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Use of Machine Learning to Model Volume Load Effects on Changes in Jump Performance. Int J Sports Physiol Perform 2020 Feb 01;15(2):285-287

Date

05/17/2019

Pubmed ID

31094253

DOI

10.1123/ijspp.2019-0009

Scopus ID

2-s2.0-85078966471 (requires institutional sign-in at Scopus site)   3 Citations

Abstract

PURPOSE: To use an artificial neural network (ANN) to model the effect of 15 weeks of resistance training on changes in countermovement jump (CMJ) performance in male track-and-field athletes.

METHODS: Resistance training volume load (VL) of 21 male division I track-and-field athletes was monitored over the course of 15 weeks, which covered their indoor and outdoor competitive season. Weekly CMJ height was also measured and used to calculate the overall 15-week change in CMJ performance. A feed-forward ANN with 5 hidden layers was used to model how the VL from each of the 15 weeks was associated with the overall change in CMJ height.

RESULTS: Testing the performance of the developed ANN on 4 separate athletes showed that 15 weeks of VL data could predict individual changes in CMJ height with an average error between 0.21 and 1.47 cm, which suggested that the ANN adequately modeled the relationship between weekly VL and its effects on CMJ performance. In addition, analysis of the relative importance of each week in predicting changes in CMJ height indicated that the VLs during deload or taper weeks were the best predictors (10%-17%) of changes in CMJ performance.

CONCLUSIONS: ANN can be used to effectively model the effects of weekly VL on changes in CMJ performance. In addition, ANN can be used to assess the relative importance of each week in predicting changes in CMJ height.

Author List

Kipp K, Krzyszkowski J, Kant-Hull D

Author

Kristof Kipp BS,MS,PhD Assistant Professor in the Physical Therapy department at Marquette University




MESH terms used to index this publication - Major topics in bold

Athletic Performance
Humans
Machine Learning
Male
Plyometric Exercise
Resistance Training
Time Factors
Track and Field
Young Adult