Significance of Mean and standard deviation
Mean and standard deviation are essential statistical measures used to summarize the average and variability of various datasets across multiple studies. They help describe central tendencies and variability in sample groups, such as serum bilirubin levels, clinical crown lengths, and recovery rates. Mean represents the average, while standard deviation quantifies the variation present within the data, serving as important tools for analyzing and interpreting experimental results in clinical research and other scientific studies.
Synonyms: Average, Variability, Dispersion, Spread, Distribution, Central tendency
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Hindu concept of 'Mean and standard deviation'
In Hinduism, Mean and standard deviation symbolize the balance and variability of life, reflecting changes in health metrics like body weight and cholesterol, signifying the journey towards physical wellness and harmony through treatment.
(1) These are used to present the results of the study, including the changes in body weight, total cholesterol, triglycerides, HDL, LDL, and VLDL before and after treatment.[1]
(1) These are statistical measures used to describe the average value and the spread of the data, respectively, and were used in the study.[2]
The concept of Mean and standard deviation in scientific sources
Mean and standard deviation are statistical measures that summarize clinical data, such as the size of renal calculi, providing insights into the average values and variability in symptom relief observed in the study.
(1) Statistical measures used to summarize the central tendency and variability of the ulnar artery measurements in the study.[3] (2) Descriptive statistics used to summarize data, indicating the average and the variability of the hippocampal volumes.[4] (3) Statistical measures used to summarize the central tendency and variability of serum bilirubin levels across different sample groups.[5] (4) Statistical measures that summarize the average and the spread of a dataset, respectively, used to describe the parameters measured in the study.[6]
(1) Statistical measures used to express the central tendency and variability of the results.[7]