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Advanced Treatment Monitoring for Olympic-Level Athletes Using Unsupervised Modeling Techniques.

Authors :
Siedlik JA
Bergeron C
Cooper M
Emmons R
Moreau W
Nabhan D
Gallagher P
Vardiman JP
Source :
Journal of athletic training [J Athl Train] 2016 Jan; Vol. 51 (1), pp. 74-81. Date of Electronic Publication: 2016 Jan 21.
Publication Year :
2016

Abstract

Context: Analysis of injury and illness data collected at large international competitions provides the US Olympic Committee and the national governing bodies for each sport with information to best prepare for future competitions. Research in which authors have evaluated medical contacts to provide the expected level of medical care and sports medicine services at international competitions is limited.<br />Objective: To analyze the medical-contact data for athletes, staff, and coaches who participated in the 2011 Pan American Games in Guadalajara, Mexico, using unsupervised modeling techniques to identify underlying treatment patterns.<br />Design: Descriptive epidemiology study.<br />Setting: Pan American Games.<br />Patients or Other Participants: A total of 618 U.S. athletes (337 males, 281 females) participated in the 2011 Pan American Games.<br />Main Outcome Measure(s): Medical data were recorded from the injury-evaluation and injury-treatment forms used by clinicians assigned to the central US Olympic Committee Sport Medicine Clinic and satellite locations during the operational 17-day period of the 2011 Pan American Games. We used principal components analysis and agglomerative clustering algorithms to identify and define grouped modalities. Lift statistics were calculated for within-cluster subgroups.<br />Results: Principal component analyses identified 3 components, accounting for 72.3% of the variability in datasets. Plots of the principal components showed that individual contacts focused on 4 treatment clusters: massage, paired manipulation and mobilization, soft tissue therapy, and general medical.<br />Conclusions: Unsupervised modeling techniques were useful for visualizing complex treatment data and provided insights for improved treatment modeling in athletes. Given its ability to detect clinically relevant treatment pairings in large datasets, unsupervised modeling should be considered a feasible option for future analyses of medical-contact data from international competitions.

Details

Language :
English
ISSN :
1938-162X
Volume :
51
Issue :
1
Database :
MEDLINE
Journal :
Journal of athletic training
Publication Type :
Academic Journal
Accession number :
26794628
Full Text :
https://doi.org/10.4085/1062-6050-51.2.02