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Magnetic resonance imaging estimation of longitudinal relaxation rate change (ΔR1) in dual gradient echo sequences using an adaptive model

机译:使用自适应模型的磁共振成像估计双梯度回波序列中的纵向弛豫率变化(ΔR 1

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Magnetic Resonance Imaging (MRI) estimation of contrast agent concentration in fast pulse sequences such as Dual Gradient Echo (DGE) imaging is challenging. An Adaptive Neural Network (ANN) was trained with a map of contrast agent concentration estimated by Look-Locker (LL) technique (modified version of inversion recovery imaging) as a gold standard. Using a set of features extracted from DGE MRI data, an ANN was trained to create a voxel based estimator of the time trace of CA concentration. The ANN was trained and tested with the DGE and LL information of six Fisher rats using a K-Fold Cross-Validation (KFCV) method with 60 folds and 10500 samples. The Area Under the Receiver Operator Characteristic Curve (AUROC) for 60 folds was used for training, testing and optimization of the ANN. After training and optimization, the optimal ANN (4∶7∶5∶1) produced maps of CA concentration which were highly correlated (r = 0.89, P < 0.0001) with the CA concentration estimated by the LL technique. The estimation made by the ANN had an excellent overall performance (AUROC = 0.870).
机译:磁共振成像(MRI)估计快速脉冲序列(例如双梯度回波(DGE)成像)中造影剂浓度的工作具有挑战性。自适应神经网络(ANN)用通过Look-Locker(LL)技术(反转恢复成像的改进版本)估算的造影剂浓度图作为金标准进行了训练。使用从DGE MRI数据中提取的一组特征,对ANN进行了训练,以创建基于体素的CA浓度时间轨迹估算器。使用K折交叉验证(KFCV)方法对60只大鼠和10500个样本进行了神经网络训练,并用六只Fisher大鼠的DGE和LL信息对其进行了测试。接收器操作员特征曲线下的区域(AUROC)具有60倍的折叠度用于ANN的训练,测试和优化。经过训练和优化后,最佳ANN(4∶7∶5∶1)生成了CA浓度图,该图与LL技术估算的CA浓度高度相关(r = 0.89,P <0.0001)。 ANN所做的估算具有出色的整体性能(AUROC = 0.870)。

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