Predicting fracture outcomes from clinical registry data using artificial intelligence supplemented models for evidence-informed treatment (PRAISE) study protocol.

<h4>Background</h4>Distal radius (wrist) fractures are the second most common fracture admitted to hospital. The anatomical pattern of these types of injuries is diverse, with variation in clinical management, guidelines for management remain inconclusive, and the uptake of findings from...

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Autores principales: Joanna F Dipnall, Richard Page, Lan Du, Matthew Costa, Ronan A Lyons, Peter Cameron, Richard de Steiger, Raphael Hau, Andrew Bucknill, Andrew Oppy, Elton Edwards, Dinesh Varma, Myong Chol Jung, Belinda J Gabbe
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Publicado: Public Library of Science (PLoS) 2021
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spelling oai:doaj.org-article:523646ed2c9e4482888f7f624ff2b9242021-12-02T20:06:10ZPredicting fracture outcomes from clinical registry data using artificial intelligence supplemented models for evidence-informed treatment (PRAISE) study protocol.1932-620310.1371/journal.pone.0257361https://doaj.org/article/523646ed2c9e4482888f7f624ff2b9242021-01-01T00:00:00Zhttps://doi.org/10.1371/journal.pone.0257361https://doaj.org/toc/1932-6203<h4>Background</h4>Distal radius (wrist) fractures are the second most common fracture admitted to hospital. The anatomical pattern of these types of injuries is diverse, with variation in clinical management, guidelines for management remain inconclusive, and the uptake of findings from clinical trials into routine practice limited. Robust predictive modelling, which considers both the characteristics of the fracture and patient, provides the best opportunity to reduce variation in care and improve patient outcomes. This type of data is housed in unstructured data sources with no particular format or schema. The "Predicting fracture outcomes from clinical Registry data using Artificial Intelligence (AI) Supplemented models for Evidence-informed treatment (PRAISE)" study aims to use AI methods on unstructured data to describe the fracture characteristics and test if using this information improves identification of key fracture characteristics and prediction of patient-reported outcome measures and clinical outcomes following wrist fractures compared to prediction models based on standard registry data.<h4>Methods and design</h4>Adult (16+ years) patients presenting to the emergency department, treated in a short stay unit, or admitted to hospital for >24h for management of a wrist fracture in four Victorian hospitals will be included in this study. The study will use routine registry data from the Victorian Orthopaedic Trauma Outcomes Registry (VOTOR), and electronic medical record (EMR) information (e.g. X-rays, surgical reports, radiology reports, images). A multimodal deep learning fracture reasoning system (DLFRS) will be developed that reasons on EMR information. Machine learning prediction models will test the performance with/without output from the DLFRS.<h4>Discussion</h4>The PRAISE study will establish the use of AI techniques to provide enhanced information about fracture characteristics in people with wrist fractures. Prediction models using AI derived characteristics are expected to provide better prediction of clinical and patient-reported outcomes following distal radius fracture.Joanna F DipnallRichard PageLan DuMatthew CostaRonan A LyonsPeter CameronRichard de SteigerRaphael HauAndrew BucknillAndrew OppyElton EdwardsDinesh VarmaMyong Chol JungBelinda J GabbePublic Library of Science (PLoS)articleMedicineRScienceQENPLoS ONE, Vol 16, Iss 9, p e0257361 (2021)
institution DOAJ
collection DOAJ
language EN
topic Medicine
R
Science
Q
spellingShingle Medicine
R
Science
Q
Joanna F Dipnall
Richard Page
Lan Du
Matthew Costa
Ronan A Lyons
Peter Cameron
Richard de Steiger
Raphael Hau
Andrew Bucknill
Andrew Oppy
Elton Edwards
Dinesh Varma
Myong Chol Jung
Belinda J Gabbe
Predicting fracture outcomes from clinical registry data using artificial intelligence supplemented models for evidence-informed treatment (PRAISE) study protocol.
description <h4>Background</h4>Distal radius (wrist) fractures are the second most common fracture admitted to hospital. The anatomical pattern of these types of injuries is diverse, with variation in clinical management, guidelines for management remain inconclusive, and the uptake of findings from clinical trials into routine practice limited. Robust predictive modelling, which considers both the characteristics of the fracture and patient, provides the best opportunity to reduce variation in care and improve patient outcomes. This type of data is housed in unstructured data sources with no particular format or schema. The "Predicting fracture outcomes from clinical Registry data using Artificial Intelligence (AI) Supplemented models for Evidence-informed treatment (PRAISE)" study aims to use AI methods on unstructured data to describe the fracture characteristics and test if using this information improves identification of key fracture characteristics and prediction of patient-reported outcome measures and clinical outcomes following wrist fractures compared to prediction models based on standard registry data.<h4>Methods and design</h4>Adult (16+ years) patients presenting to the emergency department, treated in a short stay unit, or admitted to hospital for >24h for management of a wrist fracture in four Victorian hospitals will be included in this study. The study will use routine registry data from the Victorian Orthopaedic Trauma Outcomes Registry (VOTOR), and electronic medical record (EMR) information (e.g. X-rays, surgical reports, radiology reports, images). A multimodal deep learning fracture reasoning system (DLFRS) will be developed that reasons on EMR information. Machine learning prediction models will test the performance with/without output from the DLFRS.<h4>Discussion</h4>The PRAISE study will establish the use of AI techniques to provide enhanced information about fracture characteristics in people with wrist fractures. Prediction models using AI derived characteristics are expected to provide better prediction of clinical and patient-reported outcomes following distal radius fracture.
format article
author Joanna F Dipnall
Richard Page
Lan Du
Matthew Costa
Ronan A Lyons
Peter Cameron
Richard de Steiger
Raphael Hau
Andrew Bucknill
Andrew Oppy
Elton Edwards
Dinesh Varma
Myong Chol Jung
Belinda J Gabbe
author_facet Joanna F Dipnall
Richard Page
Lan Du
Matthew Costa
Ronan A Lyons
Peter Cameron
Richard de Steiger
Raphael Hau
Andrew Bucknill
Andrew Oppy
Elton Edwards
Dinesh Varma
Myong Chol Jung
Belinda J Gabbe
author_sort Joanna F Dipnall
title Predicting fracture outcomes from clinical registry data using artificial intelligence supplemented models for evidence-informed treatment (PRAISE) study protocol.
title_short Predicting fracture outcomes from clinical registry data using artificial intelligence supplemented models for evidence-informed treatment (PRAISE) study protocol.
title_full Predicting fracture outcomes from clinical registry data using artificial intelligence supplemented models for evidence-informed treatment (PRAISE) study protocol.
title_fullStr Predicting fracture outcomes from clinical registry data using artificial intelligence supplemented models for evidence-informed treatment (PRAISE) study protocol.
title_full_unstemmed Predicting fracture outcomes from clinical registry data using artificial intelligence supplemented models for evidence-informed treatment (PRAISE) study protocol.
title_sort predicting fracture outcomes from clinical registry data using artificial intelligence supplemented models for evidence-informed treatment (praise) study protocol.
publisher Public Library of Science (PLoS)
publishDate 2021
url https://doaj.org/article/523646ed2c9e4482888f7f624ff2b924
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