Purpose: In this study we investigate whether a Convolutional Neural Network (CNN) can generate clinically relevant parametric maps from CT perfusion data in a clinical setting of patients with acute ischemic stroke. Methods: Training of the CNN was done on a subset of 100 perfusion data, while 15 samples were used as validation. All the data used for the training/validation of the network and to generate ground truth (GT) maps, using a state-of-the-art deconvolution-algorithm, were previously pre-processed using a standard pipeline. Validation was carried out through manual segmentation of infarct core and penumbra on both CNN-derived maps and GT maps. Concordance among segmented lesions was assessed using the Dice and the Pearson correlation coefficients across lesion volumes. Results: Mean Dice scores from two different raters and the GT maps were > 0.70 (good-matching). Inter-rater concordance was also high and strong correlation was found between lesion volumes of CNN maps and GT maps (0.99, 0.98). Conclusion: Our CNN-based approach generated clinically relevant perfusion maps that are comparable to state-of-the-art perfusion analysis methods based on deconvolution of the data. Moreover, the proposed technique requires less information to estimate the ischemic core and thus might allow the development of novel perfusion protocols with lower radiation dose.
翻译:在这项研究中,我们调查的是:一个革命神经网络(CNN)是否能够在急性心血管中转病人的临床环境里,从CT渗透数据中产生出与临床有关的临床参数图; 方法:对CNN的培训是根据100个脉冲数据的子集进行的,15个样本用作验证; 用于培训/验证网络和绘制地面真象(GT)图的所有数据,使用最先进的分流算法,以前使用标准管道进行预处理; 在CNN的地图和GT的地图(0.99, 0.98)上,通过人工分割内核核心和穿刺布拉进行校验; 利用Dice和皮尔逊相关系数进行分解,用于鉴定; 用于培训/验证网络和制作地面真象(GT)图的所有数据,以前使用最先进的分流-分流-分数(GTGT),以前使用标准管道进行预处理; 在CNNM地图和GT的底核图(0.99, 0.98)上,通过人工截断法进行校核核心核心核心核心核心核心核心和低级分析; 我们的分解法,现在的辐射分析,现在需要以低级分析。