SNU Biointelligence Lab

HyperSNP

Hypergraph Modeling for Large-Scale SNP Data Analysis

November 2007 - January 2008 Korea Centers for Disease Control and Prevention (KCDC)

HyperSNP developed a hypergraph-based computational analysis system for identifying disease risk factors from large-scale Single Nucleotide Polymorphism (SNP) data and cohort datasets. The project applied hypergraph modeling to genome-wide association studies, enabling multi-locus interaction analysis that goes beyond conventional pairwise statistical approaches.

Overview

SNPs (Single Nucleotide Polymorphisms) are the most common form of genetic variation in the human genome. Identifying which combinations of SNPs act as risk factors for complex diseases requires modeling higher-order interactions among many genetic variants simultaneously — a task that pairwise graph models cannot adequately represent.

The HyperSNP project addressed this challenge by constructing a hypergraph-based analysis framework that models multi-SNP relationships as hyperedges (edges connecting more than two nodes). The system was applied to genome-wide SNP data as well as cohort study data to discover compound genetic markers associated with disease phenotypes.

The project produced two main system components:

Research Objectives

Methodology

Expected Outcomes

Research Team

Role Name
Principal Investigator Prof. Byoung-Tak Zhang
Researcher Je-Keun Rhee (Contact)
Researcher Jung-Woo Ha
Researcher Soo-Jin Kim
Researcher Min-Su Lee

Contact: Je-Keun Rhee — Phone: +82-2-880-5890 / Fax: +82-2-883-9120

Search related publications on the Research page