Download:
by Michael May, George Potamias, Stefan Rüping
http://www.stefan-rueping.de/publications/may_etal_2006a.pdf
Add To MetaCart
Abstract:
Abstract. Knowledge discovery in clinico-genomic data is a task that requires to integrate not only highly heterogeneous kinds of data, but also the requirements and interests of very different user groups. Technologies of grid computing promise to be an effective tool to combine all these requirements into a single architecture. In this paper, we describe scenarios and future research directions related to grid-based knowledge discovery in clinico-genomic data, and introduce the approach taken by the recently launched ACGT project 3. The whole endeavor is considered in the context of biomedical informatics research and aims towards the realization of an integrated and grid-enabled biomedical infrastructure. The presented integrated clinico-genomics knowledge discovery (ICGKD) scenario and its process realization is based on a multi-strategy data-mining approach that seamlessly integrates three distinct data-mining components: clustering, association rules mining, and feature-selection. Preliminary experimental results are indicative of the rational and reliability of the approach. 1
Citations
|
1196
|
Data Mining: Practical machine learning tools and techniques
– Witten, Frank
- 2005
|
|
854
|
Cluster analysis and display of genome-wide expression patterns
– Eisen, Spellman, et al.
- 1998
|
|
225
|
Eds.), The Grid: Blueprint for a New Computing Infrastructure
– Foster, Kesselman
- 1998
|
|
173
|
Core Team: R: A Language and Environment for Statistical Computing. 2006 [http://www.R-project.org]. R Foundation for Statistical Computing
– Development
|
|
86
|
et al. Molecular Classification of Cancer: Class Discovery and Class Prediction by Gene Expression
– Golub
- 1999
|
|
59
|
Eisen et al. Distinct types of diffuse large B-cell lymphoma identified by gene expression profiling
– Alizadeh, B
|
|
20
|
et al. Broad patterns of gene expression revealed by clustering analysis of tumor and normal colon tissues probed by oligonucleotide arrays. Proc Natl Acad Sci USA1999;96:6745–50
– Alon, Barkai, et al.
|
|
14
|
K-means clustering algorithm for categorical attributes
– GUPTA, RAO, et al.
- 1999
|
|
9
|
Genomic medicine and the future of health care
– Sander
- 2000
|
|
6
|
An alternative extension of the kmeans algorithm for clustering categorical data
– SAN, HUYNH, et al.
|
|
4
|
An infrastructure for Integrated Electronic Health Record services: the role of XML
– unknown authors
- 2001
|
|
4
|
et al.: Gene expression profiling predicts clinical outcome of breast cancer. Nature 415
– Veer, Dai, et al.
- 2002
|
|
3
|
V.: Gene Selection via Discretized GeneExpression Profiles and Greedy Feature-Elimination. LNAI 3025
– Potamias, Koumakis, et al.
- 2004
|
|
3
|
Supporting Clinico-Genomic Knowledge Discovery: A Multi-strategy Data Mining Process
– Kanterakis, Potamias
- 2006
|
|
2
|
et al.: Synergy between medical informatics and bioinformatics: facilitating genomic medicine for future health care
– Martin-Sanchez
- 2004
|
|
2
|
W.: A service-centric perspective for data mining in complex problem solving environments
– Stankovski, May, et al.
- 2004
|
|
2
|
V.: Mining XML Clinical Data: The HealthObs System. Ingenierie des systems d’information, special session: Recherche, extraction et exploration d’information 10(1
– Potamias, Koumakis, et al.
- 2004
|
|
1
|
M.L.: Conflicts of interest in translational research
– Parks, Disis
- 2004
|
|
1
|
A.: Building a European Biomedical Grid
– Tsiknakis, Kafetzopoulos, et al.
- 2006
|
|
1
|
D.: Advancing Clinico-Genomic Research Trials via Integrated Knowledge Discovery Operations. In: MIE2006, (poster presentation
– Potamias, Tsiknakis, et al.
- 2006
|