Postdoctoral Scholar - Flavivirus epidemiology and computational biology (collaboration between UC Berkeley & NIH)

Location: 
University of California, Berkeley
185 Li Ka Shing Center, 1951 Oxford Street
Berkeley, CA 94720
United States
Job Posted Date: 
March 23, 2021
Opportunities: 
Postdoc Positions
Population: 
Global Health

We are seeking a postdoctoral scholar to develop and apply various computational biology, epidemiological, and machine learning approaches to study natural and vaccine-induced dengue humoral and cellular immunity, with a focus on correlates of protection and pathogenesis against dengue as well as dynamics of immunity over time. This position will be part of an ongoing NIH-funded P01 Program Project to investigate immunity following dengue virus natural infections and vaccination. Collaborating labs will lead Projects as part of the P01, each focused on various aspects of adaptive immunity, including antibody-antigen specificity, antibody Fc features and functionality, and B and T cell characterization. The postdoctoral scholar will work closely with the Projects to support analyses of these datasets and lead cross-Project and cohort analyses to help address unifying themes of the P01.

The postdoc will be hired as part of Dr. Eva Harris’s lab in the Division of Infectious Diseases and Vaccinology, School of Public Health, University of California, Berkeley (https://www.harrisresearchprogram.org/). Dr. Harris is the Principal Investigator of the P01 Program Project and leader of the P01 Project focused on natural B-cell mediated dengue virus immunity. The postdoc will be based in Viral Epidemiology and Immunity Unit, led by Dr. Leah Katzelnick, in the Laboratory of Infectious Diseases, National Institute of Allergy and Infectious Diseases, National Institutes of Health (https://www.niaid.nih.gov/research/leah-c-katzelnick-phd-mph). Dr. Katzelnick is leader of the Computational Biology and Statistical Modeling Core of the P01 Program Project.

Job Requirements: 

Candidates holding a M.D. and/or Ph.D. who have experience in computational biology (especially systems immunology), epidemiology, biostatistics, and/or bioinformatics are strongly encouraged to apply. Candidates should ideally have no more than three years of postdoctoral experience in directly related fields of research. Knowledge of flavivirus biology, serology, and epidemiology is preferred.

How to Apply: 

The position is available starting in the Spring/Summer 2021. Review of applications will begin immediately. Applications are welcome until the position is filled. Interested candidates should submit a 1) curriculum vitae (CV), 2) cover letter or statement of research interests, 3) publication or manuscript the candidate has written, and 4) be prepared to submit 2-3 letters of recommendation/references upon request. Applications should be emailed to: Dr. Leah Katzelnick ([email protected]) and Dr. Eva Harris ([email protected]).

Location: 
San Francisco
Greater Bay Area
Peninsula
California
National
Body: 
Hiring institution: Dr. Eva Harris, Division of Infectious Diseases and Vaccinology, School of Public Health, University of California, Berkeley. UC Berkeley is an equal opportunity employer.

Work Location: Viral Epidemiology and Immunity Unit, Laboratory of Infectious Diseases, US NIH, Bethesda, MD.

Additional details about the aims of the Computational Biology and Statistical Modeling Core: We will help address key themes of the P01 by applying unifying computational biology, statistical, and machine learning approaches to study natural and vaccine-induced dengue humoral and cellular immunity. First, will conduct epidemiological analyses of the natural dengue virus (DENV) infection and dengue vaccine cohorts to inform the immunological studies proposed by collaborating projects in the P01. We will work closely with the Nicaragua Pediatric Dengue Cohort Study and UC Berkeley to investigate dengue incidence before and after the introduction of Zika as well as how changing DENV transmission intensity affects dengue disease severity. For the Cebu Dengvaxia® cohort, we will estimate DENV infection and dengue disease incidence stratified by baseline DENV serostatus and vaccination history to support the immune correlates studies proposed by UNC. We will also compare these two pediatric cohorts to understand how geography, DENV transmission intensity, ZIKV infection history, and serotype prevalence affect dengue disease. Second, we will support each collaborating group individually and conduct cross-Project analyses to identify immune markers that correlate with protection against symptomatic dengue and pathogenesis of severe dengue disease. This work encompasses immune correlates of natural and vaccine-induced DENV immunity. We will work with each Project to design case-control studies to test how DENV-specific serum antibody, B cell, and T cell characteristics predict distinct clinical outcomes. We will analyze the multi-dimensional datasets produced by the Projects to classify clinical outcomes using straightforward machine learning methods such as generalized linear models, flexible approaches such as random forests, and methods that are robust to outliers such as support vector machines, all with regularization to reduce model complexity. Third, we will support the Projects in studying children who have experienced natural primary and secondary DENV infections to identify immune markers that predict maintenance anti-DENV immunity. We will use regression models to determine how antibody and helper T cell characteristics measured soon after infection predict both the magnitude and the durability of cross-reactive and type-specific antibody responses. We will then incorporate the predictive immune markers into linear and more flexible mixed-effects regression models to fit antibody dynamics following primary and secondary DENV infection. Parallel analyses will be conducted for baseline seronegative and seropositive vaccine recipients, enabling direct comparison of the determinants of immune longevity following natural DENV infection and vaccination. We also compare the systems serology measures performed on post-primary, pre-secondary, and post-secondary natural DENV infection samples in the same individuals to test for changes in antibody antigen recognition and Fc effector characteristics. Collectively, the Computational Biology and Statistical Modeling Core will work toward the overarching P01 goal to identify predictive and mechanistic anti-DENV immune characteristics that provide long-term protection against dengue disease.