Deep Learning Radiomics Analysis of CT Imaging for Differentiating Between Crohn's Disease and Intestinal Tuberculosis.

Ming Cheng, Hanyue Zhang, Wenpeng Huang, Fei Li, Jianbo Gao
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Abstract

This study aimed to develop and evaluate a CT-based deep learning radiomics model for differentiating between Crohn's disease (CD) and intestinal tuberculosis (ITB). A total of 330 patients with pathologically confirmed as CD or ITB from the First Affiliated Hospital of Zhengzhou University were divided into the validation dataset one (CD: 167; ITB: 57) and validation dataset two (CD: 78; ITB: 28). Based on the validation dataset one, the synthetic minority oversampling technique (SMOTE) was adopted to create balanced dataset as training data for feature selection and model construction. The handcrafted and deep learning (DL) radiomics features were extracted from the arterial and venous phases images, respectively. The interobserver consistency analysis, Spearman's correlation, univariate analysis, and the least absolute shrinkage and selection operator (LASSO) regression were used to select features. Based on extracted multi-phase radiomics features, six logistic regression models were finally constructed. The diagnostic performances of different models were compared using ROC analysis and Delong test. The arterial-venous combined deep learning radiomics model for differentiating between CD and ITB showed a high prediction quality with AUCs of 0.885, 0.877, and 0.800 in SMOTE dataset, validation dataset one, and validation dataset two, respectively. Moreover, the deep learning radiomics model outperformed the handcrafted radiomics model in same phase images. In validation dataset one, the Delong test results indicated that there was a significant difference in the AUC of the arterial models (p = 0.037), while not in venous and arterial-venous combined models (p = 0.398 and p = 0.265) as comparing deep learning radiomics models and handcrafted radiomics models. In our study, the arterial-venous combined model based on deep learning radiomics analysis exhibited good performance in differentiating between CD and ITB.

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用于区分克罗恩病和肠结核的 CT 图像深度学习放射组学分析。
本研究旨在开发和评估一种基于CT的深度学习放射组学模型,用于区分克罗恩病(CD)和肠结核(ITB)。研究将郑州大学第一附属医院的330例病理确诊为克罗恩病或肠结核的患者分为验证数据集一(CD:167例;ITB:57例)和验证数据集二(CD:78例;ITB:28例)。在验证数据集一的基础上,采用合成少数超采样技术(SMOTE)创建均衡数据集,作为特征选择和模型构建的训练数据。分别从动脉期和静脉期图像中提取手工和深度学习(DL)放射组学特征。采用观察者间一致性分析、斯皮尔曼相关性分析、单变量分析和最小绝对收缩和选择算子(LASSO)回归来选择特征。根据提取的多相放射组学特征,最终构建了六个逻辑回归模型。利用 ROC 分析和 Delong 检验比较了不同模型的诊断性能。用于区分 CD 和 ITB 的动静脉联合深度学习放射组学模型显示出较高的预测质量,在 SMOTE 数据集、验证数据集一和验证数据集二中的 AUC 分别为 0.885、0.877 和 0.800。此外,在同相位图像中,深度学习放射组学模型的表现优于手工制作的放射组学模型。在验证数据集一中,Delong 检验结果表明,动脉模型的 AUC 有显著差异(p = 0.037),而静脉模型和动静脉联合模型的 AUC 没有显著差异(p = 0.398 和 p = 0.265)。在我们的研究中,基于深度学习放射组学分析的动静脉联合模型在区分 CD 和 ITB 方面表现出良好的性能。
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