腰椎骨折患者,并于2024年1月至6月进行前瞻性验证,并使用北校区2023年1月至12月的数据进行外部验证。新骨折定义为背痛持续时间少于4周,MRI显示骨髓水肿(BME)。我们使用3D V-Net进行图像分割,使用几种ResNet和DenseNet模型进行分类,并通过ROC曲线、准确性、灵敏度、特异性、精度、F1评分和AUC来评估其性能。选择最优模型构建深度学习系统,并与两名临床医生的诊断效果进行比较。结果:训练数据集包括238个椎体(男/女:55/183;年龄:72.11±11.55),内部验证59例(男/女:13/46;年龄:74.76±8.96),外部验证34岁,前瞻性验证48岁。3D V-Net模型在验证数据集上的DSC为0.90。ResNet18在分类模型中表现最好,验证AUC为0.96,外部数据集AUC为0.89,前瞻性数据集AUC为0.87,在外部和前瞻性验证中均超过了两位临床医生。结论:深度学习模型可以自动准确地对压缩性骨折椎体进行分割,并将其分类为新骨折或旧骨折,从而帮助临床医生做出临床决策。
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Deep learning model for automated detection of fresh and old vertebral fractures on thoracolumbar CT.

Purpose: To develop a deep learning system for automatic segmentation of compression fracture vertebral bodies on thoracolumbar CT and differentiate between fresh and old fractures.

Methods: We included patients with thoracolumbar fractures treated at our Hospital South Campus from January 2020 to December 2023, with prospective validation from January to June 2024, and used data from the North Campus from January to December 2023 for external validation. Fresh fractures were defined as back pain lasting less than 4 weeks, with MRI showing bone marrow edema (BME). We utilized a 3D V-Net for image segmentation and several ResNet and DenseNet models for classification, evaluating performance with ROC curves, accuracy, sensitivity, specificity, precision, F1 score, and AUC. The optimal model was selected to construct deep learning system and its diagnostic efficacy was compared with that of two clinicians.

Results: The training dataset included 238 vertebras (man/women: 55/183; age: 72.11 ± 11.55), with 59 in internal validation (man/women: 13/46; age: 74.76 ± 8.96), 34 in external validation, and 48 in prospective validation. The 3D V-Net model achieved a DSC of 0.90 on the validation dataset. ResNet18 performed best among classification models, with an AUC of 0.96 in validation, 0.89 in external dataset, and 0.87 in prospective validation, surpassing the two clinicians in both external and prospective validations.

Conclusion: The deep learning model can automatically and accurately segment the vertebral bodies with compression fractures and classify them as fresh or old fractures, thereby assisting clinicians in making clinical decisions.

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来源期刊
European Spine Journal
European Spine Journal 医学-临床神经学
CiteScore
4.80
自引率
10.70%
发文量
373
审稿时长
2-4 weeks
期刊介绍: "European Spine Journal" is a publication founded in response to the increasing trend toward specialization in spinal surgery and spinal pathology in general. The Journal is devoted to all spine related disciplines, including functional and surgical anatomy of the spine, biomechanics and pathophysiology, diagnostic procedures, and neurology, surgery and outcomes. The aim of "European Spine Journal" is to support the further development of highly innovative spine treatments including but not restricted to surgery and to provide an integrated and balanced view of diagnostic, research and treatment procedures as well as outcomes that will enhance effective collaboration among specialists worldwide. The “European Spine Journal” also participates in education by means of videos, interactive meetings and the endorsement of educative efforts. Official publication of EUROSPINE, The Spine Society of Europe
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