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Exploring the Medical School Councils' (MSC) digital agenda.

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Health Inequalities (MSC Competency 10)

14:22, Tue 23 Sept 2025

This episode welcomes Professor Meg Davis, a leading expert in digital health human rights to explore this digital health competency:

10) Health inequalities

• Explain the need for datasets to be diverse and representative of patient populations,

including those from marginalised groups.

• Identify and mitigate potential biases in data and algorithms that can perpetuate

existing health disparities.

• Understand the digital divide and its impact on access to healthcare services and

information.

• Recognise the heightened risk of data breaches and misuse for vulnerable

populations.

 

Links

https://ease.org.uk/communities/gender-policy-committee/the-sager-guidelines/

https://megdavisconsulting.com/right-on-podcast/

https://digitalhealthandrights.com/

Transcript

(MP3 format, 33 MB)

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The Digital Health Competencies podcast series explores the learning competencies outlined by the Medical Schools Council (MSC) and Health Data Research UK (HDR UK) (1). These competencies were proposed at the beginning of 2025 due to the ever-expanding prevalence of digital technologies within the healthcare, and the growing need for doctors to demonstrate proficiency in these technologies. They outline the necessary skills and knowledge that a medical student should know by the time they graduate. The competencies are shown below (1):

Core competency

Learning outcomes

1) Data governance and data management

  • Describe what constitutes health data.
  • Explain the importance of data governance policies in healthcare.
  • Demonstrate an understanding of data required for specific functions of electronic health records (e.g., laboratory results, clinical decision support), its location, accessibility, and record manipulation tracking.

2) Health informatics

  • Explain the concept of health informatics.
  • Describe the role of health data and informatics in supporting health through enhanced data collection, management, sharing, and application in the context of both infectious and chronic diseases.
  • Interpret and explain findings generated from health data to patients and the public.

3) Professionalism, ethical, legal, and regulatory considerations in digital health

  • Apply best practices for managing digital patient data.
  • Describe protected health information.
  • Apply prevailing privacy and security rules when handling protected health information.
  • Demonstrate compliance with ethical conduct and codes of practice when processing digital patient data.
  • Explain how professional, clinical, and research ethics are applied and practiced within digital health space.

4) Digital identity, safety, and security

  • Describe common behaviours of doctors which may compromise data security.
  • Demonstrate awareness of prevailing rules or regulations on sharing protected health information via cross-platform instant messaging services (e.g., WhatsApp, Telegram).
  • Explain the concepts of medical professional, digital identity and digital intelligence.

5) Artificial intelligence in healthcare

  • Describe basic principles of artificial intelligence (AI), natural language processing (NLP), speech recognition, machine learning (ML), automated image interpretation and predictive analytics.
  • Critique limitations of and barriers to using AI in healthcare.
  • Explain the role of big data in healthcare data science and delivery.
  • Explain the importance of rigorous real-world clinical validation of AI-based technologies before implementation in patient care.
  • Maintain vigilance and validate advice given by machines to avoid automation bias.
  • Describe application of automated image interpretation and pattern recognition in radiology, radiotherapy, and retinal photography.
  • Discuss how integrating big data from different sources (e.g., data in electronic health records, hospital records, medical records of patients, results of medical examinations; data from devices that are a part of internet of medical things and wearables, data from biomedical research) can yield useful insights into healthcare provision, utilization, optimization, and improvement.

6) Clinical Academic Research

  • Describe how advanced data analysis can help identify patterns, trends, risk factors, and correlations within health data, which can lead to new research questions and hypotheses.
  • Discuss how data from everyday clinical practice can be used to assess treatment effectiveness, monitor drug safety, and drive advancements in healthcare.
  • Discuss how data science can be used to develop models that predict outcomes, such as disease progression, treatment effectiveness, or patient risk.

7) Digital diagnostics algorithms

  • Describe how digital diagnostic algorithms can enhance, guide, and record aspects of clinical examination.
  • Recognize the limitations of fully automated AI-led diagnostic platforms and traditional methods.

8) Precision medicine

  • Describe the concept of precision medicine and its implications in healthcare.
  • Discuss how data collected through digital health technologies (e.g., wearable sensors, mobile health apps) can support precision medicine.

9) Digital health literacy

  • Describe digital health literacy and its impact on health outcomes and access to care.
  • Describe how higher health literacy leads to reduced healthcare costs, hospitalisation rates, readmissions and emergency department visits.

10) Health inequalities

  • Explain the need for datasets to be diverse and representative of patient populations, including those from marginalised groups.
  • Identify and mitigate potential biases in data and algorithms that can perpetuate existing health disparities.
  • Understand the digital divide and its impact on access to healthcare services and information.
  • Recognise the heightened risk of data breaches and misuse for vulnerable populations.

11) Personal health records

  • Explain both the positive and negative impacts of personal health records on patientcentred healthcare (e.g., patient-provider communication, education and lifestyle changes, health self-management)
  • Explain what constitute appropriate use of and access to patient health records.

12) Foundation and principles of health information systems

  • Discuss both positive and negative impacts of electronic health records on patient care.

The podcast is currently hosted by our very own Dr Hamish Sutcliffe, Associate Clinical Professor! Every episode, Dr Sutcliffe interviews an expert to explore a digital competency.

You can find the report by MSC and HDR UK below:

https://www.medschools.ac.uk/wp-content/uploads/2025/05/data-science-in-the-medical-curriculum-1.pdf

https://www.medschools.ac.uk/latest/news/medical-schools-to-prepare-students-with-ai-and-data-science-skills/

https://www.medschools.ac.uk/latest/publications/data-science-in-the-medical-curriculum-equipping-medical-students-for-the-digital-age-2/

 

1. Data science in the medical curriculum: Equipping medical students for the digital age [Internet]. Available from: https://www.medschools.ac.uk/wp-content/uploads/2025/05/data-science-in-the-medical-curriculum-1.pdf

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