Attach importance of the bootstrap t test against Student's t test in clinical epidemiology: a demonstrative comparison using COVID-19 as an example.

Título

Attach importance of the bootstrap t test against Student's t test in clinical epidemiology: a demonstrative comparison using COVID-19 as an example.

Autor

Jinjun Ran, Mohammad Javanbakht, Shi Zhao, Zuyao Yang, Salihu S Musa, Marc K C Chong, Daihai He, Maggie H Wang

Descripción

Student's t test is valid for statistical inference under the normality assumption or asymptotically. By contrast, although the bootstrap t test was proposed in 1993, it is seldom adopted in medical research. We aim to demonstrate that the bootstrap t test outperforms Student's t test under normality in data. Using random data samples from normal distributions, we evaluated the testing performance, in terms of true-positive rate (TPR) and false-positive rate and diagnostic abilities, in terms of the area under the curve (AUC), of the bootstrap t test and Student's t test. We explore the AUC of both tests with varying sample size and coefficient of variation. We compare the testing outcomes using the COVID-19 serial interval (SI) data in Shenzhen and Hong Kong, China, for demonstration. With fixed TPR, the bootstrap t test maintained the equivalent accuracy in TPR, but significantly improved the true-negative rate from the Student's t test. With varying TPR, the diagnostic ability of bootstrap t test outperformed or equivalently performed as Student's t test in terms of the AUC. The equivalent performances are possible but rarely occur in practice. We find that the bootstrap t test outperforms by successfully detecting the difference in COVID-19 SI, which is defined as the time interval between consecutive transmission generations, due to sex and non-pharmaceutical interventions against the Student's t test. We demonstrated that the bootstrap t test outperforms Student's t test, and it is recommended to replace Student's t test in medical data analysis regardless of sample size.

Fecha

2021

Materia

covid-19, serial interval, clinical epidemiology, Bootstrap t test, statistical hypothesis testing

Identificador

10.1017/S0950268821001047

Fuente

Epidemiology and infection

Archivos

https://socictopen.socict.org/files/to_import/pdfs/0edd15a338a56ccd638038ea0fcd027e.pdf

Colección

Citación

Jinjun Ran, Mohammad Javanbakht, Shi Zhao, Zuyao Yang, Salihu S Musa, Marc K C Chong, Daihai He, Maggie H Wang, “Attach importance of the bootstrap t test against Student's t test in clinical epidemiology: a demonstrative comparison using COVID-19 as an example.,” SOCICT Open, consulta 22 de abril de 2026, https://socictopen.socict.org/items/show/7144.

Formatos de Salida

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