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The PSNet Collection: All Content

The AHRQ PSNet Collection comprises an extensive selection of resources relevant to the patient safety community. These resources come in a variety of formats, including literature, research, tools, and Web sites. Resources are identified using the National Library of Medicine’s Medline database, various news and content aggregators, and the expertise of the AHRQ PSNet editorial and technical teams.

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Displaying 1 - 4 of 4 Results
Curated Libraries
March 8, 2023
Value as an element of patient safety is emerging as an approach to prioritize and evaluate improvement actions. This library highlights resources that explore the business case for cost effective, efficient and impactful efforts to reduce medical errors.

NIHCM Foundation. Washington DC: National Institute for Health Care Management. August 2, 2022.

Preventable maternal morbidity is an ongoing challenge in the United States. This infographic shares general data and statistics that demonstrate the presence of racial disparities in maternal care that are linked to structural racism. The resource highlights several avenues for improvement such as diversification of the perinatal staffing and increased access to telehealth.
Curated Libraries
September 13, 2021
Ensuring maternal safety is a patient safety priority. This library reflects a curated selection of PSNet content focused on improving maternal safety. Included resources explore strategies with the potential to improve maternal care delivery and outcomes, such as high reliability, collaborative initiatives, teamwork, and trigger tools.
Aschwanden C. Wired Magazine. January 10, 2020.
The unintended consequences of artificial intelligence (AI) in healthcare continue to generate clinician concern. This magazine piece examines the potential diagnostic improvements to be realized from AI while cautioning about its premature use generating overdiagnosis and overtreatment.