Automated Detection of Rest Disruptions in Critically Ill Patients
- URL: http://arxiv.org/abs/2005.01798v2
- Date: Mon, 12 Oct 2020 19:31:02 GMT
- Title: Automated Detection of Rest Disruptions in Critically Ill Patients
- Authors: Vasundhra Iyengar, Azra Bihorac, Parisa Rashidi
- Abstract summary: Frequent sleep disruptions by the medical staff and/or visitors at certain times might lead to disruption of patient sleep-wake cycle.
In this study, we recruited 38 patients to automatically assess visitation frequency from captured video frames.
We examined the association between frequent disruptions and patient outcomes on pain and length of stay.
- Score: 2.062593640149623
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Sleep has been shown to be an indispensable and important component of
patients recovery process. Nonetheless, sleep quality of patients in the
Intensive Care Unit (ICU) is often low, due to factors such as noise, pain, and
frequent nursing care activities. Frequent sleep disruptions by the medical
staff and/or visitors at certain times might lead to disruption of patient
sleep-wake cycle and can also impact the severity of pain. Examining the
association between sleep quality and frequent visitation has been difficult,
due to lack of automated methods for visitation detection. In this study, we
recruited 38 patients to automatically assess visitation frequency from
captured video frames. We used the DensePose R-CNN (ResNet-101) model to
calculate the number of people in the room in a video frame. We examined when
patients are interrupted the most, and we examined the association between
frequent disruptions and patient outcomes on pain and length of stay.
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