Postdoctoral Associate - The Getz Lab

The Broad InstituteCambridge, MA
Onsite

About The Position

Overview: The Getz Lab (at the Broad Institute and MGH) is a world-leading laboratory for cancer genome analysis. We develop highly innovative, robust, and widely-used computational methods to study the molecular basis of cancer, including genomic alterations that drive primary and resistant tumors, cell-of-origin, premalignant lesions, mutational processes, activity of different pathways, and microenvironmental changes. We then follow up key findings experimentally. While the comprehensive analysis of cancer genomes is ongoing, major barriers still exist in converting this information to patient benefit and achieving the goal of personalized medicine. Our work stands at the forefront of cancer genome science, and our research is regularly published in top-tier journals (see our work on Google Scholar and PubMed ). We are dedicated to innovating and pushing the limits of what we know and what can be known in understanding the complexities of human cancer. Environment/Lab Culture: We are an interdisciplinary group of scientists, engineers, and clinicians who work together in a mutually supportive and respectful environment. Ideas are freely shared, and contributions are highly valued. Moreover, Dr. Getz places a high priority on mentoring postdoctoral trainees to work toward achieving their career paths and goals, and his lab, as well as the environments at the Broad Institute and Massachusetts General Hospital, provide frequent and varied educational and skill-building opportunities. The lab is engaged in the larger Boston-area ecosystem and the cancer research community worldwide, and provides a vibrant research environment for your contributions to be disseminated and recognized in the field. Our ability to integrate both computational and wet-lab work enables us to address key questions at a deeper and more impactful level. Indeed, we constantly use and develop new technologies to help unlock new findings. Our ideal postdoc candidate: We are seeking a highly motivated researcher to be the computational analysis lead for projects exploring the mechanisms underlying disease initiation, progression, and/or relapse in multiple myeloma. In particular, we are seeking a postdoc to take primary leadership for analyzing spatial multi-omics data within ongoing projects studying multiple myeloma patient cohorts (e.g., spatial transcriptomics, single-cell spatial proteomics, digital pathology, etc.). These projects will be conducted in close collaboration with Dr. Irene Ghobrial’s lab, a world-leading lab in multiple myeloma research at DFCI. As a member of our team, you will collaborate with other scientists, engineers, and clinicians in a collegial work environment with an emphasis on intellectual rigor. Indeed, our collective brainpower and creativity––our best asset––creates an excellent environment for deep innovation, out-of-the-box thinking, and creative problem solving. We will teach you what you do not yet know through mentoring, peer support, and many educational opportunities (e.g., floor talks, regular meetings, boot camps, journal clubs, conferences, etc.), and we will work together to make discoveries that help answer the most challenging questions in cancer. The successful candidate will bring strong computational and statistical skills (e.g., a background in Computational Biology, Biology, Machine Learning, Statistics, Medicine, Physics, Chemistry, Engineering, Mathematics, Computer Science, or other related fields) to the lab as well as enthusiasm for learning on the job. In return, you will develop many core competencies to prepare you for the next stages of your career. Come and bring your energy, intellectual curiosity, and computational skills/talents to this world-class dynamic team!

Requirements

  • A PhD in Bioinformatics, Computer Science, Machine Learning, Engineering, Mathematics, Statistics, Physics, or a related quantitative discipline.
  • 0-1+ years of post-graduate experience.
  • Experience with computational analysis, algorithm development, and statistics.
  • Sufficient hands on experience in methods to analyze spatial multi-omic data is required; experience in analyzing data from other emerging technologies is a plus.
  • Familiarity with a wide variety of bioinformatic analyses, including analyses of data from single-cell RNA sequencing (scRNA-seq), immune BCR/TCR sequencing, and bulk- and single-cell whole-genome sequencing (WGS)
  • Proficiency in at least one modern programming language.
  • Experience with a scientific programming environment (such as Python, R, or Matlab) is preferred.
  • Demonstrated experience with conducting rigorous and reproducible research in a fast-paced environment
  • Highly collaborative, with ability able to work on projects alongside fellow bioinformaticians, wet-lab experimentalists, and clinicians.
  • Strong oral and written communication skills.
  • Fast learner, analytical thinker, creative, hands-on, team-player
  • Inclination to acquire such knowledge is imperative.

Nice To Haves

  • Background in machine learning or biology is a plus.
  • Knowledge of cancer genomics is a plus but is NOT required.

Responsibilities

  • Play a lead role in designing and executing data analysis strategies to support research projects, especially pertaining to spatial multiomics-omics data.
  • Serve as a lead in the project, driving the project's scientific vision, identifying key biological questions and spearheading the computational strategies necessary to address them.
  • Explore and develop tools for analyzing novel data types.
  • Develop new spatial and genomic analysis methodologies for integrating data and predicting tumor outcome, subtypes, molecular mechanisms, and response to therapy.
  • Conceive, implement and test statistical models; analyze data from experiments.
  • Present results to a variety of audiences, including non-computational researchers.
  • Prepare written reports (e.g., manuscripts, grants, patents) and presentations for meetings.
  • Opportunity to teach and mentor junior team members.

Benefits

  • medical, dental, vision, life, and disability insurance
  • a 401(k) retirement plan
  • flexible spending and health savings accounts
  • at least 13 paid holidays
  • winter closure
  • paid time off
  • parental and family care leave
  • an employee assistance program

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What This Job Offers

Job Type

Full-time

Career Level

Mid Level

Education Level

Ph.D. or professional degree

Number of Employees

251-500 employees

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