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Open AccessJournal ArticleDOI

Correlation Coefficients: Appropriate Use and Interpretation.

TLDR
The aim of this tutorial is to guide researchers and clinicians in the appropriate use and interpretation of correlation coefficients.
Abstract
Correlation in the broadest sense is a measure of an association between variables. In correlated data, the change in the magnitude of 1 variable is associated with a change in the magnitude of another variable, either in the same (positive correlation) or in the opposite (negative correlation) direction. Most often, the term correlation is used in the context of a linear relationship between 2 continuous variables and expressed as Pearson product-moment correlation. The Pearson correlation coefficient is typically used for jointly normally distributed data (data that follow a bivariate normal distribution). For nonnormally distributed continuous data, for ordinal data, or for data with relevant outliers, a Spearman rank correlation can be used as a measure of a monotonic association. Both correlation coefficients are scaled such that they range from -1 to +1, where 0 indicates that there is no linear or monotonic association, and the relationship gets stronger and ultimately approaches a straight line (Pearson correlation) or a constantly increasing or decreasing curve (Spearman correlation) as the coefficient approaches an absolute value of 1. Hypothesis tests and confidence intervals can be used to address the statistical significance of the results and to estimate the strength of the relationship in the population from which the data were sampled. The aim of this tutorial is to guide researchers and clinicians in the appropriate use and interpretation of correlation coefficients.

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Citations
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Simple Linear Regression

TL;DR: In this article, a linear regression technique is used to relate a measured response variable, Y, to a single predictor (explanatory) variable, X, by means of a straight line.
Journal ArticleDOI

Tweet Topics and Sentiments Relating to COVID-19 Vaccination Among Australian Twitter Users: Machine Learning Analysis.

TL;DR: The authors used machine learning methods to extract topics and sentiments relating to COVID-19 vaccination on Twitter and found that nearly two-thirds of the sentiments of all tweets expressed a positive public opinion about the COVID19 vaccine; around one-third were negative.
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Repeated Measures Designs and Analysis of Longitudinal Data: If at First You Do Not Succeed-Try, Try Again.

TL;DR: This tutorial discusses aspects of the theoretical background for each technique, and with specific examples of studies published in Anesthesia & Analgesia, demonstrates how these techniques are used in practice.
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Sensitivity analysis methods in the biomedical sciences

TL;DR: The popular Morris and Sobol methods are applied to two models with biomedical applications, with the intention of providing a deeper understanding behind both the principles of these methods and the presentation of their results.
Journal ArticleDOI

A novel autophagy-related lncRNA prognostic risk model for breast cancer.

TL;DR: Findings suggested that the risk model of the 11 autophagy‐related lncRNAs has significant prognostic value for breast cancer and might be autophagic‐related therapeutic targets in clinical practice.
References
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Journal ArticleDOI

Statistical methods for assessing agreement between two methods of clinical measurement.

TL;DR: An alternative approach, based on graphical techniques and simple calculations, is described, together with the relation between this analysis and the assessment of repeatability.
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Statistics corner: A guide to appropriate use of correlation coefficient in medical research.

TL;DR: Examples of the applications of the correlation coefficient have been provided using data from statistical simulations as well as real data.
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Thirteen ways to look at the correlation coefficient

TL;DR: In this paper, the 100th anniversary of Galton's first discussion of regression and correlation is celebrated, and 13 different formulas representing a different computational and conceptual definition of Pearson's r are presented.
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Statistics notes: Calculating correlation coefficients with repeated observations: Part 1—correlation within subjects

Martin Bland, +1 more
- 18 Feb 1995 - 
TL;DR: The authors pointed out that it could be highly misleading to analyse such data by combining repeated observations from several subjects and then calculating the correlation coefficient as if the data were a simple sample, as shown in table I.
Journal ArticleDOI

Statistical data preparation: management of missing values and outliers.

TL;DR: The types of missing values, ways of identifying outliers, and dealing with the two are discussed, which affect the process of estimating statistics, resulting in overestimated or underestimated values.
Related Papers (5)
Trending Questions (3)
What is pearson correlation coefficient is used?

The Pearson correlation coefficient is used to measure linear relationships between two normally distributed continuous variables, indicating the strength and direction of the association.

5.What is the correlation coefficient?

The paper explains that correlation coefficient is a measure of the association between variables, specifically in the context of a linear relationship between two continuous variables. It can be expressed as the Pearson product-moment correlation or the Spearman rank correlation.

What is the correlation coefficient?

The paper explains that correlation coefficient is a measure of the association between variables, specifically in the context of a linear relationship between two continuous variables. It can be expressed as the Pearson product-moment correlation or the Spearman rank correlation.