Statistical modeling of protein lysate array data


Autoria(s): Yang, Ji Yeon
Contribuinte(s)

He, Xuming

He, Xuming

Douglas, Jeffrey A.

Liang, Feng

Qu, Annie

Data(s)

31/08/2010

31/08/2010

07/09/2012

31/08/2010

01/08/2010

Resumo

The protein lysate array is an emerging technology for quantifying the protein concentration ratios in multiple biological samples. It is gaining popularity, and has the potential to answer questions about post-translational modifications and protein pathway relationships. Statistical inference for a parametric quantification procedure has been inadequately addressed in the literature, mainly due to two challenges: the increasing dimension of the parameter space and the need to account for dependence in the data. Each chapter of this thesis addresses one of these issues. In Chapter 1, an introduction to the protein lysate array quantification is presented, followed by the motivations and goals for this thesis work. In Chapter 2, we develop a multi-step procedure for the Sigmoidal models, ensuring consistent estimation of the concentration level with full asymptotic efficiency. The results obtained in this chapter justify inferential procedures based on large-sample approximations. Simulation studies and real data analysis are used to illustrate the performance of the proposed method in finite-samples. The multi-step procedure is simpler in both theory and computation than the single-step least squares method that has been used in current practice. In Chapter 3, we introduce a new model to account for the dependence structure of the errors by a nonlinear mixed effects model. We consider a method to approximate the maximum likelihood estimator of all the parameters. Using the simulation studies on various error structures, we show that for data with non-i.i.d. errors the proposed method leads to more accurate estimates and better confidence intervals than the existing single-step least squares method.

Identificador

http://hdl.handle.net/2142/17036

Idioma(s)

en

Direitos

Copyright 2010 Ji Yeon Yang

Palavras-Chave #Confidence intervals #Consistency #Dilution series #Maximum likelihood estimator (MLE) #Non-i.i.d. Model #Nonlinear mixed effects model #Nonlinear optimization #Protein lysate array quantification #Sigmoidal model