Differentiation Between Fibro-Adipose Vascular Anomaly and Intramuscular Venous Malformation Using Grey-Scale Ultrasound-Based Radiomics and Machine Learning.
Wen-Jia Hu, Gang Wu, Jian-Jun Yuan, Bing-Xin Ma, Yu-Han Liu, Xiao-Nan Guo, Chang-Xian Dong, Hong Kang, Xiao Yang, Jian-Chu Li
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引用次数: 0
Abstract
To establish an ultrasound-based radiomics model to differentiate fibro adipose vascular anomaly (FAVA) and intramuscular venous malformation (VM). The clinical data of 65 patients with VM and 31 patients with FAVA who were treated and pathologically confirmed were retrospectively analyzed. Dimensionality reduction was performed on these features using the least absolute shrinkage and selection operator (LASSO). An ultrasound-based radiomics model was established using support vector machine (SVM) and random forest (RF) models. The diagnostic efficiency of this model was evaluated using the receiver operating characteristic. A total of 851 features were obtained by feature extraction, and 311 features were screened out using the t-test and Mann-Whitney U test. The dimensionality reduction was performed on the remaining features using LASSO. Finally, seven features were included to establish the diagnostic prediction model. In the testing group, the AUC, accuracy and specificity of the SVM model were higher than those of the RF model (0.841 [0.815-0.867] vs. 0.791 [0.759-0.824], 96.6% vs. 93.1%, and 100.0% vs. 90.5%, respectively). However, the sensitivity of the SVM model was lower than that of the RF model (88.9% vs. 100.0%). In this study, a prediction model based on ultrasound radiomics was developed to distinguish FAVA from VM. The study achieved high classification accuracy, sensitivity, and specificity. SVM model is superior to RF model and provides a new perspective and tool for clinical diagnosis.
建立基于超声的放射组学模型鉴别纤维脂肪血管异常(FAVA)和肌内静脉畸形(VM)。回顾性分析经治疗并病理证实的65例VM和31例FAVA的临床资料。使用最小的绝对收缩和选择算子(LASSO)对这些特征进行降维。采用支持向量机(SVM)和随机森林(RF)模型建立了基于超声的放射组学模型。该模型的诊断效率采用接收机工作特性进行评价。通过特征提取共获得851个特征,通过t检验和Mann-Whitney U检验筛选出311个特征。使用LASSO对剩余特征进行降维。最后,纳入7个特征,建立诊断预测模型。在试验组中,SVM模型的AUC、准确度和特异性均高于RF模型(分别为0.841[0.815-0.867]比0.791[0.759-0.824]、96.6%比93.1%、100.0%比90.5%)。但SVM模型的灵敏度低于RF模型(88.9% vs. 100.0%)。在本研究中,建立了基于超声放射组学的预测模型来区分FAVA和VM。本研究具有较高的分类准确性、敏感性和特异性。支持向量机模型优于射频模型,为临床诊断提供了新的视角和工具。
期刊介绍:
Ultrasonic Imaging provides rapid publication for original and exceptional papers concerned with the development and application of ultrasonic-imaging technology. Ultrasonic Imaging publishes articles in the following areas: theoretical and experimental aspects of advanced methods and instrumentation for imaging