Department of Health Sciences (DISSAL), University of Genoa, Genoa, Italy.
UO Clinica Malattie Infettive, IRCCS Ospedale Policlinico San Martino, Genoa, Italy.
Future Microbiol. 2024 Jul 2;19(10):931-940. doi: 10.2217/fmb-2023-0269. Epub 2024 May 20.
In this narrative review, we discuss studies assessing the use of machine learning (ML) models for the early diagnosis of candidemia, focusing on employed models and the related implications. There are currently few studies evaluating ML techniques for the early diagnosis of candidemia as a prediction task based on clinical and laboratory features. The use of ML tools holds promise to provide highly accurate and real-time support to clinicians for relevant therapeutic decisions at the bedside of patients with suspected candidemia. However, further research is needed in terms of sample size, data quality, recognition of biases and interpretation of model outputs by clinicians to better understand if and how these techniques could be safely adopted in daily clinical practice.
在这篇叙述性评论中,我们讨论了评估机器学习 (ML) 模型用于早期诊断念珠菌血症的研究,重点介绍了所采用的模型和相关影响。目前,很少有研究评估 ML 技术在基于临床和实验室特征的早期诊断念珠菌血症方面的应用。ML 工具的使用有望为临床医生提供高度准确和实时的支持,以便在疑似念珠菌血症患者床边做出相关治疗决策。然而,需要进一步研究样本量、数据质量、识别偏差以及临床医生对模型输出的解释,以更好地了解这些技术是否以及如何可以安全地在日常临床实践中采用。