Wang Xianyang, Lv Linlin, Tang Qingfeng, Wang Guangjun, Shang Enci, Zheng Hang, Zhang Liangliang
School of Computer and Information, Anqing Normal University, Anqing, 246133, People's Republic of China.
School of Computer and Information, Anqing Normal University, Anqing, 246133, People's Republic of China.
Comput Biol Med. 2025 Feb;185:109605. doi: 10.1016/j.compbiomed.2024.109605. Epub 2024 Dec 24.
Radiomic features and deep features are both vitally helpful for the accurate prediction of tumor information in breast ultrasound. However, whether integrating radiomic features and deep features can improve the prediction performance of tumor information is unclear.
A feature fusion method based on radiomic features and revised deep features was proposed to predict tumor information. Radiomic features were extracted from the tumor region on ultrasound images, and the optimal radiomic features were subsequently selected based on Gini score. Revised deep features, which were extracted using the revised CNN models integrating prior information, were combined with radiomic features to build a logistic regression classifier for tumor prediction. The performance was evaluated using area under the receiver operating characteristic (ROC) curve (AUC).
The results showed that the proposed feature fusion method (AUC = 0.9845) obtained better prediction performance than that based on radiomic features (AUC = 0.9796) or deep features (AUC = 0.9342).
Our results demonstrate that the proposed feature fusion framework integrating the radiomic features and revised deep features is an efficient method to improve the prediction performance of tumor information.
影像组学特征和深度特征对于乳腺超声中肿瘤信息的准确预测均至关重要。然而,将影像组学特征和深度特征相结合是否能提高肿瘤信息的预测性能尚不清楚。
提出一种基于影像组学特征和修正深度特征的特征融合方法来预测肿瘤信息。从超声图像上的肿瘤区域提取影像组学特征,随后基于基尼系数选择最优影像组学特征。使用整合了先验信息的修正卷积神经网络(CNN)模型提取的修正深度特征与影像组学特征相结合,构建用于肿瘤预测的逻辑回归分类器。使用受试者操作特征(ROC)曲线下面积(AUC)评估性能。
结果表明,所提出的特征融合方法(AUC = 0.9845)比基于影像组学特征(AUC = 0.9796)或深度特征(AUC = 0.9342)的方法具有更好的预测性能。
我们的结果表明,所提出的整合影像组学特征和修正深度特征的特征融合框架是提高肿瘤信息预测性能的有效方法。