Loading…

Loading grant details…

Active NON-SBIR/STTR RPGS NIH (US)

Predictive Gait-Based Biomarkers for Fall Risk in Lower-Limb Prosthesis Users

$6.67M USD

Funder EUNICE KENNEDY SHRIVER NATIONAL INSTITUTE OF CHILD HEALTH & HUMAN DEVELOPMENT
Recipient Organization Rehabilitation Institute of Chicago D/B/A Shirley Ryan Abilitylab
Country United States
Start Date Sep 02, 2024
End Date Jun 30, 2029
Duration 1,762 days
Number of Grantees 1
Roles Principal Investigator
Data Source NIH (US)
Grant ID 10860071
Grant Description

ABSTRACT Falls are the second leading cause of unintentional death worldwide and lower limb prosthesis users (LLPUs) constitute an exceptionally high-risk group. Over half of LLPU fall annually with many falls resulting in injuries.1 Despite these alarming statistics, clinically accessible tools for predicting falls in LLPU are currently lacking. A

comprehensive fall prevention research program should address barriers, such as population heterogeneity and specificity of measurements, and identify modifiable biomechanical risk factors across LLPUs subgroups using methods easily translatable into clinical use.4 Gait analysis to as a screening tool for falls has the potential to

satisfy these requirements and markerless motion capture makes it possible that routine gait analysis could be feasibly integrated into routine clinical visits. The overall objective of this proposal is to develop a sensitive and specific fall screening protocol for lower limb prosthetic users that utilizes gait and kinematic analysis from

markerless motion capture and is applies to a representative population of lower limb prosthetic users. We will work towards this objective by evaluating fall risk predictors from gait analysis and comparing their accuracy to traditional performance-based clinical assessments. To do this, we will collect in clinic markerless motion capture

gait and kinematic data as well as common clinical assessments from 150 lower limb prosthetic users. We will then collect prospective fall history from these individuals for 1-year to determine the subset of gait parameters or clinical assessments that best predict an individual’s future fall risk. Finally, during this one-year collection

period, we will use wearable sensors to obtain further kinematic data on fall type, directionality, and circumstances to develop a model for incident risk based on fall type. The results from this study will provide important findings to predict fall risk for a representative, heterogeneous population of lower limb prosthetic

users. It will determine whether fall risk can be accurately predicted from 3D gait analysis using markerless motion capture. If successful, our proposed work will produce a translatable approach for screening at-risk lower limb prosthetic users and will identify biomechanical risk-factors for specific fall types. All models and tools for

this study will be made open source in our continued commitment to open access. Further, we anticipate that our techniques may generalize to other populations at-risk for falls, such as older adults or stroke survivors. Ultimately, we envision these tools being integrated into routine clinical encounters and a subsequent research

study testing whether fall-prevention interventions initiated from clinical gait analysis can reduce the frequency of preventable falls.

All Grantees

Rehabilitation Institute of Chicago D/B/A Shirley Ryan Abilitylab

Advertisement
Discover thousands of grant opportunities
Advertisement
Browse Grants on GrantFunds
Interested in applying for this grant?

Complete our application form to express your interest and we'll guide you through the process.

Apply for This Grant