This course will provide students with a foundation in data preparation and preliminary analytics using R which can be applicable for research, quality improvement and industry large-scale data analytics projects. This course will include the following skills: data analysis with publicly available data sets; cleansing and imputing data; descriptive statistics; and data visualization.
After successfully completing this course, students will be able to
Please note that all times in the syllabus and in Blackboard refer to Eastern Time. The discussion board and assignment links for each week will open at the start of the week for submissions.
Discussion Board Posts: Each week there will be a discussion board that addresses a topic within the current module. These assignments will assess your ability to clearly and accurately apply concepts from your readings and from your own experiences. Each week you are expected to submit an initial post and comment on at least 2 other students’ posts. You need to follow APA guidelines for citing any sources you may reference in either your initial post or your response to others. Refer to the Discussion Rubric and weekly discussion question for submission guidelines. Please be sure to follow the individual directions provided with each Discussion Board Prompt, as the requirements may vary from Discussion Board to Discussion Board.
Initial post: You should submit your initial post by 11:59 p.m. Sunday. Your initial post should be approximately 500 words.
Response to others: You should comment on at least 2 other students’ posts by 11:59 p.m. Wednesday. Your comments to others should be thorough, thoughtful, and they should offer some new content. Do not merely respond with “I agree” or “I disagree.” Engage directly with the ideas of your classmates and briefly mention which part of the post you are responding to.
Week 1 Assignment: Think of a research question on a topic that you would like to study. Identify the setting where you will collect the data and the variables that will be needed to answer the research questions, and then use Microsoft Excel to build a prototype of the data visualization. Refer to the Week 1 Assignment Rubric and assignment instructions for submission guidelines.
Week 2 Assignment: In this assignment, you will run an R script on a comma delimited file containing patient data. You will calculate the mean length of stay for patients, create a box plot, and run one additional calculation. Refer to the Week 2 Assignment Rubric and assignment instructions for submission guidelines.
Week 3 Assignment: In this assignment, you will select an R package from CRAN to use when answering a question about where urgent care centers should be located. Refer to the Week 3 Assignment Rubric and assignment instructions for submission guidelines.
Week 4 Assignment: This week, you will prepare (clean) a data set to meet certain specifications before analysis. Refer to the Week 4 Assignment Rubric and assignment instructions for submission guidelines.
Week 5 Assignment: Using the data set you prepared in Week 4, you will run commands in R Studio to consider whether payments from non-Medicare sources differ in interesting and meaningful ways by DRG, state, or both. Refer to the Week 5 Assignment Rubric and assignment instructions for submission guidelines.
Week 6 Assignment: This week, you will continue using your modified dataset on Maine and Alabama to determine mean discharge days, mean payments, and a five number summary. Refer to the Week 6 Assignment Rubric and assignment instructions for submission guidelines.
Week 7 Assignment: For your final assignment, you will prepare (clean) an EHR incentive file and run R scripts to obtain specific outputs. Refer to the Week 7 Assignment Rubric and assignment instructions for submission guidelines.
Your grade in this course will be determined by the following criteria:
Assignment | Points |
---|---|
Discussions (8*3 points each) | 24 |
Week 1 Quiz | 5 |
Week 1 Assignment | 8 |
Week 2 Assignment | 12 |
Week 3 Assignment | 9 |
Week 4 Assignment | 12 |
Week 5 Assignment | 9 |
Week 6 Assignment | 12 |
Week 7 Assignment | 9 |
Total | 100 |
Grade | Points Grade | Point Average (GPA) |
A | 94 – 100% | 4.00 |
A- | 90 – 93% | 3.75 |
B+ | 87 – 89% | 3.50 |
B | 84 – 86% | 3.00 |
B- | 80 – 83% | 2.75 |
C+ | 77 – 79% | 2.50 |
C | 74 – 76% | 2.00 |
C- | 70 – 73% | 1.75 |
D | 64 – 69% | 1.00 |
F | 00 – 63% | 0.00 |
Course learning modules are divided into weeks. Each week starts on Wednesday at 12:00 am Eastern Time (ET) and closes on Wednesday at 11:59 pm ET, with the exception of Week 8, which ends on Sunday. All assignments must be submitted by 11:59 pm ET on the due date.
Learning Modules | Topics | Assignments and Due Dates |
Week 1 Jan 2 – Jan 9 |
Introduction to Data Analytics and R: Tools, Techniques and Data |
Week 1 Discussion: Initial post due Sunday. Responses due by Wednesday. Quiz: Data Analytics Process: Due by Wednesday. You will not be able to take the quiz after this date. Week 1 Assignment: Due by Wednesday. |
Week 2
Jan 9 – Jan 16 |
Common R Functions and Language |
Week 2 Discussion: Initial post due Sunday. Responses due by Wednesday. Week 2 Assignment: Due by Wednesday. |
Week 3
Jan 16 – Jan 23 |
CRAN and R Packages |
Week 3 Discussion: Initial post due Sunday. Responses due by Wednesday. Week 3 Assignment: Part 1 due by Sunday; Part 2 due by Wednesday. |
Week 4
Jan 23 – Jan 30 |
Data Preparation (cleansing and data normalization) |
Week 4 Discussion: Initial post due Sunday. Responses due by Wednesday. Week 4 Assignment: Due by Wednesday. |
Week 5
Jan 30 – Feb 6 |
R Scripts (functions) and Data Analysis – Part 1 |
Week 5 Discussion: Initial post due Sunday. Responses due by Wednesday. Week 5 Assignment: Due by Wednesday. |
Week 6
Feb 6 – Feb 13 |
R Scripts (functions) and Data Analysis – Part 2 |
Week 6 Discussion: Initial post due Sunday. Responses due by Wednesday. Week 6 Assignment: Due by Wednesday.
|
Week 7
Feb 13 – Feb 20 |
R Scripts (functions) and Data Analysis – Part 3 |
Week 7 Discussion: Initial post due Sunday. Responses due by Wednesday. Week 7 Assignment: Due by Wednesday. |
Week 8 (short week)
Feb 20 – Feb 24 |
Data Visualization (Conclusion) |
Week 8 Discussion: Initial post due Friday. Responses due by Sunday. |
Read:
Marc, D. & Sandefer, R. (2016). Data analytics in healthcare research: tools and strategies. Chicago, Illinois: AHIMA Press.
Kuo, Y., Goodwin, J. S., Chen, N., Lwin, K. K., Baillargeon, J., & Raji, M. A. (2015). Diabetes mellitus care provided by nurse practitioners vs primary care physicians. Journal of the American Geriatrics Society, 63(10), 1980-1988. doi:10.1111/jgs.13662
Please also review the following resources:
Read the following article:
Kuo, Y., Goodwin, J. S., Chen, N., Lwin, K. K., Baillargeon, J., & Raji, M. A. (2015). Diabetes mellitus care provided by nurse practitioners vs primary care physicians. Journal of the American Geriatrics Society, 63(10), 1980-1988. doi:10.1111/jgs.13662
Do you think that a table is an adequate representation of the data? If not, suggest other visualizations. Support your preference with examples.
Take the following steps to complete your assignment:
Begin to think like a researcher
Read:
Marc, D. & Sandefer, R. (2016). Data analytics in healthcare research: tools and strategies. Chicago, Illinois: AHIMA Press.
R Language Definition: https://cran.r-project.org/doc/manuals/r-release/R-lang.pdf
An Introduction to R: https://cran.r-project.org/doc/manuals/r-release/R-intro.pdf
Identify an area in healthcare that could benefit from health informatics. What are the challenges of obtaining data? Can you always trust the analysis?
Read:
Marc, D. & Sandefer, R. (2016). Data analytics in healthcare research: tools and strategies. Chicago, Illinois: AHIMA Press.
CRAN and R Packages: https://cran.r-project.org/ Hint: Look for the packages link on the left side of the page.
Gutiérrez-Sacristán, A., Bravo, À., Giannoula, A., Mayer, M. A., Sanz, F., & Furlong, L. I. (2018). comoRbidity: An R package for the systematic analysis of disease comorbidities. Bioinformatics (Oxford, England), 34(18), 3228-3230. doi:10.1093/bioinformatics/bty315
For this week’s discussion read the following article and answer the questions below: comoRbidity an R package for the systematic analysis of disease comorbidities and the supplementary file information. How could this type of R package improve healthcare quality and enhance decision making? As you respond to this question, also consider: Why was comoRbidity created? What types of data analysis questions can the R package comoRbidity solve?
Scenario:You are employed at a local hospital as a health informatics analyst. The hospital has experienced a 200% increase in emergency room (ER) visits over the past 12 months. This has caused ER wait times to increase from 25 minutes to 90 minutes.
Initial analysis of of the data showed that many of the ER visits were due to routine medical care or minor illness/injury. The hospital wants to investigate the possibility of opening urgent care centers in the city to reduce the number of non-emergent ER visits. The current question at hand is: where should these clinics be located, and do we have certain locations within the city where large populations are being seen in the ER for non-emergent conditions?
Instructions: Knowing the type of data that is collected when you present at the ER, select an R package from the list on cran.r-project.org that could assist you in answering the aforementioned questions and can be used to show your analysis to hospital administration.
Install the R package that you selected and capture a screenshot of R Studio once the package has been installed. Discuss how you would use the selected R package to answer the questions above and what types of data would you need (submit your work as a Microsoft Word document).
Read:
CMS Public Data website: https://data.cms.gov/ This website is one source for publicly available health data.
Data.CMS.gov: Inpatient Prospective Payment System (IPPS) Provider Summary for the Top 100 Diagnosis-Related Groups (DRG) – FY2013 – https://data.cms.gov/Medicare-Inpatient/Inpatient-Prospective-Payment-System-IPPS-Provider/kd35-nmmt
Medical big data: promise and challenges: https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5331970/
Data Cleaning: Detecting, Diagnosing, and editing data abnormalities: https://www.ncbi.nlm.nih.gov/pmc/articles/PMC1198040/
For this week’s discussion, read the two scholarly articles that address data cleansing and data normalization, and then discuss the following questions.
Scenario: For this assignment you are employed by CMS (Centers for Medicare and Medicaid Services) as a senior data analyst and you are being asked to compare and contrast chronic disease data from Maine and Alabama.
Instructions: To start, download (as a CSV file) the FY 2013 Inpatient Prospective Payment System (IPPS) Provider Summary for the Top 100 Diagnosis-Related Groups (https://data.cms.gov/Medicare-Inpatient/Inpatient-Prospective-Payment-System-IPPS-Provider/kd35-nmmt).
Before you can analyze the data, you need to prepare (clean) the data to meet the specifications of the chronic disease data report. These specifications include:
There are many ways to achieve the final dataset. Submit your dataset as a Microsoft Excel spreadsheet. There should be 513 rows in the file you submit. Include a brief paragraph (Word document) of the process you used to select the data. Note, some DRGs may not be present in both states.
Read:
Marc, D. & Sandefer, R. (2016). Data analytics in healthcare research: tools and strategies. Chicago, Illinois: AHIMA Press.
Perform a web search for “Anscombe’s Quartet,” a collection of four very small sets of data with identical (or near-identical) numerical statistics, but very different visual characteristics when graphed as scatterplots. (See Anscombe (1973) for the original paper.) Why it is important to visualize data before any statistical analyses are performed?
For this week’s assignment, import your CSV file (from week 4 — Alabama and Maine) into R Studio.
Read:
Introduction to dplyr: https://cran.r-project.org/web/packages/dplyr/vignettes/dplyr.html
Watch
SuperDataScience. (Aug 17, 2017). R PROGRAMMING dplyr BASICS – summarize, group_by, select, mutate, filter, arrange. Retrieved from https://www.youtube.com/watch?v=BaFkbNOaof8.
With your dataset in mind, what can descriptive statistics tell us about the data? What kind of inferences can we draw from the data? What are the limits to descriptive data within your dataset?
Use R studio and the R package, dplyr, answer the following questions based on the modified data set you created last week. Show your work through screenshots.
Read:
Marc, D. & Sandefer, R. (2016). Data analytics in healthcare research: tools and strategies. Chicago, Illinois: AHIMA Press.
Download:
You will use the file below in your assignment for this week.
Week 7 – Chapter 7.csv
Why is it important to combine multiple data types for carrying out analytical procedures, removal of erroneous values and recoding data fields? In addition, provide errors examples you may encounter if these procedures are not completed (think of any type of healthcare data set: admission data, cancer registry, etc.).
Note: The instructions in your book may not perfectly match the version of Excel you are using. Some icons or language may differs slightly, but the functionality is the same.
For this week’s assignment you will use the EHR incentive Excel file.
Marc, D. & Sandefer, R. (2016). Data analytics in healthcare research: tools and strategies. Chicago, Illinois: AHIMA Press.
Imagine you have recently been hired as a senior healthcare data analyst at the Maine Department of Public Health. You have noticed that most of their reports and data analysis are generated and published using traditional text generation. You are scheduled to meet with the chief operating officer (COO) to discuss how improvements to these reports could benefit decision making. Most of the reports are longitudinal in nature, where health data is generated and compared over months or years.
How would you convince the COO that data visualization could enhance data interpretation and lead to more informed decision making? Discuss the benefits of data visualization and provide examples of which types of data visualization would work best given the data that is tracked by the department.
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