Abstract
Fatigue in multiple sclerosis (MS) is a highly disabling symptom. Among the central mechanisms behind it, an involvement of sensorimotor networks is clearly evident from structural and functional studies. We aimed at assessing whether functional/structural balances of homologous sensorimotor regions—known to be crucial for sensorimotor networks effectiveness—decrease with MS fatigue increase. Functional connectivity measures at rest and during a simple motor task (weak handgrip of either the right or left hand) were derived from primary sensorimotor areas electroencephalographic recordings in 27 mildly disabled MS patients. Structural MRI-derived inter-hemispheric asymmetries included the cortical thickness of Rolandic regions and the volume of thalami. Fatigue symptoms increased together with the functional inter-hemispheric imbalance of sensorimotor homologous areas activities at rest and during movement, in absence of any appreciable parenchymal asymmetries. This finding supports the development of compensative interventions that may revert these neuronal activity imbalances to relieve fatigue in MS.
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Introduction
Fatigue is a bothersome symptom shared by a variety of conditions, including Multiple sclerosis (MS), in which up to 90 % of patients may complain of it even early in the disease [1]. It affects social relationships and daily cognitive and physical activities of MS sufferers [2] who report fatigue as exhaustion, lacking energy, increased somnolence or worsening of MS symptoms, with augmented weakness exacerbated by activity and heat [3].
Fatigue may be secondary to MS-related complications (trigeminal neuralgia, spasms, psychiatric comorbidities, etc.), musculoskeletal involvement (pain, posture, gait anomalies, etc.), sleep and drug-related issues [4]. Several findings confirm the existence of peripheral nervous system components of fatigue in MS [5]. However, there are clear indications that a main role is played by dysfunctional central mechanisms [6–9], with the sensorimotor system playing a principal role [6, 8–15].
Rather than on a whole-brain basis, primary MS-fatigue-related alterations emerged from structural studies measuring either the lesion volume or non-conventional metrics derived from magnetic resonance imaging (MRI) in specific brain regions [16, 17]. Indeed, pointing on brain regional specificity, a higher lesion load in fatigued patients has been found in the internal capsule, the periventricular trigone [6], the posterior parietal cortex [18], the right parieto-temporal and left frontal lobes [19].
From a neurophysiological perspective, potential mechanisms of this phenomenon reside in the sensorimotor system functional alterations at cortical [6, 10–13] and subcortical levels [8, 14, 15]. We recently observed that altered functional communication within the sensorimotor system emerges in MS-fatigued patients before that any structural damage in the communicating nodes is appreciated [9].
A recent achievement is the dynamic interplay between homologous cortical areas as a critical element for a proper functioning of the motor system either during task execution or even at rest (in which the behavioral performance associates to the functional connectivity across the nodes of the devoted network) [20–22]. Thus, here we focused on the inter-hemispheric balance between homologous primary sensorimotor cortices. The primary nodes of the sensorimotor network may be early affected by demyelination and/or axonal loss, reflecting functional disconnections even over long distances. Dynamic indices were derived at rest and during movement from electroencephalographic (EEG) recordings.
To assess the potential influence of structural (parenchymal) inter-hemispheric sensorimotor imbalances on MS fatigue, we also investigated the asymmetry indices of thalamic volumes and cortical thickness of rolandic regions, which represent key nodes of this network.
Data were collected from relapsing remitting (RR) MS patients with low-range disability to minimize the effects of the disease upon fatigue.
Methods
Participants
The work was approved by the Ethical Committee of the Fatebenefratelli Hospital and was performed in accordance with the ethical standards noted in the 1964 Declaration of Helsinki. All subjects signed informed consents prior to their inclusion in the study.
According to Lublin’s categories [23], twenty-seven MS patients (13 females; age range 22–47 years; mean = 37 years) were recruited at the MS center of ‘S. Giovanni Calibita’ Fatebenefratelli Hospital (Rome, Italy). Eight healthy subjects (7 females, age range 25–48 years; mean = 37) were enrolled as controls (C).
A detailed clinical history inclusive of ongoing disease-modifying therapy (DMT), disease duration and annual relapse rate was collected. Beck Depression Inventory (BDI) and expanded disability status scale (EDSS) were scored at the time of neurological examination and used in exclusion criteria to eliminate concomitant origin of fatigue in depression (BDI ≥ 13) or excessive disease severity (EDSS > 2). Fatigue levels were assessed using the modified fatigue impact scale (mFIS) that identifies the physical, cognitive, and psychosocial components of fatigue. Inclusion criteria were as follows: absence of clinical relapse or radiological evidence of disease activity over the last 3 months; ability to rule out physical disability or depression as confounding factors; EDSS score ≤3; no drugs against depression. The exclusion criteria included: (a) assumption of symptomatic drugs affecting the fatigue; depression and/or anxiety within the past 3 months; (b) epilepsy or other central/peripheral nervous system comorbidities; (c) any systemic conditions that may cause fatigue (e.g., anemia or pregnancy). We gave care to include people with MS suffering by a wide range of fatigue symptoms. mFIS scores ranged between 5 and 57, and considering a threshold of 36, 12 MS patients suffered low fatigue and 15 high fatigue (Table 1).
Electrophysiological study and inter-hemispheric balance assessment
The functional connectivity was measured during movement through the spectral coherence (inter-hemispheric coherence index, IHCoh) [24] and at rest through the power inter-hemispheric symmetry index (IHSym_Rest) [25], already proven to be a sensitive measure of the functional balance between homologous areas [26, 27].
The digital signals were recorded on computer for off-line processing using a pre-cabled cap (mod. CUEE60 M, Sei EMG s.r.l., Cittadella, Italy) with 23 Ag/AgCl electrodes (the standard 19 channels of the 10–20 International system plus FC4, FC3, CP4, CP3), with sampling rate of 1024 Hz (band pass filter 0.48–256 Hz). In addition, electro-oculogram to check for eye blinking and electrocardiogram (ECG) were acquired as polygraphic traces. EEGs were recorded using a Micromed System Plus equipped with SAM32 headbox (Micromed S.p.A., Mogliano Veneto, Italy), with a mid-frontal reference and an occipital ground. All subjects sat comfortably on a reclining chair, with their arms supported, flexed at the elbow and with the forearm semi-pronated (Fig. 1). Following a block design paradigm, EEG signals were recorded in 24 consecutive blocks, in which 20s of muscular contraction (motor task) were alternated with 10 s of opened eyes rest, to avoid fatigue induced by the task. The motor task consisted in an isometric handgrip against resistance from a semi-compliant air-bulb, connected to a digital board hosting in-house developed electronics that recorded the exerted pressure while giving the subject a visual feedback (Interactive Pressure Sensor, InPresS, Fig. 1). The task was executed once with each hand, in random order between subjects. The EEG recordings lasted about 20 min for each of the two sides. The procedure has been detailed elsewhere [9]. Complete resting EEG data were also collected.
Firstly, the EEG bipolar derivations maximally coherent with the contralateral muscular activity during contraction were selected for both left (\({\text{EEG}}_{{{\text{SM}}_{1} }}^{\text{L}}\), typically C3-F3 or C3-FC3) and right (\({\text{EEG}}_{{{\text{SM}}_{1} }}^{\text{R}}\), typically C4-F4 or C4-FC4) hemisphere.
At rest, the inter-hemispheric symmetry index was calculated as:
where f indicates the frequency bin and PSDL and PSDR are the power spectral densities of the \({\text{EEG}}_{{{\text{SM}}_{1} }}^{\text{L}}\) and \({\text{EEG}}_{{{\text{SM}}_{1} }}^{\text{R}}\) [25], estimated by the Welch procedure (2 s lasting non-overlapping Hanning windows, averaging almost 100 epochs). We selected this index since it was observed sensitive to physiological [26] and pathological [27] alteration in resting state. With respect to van Putten’s definition, we considered the ratio without the absolute value transformation. In this way, we maintained the information about the direction of the inter-hemispheric asymmetry in such a way that IHSym_Rest <1 corresponds to R > L and vice versa. To check for the activation level of the sensorimotor area in each hemisphere, we measured the PSD during movements and rest.
To evaluate the functional balance of homologous sensorimotor areas when engaged in motor control, we evaluated the symmetry of their functional connectivity (estimated via spectral coherence in alpha band) when moving the right or the left hand separately. We calculated the cortico-cortical coherence as:
where f is the frequency bin, PCD the power cross spectrum estimated accordingly to the PSD as defined above. Frequency bins were integrated in standard EEG bands: delta (1.5–4 Hz); theta (4.5–8 Hz); alpha (8–12 Hz); beta (12–33 Hz); gamma (33.5–90 Hz, excluding five frequency bins around 50 Hz); whole spectrum (1.5–90 Hz). Thereafter, we considered their asymmetry when moving each hand by
Since here R and L refer to the moved hand, we inverted the order with respect to inter-hemispheric symmetry index at rest (IHSymRest).
The analysis of EEG data was performed with Matlab 2010 (The Mathworks Inc, MA, USA).
Magnetic resonance imaging and derived metrics
Data acquisition
Imaging was performed with a 1.5 T scanner (Achieva, Philips Medical Systems, Best, The Netherlands), provided with a 33 mT/m gradient amplitude, online 2D/3D geometric distortion correction and a standard quadrature head coil. The acquisition protocol is detailed in [26] and consisted of a high-resolution volumetric sequence optimized for morphometric measurements together with routine 2D sequences for lesion characterization. The former was empirically adjusted to allow reliable segmentation of subcortical structures (T1-weighted Turbo Field Echo TR/TE/FA = 8.6 ms/4 ms/8º; 256 × 256 matrix, 160 sagittal contiguous slices, in-plane resolution 1 × 1 mm). The 2D sequences included Dual Turbo Spin Echo, Fluid Attenuated Inversion Recovery (FLAIR) and two T1-Spin Echo sequences before and after intravenous injection of the contrast agent gadolinium (0.2 mmol/kg).
Lesion characterization
Optimized segmentation and volume calculation for normalization are described in Tecchio [28]. Briefly, in the present study, the lesion load was estimated as the lesion relative fraction (LrF), defined as the total lesion volume of white matter (WM) hyperintensities upon T2/FLAIR weighted images, normalized for the overall WM volume. This part is reported in the present work only for completeness of the clinical picture since no association between fatigue and lesion load was found in a previous study (Table 1, [9]).
Thalamic volume and cortical thickness estimate
Automated labeling and quantification of thalamus, supratentorial volumes and cortical thickness of sensorimotor regions were performed using FreeSurfer 5.1 [29, 30] installed on a multiprocessor Apple workstation. This software provides a neuroanatomical label of up to 40 unique structures based on probabilistic information assigned to each voxel in the brain MRI volume automatically estimated from an atlas integrating a manually labeled training set [31]. We selected the G_postcentral, S_central, and G_precentral cortical regions of the left and right hemispheres. A nonlinear transform is initialized with the linear one, and the image is allowed to further deform to better match the atlas. Lastly, a Bayesian segmentation procedure is performed, and the maximum a posteriori estimate of the labeling is computed. This approach provides an anatomically precise rendering of regional volumes that results comparable to manual ROI delineation [32, 33], without the potential for rater bias [30].
The entire cortex was visually inspected prior to analysis. Subjects requiring manual correction underwent: (a) manual realignment to the MNI template; (b) setting intensity normalization control points where brain matter was erroneously skull stripped; (c) adjustment watershed parameters of the skull strip; (d) visual inspection and correction of the automatic subcortical segmentation; and e) accuracy of WM/gray matter (GM) segmentation, to avoid possible misclassifications mostly due to MS lesions. Intracranial volume (ICV) was calculated and used to correct the raw volumetric measures [34], to eliminate the scaling effect with general head size. In the present study, the normalized volumes of thalamus proper were calculated as followed: [raw volume/ICV] × 1000. GM/WM and pial surfaces were then identified and thickness was defined as the shortest distance between their two models [35].
The asymmetry index between the left and right thalamus of each subject was calculated according to formula mentioned above for IHSym_Rest (IHSym_Thal). Accordingly, it was also calculated for the cortical thickness of the central sulcus regions (Fig. 2) among the overall measures provided by the software.
Statistics
Statistical analysis was performed using a Windows PC running SPSS v.19. First, the normal distribution of the variables was verified and logarithmic transformation applied where appropriate. PSD were not normally distributed, so we estimated their logarithmic transformation, which did not differ from a Gaussian (Shapiro–Wilk p > 0.300 consistently). A correlation analysis of inter-hemispheric balances at rest and during movement with fatigue symptoms guided all other steps. Whenever an association was found, the relative hemispheric values were evaluated and compared among the three groups (healthy and MS patients in dependence on the level of fatigue) proper ANOVA model. When comparing more than two groups Bonferroni’s post hoc test was adopted. In the case of inappropriateness of parametric tests, a non-parametric test (U Mann–Whitney and Kruskal–Wallis) was used. An uncorrected two-tailed alpha level of p < 0.05 was set as the significance threshold. P values between 0.05 and 0.10 were considered as trends.
Results
Functional inter-hemispheric balances of homologous sensorimotor cortices
Asymmetry of homologous primary sensorimotor power in resting state
We found a clear positive correlation between fatigue scale and the inter-hemispheric power asymmetry of homologous primary sensorimotor cortices (Table 2; Fig. 3, left). In other words, people with MS suffering more for fatigue had higher left (dominant) than right (non-dominant) hemispheric primary sensorimotor activity power in the resting state. To better understand the origin of this relationship, we calculated the correlation with hemispheric power and found no associations in either side (Table 2). To have an estimate of the direction of the changes, we studied the values of these three variables in healthy people and in people with MS divided for suffering by low or high level of fatigue (see Table 3). Oneway ANOVA indicated that right hemisphere power differed among the three groups (Table 3), and post hoc comparisons evidenced that only high levels of fatigue were associated to lower power than both healthy controls (p = 0.030) and people with MS suffering low levels of fatigue (p = 0.048). Noteworthy, the trend of Groups effect for the inter-hemispheric power symmetry IHSymRest (Table 3, p = 0.052), corresponded to a trend of difference between people with MS suffering different levels of fatigue (p = 0.077). No differences were found between people with MS suffering low level of fatigue and healthy people (Sidak corrected p > 0.500 consistently).
Asymmetry of inter-hemispheric connectivity between homologous primary sensorimotor areas during movement
Preliminarily, we evaluated whether any group effect was present in specific bands for the inter-hemispheric connectivity during movement. ANOVA included the within-subject factors Task-side (right handgrip, Left handgrip) and the between-subject factor Group (healthy controls, MS low fatigue, MS high fatigue). Given the strong dependence of IHCoh on the EEG frequency band (Band factor F(6, 120) = 34.325, p < 0.001), we carried out the analysis in each band and selectively in alpha band we found the Group factor [F(2, 20) = 5.474, p = 0.013]. All further investigation is on the inter-hemispheric coherence in alpha band.
The symmetry of the inter-hemispheric coherence during the left and right handgrips IHSymMovement was positively correlated with fatigue in people with MS, while no relation appeared with hemi-side values (Table 2; Fig. 3, right). This means that when controlling the movement, the left SM1 area establishes a higher inter-hemispheric coherence (connectivity, too strong as revealed in comparison with lower values in healthy controls, Table 3) with right SM1 to control right hand than to control the left hand (right hand movement > left). In other terms, when the left SM1 is more directly recruited (right hand movement), it connects the homologous contralateral area more than when the right SM1 is more directly recruited. To be noted, while no effect appeared in one-way ANOVA, comparing the two movements separately and differentiating the patients depending on the fatigue level (Table 3), the overall inter-hemispheric coherence in the group of people with MS was higher than in healthy controls. In fact, ANOVA including Task-side (Right handgrip, Left handgrip) as within-subjects factor and the 2-level between-subjects factor Group (Healthy Controls, People with MS), displayed the Group effect [F(1, 30) = 4.774, p = 0.037] corresponding to means across the two side tasks: 0.16 ± (SD) 0.08 in healthy control and 0.26 ± 0.13 in people with MS.
Structural inter-hemispheric balances of homologous sensorimotor regions
Regarding the thalamus volumes, no differences were observed among MS patients and controls either in terms of the asymmetry index (IHSym_thal, ANOVA 3-level between-subjects Group: p = 0.267, Table 4), or in terms of normalized thalamus volumes (ANOVA: left, p = 0.259; right, p = 0.866). No association was observed between such indicators and the mFIS scores. The same occurred for Rolandic areas cortical thickness.
Discussion
The main finding was that MS fatigue increased together with the functional imbalance between homologous sensorimotor areas’ activities both at rest and during movement. Our mildly disabled MS patients did not show any structural alteration of the primary sensorimotor network, in terms of thalamic volume or cortical thickness of rolandic regions. They also did not show alterations of primary sensorimotor cortices local neuronal activity. In particular, no alterations in either side associated with fatigue symptoms, which selectively associated with the reduction of their inter-side symmetry, both at rest and during movement. This finding extend to MS fatigue the evidence already got from stroke [20–22, 27, 36] and healthy people [26] that dynamic interplay between homologous cortical areas is critical for the brain networks effective functioning. This impaired pattern of the dynamic indices with little or no parenchymal changes indicates that the sensorimotor system derangement in MS fatigue is primarily functional, with a key role of homologous regions relationship. Our cohort included highly selected lowly disabled MS patients (median EDSS 1, range [0, 3]) enabling to rule out mechanism secondary to disease severity thus enhancing the ability to isolate mechanisms behind fatigue. This new findings strengthen the hypothesis that neuromodulations, i.e., techniques able to modify neuronal excitability of specific brain regions thus changing the interplay among brain areas, are promising treatment for MS fatigue [37]. Behavioral treatments can also modify the hemispheric balances [38, 39]. Thus, in addition to or integrating neuromodulation interventions, behavioral treatments should be tested against MS fatigue.
The intensification of fatigue symptoms is accompanied by an inter-hemispheric imbalance of activity at rest, in which left dominant SM1 areas generate higher power than the right non-dominant one. This could correspond to an impoverishment of the local organization of dominant hand representation. Indeed, in healthy controls we proved that the dominant hand representation (in the left hemisphere) has a lower power at rest than the non-dominant one [40]. In MS patients, an intra-cortical connectivity index specific of the left dominant hemisphere coding for sensorimotor dexterity [41] is distorted [28]. Moreover, the increment of power and inter-hemispheric imbalances show an increase in healthy people with aging in the same direction as in these MS patients, possibly as a sign of reduced functional organization in the region of the hand’s sensorimotor control [26].
In our study, MS fatigue increased with a rise of the inter-hemispheric coherence, possible expression of an increment of synchronization between neuron of homologous SM1. Studies in animals and in humans have demonstrated that cerebral regions, when engaged in shared tasks, start synchronizing the neuronal firings of involved networks [42–44]. This behavior can be hampered by several pathological conditions that shift synchronization levels toward lower values, such as in acute stroke patients [45] or even toward higher values, such as in depression, where an augmented functional connectivity within the anterior medial cortex [46] and an overall greater coherence in the resting state are found [47]. Alternatively and non-mutually exclusive, the increase of synchronization in our cohort can also result from an increment in the number of recruited neurons during movement, as a probable compensatory mechanism of MS fatigue directed to achieve the assigned task, which in turn induces the perception of fatigue. This is in line with previous fMRI studies [11, 13].
In conclusion, the present study strengthens the role of sensorimotor system involvement in MS fatigue, in particular indicating that the symptom increases when functional imbalance between homologous regions of the two hemispheres becomes stronger. Neuromodulation might offer a relief from MS fatigue sufferance, such as interventions able to modify the inter-hemispheric interplay of primary sensorimotor areas.
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Acknowledgments
The Authors wish to thank Prof. Ada Maria Tata for her scientific collaboration and Matilde Ercolani who assisted with electrophysiological acquisition. We are sincerely grateful to all patients for the time and cooperation required to participate in the study. This work was supported by: 1) FISM—Fondazione Italiana Sclerosi Multipla – Cod.2011/R/32 [FaReMuSDiCDiT], 2) Ministry of Health Cod. GR-2008-1138642 [ProSIA], and 3) MIUR Prot. 2010SH7H3F ‘Functional connectivity and neuroplasticity in physiological and pathological aging [ConnAge]’.
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The authors have no conflicts of interest or financial ties to disclose.
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I. Cogliati Dezza and G. Zito equally contributed to this work.
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Cogliati Dezza, I., Zito, G., Tomasevic, L. et al. Functional and structural balances of homologous sensorimotor regions in multiple sclerosis fatigue. J Neurol 262, 614–622 (2015). https://doi.org/10.1007/s00415-014-7590-6
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DOI: https://doi.org/10.1007/s00415-014-7590-6