Literature DB >> 27066926

Anatomy of Inpatient Falls: Examining Fall Events Captured by Depth-Sensor Technology.

Patricia Potter1, Kelly Allen, Eileen Costantinou, Dean Klinkenberg, Jill Malen, Traci Norris, Elizabeth O'Connor, Wilhelmina Roney, Heidi Hahn Tymkew.   

Abstract

BACKGROUND: Sensor technology offers a new way to identify patient movement, detect falls, and automatically alert health care staff when falls occur. The information gained from analyzing actual fall events can be beneficial in developing individualized fall prevention strategies, informing nursing staff about the nature of falls, and identifying opportunities to make the patient care environment safer.
METHODS: A six-month performance improvement pilot was conducted at Barnes-Jewish Hospital (St. Louis) to assess the ability of a depth-sensor system to capture inpatient fall events within patient hospital rooms. Depth sensors were installed on two inpatient medicine units with a history of high fall rates. The depth sensors captured actual fall events on video. Video clips were reviewed and analyzed to identify the characteristics of patient falls, staff response times, and environmental conditions contributing to falls.
RESULTS: A total of 16 falls involving 13 patients were recorded by depth sensors. Six of the 13 patients who fell were classified as high risk on the basis of the hospital's fall rating tool. Common contributing factors included difficulty rising from their bed, weakened lower extremities, and unsteady or slow gait. Eleven of the falls involved patients reaching for objects in their path in an effort to achieve stability. Nurses had less than two minutes from the time a patient began to exit a bed to the time a fall occurred. Patients expressed few complaints with depth sensors installed in rooms.
CONCLUSION: Fall-detection sensor systems offer valuable data for analyzing the nature of patient falls, with the potential promise of prescribing specific fall interventions for patients and to identify staff development opportunities. Hospitals should understand these devices' benefits and limitations and how they affect nursing practice.

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Year:  2016        PMID: 27066926     DOI: 10.1016/s1553-7250(16)42029-5

Source DB:  PubMed          Journal:  Jt Comm J Qual Patient Saf        ISSN: 1553-7250


  2 in total

1.  Assessment of Fall Characteristics From Depth Sensor Videos.

Authors:  Jennifer J O'Connor; Lorraine J Phillips; Bunmi Folarinde; Gregory L Alexander; Marilyn Rantz
Journal:  J Gerontol Nurs       Date:  2017-07-01       Impact factor: 1.254

2.  Unit-level variation in bed alarm use in US hospitals.

Authors:  Vincent S Staggs; Kea Turner; Catima Potter; Emily Cramer; Nancy Dunton; Lorraine C Mion; Ronald I Shorr
Journal:  Res Nurs Health       Date:  2020-06-09       Impact factor: 2.228

  2 in total

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