Department of Cell Biology and Genetics, Shantou University Medical College, Shantou, Guangdong 515041, China.
Department of Medicine and Surgery, Al-Nafees Medical College and Hospital, Isra University, Islamabad 44000, Pakistan.
Comput Intell Neurosci. 2023 Mar 1;2023:5236168. doi: 10.1155/2023/5236168. eCollection 2023.
Due to the growing availability of genomic datasets, machine learning models have shown impressive diagnostic potential in identifying emerging and reemerging pathogens. This study aims to use machine learning techniques to develop and compare a model for predicting bacterial resistance to a panel of 12 classes of antibiotics using whole genome sequence (WGS) data of Pseudomonas .
A machine learning technique called Random Forest (RF) and BioWeka was used for classification accuracy assessment and logistic regression (LR) for statistical analysis.
Our results show 44.66% of isolates were resistant to twelve antimicrobial agents and 55.33% were sensitive. The mean classification accuracy was obtained ≥98% for BioWeka and ≥96 for RF on these families of antimicrobials. Where ampicillin was 99.31% and 94.00%, amoxicillin was 99.02% and 95.21%, meropenem was 98.27% and 96.63%, cefepime was 99.73% and 98.34%, fosfomycin was 96.44% and 99.23%, ceftazidime was 98.63% and 94.31%, chloramphenicol was 98.71% and 96.00%, erythromycin was 95.76% and 97.63%, tetracycline was 99.27% and 98.25%, gentamycin was 98.00% and 97.30%, butirosin was 99.57% and 98.03%, and ciprofloxacin was 96.17% and 98.97% with 10-fold-cross validation. In addition, out of twelve, eight drugs have found no false-positive and false-negative bacterial strains.
The ability to accurately detect antibiotic resistance could help clinicians make educated decisions about empiric therapy based on the local antibiotic resistance pattern. Moreover, infection prevention may have major consequences if such prescribing practices become widespread for human health.
由于基因组数据集的可用性不断增加,机器学习模型在识别新兴和再现病原体方面显示出了令人印象深刻的诊断潜力。本研究旨在使用机器学习技术,使用假单胞菌的全基因组序列 (WGS) 数据,开发和比较用于预测对 12 类抗生素的耐药性的模型。
使用机器学习技术随机森林 (RF) 和 BioWeka 进行分类准确性评估,使用逻辑回归 (LR) 进行统计分析。
我们的结果显示,44.66%的分离株对 12 种抗菌剂耐药,55.33%敏感。在这些抗生素家族中,BioWeka 的平均分类准确率≥98%,RF 的平均分类准确率≥96%。其中氨苄西林为 99.31%和 94.00%,阿莫西林为 99.02%和 95.21%,美罗培南为 98.27%和 96.63%,头孢吡肟为 99.73%和 98.34%,磷霉素为 96.44%和 99.23%,头孢他啶为 98.63%和 94.31%,氯霉素为 98.71%和 96.00%,红霉素为 95.76%和 97.63%,四环素为 99.27%和 98.25%,庆大霉素为 98.00%和 97.30%,丁胺卡那霉素为 99.57%和 98.03%,环丙沙星为 96.17%和 98.97%,经过 10 倍交叉验证。此外,在这 12 种药物中,有 8 种药物没有发现假阳性和假阴性的细菌菌株。
准确检测抗生素耐药性的能力可以帮助临床医生根据当地的抗生素耐药模式做出明智的经验性治疗决策。此外,如果这种处方实践在人类健康方面广泛传播,感染预防可能会产生重大影响。