Objective: Prognostic risk stratification in heart failure is crucial to guide clinical decision-making.The aim of our study was to develop a prognostic discharge risk score model to predict all-cause mortality for chronic heart failure patients with multiple co-morbidities and severe systolic dysfunction.
Methods And Results: A multivariable logistic regression model was developed with the use of data on clinical, laboratory, imaging and therapeutic findings of 630 patients with advanced systolic heart failure. A risk score model was developed based on multiplying the beta-coefficient number of each variable in the multivariable model. The model performance was evaluated by concordance index and internally validated by the bootstrapping method. 313 patients (49.7%) of the cohort died during a median follow-up duration of 54 months. Median age was 66 years, 37% were female, 26% had atrial fibrillation and 40% had diabetes mellitus. The mean left ventricular ejection fraction (EF) was 25 +/- 10% and 264 patients (42%) had left ventricular EF < or = 20%. Independent predictors of mortality were older than 70 years, orthopnoea, previous hospitalisations, lack of renin-angiotensin system inhibitor therapy at discharge, hyperuricaemia (>7 mg/dl) and haemoglobin level (<10 g/dL). Discharge risk score identified low-, intermediate- and high-risk individuals with 18%, 40% and 52% mortality rates, respectively. The risk score had a discrimination ability with a concordance index of 0.70.
Conclusions: In a large heart failure cohort, including patients with severe systolic dysfunction and having multiple comorbidities, a simple discharge risk score with non-invasive and easy-to-obtain variables during hospital admission represents a valuable tool for risk assessment.
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http://dx.doi.org/10.1080/ac.70.4.3094654 | DOI Listing |
J Med Internet Res
January 2025
Indiana University, Indianapolis, IN, United States.
Background: Heart failure (HF) is one of the most common causes of hospital readmission in the United States. These hospitalizations are often driven by insufficient self-care. Commercial mobile health (mHealth) technologies, such as consumer-grade apps and wearable devices, offer opportunities for improving HF self-care, but their efficacy remains largely underexplored.
View Article and Find Full Text PDFN Engl J Med
January 2025
University of Glasgow, Glasgow, United Kingdom.
N Engl J Med
January 2025
Zhejiang Provincial People's Hospital, Hangzhou, China
N Engl J Med
January 2025
Hospital Universitario de Jerez de la Frontera, Jerez de la Frontera, Spain.
PLoS One
January 2025
Duke Center for Policy Impact in Global Health, Durham, North Carolina, United States of America.
Background: Hypertension is the most common primary diagnosis associated with postpartum readmissions within 42 days of delivery hospitalization. In the United States, nearly half of the cases of eclampsia, a severe form of preeclampsia, develop during the postpartum period, and the postpartum onset of hypertensive disorders of pregnancy, like antepartum hypertension poses long-term health risks to pregnant individuals, including an increased likelihood of developing overall cardiovascular disease, coronary heart disease, heart failure, and chronic hypertension. In this paper, we estimate the trends in the incidence of readmissions for postpartum hypertension within 42 days of delivery discharge in the US, disaggregated by median household income.
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