Estimating Knee Movement Patterns of Recreational Runners Across Training Sessions Using Multilevel Functional Regression Models

被引:6
作者
Matabuena, Marcos [1 ]
Karas, Marta [2 ]
Riazati, Sherveen [3 ,4 ]
Caplan, Nick [4 ]
Hayes, Philip R. [4 ]
机构
[1] Univ Santiago de Compostela, Ctr Singular Invest Tecnologras Intelixentes, Santiago De Compostela, Spain
[2] Harvard Univ, Dept Biostat, Harvard TH Chan Sch Publ Hlth, Boston, MA 02115 USA
[3] San Jose State Univ, Dept Kinesiol, San Jose, CA USA
[4] Northumbria Univ, Fac Hlth & Life Sci, Dept Sport Exercise & Rehabil, Newcastle Upon Tyne, Tyne & Wear, England
基金
美国国家卫生研究院;
关键词
Biomechanics; Knee movement; Multilevel functional data analysis; Patterns; Subsecond-level data; Wearable sensors; RISK-FACTORS; RELIABILITY; INJURIES; GAIT; CLASSIFICATION; BIOMECHANICS; EXERCISE; LOAD;
D O I
10.1080/00031305.2022.2105950
中图分类号
O21 [概率论与数理统计]; C8 [统计学];
学科分类号
020208 ; 070103 ; 0714 ;
摘要
Modern wearable monitors and laboratory equipment allow the recording of high-frequency data that can be used to quantify human movement. However, currently, data analysis approaches in these domains remain limited. This article proposes a new framework to analyze biomechanical patterns in sport training data recorded across multiple training sessions using multilevel functional models. We apply the methods to subsecond-level data of knee location trajectories collected in 19 recreational runners during a medium-intensity continuous run (MICR) and a high-intensity interval training (HIIT) session, with multiple steps recorded in each participant-session. We estimate functional intra-class correlation coefficient to evaluate the reliability of recorded measurements across multiple sessions of the same training type. Furthermore, we obtained a vectorial representation of the three hierarchical levels of the data and visualize them in a low-dimensional space. Finally, we quantified the differences between genders and between two training types using functional multilevel regression models that incorporate covariate information. We provide an overview of the relevant methods and make both data and the R code for all analyses freely available online on GitHub. Thus, this work can serve as a helpful reference for practitioners and guide for a broader audience of researchers interested in modeling repeated functional measures at different resolution levels in the context of biomechanics and sports science applications.
引用
收藏
页码:169 / 181
页数:13
相关论文
共 62 条
  • [1] Artificial intelligence for assisting diagnostics and assessment of Parkinson's disease-A review
    Belic, Minja
    Bobic, Vladislava
    Badza, Milica
    Solaja, Nikola
    Duric-Jovicic, Milica
    Kostic, Vladimir S.
    [J]. CLINICAL NEUROLOGY AND NEUROSURGERY, 2019, 184
  • [2] Redefine statistical significance
    Benjamin, Daniel J.
    Berger, James O.
    Johannesson, Magnus
    Nosek, Brian A.
    Wagenmakers, E. -J.
    Berk, Richard
    Bollen, Kenneth A.
    Brembs, Bjoern
    Brown, Lawrence
    Camerer, Colin
    Cesarini, David
    Chambers, Christopher D.
    Clyde, Merlise
    Cook, Thomas D.
    De Boeck, Paul
    Dienes, Zoltan
    Dreber, Anna
    Easwaran, Kenny
    Efferson, Charles
    Fehr, Ernst
    Fidler, Fiona
    Field, Andy P.
    Forster, Malcolm
    George, Edward I.
    Gonzalez, Richard
    Goodman, Steven
    Green, Edwin
    Green, Donald P.
    Greenwald, Anthony
    Hadfield, Jarrod D.
    Hedges, Larry V.
    Held, Leonhard
    Ho, Teck Hua
    Hoijtink, Herbert
    Hruschka, Daniel J.
    Imai, Kosuke
    Imbens, Guido
    Ioannidis, John P. A.
    Jeon, Minjeong
    Jones, James Holland
    Kirchler, Michael
    Laibson, David
    List, John
    Little, Roderick
    Lupia, Arthur
    Machery, Edouard
    Maxwell, Scott E.
    McCarthy, Michael
    Moore, Don
    Morgan, Stephen L.
    [J]. NATURE HUMAN BEHAVIOUR, 2018, 2 (01): : 6 - 10
  • [3] VARIABLE SELECTION IN FUNCTIONAL DATA CLASSIFICATION: A MAXIMA-HUNTING PROPOSAL
    Berrendero, Jose R.
    Cuevas, Antonio
    Torrecilla, Jose L.
    [J]. STATISTICA SINICA, 2016, 26 (02) : 619 - 638
  • [4] Complex systems approach for sports injuries: moving from risk factor identification to injury pattern recognition-narrative review and new concept
    Bittencourt, N. F. N.
    Meeuwisse, W. H.
    Mendonca, L. D.
    Nettel-Aguirre, A.
    Ocarino, J. M.
    Fonseca, S. T.
    [J]. BRITISH JOURNAL OF SPORTS MEDICINE, 2016, 50 (21) : 1309 - +
  • [5] The t-Test p Value and Its Relationship to the Effect Size and P(X > Y)
    Browne, Richard H.
    [J]. AMERICAN STATISTICIAN, 2010, 64 (01) : 30 - 33
  • [6] Toward Exercise as Personalized Medicine
    Buford, Thomas W.
    Roberts, Michael D.
    Church, Timothy S.
    [J]. SPORTS MEDICINE, 2013, 43 (03) : 157 - 165
  • [7] Wearable Training-Monitoring Technology: Applications, Challenges, and Opportunities
    Cardinale, Marco
    Varley, Matthew C.
    [J]. INTERNATIONAL JOURNAL OF SPORTS PHYSIOLOGY AND PERFORMANCE, 2017, 12 : 55 - 62
  • [8] Cross-component registration for multivariate functional data, with application to growth curves
    Carroll, Cody
    Muller, Hans-Georg
    Kneip, Alois
    [J]. BIOMETRICS, 2021, 77 (03) : 839 - 851
  • [9] Fast symmetric additive covariance smoothing
    Cederbaum, Jona
    Scheipl, Fabian
    Greven, Sonja
    [J]. COMPUTATIONAL STATISTICS & DATA ANALYSIS, 2018, 120 : 25 - 41
  • [10] Biomechanical Risk Factors Associated with Running-Related Injuries: A Systematic Review
    Ceyssens, Linde
    Vanelderen, Romy
    Barton, Christian
    Malliaras, Peter
    Dingenen, Bart
    [J]. SPORTS MEDICINE, 2019, 49 (07) : 1095 - 1115