Departments of Psychiatry and Neuroscience, Icahn School of Medicine at Mount Sinai, New York, NY, United States; Department of Psychiatry, Stony Brook University, Stony Brook, NY, United States.
Laureate Institute for Brain Research, Tulsa, OK, United States; Department of Psychiatry, UC San Diego, La Jolla, CA, United States.
Prog Neuropsychopharmacol Biol Psychiatry. 2018 Jan 3;80(Pt B):143-154. doi: 10.1016/j.pnpbp.2017.03.003. Epub 2017 Mar 18.
The ability to predict relapse is a major goal of drug addiction research. Clinical and diagnostic measures are useful in this regard, but these measures do not fully and consistently identify who will relapse and who will remain abstinent. Neuroimaging approaches have the potential to complement these standard clinical measures to optimize relapse prediction. The goal of this review was to survey the existing drug addiction literature that either used a baseline functional or structural neuroimaging phenotype to longitudinally predict a clinical outcome, or that examined test-retest of a neuroimaging phenotype during a course of abstinence or treatment. Results broadly suggested that, relative to individuals who sustained abstinence, individuals who relapsed had (1) enhanced activation to drug-related cues and rewards, but reduced activation to non-drug-related cues and rewards, in multiple corticolimbic and corticostriatal brain regions; (2) weakened functional connectivity of these same corticolimbic and corticostriatal regions; and (3) reduced gray and white matter volume and connectivity in prefrontal regions. Thus, beyond these regions showing baseline group differences, reviewed evidence indicates that function and structure of these regions can prospectively predict - and normalization of these regions can longitudinally track - important clinical outcomes including relapse and adherence to treatment. Future clinical studies can leverage this information to develop novel treatment strategies, and to tailor scarce therapeutic resources toward individuals most susceptible to relapse.
预测复发的能力是药物成瘾研究的主要目标。临床和诊断措施在这方面很有用,但这些措施并不能完全一致地识别出谁会复发,谁会保持戒断。神经影像学方法有可能补充这些标准的临床措施,以优化复发预测。本综述的目的是调查现有的药物成瘾文献,这些文献要么使用基线功能或结构神经影像学表型来纵向预测临床结果,要么检查在戒断或治疗过程中神经影像学表型的测试-重测。结果广泛表明,与持续戒断的个体相比,复发的个体在多个皮质边缘和皮质纹状体脑区中表现出:(1)对药物相关线索和奖励的激活增强,但对非药物相关线索和奖励的激活减少;(2)这些相同的皮质边缘和皮质纹状体区域的功能连接减弱;以及(3)前额叶区域的灰质和白质体积和连接减少。因此,除了这些区域在基线时表现出组间差异之外,综述证据表明,这些区域的功能和结构可以前瞻性地预测——并且这些区域的正常化可以纵向跟踪——包括复发和对治疗的依从性在内的重要临床结果。未来的临床研究可以利用这些信息来开发新的治疗策略,并将稀缺的治疗资源集中在最容易复发的个体上。