| Literature DB >> 35494208 |
Nilima Salankar1, Anjali Mishra1, Deepika Koundal1, Vinh Truong Hoang2, Kiet Tran-Trung2, Atef Zaguia3, Assaye Belay4.
Abstract
Neurological imbalance sometimes resulted in stress, which is experienced by the number of people at some moment in their life. A considerable measurement scheme can quantify the stress level in an individual, in which music has always been considered as the best therapy for stress relief in healthy human being as well in severe medical conditions. In this work, the impact of four types of music interventions with the lyrics of Hindi music and varying spectral centroid has been studied for an analysis of stress relief in males and females. The self-reported data for stress using state-trait anxiety (STA) and electroencephalography (EEG) signals for 14 channels in response to music interventions have been considered. Features such as Hjorth (activity, mobility, and complexity), variance, standard deviation, skew, kurtosis, and mean have been extracted from five bands (delta, theta, alpha, beta, and gamma) of each channel of the recorded EEG signals from 9 males and 9 females of the age category between 18 and 25 years. The support vector machine classifier has been used to classify three subsets: (i) male and female, (ii) baseline and female, and (iii) baseline and male. The noteworthy accuracy of 100% was found at the delta band for the first subset, beta and gamma bands for the second subset, and beta, gamma, and delta bands for the third subset. STA score has shown more deviation in the male category than in female, which gives a clear insight into the impact of music intervention with varying spectral centroid that has a higher impact to relieve stress in the male category than the female category.Entities:
Mesh:
Year: 2022 PMID: 35494208 PMCID: PMC9019444 DOI: 10.1155/2022/3080437
Source DB: PubMed Journal: Contrast Media Mol Imaging ISSN: 1555-4309 Impact factor: 3.009
Figure 1Characteristics of four musical interventions used in study.
Figure 2Flow of data acquisition.
Figure 3The channel selection.
Figure 4Decomposition of EEG signal into bands.
Figure 5Comparative plots of the impact of interventions (MI-1 to MI-4) on the baseline and male category in (a) central region, (b) frontal, (c) parietal, and (d) temporal region with respect to the hjorth parameter activity.
Figure 6Comparative plots of the impact of MI-2 on male and female category in (a) central region, (b) parietal region, and (c) temporal region with respect to the hjorth parameter activity and mobility.
Classification results for subset1 (male vs. female), subset 2 (baseline vs. female), and subset 3 (baseline vs. male).
| Subset | Intervention | Channel | Bands | Accuracy | Sen | Spec |
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| 1 | MI-1 | FP2 | Delta | 77.78 | 100 | 60 |
| MI-2 | C3 | Delta, gamma | 100, 83.33 | 100, 66.67 | 100, 100 | |
| MI-3 | C3 | Delta | 100 | 100 | 100 | |
| MI-4 | C4, F3 | Theta, gamma | 72.22 | 100, 0 | 100 | |
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| 2 | MI-1 | C4, P4, T3, T5, T6 | Gamma | 100 | 100 | 100 |
| MI-2 | C3, F7, FP1, P4, T3 | Beta | 100 | 100 | 100 | |
| MI-3 | C4, FP1, T3 | Beta | 100 | 100 | 100 | |
| MI-4 | C3, C4, F7, T5 | Beta | 100 | 100 | 100 | |
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| 3 | MI-1 | C4, F3, T5 | Beta | 100 | 100 | 100 |
| MI-2 | C3, F3, F7 | Gamma | 100 | 100 | 100 | |
| MI-3 | C4, P3 | Beta | 100 | 100 | 100 | |
| MI-4 | C4, P3, T6 | Beta | 100 | 100 | 100 | |
| F3, Fp1, T5 | Gamma | 100 | 100 | 100 | ||
| T4 | Delta | 100 | 100 | 100 | ||
Figure 7State-trait anxiety analysis for (a) male and (b) female.
Comparative analysis of proposed work with state of art.
| Method Year | Number of subjects | Measures | Stimuli | Findings | Algorithm/methodology |
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| 2017 [ | 20 college students | EEG signals | Congruent test and incongruent test | The students with higher stress levels have seemed to be affected by the impact of music and the mean beta absolute power ratio increased by 0.246 | Mean beta absolute power ratio |
| 2018 [ | 80 infants | Heart rate, oxygen saturation, and neonatal infant pain scale (NIPS) | 3 music interventions | The heart rate and pain perception are found to be reduced and oxygen saturation increases in the infants | Statistical analysis (ANOVA test) |
| 2016 [ | 159 patients | State-trait anxiety inventory scale | Background music | Significant reduction found in the anxiety and stress level of the patients | Statistical analysis (Scheffe's test) |
| 2018 [ | 7 subjects | EEG signals | Music | The model prediction for the participant's mental state has accuracy of 80% and with a small MSE loss up to 0.0882 | Deep learning |
| 2018 [ | 15 (average age 20.5 years) | EEG signals | 15 different music | The findings during listening to music were increased in the spectral power in alpha band and decrease in high-frequency beta and gamma bands | Support vector machine |
| 2019 [ | 15 males and 15 females, aged 20–35 years | EEG signals | 4 English music tracks of metal, rock, electronic, and rap genres | Urdu music tracks have more impact on stress reduction than English music tracks | Minimal sequential optimization, stochastic gradient descent, logistic regression, and multilayer perception |
| 5 Urdu music tracks of famous, melodious, patriotic, qawali, and ghazal genres | Females were more affected by the music than males | ||||
| [ | Disabled cancer patients | EEG signals | Music | Effect on frontal lobe | Statistical test |
| Proposed | 9 males and 9 females | EEG signals | 4 musical interventions with Hindi lyrics and varying spectral centroid characteristics | Delta band is active for male, which is a clear indication of mindful state as an impact of musical intervention for MI-1, MI-2, and MI-3∗∗∗∗ | Support vector machine |