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Random Forest Based Classification of Alcohol Dependence Patients and Healthy Controls Using Resting State MRI

机译:基于静息状态MRI的酒精依赖患者的随机森林分类和健康对照

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摘要

Currently, classification of alcohol use disorder (AUD) is made on clinical grounds; however, robust evidence shows that chronic alcohol use leads to neurochemical and neurocircuitry adaptations. Identifications of the neuronal networks that are affected by alcohol would provide a more systematic way of diagnosis and provide novel insights into the pathophysiology of AUD. In this study, we identified network-level brain features of AUD, and further quantified resting-state within-network, and between-network connectivity features in a multivariate fashion that are classifying AUD, thus providing additional information about how each network contributes to alcoholism.Resting-state fMRI were collected from 92 individuals (46 controls and 46 AUDs). Probabilistic Independent Component Analysis (PICA) was used to extract brain functional networks and their corresponding time-course for AUD and controls. Both within-network connectivity for each network and between-network connectivity for each pair of networks were used as features. Random forest was applied for pattern classification.The results showed that within-networks features were able to identify AUD and control with 87.0% accuracy and 90.5% precision, respectively. Networks that were most informative included two; Executive Control Networks (ECN), and Reward Network (RN). The between-network features achieved 67.4% accuracy and 70.0% precision. The between-network connectivity between RN-Default Mode Network (DMN) and RN-ECN contribute the most to the prediction.In conclusion, within-network functional connectivity offered maximal information for AUD classification, when compared with between-network connectivity. Further, our results suggest that connectivity within the ECN and RN are informative in classifying AUD. Our findings suggest that machine-learning algorithms provide an alternative technique to quantify large-scale network differences and offer new insights into the identification of potential biomarkers for the clinical diagnosis of AUD.
机译:目前,酒精滥用障碍(AUD)的分类基于临床依据;但是,有力的证据表明,长期饮酒会导致神经化学和神经回路适应。酒精影响的神经元网络的鉴定将提供更系统的诊断方法,并为AUD的病理生理学提供新颖的见解。在这项研究中,我们确定了AUD的网络级大脑特征,并进一步以多变量方式对AUD进行分类的网络内静止状态和网络间连接性特征进行了量化,从而提供了有关每个网络如何助长酗酒的更多信息从92位个体(46位对照者和46澳元)中收集了恢复功能性磁共振成像。概率独立成分分析(PICA)用于提取AUD和对照的脑功能网络及其相应的时程。每个网络的网络内连接性和每对网络的网络间连接性均用作功能。将随机森林应用于模式分类,结果表明网络内特征能够以87.0%的精度和90.5%的精度识别AUD和控制。信息最丰富的网络包括两个;执行控制网络(ECN)和奖励网络(RN)。网络间功能实现了67.4%的精度和70.0%的精度。 RN-默认模式网络(DMN)和RN-ECN之间的网络间连接对预测的贡献最大。总之,与网络间连接相比,网络内功能连接为AUD分类提供了最大的信息。此外,我们的结果表明,ECN和RN之间的连通性有助于对AUD进行分类。我们的发现表明,机器学习算法为量化大规模网络差异提供了另一种技术,并为识别AUD的临床诊断潜在生物标志物提供了新的见识。

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