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Wednesday, April 23, 2014

Structural changes induced by daily music listening in the recovering brain after middle cerebral artery stroke: a voxel-based morphometry study


Teppo Särkämö1,2*, Pablo Ripollés3,4, Henna Vepsäläinen1Taina Autti5,Heli M. Silvennoinen5Eero Salli5Sari Laitinen6Anita Forsblom7, Seppo Soinila8 and Antoni Rodríguez-Fornells3,4,9
  • 1Cognitive Brain Research Unit, Cognitive Science, Institute of Behavioural Sciences, University of Helsinki, Helsinki, Finland
  • 2Finnish Centre of Interdisciplinary Music Research, University of Helsinki, Helsinki, Finland
  • 3Cognition and Brain Plasticity Group, Bellvitge Biomedical Research Institute (IDIBELL), L’Hospitalet de Llobregat, Barcelona, Spain
  • 4Department of Basic Psychology, University of Barcelona, Barcelona, Spain
  • 5Department of Radiology, HUS Medical Imaging Center, Helsinki University Central Hospital, University of Helsinki, Helsinki, Finland
  • 6Miina Sillanpää Foundation, Helsinki, Finland
  • 7Department of Music, University of Jyväskylä, Jyväskylä, Finland
  • 8Department of Neurology, Turku University Hospital, Turku, Finland
  • 9Institució Catalana de Recerca i Estudis Avançats (ICREA), Barcelona, Spain
Music is a highly complex and versatile stimulus for the brain that engages many temporal, frontal, parietal, cerebellar, and subcortical areas involved in auditory, cognitive, emotional, and motor processing. Regular musical activities have been shown to enhance the structure and function of many brain areas, making music a potential tool in neurological rehabilitation. In our previous randomised controlled study, we found that listening to music daily can improve cognitive recovery and improve mood after an acute middle cerebral artery stroke. Extending this study, a voxel-based morphometry (VBM) analysis utilising cost function masking was performed on the acute and 6-month post-stroke stage structural magnetic resonance imaging data of the patients (n = 49) who either listened to their favourite music [music group (MG), n = 16] or verbal material [audio book group (ABG), n = 18] or did not receive any listening material [control group (CG), n = 15] during the 6-month recovery period. Although all groups showed significant grey matter volume (GMV) increases from the acute to the 6-month stage, there was a specific network of frontal areas [left and right superior frontal gyrus (SFG), right medial SFG] and the limbic regions [left ventral/subgenual anterior cingulate cortex (SACC) and right ventral striatum (VS)] in patients with left hemisphere damage in which the GMV increases were more significant in the MG than in the ABG and in the CG. Moreover, the GM reorganisation in the frontal areas correlated with enhanced recovery of verbal memory, focused attention, and language skills, whereas the GM reorganisation in the SACC correlated with reduced negative mood. This study adds to previous results, showing that music listening after stroke not only enhances behavioural recovery but also induces fine-grained neuroanatomical changes in the recovering brain.

Introduction

During the past 10 years, advanced magnetic resonance imaging (MRI) analysis methods, such as voxel-based morphometry (VBM) and diffusion tensor imaging (DTI), have provided novel information about the dynamics of the structural neuroplastic changes underlying spontaneous recovery and rehabilitation after stroke. Based on longitudinal VBM and DTI studies of stroke patients, the recovery of cognitive and motor deficits is associated with grey matter volume (GMV) changes in many frontal, temporal, cerebellar, and subcortical (e.g., hippocampus) areas (Grau-Olivares et al., 2010Dang et al., 2013Fan et al., 2013) as well as changes in the integrity of the white matter (WM) tracts connecting and projecting from these areas (Liang et al., 2008van Meer et al., 2012Thiebaut de Schotten et al., 2014). In longitudinal intervention studies, intensive motor rehabilitation using constraint-induced movement therapy (CIMT) has been shown to increase GMV in frontal and parietal sensory–motor areas and in the hippocampus (Gauthier et al., 2008) and intensive aphasia rehabilitation using constraint-induced language therapy (CILT) or melodic intonation therapy (MIT) has been observed to enhance the integrity of the WM tracks connecting frontal and temporal regions (arcuate fasciculus) in the left (Breier et al., 2011) and right (Schlaug et al., 2009) hemispheres, respectively. These findings suggest that both behavioural recovery and active rehabilitation after stroke are closely linked to fine-grained neuroanatomical changes in the recovering brain. However, very little is known about the broader potential effects of the recovery environment on structural brain plasticity after stroke in humans.
Converging evidence from both animal (Johansson, 2004Nithianantharajah and Hannan, 2006) and human studies (Johansson, 2012Janssen et al., 2014) indicates that an environmental enrichment (EE), which provides additional sensory, cognitive, motor, and/or social stimulation compared to a standard environment, plays a vital role in enhancing behavioural recovery after an acute stroke. In addition, evidence from animal studies suggests that post-stroke EE can induce several cellular and molecular neuroplastic effects in the brain, including an increase in dendritic complexity (Biernaskie and Corbett, 2001Johansson and Belichenko, 2002), neural stem and progenitor cells (Komitova et al., 2005Matsumori et al., 2006), and neurotrophic and neural growth factor levels (Gobbo and O’Mara, 2004Söderström et al., 2009), and that these changes are associated with better cognitive or motor recovery. Interestingly, a multisensory EE, including auditory, visual, and olfactory stimuli, has been found to be effective in improving cognitive and motor recovery and reducing lesion volume (Maegele et al., 2005a,b). Also evidence from developmental animal studies shows that a purely auditory EE, which contains complex sounds or music, can enhance the structure and function of the auditory cortex (Engineer et al., 2004Bose et al., 2010) as well as improve learning and memory and upregulate various neurotransmitters (e.g., dopamine, glutamate) and neurotrophins associated with them (Sutoo and Akiyama, 2004Angelucci et al., 2007Nichols et al., 2007). Overall, these findings indicate that auditory enrichment can benefit the brain and suggest that it could contribute to better cognitive and neural recovery after stroke.
In the human brain, music and speech constitute the two most complex and versatile auditory stimuli in terms of their acoustic richness and the breadth of the neural networks involved in their perception and learning (Zatorre, 2013). Neuroimaging studies of healthy subjects have demonstrated that music processing engages a vast bilateral network of temporal, frontal, parietal, cerebellar, and limbic/paralimbic areas associated with the perception of complex acoustic features (e.g., melody, rhythm), syntactic and semantic processing, attention and working memory, episodic and semantic memory, motor and rhythm processing, and experiencing emotions and reward (Blood and Zatorre, 2001Janata et al., 2002a,bPlatel et al., 2003Koelsch et al., 200420052006Menon and Levitin, 2005Bengtsson et al., 2009Salimpoor et al., 20112013Alluri et al., 2012;Herdene r et al., 2014; for recent reviews see, Koelsch, 20102011Zatorre, 2013). Evidence from VBM and DTI studies also indicates that frequent musical activities, such as playing an instrument or singing, can lead to long-term structural changes in the brain, especially in frontal, temporal, and parietal areas and in the WM pathways (e.g., corpus callosum, arcuate fasciculus) connecting them (Gaser and Schlaug, 2003Hyde et al., 2009Halwani et al., 2011James et al., 2014). Improvements in attention and executive functioning have also been reported in healthy older adults after regular music-playing activities, such as piano playing (Bugos et al., 2007). One longitudinal study also highlighted the role of playing musical instruments and dancing as leisure activities associated with a reduced risk of developing dementia (Verghese et al., 2003). Regarding the potential rehabilitative use of music after a stroke, results from recent clinical studies suggest that active music-based interventions that utilise singing (MIT) or instrument playing (music-supported therapy, MST) can be effective in improving speech and motor recovery through enhancing the functioning and connectivity of temporal auditory and frontal motor areas (Schlaug et al., 2008,2009Altenmüller et al., 2009Rojo et al., 2011Rodríguez-Fornells et al., 2012Grau-Sánchez et al., 2013). Very little, however, is known about the potential neuroplastic changes induced by everyday musical activities, such as music listening, after a stroke.
Previously, we performed a randomised controlled trial (RCT) concerning the potential rehabilitative effects of an enriched sound environment on stroke recovery. Sixty patients with an acute left (n = 29) or right (n = 31) hemisphere middle cerebral artery (MCA) brain infarction were randomised to a music group (MG) (daily listening to self-selected music), an audiobook group (ABG) (daily listening to self-selected audiobooks), and a control group (CG) (standard care only) and their recovery was followed for 6 months using behavioral measures (neuropsychological tests and questionnaires on mood), an auditory magnetoencephalography (MEG) measurement, and structural MRI. Fifty-four patients completed the whole 6-month follow-up. Behavioural results showed that verbal memory and focused attention improved more in the MG than in the ABG or CG after the intervention period at the 3-month follow-up and also remained better at the longitudinal 6-month follow-up (Särkämö et al., 2008), suggesting that regular music listening enhanced cognitive recovery. Compared to the CG, the MG also experienced less depressed and confused mood at the 3-month follow-up (Särkämö et al., 2008). MEG results showed that the mismatch negativity (MMN) response to frequency changes strengthened more in the MG and ABG compared to the CG at the 6-month follow-up, indicating that regular exposure to both music and speech enhanced early auditory encoding in the recovering brain (Särkämö et al., 2010a).
In the present study, our aim was to determine with a VBM analysis of the longitudinal structural MRI data (baseline acute stage and 6-month stage) from the same patient sample whether daily music listening could also lead to structural GM and WM reorganisation in the brain and if this change would also be related to the previously found positive effects of music on cognitive and emotional recovery after stroke.

Materials and Methods

Subjects and Study Design

Sixty stroke patients were recruited during 2004–2006 from the Department of Neurology of the Helsinki University Central Hospital (HUCH). All patients had an acute ischemic MCA stroke in the left (n = 29) or right (n = 31) temporal, frontal, parietal, or subcortical brain regions. Additional inclusion criteria were: no prior neurological/psychiatric disease, drug/alcohol abuse, or hearing deficit; right-handed; ≤75 years old; Finnish-speaking; and able to co-operate. Recruited patients were randomly assigned to one of three groups (n = 20 each): an MG, an ABG, or a CG. Randomisation was performed with a random number generator by a researcher not involved in the patient enrollment. The HUCH Ethics Committee approved the study, an, and all patients signed an informed consent. All patients received standard treatment for stroke in terms of medical care and rehabilitation.
During the follow-up, the patients underwent a neuropsychological assessment (including cognitive tests and questionnaires) and an auditory MEG measurement 1 week (baseline), 3 months, and 6 months post-stroke, and a structural MRI within 2 weeks of the stroke onset and 6 months post-stroke. Details regarding the methodology and results of the neuropsychological assessments and the MEG experiment are available in the prepreviouslyblished articles (Särkämö et al., 20082010a).
Of the 60 patients initially recruited into the study, 55 completed the study up to the 3-month stage and 54 up to the 6-month stage. For the longitudinal VBM analyses, appropriate MRI data were unavailable in three patients and the image quality was insufficient in two patients. Thus, data from 49 patients were used in the present study. Demographic and clinical characteristics, as well as the musical and linguistic activities of the patients, are shown in Tables 1 and 2, presented separately for the patients with left hemisphere damage (LHD, n = 23) and right hemisphere damage (RHD, n = 26). There were no significant differences between the MG, ACG, and CG on any demographic or clinical variables, prior musical or linguistic activities, or in other rehabilitation received during the 6-month follow-up,. In contrast, the frequency of listening to music and audiobooks differed highly significantly between the groups both at the 3-month and the 6-month stage. However, there were no statistically significant differences between the MG and ABG on how many hours per day the patients listened to the provided material (music in thaudiobooks books in the ABG) on average, although within the RHD, patients the daily listening amounts were slightly higher in the MG than in the ABG. These results indicate that the groups were comparable and that the intervention protocol worked well.
TABLE 1
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Table 1Demographic and clinical characteristics of the patients (n = 49).
TABLE 2
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Table 2Musical and linguistic activities of the patients (n = 49).

Intervention

As soon as possible after their enrollment to the study (mean 8.8 days post-stroke, range 3–21 days), the MG and ABG patients were individually contacted by a music therapist. In the MG, the therapist provided the patients with portable CD players and CDs of their favourite music in any musical genre (primarily popular music with lyrics but also jazz, folk, or classical music). Similarly, the therapist provided the ABG with portable players and self-selected narrated audiobooks. The patients were trained in using the players. They were instructed to listen to the material by themselves daily (for a minimum of 1 h per day) for the following 2 months in addition to standard care and rehabilitation. After this intervention period (3-month stage), they were encouraged to continue listening to the material on their own. To ensure that the patients could engage in the listening protocol, the therapist kept close weekly contact with the patients and the nurses and/or relatives of the patients were asked to help. The frequency frequency was verified from the listening diaries, which the patients kept during the intervention period and from questionnaires at the 3- and 6-month stages. The CG was not given any listening material and received only standard care and rehabilitation during the follow-up.

MRI Data Acquisition

Structural MRI was performed within 2 weeks of stroke onset and 6 months post-stroke using the 1.5 T Siemens Vision scanner of the HUCH Department of Radiology. Clinically, the MRI was used by two experienced neuroradiologists (authors Taina Autti and Heli M. Silvennoinen) to verify the stroke diagnosis and evaluate the lesion's size and locationNormalizing. The MRI sequence included a 3D set of high-resolution T1 images (TE = 3.68 ms, TR = 1900 ms, TI = 1100 ms, flip angle 15°, isotropic voxel size of 1 mm3), which were used in the present VBM analysis. In addition, also a smaller set of fluid-attenuated inversion recovery (2D FLAIR) images, which are sensitive to acute infarcts, were acquired and used in accurately locating the lesion area, especially in the acute stage.

Voxel-Based Morphometry Analysis

Morphometric analysis was carried out using VBM (Ashburner and Friston, 2000) and Statistical Parametric Mapping software (SPM8; The Welcome Department of Imaging Neuroscience, London) under MATLAB 7.8.0 (The MathWorks Inc., Natick, MA, USA). The normaliznormalisationn images is a prerequisite in any multi-subject voxel-wise MRI data analysis and is especially important when dealing with abnormal brains. To achieve an accurate segmentation and normalisation of lesioned GM and WM tissue, Unified Segmentation (Ashburner and Friston, 2005) with medium regularisation and cost function masking (CFM) was applied to the structural T1-weighted images of each subject (Brett et al., 2001). The cost function masks were defined by manually depicting binary lesion masks of the lesioned tissue for each patient at each time (acute and 6-month stage) using the MRIcron software package1 (Rorden and Brett, 2000). This technique has been widely used with patients suffering from stroke (Crinion et al., 2007Andersen et al., 2010Ripollés et al., 2012), achieving optimal normalisation with no post-registration lesion shrinkage or out-of-brain distortion (Ripollés et al., 2012). During normalisation, the GM and WM images were modulated to preserve the signal's total amountto. The resulting normalised GM and WM tissue probability maps were smoothed using an isotropic spatial filter (FWHM = 6 mm) to reduce residual inter-individual variability.
All normalised and smoothed GM and WM images were further analysed in order to compare the differences in the GMV or white matter volume (WMV). Because the processing of music and speech are generally known to involve the left and right hemispheres to a different degree (e.g., Zatorre et al., 2002Tervaniemi and Hugdahl, 2003) and they are therefore differentially affected by lesion laterality, we performed separate analyses for the LHD patients (MG: n = 7, ABG: n = 8, CG: n = 8) and the RHD patients (MG: n = 9, ABG: n = 10, CG: n = 7). Thus, four separate mixed-design analysis of variance (ANOVA) models (GMV–LHD, GMV–RHD, WMV–LHD, WMV–RHD) were built with Group (MG/ABG/CG) as a between-subjects variable and Time (acute stage/6-month stage) as a within-subjects variable (thereby ensuring that each subject acted as its own control). Total intracranial volume (TIV) was included as a nuisance variable to correct for global differences in head size. Three different Group × Time interactions were calculated: MG > CG and ABG, ABG > CG and MG, and CG > MG and ABG. In other words, we tested if the post–pre GMV increments more significantin one group (e.g., MG) were greater than in the other two groups (e.g., CG and ABG). In addition, post hoc paired t-tests were planned to check the direction of the effect of Time within each Group (6 months > acute). It has been suggested that combined intensity and cluster size thresholds such as p < 0.005 with a 10 voxel extent produce a desirable balance between Type I and Type II errors (Lieberman and Cunningham, 2009). Taking a slightly more stringent approach, the results are reported in tables at p < 0.001 (uncorrected threshold) with a cluster size of ≥50 voxels of spatFor the sake of visual clarity, results are shown in figures at p < 0.01 (uncorrected threshold), although only clusters reported in the tables are labeled and commented throughout the text. Anatomical and cytoarchitectonical areas were identified using the Automated Anatomical Labeling (Tzourio-Mazoyer et al., 2002) and the Talairach Daemon database atlases (Lancaster et al., 2000) included in the xjView toolbox2.
Finally, for any cluster of voxels where a significant Group × Time interaction was found, mean GMV or WMV increase (6 months − acute stage) was calculated for each patient and correlated with behavioural changes (6 months − acute stage) in cognitive tests and mood scales. For the cognitive measures, changes in the summary scores of the tests measuring the following cognitive domains were included: verbal memory, short-term and working memory, language skills, visuospatial cognition, executive functions, focused attention (correct responses and reaction times), and sustained attention (correct responses and reactions times; for details, see Särkämö et al., 2008). Similarly, for the mood measures, changes in the eight Profile of Mood States (POMS) scales (tension, depression, irritability, vigour, fatigue, inertia, confusion, and forgetfulness) were included (for details, see Särkämö et al., 2008).

Results

Gray and White Matter Volume Changes during Recovery

Significant GMV increases were found post-intervention (6 months − acute) for all three groups of LHD patients (see Table 3; Figure 1) and RHD patients (see Table 4; Figure 2). Areas identified were primarily located in the temporal, frontal, motor, limbic, and cerebellar brain regions, especially in the contralesional hemisphere, with the most significant and most extensive volume increases occurring in the MG.
TABLE 3
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Table 3GMV increases (6-month − acute) in LHD patients (n = 23).
FIGURE 1
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Figure 1. GMV increases (6-month − acute) in LHD patients (n = 23). Lesionindicates the number of patients with damage at a particular voxel, and GMV increases within the three groups, whichee groups are shown in blue–green–red and red–yellow, respectively. Neurological convention is used. Results are shown at p < 0.01 (uncorrected) with ≥50 voxels of spatial extent and overlaid over a canonical template with MNI coordinates at the bottom right of each slice. Only clusters surviving a p < 0.001 thresholds are labelled (see also Table 3). TP, temporal pole; PCG, posterior cingulate gyrus; Cr, cerebellum; PrCG, precentral gyrus; Calc, calcarine; Prec, precuneus; SFG, superior frontal gyrus; VS, ventral striatum; IFG, inferior frontal gyrus; SACC, ventral/subgenual anterior cingulate cortex; OFC, orbitofrontal cortex; FfG, fusiform gyrus; L, left hemisphere; R, right hemisphere.
TABLE 4
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Table 4GMV increases (6-month − acute) in RHD patients (n = 26).
FIGURE 2
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Figure 2. GMV increases (6-month − acute) in RHD patients (n = 26). Lesion overlap indicates the number of patients with damage at a particular voxel, and GMV increases within the three groups, which are shown in blue–green–red and red–yellow, respectively. Neurological convention is used. Results are shown at p < 0.01 (uncorrected) with ≥50 voxels of spatial extent and overlaid over a canonical template with MNI coordinates at the bottom right of each slice. Only clusters surviving a p < 0.001 thresholds are labelled (see Table 4). SMG, supramarginal gyrus; Th, thalamus; ITG, inferior temporal gyrus; Bstm, brainstem; MCG, middle cingulate gyrus; PCG, posterior cingulate gyrus; Cr, cerebellum; PrCG, precentral gyrus; In, insula; PoCG, postcentral gyrus; IFG, inferior frontal gyrus; MTG, middle temporal gyrus; FfG, fusiform gyrus; L, left hemisphere; R, right hemisphere.
In LHD patients, significant Group × Time interactions in GMV were found for the MG > ABG and CG contrast (see Table 5; Figure 3) in five different clusters: three in frontal areas [left and right superior frontal gyrus (SFG) and right medial SFG] and two in limbic areas [left ventral/subgenual anterior cingulate cortex (SACC) and right ventral striatum (VS) / globus pallidum). The reversed contrasts (ABG > CG and MG, CG > MG and ABG) yielded no significant regions.
TABLE 5
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Table 5GMV increases (6-month − acute) in the MG compared to the ABG and CG (LHD patients).
FIGURE 3
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Figure 3. GMV increases (6-month − acute) in the MG compared to the ABG and CG (LHD patients). Blue-green–red: lesion overlap indicating the number of patients showing damage at a particular voxel. Red–yellow: GMV increases for the MG compared to the ABG and CG (Group × Time interaction, MG > ABG and CG contrast). Bar graphs indicate GMV increases (mean ± SEM) for each cluster showing an interaction effect (white: CG, grey: ABG, black: MG). Neurological convention is used. Results are shown at p < 0.01 (uncorrected) with ≥50 voxels of spatial extent and overlaid over a canonical template with MNI coordinates at the bottom right of each slice (see also Table 5). L, left hemisphere.
RHD patients had no significant Group × Time interactions in GMV in any area at the selected threshold (p < 0.001 uncorrected). However, when using a slightly more lenient threshold (p< 0.005 uncorrected), a single cluster emerged in the left insula (MNI −33 −6 −8; 73 voxels of extent; t(22) = 3.36) for the MG > ABG and CG contrast (see Figure 4). Again, no other clusters were found using the reversed contrasts (ABG > CG and MG, CG > MG and ABG) at this same threshold.
FIGURE 4
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Figure 4. GMV increases (6-month − acute) in the MG compared to the ABG and CG (RHD patients). Blue–green–Blue-greenn overlap indicating the number of patients showing damage at a particular voxel. Red–yellow: GMV increases for the MG compared to the ABG and CG (Group × Time interaction, MG > ABG, and CG contrast). Bar graphs (left) indicate GMV increases (mean ± SEM) for the only cluster (left insula) showing an interaction effect (white: CG, grey: ABG, black: MG). The scatter plot (right) shows the relationship between GMV increase in the insula cluster and improvement in language skills. Neurological convention is used. Results are shown at p < 0.01 (uncorrected) with ≥50 voxels of spatial extent and overlaid over a canonical template with MNI coordinates at the bottom right of each slice. L, left hemisphere.
There were no significant Time effects or Group × Time interactions in the WMV in LHD or RHD patients.

Correlation between Gray Matter Changes and Behavioral Recovery

To determine the functional relevance of the observed GMV increases induced by the music listening intervention, we performed correlation analyses with the longitudinal behavioural data (also 6 months − acute). In LHD patients, the increase in GMV in the identified frontal areas correlated significantly with improvement in verbal memory, language skills, and focused attention (see Table 6 for individual cluster correlations; in Figure 5, the frontal clusters are pooled together for illustrative purposes). Similarly, an increase in GMV in the limbic regions (left SACC) was significantly correlated with a decrease in self-reported depression, tension, fatigue, forgetfulness, and irritability and marginally correlated also with a reduction in self-reported confusion. In RHD patients, the GMV increases in the left insula cluster were also found to correlate with improving language skills (r = 0.63, p < 0.002; Figure 4). There were no other significant correlations.
TABLE 6
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Table 6Correlation between GMV increase and behavioural change (6-month − acute) in LHD patients.
FIGURE 5
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Figure 5. Correlation between GMV increase and behavioural change (6-month − acute) in LHD patients. Red–yellow: GMV increases for the MG compared to the ABG and CG (Group × Time interaction). Scatter plots show the relationship between GMV increases and improvements in mood (left ventral/subgenual anterior cingulate cluster) and cognitive variables (three frontal clusters pooled together). Neurological convention is used. Results are shown at p < 0.01 (uncorrected) with ≥50 voxels of spatial extent and overlaid over a canonical template with MNI coordinates at the bottom right of each slice (see also Table 6). L, left hemisphere.

Discussion

The novel key finding of the present VBM study was that regular music listening during the 6-month post-stroke stage can lead to structural reorganisation in the recovering brain. Specifically, compared with patients who listened daily to audiobooks (ABG) or who did not receive any additional listening material (CG), the patients who listened daily to their own favourite music (MG) showed more increase in GMV from the acute to the 6-month stage in a network of frontolimbic areas, primarily in the healthy contralesional side but also perilesionally. Significantly, the observed GMV increases in this network were directly associated with the behavioural improvement in cognitive functioning and reduction in negative mood shown previously for music listening (Särkämö et al., 2008Forsblom et al., 2012). The area-specific correlations obtained (attention, memory, and language for frontal areas; mood for limbic regions), the lack of differences in the reversed contrasts (ABG > CG and MG, CG > MG and ABG), and the fact that effects emerge in areas that have previously been found to be closely associated with music processing and cognitive/emotional processing (see below), argue against our results being false positives. Moreover, given that the patient groups were comparable at baseline and the potential effects of other types of rehabilitation (standard stroke rehabilitation) and activities (audiobook listening) were controlled for, these findings suggest that a musically enriched environment can be beneficial for acute stroke recovery and that neuroplastic changes in the frontolimbic network may underlie its efficacy.
In the present study, the frontal GMV increases associated with music listening in LHD patients were located in the left and right SFG and the right medial SFG and correlated with improved verbal memory, language skills, and focused attention over the 6-month follow-up. These correlations align with the previous findings of the study showing that music listening enhanced the recovery of verbal memory and focused attention more than audiobook listening or standard care both 3 and 6 months post-stroke (Särkämö et al., 2008). In addition, in the original data (n = 54), there was also a slight trend toward a group difference in the domain of language [mixed-model ANOVA, Group × Time interaction, F(2.4, 51.9) = 2.2, p = 0.108)] over the 6-month follow-up, with more improvement in the MG than in the ABG (p = 0.096), suggesting that the correlation between GMV and language skills is also meaningful. In previous MEG and fMRI studies on music, the activity of the SFG has been linked to melody discrimination and production (Brown et al., 2006Lappe et al., 2013), processing the emotional valence of music (Escoffier et al., 2013), and musical episodic memory (Platel et al., 2003). Cognitively, evidence from neuroimaging and lesion studies suggests that the SFG is involved in many domain-general cognitive functions, such as attention and working memory (du Boisgueheneuc et al., 2006Huang et al., 2013), and together with the dorsal anterior cingulate cortex (DACC) it forms one key component of the salience/central executive network (Dosenbach et al., 2008). Interestingly, the DACC/SFG area also seems to have a role in language processing, including internally generated speech (Blank et al., 2003), and its activity has recently been linked to aphasia recovery (Brownsett et al., 2014). Structural and functional changes in the SFG have also been reported following meditation practice (Kang et al., 2013) and cognitive training (Hoekzema et al., 2010), suggesting that changes in SFG are associated with improved cognition.
In addition to the frontal areas, we also found GMV increases induced by music listening in LHD patients in two limbic regions: the left SACC and the right VS. Moreover, the GMV increase in the left SACC correlated with the reduction of negative mood (depression, confusion, tension, fatigue, forgetfulness, and irritability) in the POMS questionnaire. Again, this finding is well in line with our previous behavioural results showing that music listening reduced depression and confusion more than standard care (Särkämö et al., 2008) and was also subjectively associated with better relaxation and positive mood than audiobook listening (Forsblom et al., 2012). Generally, the VS is considered to be a vital part of the neural circuitry for reward and pleasure, and its dysfunction is associated with anhedonia, a hallmark symptom of depression (Der-Avakian and Markou, 2012;Esling er et al., 2012). The nucleus accumbens (NAc) and parts of the caudate nucleus and putamen, the dopaminergic VS, have been strongly implicated in neuroimaging studies as underlying the emotional experience of music (Blood and Zatorre, 2001Brown et al., 2004Menon and Levitin, 2005Koelsch et al., 2006Mitterschiffthaler et al., 2007Montag et al., 2011Salimpoor et al., 2011,2013). fMRI studies have also implicated the anterior cingulate in processing musical emotions (Brown et al., 2004Mitterschiffthaler et al., 2007Green et al., 2008Janata, 2009Escoffier et al., 2013), musical preferences (Berns et al., 2010Kitayama et al., 2013), rhythm and melody perception (Jerde et al., 2011Lee et al., 2011) and production (Brown et al., 2006Berkowitz and Ansari, 2008), and singing (Kleber et al., 2007Zarate and Zatorre, 2008). Generally, the ventral-rostral part of the ACC has a regulatory role in generating emotional responses, and its abnormal functioning has been linked to many psychiatric conditions (Etkin et al., 2011). In depressed patients, the activity of both the ACC and the VS to pleasant music is reduced compared to healthy controls (Osuch et al., 2009Aust et al., 2013). In VBM studies, GM loss in the ACC has been linked to impaired recognition of musical emotions in frontotemporal dementia (Omar et al., 2011) and has also been documented as a critical neuroanatomical component in the aetiology of major depression (Grieve et al., 2013Lai, 2013).
One possible interpretation for the increase in GMV in the subgenual part of the ACC could be related to the role of this subregion in affective appraisal, integration of emotional and motivational states, self-referential mental processing, and introspective thought (Northoff and Bermpohl, 2004Vago and Silbersweig, 2012). Interestingly, Greicius et al. (2007) found using PET that the resting-state SACC activity was linked to the default-mode network in depressed patients and also correlated with the length of the depressive episode. In a recent fMRI study (Yoshimura et al., in press), the activity of the medial prefrontal cortex and ventral ACC during a task of self-referential processing of positive emotional trait words was also observed to increase in depressed patients following cognitive behavioural therapy (CBT), suggesting that these areas are also linked to the amelioration of depression. Thus, given that pleasant and autobiographically salient music can activate the ventral ACC (Janata, 2009) and that music listening was also observed to evoke thoughts and memories about the past and improve mood in stroke patients (Forsblom et al., 2012), it is possible that positive self-referential emotional processing associated with music listening could be driving the observed structural enhancement of the SACC and the concurrent reduction in depressed mood.
Within the RHD subgroup of patients, we observed more GMV increase in the MG compared to the other groups in a single contralesional (left) cluster in the insula, which also correlated with the recovery of language skills. Since this was seen only using a slightly less stringent statistical threshold (p < 0.005 uncorrected) and the RHD–MG listened to the intervention material somewhat more often than the RHD–ABG (p = 0.076), this result should thus be interpreted with some caution. Although less is known about the specific role of the insula in music or language, current evidence from neuroimaging links it to the affective processing of music (Brown et al., 2004Menon and Levitin, 2005Koelsch et al., 2006Montag et al., 2011Omar et al., 2011Trost et al., 2012) and voice (Blasi et al., 2011), musical creativity and improvisation (Brown et al., 2006Engel and Keller, 2011;Villarreal  et al., 2013), and perception of melody (Wehrum et al., 2011) and chords (Koelsch et al., 2005) as well as to verbal functions, especially speech articulation (Ackermann and Riecker, 2010Price, 2010Baldo et al., 2011). Overall, there was less music-induced GM reorganisation in RHD patients than in LHD patients. One reason for this could be that the lesions in the right hemisphere were, on average, larger and more extensive than in the left hemisphere (p = 0.044). Coupled with the fact that there is a level of right hemisphere dominance for music processing (Zatorre et al., 2002Tervaniemi and Hugdahl, 2003) and, consequently, the majority of the RHD patients had some degree of amusia (see Särkämö et al., 20092010b), it is possible that the music was not to able to engage the musical brain network in RHD patients to the same degree as in LHD patients. In addition, our sample size was relatively small (26 RHD patients and 23 LHD patients). There was also considerable variability in the location and size of the lesions (see Figures 1 and 2, top row), which together can affect the sensitivity of the VBM analysis to detect potential volumetric changes over time, especially in the lesioned hemisphere. Thus, more extensive studies with more homogenous lesion characteristics are called for in the future to verify and extend the current findings.
In general, the exact anatomical nature of the GM and WM changes observed with the VBM method is still not understood v. Inell - in VBM, a change in “volume” essentially refers to a change in GM intensity in the images (not the actual volume of neurons, for instance) and is therefore non-specific concerning the underlying tissue characteristics. According to the current view, the potential mechanisms for GM reorganisation include axon sprouting, dendritic branching and synaptogenesis, neurogenesis, glial number and morphology changes,, and angiogenesis (Zatorre et al., 2012). These cellular changes as well as changes in neurotrophic and neural growth factor levels, have been documented also in animal studies of post-stroke EE (Biernaskie and Corbett, 2001Johansson and Belichenko, 2002Gobbo and O’Mara, 2004Komitova et al., 2005Matsumori et al., 2006Söderström et al., 2009) and auditory EE in healthy developing animals (Engineer et al., 2004;Angelucc i et al., 2007Nichols et al., 2007Bose et al., 2010), providing experimental support for the enhanced cerebral reorganization induced by the musically enriched recovery environment in the present study.
In conclusion, the present study shows that daily music listening during the first month post-stroke stage can lead to fine-grained structural reorganization (as indicated by increased GMV) in a network of frontolimbic brain areas. Importantly, given that the frontolimbic plastic changes were also directly related to the cognitive and emotional recovery previously shown to be enhanced by music (Särkämö et al., 2008Forsblom et al., 2012), these findings provide a plausible neuroanatomical correlate for the efficacy of music after stroke. At a more general level, they also provide the first evidence in humans that not only active therapist-led rehabilitation but also environmental enrichment has the potential to shape the structure of the recovering brain.

Conflict of Interest Statement

The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.

Acknowledgments

We wish to express our gratitude to the staff of the HUCH Department of Neurology and Department of Radiology and other rehabilitation hospitals in the Helsinki metropolitan area for their collaboration, and especially to the patient subjects and their families for their participation and effort. We also wish to thank Mari Tervaniemi, Isabelle Peretz, Matti Laine, and Marja Hietanen for their assistance and expertise in planning the study. This work was funded by the Academy of Finland (grants no 77322, 141106, and 257077), the Jenny and Antti Wihuri Foundation (Helsinki, Finland), the National Doctoral Programme on Psychology (Finland), and the Finnish Brain Foundation.

Footnotes

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Keywords: music, speech, stroke, magnetic resonance imaging, voxel-based morphometry, environmental enrichment, neuroplasticity, rehabilitation
Citation: Särkämö T, Ripollés P, Vepsäläinen H, Autti T, Silvennoinen HM, Salli E, Laitinen S, Forsblom A, Soinila S and Rodríguez-Fornells A (2014) Structural changes induced by daily music listening in the recovering brain after middle cerebral artery stroke: a voxel-based morphometry study. Front. Hum. Neurosci. 8:245. doi: 10.3389/fnhum.2014.00245
Received: 30 January 2014; Accepted: 03 April 2014;
Published online: 17 April 2014.
Edited by:
Eckart Altenmüller, University of Music and Drama Hannover, Germany
Reviewed by:
Jens Dieter Rollnik, BDH-Klinik Hessisch Oldendorf, Germany
Bernhard Haslinger, Technische Universität München, Germany
Copyright: © 2014 Särkämö, Ripollés, Vepsäläinen, Autti, Silvennoinen, Salli, Laitinen, Forsblom, Soinila and Rodríguez-Fornells. This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) or licensor are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
*Correspondence: Teppo Särkämö, Cognitive Brain Research Unit, Cognitive Science, Institute of Behavioural Sciences, University of Helsinki, Siltavuorenpenger 1B, P.O. Box 9, Helsinki FI-00014, Finland e-mail: teppo.sarkamo@helsinki.fi
thanks http://journal.frontiersin.org/

Your Low Tolerance For Pain Can Be Blamed On Your Genes

"Our study is quite significant because it provides an objective way to understand pain and why different individuals have different pain tolerance levels," study leader Tobore Onojjighofia said. "Identifying whether a person has these four genes could help doctors better understand a patient's perception of pain."
In the analysis, scientists found a greater prevalence of the DRD1gene variant among those who reported low pain perception, seen 33 percent more than otherwise. Likewise, the COMT and OPRK variants were found 25 percent and 19 percent more often among those with moderate pain compared to those with high pain. And the DRD2 variant appeared 25 percent more often among those with the highest pain perception compared to those with moderate pain. Onojjighofia presented the findings to the American Academy of Neurology’s annual meeting.

How Do Certain Smells Bring About Special Memories?

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Coordination between the areas of the brain responsible for memory and smell allow us to remember an event when we smell something familiar later on. Photo courtesy of Shutterstock
The researchers set out to determine how the two neuronal pathways — for smell and memory — converged to create these unique memories. They fitted a group of mice with electrodes on their hippocampus and different parts of the entorhinal cortex, both of which are involved in memory consolidation, with the latter also being responsible for receiving input from the senses. They then had the mice run through a maze containing holes big enough for their noses to peak through. When they smelled what was on the other side, they were given two different smells, of which one told them the direction that food was in. After three weeks, 85 percent of the rats were able to determine, based on smell and memory, where to go for a reward.
They found that the more the rats became familiar with the maze’s purpose, their brain waves began to synchronize. “Immediately after the rat was exposed to the smell there is a burst in activity of 20 Hz waves in a specific connection between an area of the entorhinal cortex, lateral entorhinal cortex, and an area in the hippocampus,” called distal CA1, Igarashi said in the statement. The same activity was not seen at a comparable strength anywhere else in the brain.
Igarashi K, Lu L, Colgin L, et al. Coordination of entorhinal–hippocampal ensemble activity during associative learning. Nature. 2014.

Meaningful Activities Protect the Brain From Depression

"Aristotle famously said there were two basic types of joy: hedonia, or that keg-standing, Netflix binge-watching, Nutella-from-the-jar selfish kind of pleasure, and eudaimonia, or the pleasure that comes from helping others, doing meaningful work, and otherwise leading a life well-lived... Recent psychological research has suggested that this second category is more likely to produce a lasting increase in happiness."
A new study of adolescents found that those who derive joy from selfless deeds were less likely to be depressed over time.



Depressive symptoms declined among teens who made the selfless decision (left), but they rose in teens who made selfish decision (right). (PNAS)

It turned out the teens who had the greatest brain response to the generous, family-donation financial decision had the greatest declines in depressive symptoms over time. And those who got a boost from the risk-taking game were more likely to have an increase in depression. The types of rewards the teens responded to, it seems, changed their behavior in ways that altered their overall well-being.
thanks http://www.theatlantic.com/ 

Aerial photo of an epic battle between hippos & crocodiles