Confidence Interval Estimates

 

Save Time On Research and Writing
Hire a Pro to Write You a 100% Plagiarism-Free Paper.
Get My Paper

Critical Thinking Assignment

Using the  

Framingham Heart Study dataset

provided, perform the ANOVA multivariable linear regression analysis using BMI as a continuous variable. Before conducting the analysis, be sure that all participants have complete data on all analysis variables.

Save Time On Research and Writing
Hire a Pro to Write You a 100% Plagiarism-Free Paper.
Get My Paper

Describe how each characteristic is related to BMI. Are crude and multivariable effects similar? What might explain or account for any differences?

H0 The BMI is not related to the patient characteristics in the Framingham Heart Study. (Null Hypothesis)
H1 The BMI is related to the patient characteristics in the Framingham Heart Study. (Alternative Hypothesis)

Upload both Excel sheet into R Studio. (Refer to Chapters 7 & 12 in Introductory Statistics with R or pages 111–122 in EXCEL Statistics A Quick Guide). Exclude participants with missing data on analysis variables (age, sex, systolic blood pressure, total serum cholesterol, current smoker, and diabetes = cleaning the data). Conduct the simple linear regression (ANOVA) by using the Excel Regression tool in the Data Analysis Toolpak.

Remember SEX is coded 1=male and 2=female.

Present your findings in a Word document by copying and pasting the ANOVA table into the document. Your paper must be written with a title page, an introduction, a discussion where you interpret the meaning of the ANOVA test, and a conclusion should be included. Your submission should be 2–3 pages to discuss and display your findings.

Provide support for your statements with in–text citations from a minimum of two scholarly, peer–reviewed articles. One of these sources may be from the class readings, textbook, or lectures, but the others must be external. The Saudi Digital Library is a good place to find these sources and should be your primary resource for conducting research.

Follow APA and Saudi Electronic University writing standards.

Review the grading rubric to see how you will be graded for this assignment.

You are strongly encouraged to submit all assignments to the TurnItIn Originality Check prior to submitting them to your instructor for grading.

HCM-506-24410-202020 – (Current Semester – الفصل الحالي)HCM-506: Applied Biostatistics in Healt 24410-Riyadh-Males

Turnitin Plagiarism Checker

MASAUD ALYAMI
on Fri, Feb 26 2021, 7:42 PM

100% highest match

Submission ID: 6802f609-2f75-4432-bb82-345a7758ad6a

  • MultivariateAnalysisofBodyMassIndex. x

    Word Count: ١٬١٤٦

    Attachment ID: 4057947081

    100%

Citations (2/2)

  1. 1
    Another student’s paper

    Citation is highlighted. Click to remove highlighting

  2. 2
    Another student’s paper

    Citation is highlighted. Click to remove highlighting

Running header:

1
MULTIVARIATE ANALYSIS 1

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
MULTIVARIATE ANALYSIS 1

Source – Another student’s paper
MULTIVARIATE ANALYSIS 1

MULTIVARIATE ANALYSIS 7

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
MULTIVARIATE ANALYSIS 7

Source – Another student’s paper
MULTIVARIATE ANALYSIS 7

2
Applied Biostatistics in Health

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Applied Biostatistics in Health

Source – Another student’s paper
Applied Biostatistics in Health

Multivariate Analysis of Body Mass Index HCM-506 Masaud Alyami S199632635 February, 2021
Introduction

1
Body Mass Index (BMI) is an attribute calculated through the aspects of mass and height of a person.

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Body Mass Index (BMI) is an attribute calculated through the aspects of mass and height of a person

Source – Another student’s paper
Body Mass Index (BMI) is an attribute calculated through the aspects of mass and height of a person

The body mass is usually divided by the body height square, and its unit is expressed in kg/m2.

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
The body mass is usually divided by the body height square, and its unit is expressed in kg/m2

Source – Another student’s paper
The body mass is usually divided by the body height square, and its unit is expressed in kg/m2

BMI values of below 20 and above 25 are attributed to high cases of mortality.

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
BMI values of below 20 and above 25 are attributed to high cases of mortality

Source – Another student’s paper
BMI values of below 20 and above 25 are attributed to high cases of mortality

Thereby, the optimal range of Body Mass Index ranges from 20-25.

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Thereby, the optimal range of Body Mass Index ranges from 20-25

Source – Another student’s paper
Thereby, the optimal range of Body Mass Index ranges from 20-25

The tissue mass is a factor that is used to determine the overweight and underweight of a person.

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
The tissue mass is a factor that is used to determine the overweight and underweight of a person

Source – Another student’s paper
The tissue mass is a factor that is used to determine the overweight and underweight of a person

There are a variety of factors that are used to determine the bodyweight of individuals.

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
There are a variety of factors that are used to determine the bodyweight of individuals

Source – Another student’s paper
There are a variety of factors that are used to determine the bodyweight of individuals

These factors include age, diabetes, sex, and ethnicity (Emel Önal, 2019).

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
These factors include age, diabetes, sex, and ethnicity (Emel Önal, 2019)

Source – Another student’s paper
These factors include age, diabetes, sex, and ethnicity (Emel Önal, 2019)

However, in this paper, we are going to use the Framingham Heart Study dataset to perform an ANOVA multivariable regression analysis with the use of BMI as a continuous variable.

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
However, in this paper, we are going to use the Framingham Heart Study dataset to perform an ANOVA multivariable regression analysis with the use of BMI as a continuous variable

Source – Another student’s paper
However, in this paper, we are going to use the Framingham Heart Study dataset to perform an ANOVA multivariable regression analysis with the use of BMI as a continuous variable

The results that will be obtained will determine the factors that affect BMI in an individual.

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
The results that will be obtained will determine the factors that affect BMI in an individual

Source – Another student’s paper
The results that will be obtained will determine the factors that affect BMI in an individual

The null and alternate hypothesis of the study is described below.

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
The null and alternate hypothesis of the study is described below

Source – Another student’s paper
The null and alternate hypothesis of the study is described below

· H0 the BMI is not related to the patient characteristics in the Framingham Heart Study.

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
· H0 the BMI is not related to the patient characteristics in the Framingham Heart Study

Source – Another student’s paper
· H0 the BMI is not related to the patient characteristics in the Framingham Heart Study

(Null Hypothesis) · H1 the BMI is related to the patient characteristics in the Framingham Heart Study.

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
(Null Hypothesis) · H1 the BMI is related to the patient characteristics in the Framingham Heart Study

Source – Another student’s paper
(Null Hypothesis) · H1 the BMI is related to the patient characteristics in the Framingham Heart Study

(Alternative Hypothesis) Findings of the Study After analyzing how different concepts relate to Body Mass Index using multivariate regression, the following results were obtained:

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
(Alternative Hypothesis) Findings of the Study After analyzing how different concepts relate to Body Mass Index using multivariate regression, the following results were obtained

Source – Another student’s paper
(Alternative Hypothesis) Findings of the Study After analyzing how different concepts relate to Body Mass Index using multivariate regression, the following results were obtained

Regression Statistics

1
Multiple R 0.05810995

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Multiple R 0.05810995

Source – Another student’s paper
Multiple R 0.05810995

R Square 0.00337677

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
R Square 0.00337677

Source – Another student’s paper
R Square 0.00337677

Adjusted R Square 0.00327301

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Adjusted R Square 0.00327301

Source – Another student’s paper
Adjusted R Square 0.00327301

Standard Error 4.0303178

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Standard Error 4.0303178

Source – Another student’s paper
Standard Error 4.0303178

Observations 9607
ANOVA

1
Df SS MS F Significance F

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Df SS MS F Significance F

Source – Another student’s paper
df SS MS F Significance F

Regression 1 528.62284 528.62284 32.5437307 1.1999E-08

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Regression 1 528.62284 528.62284 32.5437307 1.1999E-08

Source – Another student’s paper
Regression 1 528.62284 528.62284 32.5437307 1.1999E-08

Residual 9605 156018.449 16.2434616

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Residual 9605 156018.449 16.2434616

Source – Another student’s paper
Residual 9605 156018.449 16.2434616

Total 9606 156547.071

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Total 9606 156547.071

Source – Another student’s paper
Total 9606 156547.071

Coefficients Standard Error t Stat P-value Lower 95% Upper 95% Lower 95.0% Upper 95.0%

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Coefficients Standard Error t Stat P-value Lower 95% Upper 95% Lower 95.0% Upper 95.0%

Source – Another student’s paper
Coefficients Standard Error t Stat P-value Lower 95% Upper 95% Lower 95.0% Upper 95.0%

Intercept 24.490722 0.23904879 102.450726 0 24.022136 24.9593081 24.022136 24.9593081

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Intercept 24.490722 0.23904879 102.450726 0 24.022136 24.9593081 24.022136 24.9593081

Source – Another student’s paper
Intercept 24.490722 0.23904879 102.450726 0 24.022136 24.9593081 24.022136 24.9593081

AGE 0.02472912 0.00433486 5.70471128 1.1999E-08 0.01623188 0.03322636 0.01623188 0.03322636

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
AGE 0.02472912 0.00433486 5.70471128 1.1999E-08 0.01623188 0.03322636 0.01623188 0.03322636

Source – Another student’s paper
AGE 0.02472912 0.00433486 5.70471128 1.1999E-08 0.01623188 0.03322636 0.01623188 0.03322636

The p-value of the analysis between Body Mass Index and age is 1.1999E-08.

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
The p-value of the analysis between Body Mass Index and age is 1.1999E-08

Source – Another student’s paper
The p-value of the analysis between Body Mass Index and age is 1.1999E-08

The p-value is less than 0.05, thereby the null hypothesis is rejected, and the alternate hypothesis is accepted.

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
The p-value is less than 0.05, thereby the null hypothesis is rejected, and the alternate hypothesis is accepted

Source – Another student’s paper
The p-value is less than 0.05, thereby the null hypothesis is rejected, and the alternate hypothesis is accepted

From this analysis, the BMI is related to the age of patients in the Framingham Heart Study dataset.

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
From this analysis, the BMI is related to the age of patients in the Framingham Heart Study dataset

Source – Another student’s paper
From this analysis, the BMI is related to the age of patients in the Framingham Heart Study dataset

Older people tend to have an increased BMI in comparison to younger individuals.

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Older people tend to have an increased BMI in comparison to younger individuals

Source – Another student’s paper
Older people tend to have an increased BMI in comparison to younger individuals

At old age, people tend to be less active, making them increase their body muscles.

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
At old age, people tend to be less active, making them increase their body muscles

Source – Another student’s paper
At old age, people tend to be less active, making them increase their body muscles

Regression Statistics

1
Multiple R 0.26630323

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Multiple R 0.26630323

Source – Another student’s paper
Multiple R 0.26630323

R Square 0.07091741

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
R Square 0.07091741

Source – Another student’s paper
R Square 0.07091741

Adjusted R Square 0.07082068

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Adjusted R Square 0.07082068

Source – Another student’s paper
Adjusted R Square 0.07082068

Standard Error 3.89135587

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Standard Error 3.89135587

Source – Another student’s paper
Standard Error 3.89135587

Observations 9607
ANOVA
1
Df SS MS F Significance F

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Df SS MS F Significance F

Source – Another student’s paper
df SS MS F Significance F

Regression 1 11101.9133 11101.9133 733.155219 1.163E-155

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Regression 1 11101.9133 11101.9133 733.155219 1.163E-155

Source – Another student’s paper
Regression 1 11101.9133 11101.9133 733.155219 1.163E-155

Residual 9605 145445.158 15.1426505

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Residual 9605 145445.158 15.1426505

Source – Another student’s paper
Residual 9605 145445.158 15.1426505

Total 9606 156547.071

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Total 9606 156547.071

Source – Another student’s paper
Total 9606 156547.071

Coefficients Standard Error t Stat P-value Lower 95% Upper 95% Lower 95.0% Upper 95.0%

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Coefficients Standard Error t Stat P-value Lower 95% Upper 95% Lower 95.0% Upper 95.0%

Source – Another student’s paper
Coefficients Standard Error t Stat P-value Lower 95% Upper 95% Lower 95.0% Upper 95.0%

Intercept 19.3693733 0.24203325 80.0277387 0 18.8949371 19.8438095 18.8949371 19.8438095

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Intercept 19.3693733 0.24203325 80.0277387 0 18.8949371 19.8438095 18.8949371 19.8438095

Source – Another student’s paper
Intercept 19.3693733 0.24203325 80.0277387 0 18.8949371 19.8438095 18.8949371 19.8438095

SYSBP 0.04761088 0.00175836 27.0768392 1.163E-155 0.04416412 0.05105764 0.04416412 0.05105764

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
SYSBP 0.04761088 0.00175836 27.0768392 1.163E-155 0.04416412 0.05105764 0.04416412 0.05105764

Source – Another student’s paper
SYSBP 0.04761088 0.00175836 27.0768392 1.163E-155 0.04416412 0.05105764 0.04416412 0.05105764

In the second regression analysis, BMI is compared to systolic blood pressure, and the p-value is ascertained to be 1.163E-155, which is below 0.05.

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
In the second regression analysis, BMI is compared to systolic blood pressure, and the p-value is ascertained to be 1.163E-155, which is below 0.05

Source – Another student’s paper
In the second regression analysis, BMI is compared to systolic blood pressure, and the p-value is ascertained to be 1.163E-155, which is below 0.05

Thus, the null hypothesis is rejected, and the alternate hypothesis is accepted.

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Thus, the null hypothesis is rejected, and the alternate hypothesis is accepted

Source – Another student’s paper
Thus, the null hypothesis is rejected, and the alternate hypothesis is accepted

Systolic blood pressure is related to BMI according to the provided dataset.

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Systolic blood pressure is related to BMI according to the provided dataset

Source – Another student’s paper
Systolic blood pressure is related to BMI according to the provided dataset

An increase in Body Mass Index also has a positive impact on the systolic blood pressure.

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
An increase in Body Mass Index also has a positive impact on the systolic blood pressure

Source – Another student’s paper
An increase in Body Mass Index also has a positive impact on the systolic blood pressure

SUMMARY OUTPUT
Regression Statistics

1
Multiple R 0.16159796

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Multiple R 0.16159796

Source – Another student’s paper
Multiple R 0.16159796

R Square 0.0261139

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
R Square 0.0261139

Source – Another student’s paper
R Square 0.0261139

Adjusted R Square 0.02601251

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Adjusted R Square 0.02601251

Source – Another student’s paper
Adjusted R Square 0.02601251

Standard Error 3.98407837

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Standard Error 3.98407837

Source – Another student’s paper
Standard Error 3.98407837

Observations 9607
ANOVA
1
Df SS MS F Significance F

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Df SS MS F Significance F

Source – Another student’s paper
df SS MS F Significance F

Regression 1 4088.0545 4088.0545 257.54963 3.2438E-57

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Regression 1 4088.0545 4088.0545 257.54963 3.2438E-57

Source – Another student’s paper
Regression 1 4088.0545 4088.0545 257.54963 3.2438E-57

Residual 9605 152459.017 15.8728805

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Residual 9605 152459.017 15.8728805

Source – Another student’s paper
Residual 9605 152459.017 15.8728805

Total 9606 156547.071

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Total 9606 156547.071

Source – Another student’s paper
Total 9606 156547.071

Coefficients Standard Error t Stat P-value Lower 95% Upper 95% Lower 95.0% Upper 95.0%

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Coefficients Standard Error t Stat P-value Lower 95% Upper 95% Lower 95.0% Upper 95.0%

Source – Another student’s paper
Coefficients Standard Error t Stat P-value Lower 95% Upper 95% Lower 95.0% Upper 95.0%

Intercept 26.4067177 0.05408639 488.232228 0 26.3006969 26.5127384 26.3006969 26.5127384

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Intercept 26.4067177 0.05408639 488.232228 0 26.3006969 26.5127384 26.3006969 26.5127384

Source – Another student’s paper
Intercept 26.4067177 0.05408639 488.232228 0 26.3006969 26.5127384 26.3006969 26.5127384

CURSMOKE -1.3157466 0.08198639 -16.048353 3.2438E-57 -1.4764572 -1.155036 -1.4764572 -1.155036

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
CURSMOKE -1.3157466 0.08198639 -16.048353 3.2438E-57 -1.4764572 -1.155036 -1.4764572 -1.155036

Source – Another student’s paper
CURSMOKE -1.3157466 0.08198639 -16.048353 3.2438E-57 -1.4764572 -1.155036 -1.4764572 -1.155036

In the third regression analysis, the Body Mass Index of patients is compared to the smoking patterns in the dataset’s data.

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
In the third regression analysis, the Body Mass Index of patients is compared to the smoking patterns in the dataset’s data

Source – Another student’s paper
In the third regression analysis, the Body Mass Index of patients is compared to the smoking patterns in the dataset’s data

From the analysis, the p-value was determined to be 3.2438E-57, which is below 0.05;

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
From the analysis, the p-value was determined to be 3.2438E-57, which is below 0.05

Source – Another student’s paper
From the analysis, the p-value was determined to be 3.2438E-57, which is below 0.05

thereby, the null hypothesis is rejected.

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
thereby, the null hypothesis is rejected

Source – Another student’s paper
thereby, the null hypothesis is rejected

Therefore, the smoking rate of an individual can be related to their Body Mass Index.

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Therefore, the smoking rate of an individual can be related to their Body Mass Index

Source – Another student’s paper
Therefore, the smoking rate of an individual can be related to their Body Mass Index

Smoking lowers the BMI of individuals by reducing their general body weight.

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Smoking lowers the BMI of individuals by reducing their general body weight

Source – Another student’s paper
Smoking lowers the BMI of individuals by reducing their general body weight

Smokers have a decreased appetite making them not improve on their bodies.

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Smokers have a decreased appetite making them not improve on their bodies

Source – Another student’s paper
Smokers have a decreased appetite making them not improve on their bodies

SUMMARY OUTPUT
Regression Statistics

1
Multiple R 0.08598698

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Multiple R 0.08598698

Source – Another student’s paper
Multiple R 0.08598698

R Square 0.00739376

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
R Square 0.00739376

Source – Another student’s paper
R Square 0.00739376

Adjusted R Square 0.00729042

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Adjusted R Square 0.00729042

Source – Another student’s paper
Adjusted R Square 0.00729042

Standard Error 4.02218729

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Standard Error 4.02218729

Source – Another student’s paper
Standard Error 4.02218729

Observations 9607
ANOVA
1
Df SS MS F Significance F

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Df SS MS F Significance F

Source – Another student’s paper
df SS MS F Significance F

Regression 1 1157.47172 1157.47172 71.5460746 3.104E-17

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Regression 1 1157.47172 1157.47172 71.5460746 3.104E-17

Source – Another student’s paper
Regression 1 1157.47172 1157.47172 71.5460746 3.104E-17

Residual 9605 155389.6 16.1779906

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Residual 9605 155389.6 16.1779906

Source – Another student’s paper
Residual 9605 155389.6 16.1779906

Total 9606 156547.071

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Total 9606 156547.071

Source – Another student’s paper
Total 9606 156547.071

Coefficients Standard Error t Stat P-value Lower 95% Upper 95% Lower 95.0% Upper 95.0%

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Coefficients Standard Error t Stat P-value Lower 95% Upper 95% Lower 95.0% Upper 95.0%

Source – Another student’s paper
Coefficients Standard Error t Stat P-value Lower 95% Upper 95% Lower 95.0% Upper 95.0%

Intercept 25.7611868 0.04193192 614.357399 0 25.6789914 25.8433822 25.6789914 25.8433822

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Intercept 25.7611868 0.04193192 614.357399 0 25.6789914 25.8433822 25.6789914 25.8433822

Source – Another student’s paper
Intercept 25.7611868 0.04193192 614.357399 0 25.6789914 25.8433822 25.6789914 25.8433822

DIABETES 1.72531564 0.20397439 8.45849127 3.104E-17 1.32548278 2.12514849 1.32548278 2.12514849

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
DIABETES 1.72531564 0.20397439 8.45849127 3.104E-17 1.32548278 2.12514849 1.32548278 2.12514849

Source – Another student’s paper
DIABETES 1.72531564 0.20397439 8.45849127 3.104E-17 1.32548278 2.12514849 1.32548278 2.12514849

Lastly, diabetes is another aspect that is compared in the multivariate regression analysis.

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Lastly, diabetes is another aspect that is compared in the multivariate regression analysis

Source – Another student’s paper
Lastly, diabetes is another aspect that is compared in the multivariate regression analysis

After analyzing the data, it was established that the p-value was 3.104E-17, which is below 0.05, and hence the alternate hypothesis was accepted.

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
After analyzing the data, it was established that the p-value was 3.104E-17, which is below 0.05, and hence the alternate hypothesis was accepted

Source – Another student’s paper
After analyzing the data, it was established that the p-value was 3.104E-17, which is below 0.05, and hence the alternate hypothesis was accepted

Diabetes is a factor that relates to the Body Mass Index of patients (“Incorrect body mass index range in:

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Diabetes is a factor that relates to the Body Mass Index of patients (“Incorrect body mass index range in

Source – Another student’s paper
Diabetes is a factor that relates to the Body Mass Index of patients (“Incorrect body mass index range in

Does body mass index adequately convey a patient’s mortality risk?”

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Does body mass index adequately convey a patient’s mortality risk?”

Source – Another student’s paper
Does body mass index adequately convey a patient’s mortality risk?”

2017).

1
An increase in the body mass index tends to make individuals highly susceptible to diabetes.

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
An increase in the body mass index tends to make individuals highly susceptible to diabetes

Source – Another student’s paper
An increase in the body mass index tends to make individuals highly susceptible to diabetes

It is attributed to the increasing levels of sugar in the blood attributed to increased body weight.

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
It is attributed to the increasing levels of sugar in the blood attributed to increased body weight

Source – Another student’s paper
It is attributed to the increasing levels of sugar in the blood attributed to increased body weight

Conclusion In conclusion, the Body Mass Index is an attribute related to the weight and height of an individual.

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Conclusion In conclusion, the Body Mass Index is an attribute related to the weight and height of an individual

Source – Another student’s paper
Conclusion In conclusion, the Body Mass Index is an attribute related to the weight and height of an individual

BMI is a factor in human beings that is determined by a variety of factors that are prevalent in the human body.

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
BMI is a factor in human beings that is determined by a variety of factors that are prevalent in the human body

Source – Another student’s paper
BMI is a factor in human beings that is determined by a variety of factors that are prevalent in the human body

According to the multivariate analysis that was done on the Framingham Heart Study dataset, diabetes, systolic blood pressure, age, and smoking rate were determined to be the factors that are related to BMI.

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
According to the multivariate analysis that was done on the Framingham Heart Study dataset, diabetes, systolic blood pressure, age, and smoking rate were determined to be the factors that are related to BMI

Source – Another student’s paper
According to the multivariate analysis that was done on the Framingham Heart Study dataset, diabetes, systolic blood pressure, age, and smoking rate were determined to be the factors that are related to BMI

These factors had a p-value of less than 0.05 in the multivariate regression that was conducted.

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
These factors had a p-value of less than 0.05 in the multivariate regression that was conducted

Source – Another student’s paper
These factors had a p-value of less than 0.05 in the multivariate regression that was conducted

Thereby, the alternate hypothesis is accepted in this analysis, which states that BMI is related to the patient characteristics in the Framingham Heart Study.

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Thereby, the alternate hypothesis is accepted in this analysis, which states that BMI is related to the patient characteristics in the Framingham Heart Study

Source – Another student’s paper
Thereby, the alternate hypothesis is accepted in this analysis, which states that BMI is related to the patient characteristics in the Framingham Heart Study

References

1
Emel Önal, A.

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Emel Önal, A

Source – Another student’s paper
Emel Önal, A

(2019). .

1
Body-mass Index and Health.

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Body-mass Index and Health

Source – Another student’s paper
Body-mass Index and Health

DOI:10.5772/intechopen.82142

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
DOI:10.5772/intechopen.82142

Source – Another student’s paper
DOI:10.5772/intechopen.82142

Incorrect body mass index range in:

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Incorrect body mass index range in

Source – Another student’s paper
Incorrect body mass index range in

Does body mass index adequately convey a patient’s mortality risk?

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
Does body mass index adequately convey a patient’s mortality risk

Source – Another student’s paper
Does body mass index adequately convey a patient’s mortality risk

(2017).

1
JAMA, 309(5), 442.

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
JAMA, 309(5), 442

Source – Another student’s paper
JAMA, 309(5), 442

doi:10.1001/jama.2013.15

Suspected Entry: 100% match

Uploaded – MultivariateAnalysisofBodyMassIndex. x
doi:10.1001/jama.2013.15

Source – Another student’s paper
doi:10.1001/jama.2013.15

2/26/202

1

Originality Report

https://lms.seu.edu.sa/webapps/mdb-sa-BBLEARN/originalityReport/ultra?course_id=_85143_1&includeDeleted=true&attemptId=6802f609-2f75-4432… 1/3

SafeAssign Originality Report
(Current Semester – الفصل الحالي)HCM-506: Applied Biostatistics in Healt… • Turnitin Plagiarism Checker • Submitted on Fri, Feb 26, 2021, 7:42 PM

MASAUD ALYAMI View Report Summary

View Originality Report – Old Design

INCLUDED SOURCES

Sources

Institutional database (2) %100

Top sources

Attachment 

1

MultivariateAnalysisofBodyMas…

%100Running header: MULTIVARIATE ANALYSIS 1
MULTIVARIATE ANALYSIS 7

Applied Biostatistics in Health

Multivariate Analysis of Body Mass Index HCM-506 Masaud Alyami S199632635 February, 2021

Introduction

Body Mass Index (BMI) is an attribute calculated through the aspects of mass and height of a person.

The body mass is usually divided by the body height square, and its unit is expressed in kg/m2. BMI values
of below 20 and above 25 are attributed to high cases of mortality. Thereby, the optimal range of Body
Mass Index ranges from 20-25. The tissue mass is a factor that is used to determine the overweight and un-
derweight of a person. There are a variety of factors that are used to determine the bodyweight of
individuals. These factors include age, diabetes, sex, and ethnicity (Emel Önal, 2019). However, in this paper,
we are going to use the Framingham Heart Study dataset to perform an ANOVA multivariable regression
analysis with the use of BMI as a continuous variable. The results that will be obtained will determine the
factors that affect BMI in an individual. The null and alternate hypothesis of the study is described below. ·
H0 the BMI is not related to the patient characteristics in the Framingham Heart Study. (Null Hypothesis) ·
H1 the BMI is related to the patient characteristics in the Framingham Heart Study. (Alternative Hypothesis)
Findings of the Study After analyzing how different concepts relate to Body Mass Index using multivariate
regression, the following results were obtained:

Regression Statistics

Multiple R 0.05810995

R Square 0.00337677

Adjusted R Square 0.00327301

Standard Error 4.0303178

Observations 9607

ANOVA

Df SS MS F Significance F

Regression 1 528.62284 528.62284 32.5437307 1.1999E-08

Residual 9605 156018.449 16.2434616

Total 9606 156547.071

Coefficients Standard Error t Stat P-value Lower 95% Upper 95% Lower 95.0% Upper 95.0%

Intercept 24.490722 0.23904879 102.450726 0 24.022136 24.9593081 24.022136 24.9593081

AGE 0.02472912 0.00433486 5.70471128 1.1999E-08 0.01623188 0.03322636 0.01623188 0.03322636

The p-value of the analysis between Body Mass Index and age is 1.1999E-08. The p-value is less than 0.05,
thereby the null hypothesis is rejected, and the alternate hypothesis is accepted. From this analysis, the BMI
is related to the age of patients in the Framingham Heart Study dataset. Older people tend to have an in-
creased BMI in comparison to younger individuals. At old age, people tend to be less active, making them
increase their body muscles. Regression Statistics

Multiple R 0.26630323

R Square 0.07091741

Adjusted R Square 0.07082068

Standard Error 3.89135587

Observations 9607
ANOVA
1

2

1
1
1
1

https://lms.seu.edu.sa/webapps/mdb-sa-BBLEARN/originalityReport/ultra?attemptId=6802f609-2f75-4432-bb82-345a7758ad6a&course_id=_85143_1&includeDeleted=true&print=true

https://lms.seu.edu.sa/webapps/mdb-sa-BBLEARN/originalityReport/ultra?attemptId=6802f609-2f75-4432-bb82-345a7758ad6a&course_id=_85143_1&includeDeleted=true&print=true&download=true

https://lms.seu.edu.sa/webapps/mdb-sa-BBLEARN/originalityReport?attemptId=6802f609-2f75-4432-bb82-345a7758ad6a&course_id=_85143_1&includeDeleted=true&force=true

2/26/2021 Originality Report

https://lms.seu.edu.sa/webapps/mdb-sa-BBLEARN/originalityReport/ultra?course_id=_85143_1&includeDeleted=true&attemptId=6802f609-2f75-4432… 2/3

Df SS MS F Significance F

Regression 1 11101.9133 11101.9133 733.155219 1.163E-155

Residual 9605 145445.158 15.1426505

Total 9606 156547.071
Coefficients Standard Error t Stat P-value Lower 95% Upper 95% Lower 95.0% Upper 95.0%

Intercept 19.3693733 0.24203325 80.0277387 0 18.8949371 19.8438095 18.8949371 19.8438095

SYSBP 0.04761088 0.00175836 27.0768392 1.163E-155 0.04416412 0.05105764 0.04416412 0.05105764

In the second regression analysis, BMI is compared to systolic blood pressure, and the p-value is ascer-
tained to be 1.163E-155, which is below 0.05. Thus, the null hypothesis is rejected, and the alternate hypo-
thesis is accepted. Systolic blood pressure is related to BMI according to the provided dataset. An increase
in Body Mass Index also has a positive impact on the systolic blood pressure. SUMMARY OUTPUT

Regression Statistics

Multiple R 0.16159796

R Square 0.0261139

Adjusted R Square 0.02601251

Standard Error 3.98407837

Observations 9607
ANOVA
Df SS MS F Significance F

Regression 1 4088.0545 4088.0545 257.54963 3.2438E-57

Residual 9605 152459.017 15.8728805

Total 9606 156547.071
Coefficients Standard Error t Stat P-value Lower 95% Upper 95% Lower 95.0% Upper 95.0%

Intercept 26.4067177 0.05408639 488.232228 0 26.3006969 26.5127384 26.3006969 26.5127384

CURSMOKE -1.3157466 0.08198639 -16.048353 3.2438E-57 -1.4764572 -1.155036 -1.4764572 -1.155036

In the third regression analysis, the Body Mass Index of patients is compared to the smoking patterns in the
dataset’s data. From the analysis, the p-value was determined to be 3.2438E-57, which is below 0.05;
thereby, the null hypothesis is rejected. Therefore, the smoking rate of an individual can be related to their
Body Mass Index. Smoking lowers the BMI of individuals by reducing their general body weight. Smokers
have a decreased appetite making them not improve on their bodies. SUMMARY OUTPUT

Regression Statistics

Multiple R 0.08598698

R Square 0.00739376

Adjusted R Square 0.00729042

Standard Error 4.02218729

Observations 9607
ANOVA
Df SS MS F Significance F

Regression 1 1157.47172 1157.47172 71.5460746 3.104E-17

Residual 9605 155389.6 16.1779906

Total 9606 156547.071
Coefficients Standard Error t Stat P-value Lower 95% Upper 95% Lower 95.0% Upper 95.0%

Intercept 25.7611868 0.04193192 614.357399 0 25.6789914 25.8433822 25.6789914 25.8433822

1
1
1
1
1

2/26/2021 Originality Report

https://lms.seu.edu.sa/webapps/mdb-sa-BBLEARN/originalityReport/ultra?course_id=_85143_1&includeDeleted=true&attemptId=6802f609-2f75-4432… 3/3

DIABETES 1.72531564 0.20397439 8.45849127 3.104E-17 1.32548278 2.12514849 1.32548278 2.12514849

Lastly, diabetes is another aspect that is compared in the multivariate regression analysis.
After analyzing the data, it was established that the p-value was 3.104E-17, which is below 0.05, and

hence the alternate hypothesis was accepted. Diabetes is a factor that relates to the Body Mass Index of pa-
tients (“Incorrect body mass index range in: Does body mass index adequately convey a patient’s mortality
risk?” 2017). An increase in the body mass index tends to make individuals highly susceptible to

diabetes. It is attributed to the increasing levels of sugar in the blood attributed to increased body weight.
Conclusion In conclusion, the Body Mass Index is an attribute related to the weight and height of an
individual. BMI is a factor in human beings that is determined by a variety of factors that are prevalent in
the human body. According to the multivariate analysis that was done on the Framingham Heart Study
dataset, diabetes, systolic blood pressure, age, and smoking rate were determined to be the factors that are
related to BMI. These factors had a p-value of less than 0.05 in the multivariate regression that was
conducted. Thereby, the alternate hypothesis is accepted in this analysis, which states that BMI is related to
the patient characteristics in the Framingham Heart Study.

References

Emel Önal, A. (2019). . Body-mass Index and Health. DOI:10.5772/intechopen.82142

Incorrect body mass index range in: Does body mass index adequately convey a patient’s mortality risk?
(2017). JAMA, 309(5), 442. doi:10.1001/jama.2013.15

1
1

1 1

1

Word Count: Submitted on: Submission UUID: Attachment UUID:
1,146 02/26/21 0d508fb0-9d68-f236-abf6-d144bbdf6f6b 57284055-607e-4b8e-7369-e8217ba2d0e8

2/27/2021 SafeAssign Originality Report

https://lms.seu.edu.sa/webapps/mdb-sa-BBLEARN/originalityReport?attemptId=50301edd-46d5-45e5-ac66-71ced9af0cae&course_id=_85143_1&incl… 1/5

HCM-506-24410-202020 – (CURRENT SEMESTER – الفصل الحالي)HCM-506: APPLIED BIOSTATISTICS IN HEALT 24410-RIYADH-
MALES

Turnitin Plagiarism Checker
MASAUD ALYAMI on Sat, Feb 27 2021, 12:46 PM

91% highest match
Submission ID: 50301edd-46d5-45e5-ac66-71ced9af0cae

Citations (3/3)

Running header: 1 FRAMINGHAM HEART STUDY DATASET 1

FRAMINGHAM HEART STUDY DATASET 3

Applied Biostatistics in Health Framingham Heart Study dataset HCM-506 Masaud

Alyami S199632635 February, 2021

1 FRAMINGHAM HEART STUDY DATASET

INTRODUCTION BODY MASS INDEX (BMI) IS A CHARACTERISTIC THAT

IS CALCULATED FROM THE MASS AND HEIGHT UNITS OF AN

INDIVIDUAL. THE BMI CAN ALSO BE DEFINED AS MASS OF THE BODY

DIVIDED BY ITS SQUARE ROOT HEIGHT AND IS USUALLY EXPRESSED IN

Word Count: ٧٣٩

Attachment ID: 4061286277

FraminghamHeartStudydatase…

91%

1 Another student’s paper

2 Another student’s paper

3 Another student’s paper

http://safeassign.blackboard.com/

https://lms.seu.edu.sa/webapps/mdb-sa-BBLEARN/originalityReportPrint?course_id=_85143_1&paperId=4061286277&&attemptId=50301edd-46d5-45e5-ac66-71ced9af0cae&course_id=_85143_1

https://help.blackboard.com/SafeAssign

2/27/2021 SafeAssign Originality Report

https://lms.seu.edu.sa/webapps/mdb-sa-BBLEARN/originalityReport?attemptId=50301edd-46d5-45e5-ac66-71ced9af0cae&course_id=_85143_1&incl… 2/5

UNITS OF KG/M2. THROUGH THE BMI RESULTS INDIVIDUALS ARE

CATEGORIZED AS OF NORMAL WEIGHT, NORMAL WEIGHT,

OVERWEIGHT, AND OBESE. With the rapid evolution of lifestyle diseases BMI is an

issue of concern in the current society. 1 THE BMIS LIMITS OF OVER 25 AND

UNDER 20 ARE CHARACTERIZED TO BE UNHEALTHY WHICH LEADS TO

HIGH MORTALITY IN THE CURRENT SOCIETY (MARYCLAIRE, 2020).

Different factors in our lifestyles contribute to the low or high recordings of BMI. There i

a need to understand the factors affecting BMI for us not to be victims of the extreme in

the society. 1 THEREFORE, THIS PAPER WILL CRITICALLY ANALYZE

RELATIONSHIP OF BMI TO PATIENTS’ CHARACTERISTICS ACCORDING

TO FRAMINGHAM HEART STUDY DATASET.

Hypothesis To analyze the dataset effectively the following hypothesis will be tested.

H0: 2 THE BMI IS NOT RELATED TO THE PATIENT CHARACTERISTICS IN

THE FRAMINGHAM HEART STUDY. 3 (NULL HYPOTHESIS) H1: 2 THE

BMI IS RELATED TO THE PATIENT CHARACTERISTICS IN THE

FRAMINGHAM HEART STUDY. (Alternative Hypothesis)

1 RESULTS OF ANOVA MULTIVARIATE ANALYSIS COLUMN1

COEFFICIENTS P-VALUE

INTERCEPT 17.2916618 2.39372E-98

MALE 0.812985908 3.21703E-09

AGE -0.002452255 0.773380806

EDUCATION -0.439252556 3.21113E-13

CURRENTSMOKER -1.270311854 5.88893E-11

CIGSPERDAY 0.009764184 0.244255549

BPMEDS 0.445921597 0.249309362

2/27/2021 SafeAssign Originality Report

https://lms.seu.edu.sa/webapps/mdb-sa-BBLEARN/originalityReport?attemptId=50301edd-46d5-45e5-ac66-71ced9af0cae&course_id=_85143_1&incl… 3/5

PREVALENTSTROKE -2.093615903 0.010727051

PREVALENTHYP 0.829803384 1.58106E-05

DIABETES 0.878390358 0.04649781

TOTCHOL 0.003514526 0.005420187

SYSBP -0.00422398 0.439165117

DIABP 0.104998289 4.20067E-32

HEARTRATE 0.002887996 0.590457538

GLUCOSE 0.001872462 0.382194082

TENYEARCHD -0.344122152 0.058854909

Discussion

1 THE FIRST ASPECT WAS THE GENDER OF THE PATIENTS THAT

RECORDED A P-VALUE OF 3.21703 E-09. COMPARING THE P-VALUE TO

THE REQUIRED STANDARDS IT IS LESS THAN 0.05 THEREBY WE ACCEPT

THE NULL HYPOTHESIS AND REJECT THE NULL HYPOTHESIS.

THEREBY, BMI I NOT RELATED TO THE GENDER CHARACTERISTIC OF

THE PATIENTS.

AGE IS ALSO ATTRIBUTE THAT HAD A P-VALUE OF 0.773380806 WHICH

IS MORE THAN 0.05. FROM THESE RESULTS WE REJECT THE NULL

HYPOTHESIS WAS REJECTED AND ALTERNATE HYPOTHESIS ACCEPTED

THEREBY, THE BMI OF THE PATIENTS IS RELATED TO THEIR AGE.

EDUCATION RECORDED A P-VALUE OF 3.21113E-13 WHICH IS LESS THAN

0.05. FROM THE ANALYSIS OF THE P-VALUE THERE IS NO

RELATIONSHIP OF THE BMI WITH THE EDUCATION OF THE PATIENTS.

2/27/2021 SafeAssign Originality Report

https://lms.seu.edu.sa/webapps/mdb-sa-BBLEARN/originalityReport?attemptId=50301edd-46d5-45e5-ac66-71ced9af0cae&course_id=_85143_1&incl… 4/5

MOREOVER, THE RATE OF SMOKING, STROKE, HYPERTENSION,

DIABETES, CHOLESTEROL, AND TEN YEAR CHILD ARE ATTRIBUTES

THAT HAVE A LOWER P-VALUE AS COMPARED TO 0.05. FROM THE

ABOVE STATISTICS THE ABOVE CHARACTERISTICS DO NOT HAVE A

RELATIONSHIP WITH BMI OF PATIENTS.

HOWEVER, THERE ARE SOME ASPECTS THAT INCLUDE CIGARETTES

PER DAY, BLOOD PRESSURE, SYSTOLIC BLOOD PRESSURE, DIASTOLIC

BLOOD PRESSURE, HEART RATE, GLUCOSE LEVEL, AND TEN YEAR

CHILD ARE ATTRIBUTES THAT HAVE A P-VALUE GREATER THAN 0.05.

THEREBY, PATIENT WITH THESE ATTRIBUTES HAVE A RELATIONSHIP

WITH THEIR BMI.

MULTIVARIATE AND CRUDE IMPLICATIONS ARE NOT RELATED

ACCORDING TO THE DATASET PROVIDED. ONE OF THE CONTRIBUTING

FACTORS TO THE DIFFERENCES IS THE STATISTICAL TOOL THAT WAS

ADOPTED IN THE ANALYSIS. THE TOOL BRINGS OUT THE DIFFERENCE

BETWEEN THE TWO EFFECTS (HEINRICH ET AL., 2016). Additionally, there

are some as that are not related with the BMI and the aspects making the variations to be

evident. 1 THEREFORE, THESE ARE SOME OF THE REASONS THAT ARE

LEADING TO THE VARIATION.

Conclusion In conclusion, it has been noted that not all characteristics are related to the

BMI. The following attributes were found to have a relationship with the BMI: age,

cigarettes per day, blood pressure, heart rate, and glucose levels. However, the aspects

that are not related with BMI are gender, education, smoking, stroke, hypertension, and

cholesterol levels.

References

Heinrich, S., Kowalsky, U., & Dinkler, D. (2016). Multiscale damage analyis for steel

structures. PAMM, 16(1), 133-134. https://doi.org/10.1002/pamm.201610055

2/27/2021 SafeAssign Originality Report

https://lms.seu.edu.sa/webapps/mdb-sa-BBLEARN/originalityReport?attemptId=50301edd-46d5-45e5-ac66-71ced9af0cae&course_id=_85143_1&incl… 5/5

Maryclaire, N. (2020). WHO categories of manual BMI, standard scan BMI, and straight

scan BMI. https://doi.org/10.7717/peerj.8095/table-4

Calculate your order
Pages (275 words)
Standard price: $0.00
Client Reviews
4.9
Sitejabber
4.6
Trustpilot
4.8
Our Guarantees
100% Confidentiality
Information about customers is confidential and never disclosed to third parties.
Original Writing
We complete all papers from scratch. You can get a plagiarism report.
Timely Delivery
No missed deadlines – 97% of assignments are completed in time.
Money Back
If you're confident that a writer didn't follow your order details, ask for a refund.

Calculate the price of your order

You will get a personal manager and a discount.
We'll send you the first draft for approval by at
Total price:
$0.00
Power up Your Academic Success with the
Team of Professionals. We’ve Got Your Back.
Power up Your Study Success with Experts We’ve Got Your Back.

Order your essay today and save 30% with the discount code ESSAYHELP