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Respiratory diseases represent a persistent global health challenge, underscoring the need for intelligent, accurate, and personalized diagnostic and therapeutic systems. Existing methods frequently suffer from limitations in diagnostic precision, lack of individualized treatment, and constrained adaptability to complex clinical scenarios. To address these challenges, our study introduces a modular AI-powered framework that integrates an audio-based disease classification model with simulated molecular biomarker profiles to evaluate the feasibility of future multimodal diagnostic extensions, alongside a synthetic-data-driven prescription recommendation engine. The disease classification model analyzes respiratory sound recordings and accurately distinguishes among eight clinical classes: bronchiectasis, pneumonia, upper respiratory tract infection (URTI), lower respiratory tract infection (LRTI), asthma, chronic obstructive pulmonary disease (COPD), bronchiolitis, and healthy respiratory state. The proposed model achieved a classification accuracy of 99.99% on a holdout test set, including 94.2% accuracy on pediatric samples. In parallel, the prescription module provides individualized treatment recommendations comprising drug, dosage, and frequency trained on a carefully constructed synthetic dataset designed to emulate real-world prescribing logic.The model achieved over 99% accuracy in medication prediction tasks, outperforming baseline models such as those discussed in research. Minimal misclassification in the confusion matrix and strong clinician agreement on 200 prescriptions (Cohen's κ = 0.91 [0.87-0.94] for drug selection, 0.78 [0.74-0.81] for dosage, 0.96 [0.93-0.98] for frequency) further affirm the system's reliability. Adjusted clinician disagreement rates were 2.7% (drug), 6.4% (dosage), and 1.5% (frequency). SHAP analysis identified age and smoking as key predictors, enhancing model explainability. Dosage accuracy was 91.3%, and most disagreements occurred in renal-impaired and pediatric cases. However, our study is presented strictly as a proof-of-concept. The use of synthetic data and the absence of access to real patient records constitute key limitations. A trialed clinical deployment was conducted under a controlled environment with a positive rate of satisfaction from experts and users, but the proposed system must undergo extensive validation with de-identified electronic medical records (EMRs) and regulatory scrutiny before it can be considered for practical application. Nonetheless, the findings offer a promising foundation for the future development of clinically viable AI-assisted respiratory care tools.
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http://dx.doi.org/10.3390/ijms26157135 | DOI Listing |
Drug Alcohol Rev
September 2025
The Prescription Drug Misuse Education and Research (PREMIER) Center, University of Houston, Houston, Texas, USA.
Introduction: Buprenorphine is effective for opioid use disorder (OUD), yet adherence remains suboptimal. This study aimed to identify adherence trajectories, explore their predictors, and assess their association with opioid overdose risk and healthcare costs.
Methods: A retrospective cohort study was conducted using the Merative MarketScan Commercial Database, which includes a nationally representative sample of individuals with private, employer-sponsored health insurance in the United States.
Emerg Med Australas
October 2025
Emergency and Trauma Centre, The Alfred Hospital, Melbourne, Victoria, Australia.
Objectives: Acute pyelonephritis (APN) is a common diagnosis among patients presenting to the Emergency Department (ED). It is treated by empiric antibiotics within the ED. With a rise in antimicrobial resistance globally, it is unknown whether patients are being managed with empiric antibiotics that are appropriate for the causative organisms of APN.
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October 2025
Australian Centre for Health Services Innovation, School of Public Health & Social Work, Queensland University of Technology, Brisbane, Queensland, Australia.
Reliably defining the risk of adverse in-flight events in aeromedical trauma patients could enable more informed pre-departure treatment and guide central asset allocation to achieve better system-level outcomes. Unfortunately, the current literature base specifically examining the in-flight period is sparse. Flight duration is often considered a proxy for the risk of in-flight deterioration; however, there is limited data to support this commonly held assumption.
View Article and Find Full Text PDFBr J Health Psychol
September 2025
Manchester Centre for Health Psychology, School of Health Sciences, University of Manchester, Manchester, UK.
Objective: This study applied the Theoretical Domains Framework (TDF) to explore the barriers and enablers to optimizing post-operative pain management and supporting safe opioid use from the perspectives of both patients and health care professionals, applying the Theoretical Domains Framework (TDF).
Design: Experience-based co-design (EBCD) qualitative study.
Methods: In the initial phase of the EBCD approach, focus groups were conducted comprising 20 participants, including 8 patients and 12 health care professionals involved in post-operative care.
Rev Med Liege
September 2025
Service de Diabétologie, Nutrition et Maladies métaboliques, CHU Liège, Belgique.
Type 1 diabetes (T1D) is an autoimmune chronic disease that leads to the destruction of pancreatic beta cells and thus requires lifelong insulin therapy. Constraints and adverse events associated to insulin therapy are well known as well as the risk of long-term complications linked to chronic hyperglycaemia. Symptomatic T1D is preceded by a preclinical asymptomatic period, which is characterized by the presence of at least two auto-antibodies against beta cell without disturbances of blood glucose control (stage 1) or, in addition to immunological biomarkers, by the presence of mild dysglycaemia reflecting a defect of early insulin secretion (stage 2).
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