Ordinal Outcome Prediction and Treatment Selection in Personalized Medicine

In personalized medicine, two important tasks are predicting disease risk and selecting appropriate treatments for individuals based on their baseline information. The dissertation focuses on providing improved risk prediction for ordinal outcome data and proposing score-based test to identify infor...

Full description

Bibliographic Details
Main Author: Shen, Yuanyuan
Other Authors: Cai, Tianxi
Format: Others
Language:en
Published: Harvard University 2015
Subjects:
Online Access:http://nrs.harvard.edu/urn-3:HUL.InstRepos:17463982
id ndltd-harvard.edu-oai-dash.harvard.edu-1-17463982
record_format oai_dc
spelling ndltd-harvard.edu-oai-dash.harvard.edu-1-174639822017-07-27T15:51:39ZOrdinal Outcome Prediction and Treatment Selection in Personalized MedicineShen, YuanyuanStatisticsIn personalized medicine, two important tasks are predicting disease risk and selecting appropriate treatments for individuals based on their baseline information. The dissertation focuses on providing improved risk prediction for ordinal outcome data and proposing score-based test to identify informative markers for treatment selection. In Chapter 1, we take up the first problem and propose a disease risk prediction model for ordinal outcomes. Traditional ordinal outcome models leave out intermediate models which may lead to suboptimal prediction performance; they also don't allow for non-linear covariate effects. To overcome these, a continuation ratio kernel machine (CRKM) model is proposed both to let the data reveal the underlying model and to capture potential non-linearity effect among predictors, so that the prediction accuracy is maximized. In Chapter 2, we seek to develop a kernel machine (KM) score test that can efficiently identify markers that are predictive of treatment difference. This new approach overcomes the shortcomings of the standard Wald test, which is scale-dependent and only take into account linear effect among predictors. To do this, we propose a model-free score test statistics and implement the KM framework. Simulations and real data applications demonstrated the advantage of our methods over the Wald test. In Chapter 3, based on the procedure proposed in Chapter 2, we further add sparsity assumption on the predictors to take into account the real world problem of sparse signal. We incorporate the generalized higher criticism (GHC) to threshold the signals in a group and maintain a high detecting power. A comprehensive comparison of the procedures in Chapter 2 and Chapter 3 demonstrated the advantages and disadvantages of difference procedures under different scenarios.BiostatisticsCai, TianxiLin, XihongGray, Robert2015-07-17T16:29:23Z2015-052015-05-0620152017-05-01T07:31:30ZThesis or Dissertationtextapplication/pdfShen, Yuanyuan. 2015. Ordinal Outcome Prediction and Treatment Selection in Personalized Medicine. Doctoral dissertation, Harvard University, Graduate School of Arts & Sciences.http://nrs.harvard.edu/urn-3:HUL.InstRepos:174639820000-0002-7763-4584enopenhttp://nrs.harvard.edu/urn-3:HUL.InstRepos:dash.current.terms-of-use#LAAHarvard University
collection NDLTD
language en
format Others
sources NDLTD
topic Statistics
spellingShingle Statistics
Shen, Yuanyuan
Ordinal Outcome Prediction and Treatment Selection in Personalized Medicine
description In personalized medicine, two important tasks are predicting disease risk and selecting appropriate treatments for individuals based on their baseline information. The dissertation focuses on providing improved risk prediction for ordinal outcome data and proposing score-based test to identify informative markers for treatment selection. In Chapter 1, we take up the first problem and propose a disease risk prediction model for ordinal outcomes. Traditional ordinal outcome models leave out intermediate models which may lead to suboptimal prediction performance; they also don't allow for non-linear covariate effects. To overcome these, a continuation ratio kernel machine (CRKM) model is proposed both to let the data reveal the underlying model and to capture potential non-linearity effect among predictors, so that the prediction accuracy is maximized. In Chapter 2, we seek to develop a kernel machine (KM) score test that can efficiently identify markers that are predictive of treatment difference. This new approach overcomes the shortcomings of the standard Wald test, which is scale-dependent and only take into account linear effect among predictors. To do this, we propose a model-free score test statistics and implement the KM framework. Simulations and real data applications demonstrated the advantage of our methods over the Wald test. In Chapter 3, based on the procedure proposed in Chapter 2, we further add sparsity assumption on the predictors to take into account the real world problem of sparse signal. We incorporate the generalized higher criticism (GHC) to threshold the signals in a group and maintain a high detecting power. A comprehensive comparison of the procedures in Chapter 2 and Chapter 3 demonstrated the advantages and disadvantages of difference procedures under different scenarios. === Biostatistics
author2 Cai, Tianxi
author_facet Cai, Tianxi
Shen, Yuanyuan
author Shen, Yuanyuan
author_sort Shen, Yuanyuan
title Ordinal Outcome Prediction and Treatment Selection in Personalized Medicine
title_short Ordinal Outcome Prediction and Treatment Selection in Personalized Medicine
title_full Ordinal Outcome Prediction and Treatment Selection in Personalized Medicine
title_fullStr Ordinal Outcome Prediction and Treatment Selection in Personalized Medicine
title_full_unstemmed Ordinal Outcome Prediction and Treatment Selection in Personalized Medicine
title_sort ordinal outcome prediction and treatment selection in personalized medicine
publisher Harvard University
publishDate 2015
url http://nrs.harvard.edu/urn-3:HUL.InstRepos:17463982
work_keys_str_mv AT shenyuanyuan ordinaloutcomepredictionandtreatmentselectioninpersonalizedmedicine
_version_ 1718507055224979456