Battling Antibiotic Resistance: Can Machine Learning Improve Prescribing?

Michael Allan Ribers, H. Ullrich
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引用次数: 14

Abstract

Antibiotic resistance constitutes a major health threat. Predicting bacterial causes of infections is key to reducing antibiotic misuse, a leading cause of antibiotic resistance. We combine administrative and microbiological laboratory data from Denmark to train a machine learning algorithm predicting bacterial causes of urinary tract infections. Based on predictions, we develop policies to improve prescribing in primary care, highlighting the relevance of physician expertise and time-variant patient distributions for policy implementation. The proposed policies delay prescriptions for some patients until test results are known and give them instantly to others. We find that machine learning can reduce antibiotic use by 7.42 percent without reducing the number of treated bacterial infections. As Denmark is one of the most conservative countries in terms of antibiotic use, targeting a 30 percent reduction in prescribing by 2020, this result is likely to be a lower bound of what can be achieved elsewhere.
对抗抗生素耐药性:机器学习能改善处方吗?
抗生素耐药性对健康构成重大威胁。预测细菌感染的原因是减少抗生素滥用的关键,抗生素滥用是抗生素耐药性的主要原因。我们结合来自丹麦的管理和微生物实验室数据来训练机器学习算法,预测尿路感染的细菌原因。基于预测,我们制定了改善初级保健处方的政策,强调了医生专业知识和时变患者分布与政策实施的相关性。拟议的政策推迟了一些患者的处方,直到知道检测结果,并立即将其提供给其他人。我们发现机器学习可以在不减少治疗细菌感染数量的情况下减少7.42%的抗生素使用。由于丹麦在抗生素使用方面是最保守的国家之一,其目标是到2020年将处方减少30%,因此这一结果可能是其他地方可以实现的下限。
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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