Data from: Cluster analysis successfully identifies clinically meaningful knee valgus moment patterns: frequency of early peaks reflects sex-specific ACL injury incidence

Background: Biomechanical studies of ACL injury risk factors frequently analyze only a fraction of the relevant data, and typically not in accordance with the injury mechanism. Extracting a peak value within a time series of relevance to ACL injuries is challenging due to differences in the relative...

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Main Authors: Sigurðsson, Haraldur B, Briem, Kristín
Format: Article in Journal/Newspaper
Language:unknown
Published: 2019
Subjects:
ACL
Online Access:http://hdl.handle.net/10255/dryad.224904
https://doi.org/10.5061/dryad.v8n3gv3
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spelling ftdryad:oai:v1.datadryad.org:10255/dryad.224904 2023-05-15T16:53:04+02:00 Data from: Cluster analysis successfully identifies clinically meaningful knee valgus moment patterns: frequency of early peaks reflects sex-specific ACL injury incidence Sigurðsson, Haraldur B Briem, Kristín Iceland Reykjavík 2019-09-13T15:46:20Z http://hdl.handle.net/10255/dryad.224904 https://doi.org/10.5061/dryad.v8n3gv3 unknown doi:10.5061/dryad.v8n3gv3/1 doi:10.1186/s40634-019-0205-5 doi:10.5061/dryad.v8n3gv3 Sigurðsson HB, Briem K (2019) Cluster analysis successfully identifies clinically meaningful knee valgus moment patterns: frequency of early peaks reflects sex-specific ACL injury incidence. Journal of Experimental Orthopaedics 6(1): 37. http://hdl.handle.net/10255/dryad.224904 ACL Biomechanics Cluster analysis Data mining Injury risk Article 2019 ftdryad https://doi.org/10.5061/dryad.v8n3gv3 https://doi.org/10.5061/dryad.v8n3gv3/1 https://doi.org/10.1186/s40634-019-0205-5 2020-01-01T16:32:58Z Background: Biomechanical studies of ACL injury risk factors frequently analyze only a fraction of the relevant data, and typically not in accordance with the injury mechanism. Extracting a peak value within a time series of relevance to ACL injuries is challenging due to differences in the relative timing and size of the peak value of interest. Aims/hypotheses: The aim was to cluster analyze the knee valgus moment time series curve shape in the early stance phase. We hypothesized that 1a) There would be few discrete curve shapes, 1b) there would be a shape reflecting an early peak of the knee valgus moment, 2a) youth athletes of both sexes would show similar frequencies of early peaks, 2b) adolescent girls would have greater early peak frequencies. Methods: N = 213 (39% boys) youth soccer and team handball athletes (phase 1) and N = 35 (45% boys) with 5 year follow-up data (phase 2) were recorded performing a change of direction task with 3D motion analysis and a force plate. The time series of the first 30% of stance phase were cluster analyzed based on Euclidean distances in two steps; shape-based main clusters with a transformed time series, and magnitude based sub-clusters with body weight normalized time series. Group differences (sex, phase) in curve shape frequencies, and shape-magnitude frequencies were tested with chi-squared tests. Results: Six discrete shape-clusters and 14 magnitude based sub-clusters were formed. Phase 1 boys had greater frequency of early peaks than phase 1 girls (38% vs 25% respectively, P < 0.001 for full test). Phase 2 girls had greater frequency of early peaks than phase 2 boys (42% vs 21% respectively, P < 0.001 for full test). Conclusions: Cluster analysis can reveal different patterns of curve shapes in biomechanical data, which likely reflect different movement strategies. The early peak shape is relatable to the ACL injury mechanism as the timing of its peak moment is consistent with the timing of injury. Greater frequency of early peaks demonstrated by Phase 2 girls is consistent with their higher risk of ACL injury in sports. Article in Journal/Newspaper Iceland Reykjavík Reykjavík Dryad Digital Repository (Duke University) Reykjavík
institution Open Polar
collection Dryad Digital Repository (Duke University)
op_collection_id ftdryad
language unknown
topic ACL
Biomechanics
Cluster analysis
Data mining
Injury risk
spellingShingle ACL
Biomechanics
Cluster analysis
Data mining
Injury risk
Sigurðsson, Haraldur B
Briem, Kristín
Data from: Cluster analysis successfully identifies clinically meaningful knee valgus moment patterns: frequency of early peaks reflects sex-specific ACL injury incidence
topic_facet ACL
Biomechanics
Cluster analysis
Data mining
Injury risk
description Background: Biomechanical studies of ACL injury risk factors frequently analyze only a fraction of the relevant data, and typically not in accordance with the injury mechanism. Extracting a peak value within a time series of relevance to ACL injuries is challenging due to differences in the relative timing and size of the peak value of interest. Aims/hypotheses: The aim was to cluster analyze the knee valgus moment time series curve shape in the early stance phase. We hypothesized that 1a) There would be few discrete curve shapes, 1b) there would be a shape reflecting an early peak of the knee valgus moment, 2a) youth athletes of both sexes would show similar frequencies of early peaks, 2b) adolescent girls would have greater early peak frequencies. Methods: N = 213 (39% boys) youth soccer and team handball athletes (phase 1) and N = 35 (45% boys) with 5 year follow-up data (phase 2) were recorded performing a change of direction task with 3D motion analysis and a force plate. The time series of the first 30% of stance phase were cluster analyzed based on Euclidean distances in two steps; shape-based main clusters with a transformed time series, and magnitude based sub-clusters with body weight normalized time series. Group differences (sex, phase) in curve shape frequencies, and shape-magnitude frequencies were tested with chi-squared tests. Results: Six discrete shape-clusters and 14 magnitude based sub-clusters were formed. Phase 1 boys had greater frequency of early peaks than phase 1 girls (38% vs 25% respectively, P < 0.001 for full test). Phase 2 girls had greater frequency of early peaks than phase 2 boys (42% vs 21% respectively, P < 0.001 for full test). Conclusions: Cluster analysis can reveal different patterns of curve shapes in biomechanical data, which likely reflect different movement strategies. The early peak shape is relatable to the ACL injury mechanism as the timing of its peak moment is consistent with the timing of injury. Greater frequency of early peaks demonstrated by Phase 2 girls is consistent with their higher risk of ACL injury in sports.
format Article in Journal/Newspaper
author Sigurðsson, Haraldur B
Briem, Kristín
author_facet Sigurðsson, Haraldur B
Briem, Kristín
author_sort Sigurðsson, Haraldur B
title Data from: Cluster analysis successfully identifies clinically meaningful knee valgus moment patterns: frequency of early peaks reflects sex-specific ACL injury incidence
title_short Data from: Cluster analysis successfully identifies clinically meaningful knee valgus moment patterns: frequency of early peaks reflects sex-specific ACL injury incidence
title_full Data from: Cluster analysis successfully identifies clinically meaningful knee valgus moment patterns: frequency of early peaks reflects sex-specific ACL injury incidence
title_fullStr Data from: Cluster analysis successfully identifies clinically meaningful knee valgus moment patterns: frequency of early peaks reflects sex-specific ACL injury incidence
title_full_unstemmed Data from: Cluster analysis successfully identifies clinically meaningful knee valgus moment patterns: frequency of early peaks reflects sex-specific ACL injury incidence
title_sort data from: cluster analysis successfully identifies clinically meaningful knee valgus moment patterns: frequency of early peaks reflects sex-specific acl injury incidence
publishDate 2019
url http://hdl.handle.net/10255/dryad.224904
https://doi.org/10.5061/dryad.v8n3gv3
op_coverage Iceland
Reykjavík
geographic Reykjavík
geographic_facet Reykjavík
genre Iceland
Reykjavík
Reykjavík
genre_facet Iceland
Reykjavík
Reykjavík
op_relation doi:10.5061/dryad.v8n3gv3/1
doi:10.1186/s40634-019-0205-5
doi:10.5061/dryad.v8n3gv3
Sigurðsson HB, Briem K (2019) Cluster analysis successfully identifies clinically meaningful knee valgus moment patterns: frequency of early peaks reflects sex-specific ACL injury incidence. Journal of Experimental Orthopaedics 6(1): 37.
http://hdl.handle.net/10255/dryad.224904
op_doi https://doi.org/10.5061/dryad.v8n3gv3
https://doi.org/10.5061/dryad.v8n3gv3/1
https://doi.org/10.1186/s40634-019-0205-5
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