AI Article Synopsis

  • Running-related overuse injuries can be influenced by both intrinsic (like biomechanics) and extrinsic (like weather) factors, but how weather impacts running gait is not well understood.
  • This study aimed to create a classification model to analyze changes in running biomechanics in different weather conditions using wearable sensors, recording data during winter and spring.
  • The findings showed that a random forest machine learning algorithm could effectively classify running patterns and predict variations in individual runners' biomechanics, achieving high accuracy rates in distinguishing between different environmental conditions.

Article Abstract

Running-related overuse injuries can result from a combination of various intrinsic (e.g., gait biomechanics) and extrinsic (e.g., running surface) risk factors. However, it is unknown how changes in environmental weather conditions affect running gait biomechanical patterns since these data cannot be collected in a laboratory setting. Therefore, the purpose of this study was to develop a classification model based on subject-specific changes in biomechanical running patterns across two different environmental weather conditions using data obtained from wearable sensors in real-world environments. Running gait data were recorded during winter and spring sessions, with recorded average air temperatures of -10° C and +6° C, respectively. Classification was performed based on measurements of pelvic drop, ground contact time, braking, vertical oscillation of pelvis, pelvic rotation, and cadence obtained from 66,370 strides (~11,000/runner) from a group of recreational runners. A non-linear and ensemble machine learning algorithm, random forest (RF), was used to classify and compute a heuristic for determining the importance of each variable in the prediction model. To validate the developed subject-specific model, two cross-validation methods (one-against-another and partitioning datasets) were used to obtain experimental mean classification accuracies of 87.18% and 95.42%, respectively, indicating an excellent discriminatory ability of the RF-based model. Additionally, the ranked order of variable importance differed across the individual runners. The results from the RF-based machine-learning algorithm demonstrates that processing gait biomechanical signals from a single wearable sensor can successfully detect changes to an individual's running patterns based on data obtained in real-world environments.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC6143236PMC
http://journals.plos.org/plosone/article?id=10.1371/journal.pone.0203839PLOS

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