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A data-driven approach to categorize patients with traumatic spinal cord injury: cluster analysis of a multicentre database

BACKGROUND: Conducting clinical trials for traumatic spinal cord injury (tSCI) presents challenges due to patient heterogeneity. Identifying clinically similar subgroups using patient demographics and baseline injury characteristics could lead to better patient-centered care and integrated care deli...

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Autores principales: Basiratzadeh, Shahin, Hakimjavadi, Ramtin, Baddour, Natalie, Michalowski, Wojtek, Viktor, Herna, Wai, Eugene, Stratton, Alexandra, Kingwell, Stephen, Mac-Thiong, Jean-Marc, Tsai, Eve C., Wang, Zhi, Phan, Philippe
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10602788/
https://www.ncbi.nlm.nih.gov/pubmed/37900603
http://dx.doi.org/10.3389/fneur.2023.1263291
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author Basiratzadeh, Shahin
Hakimjavadi, Ramtin
Baddour, Natalie
Michalowski, Wojtek
Viktor, Herna
Wai, Eugene
Stratton, Alexandra
Kingwell, Stephen
Mac-Thiong, Jean-Marc
Tsai, Eve C.
Wang, Zhi
Phan, Philippe
author_facet Basiratzadeh, Shahin
Hakimjavadi, Ramtin
Baddour, Natalie
Michalowski, Wojtek
Viktor, Herna
Wai, Eugene
Stratton, Alexandra
Kingwell, Stephen
Mac-Thiong, Jean-Marc
Tsai, Eve C.
Wang, Zhi
Phan, Philippe
author_sort Basiratzadeh, Shahin
collection PubMed
description BACKGROUND: Conducting clinical trials for traumatic spinal cord injury (tSCI) presents challenges due to patient heterogeneity. Identifying clinically similar subgroups using patient demographics and baseline injury characteristics could lead to better patient-centered care and integrated care delivery. PURPOSE: We sought to (1) apply an unsupervised machine learning approach of cluster analysis to identify subgroups of tSCI patients using patient demographics and injury characteristics at baseline, (2) to find clinical similarity within subgroups using etiological variables and outcome variables, and (3) to create multi-dimensional labels for categorizing patients. STUDY DESIGN: Retrospective analysis using prospectively collected data from a large national multicenter SCI registry. METHODS: A method of spectral clustering was used to identify patient subgroups based on the following baseline variables collected since admission until rehabilitation: location of the injury, severity of the injury, Functional Independence Measure (FIM) motor, and demographic data (age, and body mass index). The FIM motor score, the FIM motor score change, and the total length of stay were assessed on the subgroups as outcome variables at discharge to establish the clinical similarity of the patients within derived subgroups. Furthermore, we discussed the relevance of the identified subgroups based on the etiological variables (energy and mechanism of injury) and compared them with the literature. Our study also employed a qualitative approach to systematically describe the identified subgroups, crafting multi-dimensional labels to highlight distinguishing factors and patient-focused insights. RESULTS: Data on 334 tSCI patients from the Rick Hansen Spinal Cord Injury Registry was analyzed. Five significantly different subgroups were identified (p-value ≤0.05) based on baseline variables. Outcome variables at discharge superimposed on these subgroups had statistically different values between them (p-value ≤0.05) and supported the notion of clinical similarity of patients within each subgroup. CONCLUSION: Utilizing cluster analysis, we identified five clinically similar subgroups of tSCI patients at baseline, yielding statistically significant inter-group differences in clinical outcomes. These subgroups offer a novel, data-driven categorization of tSCI patients which aligns with their demographics and injury characteristics. As it also correlates with traditional tSCI classifications, this categorization could lead to improved personalized patient-centered care.
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spelling pubmed-106027882023-10-28 A data-driven approach to categorize patients with traumatic spinal cord injury: cluster analysis of a multicentre database Basiratzadeh, Shahin Hakimjavadi, Ramtin Baddour, Natalie Michalowski, Wojtek Viktor, Herna Wai, Eugene Stratton, Alexandra Kingwell, Stephen Mac-Thiong, Jean-Marc Tsai, Eve C. Wang, Zhi Phan, Philippe Front Neurol Neurology BACKGROUND: Conducting clinical trials for traumatic spinal cord injury (tSCI) presents challenges due to patient heterogeneity. Identifying clinically similar subgroups using patient demographics and baseline injury characteristics could lead to better patient-centered care and integrated care delivery. PURPOSE: We sought to (1) apply an unsupervised machine learning approach of cluster analysis to identify subgroups of tSCI patients using patient demographics and injury characteristics at baseline, (2) to find clinical similarity within subgroups using etiological variables and outcome variables, and (3) to create multi-dimensional labels for categorizing patients. STUDY DESIGN: Retrospective analysis using prospectively collected data from a large national multicenter SCI registry. METHODS: A method of spectral clustering was used to identify patient subgroups based on the following baseline variables collected since admission until rehabilitation: location of the injury, severity of the injury, Functional Independence Measure (FIM) motor, and demographic data (age, and body mass index). The FIM motor score, the FIM motor score change, and the total length of stay were assessed on the subgroups as outcome variables at discharge to establish the clinical similarity of the patients within derived subgroups. Furthermore, we discussed the relevance of the identified subgroups based on the etiological variables (energy and mechanism of injury) and compared them with the literature. Our study also employed a qualitative approach to systematically describe the identified subgroups, crafting multi-dimensional labels to highlight distinguishing factors and patient-focused insights. RESULTS: Data on 334 tSCI patients from the Rick Hansen Spinal Cord Injury Registry was analyzed. Five significantly different subgroups were identified (p-value ≤0.05) based on baseline variables. Outcome variables at discharge superimposed on these subgroups had statistically different values between them (p-value ≤0.05) and supported the notion of clinical similarity of patients within each subgroup. CONCLUSION: Utilizing cluster analysis, we identified five clinically similar subgroups of tSCI patients at baseline, yielding statistically significant inter-group differences in clinical outcomes. These subgroups offer a novel, data-driven categorization of tSCI patients which aligns with their demographics and injury characteristics. As it also correlates with traditional tSCI classifications, this categorization could lead to improved personalized patient-centered care. Frontiers Media S.A. 2023-10-12 /pmc/articles/PMC10602788/ /pubmed/37900603 http://dx.doi.org/10.3389/fneur.2023.1263291 Text en Copyright © 2023 Basiratzadeh, Hakimjavadi, Baddour, Michalowski, Viktor, Wai, Stratton, Kingwell, Mac-Thiong, Tsai, Wang and Phan. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Neurology
Basiratzadeh, Shahin
Hakimjavadi, Ramtin
Baddour, Natalie
Michalowski, Wojtek
Viktor, Herna
Wai, Eugene
Stratton, Alexandra
Kingwell, Stephen
Mac-Thiong, Jean-Marc
Tsai, Eve C.
Wang, Zhi
Phan, Philippe
A data-driven approach to categorize patients with traumatic spinal cord injury: cluster analysis of a multicentre database
title A data-driven approach to categorize patients with traumatic spinal cord injury: cluster analysis of a multicentre database
title_full A data-driven approach to categorize patients with traumatic spinal cord injury: cluster analysis of a multicentre database
title_fullStr A data-driven approach to categorize patients with traumatic spinal cord injury: cluster analysis of a multicentre database
title_full_unstemmed A data-driven approach to categorize patients with traumatic spinal cord injury: cluster analysis of a multicentre database
title_short A data-driven approach to categorize patients with traumatic spinal cord injury: cluster analysis of a multicentre database
title_sort data-driven approach to categorize patients with traumatic spinal cord injury: cluster analysis of a multicentre database
topic Neurology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10602788/
https://www.ncbi.nlm.nih.gov/pubmed/37900603
http://dx.doi.org/10.3389/fneur.2023.1263291
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