Measures of Central Tendency and Dispersion
Descriptive statistics — mean/median/mode, range/IQR/variance/SD/CV, choosing the summary by data type & distribution shape, and SD vs SEM — RGUHS MD Pharmacology LAQ
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Definition, role & data types
- What they are — Summary (descriptive) statistics condense a set of observations into a few numbers carrying the essential information — a measure of location / central tendency (where the centre of the data lies) plus a measure of spread / dispersion (how widely values scatter about it). Two numbers — a location and a variability measure — are the usual minimum to describe a continuous variable; quoting location without spread is uninformative.
- Why a pharmacologist needs them — They underpin everything downstream: a trial's baseline table, summarising a dose–response or PK parameter (Cmax, AUC, t½, clearance), describing adverse-event rates, and feeding the point estimate ± its precision into confidence intervals and hypothesis tests. The location/spread split is the foundation on which the whole inferential layer is built.
- Two governing axes — The legitimate summary is chosen to match (a) the type of data and (b) the shape of the distribution — these two axes govern the entire topic.
Data type dictates the legitimate summary
| Data type | Examples | Proper summary |
|---|---|---|
| Quantitative — continuous | BP, weight, serum drug conc. | Mean ± SD (if symmetric) / median + IQR (if skewed) |
| Quantitative — discrete (count) | no. of attacks, no. of deaths | Mean or median; counts may need √ transform |
| Categorical — ordinal | tumour grade; pain 1–5; better/same/worse | Median (rank-based) |
| Categorical — nominal | sex; blood group; alive/dead | Mode / proportion |
| Binary (dichotomous) | responder / non-responder | Proportion (mean of 1/0 = proportion) |
- Scale dictates the summary — Mean and SD are properly used only for quantitative data that are roughly symmetric; ordinal data are best summarised by the median, nominal/binary by proportions. Applying a mean to nominal data is meaningless. Down-converting a continuous variable into categories (BP → hypertensive/normotensive) discards information and is avoided unless clinically justified.
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Measures Of Central Tendency Dispersion
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