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Use of machine learning to analyse routinely collected intensive care unit data: a systematic review
- Source :
- Shillan, D, Sterne, J, Champneys, A & Gibbison, B 2019, ' Use of machine learning to analyze routinely collected intensive care unit data : a systematic review ', Critical Care, vol. 23, 284 (2019) . https://doi.org/10.1186/s13054-019-2564-9, Critical Care, Vol 23, Iss 1, Pp 1-11 (2019), Critical Care
- Publication Year :
- 2019
- Publisher :
- Springer Science and Business Media LLC, 2019.
-
Abstract
- BackgroundIntensive care units (ICUs) face financial, bed management, and staffing constraints. Detailed data covering all aspects of patients’ journeys into and through intensive care are now collected and stored in electronic health records: machine learning has been used to analyse such data in order to provide decision support to clinicians.MethodsSystematic review of the applications of machine learning to routinely collected ICU data. Web of Science and MEDLINE databases were searched to identify candidate articles: those on image processing were excluded. The study aim, the type of machine learning used, the size of dataset analysed, whether and how the model was validated, and measures of predictive accuracy were extracted.ResultsOf 2450 papers identified, 258 fulfilled eligibility criteria. The most common study aims were predicting complications (77 papers [29.8% of studies]), predicting mortality (70 [27.1%]), improving prognostic models (43 [16.7%]), and classifying sub-populations (29 [11.2%]). Median sample size was 488 (IQR 108–4099): 41 studies analysed data on > 10,000 patients. Analyses focused on 169 (65.5%) papers that used machine learning to predict complications, mortality, length of stay, or improvement of health. Predictions were validated in 161 (95.2%) of these studies: the area under the ROC curve (AUC) was reported by 97 (60.2%) but only 10 (6.2%) validated predictions using independent data. The median AUC was 0.83 in studies of 1000–10,000 patients, rising to 0.94 in studies of > 100,000 patients. The most common machine learning methods were neural networks (72 studies [42.6%]), support vector machines (40 [23.7%]), and classification/decision trees (34 [20.1%]). Since 2015 (125 studies [48.4%]), the most common methods were support vector machines (37 studies [29.6%]) and random forests (29 [23.2%]).ConclusionsThe rate of publication of studies using machine learning to analyse routinely collected ICU data is increasing rapidly. The sample sizes used in many published studies are too small to exploit the potential of these methods. Methodological and reporting guidelines are needed, particularly with regard to the choice of method and validation of predictions, to increase confidence in reported findings and aid in translating findings towards routine use in clinical practice.
- Subjects :
- Adult
Data Analysis
Male
Artificial intelligence
Decision tree
MEDLINE
Critical Care and Intensive Care Medicine
Machine learning
computer.software_genre
law.invention
law
Intensive care
Electronic Health Records
Humans
Medicine
Intensive care unit
Artificial neural network
business.industry
Research
lcsh:Medical emergencies. Critical care. Intensive care. First aid
lcsh:RC86-88.9
Random forest
Support vector machine
Intensive Care Units
Sample size determination
Female
business
computer
Routinely collected data
Anaesthesia Pain and Critical Care
Subjects
Details
- ISSN :
- 13648535
- Volume :
- 23
- Database :
- OpenAIRE
- Journal :
- Critical Care
- Accession number :
- edsair.doi.dedup.....172eff240048a44edab12d4ab902e339
- Full Text :
- https://doi.org/10.1186/s13054-019-2564-9