Personalised Prevention of Falls in Persons with Dementia-A Registry-Based Study

针对痴呆症患者跌倒的个性化预防——一项基于登记数据的研究

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Abstract

BACKGROUND/OBJECTIVES: Multifactorial prevention of falls in persons with dementia has minimal or non-significant effects. Personalised prevention is recommended. We have previously shown that gait speed, basic activities of daily living (ADL), and depression (high Cornell scores) were independent predictors of falls in persons with mild and moderate cognitive impairment. This study explored person-specific risks of falls related to physical, mental, and cognitive functions and types of dementia: Alzheimer's disease (AD), vascular dementia (VD), mixed Alzheimer's disease/vascular dementia (MixADVD), frontotemporal dementia (FTD), and dementia with Lewy bodies (DLB). METHODS: The study used data from "The Norwegian Registry of Persons Assessed for Cognitive Symptoms" (NorCog). Differences between the dementia groups and predictors of falls, gait speed, ADL, and Cornell scores were analysed. RESULTS: Among study participants, 537/1321 (40.7%) reported a fall in the past year, with significant variations between dementia diagnoses. Fall incidence increased with age, comorbidity/polypharmacy, depression, and MAYO fluctuation score and with reduced physical activity, gait speed, and ADL. Persons with VD and MixADVD had high fall incidences and impaired gait speed and ADL. Training of physical fitness, endurance, muscular strength, coordination, and balance and optimising treatment of comorbidities and medication enhance gait speed. Improving ADL necessitates, in addition, relief of cognitive impairment and fluctuations. Relief of depression and fluctuations by psychological and pharmacological interventions is necessary to reduce the high fall risk in persons with DLB. CONCLUSIONS: The fall incidence and fall predictors varied significantly. Personalised interventions presuppose knowledge of each individual's fall risk factors.

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