Abstract:
Cancer classification using high-throughput mass spectrometry
data for early disease detection and prevention has recently
become an attractive topic of research in bioinformatics.
Recently, several studies have shown that the synergy of
proteomic technology and pattern classification techniques is
promising for the predictive diagnoses of several cancer
diseases. However, the extraction of some effective features
that can represent the identities of different classes plays a
critical factor for any classification problems involving the
analysis of complex data. In this paper we present the concept
of a fuzzy fractal dimension that can be utilized as a novel
feature of mass spectrometry data. We then applied vector
quantization to model the class prototypes using the fuzzy
fractal dimensions for classification. Using a simple
vector-quantization based classification rule, the overall
average classification rates of the proposed approach were found
to be superior to some other methods. In bio-imaging
classification, we applied vector quantization and Markov
modeling methods for cell-phase classification using time-lapse
fluorescence microscopic image sequences. However this method is
not always effective because cell features are treated with
equal weight of importance that may not be always true. We
proposed a subspace vector-quantization method to overcome this
drawback. The proposed method can automatically weight cell
features based on their attribute importance in fuzzy clustering
analysis. Two weighting algorithms based on fuzzy c-means and
fuzzy entropy clustering were studied, whose performances
improved the classification rates.
Brief Biography of the Speaker:
Tuan D. Pham is an Associate Professor in the School of
Mathematics, Physics, and Information Technology; and Director
of the Bioinformatics Applications Research Centre at James Cook
University. His research experience and interests are diverse
which cover image processing, pattern recognition, signal
processing, geostatistics, computational intelligence,
bioinformatics, and biomedical informatics. He has contributed
pioneering research work on fuzzy finite element analysis of
engineering problems; and applications of computational
prediction models for disease classification using bioimaging,
microarray gene-expression and mass-spectrometry data.
Dr. Pham has published two research books, more than 150 papers
in edited books, peer-reviewed journals and conference
proceedings. He has served as member of Editorial Board of
Pattern Recognition, Bioinformatics and Biomedical Imaging Book
Series, Editor-in-Chief of WSEAS Transactions on Biology and
Biomedicine, international technical committees of numerous
international conferences, and regular reviewer of many
high-quality journals in the areas of pattern recognition,
machine learning, bioimaging, bioinformatics, neuroscience,
biomedical informatics, signal processing, and computational
intelligence.