Predictive model for acute respiratory distress syndrome events in ICU patients in China using machine learning algorithms: a secondary analysis of a cohort study
单位:[1]Department of General ICU, The First Affiliated Hospital of Zhengzhou University,Henan Key Laboratory of Critical Care Medicine, 1 Jianshe East Road,Zhengzhou 450052, China[2]Department of Critical Care Medicine, PekingUniversity Third Hospital, Beijing, China[3]Department of Electrical & ComputerEngineering, University of Alberta, Edmonton, Canada[4]Intensive Care Unit,Beijing Friendship Hospital Affiliated with Capital Medical University, Beijing,China临床科室急危重症及感染医学中心重症医学科首都医科大学附属北京友谊医院[5]Intensive Care Unit, Xiyuan Hospital Affiliated with the China Academyof Chinese Medical Sciences, Beijing, China[6]Intensive Care Unit, BeijingShijitan Hospital Affiliated with Capital Medical University, Beijing, China[7]Intensive Care Unit, China-Japan Friendship Hospital, Beijing, China
Background To develop a machine learning model for predicting acute respiratory distress syndrome (ARDS) events through commonly available parameters, including baseline characteristics and clinical and laboratory parameters. Methods A secondary analysis of a multi-centre prospective observational cohort study from five hospitals in Beijing, China, was conducted from January 1, 2011, to August 31, 2014. A total of 296 patients at risk for developing ARDS admitted to medical intensive care units (ICUs) were included. We applied a random forest approach to identify the best set of predictors out of 42 variables measured on day 1 of admission. Results All patients were randomly divided into training (80%) and testing (20%) sets. Additionally, these patients were followed daily and assessed according to the Berlin definition. The model obtained an average area under the receiver operating characteristic (ROC) curve (AUC) of 0.82 and yielded a predictive accuracy of 83%. For the first time, four new biomarkers were included in the model: decreased minimum haematocrit, glucose, and sodium and increased minimum white blood cell (WBC) count. Conclusions This newly established machine learning-based model shows good predictive ability in Chinese patients with ARDS. External validation studies are necessary to confirm the generalisability of our approach across populations and treatment practices.
基金:
Capital Medical Development Research Fund China [2009-1014]; National Natural Science Foundation ChinaNational Natural Science Foundation of China (NSFC) [81372043]; Beijing Natural Science FoundationBeijing Natural Science Foundation [7162199]; Natural Science Foundation of Henan Province [182300410369]; Science and Technology Innovation Talents in Universities of Henan Province [16IRTSTHN021]; National Science and Technology Major Project [2018ZX10101004]
第一作者单位:[1]Department of General ICU, The First Affiliated Hospital of Zhengzhou University,Henan Key Laboratory of Critical Care Medicine, 1 Jianshe East Road,Zhengzhou 450052, China
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推荐引用方式(GB/T 7714):
Xian‑Fei Ding,Jin‑Bo Li,Huo‑Yan Liang,et al.Predictive model for acute respiratory distress syndrome events in ICU patients in China using machine learning algorithms: a secondary analysis of a cohort study[J].JOURNAL of TRANSLATIONAL MEDICINE.2019,17(1):doi:10.1186/s12967-019-2075-0.
APA:
Xian‑Fei Ding,Jin‑Bo Li,Huo‑Yan Liang,Zong‑Yu Wang,Ting‑Ting Jiao...&Tong‑Wen Sun.(2019).Predictive model for acute respiratory distress syndrome events in ICU patients in China using machine learning algorithms: a secondary analysis of a cohort study.JOURNAL of TRANSLATIONAL MEDICINE,17,(1)
MLA:
Xian‑Fei Ding,et al."Predictive model for acute respiratory distress syndrome events in ICU patients in China using machine learning algorithms: a secondary analysis of a cohort study".JOURNAL of TRANSLATIONAL MEDICINE 17..1(2019)