Head of Computational Biology & Human Genetics - Innovative Research Environment (Hiring Immediately)

apartmentTakeda Pharmaceutical placeBoston scheduleFull-time calendar_month 

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Job Description

Objective / Purpose:

This leadership role is pivotal in driving target identification and validation, biomarker discovery, and translation into the clinic, spanning neuroscience, oncology, gastroenterology and inflammation therapeutic areas. This role is responsible for leading a global team that leverages cutting-edge computational biology and AI/ML techniques to rigorously identify and evaluate disease-target-biomarker relationships and utilize human genetics to derive novel insights for drug discovery, indication expansion, and safety assessments.

Accountabilities:

  1. Leadership and Team Management
  • Establish the Computational Biology & Human Genetics strategy and goals
  • Lead a dynamic team of ~30 computational biologists, statistical geneticists, and data scientists to accelerate Takeda’s drug discovery and development pipeline
  • Provide scientific leadership to ensure that Takeda remains at the forefront of science and methodology in computational biology and genetics
  • Foster a culture of high-performance and growth, through mentoring and career development
  • Drive deep cross-functional collaboration with other computational science and R&D teams (e.g., discovery biology, screening and validation, pre-clinical sciences, translational medicine and biomarker teams, computational chemistry, quantitative sciences, therapeutic area units and engineering)
  1. Target Identification & Validation
  • Lead efforts from a computational systems biology and statistical genetics perspective to discover and validate targets across disease areas, with an emphasis on integrating genetic, multi-omic, and functional genomic data
  • Lead -omic data strategies to further establish disease knowledgbase across TAs via internal cross-functional and external collaborations
  • Work closely with target screening and validation teams to i) rapidly iterate between experimentation and analysis, and ii) systematically translate preclinical models to human disease endpoints
  • Apply cutting-edge AI/ML methods to identify novel therapeutic targets by analyzing -scale genomic and patient-derived data
  • Oversee the application of human genetic evidence to validate disease mechanisms and prioritize targets for drug development
  1. Biomarker Discovery & Clinical Translation
  • Drive the discovery and refinement of biomarker-disease-target relationships, ensuring that findings are actionable and translatable to the clinic
  • Work closely with translational and clinical teams to ensure that computational insights inform patient selection, indication expansion, biomarker identification, and development of surrogate endpoints of clinical efficacy
  1. AI/ML & Cutting-Edge Computational Approaches
  • Lead the integration of AI/ML techniques and multi-modal data analysis in the discovery process to uncover novel insights into disease mechanisms, biomarker identification, and target refinement, as well as systematically evaluate and prioritize targets-indications.
  • Collaborate with informatics/IT and other computational science teams to enhance computational infrastructure, ensuring scalability and effectiveness of data processing and modeling efforts
  • Apply multi-omics integration (e.g., genomics, proteomics, transcriptomics), multi-modal and systems biology approaches to provide holistic insights into disease biology
  1. Human Genetics & Data Integration
  • Utilize human genetics data to guide the identification of novel therapeutic targets, inform indication expansion, and assess the impact of genetic variations on drug safety and efficacy
  • Oversee the integration of genetic association studies (e.g., GWAS) with clinical datasets to identify potential targets and biomarkers for personalized medicine
  • Work with clinical and preclinical teams to evaluate genetic risk factors and their implications for target selection and patient segmentation in clinical trials
  1. Strategic Oversight & Cross-Functional Collaboration
  • Partner with senior leadership to define and execute strategic goals for the computational biology and human genetics teams, ensuring alignment with broader company objectives
  • Collaborate with other departments (e.g., preclinical & translational sciences, therapeutic area units, global advanced platform, and drug discovery units) to ensure that insights from computational biology and genetics are effectively integrated into drug discovery programs
  1. External Collaborations & Innovation
  • Identify and foster partnerships with academic institutions, biotechnology companies, and technology providers to leverage impactful data sets and cutting-edge scientific and technological developments
  • Lead the evaluation and integration of emerging technologies and methodologies to enhance team capabilities

Education & Competencies (Technical and Behavioral):

  • PhD in Computational Biology, Bioinformatics, Human Genetics, Genomics, or related fields.
  • 15 years of experience in the pharmaceutical or biotechnology industry, with a strong track record in computational biology, human genetics, or genomic medicine
  • Experience in leading interdisciplinary teams in a large-scale research setting, with strong management and mentoring skills
  • Expertise in AI/ML applications in drug discovery and biomarker development
  • In-depth knowledge of transcriptomic (bulk, single cell, spatial) and proteomic approaches and state-of-the-art analytic methodologies including multi-omic/modal data integration
  • In-depth knowledge of genetic data analysis, including GWAS, whole-genome sequencing, genetic risk modeling, and multi-omics integration
  • Strong background in target identification, biomarker discovery, and clinical translation, with a focus on therapeutic development
  • Demonstrated ability to collaborate cross-functionally, with experience in working with clinical teams and translating computational findings into actionable clinical insights
  • Excellent communication skills, with the ability to present complex scientific concepts to non-scientific stakeholders and senior leadership

Takeda Compensation and Benefits Summary

We understand compensation is an important factor as you consider the next step in your career. We are committed to equitable pay for all employees, and we strive to be more transparent with our pay practices.

For Location:

Boston, MA

U.S. Base Salary Range:

$205,100.00 - $322,300.00

The estimated salary range reflects an anticipated range for this position. The actual base salary offered may depend on a variety of factors, including the qualifications of the individual applicant for the position, years of relevant experience, specific and unique skills, level of education attained, certifications or other professional licenses held, and the location in which the applicant lives and/or from which they will be performing the job.

The actual base salary offered will be in accordance with state or local minimum wage requirements for the job location.

U.S. based employees may be eligible for short-term and/ or long-term incentives. U.S. based employees may be eligible to participate in medical, dental, vision insurance, a 401(k) plan and company match, short-term and long-term disability coverage, basic life insurance, a tuition reimbursem

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