线性回归分析的应用和解释。

Q2 Medicine
Narges Roustaei
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引用次数: 0

摘要

背景:线性回归分析是一种著名的统计技术,是了解变量之间关系的基础。它的简便性和可解释性使其成为包括视觉科学在内的医疗保健研究的首选,因为它能让研究人员和从业人员有效地建立模型并预测结果。本文介绍了线性回归建模的基本原理,并回顾了主要线性回归分析的应用和解释:线性回归的主要目的是对观测数据拟合一个线性方程,从而预测和解释预测变量的影响。简单线性回归只涉及一个自变量,而多元线性回归则包括多个预测变量。线性回归模型用于确定连接自变量和因变量的一般基本模式,证明这些变量之间的关系,并预测自变量特定值的因变量。本综述以视觉科学领域的出版物为例,说明如何正确解释线性回归结果:结果:进行了简单和多重线性回归,重点是正确解释标准化和非标准化回归系数、决定系数、变量选择方法、线性回归中的假设、虚拟变量和样本大小,以及报告线性回归分析中的常见错误。最后,为编辑和同行评审人员提供了一份核对表,以便对使用线性回归模型的投稿进行系统评估:医学从业人员和研究人员应掌握线性回归的基本知识,以便通过准确解释研究成果为技术开发做出有意义的贡献。不正确地使用或解释适当的线性回归模型可能会导致不准确的结果。在跨学科研究团队中任命一名专业统计人员,可以防止夸大研究结果,从而为研究设计提供附加值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application and interpretation of linear-regression analysis.

Background: Linear-regression analysis is a well-known statistical technique that serves as a basis for understanding the relationships between variables. Its simplicity and interpretability render it the preferred choice in healthcare research, including vision science, as it enables researchers and practitioners to model and predict outcomes effectively. This article presents the fundamentals of linear-regression modeling and reviews the applications and interpretations of the main linear-regression analysis.

Methods: The primary objective of linear regression is to fit a linear equation to observed data, thus allowing one to predict and interpret the effects of predictor variables. A simple linear regression involves a single independent variable, whereas multiple linear regression includes multiple predictors. A linear-regression model is used to identify the general underlying pattern connecting independent and dependent variables, prove the relationship between these variables, and predict the dependent variables for a specified value of the independent variables. This review demonstrates the appropriate interpretation of linear-regression results using examples from publications in the field of vision science.

Results: Simple and multiple linear regressions are performed, with emphasis on the correct interpretation of standardized and unstandardized regression coefficients, the coefficient of determination, the method for variable selection, assumptions in linear regression, dummy variables, and sample size, along with common mistakes in reporting linear-regression analysis. Finally, a checklist is presented to the editors and peer reviewers for a systematic assessment of submissions that used linear-regression models.

Conclusions: Medical practitioners and researchers should acquire basic knowledge of linear-regression such that they can contribute meaningfully to the development of technology by accurately interpreting research outcomes. Incorrect use or interpretation of appropriate linear-regression models may result in inaccurate results. Appointing an expert statistician in an interdisciplinary research team may offer added value to the study design by preventing overstated results.

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CiteScore
2.00
自引率
0.00%
发文量
19
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