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Joint Prediction and Classification of Brain Image Evolution Trajectories from Baseline Brain Image with Application to Early Dementia

机译:基于基线脑图像的脑图像进化轨迹的联合预测和分类及其在早期痴呆中的应用

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Despite the large body of existing neuroimaging-based studies on brain dementia, in particular mild cognitive impairment (MCI), modeling and predicting the early dynamics of dementia onset and development in healthy brains is somewhat overlooked in the literature. The majority of computer-aided diagnosis tools developed for classifying healthy and demented brains mainly rely on either using single time-point or longitudinal neuroimaging data. Longitudinal brain imaging data offer a larger time window to better capture subtle brain changes in early MCI development, and its utilization has been shown to improve classification and prediction results. However, typical longitudinal studies are challenged by a limited number of acquisition timepoints and the absence of inter-subject matching between timepoints. To address this limitation, we propose a novel framework that learns how to predict the developmental trajectory of a brain image from a single acquisition timepoint (i.e., baseline), while classifying the predicted trajectory as 'healthy' or 'demented'. To do so, we first rigidly align all training images, then extract 'landmark patches' from training images. Next, to predict the patch-wise trajectory evolution from baseline patch, we propose two novel strategies. The first strategy learns in a supervised manner to select a few training atlas patches that best boost the classification accuracy of the target testing patch. The second strategy learns in an unsupervised manner to select the set of most similar training atlas patches to the target testing patch using multi-kernel patch manifold learning. Finally, we train a linear classifier for each predicted patch trajectory. To identify the final label of the target subject, we use majority voting to aggregate the labels assigned by our model to all landmark patches' trajectories. Our image prediction model boosted the classification performance by 14% point without further leveraging any enhancing methods such as feature selection.
机译:尽管现有大量关于神经痴呆的基于神经影像学的研究,尤其是轻度认知障碍(MCI),但是在文献中却忽略了建模和预测健康大脑中痴呆发作和发展的早期动态。为分类健康和痴呆的大脑而开发的大多数计算机辅助诊断工具主要依赖于使用单个时间点或纵向神经影像数据。纵向脑成像数据提供了更大的时间窗口,可以更好地捕获早期MCI发展中的细微脑部变化,并且已证明其利用可以改善分类和预测结果。然而,典型的纵向研究受到有限数量的采集时间点和时间点之间缺乏受试者间匹配的挑战。为了解决这一局限性,我们提出了一个新颖的框架,该框架学习如何从单个采集时间点(即基线)预测大脑图像的发展轨迹,同时将预测的轨迹分类为``健康''或``痴呆''。为此,我们首先严格对齐所有训练图像,然后从训练图像中提取“地标补丁”。接下来,为了从基线斑块预测斑块方向的轨迹演变,我们提出了两种新颖的策略。第一种策略是在监督下学习,以选择一些训练图集补丁,以最好地提高目标测试补丁的分类准确性。第二种策略以无监督的方式学习,以使用多核补丁流形学习选择与目标测试补丁最相似的训练图集补丁。最后,我们为每个预测的斑块轨迹训练线性分类器。为了确定目标对象的最终标签,我们使用多数投票将我们的模型分配给所有地标斑块轨迹的标签进行汇总。我们的图像预测模型将分类性能提高了14%,而无需进一步利用诸如特征选择之类的任何增强方法。

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