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Topic:

Predictive Analytics in Health Care

Essay Instructions:

Competency 2 507

Analyze research related to administration of health care organizations.

Reflection

With the capabilities that informatics brings to the health care sector come the responsibility of considering the legal and ethical outcomes of using patient data, even if it is anonymous, to inform policies, practices, and patient costs of receiving care. In Competency 2, you will study the use and implications of predictive analytics aimed at personalizing and improving patient care.

Reflect on the following in a minimum of 500 words:

Research an example of the use of predictive analytics in health care and share the link in your post. Summarize the particular application, its benefits, and potential drawbacks. Do you think the benefits are worth the potential risks and drawbacks?

Is predictive analytics that uses genomics racist, sexist, homophobic, or discriminatory in other ways? Defend your answer using course and industry sources.

As a health care administrative professional, what do you think is potentially the greatest organizational benefit of using predictive analytics in patient care?

Essay Sample Content Preview:

Research on Predictive Analytics in Health Care
Author's Name
The Institutional Affiliation
Course Number and Name
Instructor Name
Assignment Due Date
Prediction analytics is fascinating, and I have learned much about its healthcare applications. This concept is implemented when using electronic health records (EHRs) to speculate about a patient's prognosis. Excellent work in this area has been done by the UCSF Medical Centre, which uses predictive analytics to determine when a patient's condition is likely to deteriorate (Shahid et al., 2019). Data from many sources, including EHRs, wearables, and laboratory results, are combined to form prediction models. The models then determine the prognosis for the patient, including the likelihood that they will develop sepsis, have a heart attack, or worsen. Patients can recover quickly and spend less time in the hospital if doctors and nurses can anticipate and prevent complications.
There are several advantages to employing this strategy. Applying analytics for prediction can potentially improve efficiency, reduce costs, and ultimately reduce mortality rates in the healthcare system. Doctors can also meet the specific requirements of each patient by using this technology. Because of this, health care for all people improves. However, it would help if you considered the risks (Shrestha et al., 2019). The uncertainty of the forecasts causes significant concern. False positives and negatives can lead to unnecessary interventions or overlooking crucial events. Furthermore, there may be challenges in incorporating predictive analytics into the healthcare process, which could lead to resistance from medical staff. It takes a well-rounded perspective to weigh the positives against the risks and negatives in any situation.
The potential benefits to patient care and resource optimization are enormous; however, it is essential to rigorously assess the accuracy of forecasts to reduce the number of false alarms. During deployment, healthcare professionals should receive extensive clinical decision-making training on using predictive analytics. Using predictive analytics that incorporates genomics data raises issues from an ethical standpoint. It can perpetuate prejudice, sexism, homophobia, and discrimination if not appropriately managed. For instance, if genomics data is used in prediction models without considering the inclusion of different populations, racially biased recommendations may result (WHO, 2021). Therefore, using comprehensive ...
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