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Resting State Functional Connectivity in Addiction: Drug Abuse and Reward Dysregulation

机译:上瘾的休息状态功能连接:药物滥用和奖励失调

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Introduction: With the advent of advanced neuroimaging, strides have been made towards better understanding the cognitive elements necessary for task processing. Resting state functional connectivity assessments using functional magnetic resonance imaging has allowed patient assessments of underlying neural networks in patient populations with variable constraints. Drug addiction, a chronically relapsing disorder, presents many variable constraints. Cellular and molecular changes in neural reward pathway of drug addicted patient populations have advanced, but circuit-level alterations with reward deficits are yet to be completely understood. Resting state functional connectivity investigations in patient populations that use illicit drugs are seen to have repercussions on neural networks.;Objective: Assess and compare reward-network resting state functional connectivity investigations in patient populations with illicit drug use.;Methods: A meta-analysis of several resting state functional connectivity studies. Patient populations for each study contained an experimental group of drug users with a group of non-drug using controls to assess changes in resting state functional connectivity of the reward network. Studies utilized Diagnostic and Statistical Manuel of Mental disorders, 4th edition, as the basis of diagnosing drug dependence and abuse. A 3 Tesla MRI scanner was utilized to assess the reward pathway of the drug abuse in all experiments with the exception of one group using a 4 Tesla scanner. Band-pass temporal filtering from roughly 0.01 Hz to 0.1 Hz on residual signals was used to obtain low-frequency fluctuations needed for resting state connectivity analyses. Correlation maps were created by computing the correlation coefficients between the blood oxygen level dependent time course from the seed regions and from all other brain voxels. Regions of interest were chosen based on data from databases or previous studies.;Results: Four papers found widespread reductions in the connectivity of multiple reward pathway components. Results of these studies are consistent with perspectives suggesting that transition from drug use to addiction is driven by reduced functioning of reward systems and concurrently increased activation of anti-reward systems. Two studies suggested an increase in reward pathway of drug use, suggesting enhanced connectivity within reward and motivation circuits may be interpreted in the perspective of altered incentive salience for drugs and drug-associated stimuli.;Conclusion: At early stage of experimental data in this field, data interpretation necessitates caution. Small sample sizes, heterogeneous subject groups and variable experimental paradigms may have lead to opposing findings. With certainty, chronic drug use was found to alter reward pathway in patient populations.
机译:简介:随着高级神经影像学的出现,已朝着更好地理解任务处理所必需的认知要素迈进了一步。使用功能性磁共振成像的静止状态功能连接性评估已允许患者评估具有可变约束条件的患者群体中的基础神经网络。吸毒成瘾是一种慢性复发性疾病,存在许多可变的制约因素。药物成瘾患者群体的神经奖赏途径中的细胞和分子变化已经取得进展,但尚未完全理解具有奖赏缺陷的电路水平改变。使用非法药物的患者人群的静息状态功能连通性调查对神经网络有影响;目的:评估和比较使用非法药物的患者人群的奖励网络静息状态功能连通性调查方法:荟萃分析几个休息状态功能连接性研究。每个研究的患者人群都包含一个实验组的吸毒者和一组使用对照来评估奖励网络的静止状态功能连接性变化的非药物。研究利用《精神疾病诊断和统计手册》(第4版)作为诊断药物依赖和滥用的基础。在所有实验中,使用3特斯拉MRI扫描仪评估药物滥用的奖励途径,但一组使用4特斯拉扫描仪除外。对残余信号从大约0.01 Hz到0.1 Hz的带通时间滤波用于获得静态状态连接性分析所需的低频波动。通过计算来自种子区域和所有其他大脑体素的依赖于血氧水平的时间过程之间的相关系数来创建相关图。结果是:基于数据库或以前的研究中的数据选择了感兴趣的区域。结果:四篇论文发现多种奖励途径组成部分的连通性普遍下降。这些研究的结果与以下观点一致,即观点认为,从毒品使用到成瘾的转变是由奖励系统功能的降低和反奖励系统激活的同时增加驱动的。两项研究表明,药物使用的奖励途径增加,这表明可以从改变药物的激励显着性和与药物相关的刺激的角度来解释奖励和激励回路内增强的连通性。结论:在该领域的实验数据的早期,数据解释需要谨慎。小样本量,异类受试者群体和可变的实验范式可能导致相反的发现。可以肯定地发现,长期吸毒会改变患者人群的奖励途径。

著录项

  • 作者

    Resad, Sedat.;

  • 作者单位

    Boston University.;

  • 授予单位 Boston University.;
  • 学科 Neurosciences.
  • 学位 M.S.
  • 年度 2017
  • 页码 68 p.
  • 总页数 68
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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