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Clinical Trials/NCT05955794
NCT05955794
Not yet recruiting
Not Applicable

Vocal Pattern Assessment as a New Key to Identifying Rare Syndromes

Fondazione Policlinico Universitario Agostino Gemelli IRCCS1 site in 1 country500 target enrollmentSeptember 1, 2023

Overview

Phase
Not Applicable
Intervention
Not specified
Conditions
Rare Diseases
Sponsor
Fondazione Policlinico Universitario Agostino Gemelli IRCCS
Enrollment
500
Locations
1
Primary Endpoint
Vocal Phenotype definition of noise
Status
Not yet recruiting
Last Updated
2 years ago

Overview

Brief Summary

Primary Study Objective The primary objective of the study is the definition of distinct vocal phenotypes and the development of an Explained Decision Support System (DSS) for the automatic detection of vocal patterns in relation to the syndrome from which the patients suffer

Secondary:

  1. Perceptual and acoustic analysis of voice recordings
  2. Development of a voice recording collection system.

Detailed Description

Genetic syndromes have been extensively studied and numerous research studies have enabled a better definition of their clinical manifestations, natural history and aetiopathogenetic mechanisms. In these multisystem conditions, some relevant but as yet unexplored aspects need to be clarified, and one of these aspects is the characterisation of vocal production. To date, more than 240 genetic syndromes have distinctive voice quality abnormalities that are significant enough to be considered diagnostic indicators. However, with the exception of Down syndromes, X-fragile, Williams and velocardiofacial syndromes, no scientific studies focusing on vocal analysis have been conducted on patients with genetic syndromes in order to obtain a complete and objective characterisation of vocal characteristics. Due to the sophisticated human auditory apparatus, perceptual analysis is the basic approach for assessing voice quality. However, an objective assessment of voice quality is crucial in order to minimise errors due to perceptual and, consequently, individual analysis. Currently, the most widely used tool by researchers is Praat, although its use, being not very intuitive, can be challenging for those with little computer experience. Consequently, the use of the default settings (adult male voice) may give somewhat misleading results. To partially overcome some of the above-mentioned problems, a new user-friendly software called Biovoice has recently been developed. Recently, a number of new measurement methods have been designed to assess vocal characteristics, mainly based on the theory of non-linear dynamic systems . This theory is supported by extensive modelling studies and evidence that vocal production is a highly non-linear dynamical system, in which changes caused by alterations in the vocal organs, muscles and nerves affect the dynamics of the whole system. Consequently, these changes can be detected by means of non-linear time series analysis tools or by means of computational approaches based on artificial intelligence. This project starts from the consideration that certain genetic abnormalities that cause a specific recognisable phenotype could also result in a specific vocal phenotype, or rather a 'phonotype'. Since vocal assessment is based on non-invasive and easily administered tests, vocal characterisation could be an informative tool in the diagnostic process and help both in defining the severity of clinical pictures and in performing genotype/phenotype correlations. Furthermore, voice studies could detect and monitor the progression of symptoms in certain genetic conditions that are often characterised by a regressive trend, such as in neuromuscular or metabolic syndromes. Smartphone technology, which has already been implemented in other fields, such as in dysphonia and Parkinson's disease, can be used to collect voice recordings of syndromic patients and can be an important tool to implement computerised assessment. Unlike most smartphone-based voice analysis tools, special attention will be paid to the reliability of audio recordings, both in the laboratory and at home, which will be performed according to a strict protocol. This will allow for uniform and reliable data and results. Artificial intelligence techniques will play a key role in studying the role of voice characterisation in diagnostic work for genetic syndromes. In addition, speech analysis could support the evaluation of the effectiveness of speech therapy, drug treatment and other rehabilitation approaches. Primary Study Objective: The primary objective of the study is the definition of distinct vocal phenotypes and the development of an Explained Decision Support System (DSS) for the automatic detection of vocal patterns in relation to the syndrome from which the patients suffer Secondary: 1. Perceptual and acoustic analysis of voice recordings 2. Development of a voice recording collection system. Number of participants: 500 (400 syndromic patients plus 100 non-syndromic controls matched by gender and age). 400 patients suffering from different syndromes will be recruited, although the investigators will focus in particular on Down syndrome, Noonan, Costello, Smith-Magenis, Cri du Chat, 22q11 deletion, Williams, Crisponi, Rubinstein Taybi and CHARGE to analyse their vocal pattern characteristics. The choice of the listed conditions is guided by their prevalence in the population and previously reported peculiar vocal patterns. The patients recruited are those regularly followed by the Centre for Rare Diseases and Congenital Defects of the Agostino Gemelli IRCCS University Polyclinic Foundation, Rome. Voice recordings collected in the laboratory from syndromic patients will be analysed both perceptually and objectively and compared with a control group of non-syndromic patients, matched for age and gender.

Registry
clinicaltrials.gov
Start Date
September 1, 2023
End Date
September 20, 2025
Last Updated
2 years ago
Study Type
Interventional
Study Design
Parallel
Sex
All

Investigators

Responsible Party
Principal Investigator
Principal Investigator

Zampino Giuseppe

professor

Fondazione Policlinico Universitario Agostino Gemelli IRCCS

Eligibility Criteria

Inclusion Criteria

  • Laboratory confirmation of the clinical diagnosis of one of the syndromes under investigation.
  • Informed consent from parents, legal representatives or the patients themselves, according to the instructions of the hospital's Ethics Committee.

Exclusion Criteria

  • Concomitant acute inflammatory disease of the upper respiratory tract.
  • Refusal to sign the informed consent to participate in the study.

Outcomes

Primary Outcomes

Vocal Phenotype definition of noise

Time Frame: 2 years

The definition of irregularity of voices of each syndrome will be extracted through PRAAT software. PRAAT implements a method based on autocorrelation, applied to a time window of fixed size, and linear predictive coding. It requires the manual setting of some parameters. The software allows the analysis of noise (measured in dB).

Vocal Phenotype definition of frequencies

Time Frame: 2 years

Distinct vocal phenotypes of each syndrome will be extracted through Biovoice software. BioVoice allows the sequential analysis of several audio signals at once without any manual setting. The software allows the analysis of fundamental and formants frequency (measured in Hz).

Vocal Phenotype definition of irregularity

Time Frame: 2 years

The definition of irregularity of voices of each syndrome will be extracted through PRAAT software. PRAAT implements a method based on autocorrelation, applied to a time window of fixed size, and linear predictive coding. It requires the manual setting of some parameters. The software allows the analysis of irregularity, namely jitter that is the relative average perturbation (measured in absolute jitter =1N-1∑i=1N-1\|Ti-Ti+1\|).

Secondary Outcomes

  • Development of a system for collecting voice recordings - frequencies(2 years)
  • Perceptual and acoustic analysis of voice recordings(2 years)
  • Other perceptual and acoustic analysis of voice recordings(2 years)
  • Development of a system for collecting voice recordings - noise(2 years)
  • Development of a system for collecting voice recordings - irregularities(2 years)

Study Sites (1)

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