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Temporal Feature Extraction from DCE-MRI to Identify Poorly Perfused Subvolumes of Tumors Related to Outcomes of Radiation Therapy in Head and Neck Cancer

机译:从DCE-MRI提取时间特征以识别与头颈癌放射治疗结果相关的肿瘤灌注不良的子体积

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摘要

This study aimed to develop an automated model to extract temporal features from DCE-MRI in head-and-neck (HN) cancers to localize significant tumor subvolumes having low blood volume (LBV) for predicting local and regional failure after chemoradiation therapy. Temporal features were extracted from time-intensity curves to build classification model for differentiating voxels with LBV from those with high BV. Support vector machine (SVM) classification was trained on the extracted features for voxel classification. Subvolumes with LBV were then assembled from the classified voxels with LBV. The model was trained and validated on independent datasets created from 456 873 DCE curves. The resultant subvolumes were compared to ones derived by a 2-step method via pharmacokinetic modeling of blood volume, and evaluated for classification accuracy and volumetric similarity by DSC. The proposed model achieved an average voxel-level classification accuracy and DSC of 82% and 0.72, respectively. Also, the model showed tolerance on different acquisition parameters of DCE-MRI. The model could be directly used for outcome prediction and therapy assessment in radiation therapy of HN cancers, or even supporting boost target definition in adaptive clinical trials with further validation. The model is fully automatable, extendable, and scalable to extract temporal features of DCE-MRI in other tumors.
机译:这项研究旨在开发一种自动化模型,以从头颈(HN)癌症的DCE-MRI中提取时间特征,以定位具有低血容量(LBV)的重要肿瘤亚体积,从而预测化学放疗后的局部和区域衰竭。从时间强度曲线中提取时间特征以建立分类模型,以区分具有LBV的体素和具有高BV的体素。支持向量机(SVM)分类在提取的体素分类特征上进行了训练。然后从带有LBV的分类体素中组装带有LBV的子卷。在从456 873 DCE曲线创建的独立数据集上对模型进行了训练和验证。将所得的子体积与通过血容量的药代动力学建模通过两步法得出的子体积进行比较,并通过DSC评估分类准确性和体积相似性。该模型的平均体素分类精度和DSC分别为82%和0.72。此外,该模型还显示了对DCE-MRI不同采集参数的耐受性。该模型可以直接用于HN癌症放射治疗的结果预测和治疗评估,甚至可以在进一步验证的适应性临床试验中支持增强目标的定义。该模型是完全自动化,可扩展和可扩展的,可以提取其他肿瘤中DCE-MRI的时间特征。

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