Early hospital mortality prediction of intensive care unit patients using an ensemble learning approach. (December 2017)
- Record Type:
- Journal Article
- Title:
- Early hospital mortality prediction of intensive care unit patients using an ensemble learning approach. (December 2017)
- Main Title:
- Early hospital mortality prediction of intensive care unit patients using an ensemble learning approach
- Authors:
- Awad, Aya
Bader-El-Den, Mohamed
McNicholas, James
Briggs, Jim - Abstract:
- Highlights: Early (6 hours after admission) Mortality Prediction model for ICU patients is proposed. Only a few models are suitable for early prediction but with low discrimination power. The proposed EMPICU outperforms existing ICU scores in terms of performance and time. EMPICU model based on ensemble classification methods which provide a general prediction model. Abstract: Background: Mortality prediction of hospitalized patients is an important problem. Over the past few decades, several severity scoring systems and machine learning mortality prediction models have been developed for predicting hospital mortality. By contrast, early mortality prediction for intensive care unit patients remains an open challenge. Most research has focused on severity of illness scoring systems or data mining (DM) models designed for risk estimation at least 24 or 48 h after ICU admission. Objectives: This study highlights the main data challenges in early mortality prediction in ICU patients and introduces a new machine learning based framework for Early Mortality Prediction for Intensive Care Unit patients (EMPICU). Materials and methods: The proposed method is evaluated on the Multiparameter Intelligent Monitoring in Intensive Care II (MIMIC-II) database. Mortality prediction models are developed for patients at the age of 16 or above in Medical ICU (MICU), Surgical ICU (SICU) or Cardiac Surgery Recovery Unit (CSRU). We employ the ensemble learning Random Forest (RF), the predictiveHighlights: Early (6 hours after admission) Mortality Prediction model for ICU patients is proposed. Only a few models are suitable for early prediction but with low discrimination power. The proposed EMPICU outperforms existing ICU scores in terms of performance and time. EMPICU model based on ensemble classification methods which provide a general prediction model. Abstract: Background: Mortality prediction of hospitalized patients is an important problem. Over the past few decades, several severity scoring systems and machine learning mortality prediction models have been developed for predicting hospital mortality. By contrast, early mortality prediction for intensive care unit patients remains an open challenge. Most research has focused on severity of illness scoring systems or data mining (DM) models designed for risk estimation at least 24 or 48 h after ICU admission. Objectives: This study highlights the main data challenges in early mortality prediction in ICU patients and introduces a new machine learning based framework for Early Mortality Prediction for Intensive Care Unit patients (EMPICU). Materials and methods: The proposed method is evaluated on the Multiparameter Intelligent Monitoring in Intensive Care II (MIMIC-II) database. Mortality prediction models are developed for patients at the age of 16 or above in Medical ICU (MICU), Surgical ICU (SICU) or Cardiac Surgery Recovery Unit (CSRU). We employ the ensemble learning Random Forest (RF), the predictive Decision Trees (DT), the probabilistic Naive Bayes (NB) and the rule-based Projective Adaptive Resonance Theory (PART) models. The primary outcome was hospital mortality. The explanatory variables included demographic, physiological, vital signs and laboratory test variables. Performance measures were calculated using cross-validated area under the receiver operating characteristic curve (AUROC) to minimize bias. 11, 722 patients with single ICU stays are considered. Only patients at the age of 16 years old and above in Medical ICU (MICU), Surgical ICU (SICU) or Cardiac Surgery Recovery Unit (CSRU) are considered in this study. Results: The proposed EMPICU framework outperformed standard scoring systems (SOFA, SAPS-I, APACHE-II, NEWS and qSOFA) in terms of AUROC and time (i.e. at 6 h compared to 48 h or more after admission). Discussion and conclusion: The results show that although there are many values missing in the first few hour of ICU admission, there is enough signal to effectively predict mortality during the first 6 h of admission. The proposed framework, in particular the one that uses the ensemble learning approach – EMPICU Random Forest (EMPICU-RF) offers a base to construct an effective and novel mortality prediction model in the early hours of an ICU patient admission, with an improved performance profile. … (more)
- Is Part Of:
- International journal of medical informatics. Volume 108(2017)
- Journal:
- International journal of medical informatics
- Issue:
- Volume 108(2017)
- Issue Display:
- Volume 108, Issue 2017 (2017)
- Year:
- 2017
- Volume:
- 108
- Issue:
- 2017
- Issue Sort Value:
- 2017-0108-2017-0000
- Page Start:
- 185
- Page End:
- 195
- Publication Date:
- 2017-12
- Subjects:
- Intensive care -- Mortality prediction -- Classification -- Class imbalance -- Random Forest
Medical informatics -- Periodicals
Information science -- Periodicals
Computers -- Periodicals
Medical technology -- Periodicals
Medical Informatics -- Periodicals
Technology, Medical -- Periodicals
Computers
Information science
Medical informatics
Medical technology
Electronic journals
Periodicals
Electronic journals
610.285 - Journal URLs:
- http://www.sciencedirect.com/science/journal/13865056 ↗
http://www.clinicalkey.com/dura/browse/journalIssue/13865056 ↗
http://www.clinicalkey.com.au/dura/browse/journalIssue/13865056 ↗
http://www.elsevier.com/journals ↗ - DOI:
- 10.1016/j.ijmedinf.2017.10.002 ↗
- Languages:
- English
- ISSNs:
- 1386-5056
- Deposit Type:
- Legaldeposit
- View Content:
- Available online (eLD content is only available in our Reading Rooms) ↗
- Physical Locations:
- British Library DSC - 4542.345250
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- 5376.xml