Sáenz Bajo N, Barrios Rueda E, Conde Gómez M, Domínguez Macías I, López Carabaño A, Méndez Díez C
Centro de Salud Luis Vives, Area 3 de Atención Primaria, Madrid, Spain.
Aten Primaria. 2002 Jun 30;30(2):99-102. doi: 10.1016/S0212-6567(02)78978-6.
Development and training of a neurone network that enables the patients who attend the clinic with symptoms of dyspepsia to be classified into two groups: those who very probably have peptic ulcer disease or gastro-oesophageal reflux (GOR) and those more likely to have functional or idiopathic dyspepsia. Results obtained with the neurone network and with other statistical classifiers were compared.
Retrospective study.
Three urban primary care clinics. Participants. 81 patients with a diagnosis of dyspepsia, who underwent a digestive tract endoscopy and/ or oesophageal-gastro-duodenal meal, recorded in the clinical notes. Method. Face-to-face interview with a set questionnaire on the symptoms and risk factors of dyspepsia pathology. Data were analysed with determinist classifier, statistical classifier and neurone network based on a multi-layer perception.
The neurone network correctly classified 81% of patients, with negative predictor value of 90% and positive predictor value of 80%.
The neurone network provides very high accuracy rates in classifying patients on the basis of the presence or otherwise of determined symptoms. There was a tendency to distinguish negative diagnoses (functional or idiopathic dyspepsia) better than positive ones (peptic ulcer disease or GOR). Systematic use of neurone networks in primary care clinics would assist the doctor by increasing the accuracy of diagnostic and/or clinical decisions.
开发并训练一个神经网络,以便将前来诊所就诊、有消化不良症状的患者分为两组:极有可能患有消化性溃疡疾病或胃食管反流(GOR)的患者,以及更有可能患有功能性或特发性消化不良的患者。比较神经网络与其他统计分类器所获得的结果。
回顾性研究。
三家城市基层医疗诊所。参与者。81名诊断为消化不良的患者,其在临床记录中记录了接受消化道内镜检查和/或食管-胃-十二指肠造影的情况。方法。通过一套关于消化不良病理症状和危险因素的问卷进行面对面访谈。使用基于多层感知器的确定性分类器、统计分类器和神经网络对数据进行分析。
神经网络正确分类了81%的患者,阴性预测值为90%,阳性预测值为80%。
神经网络在根据特定症状的有无对患者进行分类时具有很高的准确率。在区分阴性诊断(功能性或特发性消化不良)方面比阳性诊断(消化性溃疡疾病或GOR)更有优势。在基层医疗诊所系统地使用神经网络将有助于医生提高诊断和/或临床决策的准确性。