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FUNCTIONAL LINEAR REGRESSION MODELS FOR NONIGNORABLE MISSING SCALAR RESPONSES

机译:非无知缺失标量响应的功能线性回归模型

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As an important part of modern health care, medical imaging data, which can be regarded as densely sampled functional data, have been widely used for diagnosis, screening, treatment, and prognosis, such as for finding breast cancer through mammograms. The aim of this paper is to propose a functional linear regression model for using functional (or imaging) predictors to predict clinical outcomes (e.g., disease status), while addressing missing clinical outcomes. We introduce an exponential tilting semiparametric model to account for the nonignorable missing data mechanism. We develop a set of estimating equations and the associated computational methods for both parameter estimation and the selection of the tuning parameters. We also propose a bootstrap resampling procedure for carrying out statistical inference. We systematically establish the asymptotic properties (e.g., consistency and convergence rate) of the estimates calculated from the proposed estimating equations. Simulation studies and a data analysis are used to illustrate the finite sample performance of the proposed methods.
机译:作为现代医疗保健的重要组成部分,可以被视为密集采样功能数据的医学成像数据已被广泛用于诊断,筛选,治疗和预后,例如通过乳房X线照片寻找乳腺癌。本文的目的是提出一种功能线性回归模型,用于使用功能(或成像)预测因子来预测临床结果(例如,疾病状态),同时解决缺失的临床结果。我们介绍指数倾斜的半游戏模型,以解释非无知的缺失数据机制。我们开发一组估计方程和相关的计算方法,用于参数估计和调整参数的选择。我们还提出了一种用于执行统计推理的引导重采样程序。我们系统地建立由所提出的估计方程计算的估计的渐近性(例如,一致性和收敛速度)。模拟研究和数据分析用于说明所提出的方法的有限样本性能。

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