A p-value is a statistical measure used to determine the probability that an observed result could have occurred by chance. It represents the likelihood of obtaining test results at least as extreme as the observed results, assuming that the null hypothesis is true.
In clinical research, p-values are often used to assess the statistical significance of study findings. A smaller p-value indicates stronger evidence against the null hypothesis, suggesting that the observed effect is less likely to be due to random chance.
P-values play a crucial role in clinical research by helping researchers interpret study results and make informed decisions. They provide a standardized measure for evaluating the strength of evidence against the null hypothesis, allowing researchers to determine whether observed effects are statistically significant or likely due to chance.
In clinical trials, p-values are often used to assess the efficacy and safety of new treatments or interventions. They help guide regulatory decisions, influence medical practice, and contribute to the development of evidence-based guidelines. Understanding p-values is essential for critically evaluating research findings and their potential impact on patient care.
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