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Automated diagnoses of attention deficit hyperactive disorder using magnetic resonance imaging

机译:使用磁共振成像自动诊断注意缺陷多动障碍

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摘要

Successful automated diagnoses of attention deficit hyperactive disorder (ADHD) using imaging and functional biomarkers would have fundamental consequences on the public health impact of the disease. In this work, we show results on the predictability of ADHD using imaging biomarkers and discuss the scientific and diagnostic impacts of the research. We created a prediction model using the landmark ADHD 200 data set focusing on resting state functional connectivity (rs-fc) and structural brain imaging. We predicted ADHD status and subtype, obtained by behavioral examination, using imaging data, intelligence quotients and other covariates. The novel contributions of this manuscript include a thorough exploration of prediction and image feature extraction methodology on this form of data, including the use of singular value decompositions (SVDs), CUR decompositions, random forest, gradient boosting, bagging, voxel-based morphometry, and support vector machines as well as important insights into the value, and potentially lack thereof, of imaging biomarkers of disease. The key results include the CUR-based decomposition of the rs-fc-fMRI along with gradient boosting and the prediction algorithm based on a motor network parcellation and random forest algorithm. We conjecture that the CUR decomposition is largely diagnosing common population directions of head motion. Of note, a byproduct of this research is a potential automated method for detecting subtle in-scanner motion. The final prediction algorithm, a weighted combination of several algorithms, had an external test set specificity of 94% with sensitivity of 21%. The most promising imaging biomarker was a correlation graph from a motor network parcellation. In summary, we have undertaken a large-scale statistical exploratory prediction exercise on the unique ADHD 200 data set. The exercise produced several potential leads for future scientific exploration of the neurological basis of ADHD.
机译:使用影像学和功能性生物标志物成功成功地自动诊断注意力缺陷多动障碍(ADHD),将对该疾病的公共健康产生根本性影响。在这项工作中,我们使用成像生物标记物显示了ADHD的可预测性结果,并讨论了这项研究的科学和诊断影响。我们使用具有里程碑意义的ADHD 200数据集创建了一个预测模型,该数据集专注于静止状态功能连接(rs-fc)和结构性脑成像。我们使用影像学数据,智商和其他协变量,通过行为检查来预测多动症的状态和亚型。该手稿的新颖贡献包括对这种数据形式的预测和图像特征提取方法的全面探索,包括使用奇异值分解(SVD),CUR分解,随机森林,梯度提升,装袋,基于体素的形态计量学,以及支持向量机,以及对疾病成像生物标志物的价值及其潜在价值的重要见解。关键结果包括基于CUR的rs-fc-fMRI分解以及梯度提升,以及基于电机网络分割和随机森林算法的预测算法。我们推测,CUR分解主要是在诊断一般的头部运动方向。值得注意的是,这项研究的副产品是一种潜在的自动方法,可以检测出微弱的扫描仪内运动。最终预测算法是几种算法的加权组合,其外部测试集特异性为94%,灵敏度为21%。最有前途的成像生物标志物是来自运动网络分割的相关图。总而言之,我们对独特的ADHD 200数据集进行了大规模的统计探索性预测练习。这项运动为未来多动症的神经学基础的科学探索提供了一些潜在的线索。

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