Nonparametric Benchmark Dose Estimation with Continuous Dose-Response Data

Nonparametric Benchmark Dose Estimation with Continuous Dose-Response Data

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Article ID: iaor201526548
Volume: 42
Issue: 3
Start Page Number: 713
End Page Number: 731
Publication Date: Sep 2015
Journal: Scandinavian Journal of Statistics
Authors: , ,
Keywords: risk, statistics: distributions, biology, medicine
Abstract:

We propose a new method for risk‐analytic benchmark dose (BMD) estimation in a dose‐response setting when the responses are measured on a continuous scale. For each dose level d, the observation X(d) is assumed to follow a normal distribution: N(μ(d),σ2). No specific parametric form is imposed upon the mean μ(d), however. Instead, nonparametric maximum likelihood estimates of μ(d) and σ are obtained under a monotonicity constraint on μ(d). For purposes of quantitative risk assessment, a ‘hybrid’ form of risk function is defined for any dose d as R(d) = P[X(d) < c], where c > 0 is a constant independent of d. The BMD is then determined by inverting the additional risk functionRA(d) = R(d) − R(0) at some specified value of benchmark response. Asymptotic theory for the point estimators is derived, and a finite‐sample study is conducted, using both real and simulated data. When a large number of doses are available, we propose an adaptive grouping method for estimating the BMD, which is shown to have optimal mean integrated squared error under appropriate designs.

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