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Personalized Pancreatic Tumor Growth Prediction via Group Learning

机译:通过小组学习进行个性化胰腺肿瘤生长预测

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Tumor growth prediction, a highly challenging task, has long been viewed as a mathematical modeling problem, where the tumor growth pattern is personalized based on imaging and clinical data of a target patient. Though mathematical models yield promising results, their prediction accuracy may be limited by the absence of population trend data and personalized clinical characteristics. In this paper, we propose a statistical group learning approach to predict the tumor growth pattern that incorporates both the population trend and personalized data. In order to discover high-level features from multimodal imaging data, a deep convolutional neural network approach is developed to model the voxel-wise spatio-temporal tumor progression. The deep features are combined with the time intervals and the clinical factors to feed a process of feature selection. Our predictive model is pretrained on a group data set and personalized on the target patient data to estimate the future spatio-temporal progression of the patient's tumor. Multi-modal imaging data at multiple time points are used in the learning, personalization and inference stages. Our method achieves a Dice coefficient of 86.8% ± 3.6% and RVD of 7.9% ± 5.4% on a pancreatic tumor data set, outperforming the DSC of 84.4% ± 4.0% and RVD 13.9% ± 9.8% obtained by a previous state-of-the-art model-based method.
机译:肿瘤生长预测是一项极富挑战性的任务,长期以来一直被视为数学建模问题,其中肿瘤生长模式根据目标患者的影像和临床数据进行个性化设置。尽管数学模型产生了令人鼓舞的结果,但其预测准确性可能会由于缺少人口趋势数据和个性化的临床特征而受到限制。在本文中,我们提出了一种统计小组学习方法,以预测结合人口趋势和个性化数据的肿瘤生长模式。为了从多模态成像数据中发现高级特征,开发了一种深度卷积神经网络方法来对体素时空肿瘤进展进行建模。将深层特征与时间间隔和临床因素相结合,以提供特征选择过程。我们的预测模型在组数据集上进行了预训练,并在目标患者数据上进行了个性化处理,以估计患者肿瘤的未来时空进展。在学习,个性化和推理阶段使用多个时间点的多模式成像数据。我们的方法在胰腺肿瘤数据集上实现的Dice系数为86.8%±3.6%,RVD为7.9%±5.4%,优于之前状态下的DSC为84.4%±4.0%和RVD 13.9%±9.8%最新的基于模型的方法。

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