National University of Singapore (NUS) Jobs

National University of Singapore (NUS)

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Kent Ridge Campus

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"Research Fellow (Precision Lung Cancer Prevention)"

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Research Fellow (Precision Lung Cancer Prevention)

Research Fellow

Open until filled (expires 2026-05-16)

Location

Kent Ridge Campus, Singapore

National University of Singapore

Type

Academic / Faculty

Required Qualifications

PhD in Epidemiology, Public Health, Biostatistics, Data Science
Proficiency in R, Python, Stata
Machine Learning / AI for health data
Experience with large health datasets / EMRs

Research Areas

Precision Lung Cancer Prevention
Risk Prediction Modelling
AI / ML in Health
Cancer Epidemiology
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Research Fellow (Precision Lung Cancer Prevention)

Job Description

Research Fellow (Precision Lung Cancer Prevention)

A Research Fellow position is available at the Saw Swee Hock School of Public Health to support the Principal Investigator in research projects focused on precision lung cancer prevention and early detection, with an emphasis on risk prediction modelling using artificial intelligence and machine learning.

Major duties and responsibilities include, but are not limited to:

  • Conduct data management and analysis of large-scale datasets, including population cohorts, electronic medical records
  • Develop and evaluate risk prediction models using statistical and machine learning approaches
  • Apply AI/ML methods to improve disease risk stratification
  • Prepare research reports, conference presentations, and manuscripts for publication in peer-reviewed journals
  • Contribute to grant proposal development and research project coordination
  • Mentor graduate students and research assistants
  • Collaborate with interdisciplinary teams including epidemiologists, clinicians

Requirements

The candidate must be an independent, highly motivated, and organized researcher with strong analytical skills and a demonstrated ability to work collaboratively in interdisciplinary teams. Strong written and verbal communication skills are required, along with a record of relevant publications in peer-reviewed journals.

Excellent proficiency in the following areas is preferred:

  • Statistical programming and data analysis using R, Python, Stata, or similar tools
  • Experience with machine learning or AI methods for health data analysis
  • Experience working with large health datasets, cohort studies, or electronic medical records

Qualifications

Applicants should possess a PhD in Epidemiology, Public Health, Biostatistics, Data Science, Bioinformatics, Computer Science, or a related field.

Prior experience in risk prediction modelling, cancer epidemiology, environmental health, health economics, or machine learning applications in health research and screening policy evaluation will be an advantage.

Application

Recruitment is open immediately and will continue until the position is filled.

Interested applicants should submit:

  • Cover letter describing research interests
  • Curriculum vitae
  • Contact details of two referees

We regret that only shortlisted candidates will be notified.

More Information

Location: Kent Ridge Campus

Organization: Saw Swee Hock School of Public Health

Department: Saw Swee Hock School of Public Health

Employee Referral Eligible: No

Job requisition ID: 32119

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Frequently Asked Questions

🎓What qualifications are required for this Research Fellow position?

Applicants must hold a PhD in Epidemiology, Public Health, Biostatistics, Data Science, Bioinformatics, Computer Science, or related fields. Prior experience in risk prediction modelling, cancer epidemiology, or machine learning in health is advantageous. Check similar postdoc research fellow jobs for insights.

💻What key skills and tools are needed for this role?

Excellent proficiency in statistical programming with R, Python, Stata is preferred. Experience with machine learning / AI methods for health data, large health datasets, cohort studies, or electronic medical records is essential. Strong analytical and communication skills required. Explore research jobs requiring these skills.

🔬What are the main responsibilities of the Research Fellow?

Duties include data management and analysis of large datasets, developing risk prediction models using AI/ML, preparing publications and grants, mentoring students, and collaborating with interdisciplinary teams in precision lung cancer prevention. See detailed postdoctoral research role advice.

📝How do I apply for this Precision Lung Cancer Prevention Research Fellow job?

Submit a cover letter on research interests, CV, and contacts of two referees. Applications open immediately until filled. Only shortlisted candidates notified. Position at NUS Kent Ridge Campus. View free academic CV template and cover letter template for preparation.

🎯What is the research focus and location for this position?

Focused on precision lung cancer prevention and early detection via AI/ML risk prediction at Saw Swee Hock School of Public Health. Location: Kent Ridge Campus, Singapore. Ideal for experts in health data analysis. Browse research assistant jobs in similar areas.

Is visa sponsorship available for international applicants?

Visa sponsorship is not mentioned in the job posting. Candidates should confirm eligibility for work in Singapore independently.

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