Prediction of genome- wide imipenem resistance features in Klebsiella pneumoniae using machine learning

被引:3
作者
Li, Shanshan [1 ]
Wu, Jun [2 ]
Ma, Nan [1 ]
Liu, Wenjia [1 ,3 ]
Shao, Mengjie [1 ]
Ying, Nanjiao [1 ,4 ]
Zhu, Lei [1 ,4 ]
机构
[1] Hangzhou Dianzi Univ, Coll Automation, Hangzhou 310018, Zhejiang, Peoples R China
[2] Linan Ctr Dis Control & Prevent, Linan 311300, Peoples R China
[3] Hangzhou Dianzi Univ, Coll Elect & Informat Engn, Hangzhou 310018, Peoples R China
[4] Hangzhou Dianzi Univ, Inst Biomed Engn & Instrument, Hangzhou 310018, Zhejiang, Peoples R China
基金
中国国家自然科学基金;
关键词
Klebsiella pneumoniae; carbapenem; imipenem; mer feature; antibiotic resistance gene; machine learning; ESCHERICHIA-COLI; DISSEMINATION; GENES;
D O I
10.1099/jmm.0.001657
中图分类号
Q93 [微生物学];
学科分类号
071005 ; 100705 ;
摘要
Introduction. The resistance rate of Klebsiella pneumoniae (K. pneumoniae) to imipenem is increasing year by year, and the imipenem resistance mechanism of K. pneumoniae is complex. Therefore, it is urgent to develop new strategies to explore the resistance mechanism of imipenem for its effective and accurate use in clinical practice. Hypothesis/Gap sStatement. Machine learning could identify resistance features and biological process that influence micro-bial resistance from whole-genome sequencing (WGS) data. Aims. This work aimed to predict imipenem resistance genetic features in K. pneumoniae from whole-genome k-mer features, and analyse their function for understanding its resistance mechanism. Methods. This study analysed WGS data of K. pneumoniae combined with resistance phenotype for imipenem, and established K. pneumoniae to imipenem genotype-phenotype model to predict resistance features using chi-squared test and random forest. An external clinical dataset was used to verify prediction power of resistance features. The potential genes were iden-tified through alignment the resistance features with the K. pneumoniae reference genome using B iota ASTn, the functions of potential genes were further analysed to explore its resistance-related signalling pathways with GO and KEGG analysis, the resistance sequence patterns were screened using STREME software. Finally, the resistance features were combined and mod-elled through four machine-learning algorithms (logistic regression, SVM, GBDT and XGBoost) to evaluate their phenotype prediction ability. Results. A total of 16 670 imipenem resistance features were predicted from genotype-phenotype model. The 30 potential genes were identified by annotating the resistance features and corresponded to known antibiotic-related genes (mdtM, dedA, rne, etc.). GO and KEGG pathway analyses indicated the possible association of imipenem resistance with metabolism process and cell membrane. CRYCAGCDN and CGRDAAAN were found from the imipenem resistance features, which were widely pre-sented in the reported beta-lactam resistance genes (blaSHV, blaCTX-M, blaTEM, etc.), and YCYAGCMCAST with metabolic functions (organic substance metabolic process, nitrogen compound metabolic process and cellular metabolic process) was identified from the top 50 resistance features. The 25 resistance genes in the training dataset included 19 genes in the external dataset, which verified the accuracy of prediction. The area under curve values of logistics regression, SVM, GBDT and XGBoost were 0.965, 0.966, 0.969 and 0.969, respectively, indicating that the imipenem resistance features have a strong prediction power. Conclusion. Machine-learning methods could effectively predict the imipenem resistance feature in K. pneumoniae, and provide resistance sequence profiles for predicting resistance phenotype and exploring potential resistance mechanisms. It provides an important insight into the potential therapeutic strategies of K. pneumoniae resistance to imipenem, and speed up the application of machine learning in routine diagnosis.
引用
收藏
页数:11
相关论文
共 50 条
  • [21] Rapid determination of colistin resistance in Klebsiella pneumoniae by MALDI-TOF peak based machine learning algorithm with MATLAB
    Iskender, Secil
    Heydarov, Saddam
    Yalcin, Metin
    Faydaci, Cagri
    Kurt, Ozge
    Surme, Serkan
    Kucukbasmaci, Omer
    DIAGNOSTIC MICROBIOLOGY AND INFECTIOUS DISEASE, 2023, 107 (04)
  • [22] In Vitro Mechanisms of Resistance Development to Imipenem-Relebactam in KPC-Producing Klebsiella pneumoniae
    Findlay, Jacqueline
    Rens, Celine
    Poirel, Laurent
    Nordmann, Patrice
    ANTIMICROBIAL AGENTS AND CHEMOTHERAPY, 2022, 66 (10)
  • [23] Predicting ß-lactam resistance using whole genome sequencing in Klebsiella pneumoniae: the challenge of ß-lactamase inhibitors
    Hujer, Andrea M.
    Long, S. Wesley
    Olsen, Randall J.
    Taracila, Magdalena A.
    Rojas, Laura J.
    Musser, James M.
    Bonomo, Robert A.
    DIAGNOSTIC MICROBIOLOGY AND INFECTIOUS DISEASE, 2020, 98 (03)
  • [24] Machine learning models for prediction of invasion Klebsiella pneumoniae liver abscess syndrome in diabetes mellitus: a singled centered retrospective study
    Feng, Chengyi
    Di, Jia
    Jiang, Shufang
    Li, Xuemei
    Hua, Fei
    BMC INFECTIOUS DISEASES, 2023, 23 (01)
  • [25] Machine learning models for prediction of invasion Klebsiella pneumoniae liver abscess syndrome in diabetes mellitus: a singled centered retrospective study
    Chengyi Feng
    Jia Di
    Shufang Jiang
    Xuemei Li
    Fei Hua
    BMC Infectious Diseases, 23
  • [26] First description of antimicrobial resistance in carbapenem-susceptible Klebsiella pneumoniae after imipenem treatment, driven by outer membrane remodeling
    Tian, Xuebin
    Wang, Qiongdan
    Perlaza-Jimenez, Laura
    Zheng, Xiangkuo
    Zhao, Yajie
    Dhanasekaran, Vijay
    Fang, Renchi
    Li, Jiahui
    Wang, Chong
    Liu, Haiyang
    Lithgow, Trevor
    Cao, Jianming
    Zhou, Tieli
    BMC MICROBIOLOGY, 2020, 20 (01)
  • [27] Comparative analysis of the complete genome of KPC-2-producing Klebsiella pneumoniae Kp13 reveals remarkable genome plasticity and a wide repertoire of virulence and resistance mechanisms
    Pereira Ramos, Pablo Ivan
    Picao, Renata Christina
    Paula de Almeida, Luiz Gonzaga
    Lima, Nicholas Costa B.
    Girardello, Raquel
    Vivan, Ana Carolina P.
    Xavier, Danilo E.
    Barcellos, Fernando G.
    Pelisson, Marsileni
    Vespero, Eliana C.
    Medigue, Claudine
    Ribeiro de Vasconcelos, Ana Tereza
    Gales, Ana Cristina
    Nicolas, Marisa Fabiana
    BMC GENOMICS, 2014, 15
  • [28] Clonal background and routes of plasmid transmission underlie antimicrobial resistance features of bloodstream Klebsiella pneumoniae
    Ikhimiukor, Odion O.
    Zac Soligno, Nicole I.
    Akintayo, Ifeoluwa J.
    Marcovici, Michael M.
    Souza, Stephanie S. R.
    Workman, Adrienne
    Martin, Isabella W.
    Andam, Cheryl P.
    NATURE COMMUNICATIONS, 2024, 15 (01)
  • [29] Genome-Wide Identification of Klebsiella pneumoniae Fitness Genes during Lung Infection
    Bachman, Michael A.
    Breen, Paul
    Deornellas, Valerie
    Mu, Qiao
    Zhao, Lili
    Wu, Weisheng
    Cavalcoli, James D.
    Mobley, Harry L. T.
    MBIO, 2015, 6 (03):
  • [30] Whole genome sequencing reveals complex resistome features of Klebsiella pneumoniae isolated from patients at major hospitals in Trinidad, West Indies
    Pustam, Aarti
    Jayaraman, Jayaraj
    Ramsubhag, Adesh
    JOURNAL OF GLOBAL ANTIMICROBIAL RESISTANCE, 2024, 37 : 141 - 149