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Pages:
2 pages/≈550 words
Sources:
3 Sources
Style:
APA
Subject:
Mathematics & Economics
Type:
Statistics Project
Language:
English (U.S.)
Document:
MS Word
Date:
Total cost:
$ 20.74
Topic:

Context of Finding G x E Interaction as Given by Caspi et al.

Statistics Project Instructions:

Multiple Regression Computing Project
Introduction
Each student is assigned to an individual database, with a single file containing the data. Each file contains one dependent variable and twenty independent variables. The values of the dependent variable are in the DV column. The values of the twenty independent variables are in the columns with names of E1 to E5 and G1 to G15. There are no missing values, and the data file is complete and needs no further processing. This project is worth up to 150 points. Failure to use the correct dataset will lead to a grade of zero. The data sets are named by the student course number.csv. The datasets will be posted in a zip format on the class blackboard.
Background
The class blackboard has a pdf file of a paper by Caspi et al. that reports a finding of a gene-environment interaction. This paper used multiple regression techniques as the methodology for its findings. You should read it for background, as it is the genesis of the models that you will be given. The data that you are analyzing is synthetic. That is, the TA used a model to generate the data. Your task is to find the model that the TA used for your data. For example, one possible model is
The class blackboard also contains a paper by Risch et al. that uses a larger collection of data to assess the findings in Caspi et al. These researchers confirmed that Caspi et al. calculated their results correctly but that no other dataset had the relation reported in Caspi et al. That is, Caspi et al. seem to have reported a false positive (Type I error).
Report
The report that you submit should be no more than 2500 words with no more than 3 tables and 2 figures. It should include references (which do not count in the 2500 words). The report may have a technical appendix. The appendix could include your computer programs or describe your procedures for computation. You should include whatever additional material you feel is necessary to report your results in the technical appendix. There are no length restrictions on the appendix. A submission of only computer output without a report is not sufficient and will receive a grade of zero. Analyses that report an incorrect number of observations will also receive a grade of zero.
Your report should be in standard scientific report format. It should contain an introduction, methods section, results section, and a section with conclusions and discussion. You may add whatever other material you wish in a technical appendix. The introduction should contain the statement of your problem (namely estimating the function that the TA used to generate your data). It should discuss the context of finding GxE interactions, as given by Caspi et al. and others. The methods section should discuss how you performed your statistical calculations, what independent variables that you considered, and other methodological issues, such as how you dealt with interaction variables. The results section should contain an objective statement of your findings. That is, it should contain the statement of the model that your group proposes for the data, the analysis of variance table for this model, and other key summary results. The discussion and conclusion section should include the limitations of your procedures. The class blackboard has an editorial (by Cummings) that discusses reporting statistical information.
Guidelines for analysis
The first task for this problem is to use the statistical package of your choice to find the correlations between the independent variables and the dependent variable. Transformations of variables may be necessary. The Box-Cox transformation may find potentially nonlinear transformations of a dependent variable. After selecting the transformations of the dependent variable, you may use stepwise regression methods to select the important independent variables. The Lasso technique was helpful to many groups in past semesters. The TA will usually use at most two-way interactions of the independent variables (that is, terms like or ) in generating your data. There may also be non-linear environmental variables, such as or . The TA may well have used three factor interactions in the models for a few of the groups.
Hints
Chapter 12 and Chapter 13 in your text contain important information, especially Chapter 12. Also remember to consider multiple testing issues (as described in Chapter 9). The p-value for the variables that you select should be much smaller than 0.01. Remember that you have 5 environmental variables, 15 genes, 75 gene-environment variables, 105 gene-gene interaction variables, and a very large number of three gene interaction variables.
Your technical appendix may include:
(a) Your SAS or R script (If you are using SAS or R)
(b) Additional information that you want to report
(c) Any comments or suggestions
End of Project Assignment
https://blackboard(dot)stonybrook(dot)edu/bbcswebdav/pid-4636724-dt-content-rid-32930951_1/courses/1188-AMS-315-SEC01-89886/Project%202%20Handout%20Fall%202018.html

Statistics Project Sample Content Preview:

Multiple Regression Computing Project
Name of Student
Institution Affiliation
Multiple Regression Computing Project
Introduction
A G x E interaction is used to estimate the function that the TA used to generate the data provided. It should discuss the context of finding GxE interactions, as given by Caspi et al. and others
Methods
The data file provided contains one dependent variable and nineteen independent variables. The values of the dependent variables are in the DV_Y column. The values of the nineteen independent variables are in the columns with names of E1 to E4 and G1 to G15. The variables E1 to E4 are continuous and positive and simulate “environmental” variables while variables G1 to G15 are indicator variables and simulate genes (Caspi et al). The data is uploaded onto IBM SPSS 24 for analysis. Environmental variables (E1 to E4) are transformed from string type to numeric type (Descriptive Statistics).A summary of variables is presented below:
Descriptive Statistics


N

Minimum

Maximum

Mean

Std. Deviation

Variance

DV_Y

2000

832576.424481107

1342575.595692000

1001228.76874633670

78350.472416747610

6138796527.928

G1

2000

0

1

.52

.500

.250

G2

2000

0

1

.49

.500

.250

G3

2000

0

1

.49

.500

.250

G4

2000

0

1

.50

.500

.250

G5

2000

0

1

.49

.500

.250

G6

2000

0

1

.52

.500

.250

G7

2000

0

1

.47

.499

.249

G8

2000

0

1

.49

.500

.250

G9

2000

0

1

.51

.500

.250

G10

2000

0

1

.50

.500

.250

G11

2000

0

1

.50

.500

.250

G12

2000

0

1

.48

.500

.250

G13

2000

0

1

.50

.500

.250

G14

2000

0

1

.49

.500

.250

G15

2000

0

1

.48

.500

.250

Er1

2000

1

2000

1000.50

577.495

333500.000

Er2

2000

1

2000

1000.50

577.495

333500.000

Er3

2000

1

2000

1000.50

577.495

333500.000

Er4

2000

1

2000

1000.50

577.495

333500.000

Er5

2000

1

2000

1000.50

577.495

333500.000

Valid N (listwise)

2000






histograms of Y and each environmental variable
-Due to the large size of the output, the histograms are in the output file.
correlation matrix of all variables. The following variables depict a moderat...
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