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An analysis pipeline for estimating true intake from repeated measurements with random errors
- Jo, Seongil;
- Kim, Jeongseon;
- Lee, Woojoo
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0초록
The accurate estimation of an individual's usual dietary intake is an important topic in nutritional epidemiology. This paper considers the best linear unbiased predictor (BLUP) computed from repeatedly measured dietary data and derives several nonparametric prediction intervals for true intake. However, the performance of the BLUP and the validity of prediction intervals depends on whether required model assumptions for the true intake estimation problem hold. To address this issue, the paper examines how the BLUP and prediction intervals behave in the case of a violation of model assumptions, and then proposes an analysis pipeline for checking them with data.
키워드
Analysis pipeline; Best linear unbiased predictor; Nonparametric prediction interval; Repeated measurements; Shrinkage estimator; Usual dietary intake; PREDICTION INTERVALS; NUTRIENTS; MODELS; BLUPS; FAT
- 제목
- An analysis pipeline for estimating true intake from repeated measurements with random errors
- 저자
- Jo, Seongil; Kim, Jeongseon; Lee, Woojoo
- 발행일
- 2019-03-04
- 유형
- Article
- 권
- 48
- 호
- 5
- 페이지
- 1239 ~ 1254