A Case Study of Multiple Maintenance Efficacy in Gynaecological Surgery Assessed by Deep Learning
Deep learning is a new learning concept and a highly effective way of learning, which is still being explored in the field of nursing education. This paper analyses the effectiveness of interventions in perioperative gynaecological care using humanised care in the operating theatre and the impact of...
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Veröffentlicht in: | Computational and mathematical methods in medicine 2022-08, Vol.2022, p.1-6 |
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description | Deep learning is a new learning concept and a highly effective way of learning, which is still being explored in the field of nursing education. This paper analyses the effectiveness of interventions in perioperative gynaecological care using humanised care in the operating theatre and the impact of this model of care on patients’ psychological well-being and sleep quality. A deep learning-based vision robot was designed to provide higher quality of care for our human care and simplify our approach to gynaecological surgery. The anxiety and depression scores of the two groups were significantly improved after and before care, and the scores of the observation group were lower than those of the control group, with a statistically significant difference (P |
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title | A Case Study of Multiple Maintenance Efficacy in Gynaecological Surgery Assessed by Deep Learning |
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