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Machine Learning Prediction of Fall Risk in Older Adults Using Timed Up and Go Test Kinematics

Venous Roshdibenam, Gerald J. Jogerst, Nicholas R. Butler, Stephen Baek

2021Sensors50 citationsDOIOpen Access PDF

Abstract

Falls among the elderly population cause detrimental physical, mental, financial problems and, in the worst case, death. The increasing number of people entering the higher risk age-range has increased clinicians' attention to intervene. Clinical tools, e.g., the Timed Up and Go (TUG) test, have been created for aiding clinicians in fall-risk assessment. Often simple to evaluate, these assessments are subject to a clinician's judgment. Wearable sensor data with machine learning algorithms were introduced as an alternative to precisely quantify ambulatory kinematics and predict prospective falls. However, they require a long-term evaluation of large samples of subjects' locomotion and complex feature engineering of sensor kinematics. Therefore, it is critical to build an objective fall-risk detection model that can efficiently measure biometric risk factors with minimal costs. We built and studied a sensor data-driven convolutional neural network model to predict older adults' fall-risk status with relatively high sensitivity to geriatrician's expert assessment. The sample in this study is representative of older patients with multiple co-morbidity seen in daily medical practice. Three non-intrusive wearable sensors were used to measure participants' gait kinematics during the TUG test. This data collection ensured convenient capture of various gait impairment aspects at different body locations.

Topics & Concepts

Fall preventionWearable computerPhysical medicine and rehabilitationFeature engineeringMachine learningGaitArtificial intelligenceKinematicsPopulationComputer sciencePoison controlRisk assessmentFalls in older adultsTimed Up and Go testDeep learningSimulationMedicineInjury preventionComputer securityMedical emergencyEmbedded systemClassical mechanicsPhysicsEnvironmental healthBalance (ability)Balance, Gait, and Falls PreventionContext-Aware Activity Recognition SystemsChronic Obstructive Pulmonary Disease (COPD) Research
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