A national survey on point of care ultrasonography use among Veterans Affairs clinicians in home care and skilled nursing facilities

Abstract: Introduction: Older adults who are homebound and those in skilled nursing facilities (SNFs) often have limited access to point of care imaging to inform clinical decision making. Point-of-care ultrasonography (POCUS) can help span this gap by augmenting the physical examination to aid in diagnosis and triaging. Although training in POCUS for medical trainees is becoming more common and may focus on settings such as the emergency department, intensive care unit, and inpatient care, little is known about POCUS training among practicing clinicians who work outside of these settings. We conducted a national needs assessment survey around experience with POCUS focused on practicing clinicians in the sub-acute, long-term, and home-based care settings in the Veterans Affairs (VA) health system. Methods: An electronic survey was developed and sent out to clinicians via Listservs for the VA long-term and sub-acute care facilities [Community Living Centers (CLCs)], Home Based Primary Care outpatient teams, and Hospital in Home teams to assess current attitudes, previous training, and skills related to POCUS. Results: Eighty-eight participants responded to the survey, for an overall response rate of 29% based on the number of emails on each Listserv, representing CLC, home-based primary care, and hospital in home. Sixty percent of clinicians reported no experience with POCUS, and 76% reported that POCUS and POCUS training would be useful to their practice. More than 50% cited lack of training and lack of equipment as 2 significant barriers to POCUS use. Discussion: This national needs assessment survey of VA clinicians reveals important opportunities for training in POCUS for clinicians working with older adults who are receiving home care homebound or living in SNFs.

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