This study aims to construct a prediction model for the demand for medical and daily care services of the elderly and to explore the factors that affect the demand for medical and daily care services of the elderly. In this study, a questionnaire survey on the demand for medical and daily care services of 1291 elderly was conducted using multi-stage stratified whole cluster random sampling. SPSS21.0 statistical analysis software was used to describe the basic data of the elderly statistically, and univariate analysis was used to screen variables for model construction and binary logistic regression analysis. The acquired dataset has class imbalance, and to handle this issue, Synthetic Minority Over Sampling Technique with TomekLink (SMOTE-TomekLink) was adopted to resample the dataset for class-balancing. To improve computational efficiency, we used three algorithms to develop prediction models, including Random Forest (RF), Gradient Boosting Decision Tree (GBDT), and Light Gradient Boosting Machine (LightGBM) algorithms. The performance of each model was measured, and the performance of the prediction model was obtained using the following performance metrics: accuracy (ACC), recall (R), precision (P), F1-score, and area under the receiver operating characteristic (AUC). The prediction models for the medical and daily care services demand of the elderly were developed and validated using 12 and 13 key features, respectively. The LightGBM algorithm emerged as the superior prediction model for estimating the service needs of the elderly. For the medical service demand prediction model, LightGBM achieved an AUC of 0.910 and F1-score of 0.841. In the daily care services demand prediction model, LightGBM demonstrated an AUC of 0.906 and an F1-score of 0.819. In the LightGBM model, the analysis of feature importance indicates that the number of chronic diseases, education level, and financial sources emerge as the most significant predictors for the demand of healthcare services, encompassing both medical and daily care services. Based on questionnaire information combined with feature selection, unbalanced data processing and machine learning methods, this study constructed a machine learning model for predicting the demand for medical and daily care services for the elderly, and analyzed the influencing factors of the demand for medical and daily care services for the elderly, providing a reference for the construction and verification of future prediction models for the demand for medical and daily care services for the elderly.
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http://dx.doi.org/10.1038/s41598-025-92722-1 | DOI Listing |
Blood
March 2025
Vanderbilt UniversityVanderbilt-Meharry Center of Excellence in Sickle Cell Disease, Nashville, Tennessee, United States.
Recurrent ischemic priapism is a common complication of sickle cell anemia (SCA) and is associated with devastating physical and psychosocial consequences. All previous trials for priapism prevention have failed to demonstrate clear efficacy. We conducted a randomized, controlled, double-blind phase 2 feasibility trial comparing fixed moderate-dose hydroxyurea plus placebo (usual care arm) versus fixed moderate-dose hydroxyurea plus tadalafil (experimental arm) in 64 men (18- 40 years) with at least three episodes of SCA-related priapism in the past 12 months.
View Article and Find Full Text PDFDiabetes Care
March 2025
Florida State University College of Nursing, Tallahassee, FL.
Objective: Diabetes devices, including continuous glucose monitors (CGMs) and insulin pumps, may significantly affect environmental sustainability and long-term resilience.
Research Design And Methods: This observational study enrolled 49 adults with diabetes using CGMs, insulin pumps, or multiple daily injections (MDIs; three or more per day). Participants completed daily surveys detailing the types and amounts of diabetes-related waste discarded.
J Pediatr Orthop
March 2025
Shriners Children's Portland, Portland, OR.
Background: Toe walking is prevalent among children, affecting 5% to 24% of the pediatric population. Clinicians rely on parental reports of frequency of toe walking to guide clinical decision making and outcomes assessment. However, recall accuracy and differing environments challenge the reliability of parental reports.
View Article and Find Full Text PDFAging Clin Exp Res
March 2025
Data Science for Health, Fondazione Bruno Kessler, Via Sommarive 18, Trento, 38123, Italy.
Background: Early prediction of progression in dementia is of major importance for providing patients with adequate clinical care, with considerable impact on the organization of the whole healthcare system.
Aims: The main task is tailoring robust and consolidated machine learning models to detect which neuropsychological tests are more effective in predicting a patient's mental status. In a translational medicine perspective, such identification tool should find its place in the clinician's toolbox as a support throughout his daily diagnostic routine.
Curr Opin Support Palliat Care
March 2025
Wolfson Palliative Care Research Centre, University of Hull, Hull, East Yorkshire, UK.
Purpose Of The Review: This review summarises high-level evidence for fan therapy and adds a commentary on the relatively-neglected question of how to optimise benefits based on qualitative evidence, clinical experience and broader research and theory.
Recent Findings: Recent high-level evidence suggests the fan reduces time to recovery from episodic breathlessness rather than reduces daily levels over a longer period. Lower grade evidence suggests the fan can also help people increase their physical activity.
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