| Literature DB >> 33329346 |
Stefan Lang1,2,3, Liu Shi Gan1,2,3, Cael McLennan1, Adam Kirton1,2,3, Oury Monchi1,2,3, John J P Kelly1,2,4.
Abstract
Background: Transcranial direct current stimulation (tDCS) has been used extensively in patient populations to facilitate motor network plasticity. However, it has not been studied in patients with brain tumors. We aimed to determine the feasibility of a preoperative motor training and tDCS intervention in patients with glioma. In an exploratory manner, we assessed changes in motor network connectivity following this intervention and related these changes to predicted electrical field strength from the stimulated motor cortex.Entities:
Keywords: finite element model; functional connectivity; glioma; plasticity; sensorimotor network; transcranial direct current stimulation
Year: 2020 PMID: 33329346 PMCID: PMC7710969 DOI: 10.3389/fneur.2020.593950
Source DB: PubMed Journal: Front Neurol ISSN: 1664-2295 Impact factor: 4.003
Demographic and tumor related data.
| 1 | 46 | M | L | Left post-central | Seizure | Grade III Astrocytoma | IDH mt, ATRX loss, MGMT methylated |
| 2 | 63 | F | R | Left post-central | Seizure | GBM | IDH WT, ATRX retained, p53 positive, MGMT unmethylated |
| 3 | 31 | M | R | Left frontal | Headache | Grade III Astrocytoma | IDH1 mt, ATRX loss, MGMT methylated, p53 positive |
| 4 | 64 | F | R | Left post-central | Word finding difficulty, right hand sensory deficit | GBM | IDH WT, ATRX retained, MGMT methylated |
| 5 | 57 | M | R | Left temporal | Seizure | Oligodendroglioma | IDH mt, 1p/19q codeletion |
| 6 | 32 | M | R | Left frontal | Seizure | GBM | IDH mutant, ATRX loss, MGMT methylated |
| 7 | 55 | F | R | Left frontal | Face numbness, right hand incoordination and dysarthria | GBM | IDH WT, p53 positive, MGMT methylated |
| 8 | 25 | F | R | Left frontal | Seizure | Grade II Astrocytoma | IDH mt, ATRX loss, MGMT methylated |
Figure 1Tumor location. All patients had left sided tumors, and 7/8 were in close proximity to the central sulcus. Tumor marked with a white asterisk.
Figure 2Study Protocol. Patients underwent both task and resting state fMRI. Task fMRI was used to determine subject specific ROI's in the primary motor cortex. Resting state fMRI was used to calculate the global (Intrinsic Connectivity; IC) and local (Integrated local correlation; LCOR) connectivity of these M1 seeds. Patients then underwent 4 consecutive days of motor training and tDCS. The motor task consisted of a total of 60 min of individualized piano training, while a total of 40 min of 2 mA anodal tDCS was applied over the left motor cortex. Finally, global and local connectivity of M1 was calculated 24 h following the intervention.
Figure 3Pipeline for patient specific electric field modeling. Each subject underwent T1WI, T2WI, T1WI with gadolinium, and FLAIR imaging as part of their routine clinical care. These images were used to segment the head, brain, and tumor into component tissue classes. A modified version of ROAST was then used to mesh the volumes and solve the finite element model. CSF, cerebrospinal fluid; GM, gray matter; WM, white matter; Te, enhancing tumor; Nec, necrosis; Tne, non-enhancing tumor.
Figure 4Change in global connectivity of M1.
Figure 5Change in local connectivity of M1.
Figure 6Voxel-wide global connectivity alterations. Significant clusters are seen in the right frontal pole (increased) and supplementary motor area (decreased). Color bar represents T-score.
Cluster location and statistics from voxel-wide analysis of Intrinsic Connectivity (IC).
| 1 | 42, 46, 06 | 76 | 0.000032 | Right frontal pole | |
| 2 | 06, −02, 62 | 51 | 0.000044 | Right Supplementary Motor Area |
Figure 7Relationship between the average electric field from left M1 and connectivity changes. (A) Change in IC of left M1; (B) Change in LCOR of left M1; (C) Change in IC of right M1; (D) Change in LCOR of right M1. IC, intrinsic connectivity; LCOR, Integrated local correlation; EF, electric field.
Future directions for clinical translation.
| 1 | What is the optimal motor training paradigm for facilitating plasticity of motor networks in glioma patients? |
| 2 | What are the optimal electrode configurations and stimulation parameters? |
| 3 | What is the minimum length of time for combined motor training and NIBS to induce long-lasting changes in motor networks? |
| 4 | Does facilitating plasticity in the preoperative period lead to improved extent of resection? |
| 5 | Does facilitating plasticity in the preoperative period lead to improved motor outcomes following surgery? |
| 6 | How does the tumor affect the electric field magnitude within the brain? |
| 7 | Are there dose-response relationships between electric field magnitude and motor network plasticity? |
| 8 | What is the best measurement of network reorganization in glioma patients? |
| 9 | How does glioma grade and genetics alter response to NIBS? |
NIBS, non-invasive brain stimulation.