Digital Voice Analysis as a Measure of Frailty and Distress
- Conditions
- Distress, EmotionalFrailty
- Registration Number
- NCT05783401
- Lead Sponsor
- University Hospital, Basel, Switzerland
- Brief Summary
This study evaluates if it is possible to identify quantitative parameters from audio signals to describe the changes in patient's state in relation to frailty and distress.
- Detailed Description
Frailty is a common clinical syndrome especially in older adults that carries an increased risk for poor health outcomes including falls, incident disability, hospitalization, and mortality. The early detection of frailty is of importance in many patient populations to predict treatment outcomes, identify patient needs and coordinate efficient and meaningful care. An electronic assessment of the degree of distress in patients, who are unable to report, would be important to be able to routinely and objectively identify suffering in these patients. Digital voice analysis (DVA) gathers speech samples from individuals via different kinds of recording devices (smartphone, tablet, etc.) and examines a large variety of specific acoustic parameters such as for example frequency and voice quality features. This study is to analyse the potential to evaluate distress and frailty through digital voice analysis. On the contrary to the existing studies, it is intended to record audio and clinical evaluation data from the same subject multiple times during several weeks to be able to analyse temporal changes. This will allow to not only perform inter-subject but as well intra-subject comparisons of changes in audio features with changes of the patient's wellbeing over time. To make the patient speak as freely and relaxed as possible, the patient will describe different images. Different features will be extracted from the audios and potential candidates for a larger patient study will be identified, if data quantity permits using machine learning algorithms. Therefore this study evaluates if it is feasible to gather digital voice samples for voice analyses from cancer patients alongside conventional assessments for frailty (G8 questionnaire and distress (Distress Thermometer) to conduct first, preliminary analyses for identification of potential correlates between voice features and frailty or distress and between changes over time.
Recruitment & Eligibility
- Status
- RECRUITING
- Sex
- All
- Target Recruitment
- 100
- Active cancer or haemato-oncological malignancy
- Adults (≥ 18 years)
- Ability to understand, speak and read German language fluently
- Ability to provide written consent
- Sufficient or corrected vision to see the images
- Sufficient auditory comprehension for participation in the study based on the therapist's clinical opinion
- Ability to concentrate for 20-30 minutes based on the investigator's clinical opinion
- Signed informed consent to the study
- Aphonia, dysphonia or other obvious voice alterations of patient's voice
- Life-expectancy shorter ≤ 14 days as judged by a physician or nurse via "surprise question"
- Breathlessness whilst speaking
- Cognitive impairment as judged by physician or Mini-Cog in the G8 screening tool
- Severe physical, emotional or existential suffering because of which the enrollment and participation in the study would result in patient burden, as judged by the treating physicians and their multiprofessional team members
Study & Design
- Study Type
- OBSERVATIONAL
- Study Design
- Not specified
- Primary Outcome Measures
Name Time Method Change of duration of the breaks between the words during a 16-week period for each patient Change of duration of the breaks between the words extracted from the patient's audio data to estimate the changes in distress and frailty.
Change of shimmer (variation in peak-to-peak amplitude) during a 16-week period for each patient Change of shimmer (variation in peak-to-peak amplitude) extracted from the patient's audio data to estimate the changes in distress and frailty.
Change of verbal fluency during a 16-week period for each patient Change of verbal fluency extracted from the patient's audio data to estimate the changes in distress and frailty.
Change of skewness during a 16-week period for each patient Change of skewness extracted from the patient's audio data to estimate the changes in distress and frailty.
Change of kurtosis during a 16-week period for each patient Change of kurtosis extracted from the patient's audio data to estimate the changes in distress and frailty.
Change of first few formants (F1, F2) during a 16-week period for each patient Change of first few formants (F1, F2) extracted from the patient's audio data to estimate the changes in distress and frailty.
Change of voice strength (volume) of the vowel during a 16-week period for each patient Change of voice strength (volume) of the vowel extracted from the patient's audio data to estimate the changes in distress and frailty.
Change of duration of length of the answer during a 16-week period for each patient Change of duration of length of the answer extracted from the patient's audio data to estimate the changes in distress and frailty.
Change of word duration of individual words during a 16-week period for each patient Change of word duration of individual words extracted from the patient's audio data to estimate the changes in distress and frailty.
Change of mean fundamental frequency extracted from the patient's audio data during a 16-week period for each patient Change of mean fundamental frequency extracted from the patient's audio data to estimate the changes in distress and frailty.
Change of jitter (variation in F0 from cycle to cycle) during a 16-week period for each patient Change of jitter (variation in F0 from cycle to cycle) extracted from the patient's audio data to estimate the changes in distress and frailty.
- Secondary Outcome Measures
Name Time Method
Trial Locations
- Locations (2)
Kantonsspital Baselland, Klinik für Onkologie, Hämatologie und Immuntherapie
🇨🇭Liestal, Switzerland
Palliativzentrum Hildegard, Basel
🇨🇭Basel, Switzerland