We hope that you will enjoy viewing our humble HS2135 STATISTICS project bloggy. =)
From left to right: Yanan, Gelinda, Robin & Shakinah
From left to right: Yanan, Gelinda, Robin & Shakinah
Body temperature is a measure of the body's ability to generate and get rid of heat. It is one of the 5 parameters taken when we measure a person's vital signs (the other 4 being Blood Pressure, Pulse Rate, Respiration Rate & Pain).
There are various ways to measure body temperature, via:
2. Calibration - The temperatures are measured using the SAME BRAND of electronic thermometers. They have been pre-checked to ensure they register readings that are are within ±0.1°C when measuring from the SAME cup of warm water at the SAME time.
3. Thermosheaths were also used for both oral and axilla temperature taking to maintain consistency.
4. We took measurements of both temperature routes for each individual TWICE to obtain an AVERAGE.
5. The data was collected from a group of healthy males & females from 17 to 24 years old.
What Can Affect the Test:
Inaccurate temperature readings can be caused by:
Precautions Taken During Operationalization:
Overall, the data collected was good and there was no rejection.
Hypothesis Testing
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In our study, we have set α at 0.05.
Choosing an appropriate statistical test
The statistical test depends whether the research question is about:
For our study, it is about correlation.
source: Chia, C. Y. (2008). Statistics in health sciences. (4th ed.). Singapore: McGraw Hill Education
Since both of our variables in question are scale variables, and guided by the above decision path, we use Pearson's r to do the testing.
What is Pearson's r?
1. Pearson's r let us know the strength and direction of the linear association between two scale variables.
2. This correlation coefficient indicates the strength of the correlation.
3. Its limit ranges from -1 to +1. The + or - values indicates the direction of the correlation and lets us know how the variables are related.
4. Values near -1 indicates a strong negative relationship and is visually represented by a downward slope of the samples in a graph, while values near +1 indicates a strong positive relationship and an upward slope of the graph.
5. The closer the correlation coefficient approaches zero, the weaker the relationship between the two variables.


Our table above show Pearson's correlation coefficients of 0.964 for [Females] & 0.960 for [Males].
INTERPRETING PEARSON'S r
The COMBINED table above shows the Pearson's correlation coefficient of 0.956 for [Males + Females] (ie. ALL samples). It indicates a VERY STRONG, SIGNIFICANT and POSITIVE RELATIONSHIP between oral temperature and axilla temperature for [Males + Females].
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COMPUTING THE REGRESSION LINES FOR [Female], [Male] and [Male + Female] (ie. y = mx + c)
Since a relationship exists between oral and axilla temperatures, we now perform linear regressions using SPSS to construct equations that can predict a person's oral temperature from his/her axilla temperature.
The data table below is for [Female] samples.
The linear equation for [Females] is
Oral Temp Female = 1.073 x (Axilla Temp Female) - 2.239 °C
The data table below is for [Male] samples.
The linear equation for [Males] is
Oral Temp Male = 1.116 x (Axilla Temp Male) - 3.631 °C
The data table below is for [Male + Female] samples.
The linear equation for [Male + Female] is
Oral Temp = 1.084 x (Axilla Temp) - 2.567 °C
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While debate remains as to whether "core body temperature" taken using the rectal route best reflect the body's "true" internal temperature, factors like:all mean that tympanic thermometers are favoured in adult wards as the temperature can be obtained in ONE second instead of waiting for a minute or even longer for an electronic oral thermometer.
However, axilla termperature is taken using electronic thermometers for children under 6 months in pediatric wards since their ear canals are still not large enough to accomodate a regular tympanic thermometer.
Gelinda:
Overall, I find that doing this blog is interesting, like the way we will be graded with a blog. I've learned quite a few things, such as collecting data as samples, keying data into SPSS and using SPSS to analyze the data. I believe this module will prepare me well for my final year project. Therefore this is really a good experience for me to deal with this project.
Robin:
Among the things I learned from this statistics module are:
With evidence-based nursing becoming increasingly important, the knowledge I learned from this module has helped to build a foundation for me to collect and analyze data from meaningful research studies commissioned by my employers in the future to illuminate new and emerging nursing trends.
Yanan:
Through this statistics project, I have learned how to collect date correctly, and analyze & interpret the data holistically. I also learned teamwork while learning from each other. Statistics is related to all aspects of our lives, it is important to master this subject to develop ourselves!
Shakinah:
Our statistics project is really interesting. This project enabled me to analyze the data we collected. It is a new experience as I have not done this before. Getting samples from our friends was fun. At the same time I think that this project will help be useful for me in my final year project.
ACKNOWLEDGEMENT:
Our project group would like to ♥♥♥THANK♥♥♥ our Lecturer, Ms Chia Choon Yee for her invaluable feedback and helpful suggestions during our consultation with her, as well as her interesting lectures and excellent textbook which she authored. Chia, C. Y. (2008). Statistics in health sciences. (4th ed.). Singapore: McGraw Hill Education (ISBN 978-007-126949-0. Comes with CD-ROM). Statistics is a new subject for many of us. Without her patient explanation & guidance backed by clear examples, both during her lectures and in her well-written & generously illustrated textbook, we would not have been able to complete our Statistics blog project.