##Data Science Seminar##\\ Hosted by the Department of Mathematics and Statistics
* Date: Tuesday, November 28, 2023
* Time: 12:00-1:00 EST
* Room: zoom
* Speaker: Dr. Li Zhang (University of California San Francisco)
* Title: NAIR Software: Unlocking the Immune System's Secrets by Network Analysis and Advanced Machine Learning.
**//Abstract//**
\\
Immunotherapy has revolutionized cancer treatment, which depends on the immune system to
mediate responses. Significant advances have been made through high-dimension sequences to
dissect the immune responses in patients. T cells play a vital role in our body's immune defence,
combating cancer. Advanced sequencing technology allows us to delve deeper T-cell receptor
(TCR) repertoire and gene expression. To better understand the adaptive immune system, we
have developed the Network Analysis of Immune Repertoire (NAIR) software, utilizing cutting-
edge statistical approaches and machine learning tools. NAIR constructed sequence networks,
and more importantly, it can identify critical disease-associated TCR clusters and shared public
TCR clusters across multiple samples. This reveals potential disease-specific signatures, paving
the way for targeted therapies. NAIR accommodates both bulk and single-cell sequencing data,
unravelling insights at cell level. Expanding NAIR's capabilities, we've integrated single-cell
gene expression data using a Graph deep learning model, offering unprecedented insights into T
cell functionality. Additionally, NAIR employs an innovative technique to predict binding
peptides by integrating TCR sequence vectorization, V/J gene and HLA genotype in a deep
learning framework. Through network analysis, advanced statistics, and deep learning, NAIR
represents a powerful platform to unlock the complex interplay between adaptive immune
system, disease progression, and clinical outcomes, advancing our understanding of immune
system dynamics.. \\
Biography of the speaker: Dr. Li Zhang is a Professor of Biostatistics in the Department of Medicine, Division of Hematology and Oncology, with a joint appointment in the Department of
Epidemiology and Biostatistics at the University of California San Francisco (UCSF).
She obtained her Ph.D. in Statistics from the University of Florida, and before joining
UCSF, she was an Assistant Professor at the Cleveland Clinic. She has extensive
experience in applying statistics and developing advanced approaches in biomedical
research and expertise in cancer research with high-throughput sequencing data
analysis. She has published more than 150 papers and designed more than 60 Phase
I and II clinical trial studies. Dr. Zhang also serves on Global Action Plan 6 Project for
Movember Foundation as the UCSF site PI. She has been or is on multiple NIH, DOD,
and foundation grants as a co-Investigator. Her research interest focuses on
Immuno-informatics, and she is currently the PI on NIH R21 and R01 projects
focusing on cancer Immunoinformatics. In addition to regularly teaching
Biostatistics and serving on students' master committee at UCSF, she leads the
UCSF's Fellowship Advancement and Skills Training in Clinical Research (FASTCaR).
She also initiated and organizes the annual UCSF cancer center Biostatistics
workshop, which aims to provide education to scientists, post-docs, and technicians.
Dr. Zhang is very active member of professional community, she was the president
of the San Francisco Bay Area Chapter of American Statistical Association (SFASA),
now serves the Director of Education in SFASA. She is also a member of the
Pathways To Promotion Committee of ASA Statistical Consulting Section. She received
outstanding services award from ASA in 2021.