Informatics and Nursing Sensitive Quality Indicators

 

 

• Prepare an 8-10 minute audio training tutorial (video is optional) for new nurses on the importance of nursing-sensitive quality indicators.
This assessment requires you to prepare an 8–10 minute audio training tutorial (with optional video) for new nurses on the importance of nursing-sensitive quality indicators. To successfully prepare for your assessment, you will need to complete the following preparatory activities:
o Select a single nursing-sensitive quality indicator that you see as important to a selected type of health care system. Choose from the following list:
 Staffing measures.
 Nursing hours per patient day.
 RN education/certification.
 Skill mix.
 Nurse turnover.
 Nursing care hours in emergency departments, perioperative units, and perinatal units.
 Skill mix in emergency departments, perioperative units, and perinatal units.
 Quality measures.
 Patient falls.
 Patient falls with injury.
 Pressure ulcer prevalence.
 Health care-associated infections.
 Catheter-associated urinary tract infection.
 Central line catheter associated blood stream infection.
 Ventilator-associated pneumonia.
 Ventilator- associated events.
 Psychiatric physical/sexual assault rate.
 Restraint prevalence.
 Pediatric peripheral intravenous infiltration rate.
 Pediatric pain assessment, intervention, reassessment (air) cycle.
 Falls in ambulatory settings.
 Pressure ulcer incidence rates from electronic health records.
 Hospital readmission rates.
 RN satisfaction survey options.
 Job satisfaction scales.
 Job satisfaction scales – short form.
 Practice environment scale.
o Conduct independent research on the most current information about the selected nursing-sensitive quality indicator.
o Interview a professional colleague or contact who is familiar with quality monitoring and how technology can help to collect and report quality indicator data. You do not need to submit the transcript of your conversation, but do integrate what you learned from the interview into the audio tutorial. Consider these questions for your interview:
 What is your experience with collecting data and entering it into a database?
 What challenges have you experienced?
 How does your organization share with the nursing staff and other members of the health care system the quality improvement monitoring results?
 What role do bedside nurses and other frontline staff have in entering the data? For example, do staff members enter the information into an electronic medical record for extraction? Or do they enter it into another system? How effective is this process?

 

 

 

 

Sample Solution

For my 8-10 minute audio training tutorial, I have selected staffing measures as a nursing-sensitive quality indicator for the health care system. Staffing measures are essential because they provide important insights into how well healthcare teams are functioning and can also allow organizations to identify areas where improvement is needed (Vincent et al. 2016). It is important for new nurses to understand their significance so that they can make informed decisions on staffing strategies and how best to monitor them.

During this training session, new nurses will learn why staffing matters in terms of patient outcomes, factors that should be considered when designing effective team structures such as workloads, skill mix and scheduling practices (Scott & Young 2017). They will also gain understanding of nursing sensitive indicators used by hospitals and other healthcare settings including nurse hourly workloads, nurse turnover rates and levels of overtime worked (Keefe 2018)(Vincent et al. 2016).

At the end of the tutorial, attendees should have a clear understanding of what constitutes an optimal staff structure within their healthcare setting as well as how it contributes to improved patient safety outcomes. This information will help them make meaningful decisions on medical strategies while ensuring resources are used efficiently.

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