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新生儿急性疼痛面部表情的机器识别与表征

Machine recognition and representation of neonatal facial displays of acute pain.

作者信息

Brahnam Sheryl, Chuang Chao-Fa, Shih Frank Y, Slack Melinda R

机构信息

Department of Computer Information Systems, Missouri State University, 3rd Floor Glass Hall, 901 South National, Springfield, MO 65804, USA.

出版信息

Artif Intell Med. 2006 Mar;36(3):211-22. doi: 10.1016/j.artmed.2004.12.003.

Abstract

OBJECTIVE

It has been reported in medical literature that health care professionals have difficulty distinguishing a newborn's facial expressions of pain from facial reactions to other stimuli. Although a number of pain instruments have been developed to assist health professionals, studies demonstrate that health professionals are not entirely impartial in their assessment of pain and fail to capitalize on all the information exhibited in a newborn's facial displays. This study tackles these problems by applying three different state-of-the-art face classification techniques to the task of distinguishing a newborn's facial expressions of pain.

METHODS

The facial expressions of 26 neonates between the ages of 18 h and 3 days old were photographed experiencing the pain of a heel lance and a variety of stressors, including transport from one crib to another (a disturbance that can provoke crying that is not in response to pain), an air stimulus on the nose, and friction on the external lateral surface of the heel. Three face classification techniques, principal component analysis (PCA), linear discriminant analysis (LDA), and support vector machine (SVM), were used to classify the faces.

RESULTS

In our experiments, the best recognition rates of pain versus nonpain (88.00%), pain versus rest (94.62%), pain versus cry (80.00%), pain versus air puff (83.33%), and pain versus friction (93.00%) were obtained from an SVM with a polynomial kernel of degree 3. The SVM outperformed two commonly used methods in face classification: PCA and LDA, each using the L1 distance metric.

CONCLUSION

The results of this study indicate that the application of face classification techniques in pain assessment and management is a promising area of investigation.

摘要

目的

医学文献报道,医护人员很难区分新生儿疼痛时的面部表情与对其他刺激的面部反应。尽管已经开发了多种疼痛评估工具来协助医护人员,但研究表明,医护人员在评估疼痛时并非完全公正,并且未能充分利用新生儿面部表情所展现的所有信息。本研究通过应用三种不同的先进面部分类技术来区分新生儿疼痛时的面部表情,以解决这些问题。

方法

对26名年龄在18小时至3天大的新生儿在经历足跟采血疼痛以及各种应激源(包括从一个婴儿床转移到另一个婴儿床(这种干扰可能引发并非因疼痛而导致的哭闹)、鼻部空气刺激以及足跟外侧表面摩擦)时的面部表情进行拍照。使用三种面部分类技术,即主成分分析(PCA)、线性判别分析(LDA)和支持向量机(SVM)对面部进行分类。

结果

在我们的实验中,采用三次多项式核的支持向量机在区分疼痛与非疼痛(88.00%)、疼痛与休息(94.62%)、疼痛与哭闹(80.00%)、疼痛与吹气(83.33%)以及疼痛与摩擦(93.00%)方面获得了最佳识别率。支持向量机在面部分类方面优于两种常用方法:主成分分析和线性判别分析,这两种方法均使用L1距离度量。

结论

本研究结果表明,面部分类技术在疼痛评估和管理中的应用是一个很有前景的研究领域。

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