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Deep learning-based methods have demonstrated high classification performance in the detection of cardiovascular diseases from electrocardiograms (ECGs). However, their blackbox character and the associated lack of interpretability limit their clinical applicability. To overcome existing limitations, we present a novel deep learning architecture for interpretable ECG analysis (xECGArch). For the first time, short- and long-term features are analyzed by two independent convolutional neural networks (CNNs) and combined into an ensemble, which is extended by methods of explainable artificial intelligence (xAI) to whiten the blackbox. To demonstrate the trustworthiness of xECGArch, perturbation analysis was used to compare 13 different xAI methods. We parameterized xECGArch for atrial fibrillation (AF) detection using four public ECG databases ( ECGs) and achieved an F1 score of 95.43% in AF versus non-AF classification on an unseen ECG test dataset. A systematic comparison of xAI methods showed that deep Taylor decomposition provided the most trustworthy explanations ( compared to the second-best approach). xECGArch can account for short- and long-term features corresponding to clinical features of morphology and rhythm, respectively. Further research will focus on the relationship between xECGArch features and clinical features, which may help in medical applications for diagnosis and therapy.
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http://dx.doi.org/10.1038/s41598-024-63656-x | DOI Listing |
Wien Klin Wochenschr
September 2025
3rd Medical Department with Cardiology and Intensive Care Medicine, Clinik Ottakring (Wilhelminenhospital), Montleartstraße 37, 1160, Vienna, Austria.
Background: Acute heart failure (AHF) significantly contributes to cardiovascular morbidity and mortality, bearing a substantial socioeconomic burden. While the dynamics of chronic heart failure have been extensively explored in global patient cohorts, comprehensive data specific to AHF remain limited.
Methods: This retrospective, single-center, real-world study comprises hospitalized patients with AHF, admitted to a tertiary care hospital in Vienna, Austria, between 1 January 2012 and 31 December 2019.
Mol Biol Rep
September 2025
Department of Pharmacology, Govt. College of Pharmacy, Rohru, Shimla, Himachal Pradesh, 171207, India.
Alzheimer's disease (AD) is the most common, complex, and untreatable form of dementia which is characterized by severe cognitive, motor, neuropsychiatric, and behavioural impairments. These symptoms severely reduce the quality of life for patients and impose a significant burden on caregivers. The existing therapies offer only symptomatic relief without addressing the underlying silent pathological progression.
View Article and Find Full Text PDFRadiology
September 2025
Department of Biomedical Informatics, Harvard Medical School, 10 Shattuck St, Boston, MA 02115.
Despite the rapid growth of Food and Drug Administration-cleared artificial intelligence (AI)- and machine learning-enabled medical devices for use in radiology, current tools remain limited in scope, often focusing on narrow tasks and lacking the ability to comprehensively assist radiologists. These narrow AI solutions face limitations in financial sustainability, operational efficiency, and clinical utility, hindering widespread adoption and constraining their long-term value in radiology practice. Recent advances in generative and multimodal AI have expanded the scope of image interpretation, prompting discussions on the development of generalist medical AI.
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August 2025
Pediatric Nephrology, Hospital Pediátrico, Unidade Local de Saúde de Coimbra, Coimbra, PRT.
Introduction Nephrogenic diabetes insipidus (NDI) is a rare condition caused by renal resistance to the action of antidiuretic hormone (ADH) at the level of the distal tubule, resulting in impaired urinary concentration and consequent polyuria. NDI may be hereditary, most commonly X-linked due to AVPR2 gene mutations, or acquired. Objective To characterize the clinical features, management strategies, and outcomes of patients with NDI followed at a tertiary pediatric nephrology center.
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August 2025
Community Medicine Management, Shimane University, Izumo, JPN.
This systematic review synthesized findings from 17 studies conducted between 2000 and 2024, focusing on the definitions, interventions, and outcomes associated with community nursing. The studies originated from diverse countries, including Singapore, Australia, Italy, Portugal, and the United States, and employed various designs such as quasi-experimental trials, pre-post evaluations, and descriptive studies. Sample sizes ranged from 23 to over 1,600 participants, with most targeting older adults or individuals with chronic conditions.
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