Short-Term Effect of Auditory Stimulation on Neural Activities: A Scoping Review of Longitudinal Electroencephalography and Magnetoencephalography Studies
Abstract
:1. Introduction
2. Materials and Methods
2.1. Search Strategy
2.2. Selection Criteria
- Inclusion criteria:
- Exclusion criteria:
Conditions | Measures of Interest | Inclusion | Exclusion |
---|---|---|---|
Intervention, stimuli | Sound exposure | Pure tones Music White noise | Syllables Sentences Phonemes Crossmodal stimuli |
Intervention, period | Short-term | Training over a few minutes, hours, days | Training over several months or years |
Study design | Longitudinal | Monitoring a population over a certain period | Cross-sectional comparisons (musicians vs. non-musicians, different age groups, healthy vs. diseased) |
Participants, subjects | Healthy people | People irrespective of age, diseases or musical skills | Patients |
Participants, state | Awake and listening | Awake condition Attentive listening Passive listening | Playing instruments Vocalization Stimuli during sleep Musical imagery Listening combined with transcranial magnetic stimulation |
Recording | Electrophysiological measures | MEG EEG | fMRI ECoG |
3. Results
3.1. Overview of Studies
3.1.1. Screening of Articles
3.1.2. Classification of Selected Articles
3.1.3. Characteristics of the Interventions in the Selected Articles
3.2. Individual Study Results and Synthesis
3.2.1. Prestimulus Effects 1. Prestimulus Alpha Power and Behavior
- Interstimulus Interval
- 2.
- Preceding Cue
3.2.2. During Exposure to Stimuli
- Pure Tone Sequences
- N1-P2
- MMN
- P300 (P3a-P3b)
- ASSR and binaural beat
- 2.
- Modification of Temporal Structure
- Temporal associations
- Rhythmic contexts and hazard rates
- Other topics
- 3.
- Lower- and Higher-Order Functions in Representation of Auditory Objects
- Top-down modulation of bottom-up auditory processing
- Auditory experience in conjunction with emotional responses
- Auditory plasticity relative to language processing
3.2.3. Pre- and Post-Stimulus Period
4. Discussion
4.1. Inhibitory Role of Prestimulus Alpha
4.2. Dilemma about Alpha Lateralization
4.3. Modulation of N1 by Prediction and Attention
4.4. The Generation of Prediction Error Responses
4.5. Contradiction about Cortical Response Dynamics and Its Solution
4.6. Oscillatory Synchronization to the Presented Stimuli
4.7. The Interplay of Bottom-Up Processing and Top-Down Modulations
4.8. Confusion of the Terminology: Attention
4.9. Dissociation of Attention, Awareness and Consciousness
4.10. The Benefit of Auditory Plasticity for Language Development
4.11. Confounds of Auditory Factors
4.12. Sustained Post-Exposure Effects in Longitudinal Studies
4.13. Dynamism of Short-Term Neural Oscillations Influenced by Various Factors
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
Appendix A
Item | Item | Prisma-ScR Checklist Item | Section of This Review |
---|---|---|---|
Title | 1 | Identify the report as a scoping review. | Title |
Structured summary | 2 | Provide a structured summary that includes (as applicable): background, objectives, eligibility criteria, sources of evidence, charting methods, results and conclusions that relate to the review questions and objectives. | Abstract |
Rationale | 3 | Describe the rationale for the review in the context of what is already known. Explain why the review questions/objectives lend themselves to a scoping review approach. | Introduction |
Objectives | 4 | Provide an explicit statement of the questions and objectives being addressed with reference to their key elements (e.g., population or participants, concepts and context) or other relevant key elements used to conceptualize the review questions and/or objectives. | Introduction |
Protocol and registration | 5 | Indicate whether a review protocol exists; state if and where it can be accessed (e.g., a Web address); and if available, provide registration information, including the registration number. | Search strategy |
Eligibility criteria | 6 | Specify characteristics of the sources of evidence used as eligibility criteria (e.g., years considered, language and publication status), and provide a rationale. | Selection criteria |
Information sources | 7 | Describe all information sources in the search (e.g., databases with dates of coverage and contact with authors to identify additional sources), as well as the date the most recent search was executed. | Search strategy |
Search | 8 | Present the full electronic search strategy for at least 1 database, including any limits used, such that it could be repeated. | Search strategy |
Selection of sources of evidence | 9 | State the process for selecting sources of evidence (i.e., screening and eligibility) included in the scoping review. | Selection criteria |
Data charting process | 10 | Describe the methods of charting data from the included sources of evidence (e.g., calibrated forms or forms that have been tested by the team before their use and whether data charting was done independently or in duplicate) and any processes for obtaining and confirming data from investigators. | Classification of selected articles |
Data items | 11 | List and define all variables for which data were sought and any assumptions and simplifications made. | Characteristics of the interventions in the selected articles |
Critical appraisal of individual sources of evidence | 12 | If done, provide a rationale for conducting a critical appraisal of included sources of evidence; describe the methods used and how this information was used in any data synthesis (if appropriate). | Screening of articles |
Synthesis of results | 13 | Describe the methods of handling and summarizing the data that were charted. | Classification of selected articles |
Selection of sources of evidence | 14 | Give numbers of sources of evidence screened, assessed for eligibility and included in the review, with reasons for exclusions at each stage, ideally using a flow diagram. | Screening of articles |
Characteristics of sources of evidence | 15 | For each source of evidence, present characteristics for which data were charted and provide the citations. | Screening of articles |
Critical appraisal within sources of evidence | 16 | If done, present data on critical appraisal of included sources of evidence (see item 12). | Screening of articles |
Results of individual sources of evidence | 17 | For each included source of evidence, present the relevant data that were charted that relate to the review questions and objectives. | Individual study results and synthesis |
Synthesis of results | 18 | Summarize and/or present the charting results as they relate to the review questions and objectives. | Individual study results and synthesis |
Summary of evidence | 19 | Summarize the main results (including an overview of concepts, themes and types of evidence available), link to the review questions and objectives and consider the relevance to key groups. | Discussion |
Limitations | 20 | Discuss the limitations of the scoping review process. | Discussion |
Conclusions | 21 | Provide a general interpretation of the results with respect to the review questions and objectives, as well as potential implications and/or next steps. | Conclusion |
Funding | 22 | Describe sources of funding for the included sources of evidence, as well as sources of funding for the scoping review. Describe the role of the funders of the scoping review. | Acknowledgments |
References | Selection of Participants | Confounding Variables | Measurement of Exposure | Blinding of Outcome Assessments | Incomplete Outcome Data | Selective Outcome Reporting |
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[56] | ● | ● | ● | ● | ● | ● |
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[78] | ● | ● | ● | ● | ● | ● |
[79] | ● | ● | ● | ● | ● | ● |
[42] | ● | ● | ● | ● | ● | ● |
[38] | ● | ● | ● | ● | ● | ● |
[80] | ● | ● | ● | ● | ● | ● |
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[103] | ● | ● | ● | ● | ● | ● |
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[54] | ● | ● | ● | ● | ● | ● |
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Reference Number | Content of the Auditory Stimuli | Tasks during the Experiment and Paradigms | Number of Participants | Stimulus More Than a Day | Recording | Major Findings |
---|---|---|---|---|---|---|
3.2.1. Prestimulus effects | ||||||
1. Prestimulus alpha power and behavior | ||||||
[56] | Sequence patterns comprising pure tones | Tone pattern indication task | 17 | - | EEG | Different prestimulus EEG phase between correct and incorrect trials |
[57] | A short target sound within the background sound | Target sound detection task | 12 | - | EEG | The dependence of the chance of target detection on power and phase of theta-band oscillations before target |
[58] | White noise bursts presented near hearing threshold with various inter-trial intervals | Near-threshold detection task | 19 | - | MEG | A decrease in alpha power in the auditory cortex prior to conscious percepts |
[59] | Two identical sine tones | Pitch discrimination and confidence rating | 17 | - | EEG | A negative link between prestimulus alpha power and decision confidence |
2. Interstimulus interval | ||||||
[60] | Presentation of two frequencies, whose temporal order was explicit through a cue or learned implicitly | Temporal order judgment task | 24 | - | EEG | Enhanced functional links in implicit anticipation |
3. Preceding cue | ||||||
[61] | Target sounds with two different frequencies preceded by a visual cue as to the spatial location | Spatial attention task | 14 | - | MEG | An asymmetrical modulation of alpha power within the right AC1, depending on the cued side |
[62] | A target sound and a distractor sound presented simultaneously on opposite ears, preceded by an auditory cue on either ear | Spatial attention task | 11 | - | MEG | Alpha lateralization in a right-lateralized network in response to cue validity and side-related acoustic stimulation |
[63] | Standard tones and target tones that changed the modulation frequency, preceded by a visual cue to shift the focus of either ear | Spatial attention task | 15 | - | MEG | A stronger alpha power increase for the attend-right condition in the right AC1 |
3.2.2. During exposure to stimuli | ||||||
1. Pure tone sequences | ||||||
● N1-P2 | ||||||
[64] | Auditory click stimuli | Listening | 6 | - | EEG | Evoked ERPs over both the auditory and visual cortex by unimodal click stimuli |
[65] | Identical auditory stimuli consisting of brief pure tones | Listening | 19 | - | EEG and fMRI | Positive correlation with N1 magnitude of spontaneous functional connectivity between bilateral Heschl’s gyruses |
[66] | Pure tones with varying frequency separation and stimulus onset asynchrony | Oddball-like paradigm | 15 | - | EEG | Decrease in stimulus-specific adaptation with the increase in stimulus onset asynchrony |
[67] | Random tone sequences varying in spectral variance | Detecting deviants vs. ignoring stimuli | 20 | - | EEG | Largest frequency-specific neural responses on the N1 component |
[68] | Sounds with onsets that were either predicted by a visual cue or unpredicted | Attending or unattending intervals | 37 | - | EEG | An N1 enhancement effect for attended sounds and an N1 suppression effect for predicted sounds |
[69] | Regular and irregular rhythmic sequences of tones | Responding to deviants in the attended ear | 34 | - | EEG | Attenuated N1 for tones when rhythm predictability was high and was enhanced by attention to tones |
[70] | A self-generated or externally generated tone | Indicating onset of the motion or tone | 39 | - | EEG | Suppressed N1–P2 complex when the tone was self-generated compared to externally generated |
[71] | A single marimba tone | Self-generation of tones vs. listening | 24 | - | EEG | An attenuated N1 component for self-generated tones as compared to externally generated tones |
● MMN | ||||||
[72] | Sine wave tones delivered at six possible carrier frequencies | Mismatch paradigm | 20 | - | MEG | Mismatch responses to frequency deviants being modulated by temporal attention strongly |
[73] | Randomly ordered sequences of two tones | Oddball paradigm | 13 | - | EEG | Strong theta-band phase synchrony between the frontal and temporal areas during deviant processing |
[74] | Standard sinusoidal tones and deviant tones that differed in duration, frequency, intensity, location or a silent gap | Multiple mismatch paradigm | 11 | - | MEG | Prediction error responses in bilateral AC1, STG and lateral prefrontal cortex for deviations |
[75] | Melodies in either guitar or marimba timbre | Passive listening of oddball paradigm | 38 | A total of a few hours over a week | EEG | A larger negative response in auditory areas for tones previously experienced during exposure |
[76] | Standard frequency tones interspersed randomly with deviant frequency trials | Passive listening of mismatch paradigm | 16 | - | MEG | Increased interlobar, long-distance synchronization during the MMN time epoch for deviants |
[77] | Two different tones each becoming deviants in different blocks | Automatic sequential learning | 19 | - | EEG | Errors within the first block type exerting influence on the updating of longer timescale predictions |
[78] | Sound sequences containing predictable repetitions and order manipulations | Orthogonal auditory one-back task | 17 | - | MEG | Involvement of theta-band oscillations for prediction-error generation in cortical–subcortical networks |
[79] | A stream of sounds with log-frequencies and different standard deviations | Auditory frequency oddball paradigm and a simultaneous visual n-back task | 89 | - | EEG and MRI | The dynamics of auditory mismatch responses being interconnected by auditory white-matter pathways |
[42] | Eight tones presented in two different four-tone patterns | Passive listening of statistical learning of melodic patterns | 10 | - | EEG | Stronger signal strength when cohesive patterns were violated |
[38] | Simple melodies consisting of a repeated pitch pattern and novel melodies with less repetitive structure | Listening | 40 | - | MEG and MRI | Larger MMNm responses for pitch deviants in highly predictable compared to less predictable melodies |
[80] | Repeating 42-tone pattern following the deterministic incrementing rule or pseudo-randomly assigned tones | Passive listening of oddball paradigm with predictability manipulation | 20 | - | EEG, MEG and MRI | Adaptive learning of surprise with larger integration of past information in the context of expected surprises |
● P300 (P3a-P3b) | ||||||
[81] | Two sinusoidal tones assigned as target and standard stimuli | Auditory followed by visual oddball tasks | 24 | - | EEG | Inhibitory effect of auditory P300 influencing second target processing |
[82] | Two types of runs consisted of two tones with different frequency | Target detection in an oddball paradigm | 17 | - | EEG | Ventral Attention Network and Dorsal Attention Network as the neural generators of P3a and P3b, respectively |
[83] | Three tones with different frequencies | Target discrimination in an oddball paradigm | 15 | - | EEG | Difficulty-related changes in inter-regional gamma-band synchrony in target/non-target processing |
● ASSR and binaural beat | ||||||
[84] | Amplitude modulated white noise on either ear | Passive listening | 19 | - | EEG | Successful location of subcortical and cortical sources of ASSR |
[85] | Binaural exposure of 40 Hz amplitude modulated auditory tones | Auditory-driven gamma synchronization paradigm | 52 | - | MEG and MRI | Gamma synchrony of the entire cortical mantle driven by auditory stimulation in the gamma range |
[86] | Acoustic stimulation conditions (none, pure tones, classical music, 5 Hz BBs, 10 Hz BBs and 15 Hz BBs) | Passive listening and N-back verbal working memory task | 34 | - | EEG | 15 Hz BBs affecting cortical network properties |
[87] | 7 Hz and 40 Hz BBs and monaural beats | Passive listening and mood self-report | 16 | - | EEG | Cross-frequency activity elicited by BBs |
[88] | 10 Hz and 4 Hz BBs and corresponding monaural beats | Listening (expt. 1) | 9 (expt. 1) | - | EEG | Enhanced alpha-band synchrony between auditory cortices during auditory stimulation by BBs |
[89] | Non-binaural beats and BBs with frequency varying from 1 Hz to 48 Hz | Passive listening and rating pleasantness after exposure | 32 | - | EEG | Enhanced alpha-phase synchronization after listening to BBs in the delta and alpha bands |
[90] | Pink noise, 40 Hz BBs and 40 Hz monaural beats | Selective attentional task | 25 | - | EEG | No occurrence of neural entrainment by 40 Hz BBs |
[91] | White noise and 20 Hz BBs or 5 Hz BBs | Free recall task and recognition task | 32 | - | EEG | Improved free recall and recognition by beta-frequency BBs |
2. Modification of temporal structure | ||||||
● Temporal associations | ||||||
[92] | An isochronous sequence and a random oddball sequence, varying the ISI duration | Deviant counting | 24 | - | EEG | Smaller P3b for deviant tones embedded in irregular temporal structure |
[93] | A standard stimulus and a deviant stimulus consisting of 5 pure-tone sequences with various ISIs | Delayed matching-to-sample task | 20 (Expt. 2) | - | MEG | Increased alpha power in temporal auditory regions with longer delay durations |
[94] | Identical pure tones or standard and deviant pure tones | Single-tone task and an auditory oddball task | 22 | - | EEG | Enhanced N1 and P2 amplitudes with longer ISIs |
[95] | Pure tones delivered monaurally at four different levels of stimulus onset asynchrony | Passive listening | 20 | - | EEG | Increased amplitude and decreased peak latency with increasing stimulus onset asynchrony |
[96] | Two chirp trains applied concurrently at different repetition rates | An analog to forward-masking paradigm | 11 | - | EEG | Decreased amplitudes with decreasing distance to the preceding stimulus of the other stimulus train |
[97] | Standard tones and deviant tones which differed in pitch and/or onset timing | Passive listening of mismatch paradigm | 10 | - | EEG | Larger P3a for pitch deviations with shorter ISIs |
[98] | A buzzer cue, a target harmonic sound, which were sometimes replaced with task-irrelevant novel sounds | Cued auditory attention task | 13 | - | MEG | Stronger beta-band functional connectivity in response to the target stimuli than to the novel stimuli |
● Rhythmic contexts and hazard rates | ||||||
[99] | A pure-tone acoustic stream interleaved with chords presented in a rhythmic or jittered way | Auditory discrimination task | 23 | - | EEG and MEG | Improved neural decoding of targets and distractors by rhythmic expectation |
[54] | Rhythmically regular or syncopated sequences of a repeated non-harmonic chord with three partials | Tapping task | 20 | - | EEG | Increased amplitudes at meter-related frequencies compared to meter-unrelated frequencies |
[55] | Drum clips with different rhythmic structures interrupted by silent breaks | Tapping task or passive listening | 14 | - | EEG | More negative N1 amplitude for metronome than for rhythmic sequences |
[100] | Auditory metronome with delayed or advanced phase shift and with large or small perturbations | Sensorimotor synchronization task | 16 | - | EEG | Theta coupling between pre-SMA and ACC increases in response to a large positive tap-tone asynchrony |
[101] | Multiple musical rhythmic patterns by manipulating note values in beats while keeping time signature | Reporting experienced arousal and valence | 18 | - | EEG | Emotional changes associated with the alpha-band connectivity alterations in the fronto-central connections |
[102] | A single pop song with a super-imposed bassoon sound either lined up or shifted away from the beat | Passive listening | 98 | - | EEG | A clear neural response elicited at the first harmonic of the beat only for the on-the-beat condition |
[103] | Two standard pure tones with various ISIs and a deviant stimulus which replaced either of a standard stimulus | Deviant detection in a two-tone paradigm with various ISIs | 25 | - | MEG | The asymmetric effect of the passage of time on descending connections |
● Other topics | ||||||
[104] | A theme with an original melody of Mozart and its significant variations | Passive listening | 25 | - | MEG | Increased beta connectivity with modified melody compared to the original melody |
[105] | Combinations of two sounds with a low to moderate and a high frequency range, either stationary or moving | Modality-change detection in a delayed motion-onset sound paradigm | 14 | - | EEG | Larger amplitudes of motion responses elicited by stimuli with high frequency range |
[106] | Rhythmically regular and an irregular music presented with an intermittent and continuous type of stimulation | Target detection in an auditory monitoring task | 22 | - | EEG | Smaller P300 amplitude during the continuous and regular compared to the intermittent condition |
[107] | Pure 1000 Hz sine tones presented at three systematically varied sound intensities | A forced-choice discrimination task or passive listening condition | 22 | - | EEG | Stronger GBRs and enhanced phase locking under the active condition compared with passive listening |
3. Lower- and higher-order functions in representation of auditory objects | ||||||
● Top-down modulation of bottom-up auditory processing | ||||||
[108] | A noise sample generated by concatenating three identical noise segments or a running noise | Noise type detection in an unsupervised noise memory paradigm | 13 | - | MEG | The establishment of low-frequency oscillatory phase patterns in auditory neuronal responses during learning new acoustic representations |
[109] | Signals comprised of a sequence of brief broadband chords containing random pure tone components | Performing auditory figure-ground segregation during a visual task | 16 | - | MEG | Neural sources underlying bottom-up-driven figure-ground segregation |
[110] | Auditory streaming stimuli with cyclically repeating patterns | Reporting perception of four categories of auditory patterns | 60 | - | EEG | Functional brain networks underlying idiosyncratic switching patterns in multi-stable auditory perception |
[111] | Two asynchronous standard-tone streams presented to different ears, in separate blocks with or without notch-filtered white-noise masking | Performing a selective attention task | 10 | - | MRI, fMRI, MEG and EEG | Short-term tuning changes in neurons that support segregation of relevant sounds from noise |
[112] | An electronic pop song and a classical musical piece | Attentive and passive listening of musical pieces | 30 | - | EEG | Different neural activations depending on the direction of attention |
[113] | A pair of target tones embedded within a multi-tone mask | Detecting a pair of tones embedded within a multi-tone background | 21 | - | MEG | Recurrent processing between auditory and higher-order parietal cortices in complex auditory scenes |
[114] | Tones with timbres of three different pitches | Performing a choice reaction task | 13 | - | MEG | The involvement of dACC in the effortful processing of auditory stimuli |
[115] | Tones of three different pitches | Performing a choice reaction task | 28 | - | EEG and fMRI | Top-down influence of the ACC on the AC executed by means of gamma synchronization |
[116] | Four pure-tone stimuli with different pitches and intensities | Performing pitch and intensity go/no-go assignments | 24 | - | EEG | Cognitive plasticity during learning that involves transformation of asynchronous/synchronous processing pattern |
[117] | Structured visual stimuli and pure tones | Performing a visual and auditory working memory task | 47 | - | EEG | The extent to which sensory processing areas are essential for the maintenance of information in working memory |
[118] | Six ripple velocities separated by their just-noticeable differences | Performing a working memory task in a retro-cueing paradigm | 20 | - | MEG | Synchronization patterns across auditory sensory and association areas that support neuronal coding of auditory WM content |
[119] | Pure tones with different frequencies | Fine pitch discrimination | 20 | - | MEG | The neural origins of the FFR |
[53] | Two pure tones with a frequency of 89 and 333 Hz | Watching a silent movie whilst ignoring auditory stimulation | 21 | - | MEG and EEG | Neural generators of the frequency-following response elicited to stimuli of low and high frequencies |
[120] | Independent streams of white noise concurrently in each of the two ears | Detecting brief gaps in noise streams | 21 | - | EEG | Opposing effects of attention and expectations within a fronto-temporal network engaged in sensory prediction errors |
● Auditory experience in conjunction with emotional responses | ||||||
[121] | Random sequences of high or low tones | Listening auditory stimuli with classical conditioning and contingency reversal | 19 | - | MEG | Plasticity of auditory cortex responses when sounds are paired with shock in a classical contingency |
[122] | Excerpts from film scores spanning a variety of styles | Reporting music-evoked emotional responses | 31 | - | EEG | Neural correlates of musical stimuli-induced emotion, such as pre-frontal cortex asymmetry |
[123] | Musical excerpts from four common musical genres | Reporting liking of music | 9 | - | EEG | Larger amplitudes of motion responses elicited by stimuli with high frequency range |
[124] | Sounds of a Tibetan singing bowl | Action–perception cycle of sound making | 32 | - | MEG | Brain processes underlying perception after learning a new association between a sound and the action for making that sound |
[125] | Three pieces of Guqin music | Listening in varying auditory surroundings | 16 | - | EEG | Increase in functional connectivity as well as a more random network structure in the alpha2 band during music perception |
[126] | Guqin music and pink noise | Listening to auditory stimuli in various conditions | 20 | - | EEG | Increased connectivity and topological change in functional networks with an enhancement of small-world attributes |
[127] | A pool of 40 various musical excerpts | Reporting induced emotional responses | 22 | - | EEG | Independent component processes underlying emotions during natural music listening |
[128] | Trio live performance | Rating improvisation, attractiveness and emotion in concert-like auditory surroundings | 16 | - | EEG | Theta activity reflecting the presence of improvisation in the performances |
[129] | Experimental excerpts taken from sixty musical fragments | Reporting familiarity of music | 22 | - | EEG | Different theta connectivity patterns underlying pleasantness evoked by familiar and unfamiliar music |
[130] | Experimental excerpts taken from sixty musical fragments | Reporting music-evoked pleasantness | 25 | - | EEG | Fronto-temporal theta phase synchronization underlying music-evoked pleasantness |
[131] | Brainwave music | Psychotherapy in pain management | 36 | - | EEG | Improved functional connectivity among different brain regions and brain regularity induced by listening to brainwave music |
[132] | More and less consonant chords and intervals | Memorizing chords and evaluating the beauty of the intervals | 60 (Expt. 1), 22 (Expt. 2) | - | EEG | A relationship between aesthetic appreciation and implicit learning dynamics, as well as memorization |
[133] | More and less consonant fifths and dissonant tritones with two different frequencies | Performing aesthetic judgment and detection tasks | 26 | - | EEG | A positive correlation between aesthetic appreciation and perceptual learning |
● Auditory plasticity relative to language processing | ||||||
[134] | Musical pieces with a regular ending or a harmonic transgression at closure | Musical violation discrimination | 16 | - | EEG | A specific neural correlate of musical violation expectation in primary-school children |
[135] | Modulated nonspeech stimuli | Performing a go/no-go looking task | 49 | - | EEG | Prelinguistic acoustic mapping affected by active auditory exposure |
3.2.3. Pre- and Post-stimulus period | ||||||
[136] | Different complex tone stimuli | Pitch discrimination | 27 | An hour for 10 days | EEG | Subcortical plasticity induced by pitch discrimination training |
[137] | Piano music mixed with a 5 Hz (theta band enhancement) BB | Listening | 7 | 5 min a day for a week | EEG | After seven days of training, modulation of the absolute power, relative power and coherence |
[138] | Band-pass noise bursts | Performing a stop-signal task | 13 | - | EEG | Plastic modifications within inhibitory control networks |
[139] | Band-pass-filtered harmonic complexes | Discriminating auditory fundamental frequency, amplitude modulation rate or visual orientation | 40 | 30 min a day for 6 days | EEG | Sustained cortical and subcortical measures of auditory and visual plasticity following short-term perceptual learning |
[140] | Songs of different bird species | Auditory semantic categorization | 19 | - | EEG | The cortical representation of birdsongs modulated by brief training to recognize individual bird species |
[141] | Indian classical music | Mood assessment before and after listening | 20 | - | EEG | On exposure to music, reduced information flow in long-distance connections |
[142] | A standard sinusoidal tone alternating with two tones before/after a stimulation with a deviant tone continuously at 13 Hz | Mismatch paradigm and LTP-like stimulation | 21 | - | EEG | Increased amplitude of the negative-going MMN wave led by the LTP-like stimulation |
[143] | Probe blocks of pure-tones, narrow-band noises and white noises or their tetanic presentation | A tetanic-stimulation paradigm | 10 | One day rest between conditions | EEG | Higher post-tetanus amplitude of the N1 component in the tetanus condition than the pre-tetanus state |
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Kobayashi, K.; Shiba, Y.; Honda, S.; Nakajima, S.; Fujii, S.; Mimura, M.; Noda, Y. Short-Term Effect of Auditory Stimulation on Neural Activities: A Scoping Review of Longitudinal Electroencephalography and Magnetoencephalography Studies. Brain Sci. 2024, 14, 131. https://doi.org/10.3390/brainsci14020131
Kobayashi K, Shiba Y, Honda S, Nakajima S, Fujii S, Mimura M, Noda Y. Short-Term Effect of Auditory Stimulation on Neural Activities: A Scoping Review of Longitudinal Electroencephalography and Magnetoencephalography Studies. Brain Sciences. 2024; 14(2):131. https://doi.org/10.3390/brainsci14020131
Chicago/Turabian StyleKobayashi, Kanon, Yasushi Shiba, Shiori Honda, Shinichiro Nakajima, Shinya Fujii, Masaru Mimura, and Yoshihiro Noda. 2024. "Short-Term Effect of Auditory Stimulation on Neural Activities: A Scoping Review of Longitudinal Electroencephalography and Magnetoencephalography Studies" Brain Sciences 14, no. 2: 131. https://doi.org/10.3390/brainsci14020131