| Literature DB >> 34035103 |
Bernhard Grässler1, Fabian Herold2, Milos Dordevic2, Tariq Ali Gujar3, Sabine Darius4, Irina Böckelmann4, Notger G Müller2,5, Anita Hökelmann3.
Abstract
INTRODUCTION: The diagnosis of mild cognitive impairment (MCI), that is, the transitory phase between normal age-related cognitive decline and dementia, remains a challenging task. It was observed that a multimodal approach (simultaneous analysis of several complementary modalities) can improve the classification accuracy. We will combine three noninvasive measurement modalities: functional near-infrared spectroscopy (fNIRS), electroencephalography and heart rate variability via ECG. Our aim is to explore neurophysiological correlates of cognitive performance and whether our multimodal approach can aid in early identification of individuals with MCI. METHODS AND ANALYSIS: This study will be a cross-sectional with patients with MCI and healthy controls (HC). The neurophysiological signals will be measured during rest and while performing cognitive tasks: (1) Stroop, (2) N-back and (3) verbal fluency test (VFT). Main aims of statistical analysis are to (1) determine the differences in neurophysiological responses of HC and MCI, (2) investigate relationships between measures of cognitive performance and neurophysiological responses and (3) investigate whether the classification accuracy can be improved by using our multimodal approach. To meet these targets, statistical analysis will include machine learning approaches.This is, to the best of our knowledge, the first study that applies simultaneously these three modalities in MCI and HC. We hypothesise that the multimodal approach improves the classification accuracy between HC and MCI as compared with a unimodal approach. If our hypothesis is verified, this study paves the way for additional research on multimodal approaches for dementia research and fosters the exploration of new biomarkers for an early detection of nonphysiological age-related cognitive decline. ETHICS AND DISSEMINATION: Ethics approval was obtained from the local Ethics Committee (reference: 83/19). Data will be shared with the scientific community no more than 1 year following completion of study and data assembly. TRIAL REGISTRATION NUMBER: ClinicalTrials.gov, NCT04427436, registered on 10 June 2020, https://clinicaltrials.gov/ct2/show/study/NCT04427436. © Author(s) (or their employer(s)) 2021. Re-use permitted under CC BY. Published by BMJ.Entities:
Keywords: cardiology; dementia; mental health; neurophysiology; physiology
Mesh:
Year: 2021 PMID: 34035103 PMCID: PMC8154928 DOI: 10.1136/bmjopen-2020-046879
Source DB: PubMed Journal: BMJ Open ISSN: 2044-6055 Impact factor: 2.692
Figure 1Description of the Stroop paradigm. C, congruent condition; In, incongruent condition; M, mixed condition; s, seconds.
Figure 2Description of N-back paradigm. 0, 0-back; 1, 1-back; 2, 2-back; s, seconds.
Figure 3Description of verbal fluency test paradigm. s, seconds.
Figure 4Visualization of the positions of the EEG electrodes and fNIRS optodes. IZ, inion; LPA, left preauricular point; NZ, nasion; RPA, right preauricular point.
Figure 5EEG data processing pipeline. ICA, independent component analysis; Loreta, low-resolution electromagnetic tomography analysis.
Physiological parameters of each device in all three cognitive tasks
| Cognitive task | Physiological measurement device | Main parameters |
| Stroop (congruent and incongruent) | ECG | RMSSD, pNN50, HF (absolute and nu), non-linear parameters (SD1, SD2, ApEn, SampEn, DFA, D2, RPA, MSE) |
| fNIRS | oxyHb, deoxyHb, totHb | |
| EEG | ERPs, PSD, connectivity and source localisation | |
| N-back (0-, 1- and 2-back) | ECG | RMSSD, pNN50, HF (absolute and nu), non-linear parameters (SD1, SD2, ApEn, SampEn, DFA, D2, RPA, MSE) |
| fNIRS | oxyHb, deoxyHb, totHb | |
| EEG | ERPs, PSD, connectivity and source localisation | |
| VFT (semantic and phonological) | ECG | RMSSD, pNN50, HF (absolute and nu), non-linear parameters (SD1, SD2, ApEn, SampEn, DFA, D2, RPAn, MSE) |
| fNIRS | oxyHb, deoxyHb, totHb | |
| EEG | PSD |
ApEn, approximate entropy; D2, correlation dimension; deoxyHb, deoxygenated haemoglobin; DFA, detrended fluctuation analysis; ERPs, event related potentials; HF, high frequency power in absolute and normalised units (nu) [0.15–0.4 Hz]; MSE, mutliscale entropy; oxyHb, oxygenated haemoglobin; pNN50, NN50 divided by the total number of NN intervals; PSD, power spectral density; RMSSD, root mean square of the successive differences between adjacent normal RR intervals; RPAn, recurrence plot analysis; SampEn, sample entropy; SD1, in Poincaré plot, the standard deviation perpendicular to the line-of-identity; SD2, in Poincaré plot, the standard deviation along the line-of-identity; totHb, total haemoglobin.