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基于影像组学的机器学习模型用于预测儿童腹部神经母细胞瘤的手术风险

Radiomic-based machine learning model for predicting the surgical risk in children with abdominal neuroblastoma.

作者信息

Jia Xuan, Liang Jiawei, Ma Xiaohui, Wang Wenqi, Lai Can

机构信息

Department of Radiology, Children's Hospital, Zhejiang University School of Medicine, Hangzhou, China.

出版信息

World J Pediatr Surg. 2023 May 19;6(3):e000531. doi: 10.1136/wjps-2022-000531. eCollection 2023.

Abstract

BACKGROUND

Preoperative imaging assessment of surgical risk is very important for the prognosis of these children. To develop and validate a radiomics-based machine learning model based on the analysis of radiomics features to predict surgical risk in children with abdominal neuroblastoma (NB).

METHODS

A retrospective study was conducted from April 2019 to March 2021 among 74 children with abdominal NB. A total of 1874 radiomic features in MR images were extracted from each patient. Support vector machines (SVMs) were used to establish the model. Eighty percent of the data were used as the training set to optimize the model, and 20% of the data were used to validate its accuracy, sensitivity, specificity and area under the curve (AUC) to verify its effectiveness.

RESULTS

Among the 74 children with abdominal NB, 55 (65%) had surgical risk and 19 (35%) had no surgical risk. A t test and Lasso identified that 28 radiomic features were associated with surgical risk. After developing an SVM-based model using these features, predictions were made about whether children with abdominal NB had surgical risk. The model achieved an AUC of 0.94 (a sensitivity of 0.83 and a specificity of 0.80) with 0.890 accuracy in the training set and an AUC of 0.81 (a sensitivity of 0.73 and a specificity of 0.82) with 0.838 accuracy in the test set.

CONCLUSIONS

Radiomics and machine learning can be used to predict the surgical risk in children with abdominal NB. The model based on 28 radiomic features established by SVM showed good diagnostic efficiency.

摘要

背景

术前手术风险的影像学评估对这些儿童的预后非常重要。基于对影像组学特征的分析,开发并验证一种基于影像组学的机器学习模型,以预测腹部神经母细胞瘤(NB)患儿的手术风险。

方法

2019年4月至2021年3月对74例腹部NB患儿进行回顾性研究。从每位患者的磁共振图像中提取总共1874个影像组学特征。使用支持向量机(SVM)建立模型。80%的数据用作训练集以优化模型,20%的数据用于验证其准确性、敏感性、特异性和曲线下面积(AUC)以验证其有效性。

结果

在74例腹部NB患儿中,55例(65%)有手术风险,19例(35%)无手术风险。t检验和套索法确定28个影像组学特征与手术风险相关。使用这些特征建立基于SVM的模型后,对腹部NB患儿是否有手术风险进行预测。该模型在训练集中的AUC为0.94(敏感性为0.83,特异性为0.80),准确性为0.890;在测试集中的AUC为0.81(敏感性为0.73,特异性为0.82),准确性为0.838。

结论

影像组学和机器学习可用于预测腹部NB患儿的手术风险。基于支持向量机建立的包含28个影像组学特征的模型显示出良好的诊断效率。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/22c1/10201264/45f364985a15/wjps-2022-000531f01.jpg

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