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使用磁共振成像诊断格雷夫斯眼病的深度学习方法

Deep learning methods for diagnosis of graves' ophthalmopathy using magnetic resonance imaging.

作者信息

Ma Zi-Chang, Lin Jun-Yu, Li Shao-Kang, Liu Hua-Jin, Zhang Ya-Qin

机构信息

Department of Radiology, The Fifth Affiliated Hospital, Sun Yat-Sen University, Zhuhai, China.

Department of Cardiology, The Fifth Affiliated Hospital, Sun Yat-Sen University, Zhuhai, China.

出版信息

Quant Imaging Med Surg. 2024 Jul 1;14(7):5099-5108. doi: 10.21037/qims-24-80. Epub 2024 Jun 11.

Abstract

BACKGROUND

The effect of diagnosing Graves' ophthalmopathy (GO) through traditional measurement and observation in medical imaging is not ideal. This study aimed to develop and validate deep learning (DL) models that could be applied to the diagnosis of GO based on magnetic resonance imaging (MRI) and compare them to traditional measurement and judgment of radiologists.

METHODS

A total of 199 clinically verified consecutive GO patients and 145 normal controls undergoing MRI were retrospectively recruited, of whom 240 were randomly assigned to the training group and 104 to the validation group. Areas of superior, inferior, medial, and lateral rectus muscles and all rectus muscles on coronal planes were calculated respectively. Logistic regression models based on areas of extraocular muscles were built to diagnose GO. The DL models named ResNet101 and Swin Transformer with T1-weighted MRI without contrast as input were used to diagnose GO and the results were compared to the radiologist's diagnosis only relying on MRI T1-weighted scans.

RESULTS

Areas on the coronal plane of each muscle in the GO group were significantly greater than those in the normal group. In the validation group, the areas under the curve (AUCs) of logistic regression models by superior, inferior, medial, and lateral rectus muscles and all muscles were 0.897 [95% confidence interval (CI): 0.833-0.949], 0.705 (95% CI: 0.598-0.804), 0.799 (95% CI: 0.712-0.876), 0.681 (95% CI: 0.567-0.776), and 0.905 (95% CI: 0.843-0.955). ResNet101 and Swin Transformer achieved AUCs of 0.986 (95% CI: 0.977-0.994) and 0.936 (95% CI: 0.912-0.957), respectively. The accuracy, sensitivity, and specificity of ResNet101 were 0.933, 0.979, and 0.869, respectively. The accuracy, sensitivity, and specificity of Swin Transformer were 0.851, 0.817, and 0.898, respectively. The ResNet101 model yielded higher AUC than models of all muscles and radiologists (0.986 0.905, 0.818; P<0.001).

CONCLUSIONS

The DL models based on MRI T1-weighted scans could accurately diagnose GO, and the application of DL systems in MRI may improve radiologists' performance in diagnosing GO and early detection.

摘要

背景

通过传统的医学影像测量和观察来诊断格雷夫斯眼病(GO)的效果并不理想。本研究旨在开发并验证基于磁共振成像(MRI)的深度学习(DL)模型,以用于GO的诊断,并将其与放射科医生的传统测量和判断方法进行比较。

方法

回顾性招募了199例经临床验证的连续GO患者和145例接受MRI检查的正常对照者,其中240例被随机分配到训练组,104例被分配到验证组。分别计算冠状面上直肌上、下、内、外侧以及所有直肌的面积。构建基于眼外肌面积的逻辑回归模型来诊断GO。使用以无对比剂的T1加权MRI作为输入的名为ResNet101和Swin Transformer的DL模型来诊断GO,并将结果与仅依靠MRI T1加权扫描的放射科医生的诊断结果进行比较。

结果

GO组各肌肉冠状面面积显著大于正常组。在验证组中,上、下、内、外侧直肌以及所有肌肉的逻辑回归模型的曲线下面积(AUC)分别为0.897 [95%置信区间(CI):0.833 - 0.949]、0.705(95% CI:0.598 - 0.804)、0.799(95% CI:0.712 - 0.876)、0.681(95% CI:0.567 - 0.776)和0.905(95% CI:0.843 - 0.955)。ResNet101和Swin Transformer的AUC分别为0.986(95% CI:0.977 - 0.994)和0.936(95% CI:0.912 - 0.957)。ResNet101的准确率、敏感性和特异性分别为0.933、0.979和0.869。Swin Transformer的准确率、敏感性和特异性分别为0.851、0.817和0.898。ResNet101模型的AUC高于所有肌肉模型和放射科医生的模型(0.986对0.905、0.818;P<0.001)。

结论

基于MRI T1加权扫描的DL模型能够准确诊断GO,DL系统在MRI中的应用可能会提高放射科医生诊断GO和早期检测的性能。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d3fa/11250345/51c23c83e309/qims-14-07-5099-f1.jpg

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