B Hernandez, D K Ming, T M Rawson, W Bolton, R Wilson, V Vasikasin, J Daniels, J Rodriguez-Manzano, F J Davies, P Georgiou, A H Holmes
Centre for Antimicrobial Optimisation, Imperial College London, London, W12 0NN, UK.
Centre for Antimicrobial Optimisation, Imperial College London, London, W12 0NN, UK.
Artif Intell Med. 2025 Feb;160:103008. doi: 10.1016/j.artmed.2024.103008. Epub 2024 Nov 20.
Blood-related infections are a significant concern in healthcare. They can lead to serious medical complications and even death if not promptly diagnosed and treated. Throughout time, medical research has sought to identify clinical factors and strategies to improve the management of these conditions. The increasing adoption of electronic health records has led to a wealth of electronically available medical information and predictive models have emerged as invaluable tools. This manuscript offers a detailed survey of machine-learning techniques used for the diagnosis and prognosis of bacteraemia, bloodstream infections, and sepsis shedding light on their efficacy, potential limitations, and the intricacies of their integration into clinical practice.
This study presents a comprehensive analysis derived from a thorough search across prominent databases, namely EMBASE, Google Scholar, PubMed, Scopus, and Web of Science, spanning from their inception dates to October 25, 2023. Eligibility assessment was conducted independently by investigators, with inclusion criteria encompassing peer-reviewed articles and pertinent non-peer-reviewed literature. Clinical and technical data were meticulously extracted and integrated into a registry, facilitating a holistic examination of the subject matter. To maintain currency and comprehensiveness, readers are encouraged to contribute manuscript suggestions and/or reports for integration into this living registry.
While machine learning (ML) models exhibit promise in advanced disease stages such as sepsis, early stages remain underexplored due to data limitations. Biochemical markers emerge as pivotal predictors during early stages such as bacteraemia, or bloodstream infections, while vital signs assume significance in sepsis prognosis. Integrating temporal trend information into conventional machine learning models appears to enhance performance. Unfortunately, sequential deep learning models face challenges, showing minimal performance improvements and significant drops in external datasets, potentially due to learning missing patterns within the scarce data available rather than understanding disease dynamics. Real-life implementation receives limited attention, as meeting design requirements proves challenging within existing healthcare infrastructure. The data collected in an event-based fashion during clinical practice is insufficient to fully harness the potential of these data-hungry models. Despite limitations, opportunities abound in leveraging flexible models and exploiting real-time non-invasive data collection technologies such as wearable devices or microneedles. Addressing research gaps in early disease stages, harnessing patient history data often underused, and embracing continual diagnostics beyond treatment initiation are crucial for improving healthcare decision-making support and adoption across the entire management pathway.
This comprehensive survey illuminates the landscape of ML applications in blood-related infection management, offering insights for future research and clinical practice. Implementing clinical ML-based clinical decision support systems requires balancing research with practical considerations. Current methodologies often lead to complex models lacking transparency and practical validation. Integration into healthcare systems faces regulatory, privacy, and trust challenges. Clear presentations and adherence to standards are essential to boost confidence in machine learning models for real-world healthcare applications.
血液相关感染是医疗保健领域的一个重大问题。如果不及时诊断和治疗,它们可能导致严重的医疗并发症甚至死亡。长期以来,医学研究一直在寻求确定临床因素和策略,以改善对这些病症的管理。电子健康记录的日益普及带来了大量可电子获取的医疗信息,预测模型已成为宝贵的工具。本文详细综述了用于菌血症、血流感染和脓毒症诊断及预后的机器学习技术,阐明了它们的功效、潜在局限性以及将其整合到临床实践中的复杂性。
本研究对知名数据库(即EMBASE、谷歌学术、PubMed、Scopus和科学网)进行了全面检索,涵盖从其创建日期到2023年10月25日的文献,从而进行综合分析。研究人员独立进行资格评估,纳入标准包括同行评审文章和相关的非同行评审文献。精心提取临床和技术数据并整合到一个登记册中,以便对主题进行全面审查。为了保持时效性和全面性,鼓励读者提供稿件建议和/或报告,以便纳入这个动态更新的登记册。
虽然机器学习(ML)模型在脓毒症等疾病晚期显示出前景,但由于数据限制,早期阶段仍未得到充分探索。生化标志物在菌血症或血流感染等早期阶段是关键的预测指标,而生命体征在脓毒症预后中具有重要意义。将时间趋势信息整合到传统机器学习模型中似乎可以提高性能。不幸的是,序列深度学习模型面临挑战,在外部数据集中表现出最小的性能提升和显著下降,这可能是由于在可用的稀缺数据中学习缺失模式,而不是理解疾病动态。实际应用受到的关注有限,因为在现有医疗基础设施内满足设计要求具有挑战性。临床实践中以事件为基础收集的数据不足以充分发挥这些数据饥渴型模型的潜力。尽管存在局限性,但在利用灵活模型和开发可穿戴设备或微针等实时非侵入性数据收集技术方面仍有很多机会。解决疾病早期阶段的研究差距、利用经常未被充分利用的患者病史数据以及在治疗开始后采用持续诊断对于改善整个管理路径中的医疗决策支持和应用至关重要。
这项全面综述阐明了ML在血液相关感染管理中的应用情况,为未来研究和临床实践提供了见解。实施基于ML的临床决策支持系统需要在研究与实际考虑之间取得平衡。当前的方法往往导致缺乏透明度和实际验证的复杂模型。整合到医疗系统面临监管、隐私和信任方面的挑战。清晰的展示和遵守标准对于增强机器学习模型在现实世界医疗应用中的信心至关重要。