Systems biology aims at holistically understanding the complexity of biological systems. In particular, nowadays with the broad availability of gene expression measurements, systems biology challenges the deciphering of the genetic cell machinery from them. In order to help researchers, reverse engineer the genetic cell machinery from these noisy datasets, interactive exploratory clustering methods, pipelines and gene clustering tools have to be specifically developed. Prior methods/tools for time series data, however, do not have the following four major ingredients in analytic and methodological view point: (i) principled time-series feature extraction methods, (ii) variety of manifold learning methods for capturing high-level view of the...
Gene expression in cells can fluctuate over time in response to internal or external stimuli. Time s...
Abstract In this work a comprehensive multi-step machine learning data mining and data visualizatio...
In this work a new clustering approach is used to explore a well- known dataset [Whitfield, M. L., S...
Systems biology aims at holistically understanding the complexity of biological systems. In particul...
Motivation: The huge growth in gene expression data calls for the implementation of automatic tools ...
Background: Unsupervised analyses such as clustering are the essential tools required to interpret t...
Summarization: Statistical evaluation of temporal gene expression profiles plays an important role i...
ABSTRACT Motivation: The huge growth in gene expression data calls for the implementation of automat...
Clustering techniques are used to arrange genes in some natural way, that is, to organize genes into...
We present a new approach to segmenting multiple time series by analyzing the dynamics of cluster re...
Gene expression data hide vital information required to understand the biological process that takes...
A k-means-type algorithm is proposed for efficiently clustering data constrained to lie on the surfa...
Background: A common approach for time series gene expression data analysis includes the clustering ...
In this work a new clustering approach is used to explore a well- known dataset [Whitfield, M. L., S...
This thesis examines methods used to cluster time-course gene expression array data. In the past dec...
Gene expression in cells can fluctuate over time in response to internal or external stimuli. Time s...
Abstract In this work a comprehensive multi-step machine learning data mining and data visualizatio...
In this work a new clustering approach is used to explore a well- known dataset [Whitfield, M. L., S...
Systems biology aims at holistically understanding the complexity of biological systems. In particul...
Motivation: The huge growth in gene expression data calls for the implementation of automatic tools ...
Background: Unsupervised analyses such as clustering are the essential tools required to interpret t...
Summarization: Statistical evaluation of temporal gene expression profiles plays an important role i...
ABSTRACT Motivation: The huge growth in gene expression data calls for the implementation of automat...
Clustering techniques are used to arrange genes in some natural way, that is, to organize genes into...
We present a new approach to segmenting multiple time series by analyzing the dynamics of cluster re...
Gene expression data hide vital information required to understand the biological process that takes...
A k-means-type algorithm is proposed for efficiently clustering data constrained to lie on the surfa...
Background: A common approach for time series gene expression data analysis includes the clustering ...
In this work a new clustering approach is used to explore a well- known dataset [Whitfield, M. L., S...
This thesis examines methods used to cluster time-course gene expression array data. In the past dec...
Gene expression in cells can fluctuate over time in response to internal or external stimuli. Time s...
Abstract In this work a comprehensive multi-step machine learning data mining and data visualizatio...
In this work a new clustering approach is used to explore a well- known dataset [Whitfield, M. L., S...