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Using Machine Learning Techniques to Aid Empirical Antibiotic Therapy Decisions in the Intensive Care Unit of a General Hospital in Greece

机译:在希腊一家综合医院的重症监护病房使用机器学习技术来辅助经验性抗生素治疗决策

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摘要

Hospital-acquired infections, particularly in the critical care setting, have become increasingly common during the last decade, with Gram-negative bacterial infections presenting the highest incidence among them. Multi-drug-resistant (MDR) Gram-negative infections are associated with high morbidity and mortality with significant direct and indirect costs resulting from long hospitalization due to antibiotic failure. Time is critical to identifying bacteria and their resistance to antibiotics due to the critical health status of patients in the intensive care unit (ICU). As common antibiotic resistance tests require more than 24 h after the sample is collected to determine sensitivity in specific antibiotics, we suggest applying machine learning (ML) techniques to assist the clinician in determining whether bacteria are resistant to individual antimicrobials by knowing only a sample’s Gram stain, site of infection, and patient demographics. In our single center study, we compared the performance of eight machine learning algorithms to assess antibiotic susceptibility predictions. The demographic characteristics of the patients are considered for this study, as well as data from cultures and susceptibility testing. Applying machine learning algorithms to patient antimicrobial susceptibility data, readily available, solely from the Microbiology Laboratory without any of the patient’s clinical data, even in resource-limited hospital settings, can provide informative antibiotic susceptibility predictions to aid clinicians in selecting appropriate empirical antibiotic therapy. These strategies, when used as a decision support tool, have the potential to improve empiric therapy selection and reduce the antimicrobial resistance burden.
机译:在过去的十年中,医院获得性感染,特别是在重症监护环境中,已变得越来越普遍,革兰氏阴性细菌感染是其中最高的发病率。多重耐药性(MDR)革兰氏阴性感染与高发病率和死亡率相关,由于抗生素失效导致长期住院会导致大量直接和间接费用。由于重症监护病房(ICU)患者的健康状况至关重要,因此时间对于确定细菌及其对抗生素的耐药性至关重要。由于通常的抗生素耐药性测试需要在样品采集后超过24小时才能确定对特定抗生素的敏感性,因此我们建议应用机器学习(ML)技术,通过仅了解样品的革兰氏含量来帮助临床医生确定细菌是否对单个抗菌素具有耐药性染色,感染部位和患者人口统计数据。在我们的单中心研究中,我们比较了八种机器学习算法的性能,以评估抗生素敏感性预测。这项研究考虑了患者的人口统计学特征,以及来自文化和药敏试验的数据。将机器学习算法应用于患者抗菌药敏感性数据,即使在资源有限的医院中,也可以直接从微生物学实验室获得,而无需任何患者的任何临床数据,即使在资源有限的医院环境中,也可以提供有用的抗生素药敏感性预测,以帮助临床医生选择适当的经验性抗生素疗法。这些策略用作决策支持工具时,有可能改善经验疗法的选择并降低抗菌素耐药性负担。

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