Modeling attention impairments in major depression

Arielle S. Keller, Shi Qiu, Jason Li, L. Williams
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引用次数: 2

Abstract

Attention impairments are a debilitating symptom of Major Depressive Disorder, yet the neurobiological mechanisms underlying this cognitive dysfunction are poorly understood. Moreover, we currently have no method for predicting how individuals’ attention function may change with antidepressant treatment. Our goal was twofold: First, we modeled the effects of both stress and neural factors implicated in attention impairments and their interactions. To do so, we leveraged a large sample of depressed individuals from the international Study to Predict Optimized Treatment for Depression (iSPOT-D) assessed for attention impairments using a behavioral test, for stress using history of early life stress exposure, and for neural function using electroencephalography (EEG). Second, we developed models for predicting whether attention function changes over time as a function of an eight-week course of antidepressant treatment. Our models demonstrate that 1) early life stress interacts with oscillatory EEG signals to produce attention impairment, and 2) gradient boosted trees can be leveraged to predict changes in attention behavior with treatment. Our models provide novel insight into potential biomarkers of attention impairments in depressed individuals as well as how these impairments may change over time.
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重度抑郁症患者注意力障碍的建模
注意力障碍是严重抑郁症的一种衰弱症状,但这种认知功能障碍背后的神经生物学机制尚不清楚。此外,我们目前还没有方法来预测个体的注意力功能如何随着抗抑郁药物治疗而改变。我们的目标有两个:首先,我们模拟了与注意力障碍有关的压力和神经因素的影响及其相互作用。为此,我们从国际抑郁症预测优化治疗研究(iSPOT-D)中提取了大量抑郁症患者样本,使用行为测试评估注意力障碍,使用早期生活压力暴露史评估压力,使用脑电图(EEG)评估神经功能。其次,我们开发了模型来预测注意力功能是否会随着时间的推移而改变,作为抗抑郁药物治疗八周疗程的功能。我们的模型表明,1)早期生活压力与振荡脑电图信号相互作用产生注意力障碍,2)梯度增强树可以用来预测治疗后注意力行为的变化。我们的模型为抑郁症患者注意力障碍的潜在生物标志物以及这些障碍如何随时间变化提供了新的见解。
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