基于神经网络从全基因组测序和基因表达预测耐多药鲍曼不动杆菌的抗菌药耐药性表型。

IF 4.1 2区 医学 Q2 MICROBIOLOGY Antimicrobial Agents and Chemotherapy Pub Date : 2024-11-14 DOI:10.1128/aac.01446-24
Huiqiong Jia, Xinyang Li, Yilu Zhuang, Yuye Wu, Shasha Shi, Qingyang Sun, Fang He, Shanyan Liang, Jianfeng Wang, Mohamed S Draz, Xinyou Xie, Jun Zhang, Qing Yang, Zhi Ruan
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引用次数: 0

摘要

全基因组测序(WGS)可能是抗菌药耐药性基因型到表型预测的一种快速方法。然而,基于 WGS 数据完全预测最低抑菌浓度(MIC)和抗菌药敏感表型仍然是一项挑战。本研究旨在建立一种基于人工智能的计算方法,从 WGS 和基因表达数据中预测耐多药鲍曼不动杆菌的抗菌药敏感性。采用肉汤微稀释法对 10 种抗菌药物进行了抗菌药物敏感性测试(AST)。分析了基于 cgSNP 和 cgMLST 策略的硅学多焦点序列分型(MLST)、抗菌药耐药基因和系统发育。高通量 qPCR 用于测量抗菌药耐药性(AMR)基因的表达水平。大多数分离物对大多数测试过的抗菌剂表现出高度耐药性,其中大多数属于 IC2/CC92 系。系统发育分析显示,存在未被发现的传播事件或局部爆发。AMR 表型与基因型的一致率为 70.08% 至 89.96%,一致系数 (κ)为 0.025 至 0.881。在测试数据集上,深度神经网络模型预测 AST 的准确率高达 98.64%。此外,几个线性回归模型也表现出了很高的预测准确率,在一个梯度的误差范围内高达 86.15%,这表明某些基因表达与相应的抗菌药物 MICs 之间存在线性关系。总之,基于神经网络的预测可用作监测耐多药鲍曼不动杆菌的抗菌药耐药性的工具。
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Neural network-based predictions of antimicrobial resistance phenotypes in multidrug-resistant Acinetobacter baumannii from whole genome sequencing and gene expression.

Whole genome sequencing (WGS) potentially represents a rapid approach for antimicrobial resistance genotype-to-phenotype prediction. However, the challenge still exists to predict fully minimum inhibitory concentrations (MICs) and antimicrobial susceptibility phenotypes based on WGS data. This study aimed to establish an artificial intelligence-based computational approach in predicting antimicrobial susceptibilities of multidrug-resistant Acinetobacter baumannii from WGS and gene expression data. Antimicrobial susceptibility testing (AST) was performed using the broth microdilution method for 10 antimicrobial agents. In silico multilocus sequence typing (MLST), antimicrobial resistance genes, and phylogeny based on cgSNP and cgMLST strategies were analyzed. High-throughput qPCR was performed to measure the expression level of antimicrobial resistance (AMR) genes. Most isolates exhibited a high level of resistance to most of the tested antimicrobial agents, with the majority belonging to the IC2/CC92 lineage. Phylogenetic analysis revealed undetected transmission events or local outbreaks. The percentage agreements between AMR phenotype and genotype ranged from 70.08% to 89.96%, with the coefficient of agreement (κ) extending from 0.025 and 0.881. The prediction of AST employed by deep neural network models achieved an accuracy of up to 98.64% on the testing data set. Additionally, several linear regression models demonstrated high prediction accuracy, reaching up to 86.15% within an error range of one gradient, indicating a linear relationship between certain gene expressions and the corresponding antimicrobial MICs. In conclusion, neural network-based predictions could be used as a tool for the surveillance of antimicrobial resistance in multidrug-resistant A. baumannii.

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来源期刊
CiteScore
10.00
自引率
8.20%
发文量
762
审稿时长
3 months
期刊介绍: Antimicrobial Agents and Chemotherapy (AAC) features interdisciplinary studies that build our understanding of the underlying mechanisms and therapeutic applications of antimicrobial and antiparasitic agents and chemotherapy.
期刊最新文献
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