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首页> 外文期刊>BMC Infectious Diseases >Derivation and validation of a prognostic model for predicting in-hospital mortality in patients admitted with COVID-19 in Wuhan, China: the PLANS (platelet lymphocyte age neutrophil sex) model
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Derivation and validation of a prognostic model for predicting in-hospital mortality in patients admitted with COVID-19 in Wuhan, China: the PLANS (platelet lymphocyte age neutrophil sex) model

机译:衍生和验证预测武汉Covid-19患者中住院死亡率的预测模型:计划(血小板淋巴细胞年龄中性粒细胞性别)模型

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摘要

Previous published prognostic models for COVID-19 patients have been suggested to be prone to bias due to unrepresentativeness of patient population, lack of external validation, inappropriate statistical analyses, or poor reporting. A high-quality and easy-to-use prognostic model to predict in-hospital mortality for COVID-19 patients could support physicians to make better clinical decisions. Fine-Gray models were used to derive a prognostic model to predict in-hospital mortality (treating discharged alive from hospital as the competing event) in COVID-19 patients using two retrospective cohorts (n?=?1008) in Wuhan, China from January 1 to February 10, 2020. The proposed model was internally evaluated by bootstrap approach and externally evaluated in an external cohort (n?=?1031). The derivation cohort was a case-mix of mild-to-severe hospitalized COVID-19 patients (43.6% females, median age 55). The final model (PLANS), including five predictor variables of platelet count, lymphocyte count, age, neutrophil count, and sex, had an excellent predictive performance (optimism-adjusted C-index: 0.85, 95% CI: 0.83 to 0.87; averaged calibration slope: 0.95, 95% CI: 0.82 to 1.08). Internal validation showed little overfitting. External validation using an independent cohort (47.8% female, median age 63) demonstrated excellent predictive performance (C-index: 0.87, 95% CI: 0.85 to 0.89; calibration slope: 1.02, 95% CI: 0.92 to 1.12). The averaged predicted cumulative incidence curves were close to the observed cumulative incidence curves in patients with different risk profiles. The PLANS model based on five routinely collected predictors would assist clinicians in better triaging patients and allocating healthcare resources to reduce COVID-19 fatality.
机译:以前发表的Covid-19患者的预后模型已被建议由于患者人口不足,缺乏外部验证,统计分析或报告不当而倾向于偏见。一种高质量,易于使用的预后模型,以预测Covid-19患者的住院死亡率可以支持医生以提高临床决策。精细灰色模型用于推导预后模型,以预测使用两个回顾性队列(N?= 1008)的Covid-19患者在Covid-19患者中预测住院死亡率(作为竞争事件排出的竞争事件) 1至2月10日,2020年。拟议的模型是通过自举方法的内部评估,并在外部队列中进行外部评估(n?= 1031)。衍生队队列是轻度至严重住院的Covid-19患者的案例混合(43.6%的女性,中位年龄55岁)。最终模型(计划),包括五个血小板计数,淋巴细胞计数,年龄,中性粒细胞计数和性别的五个预测变量,具有出色的预测性能(乐观性调整的C折射率:0.85,95%Ci:0.83至0.87;平均校准斜率:0.95,95%CI:0.82至1.08)。内部验证表现出很少的过度。外部验证使用独立队列(47.8%的女性,中位数63岁)显示出优异的预测性能(C折射率:0.87,95%CI:0.85至0.89;校准斜率:1.02,95%CI:0.92至1.12)。平均预测的累积发生率曲线接近不同风险概况的患者中观察到的累积发生率曲线。根据五个常规收集的预测因子的计划模型可以帮助临床医生在更好的三环患者中,并分配医疗资源以减少Covid-19致命。

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