This is a renewal of the R13 application to continue the very successful annual conference series on Emerging Statistical and Quantitative Issues in Genomic Research in Health Sciences, which has been hosted by the Program in Quantitative Genomics (PQG) at Harvard School of Public Health (HSPH) in the last five years and is open to the whole research community. Modern health sciences are evolving rapidly, driven in large part by the rapid advance of high- throughput biotechnology. This changing landscape has provided researchers in health sciences, especially in cancer and other chronic diseases, with rich opportunities for new discoveries using genetic information to better understand disease biology and etiology and interplay of genes and environment, and to enhance risk prediction and personalized medicine in patient care. While such an """"""""omics"""""""" era presents many exciting research opportunities, the explosion of massive information about the human genome presents extraordinary challenges in data processing, integration, analysis and result interpretation. Traditional statistical and computational techniques cannot meet these new demands. There is a critical need to discuss emerging quantitative issues at the forefront of scientific exploration, and to promote development of innovative statistical and quantitative methods to deal with massive high- throughput genomic and 'omics data in basic, population and clinical sciences. In this renewal application, we propose to continue hosting this conference series, where each conference focuses on emerging quantitative research areas of most current genomic research interest and the particular focus will evolve over time. A key feature of the conference series is to provide a timely and interactive platform to engage cross-discipline senior and junior investigators, such as statistical genetists, computational biologists, genetic epidemiologists, molecular biologists, and clinical scientists in cancer and other chronic diseases to critique existing quantitative methods, discuss in-depth emerging statistical and quantitative issues, identify priorities for future research and disseminate results. The 2011 conference is entitled ''Emerging Statistical and Quantitative Issues in Genomic Medicine."""""""" The 2012 conference is on """""""" Beyond the 1000 Genomes Project: Sequencing, Complex Traits, and Population."""""""" The Conference series is cosponsored by HSPH PQG, the Department of Biostatistics of the HSPH and the Department of Biostatics and Computational Biology of the Dana Farber Cancer Institute. Serious efforts will continue to engage junior researchers, women and minorities in Conference activities.

Public Health Relevance

The explosion of massive information about the human genome presents extraordinary challenges in data processing, integration, analysis and result interpretation. An annual conference on Emerging Statistical and Quantitative Issues in Genomic Research in Health Sciences is proposed to continue engaging cross-disciplinary quantitative and subject-matter researchers to critique existing quantitative methods, discuss in-depth emerging statistical and quantitative issues, identify priorities for future research and disseminate results in genomic research in health sciences.

Agency
National Institute of Health (NIH)
Institute
National Cancer Institute (NCI)
Type
Conference (R13)
Project #
5R13CA124365-08
Application #
8544794
Study Section
Special Emphasis Panel (ZCA1-PCRB-G (P3))
Program Officer
Dunn, Michelle C
Project Start
2006-08-01
Project End
2016-08-31
Budget Start
2013-09-01
Budget End
2014-08-31
Support Year
8
Fiscal Year
2013
Total Cost
$25,000
Indirect Cost
Name
Harvard University
Department
Biostatistics & Other Math Sci
Type
Schools of Public Health
DUNS #
149617367
City
Boston
State
MA
Country
United States
Zip Code
02115
Tsoucas, Daphne; Yuan, Guo-Cheng (2017) Recent progress in single-cell cancer genomics. Curr Opin Genet Dev 42:22-32
Yuan, Guo-Cheng; Cai, Long; Elowitz, Michael et al. (2017) Challenges and emerging directions in single-cell analysis. Genome Biol 18:84
Lin, Xihong (2007) Estimation using penalized quasilikelihood and quasi-pseudo-likelihood in Poisson mixed models. Lifetime Data Anal 13:533-44