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Artificial intelligence-based tools to control healthcare associated infections: A systematic review of the literature

机译:基于人工智能的工具来控制医疗保健相关感染:对文献的系统审查

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Background Healthcare-associated infections (HAIs) are the most frequent adverse events in healthcare and a global public health concern. Surveillance is the foundation for effective HAIs prevention and control. Manual surveillance is labor intensive, costly and lacks standardization. Artificial Intelligence (AI) and machine learning (ML) might support the development of HAI surveillance algorithms aimed at understanding HAIs risk factors, improve patient risk stratification, identification of transmission pathways, timely or real-time detection. Scant evidence is available on AI and ML implementation in the field of HAIs and no clear patterns emerges on its impact. Methods We conducted a systematic review following the PRISMA guidelines to systematically retrieve, quantitatively pool and critically appraise the available evidence on the development, implementation, performance and impact of ML-based HAIs detection models. Results Of 3445 identified citations, 27 studies were included in the review, the majority published in the US ( n =?15, 55.6%) and on surgical site infections (SSI, n =?8, 29.6%). Only 1 randomized controlled trial was included. Within included studies, 17 (63%) ML approaches were classified as predictive and 10 (37%) as retrospective. Most of the studies compared ML algorithms’ performance with non-ML logistic regression statistical algorithms, 18.5% compared different ML models’ performance, 11.1% assessed ML algorithms’ performance in comparison with clinical diagnosis scores, 11.1% with standard or automated surveillance models. Overall, there is moderate evidence that ML-based models perform equal or better as compared to non-ML approaches and that they reach relatively high-performance standards. However, heterogeneity amongst the studies is very high and did not dissipate significantly in subgroup analyses, by type of infection or type of outcome. Discussion Available evidence mainly focuses on the development and testing of HAIs detection and prediction models, while their adoption and impact for research, healthcare quality improvement, or national surveillance purposes is still far from being explored.
机译:背景技术医疗保健相关感染(HAI)是医疗保健和全球公共卫生问题中最常见的不良事件。监测是有效的HAIS预防和控制的基础。手动监测是劳动密集,昂贵,缺乏标准化。人工智能(AI)和机器学习(ML)可能支持HAI监测算法的发展旨在了解HAIS风险因素,改善患者风险分层,识别传输途径,及时或实时检测。在HAIS领域的AI和ML实施中可以获得Scant证据,并且没有明确的模式产生的影响。方法我们在PRISMA准则中进行了系统审查,以系统地检索,定量池,批判性地评估了基于ML的HAIS检测模型的开发,实施,性能和影响的可用证据。结果3445年确定的引用,27项研究综述,大多数人在美国发表(n =?15,55.6%)和手术部位感染(SSI,N =?8,29.6%)。仅包括1个随机对照试验。在内的研究中,17名(63%)ML方法被归类为预测性和10(37%)作为回顾。大多数研究比较ML算法的性能与非ML Logistic回归统计算法,18.5%比较不同的ML型号的性能,11.1%评估ML算法的性能与临床诊断评分相比,标准或自动监测模型11.1%。总体而言,与非ML方法相比,基于ML的模型具有适度的证据,并且它们达到相对高性能的标准。然而,研究中的异质性非常高,并且在亚组分析中,通过感染或结果类型显着消散。讨论可获得的证据主要侧重于HAIS检测和预测模型的开发和测试,而他们对研究,医疗质量改进或国家监测目的的采用和影响仍然远未探索。

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