Medical Scientist Training Program, University of Michigan Medical School, Ann Arbor, Michigan, USA.
Department of Microbiology and Immunology, University of Michigan, Ann Arbor, Michigan, USA.
mBio. 2020 May 5;11(3):e00180-20. doi: 10.1128/mBio.00180-20.
infection (CDI) can result in severe disease and death, with no accurate models that allow for early prediction of adverse outcomes. To address this need, we sought to develop serum-based biomarker models to predict CDI outcomes. We prospectively collected sera ≤48 h after diagnosis of CDI in two cohorts. Biomarkers were measured with a custom multiplex bead array assay. Patients were classified using IDSA severity criteria and the development of disease-related complications (DRCs), which were defined as ICU admission, colectomy, and/or death attributed to CDI. Unadjusted and adjusted models were built using logistic and elastic net modeling. The best model for severity included procalcitonin (PCT) and hepatocyte growth factor (HGF) with an area (AUC) under the receiver operating characteristic (ROC) curve of 0.74 (95% confidence interval, 0.67 to 0.81). The best model for 30-day mortality included interleukin-8 (IL-8), PCT, CXCL-5, IP-10, and IL-2Rα with an AUC of 0.89 (0.84 to 0.95). The best model for DRCs included IL-8, procalcitonin, HGF, and IL-2Rα with an AUC of 0.84 (0.73 to 0.94). To validate our models, we employed experimental infection of mice with Antibiotic-treated mice were challenged with and a similar panel of serum biomarkers was measured. Applying each model to the mouse cohort of severe and nonsevere CDI revealed AUCs of 0.59 (0.44 to 0.74), 0.96 (0.90 to 1.0), and 0.89 (0.81 to 0.97). In both human and murine CDI, models based on serum biomarkers predicted adverse CDI outcomes. Our results support the use of serum-based biomarker panels to inform infection treatment. Each year in the United States, causes nearly 500,000 gastrointestinal infections that range from mild diarrhea to severe colitis and death. The ability to identify patients at increased risk for severe disease or mortality at the time of diagnosis of infection (CDI) would allow clinicians to effectively allocate disease modifying therapies. In this study, we developed models consisting of only a small number of serum biomarkers that are capable of predicting both 30-day all-cause mortality and adverse outcomes of patients at time of CDI diagnosis. We were able to validate these models through experimental mouse infection. This provides evidence that the biomarkers reflect the underlying pathophysiology and that our mouse model of CDI reflects the pathogenesis of human infection. Predictive models can not only assist clinicians in identifying patients at risk for severe CDI but also be utilized for targeted enrollment in clinical trials aimed at reduction of adverse outcomes from severe CDI.
感染(CDI)可导致严重疾病和死亡,但目前尚无能够早期预测不良结局的准确模型。为了满足这一需求,我们试图开发基于血清的生物标志物模型来预测 CDI 结局。我们前瞻性地收集了在两个队列中 CDI 诊断后≤48 小时的血清。使用定制的多指标 bead 阵列测定法测量生物标志物。根据 IDSA 严重程度标准和疾病相关并发症(DRC)对患者进行分类,DRC 定义为 ICU 入院、结肠切除术和/或归因于 CDI 的死亡。使用逻辑回归和弹性网络建模建立未调整和调整后的模型。用于严重程度的最佳模型包括降钙素原(PCT)和肝细胞生长因子(HGF),其受试者工作特征(ROC)曲线下面积(AUC)为 0.74(95%置信区间,0.67 至 0.81)。用于 30 天死亡率的最佳模型包括白细胞介素-8(IL-8)、PCT、CXCL-5、IP-10 和 IL-2Rα,其 AUC 为 0.89(0.84 至 0.95)。用于 DRC 的最佳模型包括白细胞介素-8(IL-8)、降钙素原、HGF 和 IL-2Rα,其 AUC 为 0.84(0.73 至 0.94)。为了验证我们的模型,我们用抗生素治疗的小鼠进行了实验感染,并测量了类似的血清生物标志物面板。将每个模型应用于严重和非严重 CDI 的小鼠队列,发现 AUC 分别为 0.59(0.44 至 0.74)、0.96(0.90 至 1.0)和 0.89(0.81 至 0.97)。在人类和小鼠 CDI 中,基于血清生物标志物的模型预测了不良 CDI 结局。我们的结果支持使用基于血清的生物标志物谱来告知 CDI 治疗。在美国,每年有近 50 万例胃肠道感染,从轻度腹泻到严重结肠炎和死亡不等。在诊断感染性腹泻(CDI)时,能够识别出患有严重疾病或死亡率增加的患者的能力将使临床医生能够有效地分配疾病修正疗法。在这项研究中,我们开发了仅由少数血清生物标志物组成的模型,这些模型能够预测 CDI 诊断时患者的 30 天全因死亡率和不良结局。我们能够通过实验小鼠感染来验证这些模型。这提供了证据表明,生物标志物反映了潜在的病理生理学,并且我们的 CDI 小鼠模型反映了人类感染的发病机制。预测模型不仅可以帮助临床医生识别患有严重 CDI 的患者,还可以用于有针对性地招募旨在减少严重 CDI 不良结局的临床试验。