The most used distribution in statistical analysis is the normal distribution. Parametric tests (e.g. one sample t-test) require that the data are normally distributed. In this study, milk somatic cell count data (SCC) used to test the normal distribution was obtained from a farm for the first and second month of lactation. According to the findings of the present study, SCC data of the first month showed normal distribution. However, the SCC data of the second month did not show normal distribution. Since the first month data showed a normal distribution, one-sample t-test, which is one of the parametric test methods, was applied for comparison with a specific reference value; since the second month data did not show a normal distribution, the Wilcoxon One-Sample Signed Rank Test, which is the non-parametric equivalent of the one-sample t-test, was applied. When the parametric test was applied to the second month data that did not show a normal distribution, results that did not comply with the standards in terms of SCC were found. When the same data was analyzed with the nonparametric test method, results that complied with the standards were obtained. It is noteworthy that different results are obtained in both analyses. As can be seen from the research results, since existing data sets in the field of microbiology may tend to show large variations, it should be tested whether the data show normal distribution before determining the statistical analysis method. According to the research results, the normality test must be applied in the statistical analysis of microbiological data showing large variations.
1. Al-Eideh, B.M., Statistical methods for business data analysis using spss. 2016, Scholars Press. ISBN-10: 9783639864892.
2. Flora, D.B., Statistical methods for the social and behavioral sciences: a model based approach. 2018, Pp. 472. Sage publications. ISBN-10: 1446269833.
3. Thalberg, M., Statistical analysis: Methods and techniques for data interpretation. 2024, Independently pub. ISBN-13:979-8325377037.
4. Padem, H., A. Göksu, and Z. Konaklı, Araştırma yöntemleri. Spss uygulamalı. 2012, International Burch University. Sarajevo. ISBN: 978-9958-834-04-2.
5. Borman, D., Statistics 101: from data analysis and predictive modeling to measuring distribution and determining probability, your essential guide to statistics. 2018, Simon and Schuster Pub. Pp 240. ISBN:1507208189, 9781507208182.
6. Sumpter, D., Four ways of thinking: statistical, interactive, chaotic and complex. 2023, Allen Lane pub. Pp. 336. ISBN-10:0241624169.
7. Jung, Y.M., Data analysis in quantitative research. 2018, In: Liamputtong, P. (eds) Handbook of research methods in health social sciences. Springer, Singapore. ISBN: 978-981-10-5251-4.
8. Ott, R. and M. Longnecker, An introduction to statistical methods and data analysis. 2021, Cengage Learning. 7 th Ed. Pp. 1296. ISBN-10: 0357670620.
9. Mahsin, M.. Data analysis techniques for quantitative study. 2022, In: Islam, M.R., Khan, N.A., Baikady, R. (eds) Principles of social research methodology. Springer, Singapore. ISBN: 978-981-19-5441-2.
10. Çimen, M., Fen ve sağlık bilimleri alanlarında spss uygulamalı veri analizi. 2015, Palme Yayıncılık, Yayın No: 905, ISBN: 978-605-355-366-3. Sıhhıye, Ankara.
11. Das, K., A brief review of tests for normality. American Journal of Theoretical and Applied Statistics, 2016. 5(1): p.5-12.
12. Hatem, G., J. Zeidan, and M. Goessens, Normality testing methods and the importance of skewness and kurtosis in statistical analysis, BAU Journal Science and Technology, 2022. 3(2): p. 1-7.
13. Huynh, K., Getting started with spss: an introduction for beginners. 2024. Independently pub. First Ed. P 174. ISBN-13:979-8878835145.
14. Jung, Y.M., Data analysis in quantitative research. 2019, In: Liamputtong, P. (eds) Handbook of research methods in health social sciences. Springer, Singapore. ISBN: 978-981-10-5251-4.
15. Rutheford, A., Statistics for the rest us: mastering the art of understanding data without math skills (advanced thinking skills). 2023, Independently pub. Pp 152. ISBN-13:979-8391345831.
16. Frost, J., Introduction to statistics: an intuitive guide for analyzing data and unlocking discoveries. 2020, Statistics by jim publishing. Pp 255. ISBN-10:1735431109.
17. Theobald, O., Statistics for Absolute beginners (Secon Edition) (Al data sciences, python&statistics for beginners. 2020, Independently pub. Pp 157. ISBN-13:979-8654976123.
18. Rumsey, D.J., Statistics al in on efor dummies. 2022, For dummies pub.Pp 560. ISBN-10 : 1119902568.
25. Anonymous., Digital literacy training. Spss advanced significance testing. 2019, ANU Library. Pp.20. Available from: https://services.anu.edu.au/files/SPSSAdvancedSigni ficance Testing.pdf .
26. Rutherford, A. and J.H. Kim, The art of statistical thinking: detect misinformation, understand the world deeper, and make better decisions. (Advanced Thinking Skills). 2022, First Edition. ARB Publications. ISBN: 9798358180710.
27. Sheskin, D.J., Handbook of parametric and non-parametric statistical procedures. 2011, Fifth Edition. Taylor and Francis Group. 6000 Broken South Parkway NW Suite 300 Boca Raton. FI. 33487-2742. ISBN: 978-1-4398-5801-1.
28. Rezai, A. and S. Jalal, Investigating the causes of delay and cost overrun in construction industry. International Advanced Researches and Engineering Journal, 2018. 2(2): p. 75-79.
29. Mamenko, 0. and S. Potiannyk, Rank non-parametric correlation analysis of indicators of heavy metal transition from blood to cow's milk to assess its environmental safety. Scientific Horizons, 2021. 24(5): p.35-45.
30. Singh, J.P, Statistical methods in public health. 2022, In Gupta S.D. (eds) health care system managements. Pp. 85-127. Springer. ISBN: 978-981-19-3076-8.
31. Yuan, I., A.A. Topjian, C.D. Kurth, M.P. Kirschen, C.G. Ward, B. Zhang, and J.L. Mensinger, Guide to the statistical analysis plan. Pediatric Anesthesia, 2019. 29(3): p.1-15.
32. Jebb, A.T., S. Parrigon, and S.E. Woo, Exploratory data analysis as a foundation of inductive research. Human Resource Management Review, 2017. 27(2): p.265-276.
1. Al-Eideh, B.M., Statistical methods for business data analysis using spss. 2016, Scholars Press. ISBN-10: 9783639864892.
2. Flora, D.B., Statistical methods for the social and behavioral sciences: a model based approach. 2018, Pp. 472. Sage publications. ISBN-10: 1446269833.
3. Thalberg, M., Statistical analysis: Methods and techniques for data interpretation. 2024, Independently pub. ISBN-13:979-8325377037.
4. Padem, H., A. Göksu, and Z. Konaklı, Araştırma yöntemleri. Spss uygulamalı. 2012, International Burch University. Sarajevo. ISBN: 978-9958-834-04-2.
5. Borman, D., Statistics 101: from data analysis and predictive modeling to measuring distribution and determining probability, your essential guide to statistics. 2018, Simon and Schuster Pub. Pp 240. ISBN:1507208189, 9781507208182.
6. Sumpter, D., Four ways of thinking: statistical, interactive, chaotic and complex. 2023, Allen Lane pub. Pp. 336. ISBN-10:0241624169.
7. Jung, Y.M., Data analysis in quantitative research. 2018, In: Liamputtong, P. (eds) Handbook of research methods in health social sciences. Springer, Singapore. ISBN: 978-981-10-5251-4.
8. Ott, R. and M. Longnecker, An introduction to statistical methods and data analysis. 2021, Cengage Learning. 7 th Ed. Pp. 1296. ISBN-10: 0357670620.
9. Mahsin, M.. Data analysis techniques for quantitative study. 2022, In: Islam, M.R., Khan, N.A., Baikady, R. (eds) Principles of social research methodology. Springer, Singapore. ISBN: 978-981-19-5441-2.
10. Çimen, M., Fen ve sağlık bilimleri alanlarında spss uygulamalı veri analizi. 2015, Palme Yayıncılık, Yayın No: 905, ISBN: 978-605-355-366-3. Sıhhıye, Ankara.
11. Das, K., A brief review of tests for normality. American Journal of Theoretical and Applied Statistics, 2016. 5(1): p.5-12.
12. Hatem, G., J. Zeidan, and M. Goessens, Normality testing methods and the importance of skewness and kurtosis in statistical analysis, BAU Journal Science and Technology, 2022. 3(2): p. 1-7.
13. Huynh, K., Getting started with spss: an introduction for beginners. 2024. Independently pub. First Ed. P 174. ISBN-13:979-8878835145.
14. Jung, Y.M., Data analysis in quantitative research. 2019, In: Liamputtong, P. (eds) Handbook of research methods in health social sciences. Springer, Singapore. ISBN: 978-981-10-5251-4.
15. Rutheford, A., Statistics for the rest us: mastering the art of understanding data without math skills (advanced thinking skills). 2023, Independently pub. Pp 152. ISBN-13:979-8391345831.
16. Frost, J., Introduction to statistics: an intuitive guide for analyzing data and unlocking discoveries. 2020, Statistics by jim publishing. Pp 255. ISBN-10:1735431109.
17. Theobald, O., Statistics for Absolute beginners (Secon Edition) (Al data sciences, python&statistics for beginners. 2020, Independently pub. Pp 157. ISBN-13:979-8654976123.
18. Rumsey, D.J., Statistics al in on efor dummies. 2022, For dummies pub.Pp 560. ISBN-10 : 1119902568.
25. Anonymous., Digital literacy training. Spss advanced significance testing. 2019, ANU Library. Pp.20. Available from: https://services.anu.edu.au/files/SPSSAdvancedSigni ficance Testing.pdf .
26. Rutherford, A. and J.H. Kim, The art of statistical thinking: detect misinformation, understand the world deeper, and make better decisions. (Advanced Thinking Skills). 2022, First Edition. ARB Publications. ISBN: 9798358180710.
27. Sheskin, D.J., Handbook of parametric and non-parametric statistical procedures. 2011, Fifth Edition. Taylor and Francis Group. 6000 Broken South Parkway NW Suite 300 Boca Raton. FI. 33487-2742. ISBN: 978-1-4398-5801-1.
28. Rezai, A. and S. Jalal, Investigating the causes of delay and cost overrun in construction industry. International Advanced Researches and Engineering Journal, 2018. 2(2): p. 75-79.
29. Mamenko, 0. and S. Potiannyk, Rank non-parametric correlation analysis of indicators of heavy metal transition from blood to cow's milk to assess its environmental safety. Scientific Horizons, 2021. 24(5): p.35-45.
30. Singh, J.P, Statistical methods in public health. 2022, In Gupta S.D. (eds) health care system managements. Pp. 85-127. Springer. ISBN: 978-981-19-3076-8.
31. Yuan, I., A.A. Topjian, C.D. Kurth, M.P. Kirschen, C.G. Ward, B. Zhang, and J.L. Mensinger, Guide to the statistical analysis plan. Pediatric Anesthesia, 2019. 29(3): p.1-15.
32. Jebb, A.T., S. Parrigon, and S.E. Woo, Exploratory data analysis as a foundation of inductive research. Human Resource Management Review, 2017. 27(2): p.265-276.
Çimen, M. (2024). A research on the importance of testing the normality assumption in microbiological data. International Advanced Researches and Engineering Journal, 8(3), 161-166. https://doi.org/10.35860/iarej.1532064
AMA
Çimen M. A research on the importance of testing the normality assumption in microbiological data. Int. Adv. Res. Eng. J. December 2024;8(3):161-166. doi:10.35860/iarej.1532064
Chicago
Çimen, Murat. “A Research on the Importance of Testing the Normality Assumption in Microbiological Data”. International Advanced Researches and Engineering Journal 8, no. 3 (December 2024): 161-66. https://doi.org/10.35860/iarej.1532064.
EndNote
Çimen M (December 1, 2024) A research on the importance of testing the normality assumption in microbiological data. International Advanced Researches and Engineering Journal 8 3 161–166.
IEEE
M. Çimen, “A research on the importance of testing the normality assumption in microbiological data”, Int. Adv. Res. Eng. J., vol. 8, no. 3, pp. 161–166, 2024, doi: 10.35860/iarej.1532064.
ISNAD
Çimen, Murat. “A Research on the Importance of Testing the Normality Assumption in Microbiological Data”. International Advanced Researches and Engineering Journal 8/3 (December 2024), 161-166. https://doi.org/10.35860/iarej.1532064.
JAMA
Çimen M. A research on the importance of testing the normality assumption in microbiological data. Int. Adv. Res. Eng. J. 2024;8:161–166.
MLA
Çimen, Murat. “A Research on the Importance of Testing the Normality Assumption in Microbiological Data”. International Advanced Researches and Engineering Journal, vol. 8, no. 3, 2024, pp. 161-6, doi:10.35860/iarej.1532064.
Vancouver
Çimen M. A research on the importance of testing the normality assumption in microbiological data. Int. Adv. Res. Eng. J. 2024;8(3):161-6.