Department of Electrical Electronic and Computer Science Engineering, University of Catania, Catania, Italy.
Department of Biomedical and Biotechnological Sciences (Biometec), University of Catania, Catania, Italy.
PLoS One. 2024 Sep 18;19(9):e0309333. doi: 10.1371/journal.pone.0309333. eCollection 2024.
Antimicrobials, such as antibiotics or antivirals are medications employed to prevent and treat infectious diseases in humans, animals, and plants. Antimicrobial Resistance occurs when bacteria, viruses, and parasites no longer respond to these medicines. This resistance renders antibiotics and other antimicrobial drugs ineffective, making infections challenging or impossible to treat. This escalation in drug resistance heightens the risk of disease spread, severe illness, disability, and mortality. With datasets now containing hundreds or even thousands of pathogen genomes, machine learning techniques are on the rise for predicting antibiotic resistance in pathogens, prediction based on gene content and genome composition. Aim of this work is to combine and incorporate machine learning methods on bacterial genomic data to predict antimicrobial resistance, we will focus on the case of Klebsiella pneumoniae in order to support clinicians in selecting appropriate therapy.
抗生素(如抗生素或抗病毒药物)是用于预防和治疗人类、动物和植物传染病的药物。当细菌、病毒和寄生虫对这些药物不再敏感时,就会出现抗药性。这种耐药性使抗生素和其他抗菌药物无效,使感染难以治疗或无法治疗。耐药性的加剧增加了疾病传播、严重疾病、残疾和死亡的风险。随着现在的数据集包含数百甚至数千个病原体基因组,机器学习技术在预测病原体的抗生素耐药性方面得到了广泛应用,预测方法基于基因内容和基因组组成。这项工作的目的是结合和整合细菌基因组数据的机器学习方法来预测抗菌药物耐药性,我们将专注于肺炎克雷伯菌的情况,以支持临床医生选择合适的治疗方法。