Machine Learning Prediction Models for Mechanically Ventilated Patients: Analyses of the MIMIC-III Database
Background: Mechanically ventilated patients in the intensive care unit (ICU) have high mortality rates. There are multiple prediction scores, such as the Simplified Acute Physiology Score II (SAPS II), Oxford Acute Severity of Illness Score (OASIS), and Sequential Organ Failure Assessment (SOFA), w...
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| Veröffentlicht in: | Frontiers in medicine Jg. 8; S. 662340 |
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| Sprache: | Englisch |
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Frontiers Media SA
01.07.2021
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| Abstract | Background:
Mechanically ventilated patients in the intensive care unit (ICU) have high mortality rates. There are multiple prediction scores, such as the Simplified Acute Physiology Score II (SAPS II), Oxford Acute Severity of Illness Score (OASIS), and Sequential Organ Failure Assessment (SOFA), widely used in the general ICU population. We aimed to establish prediction scores on mechanically ventilated patients with the combination of these disease severity scores and other features available on the first day of admission.
Methods:
A retrospective administrative database study from the Medical Information Mart for Intensive Care (MIMIC-III) database was conducted. The exposures of interest consisted of the demographics, pre-ICU comorbidity, ICU diagnosis, disease severity scores, vital signs, and laboratory test results on the first day of ICU admission. Hospital mortality was used as the outcome. We used the machine learning methods of
k
-nearest neighbors (KNN), logistic regression, bagging, decision tree, random forest, Extreme Gradient Boosting (XGBoost), and neural network for model establishment. A sample of 70% of the cohort was used for the training set; the remaining 30% was applied for testing. Areas under the receiver operating characteristic curves (AUCs) and calibration plots would be constructed for the evaluation and comparison of the models' performance. The significance of the risk factors was identified through models and the top factors were reported.
Results:
A total of 28,530 subjects were enrolled through the screening of the MIMIC-III database. After data preprocessing, 25,659 adult patients with 66 predictors were included in the model analyses. With the training set, the models of KNN, logistic regression, decision tree, random forest, neural network, bagging, and XGBoost were established and the testing set obtained AUCs of 0.806, 0.818, 0.743, 0.819, 0.780, 0.803, and 0.821, respectively. The calibration curves of all the models, except for the neural network, performed well. The XGBoost model performed best among the seven models. The top five predictors were age, respiratory dysfunction, SAPS II score, maximum hemoglobin, and minimum lactate.
Conclusion:
The current study indicates that models with the risk of factors on the first day could be successfully established for predicting mortality in ventilated patients. The XGBoost model performs best among the seven machine learning models. |
|---|---|
| AbstractList | Background:
Mechanically ventilated patients in the intensive care unit (ICU) have high mortality rates. There are multiple prediction scores, such as the Simplified Acute Physiology Score II (SAPS II), Oxford Acute Severity of Illness Score (OASIS), and Sequential Organ Failure Assessment (SOFA), widely used in the general ICU population. We aimed to establish prediction scores on mechanically ventilated patients with the combination of these disease severity scores and other features available on the first day of admission.
Methods:
A retrospective administrative database study from the Medical Information Mart for Intensive Care (MIMIC-III) database was conducted. The exposures of interest consisted of the demographics, pre-ICU comorbidity, ICU diagnosis, disease severity scores, vital signs, and laboratory test results on the first day of ICU admission. Hospital mortality was used as the outcome. We used the machine learning methods of
k
-nearest neighbors (KNN), logistic regression, bagging, decision tree, random forest, Extreme Gradient Boosting (XGBoost), and neural network for model establishment. A sample of 70% of the cohort was used for the training set; the remaining 30% was applied for testing. Areas under the receiver operating characteristic curves (AUCs) and calibration plots would be constructed for the evaluation and comparison of the models' performance. The significance of the risk factors was identified through models and the top factors were reported.
Results:
A total of 28,530 subjects were enrolled through the screening of the MIMIC-III database. After data preprocessing, 25,659 adult patients with 66 predictors were included in the model analyses. With the training set, the models of KNN, logistic regression, decision tree, random forest, neural network, bagging, and XGBoost were established and the testing set obtained AUCs of 0.806, 0.818, 0.743, 0.819, 0.780, 0.803, and 0.821, respectively. The calibration curves of all the models, except for the neural network, performed well. The XGBoost model performed best among the seven models. The top five predictors were age, respiratory dysfunction, SAPS II score, maximum hemoglobin, and minimum lactate.
Conclusion:
The current study indicates that models with the risk of factors on the first day could be successfully established for predicting mortality in ventilated patients. The XGBoost model performs best among the seven machine learning models. Background: Mechanically ventilated patients in the intensive care unit (ICU) have high mortality rates. There are multiple prediction scores, such as the Simplified Acute Physiology Score II (SAPS II), Oxford Acute Severity of Illness Score (OASIS), and Sequential Organ Failure Assessment (SOFA), widely used in the general ICU population. We aimed to establish prediction scores on mechanically ventilated patients with the combination of these disease severity scores and other features available on the first day of admission. Methods: A retrospective administrative database study from the Medical Information Mart for Intensive Care (MIMIC-III) database was conducted. The exposures of interest consisted of the demographics, pre-ICU comorbidity, ICU diagnosis, disease severity scores, vital signs, and laboratory test results on the first day of ICU admission. Hospital mortality was used as the outcome. We used the machine learning methods of k-nearest neighbors (KNN), logistic regression, bagging, decision tree, random forest, Extreme Gradient Boosting (XGBoost), and neural network for model establishment. A sample of 70% of the cohort was used for the training set; the remaining 30% was applied for testing. Areas under the receiver operating characteristic curves (AUCs) and calibration plots would be constructed for the evaluation and comparison of the models' performance. The significance of the risk factors was identified through models and the top factors were reported. Results: A total of 28,530 subjects were enrolled through the screening of the MIMIC-III database. After data preprocessing, 25,659 adult patients with 66 predictors were included in the model analyses. With the training set, the models of KNN, logistic regression, decision tree, random forest, neural network, bagging, and XGBoost were established and the testing set obtained AUCs of 0.806, 0.818, 0.743, 0.819, 0.780, 0.803, and 0.821, respectively. The calibration curves of all the models, except for the neural network, performed well. The XGBoost model performed best among the seven models. The top five predictors were age, respiratory dysfunction, SAPS II score, maximum hemoglobin, and minimum lactate. Conclusion: The current study indicates that models with the risk of factors on the first day could be successfully established for predicting mortality in ventilated patients. The XGBoost model performs best among the seven machine learning models. Background: Mechanically ventilated patients in the intensive care unit (ICU) have high mortality rates. There are multiple prediction scores, such as the Simplified Acute Physiology Score II (SAPS II), Oxford Acute Severity of Illness Score (OASIS), and Sequential Organ Failure Assessment (SOFA), widely used in the general ICU population. We aimed to establish prediction scores on mechanically ventilated patients with the combination of these disease severity scores and other features available on the first day of admission. Methods: A retrospective administrative database study from the Medical Information Mart for Intensive Care (MIMIC-III) database was conducted. The exposures of interest consisted of the demographics, pre-ICU comorbidity, ICU diagnosis, disease severity scores, vital signs, and laboratory test results on the first day of ICU admission. Hospital mortality was used as the outcome. We used the machine learning methods of k-nearest neighbors (KNN), logistic regression, bagging, decision tree, random forest, Extreme Gradient Boosting (XGBoost), and neural network for model establishment. A sample of 70% of the cohort was used for the training set; the remaining 30% was applied for testing. Areas under the receiver operating characteristic curves (AUCs) and calibration plots would be constructed for the evaluation and comparison of the models' performance. The significance of the risk factors was identified through models and the top factors were reported. Results: A total of 28,530 subjects were enrolled through the screening of the MIMIC-III database. After data preprocessing, 25,659 adult patients with 66 predictors were included in the model analyses. With the training set, the models of KNN, logistic regression, decision tree, random forest, neural network, bagging, and XGBoost were established and the testing set obtained AUCs of 0.806, 0.818, 0.743, 0.819, 0.780, 0.803, and 0.821, respectively. The calibration curves of all the models, except for the neural network, performed well. The XGBoost model performed best among the seven models. The top five predictors were age, respiratory dysfunction, SAPS II score, maximum hemoglobin, and minimum lactate. Conclusion: The current study indicates that models with the risk of factors on the first day could be successfully established for predicting mortality in ventilated patients. The XGBoost model performs best among the seven machine learning models.Background: Mechanically ventilated patients in the intensive care unit (ICU) have high mortality rates. There are multiple prediction scores, such as the Simplified Acute Physiology Score II (SAPS II), Oxford Acute Severity of Illness Score (OASIS), and Sequential Organ Failure Assessment (SOFA), widely used in the general ICU population. We aimed to establish prediction scores on mechanically ventilated patients with the combination of these disease severity scores and other features available on the first day of admission. Methods: A retrospective administrative database study from the Medical Information Mart for Intensive Care (MIMIC-III) database was conducted. The exposures of interest consisted of the demographics, pre-ICU comorbidity, ICU diagnosis, disease severity scores, vital signs, and laboratory test results on the first day of ICU admission. Hospital mortality was used as the outcome. We used the machine learning methods of k-nearest neighbors (KNN), logistic regression, bagging, decision tree, random forest, Extreme Gradient Boosting (XGBoost), and neural network for model establishment. A sample of 70% of the cohort was used for the training set; the remaining 30% was applied for testing. Areas under the receiver operating characteristic curves (AUCs) and calibration plots would be constructed for the evaluation and comparison of the models' performance. The significance of the risk factors was identified through models and the top factors were reported. Results: A total of 28,530 subjects were enrolled through the screening of the MIMIC-III database. After data preprocessing, 25,659 adult patients with 66 predictors were included in the model analyses. With the training set, the models of KNN, logistic regression, decision tree, random forest, neural network, bagging, and XGBoost were established and the testing set obtained AUCs of 0.806, 0.818, 0.743, 0.819, 0.780, 0.803, and 0.821, respectively. The calibration curves of all the models, except for the neural network, performed well. The XGBoost model performed best among the seven models. The top five predictors were age, respiratory dysfunction, SAPS II score, maximum hemoglobin, and minimum lactate. Conclusion: The current study indicates that models with the risk of factors on the first day could be successfully established for predicting mortality in ventilated patients. The XGBoost model performs best among the seven machine learning models. |
| Author | Yao, Renqi Liu, Shi Li, Lin Ren, Chao Du, Bin Li, Wei Guo, Junyang Guo, Qianqian Jin, Xin Chen, Yan Xi, Xiuming Huang, Huibin Zheng, Hua Zhang, Jin Chen, Ge Yu, Qian Wang, Guowei Zhu, Yibing Li, Yang |
| AuthorAffiliation | 5 Department of Burn Surgery, The First Affiliated Hospital of Naval Medical University , Shanghai , China 4 School of Computer Science and Technology, Wuhan University of Technology , Wuhan , China 13 Department of Critical Care Medicine, Beijing Tsinghua Changgung Hospital, School of Clinical Medicine, Tsinghua University , Beijing , China 8 Beijing Big Eye Xing Tu Culture Media Co., Ltd. , Beijing , China 2 Department of Emergency, Guang'anmen Hospital, China Academy of Chinese Medical Sciences , Beijing , China 10 Medical ICU, Peking Union Medical College Hospital, Peking Union Medical College and Chinese Academy of Medical Sciences , Beijing , China 9 School of Information Science and Engineering, Hebei North University , Shijiazhuang , China 7 Yidu Cloud Technology Inc. , Beijing , China 14 Academy for Advanced Interdisciplinary Studies, Peking University , Beijing , China 11 Department of Anesthesiology, Peking University Shougang Hospital , Beijing , China 1 Medical Research and Biometri |
| AuthorAffiliation_xml | – name: 3 School of Economics and Management, Beijing Institute of Technology , Beijing , China – name: 13 Department of Critical Care Medicine, Beijing Tsinghua Changgung Hospital, School of Clinical Medicine, Tsinghua University , Beijing , China – name: 1 Medical Research and Biometrics Center, National Center for Cardiovascular Diseases, Fuwai Hospital, Chinese Academy of Medical Sciences and Peking Union Medical College , Beijing , China – name: 6 Translational Medicine Research Center, Fourth Medical Center and Medical Innovation Research Division of the Chinese People's Liberation Army (PLA) General Hospital , Beijing , China – name: 8 Beijing Big Eye Xing Tu Culture Media Co., Ltd. , Beijing , China – name: 7 Yidu Cloud Technology Inc. , Beijing , China – name: 14 Academy for Advanced Interdisciplinary Studies, Peking University , Beijing , China – name: 5 Department of Burn Surgery, The First Affiliated Hospital of Naval Medical University , Shanghai , China – name: 9 School of Information Science and Engineering, Hebei North University , Shijiazhuang , China – name: 4 School of Computer Science and Technology, Wuhan University of Technology , Wuhan , China – name: 2 Department of Emergency, Guang'anmen Hospital, China Academy of Chinese Medical Sciences , Beijing , China – name: 10 Medical ICU, Peking Union Medical College Hospital, Peking Union Medical College and Chinese Academy of Medical Sciences , Beijing , China – name: 11 Department of Anesthesiology, Peking University Shougang Hospital , Beijing , China – name: 12 Department of Critical Care Medicine, Fuxing Hospital, Capital Medical University , Beijing , China |
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| ContentType | Journal Article |
| Copyright | 2021. This work is licensed under http://creativecommons.org/licenses/by/4.0/ (the “License”). Notwithstanding the ProQuest Terms and Conditions, you may use this content in accordance with the terms of the License. Copyright © 2021 Zhu, Zhang, Wang, Yao, Ren, Chen, Jin, Guo, Liu, Zheng, Chen, Guo, Li, Du, Xi, Li, Huang, Li and Yu. Copyright © 2021 Zhu, Zhang, Wang, Yao, Ren, Chen, Jin, Guo, Liu, Zheng, Chen, Guo, Li, Du, Xi, Li, Huang, Li and Yu. 2021 Zhu, Zhang, Wang, Yao, Ren, Chen, Jin, Guo, Liu, Zheng, Chen, Guo, Li, Du, Xi, Li, Huang, Li and Yu |
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| Notes | ObjectType-Article-1 SourceType-Scholarly Journals-1 ObjectType-Feature-2 content type line 14 content type line 23 These authors have contributed equally to this work Edited by: Rahul Kashyap, Mayo Clinic, United States This article was submitted to Intensive Care Medicine and Anesthesiology, a section of the journal Frontiers in Medicine Reviewed by: Mack Sheraton, Trinity Health System, United States; Tarun Singh, Mayo Clinic, United States |
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| References_xml | – volume: 18 start-page: 462 year: 2020 ident: B10 article-title: Predicting 30-days mortality for MIMIC-III patients with sepsis-3: a machine learning approach using XGboost publication-title: J Transl Med. doi: 10.1186/s12967-020-02620-5 – volume: 350 start-page: g7594 year: 2015 ident: B12 article-title: Transparent reporting of a multivariable prediction model for individual prognosis or diagnosis (TRIPOD): the TRIPOD statement publication-title: BMJ. doi: 10.1136/bmj.g7594 – volume: 41 start-page: 1197 year: 2013 ident: B3 article-title: Increasing critical care admissions from U.S. emergency departments, 2001-2009 publication-title: Crit Care Med. doi: 10.1097/CCM.0b013e31827c086f – volume: 117 start-page: 798 year: 2018 ident: B2 article-title: Clinical characteristics and survival outcomes of terminally ill patients undergoing withdrawal of mechanical ventilation publication-title: J Formos Med Assoc. doi: 10.1016/j.jfma.2017.09.014 – volume: 24 start-page: 1716 year: 2018 ident: B6 article-title: The Artificial Intelligence Clinician learns optimal treatment strategies for sepsis in intensive care publication-title: Nat Med. doi: 10.1038/s41591-018-0213-5 – volume: 41 start-page: 2712 year: 2013 ident: B1 article-title: ICU occupancy and mechanical ventilator use in the United States publication-title: Crit Care Med. doi: 10.1097/CCM.0b013e318298a139 – volume: 72 start-page: 321 year: 2020 ident: B9 article-title: Artificial intelligence in abdominal aortic aneurysm publication-title: J Vasc Surg. doi: 10.1016/j.jvs.2019.12.026 – volume: 141 start-page: 104176 year: 2020 ident: B7 article-title: The development an artificial intelligence algorithm for early sepsis diagnosis in the intensive care unit publication-title: Int J Med Inform. doi: 10.1016/j.ijmedinf.2020.104176 – volume: 43 start-page: 1130 year: 2005 ident: B13 article-title: Coding algorithms for defining comorbidities in ICD-9-CM and ICD-10 administrative data publication-title: Med Care. doi: 10.1097/01.mlr.0000182534.19832.83 – volume: 44 start-page: 160 year: 2020 ident: B5 article-title: A machine learning-based model for 1-year mortality prediction in patients admitted to an Intensive Care Unit with a diagnosis of sepsis publication-title: Med Intensiva. doi: 10.1016/j.medine.2018.07.019 – volume: 63 start-page: 581 year: 1976 ident: B14 article-title: Inference and missing data publication-title: Biometrika. doi: 10.1093/biomet/63.3.581 – volume: 3 start-page: 160035 year: 2016 ident: B11 article-title: MIMIC-III, a freely accessible critical care database publication-title: Sci Data. doi: 10.1038/sdata.2016.35 – volume: 7 start-page: 445 year: 2020 ident: B16 article-title: A machine learning-based prediction of hospital mortality in patients with postoperative sepsis publication-title: Front Med (Lausanne). doi: 10.21203/rs.2.24188/v1 – volume: 17 start-page: 230 year: 2019 ident: B17 article-title: Topic Group ‘Evaluating diagnostic tests and prediction models' of the STRATOS initiative. Calibration: the Achilles heel of predictive analytics publication-title: BMC Med doi: 10.1186/s12916-019-1466-7 – volume: 36 start-page: 759 year: 2015 ident: B4 article-title: Critical care service in Saudi Arabia publication-title: Saudi Med J. doi: 10.15537/smj.2015.6.11204 – volume: 20 start-page: 416 year: 2016 ident: B8 article-title: Prediction of hemodynamic response to epinephrine via model-based system identification publication-title: IEEE J Biomed Health Inform. doi: 10.1109/JBHI.2014.2371533 – volume: 40 start-page: 781 year: 2019 ident: B15 article-title: Survival of mechanically ventilated patients admitted to intensive care units. Results from a tertiary care center between 2016-2018 publication-title: Saudi Med J. doi: 10.15537/smj.2019.8.24447 |
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Mechanically ventilated patients in the intensive care unit (ICU) have high mortality rates. There are multiple prediction scores, such as the... Background: Mechanically ventilated patients in the intensive care unit (ICU) have high mortality rates. There are multiple prediction scores, such as the... |
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| SubjectTerms | Blood diseases Blood pressure Creatinine death Diabetes Glucose Heart failure Hemoglobin Hypertension Hypothyroidism Intensive care intensive care unit Kidney diseases Liver diseases Machine learning mechanical ventilation Medical history Medicine Metabolism Metastasis Mortality Nervous system prediction model Respiratory failure Sepsis Software Stroke Structured Query Language-SQL Ventilators Vital signs |
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| Title | Machine Learning Prediction Models for Mechanically Ventilated Patients: Analyses of the MIMIC-III Database |
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