Statistical Methodology- Summer 2026 Intern
Company: Sanofi
Location: Cambridge
Posted on: January 5, 2026
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Job Description:
Job Description Job Title: Summer 2026 Intern - Statistical
Methodology Location: Cambridge, MA About the Job Are you ready to
shape the future of medicine? The race is on to speed up drug
discovery and development to find answers for patients and their
families. Your skills could be critical in helping our teams
accelerate progress. We are seeking a motivated and intellectually
curious PhD-level intern in Biostatistics or a related quantitative
discipline for a 12-week summer internship in 2026. This internship
will focus on statistical challenges and advanced methodologies in
gene therapy clinical trials, a rapidly evolving field with unique
regulatory and methodological considerations. The intern will
engage in literature review, case study analysis of an FDA or
EMA-approved gene therapy, and exploration of advanced statistical
techniques relevant to rare disease and small population settings.
This is a hands-on role offering the opportunity to contribute to
internal knowledge and potentially influence future statistical
strategies in regulatory trial design. The position is ideal for a
PhD student seeking exposure to real-world problems at the
interface of innovation, regulatory science, and advanced
methodology. We are an innovative global healthcare company with
one purpose: to chase the miracles of science to improve people’s
lives. We’re also a company where you can flourish and grow your
career, with countless opportunities to explore, make connections
with people, and stretch the limits of what you thought was
possible. Ready to get started? Main Responsibilities: - Conduct a
structured literature review on statistical challenges and
solutions in gene therapy clinical trials (e.g., small sample
sizes, external control borrowing, long-term efficacy modeling). -
Perform an in-depth case study analysis of a gene therapy approved
by the FDA or EMA, including trial design, statistical strategy,
and regulatory feedback. - Explore one or more advanced statistical
methodologies, such as: - - Bayesian borrowing and hierarchical
models - External/synthetic control arm methodology - Survival
extrapolation or longitudinal modeling - Propensity score or
indirect comparison (e.g., MAIC/STC) - Implement methods in R
and/or SAS with support from the team. - Participate in weekly
check-ins to present findings and get feedback. - Prepare the
statistical methodology paper and present a final deliverable
(slide deck technical memo) summarizing literature review, case
study insights, and methodology exploration. About You Basic
Qualifications: - Currently enrolled and pursuing a PhD program in
Biostatistics, Statistics, or a related field - Completion of at
least 3 years of doctoral-level coursework - Experience with and
proficient in R and/or SAS programming - Must be able to relocate
to the office location and work 40hrs/week, Monday-Friday, for the
full duration of the co-op/internship - Must be permanently
authorized to work in the U.S. and not require sponsorship of an
employment visa (e.g., H-1B or green card) at the time of
application or in the future. Students currently on CPT, OPT, or
STEM OPT usually require future sponsorship for long term
employment and do not meet the requirements for this program unless
eligible for an alternative long-term status that does not require
company sponsorship ? Preferred Qualifications: - Familiarity with
one or more of the following areas is a plus: - Rare disease
trials, such as: - Understanding of the unique challenges in rare
disease clinical development, e.g., the small and heterogeneous
patient populations, limited historical data, regulatory pathways
(e.g., FDA/EMA accelerated approval, orphan drug designation), and
innovative trial designs (adaptive designs,
basket/umbrella/platform trials). - Experience with endpoints
suited for rare conditions, natural history studies,
external/historical controls, and strategies for patient
recruitment and retention in ultra-rare settings is highly valued.
- Bayesian statistics, such as: - Understanding how Bayesian
inference is applied in gene therapy trials to address uncertainty
with small sample sizes, long-term follow-up, and rare-event safety
signals. - Knowledge of Bayesian methods for clinical trial design
and analysis, including borrowing from historical/external
controls, hierarchical models for small subgroups, and dynamic
borrowing frameworks (e.g., power priors, commensurate priors). -
Familiarity with Bayesian adaptive designs (dose-escalation,
futility/efficacy monitoring), posterior probability–based decision
rules, and predictive probability methods to support interim
decision-making. - Strong understanding of clinical trial
fundamentals and statistical inference - Strong communication
skills and ability to synthesize technical content -
Self-motivated, collaborative, and intellectually curious Why
Choose Us? - Bring the miracles of science to life alongside a
supportive, future-focused team.?? - Discover endless opportunities
to grow your talent and drive your career, whether it’s through a
promotion or lateral move, at home or internationally.?? - Enjoy a
thoughtful, well-crafted rewards package that recognizes your
contribution and amplifies your impact.? - Impactful Work:
Contribute to advancing statistical methodologies that will support
the development of innovative therapies in rare diseases. - Global
Leadership: Be part of Sanofi, a leading global biopharmaceutical
company with a strong commitment to scientific excellence and
regulatory innovation. - Collaborative Environment: Work alongside
experienced statisticians in a supportive and intellectually
stimulating setting. - Professional Development: Gain hands-on
experience in regulatory science, statistical programming (R/SAS),
and advanced methodologies used in real-world clinical trials. -
Mentorship & Learning: Receive personalized mentorship and weekly
feedback to help you grow both technically and professionally. -
Cutting-Edge Focus: Explore high-impact statistical problems in
gene therapy trials, such as Bayesian methods, external control
borrowing, and long-term outcome modeling. - Make a Difference:
Help shape the future of statistical innovation in healthcare and
contribute to improving the lives of patients worldwide. Sanofi
Inc. and its U.S. affiliates are Equal Opportunity and Affirmative
Action employers committed to a culturally diverse workforce. All
qualified applicants will receive consideration for employment
without regard to race; color; creed; religion; national origin;
age; ancestry; nationality; marital, domestic partnership or civil
union status; sex, gender, gender identity or expression;
affectional or sexual orientation; disability; veteran or military
status or liability for military status; domestic violence victim
status; atypical cellular or blood trait; genetic information
(including the refusal to submit to genetic testing) or any other
characteristic protected by law. GD-SA ? LI-SA LI-Onsite vhd
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Keywords: Sanofi, Nantucket , Statistical Methodology- Summer 2026 Intern, Science, Research & Development , Cambridge, Massachusetts