Article,

How to use linear regression and correlation in quantitative method comparison studies.

, and .
International journal of clinical practice, 62 (4): 529-38 (April 2008)4558<m:linebreak></m:linebreak>PUBM: Print; JID: 9712381; RF: 32; ppublish;<m:linebreak></m:linebreak>Mesures de concordància.
DOI: 10.1111/j.1742-1241.2008.01709.x

Abstract

Linear regression methods try to determine the best linear relationship between data points while correlation coefficients assess the association (as opposed to agreement) between the two methods. Linear regression and correlation play an important part in the interpretation of quantitative method comparison studies. Their major strength is that they are widely known and as a result both are employed in the vast majority of method comparison studies. While previously performed by hand, the availability of statistical packages means that regression analysis is usually performed by software packages including MS Excel, with or without the software programe Analyze-it as well as by other software packages. Such techniques need to be employed in a way that compares the agreement between the two methods examined and more importantly, because we are dealing with individual patients, whether the degree of agreement is clinically acceptable. Despite their use for many years, there is a lot of ignorance about the validity as well as the pros and cons of linear regression and correlation techniques. This review article describes the types of linear regression and regression (parametric and non-parametric methods) and the necessary general and specific requirements. The selection of the type of regression depends on where one has been trained, the tradition of the laboratory and the availability of adequate software.

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