Background: Although young women ( aged <= 55 years) are at higher risk than similarly aged men for hospital readmission within 1 year after an acute myocardial infarction (AMI), no risk prediction models have been developed for them. The present study developed and internally validated a risk prediction model of 1-year post-AMI hospital readmission among young women that considered demographic, clinical, and gender-related variables.Methods: We used data from the US Variation in Recovery: Role of Gender on Outcomes of Young AMI Patients (VIRGO) study (n = 2007 women), a prospective observational study of young patients hospitalized with AMI. Bayesian model averaging was used for model selection and bootstrapping for internal validation. Model calibration and discrimination were respectively assessed with calibration plots and area under the curve.Results: Within 1-year post-AMI, 684 women (34.1%) were readmitted to the hospital at least once. The final model predictors included: any in-hospital complication, baseline perceived physical health, obstructive coronary artery disease, diabetes, history of congestive heart failure, low income ( < $30,000 US), depressive symptoms, length of hospital stay, and race (White vs Black). Of the 9 retained predictors, 3 were gender-related. The model was well calibrated and exhibited modest discrimination (area under the curve = 0.66).Conclusions: Our female-specific risk model was developed and internally validated in a cohort of young female patients hospitalized with AMI and can be used to predict risk of readmission. Whereas clinical factors were the strongest predictors, the model included several gender-related variables (ie, perceived physical health, depression, income level). However, discrimination was modest, indicating that other unmeasured factors contribute to variability in hospital readmission risk among younger women.

Young Women With Acute Myocardial Infarction: Risk Prediction Model for 1-Year Hospital Readmission / Dreyer, Rachel P.; Arakaki, Andrew; Raparelli, Valeria; Murphy, Terrence E.; Tsang, Sui W.; D’Onofrio, Gail; Wood, Malissa; Wright, Catherine X.; Pilote, Louise. - In: CJC OPEN. - ISSN 2589-790X. - 5:5(2023), pp. 335-344. [10.1016/j.cjco.2022.12.004]

Young Women With Acute Myocardial Infarction: Risk Prediction Model for 1-Year Hospital Readmission

Raparelli, Valeria;
2023

Abstract

Background: Although young women ( aged <= 55 years) are at higher risk than similarly aged men for hospital readmission within 1 year after an acute myocardial infarction (AMI), no risk prediction models have been developed for them. The present study developed and internally validated a risk prediction model of 1-year post-AMI hospital readmission among young women that considered demographic, clinical, and gender-related variables.Methods: We used data from the US Variation in Recovery: Role of Gender on Outcomes of Young AMI Patients (VIRGO) study (n = 2007 women), a prospective observational study of young patients hospitalized with AMI. Bayesian model averaging was used for model selection and bootstrapping for internal validation. Model calibration and discrimination were respectively assessed with calibration plots and area under the curve.Results: Within 1-year post-AMI, 684 women (34.1%) were readmitted to the hospital at least once. The final model predictors included: any in-hospital complication, baseline perceived physical health, obstructive coronary artery disease, diabetes, history of congestive heart failure, low income ( < $30,000 US), depressive symptoms, length of hospital stay, and race (White vs Black). Of the 9 retained predictors, 3 were gender-related. The model was well calibrated and exhibited modest discrimination (area under the curve = 0.66).Conclusions: Our female-specific risk model was developed and internally validated in a cohort of young female patients hospitalized with AMI and can be used to predict risk of readmission. Whereas clinical factors were the strongest predictors, the model included several gender-related variables (ie, perceived physical health, depression, income level). However, discrimination was modest, indicating that other unmeasured factors contribute to variability in hospital readmission risk among younger women.
2023
acute heart infarction; adult; Article; Bayes theorem; Black person; Caucasian; clinical assessment; clinical feature; cohort analysis; congestive heart failure; controlled study; depression; diabetes mellitus; female; gender;
01 Pubblicazione su rivista::01a Articolo in rivista
Young Women With Acute Myocardial Infarction: Risk Prediction Model for 1-Year Hospital Readmission / Dreyer, Rachel P.; Arakaki, Andrew; Raparelli, Valeria; Murphy, Terrence E.; Tsang, Sui W.; D’Onofrio, Gail; Wood, Malissa; Wright, Catherine X.; Pilote, Louise. - In: CJC OPEN. - ISSN 2589-790X. - 5:5(2023), pp. 335-344. [10.1016/j.cjco.2022.12.004]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1706679
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