Structural Model of Biomedical and Contextual Factors Predicting In-Hospital Mortality due to Heart Failure.
Juan Manuel García TorrecillasMaría Carmen Lea-PereiraEnrique Alonso-MorillejoEmilio Moreno-MillánJesús de la Fuente-AriasPublished in: Journal of personalized medicine (2023)
Background : Among the clinical predictors of a heart failure (HF) prognosis, different personal factors have been established in previous research, mainly age, gender, anemia, renal insufficiency and diabetes, as well as mediators (pulmonary embolism, hypertension, chronic obstructive pulmonary disease (COPD), arrhythmias and dyslipidemia). We do not know the role played by contextual and individual factors in the prediction of in-hospital mortality. Methods : The present study has added hospital and management factors (year, type of hospital, length of stay, number of diagnoses and procedures, and readmissions) in predicting exitus to establish a structural predictive model. The project was approved by the Ethics Committee of the province of Almeria. Results : A total of 529,606 subjects participated, through databases of the Spanish National Health System. A predictive model was constructed using correlation analysis (SPSS 24.0) and structural equation models (SEM) analysis (AMOS 20.0) that met the appropriate statistical values (chi-square, usually fit indices and the root-mean-square error approximation) which met the criteria of statistical significance. Individual factors, such as age, gender and chronic obstructive pulmonary disease, were found to positively predict mortality risk. Isolated contextual factors (hospitals with a greater number of beds, especially, and also the number of procedures performed, which negatively predicted the risk of death. Conclusions : It was, therefore, possible to introduce contextual variables to explain the behavior of mortality in patients with HF. The size or level of large hospital complexes, as well as procedural effort, are key contextual variables in estimating the risk of mortality in HF.
Keyphrases
- chronic obstructive pulmonary disease
- heart failure
- pulmonary embolism
- healthcare
- type diabetes
- public health
- cardiovascular disease
- mental health
- blood pressure
- acute heart failure
- lung function
- quality improvement
- atrial fibrillation
- big data
- inferior vena cava
- emergency department
- coronary artery disease
- adipose tissue
- artificial intelligence
- insulin resistance
- acute care
- deep learning