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Mathematical Modelling of Healthcare Associated Infections Theo Kypraios Division of Statistics, School of Mathematical Sciences [email protected] http://www.maths.nott.ac.uk/~tk
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Page 1: Mathematical Modelling of Healthcare Associated Infections Theo Kypraios Division of Statistics, School of Mathematical Sciences t.kypraios@nottingham.ac.uk.

Mathematical Modelling of Healthcare Associated Infections

Theo Kypraios Division of Statistics, School of Mathematical Sciences

[email protected]://www.maths.nott.ac.uk/~tk

Page 2: Mathematical Modelling of Healthcare Associated Infections Theo Kypraios Division of Statistics, School of Mathematical Sciences t.kypraios@nottingham.ac.uk.

Outline

1. Overview.2. Mathematical modelling.3. Concluding comments .

Page 3: Mathematical Modelling of Healthcare Associated Infections Theo Kypraios Division of Statistics, School of Mathematical Sciences t.kypraios@nottingham.ac.uk.

Outline

1. Overview.2. Mathematical modelling.3. Concluding comments .

Page 4: Mathematical Modelling of Healthcare Associated Infections Theo Kypraios Division of Statistics, School of Mathematical Sciences t.kypraios@nottingham.ac.uk.

Motivation• High-profile hospital-acquired infections such as:• Methicillin-Resistant Staphylococcus Aureus (MRSA) • Vancomycin-Resistant Enterococcal (VRE)have a major impact on healthcare within the UK and elsewhere.

• Despite enormous research attention, many basic questionsconcerning the spread of such pathogens remain unanswered.

Page 5: Mathematical Modelling of Healthcare Associated Infections Theo Kypraios Division of Statistics, School of Mathematical Sciences t.kypraios@nottingham.ac.uk.

Can we fill in the gaps?Aim:

To address a range of scientific questions via analyses of detailed data sets taken from hospital wards.

Methods:Use appropriate state-of-the-art modelling and statistical

techniques.

Page 6: Mathematical Modelling of Healthcare Associated Infections Theo Kypraios Division of Statistics, School of Mathematical Sciences t.kypraios@nottingham.ac.uk.

What sort of questions?• What value do specific control measures have?• isolation, handwashing etc.• Is it of material benefit to increase or decrease the

frequency of swab tests?• What enables some strains to spread more rapidly than

others?• What effects do different antibiotics play?

Page 7: Mathematical Modelling of Healthcare Associated Infections Theo Kypraios Division of Statistics, School of Mathematical Sciences t.kypraios@nottingham.ac.uk.

What do we mean by ‘datasets’ ?Information on:

• Dates of patient admission and discharge.

• Dates when swab tests are taken and their outcomes.

• Patient location (e.g. in isolation).

• Details of antibiotics administered to patients.

Page 8: Mathematical Modelling of Healthcare Associated Infections Theo Kypraios Division of Statistics, School of Mathematical Sciences t.kypraios@nottingham.ac.uk.

Outline

1. Overview.2. Mathematical modelling.3. Concluding comments .

Page 9: Mathematical Modelling of Healthcare Associated Infections Theo Kypraios Division of Statistics, School of Mathematical Sciences t.kypraios@nottingham.ac.uk.

Mathematical Modelling – what is it?

• An attempt to describe the spread of the pathogen between individuals.

• Includes inherent stochasticity (= randomness).

• Data enables estimation of model parameters.

Page 10: Mathematical Modelling of Healthcare Associated Infections Theo Kypraios Division of Statistics, School of Mathematical Sciences t.kypraios@nottingham.ac.uk.

Mathematical Modelling:Simple Example

• Consider population of individuals.

• Each can be classified “healthy” or “colonised” each day.

• Each colonised individual can transmit pathogen to each healthy individual with probability p per day.

Page 11: Mathematical Modelling of Healthcare Associated Infections Theo Kypraios Division of Statistics, School of Mathematical Sciences t.kypraios@nottingham.ac.uk.

Mathematical Modelling:Simple Example

Healthy person

Colonised person

Daily transmission probability p = 0.5

Day 1

Page 12: Mathematical Modelling of Healthcare Associated Infections Theo Kypraios Division of Statistics, School of Mathematical Sciences t.kypraios@nottingham.ac.uk.

Mathematical Modelling:Simple Example

Healthy person

Colonised person

Daily transmission probability p = 0.5

Day 2

Page 13: Mathematical Modelling of Healthcare Associated Infections Theo Kypraios Division of Statistics, School of Mathematical Sciences t.kypraios@nottingham.ac.uk.

Mathematical Modelling:Simple Example

Healthy person

Colonised person

Daily transmission probability p = 0.5

Day 3

Page 14: Mathematical Modelling of Healthcare Associated Infections Theo Kypraios Division of Statistics, School of Mathematical Sciences t.kypraios@nottingham.ac.uk.

Mathematical Modelling:Simple Example

Healthy person

Colonised person

Daily transmission probability p = 0.5

Day 4

Page 15: Mathematical Modelling of Healthcare Associated Infections Theo Kypraios Division of Statistics, School of Mathematical Sciences t.kypraios@nottingham.ac.uk.

Mathematical Modelling:Simple Example

Healthy person

Colonised person

Daily transmission probability p = 0.5

Day 5

Page 16: Mathematical Modelling of Healthcare Associated Infections Theo Kypraios Division of Statistics, School of Mathematical Sciences t.kypraios@nottingham.ac.uk.

Mathematical Modelling:Simple Example

Healthy person

Colonised person

Daily transmission probability p = 0.5

Day 6

Page 17: Mathematical Modelling of Healthcare Associated Infections Theo Kypraios Division of Statistics, School of Mathematical Sciences t.kypraios@nottingham.ac.uk.

Mathematical Modelling:Simple Example

0

1

2

3

Day 1 Day 2 Day 3 Day 4 Day 5 Day 6

Cases

Plot of new cases per day

Page 18: Mathematical Modelling of Healthcare Associated Infections Theo Kypraios Division of Statistics, School of Mathematical Sciences t.kypraios@nottingham.ac.uk.

Mathematical Modelling:Inference

Information about p could take various forms:• Most likely value of p • e.g. “p = 0.42”• Range of likely values of p • e.g. “p is 95% likely to be in the range 0.23 – 0.72” • In general, how p relates to any other model

parameters?

Page 19: Mathematical Modelling of Healthcare Associated Infections Theo Kypraios Division of Statistics, School of Mathematical Sciences t.kypraios@nottingham.ac.uk.

Mathematical Modelling

• In practice, we deal with more complicated models.– i.e. more realistic models, more parameters.

• The actual process is rarely fully observed .– difficult to observe colonisation times.

• Inference becomes much more challenging.

Page 20: Mathematical Modelling of Healthcare Associated Infections Theo Kypraios Division of Statistics, School of Mathematical Sciences t.kypraios@nottingham.ac.uk.

Mathematical ModellingHow do we address hypotheses?

e.g. Does transmission probability p vary between individuals?

• Construct two models: one with same p for all, one where each individual has their own “p”.

• Can determine which model best fits the data.

Page 21: Mathematical Modelling of Healthcare Associated Infections Theo Kypraios Division of Statistics, School of Mathematical Sciences t.kypraios@nottingham.ac.uk.

Outline

1. Overview.2. Mathematical modelling.3. Concluding comments .

Page 22: Mathematical Modelling of Healthcare Associated Infections Theo Kypraios Division of Statistics, School of Mathematical Sciences t.kypraios@nottingham.ac.uk.

Conclusions• Models seek to describe process of actual transmission

and are biologically meaningful .

• Scientific hypotheses can be quantitatively assessed .

• Methods are very flexible but still contain implementation challenges.

Page 23: Mathematical Modelling of Healthcare Associated Infections Theo Kypraios Division of Statistics, School of Mathematical Sciences t.kypraios@nottingham.ac.uk.

Thank you for your attention!

Any questions?


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