BIOSTATISTICS-Normal Curve, Test of significance, Standard error
| A | Symmetric | |
| B |
Normal |
|
| C |
Positively skewed |
|
| D |
Negatively skewed |
If mean, median and mode are 10, 18, 26 respectively, the distribution is :
| A |
Symmetric |
|
| B |
Normal |
|
| C |
Positively skewed |
|
| D |
Negatively skewed |
Negatively skewed
For a symmetric curve such as gaussian – mean, median and mode coincide. That is, they are the same value.
– A skewed distribution will have different mean, median and mode. In fact, very different values of mean, median and mode is a clear indication of skewness.
In positive skew, mean>median>mode. In negative skew, mean<median<mode.
The systolic blood pressure of 10 individuals was measured. The mean and median values were calculated to be 130 mmHg and 140 mmHg respectively. What is the shape of the frequency distribution curve?
| A |
Symmetrical distribution |
|
| B |
Bimodal distribution |
|
| C |
Positively skewed distribution |
|
| D |
Negatively skewed distribution |
A negatively skewed distribution is where most of the values are on the higher side and the tail is pointing left.
The mean of a distribution is more affected by extreme values than is the median.
Therefore, in a negatively skewed distribution with few values on the lower end of the distribution, the mean is pulled towards the tail or lower end and becomes less than the median.
Ref: Park’s Textbook Of Preventive And Social Medicine, By K. Park, 19th Edition, Pages 699-702; Essentials of Research Methods in Health, Physical Education, Exercise Science and Recreation, By Kris E. Berg, Richard W. Latin, Second Edition, Pages 85-87; High-Yield Biostatistics, By Anthony N. Glaser, Third Edition, Pages 10, 11.
In a bell-shaped standard normal curve, mean ±2 standard deviations covers:
| A |
60% |
|
| B |
65% |
|
| C |
95% |
|
| D |
99% |
- 67% of the observations lie between the mean ± 1 standard deviation
- 95% of the observations lie between the mean ± 2 standard deviations
- 99.7% of the observations lie between the mean ± 3 standard deviations
A normal distribution curve depends on –
| A |
Mean and Sample size |
|
| B |
Range and Sample Size |
|
| C |
Mean and Standard deviation |
|
| D |
Mean and median |
Ans. is ‘c’ i.e., Mean and standard deviation
o Normal distribution curve is based on mean and standard deviation
Shape of normal distribution curve‑
| A |
J shape |
|
| B |
U shape |
|
| C |
Bell shape |
|
| D |
None |
Ans. is ‘c’ i.e., Bell shape
o Standard normal curve (Gaussian distribution) is bell shape curve.
Regarding the normal curve, true is/are-
| A |
Both limbs of the curve touch the baseline |
|
| B |
Curve is bilaterally symmetrical |
|
| C |
There is a skew to the right |
|
| D |
There is a skew to the left |
Ans. is ‘b’ i.e., Curve is bilaterally symmetrical
o Confidence limit of normal curve can never be 100%; therefore, limbs of curve never touch the baseline.
o Mean, Median and mode all coincide —> No skew.
Normal curve –
| A |
Distribution of data is symmetrical |
|
| B |
Mean > Mode |
|
| C |
Mode > Mean |
|
| D |
Median > Mean |
Ans. is ‘a’ i.e., Distribution of data is symmetrical
o In standard normal curve data is distributed symmetrically on either side of central value.
o Mean = Median = mode = zero
Systolic BP of a group of persons follows normal distribution curve. The mean BP is 120. The values above 120 are –
| A |
25% |
|
| B |
75% |
|
| C |
50% |
|
| D |
100% |
Ans. is c i.e., 50%
In a group of 100 children, the weight of a child is 15 kg. The standard error is 1.5 kg. Which one of the following is TRUE –
| A |
95% of all children weigh between 12 and 18 kg |
|
| B |
95% of all children weigh between 13.5 and 16.5 kg |
|
| C |
99% of all children weigh between 12 and 18 kg |
|
| D |
99% of all children weigh between 13.5 and 16.5kg |
Ans. is ‘a’ i.e., 95% of all children weight between 12 and 18 kg
o Here the examinor himself has given us the valve of standard error = 1.5
o So, we can directly apply sample data to population.
o 95% of data will be covered by 2 standard error = 15 ± 2 SE =12 ± 3
= 12 to 18
| A |
Dispersion |
|
| B |
Distribution |
|
| C |
Variation |
|
| D |
a and c |
Ans. is ‘a’ i.e., Dispersion; ‘c’ Variation
Standard error of mean
- It is simply referred to as standard error.
o If we measure a sample from a wider population, then the mean of the sample will be an approximation of the total population mean.
- But how accurate is this ?
o The answer of this question is to calculate standard error of mean : ‑
o If we take multiple samples from a wide population, and measure the mean of each sample, we will find that every sample has different mean.
o If we make a frequency distribution of all these means (means of every sample), we will find the distribution of these means is normal Gaussian distribution.
o The mean of all these sample means (mean of every sample) will be same as the population mean.
Standard error of mean is the standard deviation of the mean of sample means, and thus gives a measure of their spread.
Standard errors of mean, all are true except ‑
| A | Increases with increased number of samples | |
| B |
Based on normal distribution curve |
|
| C |
Measure the confidence limit |
|
| D |
Standard deviation |
Ans. is ‘a’ i.e., Increase with sample size increase
While calculating the incubation period for measles in a group of 25 children, deviation is 2 and the mean incubation period is 8 days. Calculate the standard error –
| A |
0.4 |
|
| B |
1 |
|
| C |
0.5 |
|
| D |
2 |
Ans. is ‘a’ i.e., 0.4
Estimated mean Hemoglobin (I-lb) of 100 women is 10g%. Standard deviation (a) is lgm%. Standard error of estimate will be –
| A |
0.001 |
|
| B |
1.0 |
|
| C |
10.0 |
|
| D |
0.1 |
Ans. is ‘d’ i.e., 0.1
o Standard error of mean is calculated as Standard Deviation/ VT1; where ‘n’ is the total number of values within the sample. Thus the standard error of mean hemoglobin from the above sample would be (1.0/ Vioo ) or 1/10 or 0.1.
For a negatively skewed data mean will be ‑
| A |
Less than median |
|
| B |
More than median |
|
| C |
Equal to median |
|
| D |
One |
Ans. is ‘a’ i.e., Less than median
- Sidedness of the skewed distribution is towards the side of tail. For example right sided skewed deviation means the tail is towards the right.
Facts to remember the relation between mean, media & mode (see above figure) :-
i) Mean is right of the median under right skew, and left of the median under left skew.
ii) Mode is left of the median under right skew, and right of the median under left skew.
| A |
Mean = Median |
|
| B |
Mean < Mode |
|
| C |
Mean>Mode |
|
| D |
Mean = Mode |
Ans. is ‘b’ i.e., Mean < Mode
A non-sysmmetrical frequency distribution is known as –
| A |
Normal distribution |
|
| B |
Skewed distribution |
|
| C |
Cumulative frequency distribution |
|
| D |
None of the above |
Ans. is ‘b’ i.e., Skewed distribution
In a normal distribution curve, the true statement is:
March 2011, March 2013
| A |
Mean = standard deviation |
|
| B |
Median = standard deviation |
|
| C |
Mean = 2 median |
|
| D |
Mean = mode |
Ans. D: Mean = Mode
In a normal distribution curve, mean, mode and median coincide
Normal distribution
- It describes real world situations based on study results.
- It is used for continuous quantitative variables.
- It has an infinite range.
- It is the distribution that is normally seen.
- Although it is called “Normal” it applies to most biomedical measurements specially with big number of observations.
- It is the most important tool in analysis of epidemiological and research data.
- Has a Bell Shape Curve and is Symmetric
- It is Symmetric around a central axis (the mean)
- The halves of the curve are the same (mirror images)
- Mean = Median = Mode determine the location of the curve
- The total area under the curve is 1 (or 100%)
- Distinguishing features of normal distribution
- The mean ± 1 standard deviation covers 68% of the area under the curve (68% of cases)
- The mean ± 2 standard deviation covers 95% of the area under the curve (95% of cases)
- The mean ± 3 standard deviation covers 99.7% of the area under the curve (almost all cases)
| A | Standard curve | |
| B |
Positively skewed |
|
| C |
Negatively skewed |
|
| D |
J-shaped |
Ans. is ‘b’ i.e., Positively skewed
In question, mean > median > mode → Feature of positively skewed deviation.
In positively skewed deviation ‑
| A |
Mean = Median = Mode |
|
| B |
Mean > Medians > Mode |
|
| C |
Mode > Median > Mean |
|
| D |
None of the above |
Ans. is ‘b’ i.e., Mean > Medians > Mode
Identify the Distribution Shown.

| A |
Normal Distribution |
|
| B |
Right Skewed Distribution |
|
| C |
Left Skewed Distribution |
|
| D |
Poisonn’s Distribution |
Ans:B.)Right Skewed Distribution
Normal Distribution Curve
- A histogram is the graphical representation of quantitative data .
- It is used for continuous quantitative variables like systolic BP, height, weight etc.
- It has an infinite range.
- Characteristics of a Normal Curve
- It is bell shaped
- It is symmetrical bilaterally.
- Total area of the curve is 1; its mean is zero; and its standard deviation is 1.
- Mean, mode and median coincide and = 0
- It has two inflictions at the points where the curve changes from convexity to concavity
- Mean ± 1 SD includes 68.27% of observations
- Mean ± 2 SD will include 95% of the values and
- Mean ± 3 SD will include 99.5% of observations.
Skew distribution.
Skewed to left (negatively skewed)
- A left-skewed distribution has a long left tail.
- The mean is also to the left of the peak.
- Median>mean.
Skewed to Right (Positively skewed)
- A right-skewed distribution has a long right tail.
- The mean is also to the right of the peak.
- Median<mean.
Poisson distribution .
- Limiting form of binominal distribution when probability of success is closer to zero and numbers of trials are infinite. Mean=variance.

| A |
1-Normal distribution, 2-Positive skewed, 3-Negative skewed |
|
| B |
1-Normal distribution, 2-Negative skewed, 3-Positive skewed |
|
| C |
1-Negative skewed, 2-Positive skewed, 3-Normal distribution |
|
| D |
I -Positive skewed, 2-Normal distribution, 3-Negative skewed |
Ans: B. 1-Normal distribution, 2-Negative skewed, 3-Positive skewed
Positive or negative skewed data:
- Defined by the direction of the tail, i.e. direction of the least frequency values.
- Similarly in this box plot, we can see that the data is equally distributed on either side of the mean box in Plot (1).
- In Plot (2), the median is towards the higher side and most values are distributed towards the higher side hence it is negatively skewed.
- Hence, vice versa for Plot (3).
Area under Normal curve with ±1 SD:
| A | 0.68 | |
| B |
0.17 |
|
| C |
0.12 |
|
| D |
0.34 |
Answer- A. 0.68

The area under the Normal curve with ± 1 SD is 0.68.

