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Research Associate (Comparative Effectiveness and Real-World Data Analytics)

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National University of Singapore (NUS)

Kent Ridge Campus

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Research Associate (Comparative Effectiveness and Real-World Data Analytics)

Research Staff

20 June 2026

Location

Kent Ridge Campus

National University of Singapore

Type

Full-time

Start Date

16 April 2026

Required Qualifications

Master’s in biostatistics, epidemiology, or related
Observational healthcare datasets experience
Causal inference & comparative effectiveness
R, Stata, SAS, or Python
Oncology data & survival analysis (advantage)

Research Areas

Comparative Effectiveness Research
Real-World Oncology Data
Multiple Myeloma
Non-Small Cell Lung Cancer
Ovarian Cancer
Health Technology Assessment
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Research Associate (Comparative Effectiveness and Real-World Data Analytics)

Job Description

Job Title: Research Associate (Comparative Effectiveness and Real-World Data Analytics)

University-Level Unit: Saw Swee Hock School of Public Health

Faculty/Department-Level Unit: Saw Swee Hock School of Public Health

Employee Category: Research Staff

Location: Kent Ridge Campus

Posting Start Date: 16/04/2026

Applications are invited for the following full-time position in the Saw Swee Hock School of Public Health:

Research Associate (Comparative Effectiveness and Real-World Data Analytics)

Position Summary
The Centre for Health Intervention and Policy Evaluation Research (HIPER) at the Saw Swee Hock School of Public Health (SSHSPH), NUS, is seeking to hire a researcher with a relevant Master’s degree to lead Phase III of the RODEO project, focusing on comparative analyses using oncology real-world data. The candidate will be responsible for designing and conducting comparative effectiveness studies across multiple myeloma, non-small cell lung cancer, and ovarian cancer using structured and processed unstructured data from electronic medical records.

The role is particularly suited to candidates with training in biostatistics, epidemiology, health services research, health economics, public health, data science, or a related field, and who have experience working with observational healthcare datasets.

Key Responsibilities:

  • Lead the design and execution of comparative effectiveness analyses using real-world oncology data
  • Develop study protocols and statistical analysis plans for observational cohort analyses
  • Apply appropriate methods to address confounding, selection bias, missing data, and other threats to internal validity in real-world studies
  • Conduct analyses using methods such as propensity score matching, inverse probability weighting, direct covariate adjustment, difference-in-differences, instrumental variables, and survival analysis
  • Perform time-to-event analyses, including overall survival and progression-related outcomes
  • Support partitioned survival analyses and other methods relevant to economic evaluation and health technology assessment
  • Work closely with clinicians, health economists, and data scientists to identify clinically relevant treatment comparisons and confounders
  • Collaborate with data engineers and analysts to ensure appropriate variable construction and dataset readiness
  • Interpret findings in the context of health technology assessment, reimbursement, and policy decision-making
  • Prepare technical reports, presentations, manuscripts, and conference abstracts
  • Ensure analyses adhere to methodological standards such as STROBE and ISPOR good practice recommendations for real-world evidence studies
  • Participate in project meetings with collaborators across NUS, NCIS, NUH, TTSH, NCCS, and other partner institutions

Requirements:

  • Experience working with large observational healthcare datasets, registries, or electronic medical records
  • Strong knowledge of causal inference and comparative effectiveness methods
  • Experience using statistical software such as R, Stata, SAS, or Python
  • Familiarity with oncology data, survival analysis, and longitudinal data analysis will be an advantage
  • Understanding of health technology assessment, outcomes research, or economic evaluation is desirable
  • Strong written and verbal communication skills
  • Ability to work independently while collaborating effectively in a multidisciplinary research team

Preferred Attributes:

  • Prior experience with real-world evidence generation in oncology
  • Familiarity with OMOP common data model, OHDSI tools, or TRUST platform datasets
  • Experience translating statistical findings into policy-relevant insights for clini

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Frequently Asked Questions

🎓What qualifications are required for the Research Associate role at NUS?

Candidates need a Master’s degree in biostatistics, epidemiology, health services research, health economics, public health, or data science. Key is experience with observational healthcare datasets, electronic medical records, and causal inference methods. Familiarity with oncology data and survival analysis is advantageous. Explore similar research assistant jobs for preparation.

🔬What are the key responsibilities in this Comparative Effectiveness role?

Lead comparative effectiveness analyses using real-world oncology data for multiple myeloma, NSCLC, and ovarian cancer. Develop study protocols, apply propensity score matching, IPW, survival analysis, and support health technology assessment. Collaborate with clinicians and prepare manuscripts adhering to STROBE and ISPOR standards. See clinical research jobs for related duties.

💻What software and technical skills are needed?

Proficiency in R, Stata, SAS, or Python for longitudinal data analysis and time-to-event analyses. Experience with OMOP common data model, OHDSI tools, or TRUST platform preferred. Strong causal inference knowledge to handle confounding and bias. Check postdoctoral research tips.

📝How to apply for this NUS Saw Swee Hock School of Public Health position?

Applications invited via NUS portals; submit by 20 June 2026. Highlight real-world evidence generation experience in oncology. Prepare CV emphasizing multidisciplinary collaboration with NCIS, NUH, etc. Review free resume templates and cover letter templates for academic jobs.

📍What is the location and employment type for this research role?

Full-time position at Kent Ridge Campus, National University of Singapore. Suited for independent workers in multidisciplinary teams. No teaching load; focus on RODEO project Phase III. Ideal for those near research jobs in Singapore.

Are there preferred attributes for oncology real-world data experience?

Prior real-world evidence in oncology, OMOP/OHDSI familiarity, and translating findings for policy/reimbursement. Strong communication for technical reports and HTA. Build skills via research assistant excellence guide.

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