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Biostatistics
2
MEANINGS OF STATISTICS
 Numerical Facts Systematically Arranged.
 Subject.
Statistics is the mathematical science of making
decisions and drawing conclusions from data in
situations of uncertainty. It includes collection,
organization and analysis of numerical data.
Statistics of prices, Statistics of road accidents,
Statistics of crimes, Statistics of birth, Statistics
of deaths, Statistics of educational institutions
etc.

3
INTRODUCTORY STATISTICS
OR
Statistics is a science, pure and applied, of
creating, developing and applying techniques
such that uncertainty of inductive inferences
may be evaluated.
Statistic.
A numerical quantity calculated from a sample.
Biostatistics
When the data analyzed are derived from the
biological sciences and medicine, we use
the term biostatistics to distinguish this
particular application of statistical tools and
concepts
Types of Statistics
Descriptive Statistics: Methods of
organizing, summarizing, and
presenting data in an informative
way.
Inferential Statistics: A decision,
estimate, prediction, or generalization
about a population, based on a sample
6
Population:- The collection of all possible observations
whether finite or infinite, relevant to some characteristic
of interest is called a population. The number of
observations in a finite population is called size of the
population and is denoted by N.
INTRODUCTORY STATISTICS
Sample: A sample is a part of a population. Generally
it consists of some of the observation. The number of
observations in a sample is called size of the sample
and is denoted by n.
7
INTRODUCTORY STATISTICS
Observation:
The numerically recording of information
is called observation/datum.
Data: The set of observations is called data.
Example:
It was observed that out of 500 rabbits caught,
300 were females. Is there evidence that more rabbits in
this country are females?
8
INTRODUCTORY STATISTICS
Parameter:
It is a quantity computed from a population if
the entire population is available. Parameters are fixed or
constant quantities and not usually known.
9
INTRODUCTORY STATISTICS
Variable:
A characteristics that varies from individual
to individual is called a variable. For example age, plant
height, weight, no of plants per plot etc are variables as
they vary from individual to individual.
Constant:
Quantity which do not vary from individual to
Individual is called constant. e.g. e= 2.71828 , = 3.145
10
Basic concepts
Descriptive Statistics
Presenting the numerical information in the form
of number, graphs and tables.
Inferential Statistics
To estimate the population parameter on the basis
of the sample statistic.
Population
The aggregate of units under discussion.
Sample
A subset / part of the population.
11
INTRODUCTORY STATISTICS
Types of variables:
Fixed or Mathematical Variable:
A variable may be fixed
or Mathematical when its value can be determined before
hand. e.g. amount of fertilizer to be applied to a plot,
amount of insecticide applied to control insect pests.
Random Variable:
A variable may be random when its
value cannot be exactly determined. e.g. yield from a plot
12
INTRODUCTORY STATISTICS
Types of variables:
(1):- Quantitative variable (2):- Qualitative variable.
Quantitative variable:- A variable is called Quantitative
variable when a characteristic can be expressed numerically
such as weight, income, number of children.
Qualitative variable:- If a characteristic is non-numerical
such as sex, colour, general knowledge, honesty, beauty, etc
the variable is called Qualitative/ Categorical variable or
attribute.
13
INTRODUCTORY STATISTICS
Types of Quantitative variable
1:- Discrete variable 2:- Continuous variable .
Discrete variable:- A variable which can assume some
specific values within a given range is called a discontinuous
or discrete variable. e.g. number of trees in a field, number
of leaves in a tree. A discrete variable takes on values which
are integers or whole numbers.
Continuous variable:- A variable which can assume any
value (fractional or integral) within a given range is called a
continuous variable. For example Height of a plant, the
temperature at a place.
14
Variable
Characteristic that varies form individual to individual
a) Fixed variable b) Random variable
Types of Variable
Quantitative variable
Capable of assuming a numerical value
Continuous variable
Can take all possible values in an interval
Discrete/Discontinuous variable
Can take only specified values
Qualitative/Categorical variable
Not capable of taking numerical measurements
• Constant
Don’t vary from individual to individual
15
INTRODUCTORY STATISTICS
Scales of Measurement
Measurement: Measurement refer to “Assigning of number to
observations or objects.
Scaling: Scaling is a process of measuring.
Four Scales of Measurements
1. Nominal Scale
2. Ordinal Scale
3. Interval Scale
4. Ratio Scale
Four Scales of
Measurements
16
INTRODUCTORY STATISTICS
Nominal Scale (Weakest form of measurement)
Nominal: Classifies variables simply in terms of their names
and the categories cannot be ranked. The variable “religion”
with the response categories “Christian,” “Jewish,”
“Muslim,” etc. is an example of a nominal scale of
measurement.
Rainfall may be classified as
• Heavy
• Moderate
• Light
17
INTRODUCTORY STATISTICS
Ordinal Scale (When numbers are allocated in some order)
It includes the characteristics of nominal scale and in addition
has a property of ordering or ranking of measurements.
• Attitude scale Strongly agree, agree, disagree
• Social scale Upper, middle, lower
• Performance of players Excellent, good, fair, poor
18
INTRODUCTORY STATISTICS
Interval Scale
Interval: Contains categories in which the actual distances,
or intervals, between categories can be compared. For
example, we can say that the difference between ages 20 and
25 is the same as the difference between ages 50 and 55.
Ratio Scale
Variables at a ratio scale of measurement are, typically,
those such as age, number of children, etc. The values of
these variables have a real "zero" value.
• Height of plant, weight of students, volume, length,

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Biostatics

  • 2. 2 MEANINGS OF STATISTICS  Numerical Facts Systematically Arranged.  Subject. Statistics is the mathematical science of making decisions and drawing conclusions from data in situations of uncertainty. It includes collection, organization and analysis of numerical data. Statistics of prices, Statistics of road accidents, Statistics of crimes, Statistics of birth, Statistics of deaths, Statistics of educational institutions etc. 
  • 3. 3 INTRODUCTORY STATISTICS OR Statistics is a science, pure and applied, of creating, developing and applying techniques such that uncertainty of inductive inferences may be evaluated. Statistic. A numerical quantity calculated from a sample.
  • 4. Biostatistics When the data analyzed are derived from the biological sciences and medicine, we use the term biostatistics to distinguish this particular application of statistical tools and concepts
  • 5. Types of Statistics Descriptive Statistics: Methods of organizing, summarizing, and presenting data in an informative way. Inferential Statistics: A decision, estimate, prediction, or generalization about a population, based on a sample
  • 6. 6 Population:- The collection of all possible observations whether finite or infinite, relevant to some characteristic of interest is called a population. The number of observations in a finite population is called size of the population and is denoted by N. INTRODUCTORY STATISTICS Sample: A sample is a part of a population. Generally it consists of some of the observation. The number of observations in a sample is called size of the sample and is denoted by n.
  • 7. 7 INTRODUCTORY STATISTICS Observation: The numerically recording of information is called observation/datum. Data: The set of observations is called data. Example: It was observed that out of 500 rabbits caught, 300 were females. Is there evidence that more rabbits in this country are females?
  • 8. 8 INTRODUCTORY STATISTICS Parameter: It is a quantity computed from a population if the entire population is available. Parameters are fixed or constant quantities and not usually known.
  • 9. 9 INTRODUCTORY STATISTICS Variable: A characteristics that varies from individual to individual is called a variable. For example age, plant height, weight, no of plants per plot etc are variables as they vary from individual to individual. Constant: Quantity which do not vary from individual to Individual is called constant. e.g. e= 2.71828 , = 3.145
  • 10. 10 Basic concepts Descriptive Statistics Presenting the numerical information in the form of number, graphs and tables. Inferential Statistics To estimate the population parameter on the basis of the sample statistic. Population The aggregate of units under discussion. Sample A subset / part of the population.
  • 11. 11 INTRODUCTORY STATISTICS Types of variables: Fixed or Mathematical Variable: A variable may be fixed or Mathematical when its value can be determined before hand. e.g. amount of fertilizer to be applied to a plot, amount of insecticide applied to control insect pests. Random Variable: A variable may be random when its value cannot be exactly determined. e.g. yield from a plot
  • 12. 12 INTRODUCTORY STATISTICS Types of variables: (1):- Quantitative variable (2):- Qualitative variable. Quantitative variable:- A variable is called Quantitative variable when a characteristic can be expressed numerically such as weight, income, number of children. Qualitative variable:- If a characteristic is non-numerical such as sex, colour, general knowledge, honesty, beauty, etc the variable is called Qualitative/ Categorical variable or attribute.
  • 13. 13 INTRODUCTORY STATISTICS Types of Quantitative variable 1:- Discrete variable 2:- Continuous variable . Discrete variable:- A variable which can assume some specific values within a given range is called a discontinuous or discrete variable. e.g. number of trees in a field, number of leaves in a tree. A discrete variable takes on values which are integers or whole numbers. Continuous variable:- A variable which can assume any value (fractional or integral) within a given range is called a continuous variable. For example Height of a plant, the temperature at a place.
  • 14. 14 Variable Characteristic that varies form individual to individual a) Fixed variable b) Random variable Types of Variable Quantitative variable Capable of assuming a numerical value Continuous variable Can take all possible values in an interval Discrete/Discontinuous variable Can take only specified values Qualitative/Categorical variable Not capable of taking numerical measurements • Constant Don’t vary from individual to individual
  • 15. 15 INTRODUCTORY STATISTICS Scales of Measurement Measurement: Measurement refer to “Assigning of number to observations or objects. Scaling: Scaling is a process of measuring. Four Scales of Measurements 1. Nominal Scale 2. Ordinal Scale 3. Interval Scale 4. Ratio Scale Four Scales of Measurements
  • 16. 16 INTRODUCTORY STATISTICS Nominal Scale (Weakest form of measurement) Nominal: Classifies variables simply in terms of their names and the categories cannot be ranked. The variable “religion” with the response categories “Christian,” “Jewish,” “Muslim,” etc. is an example of a nominal scale of measurement. Rainfall may be classified as • Heavy • Moderate • Light
  • 17. 17 INTRODUCTORY STATISTICS Ordinal Scale (When numbers are allocated in some order) It includes the characteristics of nominal scale and in addition has a property of ordering or ranking of measurements. • Attitude scale Strongly agree, agree, disagree • Social scale Upper, middle, lower • Performance of players Excellent, good, fair, poor
  • 18. 18 INTRODUCTORY STATISTICS Interval Scale Interval: Contains categories in which the actual distances, or intervals, between categories can be compared. For example, we can say that the difference between ages 20 and 25 is the same as the difference between ages 50 and 55. Ratio Scale Variables at a ratio scale of measurement are, typically, those such as age, number of children, etc. The values of these variables have a real "zero" value. • Height of plant, weight of students, volume, length,