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Voice perturbations under the stress overload in young individuals: Phenotyping and suboptimal health as predictors for cascading pathologies
- Source :
- EPMA Journal, The EPMA Journal
- Publication Year :
- 2020
-
Abstract
- Verbal communication is one of the most sophisticated human motor skills reflecting both—the mental and physical health of an individual. Voice parameters and quality changes are usually secondary towards functional and/or structural laryngological alterations under specific systemic processes, syndrome and pathologies. These include but are not restricted to dry mouth and Sicca syndromes, body dehydration, hormonal alterations linked to pubertal, menopausal, and andropausal status, respiratory disorders, gastrointestinal reflux, autoimmune diseases, endocrinologic disorders, underweight versus overweight and obesity, and diabetes mellitus. On the other hand, it is well-established that stress overload is a significant risk factor of cascading pathologies, including but not restricted to neurodegenerative and psychiatric disorders, diabetes mellitus, cardiovascular disease, stroke, and cancers. Our current study revealed voice perturbations under the stress overload as a potentially useful biomarker to identify individuals in suboptimal health conditions who might be strongly predisposed to associated pathologies. Contextually, extended surveys applied in the population might be useful to identify, for example, persons at high risk for respiratory complications under pandemic conditions such as COVID-19. Symptoms of dry mouth syndrome, disturbed microcirculation, altered sense regulation, shifted circadian rhythm, and low BMI were positively associated with voice perturbations under the stress overload. Their functional interrelationships and relevance for cascading associated pathologies are presented in the article. Automated analysis of voice recordings via artificial intelligence (AI) has a potential to derive digital biomarkers. Further, predictive machine learning models should be developed that allows for detecting a suboptimal health condition based on voice recordings, ideally in an automated manner using derived digital biomarkers. Follow-up stratification and monitoring of individuals in suboptimal health conditions are recommended using disease-specific cell-free nucleic acids (ccfDNA, ctDNA, mtDNA, miRNA) combined with metabolic patterns detected in body fluids. Application of the cost-effective targeted prevention within the phase of reversible health damage is recommended based on the individualised patient profiling.
- Subjects :
- Hyposalivation
Disease
Overweight
Bioinformatics
Sicca syndrome
Tinnitus
underweight
Drug Discovery
risk factors
Individualised patient profile
machine learning models
dry mouth syndrome
education.field_of_study
Health Policy
Otorhinolaryngologoical disorders
Healthcare
risk assessment
Vasospasm
biomarker pattern
flammer syndrome
thirst
population screening
Biomarker (medicine)
medicine.symptom
circadian rhythm
phenotyping
sense regulation
Population
predictive preventive personalised medicine
microcirculation
respiratory complications
body mass index
artificial intelligence (AI)
Xerostomia
Flammer syndrome
suboptimal health
voice perturbation
Diabetes mellitus
high altitude sickness
survey stress
medicine
education
Biochemistry, medical
Stress, survey
business.industry
Research
pandemic
Biochemistry (medical)
disease predisposition
association
COVID-19
lifestyle intervention
medicine.disease
exercise-induced hypoalgesia
primary vascular dysregulation
pain sensitivity
business
Body mass index
Subjects
Details
- Language :
- English
- Database :
- OpenAIRE
- Journal :
- EPMA Journal, The EPMA Journal
- Accession number :
- edsair.doi.dedup.....7970ddb787a6e3cbc2891ed0a1d647bc