首页> 外文期刊>Frontiers in Neuropharmacology >Whole-Brain Exploratory Analysis of Functional Task Response Following Erythropoietin Treatment in Mood Disorders: A Supervised Machine Learning Approach
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Whole-Brain Exploratory Analysis of Functional Task Response Following Erythropoietin Treatment in Mood Disorders: A Supervised Machine Learning Approach

机译:情绪障碍中促红细胞生成素治疗后功能任务响应的全脑探索性分析:一种受监督的机器学习方法

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A core symptom of mood disorders is cognitive impairment in attention, memory and executive functions. Erythropoietin (EPO) is a candidate treatment for cognitive impairment in unipolar and bipolar disorders (UD and BD) and modulates cognition-related neural activity across a fronto-temporo-parietal network. This report investigates predicting the pharmacological treatment from functional magnetic resonance imaging (fMRI) data using a supervised machine learning approach. A total of 84 patients with UD or BD were included in a randomized double-blind parallel-group study in which they received eight weekly infusions of either EPO (40 000 IU) or saline. Task fMRI data were collected before EPO/saline infusions started (baseline) and six weeks after last infusion (follow-up). During the scanning sessions, participants were given an n-back working memory and a picture encoding task. Linear classification models with different regularization techniques were used to predict treatment status from both cross-sectional data (at follow-up) and longitudinal data (difference between baseline and follow-up). For the n-back and picture encoding tasks, data were available and analysed for 52 (EPO; n = 28, Saline; n = 24) and 59 patients (EPO; n = 31, Saline; n = 28), respectively. We found limited evidence that the classifiers used could predict treatment status at a reliable level of performance (≤ 60 % accuracy) when tested using repeated cross-validation. There was no difference in using cross-sectional versus longitudinal data. Whole-brain multivariate decoding applied to pharmaco-fMRI in small to moderate samples seems to be suboptimal for exploring data driven neuronal treatment mechanisms.
机译:情绪障碍的核心症状是注意力,记忆和执行功能的认知障碍。促红细胞生成素(EPO)是用于治疗单相和双相情感障碍(UD和BD)的认知障碍的候选药物,并且可调节额颞顶网络中与认知有关的神经活动。本报告研究了使用有监督的机器学习方法根据功能性磁共振成像(fMRI)数据预测药物治疗的方法。随机双盲平行分组研究共纳入84例UD或BD患者,他们每周接受八次EPO(40 000 IU)或生理盐水输注。在开始EPO /盐水注入之前(基线)和最后一次注入后6周(随访)收集了功能性fMRI数据。在扫描过程中,给参与者一个n背工作记忆和一个图片编码任务。使用具有不同正则化技术的线性分类模型来根据横截面数据(随访)和纵向数据(基线与随访之间的差异)预测治疗状态。对于n-back和图片编码任务,分别有52位患者(EPO; n = 28,生理盐水; n = 24)和59位患者(EPO; n = 31,Saline; n = 28)可用数据并进行了分析。我们发现有限的证据表明,当使用重复的交叉验证进行测试时,所使用的分类器可以在可靠的性能水平(准确度≤60%)上预测治疗状态。使用横截面数据和纵向数据没有差异。在探索由数据驱动的神经元治疗机制方面,在中小样本中将全脑多变量解码应用于pharmaco-fMRI似乎不是最佳方法。

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