Master of Science in Artificial Intelligence in Medicine 

Lee Kong Chian School of Medicine, Nanyang Technological University offers a stackable postgraduate programme in Artificial Intelligence in Medicine, including a Graduate Certificate, a FlexiMasters pathway, and a full Master of Science (MSc) degree. The programme is designed to integrate cutting-edge AI technologies with medical science, drawing on NTU’s strengths in both medicine and engineering. Through taught modules, project work, and clinical case-studies, students will gain both the theoretical foundations and the practical experience needed to develop, deploy, and evaluate AI tools in healthcare settings.

This programme is ideal for two main groups: (a) healthcare professionals—such as doctors, nurses, public health specialists—who want to deepen their ability to understand, use, and supervise AI in clinical or policy settings; and (b) engineers, data scientists, computer scientists who seek to specialise in healthcare applications of AI, and need grounding in clinical workflow, regulatory & ethical concerns, and collaboration with medicine. Tracks can be tailored to match prior experience: those from clinical backgrounds may focus more on healthcare systems, ethics, and implementation, while those from technical backgrounds may dive deeper into algorithm development, machine learning, and data engineering.

Graduates of the MSc AI in Medicine will be well-positioned for a range of roles at the interface of AI and healthcare. Possible career paths include clinical AI specialist, data scientist in health tech, medical device / diagnostics innovation, healthcare policy & regulation, research roles (e.g., academic, translational or clinical research), or roles in startups and industry deploying AI for patient care, medical imaging, digital health, epidemiology, or precision medicine. Additionally, the programme provides a strong foundation for further study such as PhD work in AI, biomedical informatics, or related interdisciplinary fields.

Artificial intelligence in the Lee Kong Chian School of Medicine

Lee Kong Chian School of Medicine at Nanyang Technological University is a forward-looking medical school embedded in a technological university environment. LKCMedicine is committed to integrating high-quality medical training, research and innovation, and translating biomedical discovery into clinical impact. Its culture is one of interdisciplinarity: medicine, engineering, data science, ethics, and health systems all work cooperatively to tackle real-world health challenges. Within LKCMedicine, the Data Science & Artificial Intelligence (DSAI) programme is dedicated to unlocking the potential of biomedical data using advanced analytics and state-of-the art AI methods. DSAI works across a variety of life sciences and medical research areas, focusing on problems such as data integration, high-dimensional data, explainable AI, medical imaging analytics, and other domains where large or complex datasets occur.

To help translate research into practice and accelerate AI adoption in healthcare, LKCMedicine in partnership with NHG Health has established the Centre of AI in Medicine (C-AIM). Launched in September 2024, C-AIM brings together over a hundred researchers and clinicians, as well as academic and industry partners (locally and internationally), to work on priority clinical domains including mental health, elderly frailty, medical imaging, and cancer screening.

C-AIM’s research focus is supported by themes such as human–AI interaction, implementation science, education & training, and clinical outcomes, ensuring that innovation is not only technically strong but also clinically relevant, ethical, trustworthy, and deployable in real-world settings.

 

 

 

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Degree structure

The MSc in Artificial Intelligence in Medicine is organised into two distinct learning pathways, designed to reflect the different backgrounds and career goals of our students. Both pathways comprise a total of 30 Academic Units (AUs), and each culminates in a capstone project that allows students to integrate their learning and apply it to real-world healthcare challenges.

AIMED

Applied Medical AI (Clinician Pathway)

The Clinician Pathway is tailored for doctors, nurses, and other healthcare professionals who wish to gain a deeper understanding of how AI can be integrated into clinical practice. Students begin with Medical AI Core Courses (11 AUs), which establish a solid grounding in the principles of AI for healthcare. This is complemented by Data Science Foundation Courses (4 AUs), providing essential skills in analytics and computational thinking. Building on this foundation, students progress to Applied Medical AI Courses (9 AUs), which focus on practical applications such as decision support, healthcare data analytics, and AI for population health. The pathway concludes with a Capstone Project (6 AUs), where participants work on an applied problem, often linked to clinical contexts or healthcare systems.


Engineering Medical AI (Engineer Pathway)

The Engineer Pathway is designed for computer scientists, engineers, and data scientists who want to specialise in healthcare applications of AI. Like the Clinician Pathway, it begins with Medical AI Core Courses (11 AUs), ensuring all students share a common foundation in the fundamentals of AI in medicine. Instead of data science foundations, engineers take Medicine Foundation Courses (4 AUs), which introduce clinical workflows, disease mechanisms, and healthcare system structures—providing the context necessary to design meaningful solutions. Students then advance to Advanced Medical AI Courses (9 AUs), which cover topics such as deep learning for medical imaging, multimodal model integration, and natural language processing for healthcare. The pathway concludes with the Capstone Project (6 AUs), where students tackle research or translational challenges at the interface of AI and medicine.

Applied Medical AI
(Clinician Pathway)
Engineering Medical AI
(Engineer Pathway)
Medical AI Core Courses
(11 AUs)
Medical AI Core Courses
(11 AUs)
Data Science Foundation Courses
(4 AUs)
Medicine Foundation Courses
(4 AUs)
Applied Medical AI Courses
(9 AUs)
Advanced Medical AI Courses
(9 AUs)
Capstone Project
(6 AUs)
Capstone Project
(6 AUs)

 


Applicants should hold a bachelor’s degree in a relevant discipline, including but not limited to Medicine, Biomedical Sciences, Computer Science, Engineering, or related fields. Entry may also be granted through successful completion of the AI in Medicine Graduate Certificate and/or FlexiMasters pathway. International applicants whose undergraduate education was not conducted in English are required to provide evidence of English language proficiency. Acceptable qualifications include the Test of English as a Foreign Language (TOEFL) with a minimum score of 100, or the International English Language Testing System (IELTS) with a minimum overall band score of 6.5. All test results must be valid within two years of the date of application.

 

Full Time Programme Fees Location Of Study
Master of Science in AI in Medicine (30 AUs*) $60,000
excludes GST, all course materials and books
Singapore


Part Time Programme Fees Location Of Study
Graduate Certificate (9 AUs) $18,000
excludes GST, all course materials and books
Singapore
(for prac​tical components of programme)
FlexiMasters (6 AUs) $12,000
excludes GST, all course materials and books.  Does not include Graduate Certificate course Fees of $18,000
 
Learners must complete the Graduate Certificate before undertaking the FlexiMasters. The programme fees are reviewed annually and may be revised. The University reserves the right to adjust the programme fees without prior notice.
Singapore
(for prac​tical components of programme)
Master of Science in AI in Medicine (15 AUs) $30,000
excludes GST, all course materials and books. Does not include Graduate Certificate and  FlexiMasters course fees of $18,000 and $12,000 respectively
 
Learners must complete the Graduate Certificate and FlexiMasters before undertaking the Master of Science , AI in Medicine. The programme fees are reviewed annually and may be revised. The University reserves the right to adjust the programme fees without prior notice.
 
S$5,000 deposit required – This amount will be deducted from the full billing of the course.  Non-refundable & non-transferable
(Payable upon acceptance of offer of admission)
Singapore
(for prac​tical components of programme)

* Academic Units

 

    Programme Director:
    Dr. Fan Xiuyi, Programme Director, AI in Medicine (AIMED) programme, LKCMedicine

    Faculty
    Andrew Li Assistant Professor  
    Chow Minyang Assistant Professor [email protected]
    Fan Xiuyi Assistant Professor [email protected]
    Juliana Chen Jia Chuan Associate Professor  
    Keisuke Ejima Assistant Professor [email protected]
    Lee Teck Kwong Bernett Assistant Professor [email protected]
    Lee Zheng-Wei, aLex Educational Consultant [email protected]
    Michele Nguyen Assistant Professor [email protected]
    Navin Kumar Verma Associate Professor [email protected]
    Sreenivasulu Reddy Mogali Associate Professor [email protected]
    Tan Chee Wei Associate Professor [email protected]
    Tay Seow Yian Associate Professor  
    Yeo Si Yong Assistant Professor [email protected]
    Yu Baosheng Assistant Professor [email protected]

     

    CategoryCourse Course Code AU Qualification Pathway
    Medical AI Core CoursesHealthcare AI Governance MD6114 2​ Certificate Both
    AI in Clinical Decision Support​ MD6206 2​ FlexiMasters Both
    Machine Learning for Healthcare AI​ MD6117 3 Certificate Both
    AI Product Translation and Clinical Integration MD6205 2 FlexiMasters​ Both
    Healthcare AI Innovation & Entrepreneurship​ MD6204 2​ FlexiMasters Both
    Data Science Foundation CoursesHealthcare Data Analytics​ MD6116 2​ Certificate Clinician
    Programming and Software Development for Healthcare AI​ MD6115 2​ Certificate Clinician
    Medicine Foundation CoursesHuman Anatomy and Physiology by Organ Systems MD6118 2 Certificate Engineer
    Introduction to Clinical Medicine and Disease Mechanisms MD6119 2 Certificate Engineer
    Applied Medical AI CoursesPatient Safety, Trust, and Human Factors in AI MD6331 2 Master Clinician
    AI for Primary Care, Population Health & Preventive Medicine MD6332 2 Master Clinician
    AI and IoT for Smart Care Delivery MD6333 2 Master Clinician
    Implementing & Validating Medical AI Solutions MD6334 3 Master Clinician
    Advanced Medical AI CoursesDeep Learning for Healthcare AI ​ MD6329 2 Master Engineer
    Practical Healthcare AI Ethics​ MD6330 2 Master Engineer
    Natural Language Processing and Large Language Models in Healthcare AI ​ MD6335 3 Master Engineer
    Medical Imaging, Multimodal Learning and Model Integration in Healthcare MD6336 2 Master Engineer
     Capstone Project MD6337 6 Master Both

     

    1. Students will need to pass all modules to be awarded the certificate / degree from each sub-programme. 

    2. A compulsory, comprehensive project where students tackle a real-world healthcare AI challenge, demonstrating their ability to design, develop, and evaluate a solution. 

    Course Deferment
    ​Any request for course deferment for successfully-admitted applicants is assessed on a case-by-case basis. Each deferment is for a period of one Academic Year (i.e. one intake).

    Course Withdrawal Policy
    Matriculated students must write in to the School to formally withdraw from the programme, however there will be no refund for the Tuition Fee and Student Services Fee.