A machine learning-based strategy to elucidate the identification of antibiotic resistance in bacteria.

Frontiers in antibiotics Pub Date : 2024-06-18 eCollection Date: 2024-01-01 DOI:10.3389/frabi.2024.1405296
K T Shreya Parthasarathi, Kiran Bharat Gaikwad, Shruthy Rajesh, Shweta Rana, Akhilesh Pandey, Harpreet Singh, Jyoti Sharma
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Abstract

Microorganisms, crucial for environmental equilibrium, could be destructive, resulting in detrimental pathophysiology to the human host. Moreover, with the emergence of antibiotic resistance (ABR), the microbial communities pose the century's largest public health challenges in terms of effective treatment strategies. Furthermore, given the large diversity and number of known bacterial strains, describing treatment choices for infected patients using experimental methodologies is time-consuming. An alternative technique, gaining popularity as sequencing prices fall and technology advances, is to use bacterial genotype rather than phenotype to determine ABR. Complementing machine learning into clinical practice provides a data-driven platform for categorization and interpretation of bacterial datasets. In the present study, k-mers were generated from nucleotide sequences of pathogenic bacteria resistant to antibiotics. Subsequently, they were clustered into groups of bacteria sharing similar genomic features using the Affinity propagation algorithm with a Silhouette coefficient of 0.82. Thereafter, a prediction model based on Random Forest algorithm was developed to explore the prediction capability of the k-mers. It yielded an overall specificity of 0.99 and a sensitivity of 0.98. Additionally, the genes and ABR drivers related to the k-mers were identified to explore their biological relevance. Furthermore, a multilayer perceptron model with a hamming loss of 0.05 was built to classify the bacterial strains into resistant and non-resistant strains against various antibiotics. Segregating pathogenic bacteria based on genomic similarities could be a valuable approach for assessing the severity of diseases caused by new bacterial strains. Utilization of this strategy could aid in enhancing our understanding of ABR patterns, paving the way for more informed and effective treatment options.

一种基于机器学习的策略来阐明细菌抗生素耐药性的鉴定。
微生物对环境平衡至关重要,可能具有破坏性,对人类宿主产生有害的病理生理。此外,随着抗生素耐药性(ABR)的出现,微生物群落在有效治疗策略方面构成了本世纪最大的公共卫生挑战。此外,考虑到已知菌株的多样性和数量,使用实验方法描述感染患者的治疗选择是耗时的。随着测序价格的下降和技术的进步,另一种技术越来越受欢迎,即使用细菌基因型而不是表型来确定ABR。将机器学习补充到临床实践中,为细菌数据集的分类和解释提供了数据驱动的平台。在本研究中,k-mers是从对抗生素耐药的病原菌的核苷酸序列中产生的。随后,使用剪影系数为0.82的亲和性传播算法将它们聚类成具有相似基因组特征的细菌群。随后,建立了基于随机森林算法的预测模型,探索k-mers的预测能力。其总体特异性为0.99,敏感性为0.98。此外,鉴定了与k-mers相关的基因和ABR驱动程序,以探索其生物学相关性。在此基础上,建立了汉明损失为0.05的多层感知器模型,将菌株分为耐药菌株和非耐药菌株。基于基因组相似性分离致病菌可能是评估由新菌株引起的疾病严重程度的一种有价值的方法。利用这一策略有助于加强我们对ABR模式的理解,为更明智和更有效的治疗选择铺平道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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