Flores Emilio, Martínez-Racaj Laura, Blasco Álvaro, Diaz Elena, Esteban Patricia, López-Garrigós Maite, Salinas María
Department of Laboratory, Hospital Universitario San Juan de Alicante, Carretera de Valencia, 03550 San Juan de Alicante, Alicante, Spain.
Department of Clinical Medicine, Universidad Miguel Hernandez, Elche, Spain.
Comput Struct Biotechnol J. 2024 Jul 25;24:533-541. doi: 10.1016/j.csbj.2024.07.018. eCollection 2024 Dec.
Urinary tract infections (UTIs) are common infections within the Emergency Department (ED), causing increased laboratory workloads and unnecessary antibiotics prescriptions. The aim of this study was to improve UTI diagnostics in clinical practice by application of machine learning (ML) models for real-time UTI prediction.
In a retrospective study, patient information and outcomes from Emergency Department patients, with positive and negative culture results, were used to design models - 'Random Forest' and 'Neural Network' - for the prediction of UTIs. The performance of these predictive models was validated in a cross-sectional study. In a quasi-experimental study, the impact of UTI risk assessment was investigated by evaluating changes in the behaviour of clinicians, measuring changes in antibiotic prescriptions and urine culture requests.
First, we trained and tested two different predictive models with 8692 cases. Second, we investigated the performance of the predictive models in clinical practice with 962 cases (Area under the curve was between 0.81 to 0.88). The best performance was the combination of both models. Finally, the assessment of the risk for UTIs was implemented into clinical practice and allowed for the reduction of unnecessary urine cultures and antibiotic prescriptions for patients with a low risk of UTI, as well as targeted diagnostics and treatment for patients with a high risk of UTI.
The combination of modern urinalysis diagnostic technologies with digital health solutions can help to further improve UTI diagnostics with positive impact on laboratory workloads and antimicrobial stewardship.
尿路感染(UTIs)是急诊科常见的感染,导致实验室工作量增加和不必要的抗生素处方。本研究的目的是通过应用机器学习(ML)模型进行实时UTI预测,以改善临床实践中的UTI诊断。
在一项回顾性研究中,利用急诊科患者的患者信息和培养结果为阳性和阴性的结局来设计“随机森林”和“神经网络”模型,用于预测UTIs。这些预测模型的性能在一项横断面研究中得到验证。在一项准实验研究中,通过评估临床医生行为的变化、测量抗生素处方和尿培养请求的变化,研究UTI风险评估的影响。
首先,我们用8692例病例训练和测试了两种不同的预测模型。其次,我们用962例病例在临床实践中研究了预测模型的性能(曲线下面积在0.81至0.88之间)。最佳性能是两种模型的组合。最后,UTI风险评估被应用于临床实践,减少了UTI低风险患者不必要的尿培养和抗生素处方,并为UTI高风险患者提供了有针对性的诊断和治疗。
现代尿液分析诊断技术与数字健康解决方案的结合有助于进一步改善UTI诊断,对实验室工作量和抗菌药物管理产生积极影响。