MLGG 2012 - ICML Workshop on Machine Learning in Genetics and Genomics (MLGG)
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Website icml.cc/2012/workshops/ |
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Category MLGG 2012
Deadline: May 07, 2012 | Date: June 26, 2012-July 01, 2012
Venue/Country: Edinburgh, U.K.
Updated: 2012-03-24 09:04:50 (GMT+9)
Call For Papers - CFP
The field of computational biology has seen a dramatic growth over the past few years?not only in terms of new available data, but also in new scientific questions, and new challenges for learning and inference. For instance, multiple types of large-scale (often genome-wide) datasets, such as gene expression, genotyping data, whole-genome sequences, protein-protein interactions, and protein abundance measurements, are widely available for multiple model organisms and across multiple conditions, and some of these data types are also available for large patient cohorts. Combined with appropriate statistical and computational methods for their integration, modeling, and analysis, these datasets have the potential to revolutionize our understanding of basic molecular biology and lead to better diagnosis and therapy for genetic and other diseases.However, computational approaches for analyzing and learning from these data are faced with major challenges including scalability, data heterogeneity, missing data and confounding factors to name a few. It is becoming clear that out-of-the-box computational approaches are unlikely to be applicable. For example, next generation sequencing technologies produce gigabytes of data for each sample bringing the issue of scalability to a whole new level. Data heterogeneity and unobserved confounding effects result in artifacts such as non-biological correlations between samples, giving rise to high false positive rates and complications during validation.GoalThe goal of this workshop is to present emerging genomics research questions and machine learning techniques that can address some of the challenges on the way to answering fundamental biological questions and refining our understanding of the genesis and progression of diseases.
Keywords: Accepted papers list. Acceptance Rate. EI Compendex. Engineering Index. ISTP index. ISI index. Impact Factor.
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