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'Self-screening' for malnutrition with an electronic version of the Malnutrition Universal Screening Tool ('MUST') in hospital outpatients: concurrent validity, preference and ease of use.

BRITISH JOURNAL OF NUTRITION(2018)

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摘要
Self-screening using an electronic version of the Malnutrition Universal Screening Tool ('MUST') has been developed but its implementation requires investigation. A total of 100 outpatients (mean age 50 (SD 16) years; 57% male) self-screened with an electronic version of 'MUST' and were then screened by a healthcare professional (HCP) to assess concurrent validity. Ease of use, time to self-screen and prevalence of malnutrition were also assessed. A further twenty outpatients (mean age 54 (SD 15) years; 55% male) examined preference between self- screening with paper and electronic versions of 'MUST'. For the three-category classification of 'MUST' (low, medium and high risk), agreement between electronic self-screening and MCP screening was 94% (kappa= 0.74, SE 0.092; P < 0.001). For the two-category classification (low risk; medium + high risk) agreement was 96 %(kappa = 0-82, SE 0.085; P< 0.001), comparable with the previously reported paper-based self-screening. In all, 15 % of patients categorised themselves 'at risk' of malnutrition (5% medium, 10 % high). Electronic self-screening took 3 min (SD 1.2 min), 40 % faster than previously reported for the paper-based version. Patients found the tool easy or very easy to understand (99 %) and complete (98%). Patients that assessed both tools found the electronic tool easier to complete (65 %) and preferred it (55 %) to the paper version. Electronic self-screening using 'MUST' in a heterogeneous group of hospital outpatients is acceptable, user-friendly and has 'substantial to almost-perfect' agreement with HCP screening. The electronic format appears to be as agreeable and often the preferred format when compared with the validated paper-based 'MUST' self-screening tool.
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关键词
Malnutrition Universal Screening Tool,Self-screening,Validity,Preference
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