Data Mining in Health Care
As discussed in this week's readings, data warehousing is a method of data storage that allows for streamlined data management and retrieval. Data mining software aids in clarifying the relationships between stored data and assists in retrieving specific information as needed.
In health care organizations, the information this process yields can be used to cut costs and improve patient care.
For this Discussion, you explore the concept of data mining from a health care perspective.
To prepare:
What are the potential benefits of using data mining in health care?
Review the information in the Learning Resources on the different types of data warehousing and how the one selected impacts data mining.
Review the Hey article, "The Next Scientific Revolution." Consider how data mining through machine learning can be applied to health care.
Reflect on the information on data mining provided in Section 13.6.1 in the course text, Coronel, C. & Morris, S. (2015). Database systems:
Design, implementation, and management (11th ed.). Stamford, CT: Cengage Learning, and consider how it connects to the content in the Hey article. According to the text, are the data mining techniques Hey describes guided or automated?
Using the Walden Library, locate at least one specific example of each type of data mining (guided and automated) in health care. The examples you identify should be different from the examples discussed in the Hey article.
Reflect on your initial impressions of automated data mining in health care. What are your thoughts on applying this type of data mining to patient care? Consider possible drawbacks of both guided and automated data mining. What approaches and strategies could be used to address those concerns?
Consider any ethical ramifications of using data mining or machine learning as a tool for prognosis.
Response must be 550 words in APA format with 3 references. Include the level one headings as followed below:
1) An analysis of how data mining can be beneficial to a health care system.
2) Assess how the type of data warehousing used can impact the ability to mine data.
3) Describe examples of the successful use of guided data mining and automated data mining within health care and cite your source.
3) Describe any reservations you have or ethical issues you foresee in using data mining to provide health care information.
4) What approaches and strategies could be used to address those concerns? Justify your responses.
Required Resources
Note: To access this week's required library resources, please click on the link to the Course Readings List, found in the Course Materials section of your Syllabus.
Readings
Coronel, C. & Morris, S. (2015). Database systems: Design, implementation, and management (11th ed.). Stamford, CT: Cengage Learning.
Chapter 13, "Business Intelligence and Data Warehouses" (pp. 559-623)
This chapter explores data warehousing and how it improves organizational decision making. It also evaluates how, in some situations, the internet may affect data storage and assessments.
Kristianson, K. J., Ljunggren, H., & Gustafsson, L. L. (2009). Data extraction from a semi-structured electronic medical record system for outpatients: A model to facilitate the access and use of data for quality control and research. Health Informatics Journal, 15(4), 305-319.
Retrieved from the Walden Library databases.
In this article, the authors demonstrate the importance of structuring diagnostic data for optimum data extraction and patient care. In addition, they evaluate the efficiency of data management standards in electronic medical records (EMRs).
Kulkarni, M. (2010). A case-based data warehousing courseware. 2010 IEEE International Conference on Information Reuse and Integration (IRI), 245-248.
Retrieved from the Walden Library databases.
This article evaluates how beginning designers can learn and implement key concepts of data warehousing. The method highlighted here is hands on and involves the creation of a warehouse tailored to suit a specific data set.
Jukic, N., & Nicholas, J. (2010). A framework for collecting and defining requirements for data warehousing projects. Journal of Computing & Information Technology, 18(4), 377-384.
Retrieved from the Walden Library databases.
This article proposes a database framework that is standardized to suit various data processing applications. The authors highlight the planning steps for data warehouses and explore methods for creating a database framework that will suit the needs of the end-users.
Hey, T. (2010). The big idea: The next scientific revolution. Harvard Business Review, 88(11), 56-63.
Retrieved from the Walden Library databases.
The author of this article explains how applying machine learning in data analysis can produce scientific discoveries and accurate predictions. The article describes several successful applications of machine learning across the domains of health care, oceanography, business, and more.
McAfee, A. (2011). What every CEO needs to know about the cloud. Harvard Business Review, 89(11), 124-132.
Retrieved from the Walden Library databases.
This article highlights the benefits that cloud computing provides for all business organizations. The author addresses the transition into the widespread use of cloud technology while debunking common criticisms about its usability and security.
Media
Laureate Education, Inc. (Executive Producer). (2012). The relationship between data warehousing and data mining. Baltimore, MD: Author.
This multimedia piece describes data warehousing and data mining. It highlights their interrelationship and role in the storage and access of data in databases.
Note: The approximate length of this media piece is 5 minutes. Please click on the following link for the transcript: Transcript (PDF).