Li Peng, Li Yan, Zhang Youjian, Zhu Shichao, Pei Yongju, Zhang Qi, Liu Junping, Bao Junzhe, Sun Mingjie
Department of Infection Control, Henan Provincial People's Hospital, People's Hospital of Zhengzhou University, Zhengzhou, China.
Central Intensive Care Unit, Henan Provincial People's Hospital, People's Hospital of Zhengzhou University, Zhengzhou, China.
Front Cell Infect Microbiol. 2024 Feb 26;14:1281759. doi: 10.3389/fcimb.2024.1281759. eCollection 2024.
Invasive fungal super-infection (IFSI) is an added diagnostic and therapeutic dilemma. We aimed to develop and assess a nomogram of IFSI in patients with healthcare-associated bacterial infection (HABI).
An ambispective cohort study was conducted in ICU patients with HABI from a tertiary hospital of China. Predictors of IFSI were selected by both the least absolute shrinkage and selection operator (LASSO) method and the two-way stepwise method. The predictive performance of two models built by logistic regression was internal-validated and compared. Then external validity was assessed and a web-based nomogram was deployed.
Between Jan 1, 2019 and June 30, 2023, 12,305 patients with HABI were screened in 14 ICUs, of whom 372 (3.0%) developed IFSI. Among the fungal strains causing IFSI, the most common was C.albicans (34.7%) with a decreasing proportion, followed by C.tropicalis (30.9%), A.fumigatus (13.9%) and C.glabrata (10.1%) with increasing proportions year by year. Compared with LASSO-model that included five predictors (combination of priority antimicrobials, immunosuppressant, MDRO, aCCI and S.aureus), the discriminability of stepwise-model was improved by 6.8% after adding two more predictors of COVID-19 and microbiological test before antibiotics use (P<0.01).And the stepwise-model showed similar discriminability in the derivation (the area under curve, AUC=0.87) and external validation cohorts (AUC=0.84, P=0.46). No significant gaps existed between the proportion of actual diagnosed IFSI and the frequency of IFSI predicted by both two models in derivation cohort and by stepwise-model in external validation cohort (P=0.16, 0.30 and 0.35, respectively).
The incidence of IFSI in ICU patients with HABI appeared to be a temporal rising, and our externally validated nomogram will facilitate the development of targeted and timely prevention and control measures based on specific risks of IFSI.
侵袭性真菌二重感染(IFSI)给诊断和治疗带来了额外的难题。我们旨在开发并评估医疗相关细菌感染(HABI)患者的IFSI列线图。
在中国一家三级医院对ICU中患有HABI的患者进行了一项回顾性队列研究。通过最小绝对收缩和选择算子(LASSO)方法及双向逐步法选择IFSI的预测因素。对通过逻辑回归建立的两个模型的预测性能进行内部验证和比较。然后评估外部有效性并部署基于网络的列线图。
在2019年1月1日至2023年6月30日期间,在14个ICU中筛查了12305例HABI患者,其中372例(3.0%)发生了IFSI。在引起IFSI的真菌菌株中,最常见的是白色念珠菌(34.7%),其比例呈下降趋势,其次是热带念珠菌(30.9%)、烟曲霉(13.9%)和光滑念珠菌(10.1%),其比例逐年上升。与包含五个预测因素(优先抗菌药物、免疫抑制剂、多重耐药菌、累积疾病评分系统和金黄色葡萄球菌)的LASSO模型相比,逐步模型在增加了新型冠状病毒肺炎和抗生素使用前微生物检测这两个预测因素后,判别能力提高了6.8%(P<0.01)。逐步模型在推导队列(曲线下面积,AUC=0.87)和外部验证队列(AUC=0.84,P=0.46)中显示出相似的判别能力。在推导队列中,两个模型预测的IFSI频率与实际诊断的IFSI比例之间,以及在外部验证队列中逐步模型预测的IFSI频率与实际诊断的IFSI比例之间均无显著差异(P分别为0.16、0.30和0.35)。
ICU中HABI患者的IFSI发病率呈上升趋势,我们经过外部验证的列线图将有助于根据IFSI的特定风险制定有针对性的及时防控措施。