Personalizing the empiric treatment of gonorrhea using machine learning models.

PLOS digital health Pub Date : 2024-08-14 eCollection Date: 2024-08-01 DOI:10.1371/journal.pdig.0000549
Rachel E Murray-Watson, Yonatan H Grad, Sancta B St Cyr, Reza Yaesoubi
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Abstract

Despite the emergence of antimicrobial-resistant (AMR) strains of Neisseria gonorrhoeae, the treatment of gonorrhea remains empiric and according to standardized guidelines, which are informed by the national prevalence of resistant strains. Yet, the prevalence of AMR varies substantially across geographic and demographic groups. We investigated whether data from the national surveillance system of AMR gonorrhea in the US could be used to personalize the empiric treatment of gonorrhea. We used data from the Gonococcal Isolate Surveillance Project collected between 2000-2010 to train and validate machine learning models to identify resistance to ciprofloxacin (CIP), one of the recommended first-line antibiotics until 2007. We used these models to personalize empiric treatments based on sexual behavior and geographic location and compared their performance with standardized guidelines, which recommended treatment with CIP, ceftriaxone (CRO), or cefixime (CFX) between 2005-2006, and either CRO or CFX between 2007-2010. Compared with standardized guidelines, the personalized treatments could have replaced 33% of CRO and CFX use with CIP while ensuring that 98% of patients were prescribed effective treatment during 2005-2010. The models maintained their performance over time and across geographic regions. Predictive models trained on data from national surveillance systems of AMR gonorrhea could be used to personalize the empiric treatment of gonorrhea based on patients' basic characteristics at the point of care. This approach could reduce the unnecessary use of newer antibiotics while maintaining the effectiveness of first-line therapy.

利用机器学习模型实现淋病经验性治疗的个性化。
尽管出现了耐抗菌素(AMR)的淋病奈瑟菌株,但淋病的治疗仍然是根据全国耐药菌株流行情况制定的标准化指南进行经验性治疗。然而,AMR 的流行率在不同地域和人口群体中存在很大差异。我们研究了美国 AMR 淋病全国监测系统的数据是否可用于个性化淋病的经验性治疗。我们利用 2000-2010 年间收集的淋球菌分枝监测项目数据来训练和验证机器学习模型,以识别环丙沙星 (CIP) 的耐药性,环丙沙星是 2007 年之前推荐的一线抗生素之一。我们利用这些模型根据性行为和地理位置对经验疗法进行了个性化处理,并将其性能与标准化指南进行了比较,后者在 2005-2006 年间推荐使用 CIP、头孢曲松 (CRO) 或头孢克肟 (CFX) 治疗,在 2007-2010 年间推荐使用 CRO 或 CFX 治疗。与标准化指南相比,在 2005-2010 年期间,个性化疗法可以用 CIP 取代 33% 的 CRO 和 CFX,同时确保 98% 的患者得到有效治疗。随着时间的推移和地理区域的不同,模型的性能也保持不变。根据AMR淋病国家监测系统的数据训练出的预测模型可用于根据患者在就医时的基本特征对淋病进行个性化的经验性治疗。这种方法可以减少对新型抗生素的不必要使用,同时保持一线治疗的有效性。
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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