Fall risk analysis using machine learning, the Timed Up and Go test, and inexpensive wearable IMU sensors
Abstract
Details
- Title: Subtitle
- Fall risk analysis using machine learning, the Timed Up and Go test, and inexpensive wearable IMU sensors
- Creators
- Venous Roshdibenam
- Contributors
- Stephen Baek (Advisor)Gerald Jogerst (Committee Member)Priyadarshini R. Pennathur (Committee Member)Daniel McGehee (Committee Member)Geb W. Thomas (Committee Member)Rajan Bhatt (Committee Member)
- Resource Type
- Dissertation
- Degree Awarded
- Doctor of Philosophy (PhD), University of Iowa
- Degree in
- Industrial Engineering
- Date degree season
- Summer 2021
- Publisher
- University of Iowa
- DOI
- 10.17077/etd.005886
- Number of pages
- xiii, 123 pages
- Copyright
- Copyright 2021 Venous Roshdibenam
- Language
- English
- Description illustrations
- color illustrations
- Description bibliographic
- Includes bibliographical references (pages 107-118).
- Public Abstract (ETD)
Falls among the elderly population cause detrimental physical, mental, financial problems and, in the worst case, they lead to 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, quantitative, and robust 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.
- Academic Unit
- Industrial and Systems Engineering
- Record Identifier
- 9984124760402771