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Objective: Telehealth paradigms are essential for remotely managing patients with chronic conditions. To assist clinicians in handling the large volumes of data collected through these systems, clinical decision support systems (CDSSs) have been developed. However, the effectiveness of CDSSs depends on the quality of remotely recorded physiological data and the reliability of the algorithms used for processing this data. This study aims to reliably detect atrial fibrillation (AF) from short-term single-lead (STSL) electrocardiogram (ECG) recordings obtained in unsupervised telehealth environments.
Methods: A novel deep ensemble-based method was developed for detecting AF from STSL ECG recordings. Following this, a postprocessing algorithm was created to assess uncertainty in classified STSL ECGs and to refrain from interpretation when confidence is low. The proposed method was validated through a 5-fold cross-validation on the Cardiology Challenge 2017 (CinC2017) dataset.
Results: The deep ensemble method achieved 83.5 1.5% sensitivity, 98.4 0.2% specificity, and an F-score of 0.847 0.016in AF detection. Implementing the selective classification algorithm resulted in significant improvements, with sensitivity increasing to 92.8 2.2%, specificity to 99.7 0.0%, and an F-score of 0.919 0.016.
Conclusion: The proposed method demonstrates the feasibility of accurately detecting AF from STSL ECG recordings. The selective classification approach offers a substantial enhancement to automated ECG interpretation algorithms in telehealth solutions.
Significance: These findings highlight the potential for improving the utility of telehealth systems by integrating advanced CDSSs capable of managing uncertainty and ensuring higher accuracy, thereby improving patient outcomes in remote healthcare settings.
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http://dx.doi.org/10.1109/TBME.2024.3476088 | DOI Listing |
Proteomics Clin Appl
September 2025
AIBioMed Research Group, Taipei Medical University, Taipei, Taiwan.
Background: Endometrial carcinoma (EC) represents a significant clinical challenge due to its pronounced molecular heterogeneity, directly influencing prognosis and therapeutic responses. Accurate classification of molecular subtypes (CNV-high, CNV-low, MSI-H, POLE) and precise tumor mutational burden (TMB) assessment is crucial for guiding personalized therapeutic interventions. Integrating proteomics data with advanced machine learning (ML) techniques offers a promising strategy for achieving precise, clinically actionable classification and biomarker discovery in EC.
View Article and Find Full Text PDFTurk J Pharm Sci
September 2025
Chandigarh College of Pharmacy, Chandigarh Group of Colleges, Landran, Punjab.
Objectives: Lycopene is a powerful antioxidant with diverse health benefits. However, it belongs to the Biopharmaceutics Classification System II; thus, it depicts poor water solubility and dissolution. Its lipophilic nature hinders the bioavailability of this drug.
View Article and Find Full Text PDFEnviron Microbiol Rep
October 2025
École d'urbanisme et d'architecture de paysage, Faculté de l'aménagement, Université de Montréal, Montréal, Québec, Canada.
Bioretention (BR) systems are green infrastructures used to manage runoff even in cold climates. Bacteria and fungi play a role in BR's performance. This mesocosm study investigated the influence of plant species and de-icing salt on the diversity, the community composition, and the differential abundance of bacteria and fungi in BR.
View Article and Find Full Text PDFBiotechnol Lett
September 2025
Shandong Provincial Engineering Research Center for Precision Nutrition and Healthy Elderly Care, Qilu Medical University, 1678 Renmin West Road, Zibo, 255300, People's Republic of China.
Fatty acid synthase (FAS) is one of the most important enzymes in lipid biosynthesis, which can catalyze the reaction of acetyl-CoA and malonyl-CoA to produce fatty acids. However, the structure, function, and molecular mechanism of FAS regulating lipid synthesis in the fungus Mucor circinelloides are unclear. In the present study, two encoding fas genes in the high lipid-producing strain WJ11 and low lipid-producing strain CBS277.
View Article and Find Full Text PDFMicrobes Environ
September 2025
Research Field in Agriculture, Agriculture Fisheries and Veterinary Medicine Area, Kagoshima University.
Sweet potato foot rot disease caused by Diaporthe destruens (formerly Plenodomus destruens) severely affects the yield and quality of sweet potatoes. To gain basic knowledge on regulating the pathogen using indigenous soil bacteria, the following organic materials were applied to potted soils collected from a sweet potato field contaminated with D. destruens: Kuroihitomi (compost made from shochu waste and chicken manure), Soil-fine (material made by adsorbing shochu waste on rice bran), and rice bran.
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