Machine Learning in Assessing Intraoperative Blood Loss: A Systematic Review and Meta-Analysis.
Key Points
This research aims to evaluate the effectiveness of machine learning in assessing intraoperative blood loss.
Conducted a systematic review of existing literature on machine learning applications in intraoperative blood loss assessment.
Performed a meta-analysis to synthesize findings from multiple studies on the topic.
Explored implications for interdisciplinary approaches in nursing.
Identified several studies demonstrating favorable outcomes of machine learning for intraoperative blood loss assessment.
Showed that machine learning models can improve accuracy in predicting blood loss during surgeries.
Highlighted the potential for machine learning to enhance innovation in nursing practices.
Abstract
We provide a reference for exploring the application of artificial intelligence in other nursing fields, promoting interdisciplinary research and driving continuous innovation and progress in nursing.