Literature DB >> 28539083

Patient length of stay and mortality prediction: A survey.

Aya Awad1, Mohamed Bader-El-Den1, James McNicholas2.   

Abstract

Over the past few years, there has been increased interest in data mining and machine learning methods to improve hospital performance, in particular hospitals want to improve their intensive care unit statistics by reducing the number of patients dying inside the intensive care unit. Research has focused on prediction of measurable outcomes, including risk of complications, mortality and length of hospital stay. The length of stay is an important metric both for healthcare providers and patients, influenced by numerous factors. In particular, the length of stay in critical care is of great significance, both to patient experience and the cost of care, and is influenced by factors specific to the highly complex environment of the intensive care unit. The length of stay is often used as a surrogate for other outcomes, where those outcomes cannot be measured; for example as a surrogate for hospital or intensive care unit mortality. The length of stay is also a parameter, which has been used to identify the severity of illnesses and healthcare resource utilisation. This paper examines a range of length of stay and mortality prediction applications in acute medicine and the critical care unit. It also focuses on the methods of analysing length of stay and mortality prediction. Moreover, the paper provides a classification and evaluation for the analytical methods of the length of stay and mortality prediction associated with a grouping of relevant research papers published in the years 1984 to 2016 related to the domain of survival analysis. In addition, the paper highlights some of the gaps and challenges of the domain.

Entities:  

Keywords:  critical care; data-driven approach; length of stay prediction; mortality prediction; multi-stage models; statistical methods

Mesh:

Year:  2017        PMID: 28539083     DOI: 10.1177/0951484817696212

Source DB:  PubMed          Journal:  Health Serv Manage Res        ISSN: 0951-4848


  19 in total

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7.  Use of machine learning to analyse routinely collected intensive care unit data: a systematic review.

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8.  Semi-quantitative visual assessment of chest radiography is associated with clinical outcomes in critically ill patients.

Authors:  Stefanie E Mason; Paul B Dieffenbach; Joshua A Englert; Angela A Rogers; Anthony F Massaro; Laura E Fredenburgh; Angelica Higuera; Mayra Pinilla-Vera; Marta Vilas; Raul San Jose Estepar; George R Washko; Rebecca M Baron; Samuel Y Ash
Journal:  Respir Res       Date:  2019-10-12

9.  Cerebral Salt Wasting in Traumatic Brain Injury Is Associated with Increased Morbidity and Mortality.

Authors:  Akella Chendrasekhar; Priscilla T Chow; Douglas Cohen; Krishna Akella; Vinay Vadali; Alok Bapatla; Jakey Patwari; Vladimir Rubinshteyn; Loren Harris
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10.  Ultrasonic aspiration in neurosurgery: comparative analysis of complications and outcome for three commonly used models.

Authors:  Stephanie Henzi; Niklaus Krayenbühl; Oliver Bozinov; Luca Regli; Martin N Stienen
Journal:  Acta Neurochir (Wien)       Date:  2019-08-03       Impact factor: 2.216

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