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The Utility of Independent Component Analysis and Machine Learning in the Identification of the Amyotrophic Lateral Sclerosis Diseased Brain

机译:独立成分分析和机器学习在鉴定肌萎缩性侧索硬化病患脑中的作用

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摘要

Amyotrophic lateral sclerosis (ALS) is a devastating disease with a lifetime risk of ∼1 in 2000. Presently, diagnosis of ALS relies on clinical assessments for upper motor neuron and lower motor neuron deficits in multiple body segments together with a history of progression of symptoms. In addition, it is common to evaluate lower motor neuron pathology in ALS by electromyography. However, upper motor neuron pathology is solely assessed on clinical grounds, thus hindering diagnosis. In the past decade magnetic resonance methods have been shown to be sensitive to the ALS disease process, namely: resting-state connectivity measured with functional MRI, cortical thickness measured by high-resolution imaging, diffusion tensor imaging (DTI) metrics such as fractional anisotropy and radial diffusivity, and more recently magnetic resonance spectroscopy (MRS) measures of gamma-aminobutyric acid concentration. In this present work we utilize independent component analysis to derive brain networks based on resting-state functional magnetic resonance imaging and use those derived networks to build a disease state classifier using machine learning (support-vector machine). We show that it is possible to achieve over 71% accuracy for disease state classification. These results are promising for the development of a clinically relevant disease state classifier. Future inclusion of other MR modalities such as high-resolution structural imaging, DTI and MRS should improve this overall accuracy.
机译:肌萎缩性侧索硬化症(ALS)是一种毁灭性疾病,在2000年的终生风险为〜1。目前,ALS的诊断依赖于对多个身体部位的上运动神经元和下运动神经元缺陷的临床评估以及症状进展的历史。另外,通常通过肌电图评估ALS中的下运动神经元病理。但是,仅根据临床评估上运动神经元病理,因此阻碍了诊断。在过去的十年中,磁共振方法已显示出对ALS疾病过程敏感,即:通过功能性MRI测量的静止状态连通性,通过高分辨率成像测量的皮质厚度,扩散张量成像(DTI)度量(例如分数各向异性)和径向扩散率,以及最近的磁共振波谱(MRS)测量γ-氨基丁酸浓度。在本工作中,我们利用独立成分分析来基于静止状态功能磁共振成像得出脑网络,并使用机器学习(支持向量机)使用这些得出的网络来构建疾病状态分类器。我们表明,疾病状态分类有可能达到71%以上的准确性。这些结果对于开发临床相关疾病状态分类器很有希望。将来包括其他MR模式(例如高分辨率结构成像,DTI和MRS)应会提高总体精度。

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