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基于影像组学的机器学习方法在鉴别纤维脂肪血管畸形与静脉畸形中的应用

Radiomics-based machine learning approach in differentiating fibro-adipose vascular anomaly from venous malformation.

作者信息

Dong Jian, Gong Yubin, Liu Qiuyu, Wu Yaping, Fu Fangfang, Han Hui, Li Xiaochen, Dong Changxian, Wang Meiyun

机构信息

Department of Medical Imaging, Henan Provincial People's Hospital & People's Hospital of Zhengzhou University, 7 Weiwu Road, Zhengzhou, 450003, Henan, China.

Department of Hemangiomas and Vascular Malformations, Henan Provincial People's Hospital & People's Hospital of Zhengzhou University, Zhengzhou, Henan, China.

出版信息

Pediatr Radiol. 2023 Mar;53(3):404-414. doi: 10.1007/s00247-022-05520-6. Epub 2022 Oct 22.

Abstract

BACKGROUND

As a complex vascular malformation, fibro-adipose vascular anomaly was first proposed in 2014. Its overlap with other vascular malformations regarding imaging and clinical features often leads to misdiagnosis and improper management.

OBJECTIVE

To construct a radiomics-based machine learning model to help radiologists differentiate fibro-adipose vascular anomaly from common venous malformations.

MATERIALS AND METHODS

We retrospectively analyzed 178 children, adolescents and young adults with vascular malformations (41 fibro-adipose vascular anomaly and 137 common vascular malformation cases) who underwent MRI before surgery between May 2012 to January 2021. We extracted radiomics features from T1-weighted images and fat-saturated (FS) T2-weighted images and further selected features through least absolute shrinkage and selection operator (LASSO) and Boruta methods. We established eight weighted logistic regression classification models based on various combinations of feature-selection strategies (LASSO or Boruta) and sequence types (single- or multi-sequence). Finally, we evaluated the performance of each model by the mean area under the receiver operating characteristics curve (ROC-AUC), sensitivity and specificity in 10 runs of repeated k-fold (k = 10) cross-validation.

RESULTS

Two multi-sequence models based on axial FS T2-W, coronal FS T2-W and axial T1-W images showed promising performance. The LASSO-based multi-sequence model achieved an AUC of 97%±3.8, a sensitivity of 94%±12.4 and a specificity of 89%±9.0. The Boruta-based multi-sequence model achieved an AUC of 97%±3.7, a sensitivity of 95%±10.5 and a specificity of 87%±9.0.

CONCLUSION

The radiomics-based machine learning model can provide a promising tool to help distinguish fibro-adipose vascular anomaly from common venous malformations.

摘要

背景

纤维脂肪性血管异常作为一种复杂的血管畸形,于2014年首次被提出。其在影像学和临床特征方面与其他血管畸形存在重叠,常导致误诊和治疗不当。

目的

构建基于影像组学的机器学习模型,以帮助放射科医生鉴别纤维脂肪性血管异常与常见静脉畸形。

材料与方法

我们回顾性分析了2012年5月至2021年1月期间178例患有血管畸形的儿童、青少年和青年(41例纤维脂肪性血管异常和137例常见血管畸形病例),这些患者在手术前均接受了MRI检查。我们从T1加权图像和脂肪饱和(FS)T2加权图像中提取影像组学特征,并通过最小绝对收缩和选择算子(LASSO)及Boruta方法进一步选择特征。我们基于特征选择策略(LASSO或Boruta)和序列类型(单序列或多序列)的不同组合建立了八个加权逻辑回归分类模型。最后,我们通过在10次重复的k折(k = 10)交叉验证中计算受试者操作特征曲线下的平均面积(ROC-AUC)、敏感性和特异性来评估每个模型的性能。

结果

基于轴位FS T2-W、冠状位FS T2-W和轴位T1-W图像的两个多序列模型表现出良好的性能。基于LASSO的多序列模型的AUC为97%±3.8,敏感性为94%±12.4,特异性为89%±9.0。基于Boruta的多序列模型的AUC为97%±3.7,敏感性为95%±10.5,特异性为87%±9.0。

结论

基于影像组学的机器学习模型可为鉴别纤维脂肪性血管异常与常见静脉畸形提供一种有前景的工具。

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