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Prospective Evaluation of a Machine-Learning Prediction Model for Missed Radiology Appointments

The term “no-show” refers to scheduled appointments that a patient misses, or for which she arrives too late to utilize medical resources. Accurately predicting no-shows creates opportunities to intervene, ensuring that patients receive needed medical resources. A machine-learning (ML) model can acc...

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Detalles Bibliográficos
Autores principales: Rothenberg, Steven, Bame, Bill, Herskovitz, Ed
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Springer International Publishing 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9243788/
https://www.ncbi.nlm.nih.gov/pubmed/35768754
http://dx.doi.org/10.1007/s10278-022-00670-3
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author Rothenberg, Steven
Bame, Bill
Herskovitz, Ed
author_facet Rothenberg, Steven
Bame, Bill
Herskovitz, Ed
author_sort Rothenberg, Steven
collection PubMed
description The term “no-show” refers to scheduled appointments that a patient misses, or for which she arrives too late to utilize medical resources. Accurately predicting no-shows creates opportunities to intervene, ensuring that patients receive needed medical resources. A machine-learning (ML) model can accurately identify individuals at high no-show risk, to facilitate strategic and targeted interventions. We used 4,546,104 non-same-day scheduled appointments in our medical system from 1/1/2017 through 1/1/2020 for training data, including 631,386 no-shows. We applied eight ML techniques, which yielded cross-validation AUCs of 0.77–0.93. We then prospectively tested the best performing model, Gradient Boosted Regression Trees, over a 6-week period at a single outpatient location. We observed 123 no-shows. The model accurately identified likely no-show patients retrospectively (AUC 0.93) and prospectively (AUC 0.73, p < 0.0005). Individuals in the highest-risk category were three times more likely to no-show than the average of all other patients. No-show prediction modeling based on machine learning has the potential to identify patients for targeted interventions to improve their access to medical resources, reduce waste in the medical system and improve overall operational efficiency. Caution is advised, due to the potential for bias to decrease the quality of service for patients based on race, zip code, and gender.
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spelling pubmed-92437882022-06-30 Prospective Evaluation of a Machine-Learning Prediction Model for Missed Radiology Appointments Rothenberg, Steven Bame, Bill Herskovitz, Ed J Digit Imaging Article The term “no-show” refers to scheduled appointments that a patient misses, or for which she arrives too late to utilize medical resources. Accurately predicting no-shows creates opportunities to intervene, ensuring that patients receive needed medical resources. A machine-learning (ML) model can accurately identify individuals at high no-show risk, to facilitate strategic and targeted interventions. We used 4,546,104 non-same-day scheduled appointments in our medical system from 1/1/2017 through 1/1/2020 for training data, including 631,386 no-shows. We applied eight ML techniques, which yielded cross-validation AUCs of 0.77–0.93. We then prospectively tested the best performing model, Gradient Boosted Regression Trees, over a 6-week period at a single outpatient location. We observed 123 no-shows. The model accurately identified likely no-show patients retrospectively (AUC 0.93) and prospectively (AUC 0.73, p < 0.0005). Individuals in the highest-risk category were three times more likely to no-show than the average of all other patients. No-show prediction modeling based on machine learning has the potential to identify patients for targeted interventions to improve their access to medical resources, reduce waste in the medical system and improve overall operational efficiency. Caution is advised, due to the potential for bias to decrease the quality of service for patients based on race, zip code, and gender. Springer International Publishing 2022-06-29 2022-12 /pmc/articles/PMC9243788/ /pubmed/35768754 http://dx.doi.org/10.1007/s10278-022-00670-3 Text en © The Author(s) under exclusive licence to Society for Imaging Informatics in Medicine 2022
spellingShingle Article
Rothenberg, Steven
Bame, Bill
Herskovitz, Ed
Prospective Evaluation of a Machine-Learning Prediction Model for Missed Radiology Appointments
title Prospective Evaluation of a Machine-Learning Prediction Model for Missed Radiology Appointments
title_full Prospective Evaluation of a Machine-Learning Prediction Model for Missed Radiology Appointments
title_fullStr Prospective Evaluation of a Machine-Learning Prediction Model for Missed Radiology Appointments
title_full_unstemmed Prospective Evaluation of a Machine-Learning Prediction Model for Missed Radiology Appointments
title_short Prospective Evaluation of a Machine-Learning Prediction Model for Missed Radiology Appointments
title_sort prospective evaluation of a machine-learning prediction model for missed radiology appointments
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9243788/
https://www.ncbi.nlm.nih.gov/pubmed/35768754
http://dx.doi.org/10.1007/s10278-022-00670-3
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