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Brain Tumor Cell Density Estimation from Multi-modal MR Images Based on a Synthetic Tumor Growth Model

机译:基于合成肿瘤生长模型的多模态MR图像脑肿瘤细胞密度估计

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This paper proposes to employ a detailed tumor growth model to synthesize labelled images which can then be used to train an efficient data-driven machine learning tumor predictor. Our MR image synthesis step generates images with both healthy tissues as well as various tumoral tissue types. Subsequently, a discriminative algorithm based on random regression forests is trained on the simulated ground truth to predict the continuous latent tumor cell density, and the discrete tissue class associated with each voxel. The presented method makes use of a large synthetic dataset of 740 simulated cases for training and evaluation. A quantitative evaluation on 14 real clinical cases diagnosed with low-grade gliomas demonstrates tissue class accuracy comparable with state of the art, with added benefit in terms of computational efficiency and the ability to estimate tumor cell density as a latent variable underlying the multimodal image observations. The idea of synthesizing training data to train data-driven learning algorithms can be extended to other applications where expert annotation is lacking or expensive.
机译:本文提出使用一种详细肿瘤生长模型来合成,然后可以用于训练的高效数据驱动机器学习预测肿瘤标记的图像。我们的MR图像合成步骤与两个健康组织以及各种肿瘤组织类型产生的图像。随后,基于随机森林回归一个判别算法被训练在模拟地面实况预测连续潜肿瘤细胞密度,并与每个体素相关联离散组织类。所提出的方法利用740模拟案例的培训和评估大量合成的数据集。上诊断为低级别胶质瘤14实际临床病例的定量评价表明组织类精度与现有技术的状态相当,增加的益处在计算效率和来估计肿瘤细胞密度作为潜变量的能力,多峰图像观察下层术语。合成训练数据来训练数据驱动的学习算法的思想能够专家注解缺乏或昂贵的地方扩展到其他应用程序。

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