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Background: The escalating global prevalence of obesity has necessitated the exploration of novel diagnostic approaches. Recent scientific inquiries have indicated potential alterations in voice characteristics associated with obesity, suggesting the feasibility of using voice as a noninvasive biomarker for obesity detection.
Objective: This study aims to use deep neural networks to predict obesity status through the analysis of short audio recordings, investigating the relationship between vocal characteristics and obesity.
Methods: A pilot study was conducted with 696 participants, using self-reported BMI to classify individuals into obesity and nonobesity groups. Audio recordings of participants reading a short script were transformed into spectrograms and analyzed using an adapted YOLOv8 model (Ultralytics). The model performance was evaluated using accuracy, recall, precision, and F-scores.
Results: The adapted YOLOv8 model demonstrated a global accuracy of 0.70 and a macro F-score of 0.65. It was more effective in identifying nonobesity (F-score of 0.77) than obesity (F-score of 0.53). This moderate level of accuracy highlights the potential and challenges in using vocal biomarkers for obesity detection.
Conclusions: While the study shows promise in the field of voice-based medical diagnostics for obesity, it faces limitations such as reliance on self-reported BMI data and a small, homogenous sample size. These factors, coupled with variability in recording quality, necessitate further research with more robust methodologies and diverse samples to enhance the validity of this novel approach. The findings lay a foundational step for future investigations in using voice as a noninvasive biomarker for obesity detection.
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http://dx.doi.org/10.2196/54885 | DOI Listing |
Public Health Genomics
September 2025
Introduction Deliberative democracy is an inclusionary approach to reaching consensus decision-making through participative and representative engagement. The Democratizing Education for Sickle Cell Disease Gene Therapy Project used a deliberative community engagement model to partner with patient advocacy and research community members within the field of sickle cell disease (SCD) gene therapy to create new, accessible patient education materials (PEMs) about SCD gene therapy. Objective Develop PEMs for sickle cell disease gene therapy and study the process of deliberative community engaged research Methods A study of the experiences of a multi-disciplinary group of participants including patients, patient advocates, health professionals, gene therapy researchers, industry and government members using a deliberative community engagement model to develop new PEMs.
View Article and Find Full Text PDFJ Gen Intern Med
September 2025
University of Colorado School of Medicine, 1890 N Revere Ct, Third Floor, Mail Stop F443, Aurora, CO, 80045, USA.
Background: The SHARE Approach Model and training curriculum was developed by the Agency for Healthcare Research and Quality (AHRQ) to teach clinicians practicing in diverse settings how to engage in more effective Shared Decision Making (SDM).
Objective: To determine the effectiveness of the SHARE Approach at improving SDM in practices located across Colorado, USA.
Design: A longitudinal study with pre- and post-intervention observations.
BMJ Open
September 2025
Amsterdam University Medical Centres, Amsterdam, Netherlands
Objective: Despite global efforts, gender disparities in oncology may persist. Understanding these disparities within the context of major conferences can inform strategies to promote gender inclusiveness in the field. This study evaluates the participation of women and men at the American Society of Clinical Oncology (ASCO) 2024 congress, focusing on chairs, speakers and audience questioners.
View Article and Find Full Text PDFGerontologist
September 2025
Department of Psychiatry, University of Rochester Medical Center, Rochester, NY, 14642, USA.
Background And Objectives: Over 12% of older Latinos in the United States have Alzheimer's disease and related dementias (ADRD), facing earlier onset of the disease and severe symptoms compared to non-Hispanic Whites. These disparities in ADRD among Latinos can lead to significant caregiver strain and burden in Latino ADRD caregivers. Notably, Latino ADRD caregivers have poor overall health outcomes and face systemic inequities including limited access to quality dementia care resources that impact their well-being significantly.
View Article and Find Full Text PDFJ Acoust Soc Am
September 2025
Applied Physics Laboratory, University of Washington, Seattle, Washington 98105, USA.
Echolocating bats provide vital ecosystem services and can be monitored effectively using passive acoustic monitoring (PAM) techniques. Duty-cycle subsampling is widely used to collect PAM data at regular ON/OFF cycles to circumvent battery and storage capacity constraints for long-term monitoring. However, the impact of duty-cycle subsampling and potential detector errors on estimating bat activity has not been systematically investigated for bats.
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