Module information
Module details
- Title
- Analytics
- Type
- Specialist
- Module code
- S-CE-S2-3
- Credits
- 10
- Phase
- 2
- Requirement
- Compulsory
Aim of this module
This module will prepare the trainees for the management, analysis and communication of technical, operational and clinical data in their professional practice.
Work-based content
Training activities
| # | Learning outcome | Training activity | Type | Action |
|---|---|---|---|---|
| # 1 | Learning outcome 1,2 |
Training activities
Modify an offline copy of an existing database incorporating new data tables Develop data input forms or methods to populate tables, queries to extract subsets of the data, and reports to output data in a readable/viewable form |
Type DTA | Action View |
| # 2 | Learning outcome 1 |
Training activities
Develop or modify a tool using a scripted data processing language to solve a workplace challenge, applying appropriate software development methodology. |
Type DTA | Action View |
| # 3 | Learning outcome 1,2 |
Training activities
Present a visualisation of a complex data set to stakeholders to support an explanation of findings from a mapping or statistical analysis |
Type ETA | Action View |
| # 4 | Learning outcome 1 |
Training activities
Use different methods to map a pathological, clinical or operational process |
Type ETA | Action View |
| # 5 | Learning outcome 1,2,3 |
Training activities
Perform a clinical measurement and undertake an appropriate statistical analysis to make recommendations on:
|
Type DTA | Action View |
| # 6 | Learning outcome 1,2 |
Training activities
Design and perform a repeatability study for a clinical measurement or group of devices. |
Type DTA | Action View |
| # 7 | Learning outcome 1,2 |
Training activities
Evaluate the performance of a medical device including sensitivity, specificity and diagnostic accuracy. |
Type DTA | Action View |
| # 8 | Learning outcome 1,2 |
Training activities
Use statistical techniques to evaluate the strength of relationships between elements in a clinical and operational process and present a summary |
Type DTA | Action View |
| # 9 | Learning outcome 2,3 |
Training activities
Compare competing clinical or operational measurements using appropriate statistical techniques and present the results and conclusions |
Type DTA | Action View |
| # 10 | Learning outcome 2,3 |
Training activities
Review and critique selected parameters (elements) and statistical methods used in a real world clinical or operational setting |
Type DTA | Action View |
Assessments
Complete 2 Case-Based Discussions
Complete 2 DOPS or OCEs
Direct Observation of Practical Skills Titles
- Debug or modify software.
- Collect repeatability data.
Observed Clinical Event Titles
- Explain a “mapping” of a process to a colleague.
- Discuss statistics used in a clinical or operational team with the multidisciplinary team.
Learning outcomes
| # | Learning outcome |
|---|---|
| 1 | Explore and explain relationships between elements in a system. |
| 2 | Select, perform and critique statistical analyses and interpretations on clinical and operational datasets. |
| 3 | Synthesise and present statistical analyses in clinical or operational reports, articulating premises, assumptions, conclusions and caveats, and communicate findings to multidisciplinary colleagues. |
Clinical experiences
Clinical experiences help you to develop insight into your practice and a greater understanding of your specialty’s impact on patient care. Clinical experiences should be included in your training plan and you may be asked to help organise your experiences. Reflections and observations from your experiences may help you to advance your practice and can be used to develop evidence to demonstrate your awareness and appreciation of your specialty.
Activities
- Observe differential equation model in practice.
- Visit another service applying a statistical model to observe and appreciate different practices.
- Visit industry using simulations to implement design in manufacture.
- Visit a commercial data science organisation involved in healthcare applications to appreciate their use of machine learning and other higher order statistical methods.
Academic content (MSc in Clinical Science)
Important information
The academic parts of this module will be detailed and communicated to you by your university. Please contact them if you have questions regarding this module and its assessments. The module titles in your MSc may not be exactly identical to the work-based modules shown in the e-portfolio. Your modules will be aligned, however, to ensure that your academic and work-based learning are complimentary.
Learning outcomes
On successful completion of this module the trainee will be able to:
- Select and generate statistics associated with the status and change in status of the individual patient or other entity.
- Navigate and map complex systems using appropriate tools.
- Analyse complex physiological, operational, electronic and mechanical systems through the use of modelling software.
- Critically apply signal analysis methods to physiological or other signals
Indicative content
- The statistics of clinical and operational measurements:
- Estimates of precision in continuous and categorical variables.
- Minimal detectable differences.
- Intra-class correlation.
- Level of agreement statistics for continuous and categorical variables.
- Introduction to Monte Carlo simulations.
- Regression of continuous and categorical variables.
- Original hypotheses and test statistics.
- Visualisation of statistical data.
- Statistical reporting.
- Estimates of precision in continuous and categorical variables.
- The statistics of clinical measurement:
- Estimates of precision in clinical measurements.
- Minimal detectable differences.
- Intra-class correlation.
- Statistics for clinical diagnosis.
- Binomial regression.
- Receiver operator curves.
- The Bayes equation.
- Estimates of precision in clinical measurements.
- Improving understanding by systems mapping:
- Knowledge domains and the Cynefin framework (Known, Knowable, Complex, and Chaotic).
- Review of mapping methodologies for analysis of systems.
- g. Directed acyclic graphs
- Introduction to mapping tools.
- Introduction to systems of differential equations in medicine and biology:
- Mathematical representation of physiological processes (modelling).
- Numerical methods for simulation.
- Parameter optimisation.
- Sensitivity analysis.
- Medical Electronic Circuit Design:
- Analogue circuit design.
- The properties of passive circuit components.
- The properties of active circuit components.
- Application of the golden rules.
- The instrumentation amplifier.
- Analogue to digital conversion.
- Digital circuit design.
- Boolean algebra.
- Basic digital operations (gates).
- Microprocessors.
- Programmable microcontrollers.
- Analogue circuit design.
- Modelling and simulation of mechanical systems in health care.
- Mechanics refresher.
- Physical and biological behaviours of clinical materials.
- Introduction to CAD.
- Introduction to FEA.
- Introduction to structured programming.
- Principles of relational databases.
Module assigned to
Specialties
| Specialty code | Specialty title | Action |
|---|---|---|
| Specialty code SPE3-4-27 | Specialty title Clinical Engineering [2027] | Action View |