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National University of Singapore (NUS)

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Kent Ridge Campus

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"Research Fellow (AI Powered Cardiac Digital Twin)"

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Research Fellow (AI Powered Cardiac Digital Twin)

Research Fellow

2026-05-01

Location

Kent Ridge Campus

National University of Singapore (NUS)

Type

Fixed-term contract

Required Qualifications

PhD in Biomedical Engineering, Computer Science, Computational Physics, or related
Experience in cardiac simulation (EP, mechanics, multi-scale)
Programming: Python, C++, MATLAB
FEM solvers, PINNs, cardiac software
First-author publications in top journals
Strong communication skills

Research Areas

AI-driven cardiac digital twins
Multi-modal data fusion (imaging, ECG, EHR)
Electrophysiological (EP) modeling
Biomechanical simulations
Physics-informed neural networks (PINNs)
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Research Fellow (AI Powered Cardiac Digital Twin)

Job Description

We aim to develop advanced AI-driven models for constructing cardiac digital twins, personalized virtual heart models that integrate multi-modal patient data, including medical imaging, electrocardiograms (ECG), and electronic health records. Our research focuses on high-fidelity cardiac simulations, including electrophysiological (EP) modeling to study arrhythmias and electrical conduction abnormalities, as well as biomechanical simulations to analyze cardiac deformation and hemodynamics. By combining AI techniques with computational cardiac modeling, we seek to uncover mechanistic insights into heart diseases, enabling more precise diagnosis, risk stratification, and personalized treatment strategies. This research sits at the intersection of AI and cardiac sciences, pushing the boundaries of digital twin technology to revolutionize patient-specific simulations. We will collaborate with a multi-disciplinary team of experts from NUS, University of Oxford, University of London, etc, fostering a cutting-edge research environment that bridges AI, medical imaging, and computational cardiology.

The selected candidate is required to aid in

  • Developing and validating novel multi-modal AI frameworks for integrated cardiac analysis, fusing imaging, electrophysiological, biomechanical, and clinical data.
  • Designing, implementing, and benchmarking deep learning models for cardiac mesh reconstruction, segmentation, and functional simulation (e.g., from cine MRI, CT, or echocardiography).
  • Advance physics-informed or hybrid AI models for cardiac biomechanics and electrophysiology simulation.
  • Collaborate with clinicians and data scientists to translate AI-driven tools into actionable clinical insights and workflows.
  • Publish research in top-tier journals and conferences and contribute to open-source software in cardiac digital health.

Qualifications

  • Possess a PHD degree in biomedical engineering, computer science, computational physics, applied mathematics, or a related field.
  • Strong self-motivation and enthusiasm for AI applications in healthcare, particularly in cardiac digital twins.
  • Extensive experience in cardiac simulation and modeling, such as electrophysiological (EP) simulations, cardiac mechanics, or multi-scale heart modeling.
  • Strong problem-solving skills and a proven research track record, demonstrated by first-author publications in top-tier journals and conferences.
  • Proficiency in programming (Python, C++, MATLAB) and familiarity with computational frameworks for cardiac modeling (e.g., FEM-based solvers, PINNs, or cardiac electrophysiology software).
  • Excellent communication skills, including scientific writing and presentations.
  • Open to fixed-term contract.

More Information

Location: Kent Ridge Campus

Organization: College of Design and Engineering

Department: Biomedical Engineering

Employee Referral Eligible: No

Job requisition ID: 31815

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Frequently Asked Questions

🎓What qualifications are required for this Research Fellow position?

Candidates must possess a PhD in biomedical engineering, computer science, computational physics, applied mathematics, or related fields. Extensive experience in cardiac simulation (e.g., EP simulations, cardiac mechanics) and proficiency in Python, C++, MATLAB are essential, along with a proven track record of first-author publications. Strong self-motivation for AI in healthcare is key. Review postdoctoral research tips and research jobs for preparation.

🔬What are the main responsibilities in developing AI-powered cardiac digital twins?

Key duties include developing multi-modal AI frameworks for fusing imaging, EP, biomechanical, and clinical data; implementing deep learning models for cardiac mesh reconstruction and segmentation from MRI/CT; advancing physics-informed AI models; collaborating with clinicians; and publishing in top journals. Contribute to open-source cardiac digital health tools. Explore clinical research jobs for similar roles.

📅What is the application deadline and process for this NUS position?

Applications are open until May 1, 2026 (Job ID: 31815). Apply via the official link in the posting. Prepare a CV highlighting cardiac modeling experience and publications. Employee referral is not eligible. Check free resume templates and postdoc jobs for guidance.

🌍What collaborations and location details are involved?

Located at Kent Ridge Campus, NUS College of Design and Engineering, Department of Biomedical Engineering. Collaborate with multi-disciplinary teams from NUS, University of Oxford, University of London in AI and cardiac sciences. Ideal for those interested in research assistant jobs in higher ed.

⚙️Is this a fixed-term role and what skills are prioritized?

Yes, open to fixed-term contract. Prioritize problem-solving, scientific writing, and familiarity with computational frameworks like FEM solvers, PINNs, or cardiac EP software. Enthusiasm for personalized heart models and clinical translation is crucial. See research assistant advice.

💡What research impact can I expect from this cardiac digital twin role?

Advance precise diagnosis, risk stratification, and personalized treatments via high-fidelity simulations at the intersection of AI and computational cardiology. Publish in top-tier venues and contribute to open-source software. Aligns with faculty research jobs.

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