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Prediction of hospital no-show appointments through artificial intelligence algorithms

BACKGROUND: No-shows, a major issue for healthcare centers, can be quite costly and disruptive. Capacity is wasted and expensive resources are underutilized. Numerous studies have shown that reducing uncancelled missed appointments can have a tremendous impact, improving efficiency, reducing costs a...

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Autores principales: AlMuhaideb, Sarab, Alswailem, Osama, Alsubaie, Nayef, Ferwana, Ibtihal, Alnajem, Afnan
Formato: Online Artículo Texto
Lenguaje:English
Publicado: King Faisal Specialist Hospital and Research Centre 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6894458/
https://www.ncbi.nlm.nih.gov/pubmed/31804138
http://dx.doi.org/10.5144/0256-4947.2019.373
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author AlMuhaideb, Sarab
Alswailem, Osama
Alsubaie, Nayef
Ferwana, Ibtihal
Alnajem, Afnan
author_facet AlMuhaideb, Sarab
Alswailem, Osama
Alsubaie, Nayef
Ferwana, Ibtihal
Alnajem, Afnan
author_sort AlMuhaideb, Sarab
collection PubMed
description BACKGROUND: No-shows, a major issue for healthcare centers, can be quite costly and disruptive. Capacity is wasted and expensive resources are underutilized. Numerous studies have shown that reducing uncancelled missed appointments can have a tremendous impact, improving efficiency, reducing costs and improving patient outcomes. Strategies involving machine learning and artificial intelligence could provide a solution. OBJECTIVE: Use artificial intelligence to build a model that predicts no-shows for individual appointments. DESIGN: Predictive modeling. SETTING: Major tertiary care center. PATIENTS AND METHODS: All historic outpatient clinic scheduling data in the electronic medical record for a one-year period between 01 January 2014 and 31 December 2014 were used to independently build predictive models with JRip and Hoeffding tree algorithms. MAIN OUTCOME MEASURES: No show appointments. SAMPLE SIZE: 1 087 979 outpatient clinic appointments. RESULTS: The no show rate was 11.3% (123 299). The most important information-gain ranking for predicting no-shows in descending order were history of no shows (0.3596), appointment location (0.0323), and specialty (0.025). The following had very low information-gain ranking: age, day of the week, slot description, time of appointment, gender and nationality. Both JRip and Hoeffding algorithms yielded a reasonable degrees of accuracy 76.44% and 77.13%, respectively, with area under the curve indices at acceptable discrimination power for JRip at 0.776 and at 0.861 with excellent discrimination for Hoeffding trees. CONCLUSION: Appointments having high risk of no-shows can be predicted in real-time to set appropriate proactive interventions that reduce the negative impact of no-shows. LIMITATIONS: Single center. Only one year of data. CONFLICT OF INTEREST: None.
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spelling pubmed-68944582019-12-18 Prediction of hospital no-show appointments through artificial intelligence algorithms AlMuhaideb, Sarab Alswailem, Osama Alsubaie, Nayef Ferwana, Ibtihal Alnajem, Afnan Ann Saudi Med Original Article BACKGROUND: No-shows, a major issue for healthcare centers, can be quite costly and disruptive. Capacity is wasted and expensive resources are underutilized. Numerous studies have shown that reducing uncancelled missed appointments can have a tremendous impact, improving efficiency, reducing costs and improving patient outcomes. Strategies involving machine learning and artificial intelligence could provide a solution. OBJECTIVE: Use artificial intelligence to build a model that predicts no-shows for individual appointments. DESIGN: Predictive modeling. SETTING: Major tertiary care center. PATIENTS AND METHODS: All historic outpatient clinic scheduling data in the electronic medical record for a one-year period between 01 January 2014 and 31 December 2014 were used to independently build predictive models with JRip and Hoeffding tree algorithms. MAIN OUTCOME MEASURES: No show appointments. SAMPLE SIZE: 1 087 979 outpatient clinic appointments. RESULTS: The no show rate was 11.3% (123 299). The most important information-gain ranking for predicting no-shows in descending order were history of no shows (0.3596), appointment location (0.0323), and specialty (0.025). The following had very low information-gain ranking: age, day of the week, slot description, time of appointment, gender and nationality. Both JRip and Hoeffding algorithms yielded a reasonable degrees of accuracy 76.44% and 77.13%, respectively, with area under the curve indices at acceptable discrimination power for JRip at 0.776 and at 0.861 with excellent discrimination for Hoeffding trees. CONCLUSION: Appointments having high risk of no-shows can be predicted in real-time to set appropriate proactive interventions that reduce the negative impact of no-shows. LIMITATIONS: Single center. Only one year of data. CONFLICT OF INTEREST: None. King Faisal Specialist Hospital and Research Centre 2019-12 2019-12-05 /pmc/articles/PMC6894458/ /pubmed/31804138 http://dx.doi.org/10.5144/0256-4947.2019.373 Text en Copyright © 2019, Annals of Saudi Medicine, Saudi Arabia This is an open access article under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License (CC BY-NC-ND). The details of which can be accessed at http://creativecommons.org/licenses/by-nc-nd/4.0/
spellingShingle Original Article
AlMuhaideb, Sarab
Alswailem, Osama
Alsubaie, Nayef
Ferwana, Ibtihal
Alnajem, Afnan
Prediction of hospital no-show appointments through artificial intelligence algorithms
title Prediction of hospital no-show appointments through artificial intelligence algorithms
title_full Prediction of hospital no-show appointments through artificial intelligence algorithms
title_fullStr Prediction of hospital no-show appointments through artificial intelligence algorithms
title_full_unstemmed Prediction of hospital no-show appointments through artificial intelligence algorithms
title_short Prediction of hospital no-show appointments through artificial intelligence algorithms
title_sort prediction of hospital no-show appointments through artificial intelligence algorithms
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6894458/
https://www.ncbi.nlm.nih.gov/pubmed/31804138
http://dx.doi.org/10.5144/0256-4947.2019.373
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