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基于常规 MRI 的深度学习算法鉴别结核性和布鲁菌性脊柱炎。

Differentiation of tuberculous and brucellar spondylitis using conventional MRI-based deep learning algorithms.

机构信息

Department of Radiology, Shandong Provincial Qianfoshan Hospital, Shandong University, Jinan, Shandong, China.

Department of Radiology, Shandong Public Health Clinical Center, Shandong University, Jinan, Shandong, China.

出版信息

Eur J Radiol. 2024 Sep;178:111655. doi: 10.1016/j.ejrad.2024.111655. Epub 2024 Jul 27.

DOI:10.1016/j.ejrad.2024.111655
PMID:39079324
Abstract

PURPOSE

To investigate the feasibility of deep learning (DL) based on conventional MRI to differentiate tuberculous spondylitis (TS) from brucellar spondylitis (BS).

METHODS

A total of 383 patients with TS (n = 182) or BS (n = 201) were enrolled from April 2013 to May 2023 and randomly divided into training (n = 307) and validation (n = 76) sets. Sagittal T1WI, T2WI, and fat-suppressed (FS) T2WI images were used to construct single-sequence DL models and combined models based on VGG19, VGG16, ResNet18, and DenseNet121 network. The area under the receiver operating characteristic curve (AUC) was used to assess the classification performance. The AUC of DL models was compared with that of two radiologists with different levels of experience.

RESULTS

The AUCs based on VGG19, ResNet18, VGG16, and DenseNet121 ranged from 0.885 to 0.973, 0.873 to 0.944, 0.882 to 0.929, and 0.801 to 0.933, respectively, and VGG19 models performed better. The diagnostic efficiency of combined models outperformed single-sequence DL models. The combined model of T1WI, T2WI, and FS T2WI based on VGG19 achieved optimal performance, with an AUC of 0.973. In addition, the performance of all combined models based on T1WI, T2WI, and FS T2WI was better than that of two radiologists (P<0.05).

CONCLUSION

The DL models have potential guiding value in the diagnosis of TS and BS based on conventional MRI and provide a certain reference for clinical work.

摘要

目的

探讨基于常规 MRI 的深度学习(DL)区分结核性脊柱炎(TS)与布鲁氏菌性脊柱炎(BS)的可行性。

方法

2013 年 4 月至 2023 年 5 月,共纳入 383 例 TS(n=182)或 BS(n=201)患者,将其随机分为训练集(n=307)和验证集(n=76)。使用矢状位 T1WI、T2WI 和脂肪抑制(FS)T2WI 图像构建基于 VGG19、VGG16、ResNet18 和 DenseNet121 网络的单序列 DL 模型和组合模型。采用受试者工作特征曲线下面积(AUC)评估分类性能。比较了 DL 模型的 AUC 与两位不同经验水平放射科医生的 AUC。

结果

基于 VGG19、ResNet18、VGG16 和 DenseNet121 的 AUC 范围分别为 0.8850.973、0.8730.944、0.8820.929 和 0.8010.933,VGG19 模型表现更好。组合模型的诊断效率优于单序列 DL 模型。基于 VGG19 的 T1WI、T2WI 和 FS T2WI 组合模型表现最佳,AUC 为 0.973。此外,基于 T1WI、T2WI 和 FS T2WI 的所有组合模型的性能均优于两位放射科医生(P<0.05)。

结论

基于常规 MRI 的 DL 模型对 TS 和 BS 的诊断具有潜在的指导价值,为临床工作提供了一定的参考。

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