Division of Thoracic and Cardiovascular Surgery, Chiayi Chang Gung Memorial Hospital, Address: No. 6, W. Sec., Jiapu Rd., Puzi City, Chiayi County, 61363, Taiwan (R.O.C.).
College of Photonics, National Yang Ming Chiao Tung University, Tainan City, 71150, Taiwan.
Sci Rep. 2023 Feb 24;13(1):3263. doi: 10.1038/s41598-023-30437-x.
Since venous reflux is difficult to quantify, triggered angiography non-contrast-enhanced (TRANCE)-magnetic resonance imaging (MRI) is a novel tool for objectively evaluating venous diseases in the lower extremities without using contrast media. This study included 26 pre-intervention patients with superficial venous reflux in the lower extremities and 15 healthy volunteers. The quantitative flow (QFlow) analyzed the phase shift information from the pixels within the region of interest from MRI. The fast and simple radial basis function neural network (RBFNN) learning model is constructed by determining the parameters of the radial basis function and the weights of the neural network. The input parameters were the variables generated through QFlow, while the output variables were morbid limbs with venous reflux and normal limb classification. The stroke volume, forward flow volume, absolute stroke volume, mean flux, stroke distance, and mean velocity of greater saphenous veins from QFlow analysis could be used to discriminate the morbid limbs of pre-intervention patients and normal limbs of healthy controls. The neural network successfully classified the morbid and normal limbs with an accuracy of 90.24% in the training stage. The classification of venous reflux using the RBFNN model may assist physicians in clinical settings.
由于静脉反流难以量化,触发式非对比增强磁共振血管造影术(TRANCE-MRI)是一种新颖的工具,可在不使用造影剂的情况下客观评估下肢静脉疾病。本研究纳入了 26 例下肢浅静脉反流的术前患者和 15 名健康志愿者。定量流量(QFlow)分析了来自感兴趣区域内像素的相位偏移信息。快速而简单的径向基函数神经网络(RBFNN)学习模型通过确定径向基函数的参数和神经网络的权重来构建。输入参数是通过 QFlow 生成的变量,而输出变量是静脉反流的患病肢体和正常肢体的分类。QFlow 分析得出的大隐静脉的每搏量、正向流量、绝对每搏量、平均通量、每搏距离和平均速度可用于区分术前患者的患病肢体和健康对照组的正常肢体。神经网络在训练阶段成功地将患病和正常肢体分类,准确率为 90.24%。使用 RBFNN 模型对静脉反流进行分类,可能有助于医生在临床环境中进行诊断。