2023
DOI: 10.48550/arxiv.2301.12937
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Incorporating prior information into distributed lag nonlinear models with zero-inflated monotone regression trees

Abstract: In environmental health research there is often interest in the effect of an exposure on a health outcome assessed on the same day and several subsequent days or lags. Distributed lag nonlinear models (DLNM) are a well-established statistical framework for estimating an exposure-lag-response function. We propose methods to allow for prior information to be incorporated into DLNMs. First, we impose a monotonicity constraint in the exposure-response at lagged time periods which matches with knowledge on how biol… Show more

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