Institute of Antibiotics, Huashan Hospital, Fudan University, Shanghai, China.
Key Laboratory of Clinical Pharmacology of Antibiotics, Ministry of Health, Shanghai, China.
J Antimicrob Chemother. 2024 Oct 1;79(10):2509-2517. doi: 10.1093/jac/dkae248.
Klebsiella pneumoniae is a significant pathogen with increasing resistance and high mortality rates. Conventional antibiotic susceptibility testing methods are time-consuming. Next-generation sequencing has shown promise for predicting antimicrobial resistance (AMR). This study aims to develop prediction models using whole-genome sequencing data and assess their feasibility with metagenomic next-generation sequencing data from clinical samples.
On the basis of 4170 K. pneumoniae genomes, the main genetic characteristics associated with AMR were identified using a LASSO regression model. Consequently, the prediction model was established, validated and optimized using clinical isolate read simulation sequences. To evaluate the efficacy of the model, clinical specimens were collected.
Four predictive models for amikacin, ciprofloxacin, levofloxacin, and piperacillin/tazobactam, initially had positive predictive values (PPVs) of 92%, 98%, 99%, 94%, respectively, when they were originally constructed. When applied to clinical specimens, their PPVs were 96%, 96%, 95%, and 100%, respectively. Meanwhile, there were negative predictive values (NPVs) of 100% for ciprofloxacin and levofloxacin, and 'not applicable' (NA) for amikacin and piperacillin/tazobactam. Our method achieved antibacterial phenotype classification accuracy rates of 95.92% for amikacin, 96.15% for ciprofloxacin, 95.31% for levofloxacin and 100% for piperacillin/tazobactam. The sequence-based prediction antibiotic susceptibility testing (AST) reported results in an average time of 19.5 h, compared with the 67.9 h needed for culture-based AST, resulting in a significant reduction of 48.4 h.
These preliminary results demonstrated that the performance of prediction model for a clinically significant antimicrobial-species pair was comparable to that of phenotypic methods, thereby encouraging the expansion of sequence-based susceptibility prediction and its clinical validation and application.
肺炎克雷伯菌是一种具有较高耐药性和死亡率的重要病原体。传统的抗生素药敏试验方法耗时较长。下一代测序技术在预测抗菌药物耐药性(AMR)方面显示出了潜力。本研究旨在利用全基因组测序数据建立预测模型,并利用临床样本的宏基因组下一代测序数据评估其可行性。
在 4170 株肺炎克雷伯菌基因组的基础上,利用 LASSO 回归模型确定了与 AMR 相关的主要遗传特征。随后,利用临床分离株读模拟序列建立、验证和优化预测模型。为了评估模型的疗效,收集了临床标本。
最初构建的预测模型对阿米卡星、环丙沙星、左氧氟沙星和哌拉西林/他唑巴坦的阳性预测值(PPV)分别为 92%、98%、99%和 94%。当应用于临床标本时,其 PPV 分别为 96%、96%、95%和 100%。同时,环丙沙星和左氧氟沙星的阴性预测值(NPV)为 100%,阿米卡星和哌拉西林/他唑巴坦的 NPV 为“不适用”(NA)。我们的方法对阿米卡星、环丙沙星、左氧氟沙星和哌拉西林/他唑巴坦的抗菌表型分类准确率分别为 95.92%、96.15%、95.31%和 100%。基于序列的预测抗生素药敏试验(AST)报告结果的平均时间为 19.5 小时,而基于培养的 AST 则需要 67.9 小时,因此时间缩短了 48.4 小时。
这些初步结果表明,预测模型对临床重要抗菌药物种类的性能与表型方法相当,从而鼓励扩展基于序列的药敏预测及其临床验证和应用。