Academic Handbook Course Descriptors and Programme Specifications
LBIOL62126A Digital Health and Artificial Intelligence Course Descriptor
Last modified on August 13th, 2024 at 3:23 pm
Version History
Course code | LBIOL62126A | Discipline | Bioscience and Chemistry |
UK Credit | 15 | US Credit | N/A |
FHEQ level | 6 | ||
Pre-requisites | None | ||
Co-requisites | None |
Course Overview
The course examines the principles, theory and concepts that underpin digital health and the impact of artificial intelligence (AI) and digital technologies in health-care sectors. It examines the profound social, cultural, ethical, and economic influence that the digital realm is having on approaches to health care, and how digital tools and techniques are set to revolutionise the health care ecosystem. These tools and techniques range from mobile healthcare devices to AI driven digital diagnostic systems to bespoke health therapies. Such transformations come with many challenges and opportunities and the requisite governance, policy and security safeguards are also examined in the course.
Learning Outcomes
On successful completion of the course, learners will be able to:
Knowledge and Understanding
K1c | Evidence a systematic understanding of the principles, concepts and application of digital health and artificial intelligence. |
K3c | Evidence a systematic understanding of how to evaluate the field of digital health and artificial intelligence through evaluation of scholarly articles, to draw evidence-based conclusions. |
K4c | Evidence a critical understanding of the wider business environment, cultural, ethical, regulatory and economic contexts within which digital health and artificial intelligence operate. |
Subject Specific Skills
S2c | Evaluate the impact of artificial intelligence in healthcare contexts and explore the principles and methodologies of digital health within a laboratory context. |
S3c | Critically evaluate the digital healthcare and artificial intelligence sectors, using a range of scholarly articles and data, to identify the challenges and opportunities the fields present. |
S4c | Conceptually plan a mini artificial intelligence project aligned to business objectives. |
Transferable and Professional Skills
T1c | Exercise initiative and personal responsibility in professional development, learning new skills and challenging assumptions. |
T3c | Communicate critical arguments and big-picture thinking to non-specialist audiences. |
T3c | Display an advanced level of technical proficiency in written English and competence in applying scholarly terminology, so as to be able to apply skills in critical evaluation, analysis and judgement effectively in a diverse range of contexts. |
T4c | Promote professionalism, integrity and ethics in unpredictable contexts. |
Teaching and Learning
This is an e-learning course, taught throughout the year.
This course can be offered as a standalone short course.
Teaching and learning strategies for this course will include:
- Online learning
- Online discussion groups
- Online assessment
Course information and supplementary materials will be available on the University’s Virtual Learning Environment (VLE).
Learners are required to attend and participate in all the formal and timetabled sessions for this course. Learners are also expected to manage their self-directed learning and independent study in support of the course.
The course learning and teaching hours will be structured as follows:
- Off-the-job learning and teaching (6 days x 7 hours) = 42 hours
- On-the-job learning (12 days x 7 hours) = 84 hours (e.g. 2 days per week for 6 weeks)
- Private study (4 hours per week) = 24 hours
Total = 150 hours
Workplace assignments (see below) will be completed as part of on-the-job learning.
Assessment
Formative
Learners will be formatively assessed during the course by means of set assignments. These will not count towards the final degree but will provide learners with developmental feedback.
Summative
AE | Assessment Type | Weighting | Online submission | Duration | Length |
1 | Set Exercises (problem-solving) | 50% | Yes | Requiring on average 20 – 25 hours to complete | – |
2 | Written Assignment | 50% | Yes | Requiring on average 20 – 25 hours to complete | – |
Feedback
LearnerLearners will receive formal feedback in a variety of ways: written (via email or VLE correspondence) and indirectly through online discussion groups. Learners will also attend a formal meeting with their Success Manager (and for apprentices, including their Line Manager). These bi or tri-partite reviews will monitor and evaluate the learner’s progress.
Feedback is provided on summatively assessed assignments and through generic internal examiners’ reports, both of which are posted on the VLE.
Indicative Reading
Note: Comprehensive and current reading lists for courses are produced annually in the Course Syllabus or other documentation provided to learners; the indicative reading list provided below is used as part of the approval/modification process only.
Books
- Sousa, M.J., Nunes, F.G., do Nascimento, G. and Chakraborty, C. eds. (2023). Future Health Scenarios: AI and Digital Technologies in Global Healthcare Systems. CRC Press; Taylor and Francis.
Journals
Learners are encouraged to read material from relevant journals as directed by their course leader. Including:
- Dixon, T. A, Curach, N. C., & Pretorius, I. S. (2020). Bio-informational futures The convergence of artificial intelligence and synthetic biology. EMBO Reports, 21(3), e50036–e50036. https://doi.org/10.15252/embr.202050036
Electronic Resources
Learners are encouraged to consult relevant websites on the topics covered in this course.
Indicative Topics
- Principles of digital health
- Application of AI in health care contexts
- Laboratory science and digital culture
Version History
Title: NCHNAP6134 Digital Health and AI Course Descriptor
Approved by: Academic Board Location: Academic Handbook/Programme specifications and Handbooks/ Undergraduate Apprenticeship Programmes/BSc (Hons) Bioscience with Digital Technologies Programme Specification/Course Descriptors |
|||||
Version number | Date approved | Date published | Owner | Proposed next review date | Modification (As per AQF4) & category number |
4.0 | July 2024 | July 2024 | Dr Helen Dawe | July 2028 | Category 1: Corrections/clarifications to documents which do not change approved content or learning outcomes
Category 3: New course code |
3.0 | October 2022 | January 2023 | Scott Wildman | September 2026 | Category 1: Corrections/clarifications to documents which do not change approved content or learning outcomes
Category 3: Changes to Learning Outcomes |
2.0 | January 2022 | April 2022 | Scott Wildman | September 2026 | Category 3: Changes to Learning Outcomes |
1.0 | September 2021 | September 2021 | Scott Wildman | September 2026 |