Wearable Technology May Assist in Retraining Foot Strike Patterns in Previously Injured Military Service Members: A Prospective Case Series

A rearfoot strike (RFS) pattern with increased average vertical loading rates (AVLR) while running has been associated with injury. This study evaluated the ability of an instrumented sock, which provides real-time foot strike and cadence audio biofeedback, to transition previously injured military...

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Main Authors: Donald L. Goss, Daniel J. Watson, Erin M. Miller, Amy N. Weart, Eliza B. Szymanek, Gregory M. Freisinger
Format: Article
Language:English
Published: Frontiers Media S.A. 2021-02-01
Series:Frontiers in Sports and Active Living
Subjects:
Online Access:https://www.frontiersin.org/articles/10.3389/fspor.2021.630937/full
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spelling doaj-c3220778d14e4ee6915fce494cab6eaa2021-02-26T07:14:42ZengFrontiers Media S.A.Frontiers in Sports and Active Living2624-93672021-02-01310.3389/fspor.2021.630937630937Wearable Technology May Assist in Retraining Foot Strike Patterns in Previously Injured Military Service Members: A Prospective Case SeriesDonald L. Goss0Daniel J. Watson1Erin M. Miller2Amy N. Weart3Eliza B. Szymanek4Gregory M. Freisinger5Department of Physical Therapy, High Point University, High Point, NC, United States15th Medical Group, Joint Base Pearl Harbor—Hickam, Honolulu, HI, United StatesBaylor University—Keller Army Community Hospital Division 1 Sports Physical Therapy Fellowship, West Point, NY, United StatesDepartment of Physical Therapy, Keller Army Community Hospital, West Point, NY, United StatesMadigan Army Medical Center, Tacoma, WA, United StatesDepartment of Civil and Mechanical Engineering, United States Military Academy, West Point, NY, United StatesA rearfoot strike (RFS) pattern with increased average vertical loading rates (AVLR) while running has been associated with injury. This study evaluated the ability of an instrumented sock, which provides real-time foot strike and cadence audio biofeedback, to transition previously injured military service members from a RFS to a non-rearfoot strike (NRFS) running pattern. Nineteen RFS runners (10 males, 9 females) were instructed to wear the instrumented socks to facilitate a change in foot strike while completing an independent walk-to-run progression and lower extremity exercise program. Kinetic data were collected during treadmill running while foot strike was determined using video analysis at initial (T1), post-intervention (T2), and follow-up (T3) data collections. Nearly all runners (18/19) transitioned to a NRFS pattern following intervention (8 ± 2.4 weeks after the initial visit). Most participants (16/18) maintained the transition at follow-up (5 ± 0.8 weeks after the post-intervention visit). AVLR of the involved and uninvolved limb decreased 29% from initial [54.7 ± 13.2 bodyweights per sec (BW/s) and 55.1 ± 12.7 BW/s] to post-intervention (38.7 ± 10.1 BW/s and 38.9 ± 10.0 BW/s), respectively. This effect persisted 5-weeks later at follow-up, representing an overall 30% reduction on the involved limb and 24% reduction on the uninvolved limb. Cadence increased from the initial to the post-intervention time-point (p = 0.045); however, this effect did not persist at follow-up (p = 0.08). With technology provided feedback from instrumented socks, approximately 90% of participants transitioned to a NRFS pattern, decreased AVLR, reduced stance time and maintained these running adaptations 5-weeks later.https://www.frontiersin.org/articles/10.3389/fspor.2021.630937/fullwearable technologyrunning biomechanicsloading ratecadencefoot strikegait-retraining
collection DOAJ
language English
format Article
sources DOAJ
author Donald L. Goss
Daniel J. Watson
Erin M. Miller
Amy N. Weart
Eliza B. Szymanek
Gregory M. Freisinger
spellingShingle Donald L. Goss
Daniel J. Watson
Erin M. Miller
Amy N. Weart
Eliza B. Szymanek
Gregory M. Freisinger
Wearable Technology May Assist in Retraining Foot Strike Patterns in Previously Injured Military Service Members: A Prospective Case Series
Frontiers in Sports and Active Living
wearable technology
running biomechanics
loading rate
cadence
foot strike
gait-retraining
author_facet Donald L. Goss
Daniel J. Watson
Erin M. Miller
Amy N. Weart
Eliza B. Szymanek
Gregory M. Freisinger
author_sort Donald L. Goss
title Wearable Technology May Assist in Retraining Foot Strike Patterns in Previously Injured Military Service Members: A Prospective Case Series
title_short Wearable Technology May Assist in Retraining Foot Strike Patterns in Previously Injured Military Service Members: A Prospective Case Series
title_full Wearable Technology May Assist in Retraining Foot Strike Patterns in Previously Injured Military Service Members: A Prospective Case Series
title_fullStr Wearable Technology May Assist in Retraining Foot Strike Patterns in Previously Injured Military Service Members: A Prospective Case Series
title_full_unstemmed Wearable Technology May Assist in Retraining Foot Strike Patterns in Previously Injured Military Service Members: A Prospective Case Series
title_sort wearable technology may assist in retraining foot strike patterns in previously injured military service members: a prospective case series
publisher Frontiers Media S.A.
series Frontiers in Sports and Active Living
issn 2624-9367
publishDate 2021-02-01
description A rearfoot strike (RFS) pattern with increased average vertical loading rates (AVLR) while running has been associated with injury. This study evaluated the ability of an instrumented sock, which provides real-time foot strike and cadence audio biofeedback, to transition previously injured military service members from a RFS to a non-rearfoot strike (NRFS) running pattern. Nineteen RFS runners (10 males, 9 females) were instructed to wear the instrumented socks to facilitate a change in foot strike while completing an independent walk-to-run progression and lower extremity exercise program. Kinetic data were collected during treadmill running while foot strike was determined using video analysis at initial (T1), post-intervention (T2), and follow-up (T3) data collections. Nearly all runners (18/19) transitioned to a NRFS pattern following intervention (8 ± 2.4 weeks after the initial visit). Most participants (16/18) maintained the transition at follow-up (5 ± 0.8 weeks after the post-intervention visit). AVLR of the involved and uninvolved limb decreased 29% from initial [54.7 ± 13.2 bodyweights per sec (BW/s) and 55.1 ± 12.7 BW/s] to post-intervention (38.7 ± 10.1 BW/s and 38.9 ± 10.0 BW/s), respectively. This effect persisted 5-weeks later at follow-up, representing an overall 30% reduction on the involved limb and 24% reduction on the uninvolved limb. Cadence increased from the initial to the post-intervention time-point (p = 0.045); however, this effect did not persist at follow-up (p = 0.08). With technology provided feedback from instrumented socks, approximately 90% of participants transitioned to a NRFS pattern, decreased AVLR, reduced stance time and maintained these running adaptations 5-weeks later.
topic wearable technology
running biomechanics
loading rate
cadence
foot strike
gait-retraining
url https://www.frontiersin.org/articles/10.3389/fspor.2021.630937/full
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