Literature DB >> 33981592

Application of Machine Learning in Intensive Care Unit (ICU) Settings Using MIMIC Dataset: Systematic Review.

Mahanazuddin Syed1, Shorabuddin Syed1, Kevin Sexton1,2,3, Hafsa Bareen Syeda1, Maryam Garza1, Meredith Zozus4, Farhanuddin Syed5, Salma Begum6, Abdullah Usama Syed7, Joseph Sanford1,8, Fred Prior1.   

Abstract

Modern Intensive Care Units (ICUs) provide continuous monitoring of critically ill patients susceptible to many complications affecting morbidity and mortality. ICU settings require a high staff-to-patient ratio and generates a sheer volume of data. For clinicians, the real-time interpretation of data and decision-making is a challenging task. Machine Learning (ML) techniques in ICUs are making headway in the early detection of high-risk events due to increased processing power and freely available datasets such as the Medical Information Mart for Intensive Care (MIMIC). We conducted a systematic literature review to evaluate the effectiveness of applying ML in the ICU settings using the MIMIC dataset. A total of 322 articles were reviewed and a quantitative descriptive analysis was performed on 61 qualified articles that applied ML techniques in ICU settings using MIMIC data. We assembled the qualified articles to provide insights into the areas of application, clinical variables used, and treatment outcomes that can pave the way for further adoption of this promising technology and possible use in routine clinical decision-making. The lessons learned from our review can provide guidance to researchers on application of ML techniques to increase their rate of adoption in healthcare.

Entities:  

Keywords:  MIMIC; acute kidney injury; critical care; deep learning; intensive care unit; machine learning; sepsis; systematic review

Year:  2021        PMID: 33981592      PMCID: PMC8112729          DOI: 10.3390/informatics8010016

Source DB:  PubMed          Journal:  Informatics (MDPI)        ISSN: 2227-9709


  85 in total

1.  Prediction using patient comparison vs. modeling: a case study for mortality prediction.

Authors:  Mark Hoogendoorn; Ali El Hassouni; Kwongyen Mok; Marzyeh Ghassemi; Peter Szolovits
Journal:  Conf Proc IEEE Eng Med Biol Soc       Date:  2016-08

2.  Reconciling modern machine-learning practice and the classical bias-variance trade-off.

Authors:  Mikhail Belkin; Daniel Hsu; Siyuan Ma; Soumik Mandal
Journal:  Proc Natl Acad Sci U S A       Date:  2019-07-24       Impact factor: 11.205

3.  Early hospital mortality prediction of intensive care unit patients using an ensemble learning approach.

Authors:  Aya Awad; Mohamed Bader-El-Den; James McNicholas; Jim Briggs
Journal:  Int J Med Inform       Date:  2017-10-05       Impact factor: 4.046

Review 4.  Machine Learning in Medical Imaging.

Authors:  Maryellen L Giger
Journal:  J Am Coll Radiol       Date:  2018-02-02       Impact factor: 5.532

5.  The PRISMA statement for reporting systematic reviews and meta-analyses of studies that evaluate healthcare interventions: explanation and elaboration.

Authors:  Alessandro Liberati; Douglas G Altman; Jennifer Tetzlaff; Cynthia Mulrow; Peter C Gøtzsche; John P A Ioannidis; Mike Clarke; P J Devereaux; Jos Kleijnen; David Moher
Journal:  BMJ       Date:  2009-07-21

6.  A Machine Learning Algorithm to Predict Severe Sepsis and Septic Shock: Development, Implementation, and Impact on Clinical Practice.

Authors:  Heather M Giannini; Jennifer C Ginestra; Corey Chivers; Michael Draugelis; Asaf Hanish; William D Schweickert; Barry D Fuchs; Laurie Meadows; Michael Lynch; Patrick J Donnelly; Kimberly Pavan; Neil O Fishman; C William Hanson; Craig A Umscheid
Journal:  Crit Care Med       Date:  2019-11       Impact factor: 7.598

7.  Mortality prediction in intensive care units (ICUs) using a deep rule-based fuzzy classifier.

Authors:  Raheleh Davoodi; Mohammad Hassan Moradi
Journal:  J Biomed Inform       Date:  2018-02-19       Impact factor: 6.317

8.  Early Prediction of Acute Kidney Injury in Critical Care Setting Using Clinical Notes and Structured Multivariate Physiological Measurements.

Authors:  Mengxin Sun; Jason Baron; Anand Dighe; Peter Szolovits; Richard G Wunderink; Tamara Isakova; Yuan Luo
Journal:  Stud Health Technol Inform       Date:  2019-08-21

9.  Towards a decision support tool for intensive care discharge: machine learning algorithm development using electronic healthcare data from MIMIC-III and Bristol, UK.

Authors:  Christopher J McWilliams; Daniel J Lawson; Raul Santos-Rodriguez; Iain D Gilchrist; Alan Champneys; Timothy H Gould; Mathew Jc Thomas; Christopher P Bourdeaux
Journal:  BMJ Open       Date:  2019-03-07       Impact factor: 2.692

10.  Using machine learning methods to predict in-hospital mortality of sepsis patients in the ICU.

Authors:  Guilan Kong; Ke Lin; Yonghua Hu
Journal:  BMC Med Inform Decis Mak       Date:  2020-10-02       Impact factor: 2.796

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  5 in total

1.  DeIDNER Model: A Neural Network Named Entity Recognition Model for Use in the De-identification of Clinical Notes.

Authors:  Mahanazuddin Syed; Kevin Sexton; Melody Greer; Shorabuddin Syed; Joseph VanScoy; Farhan Kawsar; Erica Olson; Karan Patel; Jake Erwin; Sudeepa Bhattacharyya; Meredith Zozus; Fred Prior
Journal:  Biomed Eng Syst Technol Int Jt Conf BIOSTEC Revis Sel Pap       Date:  2022-02

2.  Machine Learning-Based Pressure Ulcer Prediction in Modular Critical Care Data.

Authors:  Petr Šín; Alica Hokynková; Nováková Marie; Pokorná Andrea; Rostislav Krč; Jan Podroužek
Journal:  Diagnostics (Basel)       Date:  2022-03-30

Review 3.  Identification of data elements for blood gas analysis dataset: a base for developing registries and artificial intelligence-based systems.

Authors:  Sahar Zare; Zahra Meidani; Maryam Ouhadian; Hosein Akbari; Farid Zand; Esmaeil Fakharian; Roxana Sharifian
Journal:  BMC Health Serv Res       Date:  2022-03-08       Impact factor: 2.655

4.  Enabling Timely Medical Intervention by Exploring Health-Related Multivariate Time Series with a Hybrid Attentive Model.

Authors:  Jia Xie; Zhu Wang; Zhiwen Yu; Bin Guo
Journal:  Sensors (Basel)       Date:  2022-08-15       Impact factor: 3.847

5.  Machine Learning Approach to Optimize Sedation Use in Endoscopic Procedures.

Authors:  Shorabuddin Syed; Mahanazuddin Syed; Fred Prior; Meredith Zozus; Hafsa Bareen Syeda; Melody L Greer; Sudeepa Bhattacharyya; Shashank Garg
Journal:  Stud Health Technol Inform       Date:  2021-05-27
  5 in total

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