表型
深度学习
计算生物学
抗生素耐药性
人口
抗菌剂
人工智能
基因型
细菌
亚细胞定位
抗生素
机器学习
基因
生物
抗药性
微生物学
遗传学
基因型-表型区分
最小抑制浓度
抗性(生态学)
化学
基因组
精密医学
表型筛选
生物技术
作者
Wenwen Jing,TianRan Zhang,Xi Chen,Xiaofei Wang,Ying Fan,Meng Feng,Kai Jin,Guo-Dong Sui,Chenbin Liu,Xunjia Cheng
标识
DOI:10.1021/acs.analchem.5c04676
摘要
Antimicrobial resistance (AMR) is a global health concern that complicates the effective treatment of infections, resulting in an increased severity of illness and elevated healthcare costs. Traditional phenotypic antimicrobial susceptibility testing (AST) relies on laborious culturing and interpretation of visible growth, resulting in delays ranging from 24 h to several days. Genotypic assays detect only known resistance genes and cannot anticipate novel or emerging variants. Consequently, there is an urgent need for rapid, accurate AST methods that minimize culture time and increase detection resolution. We developed a rapid phenotypic AST platform that integrates structured illumination microscopy (SIM) imaging and deep learning to assess subcellular phenotypes in bacteria treated with antibiotics. Seven deep learning architectures, including C3D, DenseNet-121, MobileNet-V2, MobileNet-V3 Large, ResNet-50, ResNet-101, and MobileNet-V3 Small were trained on phenotypic image data sets. ResNet-50 achieved optimal performance, delivering AST results with 87% accuracy in under 20 min for E. coli, 4 h for M. smegmatis, and 15 h for BCG, all in strong agreement with conventional assays. We applied single-cell analysis at antibiotic concentrations near the minimum inhibitory concentration (MIC) and found that some cells were inhibited below the population MIC while others remained viable above it, revealing heterogeneity masked by conventional AST. Our method enables subcellular-level rapid phenotypic AST, with no need for culture requirements, and is suitable for assessing the fast effectiveness of antibiotics. Observing single-cell heterogeneity provides a tool for elucidating resistance mechanisms and informing timely clinical decision-making with the potential to curb the spread of AMR.
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