Areas of Research Xia Jiang Associate Professor of

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Presentation transcript:

Areas of Research Xia Jiang Associate Professor of 1. Big data science: Efficient probabilistic and deep learning; New algorithms development. 2. Bayesian epistasis; Interaction and causal modeling and discovery in cancer omics 3. Precision and personalized medicine via AI-based methods Areas of Research Xia Jiang Associate Professor of Biomedical Informatics, of Intelligent Systems Program, and of Join CMU-Pitt Computational Biology Ph.D. Program 1

Detecting Genome Wide Epistasis with Efficient Bayesian Network Learning NIH R00, Role: PI. Grant Number:R00LM010822 Major Contribution We found that SNP rs6094514, which is mapped to the EYA2 gene on chromosome 20, often appeared along with GAB2 in Late Onset Alzheimer’s patients. Jiang et al. BMC Bioinformatics (2011) ;12: 89 Jiang et al. Genetic Epidemiology 2010 34(6) : 578-81 1. BN-Based model representation and definition 3. Novel efficient learning algorithms: MBS, REGAL, LEAP, and IGAIN http://en.wikipedia.org/wiki/File:Dna-SNP.svg 2. Novel score criteria: BNMBL and BNPP Up to 4 SNPs Combinations with 1001 SNPS MBS BayCom MBS took 4.1 Hours Challenge: worse than exponential model search space for genetic interactions (multi-SNPs) when learning from high dimensional data Each of the top 50 models scored by MBS contains at least one of the significant genes associated with breast cancer BayCom would take 3.71 years 2

A New Generation Clinical Decision Support System NIH/NLM R01, Role: PI. Grant Number:R01LM011663 Other ongoing research: pan cancer analyses Our CaMIL model for prediction An influence diagram (developed using Netica) Challenge 1. Learning interactive causes from datasets is important, but it is by no means a trivial task. Challenge 2. Big data driven machine learning is not yet sophisticated. A causal Pattern learned at step 1. Modeling and Discovery of Biomedical Knowledge (CCMD) from Big Data (BD2K) NIH/NLM BD2K, Role: co-investigator. Cure grant awarded by the Pennsylvania Department of Health ( PA DOH 4100070287). Role: co-investigator. 3

Long Term Goals for Jiang’s Lab Our central gist of research: informatics approach to precision medicine in cancer! 1. Continue to develop new methods for further understanding of genetic dark matter. 2. Continue to search for unknown molecular drivers for cancer. 3. Continue to challenge big data in machine learning and AI. Image source: 21 DECEMBER 2007 VOL 318 SCIENCE miRNAs have an increased prognostic value in the genomically stable iClust4 Image source: Alexandrov et al. Cell Reports 3.1 (2013): 246-259 Image source: Dvinge et al. Nature 497.7449 (2013): 378-382 4