Cargando…

Development and training of a machine learning algorithm to identify patients at risk for recurrence following an arthroscopic Bankart repair (CLEARER): protocol for a retrospective, multicentre, cohort study

INTRODUCTION: Shoulder instability is a common injury, with a reported incidence of 23.9 per 100 000 person-years. There is still an ongoing debate on the most effective treatment strategy. Non-operative treatment has recurrence rates of up to 60%, whereas operative treatments such as the Bankart re...

Descripción completa

Detalles Bibliográficos
Autores principales: van Spanning, Sanne H, Verweij, Lukas P E, Allaart, Laurens J H, Hendrickx, Laurent A M, Doornberg, Job N, Athwal, George S, Lafosse, Thibault, Lafosse, Laurent, van den Bekerom, Michel P J, Buijze, Geert Alexander
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BMJ Publishing Group 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9462090/
https://www.ncbi.nlm.nih.gov/pubmed/36508223
http://dx.doi.org/10.1136/bmjopen-2021-055346
_version_ 1784787101189931008
author van Spanning, Sanne H
Verweij, Lukas P E
Allaart, Laurens J H
Hendrickx, Laurent A M
Doornberg, Job N
Athwal, George S
Lafosse, Thibault
Lafosse, Laurent
van den Bekerom, Michel P J
Buijze, Geert Alexander
author_facet van Spanning, Sanne H
Verweij, Lukas P E
Allaart, Laurens J H
Hendrickx, Laurent A M
Doornberg, Job N
Athwal, George S
Lafosse, Thibault
Lafosse, Laurent
van den Bekerom, Michel P J
Buijze, Geert Alexander
author_sort van Spanning, Sanne H
collection PubMed
description INTRODUCTION: Shoulder instability is a common injury, with a reported incidence of 23.9 per 100 000 person-years. There is still an ongoing debate on the most effective treatment strategy. Non-operative treatment has recurrence rates of up to 60%, whereas operative treatments such as the Bankart repair and bone block procedures show lower recurrence rates (16% and 2%, respectively) but higher complication rates (<2% and up to 30%, respectively). Methods to determine risk of recurrence have been developed; however, patient-specific decision-making tools are still lacking. Artificial intelligence and machine learning algorithms use self-learning complex models that can be used to make patient-specific decision-making tools. The aim of the current study is to develop and train a machine learning algorithm to create a prediction model to be used in clinical practice—as an online prediction tool—to estimate recurrence rates following a Bankart repair. METHODS AND ANALYSIS: This is a multicentre retrospective cohort study. Patients with traumatic anterior shoulder dislocations that were treated with an arthroscopic Bankart repair without remplissage will be included. This study includes two parts. Part 1, collecting all potential factors influencing the recurrence rate following an arthroscopic Bankart repair in patients using multicentre data, aiming to include data from >1000 patients worldwide. Part 2, the multicentre data will be re-evaluated (and where applicable complemented) using machine learning algorithms to predict outcomes. Recurrence will be the primary outcome measure. ETHICS AND DISSEMINATION: For safe multicentre data exchange and analysis, our Machine Learning Consortium adhered to the WHO regulation ‘Policy on Use and Sharing of Data Collected by WHO in Member States Outside the Context of Public Health Emergencies’. The study results will be disseminated through publication in a peer-reviewed journal. No Institutional Review Board is required for this study.
format Online
Article
Text
id pubmed-9462090
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher BMJ Publishing Group
record_format MEDLINE/PubMed
spelling pubmed-94620902022-09-14 Development and training of a machine learning algorithm to identify patients at risk for recurrence following an arthroscopic Bankart repair (CLEARER): protocol for a retrospective, multicentre, cohort study van Spanning, Sanne H Verweij, Lukas P E Allaart, Laurens J H Hendrickx, Laurent A M Doornberg, Job N Athwal, George S Lafosse, Thibault Lafosse, Laurent van den Bekerom, Michel P J Buijze, Geert Alexander BMJ Open Surgery INTRODUCTION: Shoulder instability is a common injury, with a reported incidence of 23.9 per 100 000 person-years. There is still an ongoing debate on the most effective treatment strategy. Non-operative treatment has recurrence rates of up to 60%, whereas operative treatments such as the Bankart repair and bone block procedures show lower recurrence rates (16% and 2%, respectively) but higher complication rates (<2% and up to 30%, respectively). Methods to determine risk of recurrence have been developed; however, patient-specific decision-making tools are still lacking. Artificial intelligence and machine learning algorithms use self-learning complex models that can be used to make patient-specific decision-making tools. The aim of the current study is to develop and train a machine learning algorithm to create a prediction model to be used in clinical practice—as an online prediction tool—to estimate recurrence rates following a Bankart repair. METHODS AND ANALYSIS: This is a multicentre retrospective cohort study. Patients with traumatic anterior shoulder dislocations that were treated with an arthroscopic Bankart repair without remplissage will be included. This study includes two parts. Part 1, collecting all potential factors influencing the recurrence rate following an arthroscopic Bankart repair in patients using multicentre data, aiming to include data from >1000 patients worldwide. Part 2, the multicentre data will be re-evaluated (and where applicable complemented) using machine learning algorithms to predict outcomes. Recurrence will be the primary outcome measure. ETHICS AND DISSEMINATION: For safe multicentre data exchange and analysis, our Machine Learning Consortium adhered to the WHO regulation ‘Policy on Use and Sharing of Data Collected by WHO in Member States Outside the Context of Public Health Emergencies’. The study results will be disseminated through publication in a peer-reviewed journal. No Institutional Review Board is required for this study. BMJ Publishing Group 2022-09-08 /pmc/articles/PMC9462090/ /pubmed/36508223 http://dx.doi.org/10.1136/bmjopen-2021-055346 Text en © Author(s) (or their employer(s)) 2022. Re-use permitted under CC BY-NC. No commercial re-use. See rights and permissions. Published by BMJ. https://creativecommons.org/licenses/by-nc/4.0/This is an open access article distributed in accordance with the Creative Commons Attribution Non Commercial (CC BY-NC 4.0) license, which permits others to distribute, remix, adapt, build upon this work non-commercially, and license their derivative works on different terms, provided the original work is properly cited, appropriate credit is given, any changes made indicated, and the use is non-commercial. See: http://creativecommons.org/licenses/by-nc/4.0/ (https://creativecommons.org/licenses/by-nc/4.0/) .
spellingShingle Surgery
van Spanning, Sanne H
Verweij, Lukas P E
Allaart, Laurens J H
Hendrickx, Laurent A M
Doornberg, Job N
Athwal, George S
Lafosse, Thibault
Lafosse, Laurent
van den Bekerom, Michel P J
Buijze, Geert Alexander
Development and training of a machine learning algorithm to identify patients at risk for recurrence following an arthroscopic Bankart repair (CLEARER): protocol for a retrospective, multicentre, cohort study
title Development and training of a machine learning algorithm to identify patients at risk for recurrence following an arthroscopic Bankart repair (CLEARER): protocol for a retrospective, multicentre, cohort study
title_full Development and training of a machine learning algorithm to identify patients at risk for recurrence following an arthroscopic Bankart repair (CLEARER): protocol for a retrospective, multicentre, cohort study
title_fullStr Development and training of a machine learning algorithm to identify patients at risk for recurrence following an arthroscopic Bankart repair (CLEARER): protocol for a retrospective, multicentre, cohort study
title_full_unstemmed Development and training of a machine learning algorithm to identify patients at risk for recurrence following an arthroscopic Bankart repair (CLEARER): protocol for a retrospective, multicentre, cohort study
title_short Development and training of a machine learning algorithm to identify patients at risk for recurrence following an arthroscopic Bankart repair (CLEARER): protocol for a retrospective, multicentre, cohort study
title_sort development and training of a machine learning algorithm to identify patients at risk for recurrence following an arthroscopic bankart repair (clearer): protocol for a retrospective, multicentre, cohort study
topic Surgery
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9462090/
https://www.ncbi.nlm.nih.gov/pubmed/36508223
http://dx.doi.org/10.1136/bmjopen-2021-055346
work_keys_str_mv AT vanspanningsanneh developmentandtrainingofamachinelearningalgorithmtoidentifypatientsatriskforrecurrencefollowinganarthroscopicbankartrepairclearerprotocolforaretrospectivemulticentrecohortstudy
AT verweijlukaspe developmentandtrainingofamachinelearningalgorithmtoidentifypatientsatriskforrecurrencefollowinganarthroscopicbankartrepairclearerprotocolforaretrospectivemulticentrecohortstudy
AT allaartlaurensjh developmentandtrainingofamachinelearningalgorithmtoidentifypatientsatriskforrecurrencefollowinganarthroscopicbankartrepairclearerprotocolforaretrospectivemulticentrecohortstudy
AT hendrickxlaurentam developmentandtrainingofamachinelearningalgorithmtoidentifypatientsatriskforrecurrencefollowinganarthroscopicbankartrepairclearerprotocolforaretrospectivemulticentrecohortstudy
AT doornbergjobn developmentandtrainingofamachinelearningalgorithmtoidentifypatientsatriskforrecurrencefollowinganarthroscopicbankartrepairclearerprotocolforaretrospectivemulticentrecohortstudy
AT athwalgeorges developmentandtrainingofamachinelearningalgorithmtoidentifypatientsatriskforrecurrencefollowinganarthroscopicbankartrepairclearerprotocolforaretrospectivemulticentrecohortstudy
AT lafossethibault developmentandtrainingofamachinelearningalgorithmtoidentifypatientsatriskforrecurrencefollowinganarthroscopicbankartrepairclearerprotocolforaretrospectivemulticentrecohortstudy
AT lafosselaurent developmentandtrainingofamachinelearningalgorithmtoidentifypatientsatriskforrecurrencefollowinganarthroscopicbankartrepairclearerprotocolforaretrospectivemulticentrecohortstudy
AT vandenbekerommichelpj developmentandtrainingofamachinelearningalgorithmtoidentifypatientsatriskforrecurrencefollowinganarthroscopicbankartrepairclearerprotocolforaretrospectivemulticentrecohortstudy
AT buijzegeertalexander developmentandtrainingofamachinelearningalgorithmtoidentifypatientsatriskforrecurrencefollowinganarthroscopicbankartrepairclearerprotocolforaretrospectivemulticentrecohortstudy
AT developmentandtrainingofamachinelearningalgorithmtoidentifypatientsatriskforrecurrencefollowinganarthroscopicbankartrepairclearerprotocolforaretrospectivemulticentrecohortstudy