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用于早期预测各科室住院患者脓毒症发作的机器学习模型的开发与验证

Development and Validation of a Machine Learning Model for Early Prediction of Sepsis Onset in Hospital Inpatients from All Departments.

作者信息

Thiboud Pierre-Elliott, François Quentin, Faure Cécile, Chaufferin Gilles, Arribe Barthélémy, Ettahar Nicolas

机构信息

PREVIA MEDICAL, 69007 Lyon, France.

ALLYANE, 69004 Lyon, France.

出版信息

Diagnostics (Basel). 2025 Jan 27;15(3):302. doi: 10.3390/diagnostics15030302.

Abstract

With 11 million sepsis-related deaths worldwide, the development of tools for early prediction of sepsis onset in hospitalized patients is a global health priority. We developed a machine learning algorithm, capable of detecting the early onset of sepsis in all hospital departments. Predictors of sepsis from 45,127 patients from all departments of Valenciennes Hospital (France) were retrospectively collected for training. The binary classifier SEPSI Score for sepsis prediction was constructed using a gradient boosted trees approach, and assessed on the study dataset of 5270 patient stays, including 121 sepsis cases (2.3%). Finally, the performance of the model and its ability to detect early sepsis onset were evaluated and compared with existing sepsis scoring systems. The mean positive predictive value of the SEPSI Score was 0.610 compared to 0.174 for the SOFA (Sepsis-related Organ Failure Assessment) score. The mean area under the precision-recall curve was 0.738 for SEPSI Score versus 0.174 for the most efficient score (SOFA). High sensitivity (0.845) and specificity (0.987) were also reported for SEPSI Score. The model was more accurate than all tested scores, up to 3 h before sepsis onset. Half of sepsis cases were detected by the model at least 48 h before their medically confirmed onset. The SEPSI Score model accurately predicted the early onset of sepsis, with performance exceeding existing scoring systems. It could be a valuable predictive tool in all hospital departments, allowing early management of sepsis patients. Its impact on associated morbidity-mortality needs to be further assessed.

摘要

全球有1100万人死于败血症相关疾病,因此开发用于早期预测住院患者败血症发作的工具是全球卫生工作的重点。我们开发了一种机器学习算法,能够检测所有医院科室败血症的早期发作。我们回顾性收集了法国瓦朗谢讷医院所有科室45127名患者的败血症预测指标用于训练。采用梯度提升树方法构建了用于败血症预测的二元分类器SEPSI评分,并在包含121例败血症病例(2.3%)的5270例患者住院研究数据集上进行了评估。最后,对该模型的性能及其检测败血症早期发作的能力进行了评估,并与现有的败血症评分系统进行了比较。SEPSI评分的平均阳性预测值为0.610,而序贯器官衰竭评估(SOFA)评分的平均阳性预测值为0.174。SEPSI评分的精确召回曲线下面积均值为0.738,而最有效的评分(SOFA)为0.174。SEPSI评分还具有较高的敏感性(0.845)和特异性(0.987)。该模型比所有测试评分都更准确,在败血症发作前3小时就能检测到。该模型在败血症医学确诊发作前至少48小时检测到了一半的败血症病例。SEPSI评分模型准确预测了败血症的早期发作,其性能超过了现有的评分系统。它可能是所有医院科室中一种有价值的预测工具,有助于对败血症患者进行早期管理。其对相关发病率和死亡率的影响需要进一步评估。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3fa0/11817331/19875a4c1773/diagnostics-15-00302-g001.jpg

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