발달 독성학에서 비대칭 로짓 모형을 사용한 이진수 자료와 연속형 자료에 대한 결합분석
Joint analysis of binary and continuous data using skewed logit model in developmental toxicity studies
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초록

It is common to encounter correlated multiple outcomes measured on the same subject in various research fields. In developmental toxicity studies, presence of malformed pups and fetal weight are measured on the pregnant dams exposed to different levels of a toxic substance. Joint analysis of such two outcomes can result in more efficient inferences than separate models for each outcome. Most methods for joint modeling assume a normal distribution as random effects. However, in developmental toxicity studies, the response distributions may change irregularly in location and shape as the level of toxic substance changes, which may not be captured by a normal random effects model. Motivated by applications in developmental toxicity studies, we propose a Bayesian joint model for binary and continuous outcomes. In our model, we incorporate a skewed logit model for the binary outcome to allow the response distributions to have flexibly in both symmetric and asymmetric shapes on the toxic levels. We apply our proposed method to data from a developmental toxicity study of diethylhexyl phthalate.

키워드

결합모형독성 물질마코프체인 몬테카를로베이지안 추론비대칭 로짓 모형Bayesian inferencediethylhexyl phthalatejoint modelingMarkov chain Monte Carloskewed logit model
제목
발달 독성학에서 비대칭 로짓 모형을 사용한 이진수 자료와 연속형 자료에 대한 결합분석
제목 (타언어)
Joint analysis of binary and continuous data using skewed logit model in developmental toxicity studies
저자
김영화황범석
DOI
10.5351/KJAS.2020.33.2.123
발행일
2020-04
유형
Article
저널명
응용통계연구
33
2
페이지
123 ~ 136