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Background: Mobile health applications are increasingly valued for their role in asthma management and the opportunity for large dataset collection. Our study aimed to investigate the feasibility of applying signal-processing and machine-learning technologies to detect alterations in the lower airway caliber and develop a machine-learning algorithm to identify changes in vocal biomarkers and detect bronchoconstriction in patients with airway hyperreactivity.
Methods: This is an explorative observational prospective longitudinal study focused on vocal biomarkers and their association with bronchial constriction and respiratory function. Non-smoker adults with clinical suspicion of asthma were consecutively enrolled from May 2023 to September 2023. At each step of a Methacholine Challenge Test (MCT) performed on these patients, the respiratory sounds were recorded via a smartphone through an app specifically developed. Several biomarkers were extracted and their relationship with the change in Forced Expiratory Volume in the first second (FEV1) was measured.
Results: Forty-two subjects were enrolled. The highest correlation with FEV1 came from exhalation vocal events. No single feature exhibited robust behavior across different subjects, while each subject showed "personal" highly correlated features. All values were strongly statistically significant irrespectively of the result of MCT.
Conclusion: The app's algorithm is sensitive in correlating specific vocal biomarkers to FEV1 variations during MCT. This feature may assist physicians in diagnosing asthma and its exacerbation and in assessing therapy response and adherence. The socio-economic implications might be significant, and the simplicity of use makes it an ideal tool for research.
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http://dx.doi.org/10.1002/clt2.70055 | DOI Listing |
Acta Neuropsychiatr
September 2025
Goethe-University Frankfurt am Main; Department of Psychiatry, Psychosomatic Medicine and Psychotherapy, University Hospital, Frankfurt, Germany.
Objective: Cortisol is a well-established biomarker of stress, assessed through salivary or blood samples, which are intrusive and time-consuming. Speech, influenced by physiological stress responses, offers a promising non-invasive, real-time alternative for stress detection. This study examined relationships between speech features, state anger, and salivary cortisol using a validated stress-induction paradigm.
View Article and Find Full Text PDFBMJ Open
September 2025
Luxembourg Institute of Health, Strassen, Luxembourg.
Introduction: Stress is nearly ubiquitous in everyday life; however, it imposes a tremendous burden worldwide by acting as a risk factor for most physical and mental diseases. The effects of geographic environments on stress are supported by multiple theories acknowledging that natural environments act as a stress buffer and provide deeper and quicker restorative effects than most urban settings. However, little is known about how the temporalities of exposure to complex urban environments (duration, frequency and sequences of exposures) experienced in various locations - as shaped by people's daily activities - affect daily and chronic stress levels.
View Article and Find Full Text PDFFront Digit Health
August 2025
Division of Informatics, Clinical Epidemiology, Oregon Health and Science University, Portland, OR, United States.
Benign and malignant vocal fold lesions can alter voice quality and lead to significant morbidity or, in the case of malignancy, mortality. Early, noninvasive identification of these lesions using voice as a biomarker may improve diagnostic access and outcomes. In this study, we analyzed data from the initial release of the Bridge2AI-Voice dataset to evaluate which acoustic features best distinguish laryngeal cancer and benign vocal fold lesions from other vocal pathologies and healthy voice function.
View Article and Find Full Text PDFPoult Sci
August 2025
College of Veterinary Medicine, Nanjing Agricultural University, Nanjing 210095, China. Electronic address:
With the advancement of precision livestock farming (PLF), acoustic technology has emerged as a key tool for tracking the health and well-being of laying hens, owing to its non-invasive, real-time and cost-effective nature. In this study, continuous audio data were collected from commercial chicken houses over a period of 15 days, in addition to temperature and humidity index (THI) analysis, to develop a convolutional neural network (CNN)-based model for classifying chicken squawks. This approach enabled the investigation of the relationship between environmental adaptability and acoustic traits in a mixed-sex rearing system.
View Article and Find Full Text PDFSemin Diagn Pathol
September 2025
Institute of Pathology, Erlangen University Hospital, Friedrich Alexander University of Erlangen-Nuremberg, Erlangen, Germany; Comprehensive Cancer Center, European Metropolitan Area Erlangen-Nuremberg (CCC ER-EMN), Erlangen, Germany. Electronic address:
The increasing use of next generation sequencing (NGS) technologies has resulted in a rapid increase in molecularly defined mesenchymal entities and enabled molecular characterization of existing phenotypically defined entities. These recent developments have expanded the clinicopathological spectrum of ALK-rearranged neoplasia, at same time highlighting a wide array of non-ALK fusions in many ALK immunoreactive neoplasms. This led to emergence of an "ALK vs.
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