University of Illinois Chicago
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New Developments of Minimum Clinically Important Difference: Theory and Methodology

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posted on 2014-02-24, 00:00 authored by Tu Xu
In clinical trials, minimum clinically important difference (MCID) has attracted increasing interest as an important supportive clinical and statistical inference tool. Many estimation methods have been developed based on various intuitions, while little theoretical justification has been established. In this dissertation, a new estimation framework of MCID using both diagnostic measurements and patient-reported outcomes (PROs) is proposed. It first provides a precise definition of population-based MCID so that estimating such a MCID can be formulated as a large margin classification problem. The framework is then extended to personalized MCID to allow individualized thresholding value for patients whose clinical profiles may affect their PRO responses. More importantly, it is shown that the proposed estimation framework is asymptotically consistent, and a finite-sample upper bound is established for its prediction accuracy compared against the ideal MCID. The advantage of our proposed method is also demonstrated in a variety of simulated experiments as well as real applications.

History

Advisor

Hedayat, SamadWang, Junhui

Department

Mathematics, Statistics, and Computer Science

Degree Grantor

University of Illinois at Chicago

Degree Level

  • Doctoral

Committee Member

Wang, Junhui Wang, Jing Martin, Ryan Chen, Huayun

Submitted date

2013-12

Language

  • en

Issue date

2014-02-24

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