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A greyscale headshot of Elliot McClenaghan
Elliot McClenaghan

Elliot McClenaghan profile page

Epidemiologist and PhD Candidate

 at London School of Hygiene and Tropical Medicine


Elliot is a statistical epidemiologist and doctoral candidate in pharmacoepidemiology in the department of Medical Statistics and the Electronic Health Records group at London School of Hygiene and Tropical Medicine (LSHTM), where his research focuses on optimal causal inference and target trial emulation methodologies for treatment effects in cystic fibrosis. Previously, he worked as a research fellow in the Department of Infectious Disease Epidemiology, working on COVID-19 transmission and seroprevalence studies. Before that he was a medical statistician at the UK Cystic Fibrosis Registry, where he designed and conducted post-authorization drug safety studies and was lead statistician of a global registry collaboration on the impact of COVID-19 in people with cystic fibrosis.


Education


Newcastle University  

Queen’s University Belfast  


Awards & Certifications


Doctoral scholarship to undertake his PhD research as part of an industry–academic partnership between LSHTM and GlaxoSmithKline (GSK)


Accreditations


BSc Biomedical Sciences recognised by Newcastle University

MPH Masters in Public Health (quantitative focus) recognised by Queen’s University Belfast


Areas of Expertise



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Published Content
Total: 16
A healthy man vs a man having a heart attack with images representing various lifestyle choices that may have contributed to the outcome.
Article

Logistic Regression

This article will cover the basic theory behind logistic regression, the types of logistic regression, when to use them and take you through a worked example.
Illustrations of ladies of increasing age set against increasing blood pressure on a background of a scatter graph.
Article

Linear Regression

Discover how linear regression works, from simple to multiple linear regression, with step-by-step examples, graphs and real-world applications.
Three groups of people, each with a different pill above images representing weight and cholesterol level linked by arrows.
Article

The MANOVA Test

This article will cover the theory underpinning multivariate analysis of variance (MANOVA), which expands on the capabilities of ANOVA, the types of MANOVA and a worked example of the test.
A graph representing normally distributed sample data compared to a hypothesized or population value.
Article

The One Sample T Test

In this article, we will explore some of the theory behind the one sample t test, assumptions of the test, interpretation and a worked example.
Page of a calendar showing a month with three consecutive Saturdays circled.
Article

The Friedman Test

The Friedman test can be used to compare repeated measures or samples, such as following a person's biological functions over time. In this article, we consider its assumptions, when to use it and go through a worked example.

Smiling ladies of different weights representing samples of two populations.
Article

The Z Test

If you want to compare means of continuous variables between two groups or to a hypothesized value, you might need a z test. In this article, we explore the two types of z test, assumptions of the test, interpretation and a worked example.
An illustrated graph of height versus age, using images of people growing up rather than data points.
Article

Pearson Correlation

In this article, we will explore the theory, assumptions and interpretation of Pearson’s correlation, including a worked example of how to calculate Pearson’s correlation coefficient, often referred to as Pearson’s r.
Scatter graph showing the correlation between students' chemistry and math scores.
Article

Spearman Rank Correlation

In this article, we will explore the theory, assumptions and interpretation of Spearman’s rank correlation, a flexible statistical tool that assesses the strength and direction of the relationship between two quantitative, ranked variables.
Illustration of data that may be analyzed by Fisher's exact test, here icons represent males and females voting for and against.
Article

The Fisher’s Exact Test

In this article, we explore the theory, assumptions and interpretation of the Fisher’s exact test, used to investigate associations between two categorical, binary variables with small sample sizes, and take you through a worked example.
A title reading "An Introduction to Bayesian Statistics"
Article

An Introduction to Bayesian Statistics

Bayesian statistics has emerged as a powerful methodology for making decisions from data in the applied sciences. Bayesian brings a new way of thinking to statistics, in how it deals with probability, uncertainty and drawing inferences from an analysis.
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