An automated ICU agitation monitoring system for video streaming using deep learning classification

被引:2
作者
Dai, Pei-Yu [1 ]
Wu, Yu-Cheng [2 ]
Sheu, Ruey-Kai [1 ]
Wu, Chieh-Liang [2 ,3 ]
Liu, Shu-Fang [4 ]
Lin, Pei-Yi [5 ]
Cheng, Wei-Lin [1 ]
Lin, Guan-Yin [5 ]
Chung, Huang-Chien [6 ]
Chen, Lun-Chi [7 ]
机构
[1] Tunghai Univ, Dept Comp Sci, Taichung, Taiwan
[2] Taichung Vet Gen Hosp, Dept Crit Care Med, Taichung, Taiwan
[3] Natl Chung Hsing Univ, Coll Med, Dept Postbaccalaureate Med, Taichung, Taiwan
[4] Taichung Vet Gen Hosp, Supervisor Nursing Dept, Taichung, Taiwan
[5] Taichung Vet Gen Hosp, Dept Nursing, Taichung, Taiwan
[6] Tunghai Univ, Dept Ind Engn & Enterprise Informat, Taichung, Taiwan
[7] Tunghai Univ, Coll Engn, Taichung, Taiwan
关键词
Motion detection; Deep learning; Video streaming data; ICU; RASS; SEDATION SCALE; RELIABILITY; VALIDITY;
D O I
10.1186/s12911-024-02479-2
中图分类号
R-058 [];
学科分类号
摘要
ObjectiveTo address the challenge of assessing sedation status in critically ill patients in the intensive care unit (ICU), we aimed to develop a non-contact automatic classifier of agitation using artificial intelligence and deep learning.MethodsWe collected the video recordings of ICU patients and cut them into 30-second (30-s) and 2-second (2-s) segments. All of the segments were annotated with the status of agitation as "Attention" and "Non-attention". After transforming the video segments into movement quantification, we constructed the models of agitation classifiers with Threshold, Random Forest, and LSTM and evaluated their performances.ResultsThe video recording segmentation yielded 427 30-s and 6405 2-s segments from 61 patients for model construction. The LSTM model achieved remarkable accuracy (ACC 0.92, AUC 0.91), outperforming other methods.ConclusionOur study proposes an advanced monitoring system combining LSTM and image processing to ensure mild patient sedation in ICU care. LSTM proves to be the optimal choice for accurate monitoring. Future efforts should prioritize expanding data collection and enhancing system integration for practical application.
引用
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页数:10
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