| Literature DB >> 29998936 |
Takufumi Yanagisawa1,2,3,4, Ryohei Fukuma1,3, Ben Seymour5,6, Koichi Hosomi1,7, Haruhiko Kishima1, Takeshi Shimizu1,7, Hiroshi Yokoi8, Masayuki Hirata1,4, Toshiki Yoshimine1,4, Yukiyasu Kamitani3,9, Youichi Saitoh1,7.
Abstract
A brachial plexus root avulsion (BPRA) causes intractable pain in the insensible affected hands. Such pain is partly due to phantom limb pain, which is neuropathic pain occurring after the amputation of a limb and partial or complete deafferentation. Previous studies suggested that the pain was attributable to maladaptive plasticity of the sensorimotor cortex. However, there is little evidence to demonstrate the causal links between the pain and the cortical representation, and how much cortical factors affect the pain. Here, we applied lesioning of the dorsal root entry zone (DREZotomy) and training with a brain-machine interface (BMI) based on real-time magnetoencephalography signals to reconstruct affected hand movements with a robotic hand. The DREZotomy successfully reduced the shooting pain after BPRA, but a part of the pain remained. The BMI training successfully induced some plastic changes in the sensorimotor representation of the phantom hand movements and helped control the remaining pain. When the patient tried to control the robotic hand by moving their phantom hand through association with the representation of the intact hand, this especially decreased the pain while decreasing the classification accuracy of the phantom hand movements. These results strongly suggested that pain after the BPRA was partly attributable to cortical representation of phantom hand movements and that the BMI training controlled the pain by inducing appropriate cortical reorganization. For the treatment of chronic pain, we need to know how to modulate the cortical representation by novel methods.Entities:
Keywords: cortical plasticity; magnetoencephalography; neurofeedback; phantom limb pain; robotic hand
Mesh:
Year: 2018 PMID: 29998936 PMCID: PMC6092605 DOI: 10.2176/nmc.st.2018-0099
Source DB: PubMed Journal: Neurol Med Chir (Tokyo) ISSN: 0470-8105 Impact factor: 1.742
Clinical profiles of patients
| Patient ID | Age (years)/Sex | Diagnosis | JART FSIQ/VIQ/PIQ | Disease duration (years) | Mirror therapy |
|---|---|---|---|---|---|
| 1 | 50/M | Right BPRA of C6-8 | 100/100/90 | 34 | Effective only for a short period |
| 2 | 51/M | Left BPRA of C5-Th1 | 96/96/96 | 6 | Not effective |
| 3 | 58/M | Right BPRA of C6-Th2 | 112/114/108 | 40 | No experience |
| 4 | 49/M | Right BPRA of C7-Th1 | 102/102/101 | 29 | No experience |
| 5 | 56/M | Right BPRA of C7-8 | 114/116/110 | 38 | Not effective |
| 6 | 51/M | Right BPRA of C6-Th1 | 110/112/107 | 11 | No experience |
| 7 | 56/M | Left BPRA of C7-Th1 | 83/82/87 | 13 | Not effective |
| 8 | 38/M | Right BPRA of C6-8 | 85/84/89 | 21 | No experience |
| 9 | 60/M | Right BPRA of C6-8 | 114/116/110 | 20 | No experience |
BPRA: brachial plexus root avulsion, FSIQ: full-scale intelligence quotient, JART: Japanese adult reading test, M: male, PIQ: performance intelligence quotient, VIQ: verbal intelligence quotient.
Fig. 1.BMI training and experimental design. (Left) Patients were instructed to control the robotic hand by moving their phantom hands. Three types of decoders were used to control the robotic hand based on MEG signals acquired online. (Right) The experimental design. For the BMI training, we used three types of decoders: phantom decoder, random decoder and real hand decoder. Before the experiment with the real hand decoder, the patients also performed an offline movement task with their intact hand after the task with their phantom hand.
Fig. 2.Alteration of pain after DREZotomy. Pain was significantly reduced after the DREZotomy in VAS (a) and SF-MPQ2 scores (b). Gray: pain before surgery; White; pain after surgery.
Fig. 3.Alteration in pain and classification accuracies among the three experiments. (a) The averaged differences in VAS scores (post – pre) are shown with the 95% confidence interval for three experiments (n = 9; **P < 0.01, paired Student’s t-test, Bonferroni corrected). (b) The accuracies for classifying two types of phantom movements were evaluated using the currents on the motor cortex contralateral to the phantom hand. Each bar shows the average difference in the accuracy with 95% confidence intervals for each experiment (n = 9, **P < 0.01, paired Student’s t-test, Bonferroni corrected).