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Gastroenterology & Hepatology: Open Access

Short Communication Volume 6 Issue 3

The Introspection of P-value for the Clinical Researches

Ching Wen Chien,1 Yung Chieh Tung,2 Tao Hsin Tung3,4

1Institute for Hospital Management, Tsing Hua University, China
2Department of Medical Imaging and Radiological Sciences, I-Shou University, Taiwan
3Department of Public Health, Fu Jen Catholic University, Taiwan
4Department of Medical Research and Education, Cheng Hsin General Hospital, Taiwan

Correspondence: Dr. Tao-Hsin Tung, Cheng Hsin General Hospital, Shih-Pai, 112, Taipei, Taiwan, Tel 886-2-28264400-7704, Fax 886-2-28264550

Received: March 02, 2017 | Published: March 8, 2017

Citation: Chien CW, Tung YC, Tung TH (2017) The Introspection of P-value for the Clinical Researches. Gastroenterol Hepatol Open Access 6(3): 00198. DOI: 10.15406/ghoa.2017.06.00198

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Short communication

It is known that the p-value is the probability of finding the observed or more extreme results when the null hypothesis (H0) of a statistical question is true. The definition of ‘extreme’ based on how the statistical hypothesis is being tested. The p-value is also described in terms of rejection of H0 when it is actually true but it is not a direct probability of this state. The significance level (alpha) is used to refer to a pre-chosen probability and the p-value is used to indicate a probability that the researcher calculate after a given study. Its interpretation is made extraordinarily difficult because it is not part of any formal system of statistical inference.1

"A two-side p-value of <0.05 was considered statistically significant." There are so many analyses done after the data were collected without controlling for multiple analyses, however, it is very difficult to determine what should be considered "significant". In addition, the results are misinterpreted, as authors only based all their conclusions on p-values rather than clinical relevance of the estimates. One example is the interpretation of the sex difference between men and women. Suppose we write “In the crude analysis, both men and women with obesity has an increased risk of gallstone disease compared to their respective controls [crude relative risk (RR) being 1.95 (95% CI: 1.32-2.89) and 1.80 (95% CI: 1.09-2.97), respectively]. After adjustment for potential confounding factors, men with obesity still had a significantly higher risk of gallstone disease than controls [adjusted RR 1.51 (95% CI: 1.01-2.25)] but women with obesity did not [adjusted RR 1.35 (95% 0.82-2.24)].” This interpretation is based on p-values alone. In fact, the adjusted estimates for men and women are very similar, as both support a 35-51% increased risk. The precision, as measure by the width of the confidence interval, is poor and the estimates overlap quite a bit for men and women.

Writing about p-values seems barely to make a dent in the mountain of misconceptions.1 From the evidence-based medicine viewpoint, the statistical significance is presented as either a p-value or 95% confidence interval. A p-value shows the probability that an observed effect is due to sampling error and a 95% confidence interval is a range of treatment effects in which we could be 95% confident that the true effect lies.2 The consideration of a statistically significant effects measured also should be a clinically meaningful for the measurement of primary outcomes.

Acknowledgments

None.

Conflicts of interest

The authors declare there is no conflict of interests.

Funding

None.

References

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©2017 Chien, et al. This is an open access article distributed under the terms of the, which permits unrestricted use, distribution, and build upon your work non-commercially.