Swinnerton Kaitlin, Fillmore Nathanael R, Vo Austin, La Jennifer, Elbers Danne, Brophy Mary, Do Nhan V, Monach Paul A, Branch-Elliman Westyn
VA Boston Cooperative Studies Program, Boston, MA, USA.
VA Boston Healthcare System, Department of Medicine, Boston, MA, USA.
EClinicalMedicine. 2025 Feb 21;81:103114. doi: 10.1016/j.eclinm.2025.103114. eCollection 2025 Mar.
Novel strategies that account for population-level changes in dominant variants, immunity, testing practices and changes in individual risk profiles are needed to identify patients who remain at high risk of severe COVID-19. The aim of this study was to develop and prospectively validate a tool to predict absolute risk of severe COVID-19 incorporating dynamic parameters at the patient and population levels that could be used to inform clinical care.
A retrospective cohort of vaccinated US Veterans with SARS-CoV-2 from July 1, 2021, through August 25, 2023 was created. Models were estimated using logistic-regression-based machine learning with backward selection and included a variable with fluctuating absolute risk of severe COVID-19 to account for temporal changes. Age, sex, vaccine type, fully boosted status, and prior infection before vaccination were included . Variations in individual risk over time, e.g., due to receipt of immune suppressive medications, were also potentially included. The model was developed using data from July 1, 2021, through August 31, 2022 and prospectively validated on a subsequent second cohort (September 1, 2022, through August 25, 2023). Model performance was quantified by the area under the receiver operating characteristic curve (AUC) and calibration by Brier score. The final model was used to compare observed rates of severe disease to predicted rates among patients who received oral antivirals.
216,890 SARS-CoV-2 infections in Veterans not treated with oral antivirals were included (median age, 65; 88% male). The development cohort included 165,303 patients (66,121 in the training set, 49,591 in the tuning set, and 49,591 in the testing set) and the prospective validation cohort included 51,587 patients. The percentage of severe infections ranged from 5% to 25%. Model performance improved until 24 clinical predictor variables including age, co-morbidities, and immune-suppressive medications plus a 30-day rolling risk window were included (AUC in development cohort, 0.88 (95% CI, 0.87-0.88), AUC in prospective validation, 0.85 (95% CI, 0.84-0.85), Brier Score, 0.13). The most important variables for predicting severe disease included age, chronic kidney disease, chronic obstructive pulmonary disease, Alzheimer's disease, heart failure, and anaemia. Glucocorticoid use during the one-month prior to COVID-19 diagnosis was the next most important predictor. Models that included a near-real time fluctuating population risk variable performed better than models stratified by circulating variant and models with dominant variant included as a predictor. Patients with predicted severe disease risk >3% who received oral antivirals had approximately 4-fold lower rates of severe COVID-19 untreated patients at a similar risk level.
Our novel risk prediction tool uses a simple method to adjust for temporal changes and can be implemented to facilitate uptake of evidence-based therapies. The study provides proof-of-concept for leveraging real-time data to support risk prediction that incorporates changing population-level trends and variation patient-level risk.
This work was supported by the VA Boston Cooperative Studies Programme. WBE was supported by VA HSR&D IIR 20-076; VA HSR&D IIR 20-101; VA National Artificial Intelligence Institute.
需要新的策略来考虑主要变体、免疫力、检测方法以及个体风险状况的变化,以识别仍处于重症 COVID-19 高风险的患者。本研究的目的是开发并前瞻性验证一种工具,以预测重症 COVID-19 的绝对风险,该工具纳入患者和人群层面的动态参数,可用于指导临床护理。
创建了一个回顾性队列,纳入 2021 年 7 月 1 日至 2023 年 8 月 25 日期间接种过疫苗的美国退伍军人中的 SARS-CoV-2 感染者。使用基于逻辑回归的机器学习和向后选择估计模型,模型包含一个重症 COVID-19 绝对风险波动的变量,以考虑时间变化。纳入年龄、性别、疫苗类型、全程接种状态以及接种前的既往感染情况。还可能纳入个体风险随时间的变化,例如由于使用免疫抑制药物导致的变化。该模型使用 2021 年 7 月 1 日至 2022 年 8 月 31 日的数据开发,并在前瞻性验证队列(2022 年 9 月 1 日至 2023 年 8 月 25 日)上进行验证。模型性能通过受试者操作特征曲线下面积(AUC)进行量化,并通过 Brier 评分进行校准。最终模型用于比较接受口服抗病毒药物治疗的患者中观察到的重症疾病发生率与预测发生率。
纳入了 216,890 例未接受口服抗病毒药物治疗的退伍军人中的 SARS-CoV-2 感染病例(中位年龄 65 岁;88%为男性)。开发队列包括 165,303 例患者(训练集 66,121 例,调整集 49,591 例,测试集 49,591 例),前瞻性验证队列包括 51,587 例患者。重症感染的百分比范围为 5%至 25%。在纳入包括年龄、合并症、免疫抑制药物以及 30 天滚动风险窗口在内的 24 个临床预测变量之前,模型性能不断提高(开发队列中的 AUC 为 0.88(95%CI,0.87 - 0.88),前瞻性验证中的 AUC 为 0.85(95%CI,0.84 - 0.85),Brier 评分为 0.13)。预测重症疾病最重要的变量包括年龄、慢性肾脏病、慢性阻塞性肺疾病、阿尔茨海默病、心力衰竭和贫血。COVID-19 诊断前一个月使用糖皮质激素是第二重要的预测因素。纳入近实时波动人群风险变量的模型比按流行变体分层的模型以及将主要变体作为预测因素的模型表现更好。预测重症疾病风险>3%且接受口服抗病毒药物治疗的患者,在类似风险水平下,其重症 COVID-19 的发生率比未治疗患者低约 4 倍。
我们的新型风险预测工具使用简单方法来调整时间变化,可用于促进循证疗法的应用。该研究为利用实时数据支持风险预测提供了概念验证,这种预测纳入了不断变化的人群层面趋势和个体层面风险变化。
这项工作得到了波士顿退伍军人事务部合作研究项目的支持。WBE 得到了退伍军人事务部卫生服务研究与发展部 IIR 20 - 076;退伍军人事务部卫生服务研究与发展部 IIR 20 - 101;退伍军人事务部国家人工智能研究所的支持。