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Personalised treatment assignment maximising expected benefit with smooth hinge loss

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摘要 In personalised medicine,the goal is tomake a treatment recommendation for each patient with a given set of covariates tomaximise the treatment benefitmeasured by patient’s response to the treatment.In application,such a treatment assignment rule is constructed using a sample training data consisting of patients’responses and covariates.Instead of modelling responses using treatments and covariates,an alternative approach is maximising a response-weighted target function whose value directly reflects the effectiveness of treatment assignments.Since the target function involves a loss function,efforts have been made recently on the choice of the loss function to ensure a computationally feasible and theoretically sound solution.We propose to use a smooth hinge loss function so that the target function is convex and differentiable,which possesses good asymptotic properties and numerical advantages.To further simplify the computation and interpretability,we focus on the rules that are linear functions of covariates and discuss their asymptotic properties.We also examine the performances of our method with simulation studies and real data analysis.
出处 《Statistical Theory and Related Fields》 2017年第1期37-47,共11页 统计理论及其应用(英文)
基金 Research reported in this article was partially funded through a Patient-Centered Outcomes Research Institute(PCORI)Award[ME-1409-21219] The second author’s research was also partially supported by the Chinese 111 Project[B14019] the US National Science Foundation[grant number DMS-1612873].
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