Graduate Institute of Biomedical Informatics, College of Medical Science and Technology, Taipei Medical University, No. 291, Zhongzheng Rd, Zhonghe District, New Taipei City, 235, Taiwan.
International Center for Health Information Technology, College of Medical Science and Technology, Taipei Medical University, Taipei, 235, Taiwan.
Crit Care. 2024 May 28;28(1):180. doi: 10.1186/s13054-024-04948-6.
Sepsis, an acute and potentially fatal systemic response to infection, significantly impacts global health by affecting millions annually. Prompt identification of sepsis is vital, as treatment delays lead to increased fatalities through progressive organ dysfunction. While recent studies have delved into leveraging Machine Learning (ML) for predicting sepsis, focusing on aspects such as prognosis, diagnosis, and clinical application, there remains a notable deficiency in the discourse regarding feature engineering. Specifically, the role of feature selection and extraction in enhancing model accuracy has been underexplored.
This scoping review aims to fulfill two primary objectives: To identify pivotal features for predicting sepsis across a variety of ML models, providing valuable insights for future model development, and To assess model efficacy through performance metrics including AUROC, sensitivity, and specificity.
The analysis included 29 studies across diverse clinical settings such as Intensive Care Units (ICU), Emergency Departments, and others, encompassing 1,147,202 patients. The review highlighted the diversity in prediction strategies and timeframes. It was found that feature extraction techniques notably outperformed others in terms of sensitivity and AUROC values, thus indicating their critical role in improving sepsis prediction models.
Key dynamic indicators, including vital signs and critical laboratory values, are instrumental in the early detection of sepsis. Applying feature selection methods significantly boosts model precision, with models like Random Forest and XG Boost showing promising results. Furthermore, Deep Learning models (DL) reveal unique insights, spotlighting the pivotal role of feature engineering in sepsis prediction, which could greatly benefit clinical practice.
脓毒症是一种急性且可能致命的全身感染反应,每年影响数百万人,对全球健康造成重大影响。及时识别脓毒症至关重要,因为治疗延误会导致器官功能逐渐受损,死亡率增加。虽然最近的研究深入探讨了利用机器学习 (ML) 预测脓毒症,重点关注预后、诊断和临床应用等方面,但在特征工程方面的讨论仍然存在明显的不足。特别是,特征选择和提取在提高模型准确性方面的作用尚未得到充分探索。
本范围综述旨在实现两个主要目标:确定用于预测各种 ML 模型中脓毒症的关键特征,为未来的模型开发提供有价值的见解;通过 AUROC、敏感性和特异性等性能指标评估模型效能。
分析包括来自不同临床环境(如重症监护病房[ICU]、急诊部门等)的 29 项研究,共涵盖 1147202 名患者。综述强调了预测策略和时间框架的多样性。结果发现,特征提取技术在敏感性和 AUROC 值方面明显优于其他技术,这表明它们在改进脓毒症预测模型方面发挥着关键作用。
关键的动态指标,包括生命体征和关键实验室值,对于脓毒症的早期检测至关重要。应用特征选择方法可显著提高模型精度,随机森林和 XG Boost 等模型显示出有希望的结果。此外,深度学习模型 (DL) 揭示了独特的见解,强调了特征工程在脓毒症预测中的关键作用,这可能极大地有益于临床实践。