Prediction of severity and treatment outcome for ASD from fMRI.

Juntang Zhuang, Nicha C Dvornek, Xiaoxiao Li, Pamela Ventola, James S Duncan
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引用次数: 5

Abstract

Autism spectrum disorder (ASD) is a complex neurodevelop-mental syndrome. Early diagnosis and precise treatment are essential for ASD patients. Although researchers have built many analytical models, there has been limited progress in accurate predictive models for early diagnosis. In this project, we aim to build an accurate model to predict treatment outcome and ASD severity from early stage functional magnetic resonance imaging (fMRI) scans. The difficulty in building large databases of patients who have received specific treatments and the high dimensionality of medical image analysis problems are challenges in this work. We propose a generic and accurate two-level approach for high-dimensional regression problems in medical image analysis. First, we perform region-level feature selection using a predefined brain parcellation. Based on the assumption that voxels within one region in the brain have similar values, for each region we use the bootstrapped mean of voxels within it as a feature. In this way, the dimension of data is reduced from number of voxels to number of regions. Then we detect predictive regions by various feature selection methods. Second, we extract voxels within selected regions, and perform voxel-level feature selection. To use this model in both linear and non-linear cases with limited training examples, we apply two-level elastic net regression and random forest (RF) models respectively. To validate accuracy and robustness of this approach, we perform experiments on both task-fMRI and resting state fMRI datasets. Furthermore, we visualize the influence of each region, and show that the results match well with other findings.

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功能磁共振成像预测自闭症严重程度及治疗结果。
自闭症谱系障碍(ASD)是一种复杂的神经发育综合征。早期诊断和精确治疗对ASD患者至关重要。尽管研究人员已经建立了许多分析模型,但在早期诊断的准确预测模型方面进展有限。在这个项目中,我们的目标是建立一个准确的模型来预测早期功能磁共振成像(fMRI)扫描的治疗结果和ASD的严重程度。难以建立特定治疗患者的大型数据库以及医学图像分析问题的高维性是这项工作的挑战。针对医学图像分析中的高维回归问题,提出了一种通用且精确的两级回归方法。首先,我们使用预定义的脑分割进行区域级特征选择。基于大脑中一个区域内的体素具有相似值的假设,对于每个区域,我们使用该区域内体素的自举平均值作为特征。这样,数据的维数从体素数降到了区域数。然后通过各种特征选择方法检测预测区域。其次,提取所选区域内的体素,并进行体素级特征选择。为了在训练样本有限的线性和非线性情况下使用该模型,我们分别应用了两级弹性网络回归和随机森林(RF)模型。为了验证该方法的准确性和鲁棒性,我们在任务fMRI和静息状态fMRI数据集上进行了实验。此外,我们可视化了每个区域的影响,并表明结果与其他发现很好地匹配。
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