Anemia is common in patients post-ICU discharge. However, which patients will develop or recover from anemia remains unclear. Prediction of anemia in this population is complicated by hospital readmissions, which can have substantial impacts on hemoglobin levels due to surgery, blood transfusions, or being a proxy for severe illness. We therefore introduce a novel Bayesian joint longitudinal model for hemoglobin over time, which includes specific parametric effects for hospital admission and discharge. These effects themselves depend on a patient's hemoglobin at time of hospitalization; therefore hemoglobin at a given time is a function of that patient's complete history of admissions and discharges up until that time. However, because the effects of an admission or discharge do not depend on themselves, the model remains well defined. We validate our model on a retrospective cohort of 6,876 patients from the Rochester Epidemiology Project using cross-validation, and find it accurately estimates hemoglobin and predicts anemic status and hospital readmission in the 30 days post-discharge with AUCs of .82 and .72, respectively.
翻译:然而,由于医院的重新接纳,使这一人群中贫血症的预测复杂化,由于外科手术、输血或作为重病的代用品,这可能会对血红蛋白水平产生重大影响。因此,我们引入了一个新颖的贝叶西亚血红蛋白联合纵向模型,其中包括住院和出院的具体参数影响。这些影响本身取决于住院时病人的血红蛋白;因此,特定时间的血红蛋白是该病人完全的入院和出院史和出院史的一个函数,而住院或出院并不取决于他们自己,因此,该模型仍然很明确。我们用交叉校验,验证了Rochester Epentemicro项目6,876名病人的追溯组别,并发现它准确估计了血红蛋白并预测了在与82年和72年的ACUC的30天后重新入院的情况。