This dissertation is composed of three chapters that deal with fairly distinct concepts. In the first chapter, we compare and contrast the major Bayesian computational platforms accessible in the R statistical computing environment using large-scale simulations across a diverse collection of modeling scenarios. In the second chapter, we assess the performance of several model selection criteria for a complex family of network meta-analysis models for survival data. We also propose a technique for study outlier detection and present simulation results that demonstrate its effectiveness. Finally, the third chapter covers methods for constructing prediction intervals for forecasts for various machine learning algorithms. After describing exist...
Competing risks data are routinely encountered in various medical applications due to the fact that ...
The main focus of this Phd project is the application of Bayesian models in Biostatistics.It has bec...
AbstractDifferent survival data pre-processing procedures and adaptations of existing machine-learni...
In this research, we consider Bayesian methodologies to address problems in biopharmaceutical resear...
Survival analysis is one of the main areas of focus in medical research in recent years. Survival an...
In this paper, we investigate a number of Bayesian techniques for predicting 1-year- survival and ma...
Contains fulltext : 72783.pdf (publisher's version ) (Open Access)This thesis desc...
Advances in technology have allowed for the collection of diverse data types along with evolution in...
Machine Learning and Statistical models are nowadays widely used in different fields of application ...
The Intensive Care Unit (ICU) is a hospital department where machine learning has the potential to p...
Background Bayesian statistics are an appealing alternative to the traditional frequentist approach ...
Thesis (Ph.D.)--University of Washington, 2021Understanding mortality risk, including its distributi...
© 2016 IEEE. Many studies have focused on prognosis for oncology patients with the following charact...
This study considered the problem of predicting survival, based on three alternative models: a singl...
AbstractPrognostic models are tools to predict the future outcome of disease and disease treatment, ...
Competing risks data are routinely encountered in various medical applications due to the fact that ...
The main focus of this Phd project is the application of Bayesian models in Biostatistics.It has bec...
AbstractDifferent survival data pre-processing procedures and adaptations of existing machine-learni...
In this research, we consider Bayesian methodologies to address problems in biopharmaceutical resear...
Survival analysis is one of the main areas of focus in medical research in recent years. Survival an...
In this paper, we investigate a number of Bayesian techniques for predicting 1-year- survival and ma...
Contains fulltext : 72783.pdf (publisher's version ) (Open Access)This thesis desc...
Advances in technology have allowed for the collection of diverse data types along with evolution in...
Machine Learning and Statistical models are nowadays widely used in different fields of application ...
The Intensive Care Unit (ICU) is a hospital department where machine learning has the potential to p...
Background Bayesian statistics are an appealing alternative to the traditional frequentist approach ...
Thesis (Ph.D.)--University of Washington, 2021Understanding mortality risk, including its distributi...
© 2016 IEEE. Many studies have focused on prognosis for oncology patients with the following charact...
This study considered the problem of predicting survival, based on three alternative models: a singl...
AbstractPrognostic models are tools to predict the future outcome of disease and disease treatment, ...
Competing risks data are routinely encountered in various medical applications due to the fact that ...
The main focus of this Phd project is the application of Bayesian models in Biostatistics.It has bec...
AbstractDifferent survival data pre-processing procedures and adaptations of existing machine-learni...