| Literature DB >> 28928710 |
Jun-Ge Liang1, Dongpyo Lee2, Song Ee Youn3, Heung Dong Kim2,3, Nam-Young Kim1.
Abstract
OBJECTIVES: This study aimed to investigate the functional network effects of corpus callosotomy (CC), a well-recognized palliative surgical therapy for patients with Lennox-Gastaut syndrome (LGS). Specifically, we sought to gain insight into the effects of CC on LGS remission, based on brain networks in LGS by calculating network metrics and evaluating by network measures before and after surgery.Entities:
Keywords: Lennox–Gastaut syndrome; corpus callosotomy; electroencephalographic; functional connectivity; functional network effects; small-world structure
Year: 2017 PMID: 28928710 PMCID: PMC5591410 DOI: 10.3389/fneur.2017.00456
Source DB: PubMed Journal: Front Neurol ISSN: 1664-2295 Impact factor: 4.003
Clinical characteristics of Lennox–Gastaut syndrome patients.
| Patient no. | Gender/age | Seizure onset age | Main seizure type | Preoperative medication | Postoperative medication | Preoperative electroencephalographic (EEG) | Postoperative EEG | MRI | PET | SPECT | Outcome |
|---|---|---|---|---|---|---|---|---|---|---|---|
| 1 | F/8 | 2 | GTC, head drop | LMT, ZNS, LEV, VPA | LMT, LEV, CBZ | GPFA, GSSW, MSWD | Rt LPFA, Rt F SWD | Mild brain atrophy | Rt FPT ▾ | Rt FPT ▾ | Seizure free |
| 2 | M/4 | 0.5 | GTC, jerking | VGB, LEV | VGB, LEV | GPFA, GSSW | GPFA, GSSW ▾ | Suspicious Rt F pachygyria | Rt F ▾ | Rt F▾ | 90% decrease |
| 3 | F/15 | 1.6 | GTC, jerking | TPM, OXC, VGB | TPM, OXC, VGB | GPFA, GSSW | Lt F SWD | Multiple non-specific Rt WMH | Non-specific | Non-specific | 95% decrease |
| 4 | M/7 | 0.8 | GT | ZNS, VPA, LEV | ZNS, VPA | GPFA, GSSW | Lt LPFA | Rt OT WMH | Rt P ▾ | Non-specific | Seizure free |
| 5 | M/2 | 0.8 | Spasms | VGB, LEV, VPA | LEV, TPM | GPFA, GSSW | Lt LPFA, Lt SWD | Diffuse brain atrophy | Normal | Rt F ▴ | 60% decrease |
| 6 | M/12 | 8 | GTC, head drop | LMT, LEV, TPM | LMT, LEV, TPM | GPFA, GSSW | Rt LPFA | Normal | Multifocal ▾ | Non-specific | Seizure free |
| 7 | M/5 | 0.5 | GT, head drop | LEV, CBZ | LEV, ZNS | GPFA, GSSW | Lt LPFA | Normal | Non-specific | Non-specific | 90% decrease |
| 8 | F/6 | 0.1 | Spasms | LMT, TPM | LMT, TPM | GPFA, GSSW | Lt LPFA | Normal | Lt H ▾ | Lt H ▾ | 30% decrease |
| 9 | F/1 | 0.3 | Spasms | TPM, VPA | VPA, TPM, ZNS | GPFA, GSSW | GPFA, GSSW ▾ | Normal | Rt T ▾ | Rt T ▾ | 50% decrease |
| 10 | M/10 | 6 | Atypical absence, head drop | LMT, LEV, VPA, CLB RFM | LMT, LEV | GPFA, GSSW | GPFA, GSSW ▾ | Normal | Rt FT ▾ | Rt FT ▾ | 90% decrease |
| 11 | M/9 | 7 | Atypical absence | OXC, LEV, TPM | OXC, LEV, TPM | GPFA, GSSW | GPFA, GSSW ▾ | Normal | Anterior portion of the Lt ▾ | Anterior portion of the Lt ▾ | 60% decrease |
| 12 | M/13 | 9 | Head drop | TPA, LMT, LEV, VPA, CLB | TPA, LMT, LEV, VPA, CLB, CBZ | GPFA, GSSW | MSWD | PVL | Rt PT ▾ | Not done | 99% decrease |
| 13 | F/8 | 0.5 | GT | LEV, VPA, TPA, CLB, RFM | LEV, VPA TPA, CLB, RFM | GPFA, GSSW | Lt LPFA | FCD in Rt cingulate gyrus | Rt T ▾ | Rt T ▾ | 90% decrease |
| 14 | F/4 | 0.2 | GT, SMA seizure | ZNS, CLB, RFM | ZNS, CLB, RFM | GPFA, GSSW | GPFA, GSSW ▾ | Mild brain atrophy | Rt PQ ▾ | Rt PQ ▾ | No change |
F, female; M, male; Lt, left; Rt, right; GT, generalized tonic; GTC, generalized tonic clonic; CBZ, carbamazepine; CLB, clobazam; LEV, levetiracetam; LMT, lamotrigine; OXC, oxcarbazepine; RFM, rufinamide; TPM, topiramate; VGB, vigabatrin; VPA, valproate; ZNS, zonisamide; GPFA, generalized paroxysmal fast activity; GSSW, generalized slow sharp and wave; LPFA, localized paroxysmal fast activity; MSWD, multifocal sharp and wave discharge; SWD, sharp and wave discharges; ▾, reduction in frequency; F, frontal; P, parietal; O, occipital; T, temporal; H. hemisphere; PQ, posterior quadrant; FCD, focal cortical dysplasia; PVL, periventricular leukomalacia; WMH, white matter hyperintensity; ▾, hypometabolism in PET and hypoperfusion in SPECT; ▴, hyperperfusion.
Figure 1Illustration of network construction and analysis based on surface electroencephalographic (EEG) recording. (A) EEG recording: 19 channels surface-EEG recording with a sampling frequency of 200 Hz. (B) Correlation matrix (MATLAB pcolor plot): correlation coefficients among 19 channels with the diagonal elements set as 0. (C) Brain network plots: the edge strength is represented as thickness of the line. (D) Graph measures: calculation of brain network parameters, such as degree, betweenness centrality, cluster coefficient, characteristic path length, and efficiency.
Figure 2(A) Preoperative and postoperative functional networks, (B) increased and decreased network connections after corpus callosotomy (CC) in the delta, theta, alpha, beta, and gamma bands. The thickness and gray scale indicates the strength of connections.
Figure 3Variation of betweenness centrality between postoperative and preoperative states in the delta (A), theta (B), alpha (C), beta (D), and gamma (E) bands. Variation is indicated by colored dots: red denotes increased degree values, blue decreased values, and black non-consistent changes.
Figure 4Network hubs derived from betweenness centrality in the preoperative (A) and postoperative (B) states. The red color dots indicate the preoperative hubs, whereas the blue ones for the postoperative, and the dashed lines represented the top four strongest connections.