Abstract
Precision medicine is an increasingly important area of re-search. Due to the heterogeneity of individual characteristics, patients may respond differently to treatments. One of the most important goals for precision medicine is to develop individualized treatment rules (ITRs) in-volving patients’ characteristics directly. As an interesting topic in clinical research, many statistical methods have been developed in recent years to find optimal ITRs. For binary treatments, outcome weighted learning (OWL) was proposed to find a decision function of patient characteristics maximizing the expected clinical outcome. Treatments with hierarchical structure are commonly seen in practice. In hierarchical scenarios, how to estimate ITRs is still unclear. We propose a new framework named hierarchical outcome-weighted angle-based learning (HOAL) to estimate ITRs for treatments with hierarchical structure. Statistical properties including Fisher consistency and convergence rates of the proposed method are pre-sented. Simulations and an application to a type 2 diabetes study under linear and nonlinear learning show the highly competitive performance of our proposed procedure in both numerical accuracy and computational ef-ficiency.
Original language | English |
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Pages (from-to) | 737-784 |
Number of pages | 48 |
Journal | Electronic Journal of Statistics |
Volume | 16 |
Issue number | 1 |
DOIs | |
Publication status | Published - 2022 |
Externally published | Yes |
Keywords
- and phrases: Heterogeneity
- hierarchical angle-based classifi-