Integrative data analysis to identify persistent post-concussion deficits and subsequent musculoskeletal injury risk: project structure and methods

被引:0
|
作者
Anderson, Melissa [1 ]
Claros, Claudio Cesar [2 ]
Qian, Wei [3 ]
Brockmeier, Austin [2 ,4 ]
Buckley, Thomas A. [5 ]
机构
[1] Ohio Univ, Sch Hlth Sci & Profess, Athens, OH USA
[2] Univ Delaware, Dept Elect & Comp Engn, Newark, DE USA
[3] Univ Delaware, Dept Appl Econ & Stat, Newark, DE USA
[4] Univ Delaware, Dept Comp & Informat Sci, Newark, DE USA
[5] Univ Delaware, Dept Kinesiol & Appl Physiol, Newark, DE 19716 USA
来源
BMJ OPEN SPORT & EXERCISE MEDICINE | 2024年 / 10卷 / 01期
关键词
Concussion; Risk factor; Athlete; EPIDEMIOLOGY; SPORT; WILL;
D O I
10.1136/bmjsem-2023-001859
中图分类号
G8 [体育];
学科分类号
04 ; 0403 ;
摘要
Concussions are a serious public health problem, with significant healthcare costs and risks. One of the most serious complications of concussions is an increased risk of subsequent musculoskeletal injuries (MSKI). However, there is currently no reliable way to identify which individuals are at highest risk for post-concussion MSKIs. This study proposes a novel data analysis strategy for developing a clinically feasible risk score for post-concussion MSKIs in student-athletes. The data set consists of one-time tests (eg, mental health questionnaires), relevant information on demographics, health history (including details regarding the concussion such as day of the year and time lost) and athletic participation (current sport and contact level) that were collected at a single time point as well as multiple time points (baseline and follow-up time points after the concussion) of the clinical assessments (ie, cognitive, postural stability, reaction time and vestibular and ocular motor testing). The follow-up time point measurements were treated as individual variables and as differences from the baseline. Our approach used a weight-of-evidence (WoE) transformation to handle missing data and variable heterogeneity and machine learning methods for variable selection and model fitting. We applied a training-testing sample splitting scheme and performed variable preprocessing with the WoE transformation. Then, machine learning methods were applied to predict the MSKI indicator prediction, thereby constructing a composite risk score for the training-testing sample. This methodology demonstrates the potential of using machine learning methods to improve the accuracy and interpretability of risk scores for MSKI.
引用
收藏
页数:5
相关论文
共 4 条
  • [1] Does the Concussion Clinican Examination Predict Post-Concussion Subsequent Musculoskeletal Injury?
    Buckley, Thomas
    Oldham, Jessie
    Getchell, Nancy
    Swanik, Buz
    Lynall, Rob
    Howard, Caroline
    [J]. NEUROLOGY, 2019, 93 (14) : S27 - S28
  • [2] Post-Concussion Psychological Distress at Return to Play Does Not Predict Subsequent Musculoskeletal Injury
    Enrique, Alexander
    Hunzinger, Katie
    Gourley, Autumn
    Bryk, Kelsey
    Buckley, Thomas A.
    [J]. NEUROLOGY, 2020, 95 : S7 - S7
  • [3] Persistent post-concussion symptoms in children: pre-injury social difficulties and acute stress reaction as risk factors
    Aviv, Irit
    Shorer, Maayan
    Fennig, Silvana
    Aviezer, Hillel
    Singer-Harel, Dana
    Apter, Alan
    Peleg, Tammy Pilowsky
    [J]. CHILD NEUROPSYCHOLOGY, 2023, 29 (01) : 115 - 135
  • [4] Divergent Classification Methods of Post-Concussion Syndrome after Mild Traumatic Brain Injury: Prevalence Rates, Risk Factors, and Functional Outcome
    Voormolen, Daphne C.
    Cnossen, Maryse C.
    Polinder, Suzanne
    von Steinbuechel, Nicole
    Vos, Pieter E.
    Haagsma, Juanita A.
    [J]. JOURNAL OF NEUROTRAUMA, 2018, 35 (11) : 1233 - 1241