Fall Risk Assessment in Stroke Survivors: A Machine Learning Model Using Detailed Motion Data from Common Clinical Tests and Motor-Cognitive Dual-Tasking.
Masoud AbdollahiEhsan RashediSonia JahangiriPranav Madhav KuberNasibeh Azadeh-FardMary DombovyPublished in: Sensors (Basel, Switzerland) (2024)
Machine learning models using minimal inertial sensors during clinical assessments can accurately quantify fall risk in stroke survivors. Single thorax sensor setups are effective. Findings demonstrate a feasible objective fall screening approach to assist rehabilitation.