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Identifying fallers among ophthalmic patients using classification tree methodology.

Paolo MelilloAda OrricoFranco ChiricoLeandro PecchiaSettimio RossiFrancesco TestaFrancesca Simonelli
Published in: PloS one (2017)
The current study proposes a novel method, based on classification trees applied to self-reported factors and health information assessed by a standardized questionnaire during ophthalmological visits, to identify ophthalmic patients at higher risk of falling in the following 12 months. The findings of the current study pave the way to the validation of the proposed novel tool for fall risk screening on a larger cohort of patients with visual impairment referred to eye clinics.
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