Literature DB >> 24623770

Functional network architecture predicts psychologically mediated analgesia related to treatment in chronic knee pain patients.

Javeria Ali Hashmi1, Jian Kong, Rosa Spaeth, Sheraz Khan, Ted J Kaptchuk, Randy L Gollub.   

Abstract

Placebo analgesia is an indicator of how efficiently the brain translates psychological signals conveyed by a treatment procedure into pain relief. It has been demonstrated that functional connectivity between distributed brain regions predicts placebo analgesia in chronic back pain patients. Greater network efficiency in baseline brain networks may allow better information transfer and facilitate adaptive physiological responses to psychological aspects of treatment. Here, we theorized that topological network alignments in resting state scans predict psychologically conditioned analgesic responses to acupuncture treatment in chronic knee osteoarthritis pain patients (n = 45). Analgesia was induced by building positive expectations toward acupuncture treatment with verbal suggestion and heat pain conditioning on a test site of the arm. This procedure induced significantly more analgesia after sham or real acupuncture on the test site than in a control site. The psychologically conditioned analgesia was invariant to sham versus real treatment. Efficiency of information transfer within local networks calculated with graph-theoretic measures (local efficiency and clustering coefficients) significantly predicted conditioned analgesia. Clustering coefficients in regions associated with memory, motivation, and pain modulation were closely involved in predicting analgesia. Moreover, women showed higher clustering coefficients and marginally greater pain reduction than men. Overall, analgesic response to placebo cues can be predicted from a priori resting state data by observing local network topology. Such low-cost synchronizations may represent preparatory resources that facilitate subsequent performance of brain circuits in responding to adaptive environmental cues. This suggests a potential utility of network measures in predicting placebo response for clinical use.

Entities:  

Keywords:  brain network; chronic pain; placebo; predictive analysis; resting state; synchronization

Mesh:

Year:  2014        PMID: 24623770      PMCID: PMC3951694          DOI: 10.1523/JNEUROSCI.3155-13.2014

Source DB:  PubMed          Journal:  J Neurosci        ISSN: 0270-6474            Impact factor:   6.167


  76 in total

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5.  Cognition is related to resting-state small-world network topology: an magnetoencephalographic study.

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Authors:  Laure Gossec; Gillian Hawker; Aileen M Davis; Jean Francis Maillefert; L Stefan Lohmander; Roy Altman; Jolanda Cibere; Philip G Conaghan; Marc C Hochberg; Joanne M Jordan; Jeffrey N Katz; Lyn March; Nizar Mahomed; Karel Pavelka; Ewa M Roos; Maria E Suarez-Almazor; Gustavo Zanoli; Maxime Dougados
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  34 in total

Review 1.  The placebo effect: From concepts to genes.

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2.  Integration of white matter network is associated with interindividual differences in psychologically mediated placebo response in migraine patients.

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Review 4.  Prediction as a humanitarian and pragmatic contribution from human cognitive neuroscience.

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7.  Dexmedetomidine Disrupts the Local and Global Efficiencies of Large-scale Brain Networks.

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8.  A Functional Neuroimaging Study of Expectancy Effects on Pain Response in Patients With Knee Osteoarthritis.

Authors:  Randy L Gollub; Irving Kirsch; Nasim Maleki; Ajay D Wasan; Robert R Edwards; Yiheng Tu; Ted J Kaptchuk; Jian Kong
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9.  Brain structural properties predict psychologically mediated hypoalgesia in an 8-week sham acupuncture treatment for migraine.

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10.  White matter tract microstructure of the mPFC-amygdala predicts interindividual differences in placebo response related to treatment in migraine patients.

Authors:  Jixin Liu; Junya Mu; Tao Chen; Ming Zhang; Jie Tian
Journal:  Hum Brain Mapp       Date:  2018-09-05       Impact factor: 5.038

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