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action or later. Please see Debugging in WordPress for more information. (This message was added in version 6.7.0.) in /home/intelligentwr/nursingassignmentcrackers/wp-includes/functions.php on line 6114When you wake in the morning, you may reach for your cell phone to reply to a few text or email messages that you missed overnight. On your drive to work, you may stop to refuel your car. Upon your arrival, you might swipe a key card at the door to gain entrance to the facility. And before finally reaching your workstation, you may stop by the cafeteria to purchase a coffee.<\/p>\n
From the moment you wake, you are in fact a data-generation machine. Each use of your phone, every transaction you make using a debit or credit card, even your entrance to your place of work, creates data. It begs the question: How much data do you generate each day? Many studies have been conducted on this, and the numbers are staggering: Estimates suggest that nearly 1 million bytes of data are generated every second for every person on earth.<\/p>\n
As the volume of data increases, information professionals have looked for ways to use big data\u2014large, complex sets of data that require specialized approaches to use effectively. Big data has the potential for significant rewards\u2014and significant risks\u2014to healthcare. In this Discussion, you will consider these risks and rewards.<\/p>\n
Be sure to review the Learning Resources before completing this activity.
\nClick the weekly resources link to access the resources.<\/p>\n
Post<\/strong>\u00a0a description of at least one potential benefit of using big data as part of a clinical system and explain why. Then, describe at least one potential challenge or risk of using big data as part of a clinical system and explain why. Propose at least one strategy you have experienced, observed, or researched that may effectively mitigate the challenges or risks of using big data you described. Be specific and provide examples.<\/p>\n Respond<\/strong>\u00a0to at least\u00a0two<\/strong>\u00a0of your colleagues* on two different days<\/strong>, by offering one or more additional mitigation strategies or further insight into your colleagues\u2019 assessment of big data opportunities and risks.<\/p>\n *Note:<\/em><\/strong>\u00a0Throughout this program, your fellow students are referred to as colleagues.<\/em><\/p>\n As technology advances, so does the ability to obtain and analyze large sets of data from numerous differing sources. \u202fThe result of this voluminous information is called big data<\/a>.\u202f Big data is the name given to the vast amount of datasets within the organization that are difficult to manage due to their lack of structure (McGonigle & Mastrian, 2018). \u202fThe universal move from paper charting to the electronic health record (EHR)<\/a> has allowed more efficient access to all aspects of current healthcare documentation along with older data via backup and storage media.<\/span>\u00a0<\/span><\/p>\n The daily use of an EHR provides a continual data set that can easily be probed and assimilated to produce information that can then be used to influence positive patient outcomes.\u202f Trends in the documentation found to be useful during the monitoring and management of patient care can be examined and used to direct change in future policies and procedures.\u202f Due to the universal language of most charting modules within a health system, the data can easily be searched and mined for a specific metric.\u202f An issue arises when a query wishes to retrieve charting details from an unstructured area, such as narrative charting entries.<\/span>\u00a0<\/span><\/p>\n As long as EHRs allow custom narrative entries, the ability to pull organized system-wide search results will be time and labor-intensive.\u202f The unformatted information must then be manually viewed, read, and sorted.\u202f Lack of integration is a prime example of how big data mining can be overwhelming and cumbersome within a clinical system (Wang et al., 2018).<\/span>\u00a0<\/span><\/p>\n One strategy used to mitigate the challenge of big data is using a checkbox flowsheet method of universal charting.\u202f The structured format of this technique provides organized, easily accessible, and easily interpreted results to the informaticist (Glassman, 2017).\u202f Although using the narrative approach can be more efficient at times by grouping together multiple assessment categories in one location, the information<\/span><\/p>\n could be invisible and, therefore, unavailable for the requested project at hand.<\/span>\u00a0<\/span><\/p>\n \u202f<\/span>\u00a0<\/span><\/p>\n Glassman, K. S. (2017). Using data in nursing practice<\/a>. <\/span>American Nurse Today<\/span><\/i>, 12(11), 45\u201347. Retrieved from https:\/\/www.americannursetoday.com\/wp-content\/uploads\/2017\/11\/ant11-Data-1030.pdf<\/a><\/span>\u00a0<\/span><\/p>\n McGonigle, D., & Mastrian, K. (2018).\u202f<\/span>Nursing Informatics and the Foundation of Knowledge<\/span><\/i>\u202f(4th ed.). Jones and Bartlett Learning.<\/span>\u00a0<\/span><\/p>\n Wang, Y., Kung, L., & Byrd, T. (2018). Big data analytics: Understanding its capabilities and potential benefits for healthcare organizations.\u202f<\/span>Technological Forecasting and Social Change<\/span><\/i>,\u202f<\/span>126<\/span><\/i>, 3-13. https:\/\/doi.org\/10.1016\/j.techfore.2015.12.019<\/a><\/span>\u00a0<\/span><\/p>\n When you wake in the morning, you may reach for your cell phone to reply to a few text or email messages that you missed overnight. On your drive to work, you may stop to refuel your car. Upon your arrival, you might swipe a key card at the door to gain entrance to the facility. And before finally reaching your workstation, you may stop by the cafeteria to purchase a coffee.<\/p>\n From the moment you wake, you are in fact a data-generation machine. Each use of your phone, every transaction you make using a debit or credit card, even your entrance to your place of work, creates data. It begs the question: How much data do you generate each day? Many studies have been conducted on this, and the numbers are staggering: Estimates suggest that nearly 1 million bytes of data are generated every second for every person on earth.<\/p>\n As the volume of data increases, information professionals have looked for ways to use big data\u2014large, complex sets of data that require specialized approaches to use effectively. Big data has the potential for significant rewards\u2014and significant risks\u2014to healthcare. In this Discussion, you will consider these risks and rewards.<\/p>\n When nurses enter data, they document essential information for the health team’s understanding of the patient. The importance of this information is critical to understanding and treatment methods. This data and the value of technology are meaningful use to a clinical system (Glassman, 2018). Technologies can be beneficial to gathering and analyzing patient data in a clinical setting. According to Glassman (2018), nurses must engage themselves in their feedback on big data processes and technology support. Nurses having a voice and being at the table to use good data for improved outcomes is key to making effective positive changes (Thew, 2016). Nurse leaders are interested in how to use big data for advocacy in best practice management.<\/p>\n The lack of data standardization and understanding of what to do with all the big data is an obvious barrier. As overwhelming as this subject is, I empathize with the nurse leader’s role in how to make changes from a large influx of data. To untap the value of big data, big data analytics and data mining may offer some solutions for healthcare organizations. Data management systems will help compartmentalize data suitable for big data that comes with healthcare data entry. A potential benefit for leaders is nurse managers using data analytics to view consolidated daily reports concerning patient safety concerns Wang et al. (2018). Data mining are tools to convert data into valuable knowledge. McGonigle & Mastrian, 2022 find that “Data mining includes tools for visualizing relations in the data and mechanizes the process of discovering predictive information in massive databases” (p.537). Nurse managers would be interested in how data mining technology could benefit the interests of their departments and patient outcomes. A nurse manager in a medical unit may be interested in fall prevention methods. Lee et al. (2011) further describe not all falls can be unavoidable, but reducing injuries and avoiding future falls align with desirable goals that healthcare providers and organizations could use from incident reporting system data. Incident data documentation reported by nurses would serve as data to establish fall prevention measures, guidelines, policies, and interventions. Big data could benefit this clinical area of interest through its abilities in data collection measures, methods, and analysis.<\/span><\/p>\n Some challenges of using big data are the need for data standardization and the failure of how data can interact (Thew, 2016). In the example of incidents of falls, accurate fall prediction models may use data from the incident reporting systems. Data that is hard to code or document may use the free text option, which can be a challenging variable. Misinterpretation can also add to the risks and challenges of big data.<\/span><\/p>\n A researched mitigation strategy to combat resistance to using big data is accepting and assuming the risk. Since fall prevention is a hot topic, I believe big data is a risk worth investing in. The link between evidence-based nursing knowledge and big data can intertwine in the improvement efforts in fall prevention programs. Stevens et al. (2017) described how “improving case management and implementation strategies that promote patient adherence to evidence-based strategies is crucial to successfully reducing falls” (p.77). The argument of why a nurse manager would advocate for specific methods concerning fall prevention measures would have supportive data rather than resorting to a person-to-person debate. In efforts to improve and understand healthcare to a greater degree, meaningful data is necessary (McGonigle & Mastrian, 2022). By using big data, there is an opportunity for improvements in several aspects of healthcare.<\/span><\/p>\n Big data has had a global impact on the healthcare industry and coined a new way of adding to the productivity of our lives and task. “The potential of Big Data in healthcare relies on the ability to detect patterns and to turn high volumes of data into actionable knowledge for precision medicine and decision makers”(Pastorino et al., 2019).<\/p>\n Many potential come from using big data as part of the clinical system. One potential benefit is using the big data clinical system as a scheduler, specifically Ultimate Kronos, to create flexible employee scheduling. Employees can access Kronos from work, home, or mobile devices. Kronos is highly interactive with its users allowing staff to see their pay stubs and benefits, request time off, and make various requests through this system. Staff can also upload essential or requested documents to this software, such as a social security card showing one name has been changed due to marriage. This big data saves time and prevents the staff from physically walking or driving to Human Resources. Using Kronos prevents the saturation of nurses on the same shift or day, as they can see where the holes are in the schedule. It organizes the workflow for a seamless workday. “The flexibility, customization, and modularity of Kronos make it an attractive system to use in any high-throughput genomics analysis endeavor”(Taghiyar et al., 2017).<\/p>\n One challenge or risk of using big data as part of a clinical system is when a system’s failure to operate occurs. When this happens, employees and hospital staff cannot view the schedule. Unit holes need to remain, leaving nurses to work short.<\/p>\n One solution or strategy to mitigate this challenge is printing off schedules a week ahead of time to accommodate any system failure and prevent workflow disruption. Employees can also be encouraged to print out their schedules if the system goes down.<\/p>\n Healthcare data management and analysis used to be time-consuming and expensive. Thanks to technology, the healthcare industry has recently made great strides to keep up with the flow of big data in the industry. Big data analytics in healthcare leverages health-related information about a person or community to comprehend a patient, organization, or community ((Illinois, 2021).<\/p>\n Addressing big data risks requires a comprehensive approach that involves implementing various measures to mitigate potential threats and ensure data security and privacy. Establishing strong data governance practices is essential for managing big data risks (Favaretto et al., 2020). This includes defining clear data policies, procedures, and standards that govern data collection, storage, access, and usage. Data governance frameworks help ensure accountability, compliance, and risk management throughout the data lifecycle. Robust security measures are crucial to protect data from unauthorized access, breaches, or cyber-attacks. This includes employing encryption techniques, implementing firewalls and intrusion detection systems, conducting regular security audits, and adopting secure coding practices. Data should be protected at rest and in transit to prevent unauthorized disclosure or tampering (Luan et al., 2020). With the growing concerns around privacy, organizations must prioritize protecting individuals\u2019 personal information. This involves compliance with relevant data protection laws and regulations, such as the General Data Protection Regulation (GDPR). Implementing privacy-enhancing technologies, anonymization techniques, and obtaining informed consent from data subjects are crucial aspects of privacy protection.<\/p>\n Favaretto, M., De Clercq, E., Schneble, C. O., & Elger, B. S. (2020). What is your definition of Big Data? Researchers\u2019 understanding of the phenomenon of the decade.\u00a0Plos One<\/em>,\u00a015<\/em>(2).\u00a0https:\/\/doi.org\/10.1371\/journal.pone.0228987Links to an external site.<\/a><\/p>\nBY DAY 6 OF WEEK 5<\/h2>\n
A Sample Answer For the Assignment: NURS 6051 BIG DATA RISKS AND REWARDS<\/strong><\/h2>\n
Title: NURS 6051 BIG DATA RISKS AND REWARDS <\/strong>\u00a0<\/strong><\/h2>\n
References<\/span>\u00a0<\/span><\/h2>\n
A Sample Answer 2 For the Assignment: NURS 6051 BIG DATA RISKS AND REWARDS<\/strong><\/h2>\n
Title: NURS 6051 BIG DATA RISKS AND REWARDS <\/strong>\u00a0<\/strong><\/h2>\n
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A Sample Answer 3 For the Assignment: NURS 6051 BIG DATA RISKS AND REWARDS<\/strong><\/h2>\n
Title: NURS 6051 BIG DATA RISKS AND REWARDS <\/strong>\u00a0<\/strong><\/h2>\n
A Sample Answer 4 For the Assignment: NURS 6051 BIG DATA RISKS AND REWARDS<\/strong><\/h2>\n
Title: NURS 6051 BIG DATA RISKS AND REWARDS <\/strong>\u00a0<\/strong><\/h2>\n
References<\/strong><\/h2>\n