Development and validation of a robotic multifactorial fall-risk predictive model: A one-year prospective study in community-dwelling older adults.
Alberto CellaAlice De LucaValentina SqueriSara ParodiFrancesco ValloneAngela GiorgeschiBarbara SenesiEkaterini ZigouraKaterin Leslie Quispe GuerreroGiacomo SiriLorenzo De MichieliJody SagliaCarlo SanfilippoAlberto PilottoPublished in: PloS one (2020)
A multifactorial fall-risk assessment that includes clinical and hunova robotic variables significantly improves the accuracy of predicting the risk of falling in community-dwelling older people. Our data suggest that combining clinical and robotic assessments can more accurately identify older people at high risk of falls, thereby enabling personalized fall-prevention interventions to be undertaken.