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The COVID-19 pandemic has underscored the critical necessity for robust and accurate predictive frameworks to bolster global healthcare infrastructures. This study presents a comprehensive examination of convolutional neural networks (CNNs) applied to the prediction of COVID-19-related health outcomes, with an emphasis on core challenges, methodological constraints, and potential remediation strategies. Our investigation targets two principal aims: the identification of COVID-19 infections through chest radiographic imaging, specifically X-rays, and the prognostication of disease severity by integrating clinical parameters and electronic health records. Utilizing a multidimensional dataset encompassing demographic, clinical, and radiological information, we evaluated the efficacy of CNN architectures in forecasting patient prognoses. The CNN model attained an accuracy of 97.2%, reflecting its capability while simultaneously revealing significant challenges, including limited and imbalanced data, as well as difficulties in model interpretability. Principal limitations identified comprise overfitting, data heterogeneity, and the imperative for model adaptability amid evolving SARS-CoV-2 variants. To mitigate these issues, we propose strategies such as data augmentation, transfer learning, ensemble modeling, and enhancements in explainability, which collectively demonstrated improvements in predictive performance and theoretical robustness. This work highlights the imperative for continuous model refinement and the integration of domain-specific expertise to elevate the reliability and applicability of CNN-based prognostic tools for COVID-19 healthcare analytics. Our empirical results indicate that the CNN achieved a precision of 96.8%, an F1-score of 97.2%, and an AUC-ROC of 0.987, underscoring its effectiveness in detecting and classifying COVID-19 cases. These insights provide valuable directions for researchers and clinicians, fostering data-driven approaches in the management and prediction of COVID-19 health outcomes.
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http://dx.doi.org/10.1038/s41598-025-15218-y | DOI Listing |
JMIR Hum Factors
September 2025
Villa Beretta Rehabilitation Center, Costa Masnaga, Italy.
Background: Telerehabilitation is a promising solution to provide continuity of care. Most existing telerehabilitation platforms focus on rehabilitating upper limbs, balance, and cognitive training, but exercises improving cardiovascular fitness are often neglected.
Objective: The objective of this study is to evaluate the acceptability and feasibility of a telerehabilitation intervention combining cognitive and aerobic exercises.
JMIR Public Health Surveill
September 2025
Center of Indigenous Health Care, Department of Community Health, Kaohsiung Medical University Chung-Ho Memorial Hospital, Kaohsiung, Taiwan.
Background: The COVID-19 pandemic has devastated economies and strained health care systems worldwide. Vaccination is crucial for outbreak control, but disparities persist between and within countries. In Taiwan, certain indigenous regions show lower vaccination rates, prompting comprehensive inquiries.
View Article and Find Full Text PDFEpidemiol Serv Saude
September 2025
Universidade Federal de Pelotas, Pelotas, Programa de Pós-Graduação em Odontologia, Pelotas, RS, Brazil.
Objective: To analyze the use of teledentistry in Primary Healthcare in Brazil at the end of the second year of the COVID-19 pandemic.
Methods: Cross-sectional study with dentists and dental surgeons in Primary Healthcare. Study data were obtained through an online form.
Epidemiol Serv Saude
September 2025
Universidade Federal da Bahia, Programa de Pós-Graduação em Saúde, Ambiente e Trabalho, Salvador, BA, Brazil.
Objective: Estimate mortality indicators and impact of COVID-19 on healthcare workers in Bahia in the period 2020-2022.
Methods: This is a descriptive study, with death data extracted from the Brazilian Mortality Information System. Population data were obtained from professional councils, the National Registry of Health Establishments and the Brazilian National Immunization Program Information System.
Cien Saude Colet
August 2025
School of Public Health, Harvard University. Boston Estados Unidos.
In this multicenter, cross-sectional and quantitative study we evaluated the influence of urban violence and COVID-19 on the work process and team rapport of community health workers (CHWs) in eight municipalities of Northeastern Brazil. The collected information covered sociodemographics, work routines, exposure to violence, self-efficacy and coronavirus anxiety. A logistic regression was performed using as outcome variable the answer to the question: "Do you think your team work process changed during the pandemic?" The sample included 1,944 CHWs, of whom 56.
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