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Machine learning for the prediction of sepsis: a systematic review and meta-analysis of diagnostic test accuracy

机译:用于预测败血症的机器学习:系统评价和诊断测试精度的荟萃分析

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Purpose Early clinical recognition of sepsis can be challenging. With the advancement of machine learning, promising real-time models to predict sepsis have emerged. We assessed their performance by carrying out a systematic review and meta-analysis. Methods A systematic search was performed in PubMed, Embase.com and Scopus. Studies targeting sepsis, severe sepsis or septic shock in any hospital setting were eligible for inclusion. The index test was any supervised machine learning model for real-time prediction of these conditions. Quality of evidence was assessed using the Grading of Recommendations Assessment, Development and Evaluation (GRADE) methodology, with a tailored Quality Assessment of Diagnostic Accuracy Studies (QUADAS-2) checklist to evaluate risk of bias. Models with a reported area under the curve of the receiver operating characteristic (AUROC) metric were meta-analyzed to identify strongest contributors to model performance. Results After screening, a total of 28 papers were eligible for synthesis, from which 130 models were extracted. The majority of papers were developed in the intensive care unit (ICU, n = 15; 54%), followed by hospital wards (n = 7; 25%), the emergency department (ED, n = 4; 14%) and all of these settings (n = 2; 7%). For the prediction of sepsis, diagnostic test accuracy assessed by the AUROC ranged from 0.68-0.99 in the ICU, to 0.96-0.98 in-hospital and 0.87 to 0.97 in the ED. Varying sepsis definitions limit pooling of the performance across studies. Only three papers clinically implemented models with mixed results. In the multivariate analysis, temperature, lab values, and model type contributed most to model performance. Conclusion This systematic review and meta-analysis show that on retrospective data, individual machine learning models can accurately predict sepsis onset ahead of time. Although they present alternatives to traditional scoring systems, between-study heterogeneity limits the assessment of pooled results. Systematic reporting and clinical implementation studies are needed to bridge the gap between bytes and bedside.
机译:目的早期临床识别败血症可能具有挑战性。随着机器学习的进步,有希望的实时模型来预测败血症。我们通过进行系统审查和荟萃分析来评估其表现。方法在PubMed,Embase.com和Scopus中执行系统搜索。靶向败血症,任何医院环境中的严重脓毒症或脓毒症休克的研究有资格包涵式。索引测试是任何监督机器学习模型,用于这些条件的实时预测。利用建议评估,开发和评估(级)方法的评分评估证据质量,对诊断准确性研究(Quadas-2)清单进行量身定制的质量评估,以评估偏见的风险。具有报告区域的模型在接收器操作特征(Auroc)度量的曲线下进行了Meta分析以确定最强的贡献者以模拟模拟性能。筛选后,共有28篇论文有资格合成,从中提取130种型号。大多数论文都在重症监护室(ICU,N = 15; 54%)中开发,其次是医院病房(N = 7; 25%),急诊部(ED,N = 4; 14%)和所有这些设置(n = 2; 7%)。对于预测败血症,AUROC评估的诊断测试精度在ICU中的0.68-0.99范围为0.96-0.98,在医院内,0.87至0.97。不同的败血症定义限制跨研究的表现。只有三篇论文临床实施模型,具有混合结果。在多变量分析,温度,实验室值和模型类型中贡献最大的模型性能。结论该系统审查和元分析表明,在回顾性数据,单个机器学习模型可以准确地预测败血症发病。虽然它们呈现出传统评分系统的替代方案,但研究之间的异质性限制了汇总结果的评估。需要系统报告和临床实施研究来弥合字节和床侧的差距。

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