16 research outputs found
Predicting aging-related decline in physical performance with sparse electrophysiological source imaging
Objective: We introduce a methodology for selecting biomarkers from
activation and connectivity derived from Electrophysiological Source Imaging
(ESI). Specifically, we pursue the selection of stable biomarkers associated
with cognitive decline based on source activation and connectivity patterns of
resting-state EEG theta rhythm, used as predictors of physical performance
decline in aging individuals measured by a Gait Speed (GS) slowing. Methods:
Our two-step methodology involves estimating ESI using flexible
sparse-smooth-nonnegative models, from which activation ESI (aESI) and
connectivity ESI (cESI) features are derived. The Stable Sparse Classifier
method then selects potential biomarkers related to GS changes. Results and
Conclusions: Our predictive models using aESI outperform traditional methods
such as the LORETA family. The models combining aESI and cESI features provide
the best prediction of GS changes. Potential biomarkers from
activation/connectivity patterns involve orbitofrontal and temporal cortical
regions. Significance: The proposed methodology contributes to the
understanding of activation and connectivity of GS-related ESI and provides
features that are potential biomarkers of GS slowing. Given the known
relationship between GS decline and cognitive impairment, this preliminary work
opens novel paths to predict the progression of healthy and pathological aging
and might allow an ESI-based evaluation of rehabilitation programs
Clinical and Electrophysiological Differences between Subjects with Dysphonetic Dyslexia and Non-Specific Reading Delay
Reading is essentially a two-channel function, requiring the integration of intact visual and auditory processes both peripheral and central. It is essential for normal reading that these component processes go forward automatically. Based on this model, Boder described three main subtypes of dyslexia: dysphonetic dyslexia (DD), dyseidetic, mixed and besides a fourth group defined non-specific reading delay (NSRD). The subtypes are identified by an algorithm that considers the reading quotient and the % of errors in the spelling test. Chiarenza and Bindelli have developed the Direct Test of Reading and Spelling (DTRS), a computerized, modified and validated version to the Italian language of the Boder test. The sample consisted of 169 subjects with DD and 36 children with NSRD. The diagnosis of dyslexia was made according to the DSM-V criteria. The DTRS was used to identify the dyslexia subtypes and the NSRD group. 2–5 min of artefact-free EEG (electroencephalogram), recorded at rest with eyes closed, according to 10–20 system were analyzed. Stability based Biomarkers identification methodology was applied to the DTRS and the quantitative EEG (QEEG). The reading quotients and the errors of the reading and spelling test were significantly different in the two groups. The DD group had significantly higher activity in delta and theta bands compared to NSRD group in the frontal, central and parietal areas bilaterally. The classification equation for the QEEG, both at the scalp and the sources levels, obtained an area under the robust Receiver Operating Curve (ROC) of 0.73. However, we obtained a discrimination equation for the DTRS items which did not participate in the Boder classification algorithm, with a specificity and sensitivity of 0.94 to discriminate DD from NSRD. These results demonstrate for the first time the existence of different neuropsychological and neurophysiological patterns between children with DD and children with NSRD. They may also provide clinicians and therapists warning signals deriving from the anamnesis and the results of the DTRS that should lead to an earlier diagnosis of reading delay, which is usually very late diagnosed and therefore, untreated until the secondary school level
Spectral Analysis of EEG in Familial Alzheimerâs Disease with E280A Presenilin-1 Mutation Gene
To evaluate the hypothesis that quantitative EEG (qEEG) analysis is susceptible to detect early functional changes in familial Alzheimer's disease (AD) preclinical stages. Three groups of subjects were selected from five extended families with hereditary AD: a Probable AD group (18 subjects), an asymptomatic carrier (ACr) group (21 subjects), with the mutation but without any clinical symptoms of dementia, and a normal group of 18 healthy subjects. In order to reveal significant differences in the spectral parameter, the Mahalanobis distance (D2) was calculated between groups. To evaluate the diagnostic efficiency of this statistic D2, the ROC models were used. The ROC curve was summarized by accuracy index and standard deviation. The D2 using the parameters of the energy in the fast frequency bands shows accurate discrimination between normal and ACr groups (area ROC = 0.89) and between AD probable and ACr groups (area ROC = 0.91). This is more significant in temporal regions. Theses parameters could be affected before the onset of the disease, even when cognitive disturbance is not clinically evident. Spectral EEG parameter could be firstly used to evaluate subjects with E280A Presenilin-1 mutation without impairment in cognitive function
Flanker Task-Elicited Event-Related Potential Sources Reflect Human Recombinant Erythropoietin Differential Effects on Parkinsonâs Patients
We used EEG source analysis to identify which cortical areas were involved in the automatic and controlled processes of inhibitory control on a flanker task and compared the potential efficacy of recombinant-human erythropoietin (rHuEPO) on the performance of Parkinsonâs Disease patients. The samples were 18 medicated PD patients (nine of them received rHuEPO in addition to their usual anti-PD medication through random allocation and the other nine patients were on their regular anti-PD medication only) and 9 age and education-matched healthy controls (HCs) who completed the flanker task with simultaneous EEG recordings. N1 and N2 event-related potential (ERP) components were identified and a low resolution tomography (LORETA) inverse solution was employed to localize the neural generators. Reaction times and errors were increased for the incongruent flankers for PD patients compared to controls. EEG source analysis identified an effect of rHuEPO on the lingual gyri for the early N1 component. N2-related sources in middle cingulate and precuneus were associated with the inhibition of automatic responses evoked by incongruent stimuli differentiated PD and HCs. From our results rHuEPO seems to mediate an effect on N1 sources in lingual gyri but not on behavioural performance. N2-related sources in middle cingulate and precuneus were evoked by incongruent stimuli differentiated PD and HCs
Relation of Brain Perfusion Patterns to Sudden Unexpected Death Risk Stratification: A Study in Drug Resistant Focal Epilepsy
To explore the role of the interictal and ictal SPECT to identity functional neuroimaging biomarkers for SUDEP risk stratification in patients with drug-resistant focal epilepsy (DRFE). Twenty-nine interictal-ictal Single photon emission computed tomography (SPECT) scans were obtained from nine DRFE patients. A methodology for the relative quantification of cerebral blood flow of 74 cortical and sub-cortical structures was employed. The optimal number of clusters (K) was estimated using a modified v-fold cross-validation for the use of K means algorithm. The two regions of interest (ROIs) that represent the hypoperfused and hyperperfused areas were identified. To select the structures related to the SUDEP-7 inventory score, a data mining method that computes an automatic feature selection was used. During the interictal and ictal state, the hyperperfused ROIs in the largest part of patients were the bilateral rectus gyrus, putamen as well as globus pallidus ipsilateral to the seizure onset zone. The hypoperfused ROIs included the red nucleus, substantia nigra, medulla, and entorhinal area. The findings indicated that the nearly invariability in the perfusion pattern during the interictal to ictal transition observed in the ipsi-lateral putamen F = 12.60, p = 0.03, entorhinal area F = 25.80, p = 0.01, and temporal middle gyrus F = 12.60, p = 0.03 is a potential biomarker of SUDEP risk. The results presented in this paper allowed identifying hypo- and hyperperfused brain regions during the ictal and interictal state potentially related to SUDEP risk stratification
The Cuban Human Brain Mapping Project, a young and middle age population-based EEG, MRI, and cognition dataset
Measurement(s) functional brain measurement Technology Type(s) electroencephalography (EEG) ⢠magnetic resonance imaging (MRI) ⢠neuropsychological testing Factor Type(s) age of participants ⢠gender of participants ⢠handedness of participants ⢠educational level of participants Sample Characteristic - Organism Homo sapiens Sample Characteristic - Location Cuba Machine-accessible metadata file describing the reported data: https://doi.org/10.6084/m9.figshare.1327734
Spectral quantitative and semi-quantitative EEG provide complementary information on the life-long effects of early childhood malnutrition on cognitive decline
Objective: This study compares the complementary information from semiquantitative
EEG (sqEEG) and spectral quantitative EEG (spectral-qEEG) to detect
the life-long effects of early childhood malnutrition on the brain.
Methods: Resting-state EEGs (N = 202) from the Barbados Nutrition Study (BNS)
were used to examine the effects of protein-energy malnutrition (PEM) on childhood
and middle adulthood outcomes. sqEEG analysis was performed on Grand Total EEG
(GTE) protocol, and a single latent variable, the semi-quantitative Neurophysiological
State (sqNPS) was extracted. A univariate linear mixed-effects (LME) model tested
the dependence of sqNPS and nutritional group. sqEEG was compared with scores
on the Montreal Cognitive Assessment (MoCA). Stable sparse classifiers (SSC) also
measured the predictive power of sqEEG, spectral-qEEG, and a combination of both.
Multivariate LME was applied to assess each EEG modality separately and combined
under longitudinal settings.
Results: The univariate LME showed highly significant differences between
previously malnourished and control groups (p < 0.001); age (p = 0.01) was also
significant, with no interaction between group and age detected. Childhood
sqNPS (p = 0.02) and adulthood sqNPS (p = 0.003) predicted MoCA scores in
adulthood. The SSC demonstrated that spectral-qEEG combined with sqEEG had
the highest predictive power (mean AUC 0.92 Âą 0.005). Finally, multivariate LME
showed that the combined spectral-qEEG+sqEEG models had the highest loglikelihood
(â479.7).
Conclusion: This research has extended our prior work with spectral-qEEG and the long-term impact of early childhood malnutrition on the brain. Our findings showed that sqNPS was significantly linked to accelerated cognitive aging at 45â51 years of age. While sqNPS and spectral-qEEG produced comparable results, our study indicated that combining sqNPS and spectral-qEEG yielded better performance than either method alone, suggesting that a multimodal approach could be advantageous for future investigations.
Significance: Based on our findings, a semi-quantitative approach utilizing GTE could be a valuable diagnostic tool for detecting the lasting impacts of childhood malnutrition. Notably, sqEEG has not been previously explored or reported as a biomarker for assessing the longitudinal effects of malnutrition. Furthermore, our observations suggest that sqEEG offers unique features and information not captured by spectral quantitative EEG analysis and could lead to its improvementThis research was supported by grants from Nestle Foundation (to MB-V and PV-S, Validation of a long-life neural fingerprint of early malnutrition, 2017), National Institutes of Health (HD060986 to JG), the University of Electronic Sciences and Technology grant Y03111023901014005 and Chengdu Science and Technology Bureau Program under Grant 2022-GH02â00042-HZ to carry out this researc
Harmonized-Multinational qEEG norms (HarMNqEEG)
This paper extends frequency domain quantitative electroencephalography (qEEG) methods pursuing higher sensitivity to detect Brain Developmental Disorders. Prior qEEG work lacked integration of cross-spectral information omitting important functional connectivity descriptors. Lack of geographical diversity precluded accounting for site-specific variance, increasing qEEG nuisance variance. We ameliorate these weaknesses. (i) Create lifespan Riemannian multinational qEEG norms for cross-spectral tensors. These norms result from the HarMNqEEG project fostered by the Global Brain Consortium. We calculate the norms with data from 9 countries, 12 devices, and 14 studies, including 1564 subjects. Instead of raw data, only anonymized metadata and EEG cross-spectral tensors were shared. After visual and automatic quality control, developmental equations for the mean and standard deviation of qEEG traditional and Riemannian DPs were calculated using additive mixed-effects models. We demonstrate qEEG "batch effects" and provide methods to calculate harmonized z-scores. (ii) We also show that harmonized Riemannian norms produce z-scores with increased diagnostic accuracy predicting brain dysfunction produced by malnutrition in the first year of life and detecting COVID induced brain dysfunction. (iii) We offer open code and data to calculate different individual z-scores from the HarMNqEEG dataset. These results contribute to developing bias-free, low-cost neuroimaging technologies applicable in various health settings
Table_1_Spectral quantitative and semi-quantitative EEG provide complementary information on the life-long effects of early childhood malnutrition on cognitive decline.XLSX
ObjectiveThis study compares the complementary information from semi-quantitative EEG (sqEEG) and spectral quantitative EEG (spectral-qEEG) to detect the life-long effects of early childhood malnutrition on the brain.MethodsResting-state EEGs (N = 202) from the Barbados Nutrition Study (BNS) were used to examine the effects of protein-energy malnutrition (PEM) on childhood and middle adulthood outcomes. sqEEG analysis was performed on Grand Total EEG (GTE) protocol, and a single latent variable, the semi-quantitative Neurophysiological State (sqNPS) was extracted. A univariate linear mixed-effects (LME) model tested the dependence of sqNPS and nutritional group. sqEEG was compared with scores on the Montreal Cognitive Assessment (MoCA). Stable sparse classifiers (SSC) also measured the predictive power of sqEEG, spectral-qEEG, and a combination of both. Multivariate LME was applied to assess each EEG modality separately and combined under longitudinal settings.ResultsThe univariate LME showed highly significant differences between previously malnourished and control groups (p ConclusionThis research has extended our prior work with spectral-qEEG and the long-term impact of early childhood malnutrition on the brain. Our findings showed that sqNPS was significantly linked to accelerated cognitive aging at 45â51âyears of age. While sqNPS and spectral-qEEG produced comparable results, our study indicated that combining sqNPS and spectral-qEEG yielded better performance than either method alone, suggesting that a multimodal approach could be advantageous for future investigations.SignificanceBased on our findings, a semi-quantitative approach utilizing GTE could be a valuable diagnostic tool for detecting the lasting impacts of childhood malnutrition. Notably, sqEEG has not been previously explored or reported as a biomarker for assessing the longitudinal effects of malnutrition. Furthermore, our observations suggest that sqEEG offers unique features and information not captured by spectral quantitative EEG analysis and could lead to its improvement.</p