Abstract

In old age, sufficient protein intake is important to preserve muscle mass and function. Around 50% of older adults (65+ y) consumes ≤1.0 g/kg adjusted body weight (BW)/day (d). There is no rapid method available to screen for low protein intake in old age. Therefore, we aimed to develop and validate a short food questionnaire to screen for low protein intake in community-dwelling older adults. We used data of 1348 older men and women (56–101 y) of the LASA study (the Netherlands) to develop the questionnaire and data of 563 older men and women (55–71 y) of the HELIUS study (the Netherlands) for external validation. In both samples, protein intake was measured by the 238-item semi-quantitative HELIUS food frequency questionnaire (FFQ). Multivariable logistic regression analysis was used to predict protein intake ≤1.0 g/kg adjusted BW/d (based on the HELIUS FFQ). Candidate predictor variables were FFQ questions on frequency and amount of intake of specific foods. In both samples, 30% had a protein intake ≤1.0 g/kg adjusted BW/d. Our final model included adjusted body weight and 10 questions on the consumption (amount on average day or frequency in 4 weeks) of: slices of bread (number); glasses of milk (number); meat with warm meal (portion size); cheese (amount and frequency); dairy products (like yoghurt) (frequency); egg(s) (frequency); pasta/noodles (frequency); fish (frequency); and nuts/peanuts (frequency). The area under the receiver operating characteristic curve (AUC) was 0.889 (95% CI 0.870–0.907). The calibration slope was 1.03 (optimal slope 1.00). At a cut-off of ≤0.8 g/kg adjusted BW/d, the AUC was 0.916 (96% CI 0.897–0.936). Applying the regression equation to the HELIUS sample, the AUC was 0.856 (95% CI 0.824–0.888) and the calibration slope 0.92. Regression coefficients were therefore subsequently shrunken by a linear factor 0.92. To conclude, the short food questionnaire (Pro55+) can be used to validly screen for protein intake ≤1.0 g/kg adjusted BW/d in community-dwelling older adults. An online version can be found at www.proteinscreener.nl. External validation in other countries is recommended.

Highlights

  • An adequate protein intake is considered key in old age to preserve muscle mass and muscle function and thereby physical function [1, 2]

  • In older adults participating in trials testing the benefits of protein supplementation, mean protein intake was estimated at 1.0 g/kg body weight (BW)/d [13,14,15,16,17]

  • This study aimed to develop and validate a short food questionnaire, the so-called Protein Screener 55+ (Pro55+), that can be used to screen for protein intake 1.0 g/kg adjusted BW/d among community-dwelling adults aged 55 years and older

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Summary

Introduction

An adequate protein intake is considered key in old age to preserve muscle mass and muscle function and thereby physical function [1, 2]. There are several dietary assessment methods available to measure a person’s nutrient intake These include (extensive) food frequency questionnaires (FFQs), food diaries, 24-hour recalls over multiple days or food weighting records. A major disadvantage of these methods is that they are time consuming to assess and analyze For this reason, several short food questionnaires have been developed that can classify a person into high or low intake of specific nutrients. A rapid method to screen for low protein intake in older adults can be used in research to screen older adults that could benefit most from protein supplementation. This study aimed to develop and validate a short food questionnaire, the so-called Protein Screener 55+ (Pro55+), that can be used to screen for protein intake 1.0 g/kg adjusted BW/d among community-dwelling adults aged 55 years and older. To enhance its applicability and feasibility in research and clinical practice, our aim was to include a minimum number of questions with a maximum discriminative capacity

Materials and methods
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