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Current state of science in machine learning methods for automatic infant pain evaluation using facial expression information: study protocol of a systematic review and meta-analysis

机译:使用面部表情信息自动评估婴儿疼痛的机器学习方法的科学现状:系统综述和荟萃分析的研究方案

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摘要

Infants can experience pain similar to adults, and improperly controlled pain stimuli could have a long-term adverse impact on their cognitive and neurological function development. The biggest challenge of achieving good infant pain control is obtaining objective pain assessment when direct communication is lacking. For years, computer scientists have developed many different facial expression-centred machine learning (ML) methods for automatic infant pain assessment. Many of these ML algorithms showed rather satisfactory performance and have demonstrated good potential to be further enhanced for implementation in real-world clinical settings. To date, there is no prior research that has systematically summarised and compared the performance of these ML algorithms. Our proposed meta-analysis will provide the first comprehensive evidence on this topic to guide further ML algorithm development and clinical implementation.
机译:婴儿可能会遇到与成人相似的疼痛,不适当地控制疼痛刺激可能会对他们的认知和神经功能发展产生长期不利影响。实现良好的婴儿疼痛控制的最大挑战是缺乏直接沟通时获得客观的疼痛评估。多年来,计算机科学家已经开发出许多不同的以面部表情为中心的机器学习(ML)方法,用于自动婴儿疼痛评估。这些ML算法中的许多算法都表现出令人满意的性能,并显示出了进一步在实际临床环境中实施的良好潜力。迄今为止,尚无先前的研究来系统地总结和比较这些ML算法的性能。我们提出的荟萃分析将提供有关该主题的第一个综合证据,以指导进一步的ML算法开发和临床实施。

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