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Saneii S. Practical Biostatistics for Medical and Health Sciences 2024
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Category:Other Total size: 6.92 MB Added: 7 months ago (2025-03-10 23:38:56)
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Description:
Textbook in PDF format
This book addresses the challenge of presenting biostatistics to medical and health science audiences coherently. Tailored for students and researchers, its 13 chapters progress logically from foundational concepts like measurement scales and statistical calculations to advanced topics such as probability, correlation, regression and health and disease measures. Practical examples enhance relevance, and its gradual approach ensures easy comprehension even for non-statisticians. The book's practical emphasis shines as it culminates in teaching the use of SPSS software for result interpretation, bridging theory and practice effectively. It empowers medical professionals to confidently understand and apply statistical concepts in their work, serving as an indispensable resource in navigating the intricacies of biostatistics in medical and health sciences.
Front Matter
Measuring Scales
Tables and Charts
Summarizing Data
Probability
Discrete Distributions
Normal Distribution
Sampling and Sample Size
Estimation and Statistical Inference
Health and Disease Measures
Foreground Toolbox for Hypothesis Testing
Hypothesis Testing
Correlation and Regression
Analysis of Variance
Back Matter