A paired t-test assesses whether the mean difference between two sets of observations obtained from the same subjects or matched pairs is statistically significant. For example, it might be used to compare blood pressure readings before and after administering a new medication to the same group of individuals. The test calculates a t-statistic based on the observed differences, the standard deviation of those differences, and the sample size. This statistic is then compared to a critical value derived from the t-distribution to determine the probability of observing such a difference by chance alone.
Understanding the outcome of such a statistical analysis is crucial for drawing valid conclusions in research. It provides a rigorous framework for evaluating interventions, treatments, or changes over time within a controlled setting. Historically, this methodology emerged as a powerful tool for analyzing experimental data, particularly in fields like medicine, psychology, and biology where controlled before-and-after comparisons are common. Proper interpretation enables researchers to distinguish true effects from random variation and contributes to evidence-based decision-making.