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一种用于分析脓毒症幸存者再次入住重症监护病房时院内死亡风险因素的可解释机器学习算法。

An explainable machine learning algorithm for risk factor analysis of in-hospital mortality in sepsis survivors with ICU readmission.

作者信息

Jiang Zhengyu, Bo Lulong, Xu Zhenhua, Song Yubing, Wang Jiafeng, Wen Pingshan, Wan Xiaojian, Yang Tao, Deng Xiaoming, Bian Jinjun

机构信息

Faculty of Anesthesiology, Changhai Hospital, Naval Medical University, 168 Changhai Road, Shanghai 200433, China; Department of Anesthesiology, Naval Medical Center, Naval Medical University, Shanghai 200052, China.

Faculty of Anesthesiology, Changhai Hospital, Naval Medical University, 168 Changhai Road, Shanghai 200433, China.

出版信息

Comput Methods Programs Biomed. 2021 Jun;204:106040. doi: 10.1016/j.cmpb.2021.106040. Epub 2021 Mar 7.

Abstract

BACKGROUND AND OBJECTIVE

Patients who survive sepsis in the intensive care unit (ICU) (sepsis survivors) have an increased risk of long-term mortality and ICU readmission. We aim to identify the risk factors for in-hospital mortality in sepsis survivors with later ICU readmission and visualize the quantitative relationship between the individual risk factors and mortality by applying machine learning (ML) algorithm.

METHODS

Data were obtained from the Medical Information Mart for Intensive Care III (MIMIC-III) database for sepsis and non-sepsis ICU survivors who were later readmitted to the ICU. The data on the first day of ICU readmission and the in-hospital mortality was combined for the ML algorithm modeling and the SHapley Additive exPlanations (SHAP) value of the correlation between the risk factors and the outcome.

RESULTS

Among the 2970 enrolled patients, in-hospital mortality during ICU readmission was significantly higher in sepsis survivors (n = 2228) than nonsepsis survivors (n = 742) (50.4% versus 30.7%, P<0.001). The ML algorithm identified 18 features that were associated with a risk of mortality in these groups; among these, BUN, age, weight, and minimum heart rate were shared by both groups, and the remaining mean systolic pressure, urine output, albumin, platelets, lactate, activated partial thromboplastin time (APTT), potassium, pCO2, pO2, respiration rate, Glasgow Coma Scale (GCS) score for eye-opening, anion gap, sex and temperature were specific to previous sepsis survivors. The ML algorithm also calculated the quantitative contribution and noteworthy threshold of each factor to the risk of mortality in sepsis survivors.

CONCLUSION

14 specific parameters with corresponding thresholds were found to be associated with the in-hospital mortality of sepsis survivors during the ICU readmission. The construction of advanced ML techniques could support the analysis and development of predictive models that can be used to support the decisions and treatment strategies made in a clinical setting in critical care patients.

摘要

背景与目的

在重症监护病房(ICU)中从脓毒症中存活下来的患者(脓毒症幸存者)长期死亡率和再次入住ICU的风险增加。我们旨在确定随后再次入住ICU的脓毒症幸存者院内死亡的风险因素,并通过应用机器学习(ML)算法直观呈现个体风险因素与死亡率之间的定量关系。

方法

数据来自重症监护医疗信息数据库III(MIMIC-III),涵盖脓毒症和非脓毒症的ICU幸存者,这些患者随后再次入住ICU。将ICU再次入院第一天的数据与院内死亡率相结合,用于ML算法建模以及风险因素与结局之间相关性的SHapley加性解释(SHAP)值计算。

结果

在2970名登记患者中,脓毒症幸存者(n = 2228)再次入住ICU期间的院内死亡率显著高于非脓毒症幸存者(n = 742)(50.4%对30.7%,P < 0.001)。ML算法确定了18个与这些组死亡率风险相关的特征;其中,两组都有的特征是血尿素氮、年龄、体重和最低心率,其余的平均收缩压、尿量、白蛋白、血小板、乳酸、活化部分凝血活酶时间(APTT)、钾、pCO2、pO2、呼吸频率、睁眼的格拉斯哥昏迷量表(GCS)评分、阴离子间隙、性别和体温是先前脓毒症幸存者特有的。ML算法还计算了每个因素对脓毒症幸存者死亡风险的定量贡献和显著阈值。

结论

发现14个具有相应阈值的特定参数与脓毒症幸存者再次入住ICU期间的院内死亡率相关。先进ML技术的构建可以支持预测模型的分析和开发,这些模型可用于支持危重症患者临床环境中的决策和治疗策略。

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