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Pattern Recognition Pipeline for Neuroimaging Data

机译:神经影像数据的模式识别管道

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摘要

As machine learning continues to gain momentum in the neuroscience community, we witness the emergence of novel applications such as diagnostics, characterization, and treatment outcome prediction for psychiatric and neurological disorders, for instance, epilepsy and depression. Systematic research into these mental disorders increasingly involves drawing clinical conclusions on the basis of data-driven approaches; to this end, structural and functional neuroimaging serve as key source modalities. Identification of informative neuroimaging markers requires establishing a comprehensive preparation pipeline for data which may be severely corrupted by artifactual signal fluctuations. We propose a new unified data analysis pipeline for neuroimaging-based diagnostic classification problems using various different feature extraction techniques, Machine Learning algorithms and processing toolboxes for brain imaging. We illustrate the approach by discovering potential candidates for new biomarkers for diagnostics of epilepsy and depression presence in simple and complex cases based on clinical and MRI data for patients and healthy volunteers. We also demonstrate that the proposed pipeline in many classification tasks provides better performance than conventional ones.
机译:随着机器学习在神经科学界继续获得发展势头,我们见证了诸如精神病和神经病(例如癫痫和抑郁症)的诊断,表征和治疗结果预测等新颖应用的出现。对这些精神障碍的系统研究越来越多地涉及基于数据驱动方法的临床结论。为此,结构和功能性神经成像是关键的来源方式。鉴定信息丰富的神经影像标记物需要建立一个全面的准备流程,以处理可能因人为信号波动而严重破坏的数据。我们使用各种不同的特征提取技术,机器学习算法和用于大脑成像的处理工具箱,为基于神经影像的诊断分类问题提出了一条新的统一数据分析管道。我们通过为患者和健康志愿者的临床和MRI数据发现简单和复杂病例中的癫痫和抑郁症诊断新生物标记物的潜在候选物,来说明该方法。我们还证明了在许多分类任务中建议的管道提供了比常规管道更好的性能。

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