abstract: Random forest (RF) is a popular and powerful technique nowadays. It can be used for classification, regression and unsupervised clustering. In its original form introduced by Leo Breiman, RF is used as a predictive model to generate predictions for new observations. Recent researches have proposed several methods based on RF for feature selection and for generating prediction intervals. However, they are limited in their applicability and accuracy. In this dissertation, RF is applied to build a predictive model for a complex dataset, and used as the basis for two novel methods for biomarker discovery and generating prediction interval. Firstly, a biodosimetry is developed using RF to determine absorbed radiation dose from gene e...
Biomarker signature discovery remains the main path to develop clinical diagnostic tools when the bi...
Metabolomics is the science of comprehensive evaluation of changes in the metabolome with a goal to ...
Advances in high-throughput genomic and proteomic technology have led to a growing interest in cance...
The Random Forest (RF) algorithm by Leo Breiman has become a standard data analysis tool in bioinfo...
AbstractBiomarker development for prediction of patient response to therapy is one of the goals of m...
In the Life Sciences ‘omics ’ data is increasingly generated by different high-throughput technologi...
BACKGROUND: Biomarker identification is one of the major and important goal of functional genomics a...
AbstractRandom forests (RF) is a popular tree-based ensemble machine learning tool that is highly da...
Random forest (RF) is a widely used machine learning method that shows competitive prediction perfor...
Objective: Genomic profiling, the use of genetic variants at multiple loci simultaneously for the pr...
Machine learning approaches are heavily used to produce models that will one day suppor...
As technology improves, the field of biology has increasingly utilized high performance computing te...
BACKGROUND AND GOAL The Random Forest (RF) algorithm for regression and classification has considera...
Machine learning approaches are heavily used to produce models that will one day suppor...
The ultimate objective of radiation research is to link human diseases with the altered gene express...
Biomarker signature discovery remains the main path to develop clinical diagnostic tools when the bi...
Metabolomics is the science of comprehensive evaluation of changes in the metabolome with a goal to ...
Advances in high-throughput genomic and proteomic technology have led to a growing interest in cance...
The Random Forest (RF) algorithm by Leo Breiman has become a standard data analysis tool in bioinfo...
AbstractBiomarker development for prediction of patient response to therapy is one of the goals of m...
In the Life Sciences ‘omics ’ data is increasingly generated by different high-throughput technologi...
BACKGROUND: Biomarker identification is one of the major and important goal of functional genomics a...
AbstractRandom forests (RF) is a popular tree-based ensemble machine learning tool that is highly da...
Random forest (RF) is a widely used machine learning method that shows competitive prediction perfor...
Objective: Genomic profiling, the use of genetic variants at multiple loci simultaneously for the pr...
Machine learning approaches are heavily used to produce models that will one day suppor...
As technology improves, the field of biology has increasingly utilized high performance computing te...
BACKGROUND AND GOAL The Random Forest (RF) algorithm for regression and classification has considera...
Machine learning approaches are heavily used to produce models that will one day suppor...
The ultimate objective of radiation research is to link human diseases with the altered gene express...
Biomarker signature discovery remains the main path to develop clinical diagnostic tools when the bi...
Metabolomics is the science of comprehensive evaluation of changes in the metabolome with a goal to ...
Advances in high-throughput genomic and proteomic technology have led to a growing interest in cance...