Kruse-Andersen S, Rütz K, Kolberg J, Jakobsen E, Madsen T
Department of Thoracic and Cardiovascular Surgery, Odense University Hospital, Denmark.
Dig Dis Sci. 1995 Aug;40(8):1659-68. doi: 10.1007/BF02212686.
Ambulatory long-term motility recording is used increasingly for evaluation of esophageal function. The enormous amount of motility data recorded by this method demands subsequent computer analysis. One of the most crucial steps of this analysis becomes the process of automatic selection of relevant pressure peaks at the various recording levels. Until now, this selection has been performed entirely by rule-based systems, requiring each pressure deflection to fit within predefined rigid numerical limits in order to be detected. However, due to great variations in the shapes of the pressure curves generated by muscular contractions, rule-based criteria do not always select the pressure events most relevant for further analysis. We have therefore been searching for a new concept for automatic event recognition. The present study describes a new system, based on the method of neurocomputing. A large sample of normal esophageal pressure deflections was used as a "learning set," and the performance of the trained neural networks was subsequently verified on different sets of data from normal subjects. Our trained networks detected pressure deflections with sensitivities of 0.79-0.99 and accuracies of 0.89-0.98, depending on the recording level within the esophageal lumen. The neural networks often recognized peaks that clearly represented true contractions but that had been rejected by a rule-based system. We conclude that neural networks have potentials for automatic detections of esophageal, and possibly also other kinds of gastrointestinal, pressure variations.
动态长期运动记录越来越多地用于评估食管功能。通过这种方法记录的大量运动数据需要后续的计算机分析。该分析最关键的步骤之一是在不同记录水平自动选择相关压力峰值的过程。到目前为止,这种选择完全由基于规则的系统执行,要求每个压力偏转符合预定义的严格数值限制才能被检测到。然而,由于肌肉收缩产生的压力曲线形状差异很大,基于规则的标准并不总是能选择出与进一步分析最相关的压力事件。因此,我们一直在寻找一种自动事件识别的新概念。本研究描述了一种基于神经计算方法的新系统。使用大量正常食管压力偏转样本作为“学习集”,随后在来自正常受试者的不同数据集上验证训练后神经网络的性能。根据食管腔内的记录水平,我们训练的网络检测压力偏转的灵敏度为0.79 - 0.99,准确率为0.89 - 0.98。神经网络经常识别出明显代表真正收缩但被基于规则的系统拒绝的峰值。我们得出结论,神经网络有潜力自动检测食管以及可能其他类型的胃肠道压力变化。