Centro Universitário da Fundação Educacional Inaciana (FEI), São Bernardo do Campo, SP, Brazil.
Centro Universitário da Fundação Educacional Inaciana (FEI), São Bernardo do Campo, SP, Brazil.
J Pediatr (Rio J). 2023 Nov-Dec;99(6):546-560. doi: 10.1016/j.jped.2023.05.005. Epub 2023 Jun 15.
To describe the challenges and perspectives of the automation of pain assessment in the Neonatal Intensive Care Unit.
A search for scientific articles published in the last 10 years on automated neonatal pain assessment was conducted in the main Databases of the Health Area and Engineering Journal Portals, using the descriptors: Pain Measurement, Newborn, Artificial Intelligence, Computer Systems, Software, Automated Facial Recognition.
Fifteen articles were selected and allowed a broad reflection on first, the literature search did not return the various automatic methods that exist to date, and those that exist are not effective enough to replace the human eye; second, computational methods are not yet able to automatically detect pain on partially covered faces and need to be tested during the natural movement of the neonate and with different light intensities; third, for research to advance in this area, databases are needed with more neonatal facial images available for the study of computational methods.
There is still a gap between computational methods developed for automated neonatal pain assessment and a practical application that can be used at the bedside in real-time, that is sensitive, specific, and with good accuracy. The studies reviewed described limitations that could be minimized with the development of a tool that identifies pain by analyzing only free facial regions, and the creation and feasibility of a synthetic database of neonatal facial images that is freely available to researchers.
描述新生儿重症监护病房中疼痛评估自动化的挑战和前景。
在主要的健康领域数据库和工程期刊门户中,对过去 10 年中发表的关于自动新生儿疼痛评估的科学文章进行了搜索,使用的描述词为:疼痛测量、新生儿、人工智能、计算机系统、软件、自动面部识别。
选择了 15 篇文章,使我们可以广泛地思考以下几点:首先,文献检索没有返回迄今为止存在的各种自动方法,而且现有的方法还不够有效,无法替代人眼;其次,计算方法还不能自动检测部分遮挡的面部的疼痛,需要在新生儿的自然运动和不同的光照强度下进行测试;第三,为了在这一领域取得研究进展,需要有更多的新生儿面部图像数据库,以供计算方法的研究。
用于自动新生儿疼痛评估的计算方法与可在实时床边实际应用之间仍存在差距,该应用方法需要具有高灵敏度、高特异性和良好准确性。综述中描述的研究局限性可以通过开发一种仅分析自由面部区域来识别疼痛的工具来最小化,还可以创建和验证新生儿面部图像的综合数据库,以便研究人员自由使用。