School of Aerospace Engineering, Georgia Institute of Technology, Atlanta, GA 30332-0150, USA.
IEEE Trans Biomed Eng. 2010 Jun;57(6):1457-66. doi: 10.1109/TBME.2009.2039214. Epub 2010 Feb 17.
Pain assessment in patients who are unable to verbally communicate is a challenging problem. The fundamental limitations in pain assessment in neonates stem from subjective assessment criteria, rather than quantifiable and measurable data. This often results in poor quality and inconsistent treatment of patient pain management. Recent advancements in pattern recognition techniques using relevance vector machine (RVM) learning techniques can assist medical staff in assessing pain by constantly monitoring the patient and providing the clinician with quantifiable data for pain management. The RVM classification technique is a Bayesian extension of the support vector machine (SVM) algorithm, which achieves comparable performance to SVM while providing posterior probabilities for class memberships and a sparser model. If classes represent "pure" facial expressions (i.e., extreme expressions that an observer can identify with a high degree of confidence), then the posterior probability of the membership of some intermediate facial expression to a class can provide an estimate of the intensity of such an expression. In this paper, we use the RVM classification technique to distinguish pain from nonpain in neonates as well as assess their pain intensity levels. We also correlate our results with the pain intensity assessed by expert and nonexpert human examiners.
无法进行言语交流的患者的疼痛评估是一个具有挑战性的问题。新生儿疼痛评估的根本局限性源于主观评估标准,而不是可量化和可测量的数据。这往往导致患者疼痛管理的治疗质量差且不一致。最近,使用相关向量机(RVM)学习技术的模式识别技术的进步可以通过持续监测患者并为临床医生提供疼痛管理的量化数据来帮助医务人员评估疼痛。RVM 分类技术是支持向量机(SVM)算法的贝叶斯扩展,它在提供类成员的后验概率和更稀疏的模型的同时,实现了与 SVM 相当的性能。如果类别表示“纯”面部表情(即观察者可以高度自信地识别的极端表情),那么某个中间面部表情属于某个类别的后验概率可以提供对这种表情强度的估计。在本文中,我们使用 RVM 分类技术来区分新生儿的疼痛和非疼痛,并评估他们的疼痛强度水平。我们还将我们的结果与专家和非专家人类检查者评估的疼痛强度进行了关联。