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数据挖掘技术在胃食管反流病诊断问卷开发中的应用。

Applying data mining techniques in the development of a diagnostics questionnaire for GERD.

作者信息

Horowitz Noya, Moshkowitz Menachem, Halpern Zamir, Leshno Moshe

机构信息

Department of Gastroenterology and Liver Disease, Tel-Aviv-Sourasky Medical Center, Tel Aviv, Israel.

出版信息

Dig Dis Sci. 2007 Aug;52(8):1871-8. doi: 10.1007/s10620-006-9202-5. Epub 2007 Apr 10.

Abstract

Gastroesophageal reflux disease (GERD) is a common condition, managed mostly in primary care practice. Heartburn and acid regurgitation are considered primary symptoms, and are usually highly specific. However, the symptom spectrum is much wider and in many cases it is difficult to determine whether the patient has GERD or dyspepsia from another origin. The aim of this study is to develop a symptom score and rule for the diagnosis of GERD, using data mining techniques, to provide a clinical diagnostic tool for primary care practitioners in the evaluation and management of upper gastrointestinal symptoms. A diagnostic symptom questionnaire consisting of 15 items and based on the current literature was designed to measure the presence and severity of reflux and dyspepsia symptoms using a 5-point Likert-type scale. A total of 132 subjects with uninvestigated upper abdominal symptoms were prospectively recruited for symptom evaluation. All patients were interviewed and examined, underwent upper gastrointestinal endoscopy, and completed the questionnaire. Based on endoscopic findings as well as the medical interview, the subjects were classified as having reflux disease (GERD) or non-reflux disease (non-GERD). Data mining models and algorithms (neural networks, decision trees, and logistic regression) were used to build a short and simple new discriminative questionnaire. The most relevant variables discriminating GERD from non-GERD patients were heartburn, regurgitation, clinical response to antacids, sour taste, and aggravation of symptoms after a heavy meal. The sensitivity and specificity of the new symptom score were 70%-75% and 63%-78%, respectively. The area under the ROC curve for logistic regression and neural networks were 0.783 and 0.787, respectively. We present a new validated discriminative GERD questionnaire using data mining techniques. The questionnaire is useful, friendly, and short, and therefore can be easily applied in clinical practice for choosing the appropriate diagnostic workup for patients with upper gastrointestinal complaints.

摘要

胃食管反流病(GERD)是一种常见疾病,主要在基层医疗实践中进行管理。烧心和反酸被视为主要症状,通常具有高度特异性。然而,症状谱要广泛得多,在许多情况下,很难确定患者是患有GERD还是由其他原因引起的消化不良。本研究的目的是利用数据挖掘技术开发一种GERD诊断症状评分和诊断规则,为基层医疗从业者在评估和管理上消化道症状时提供一种临床诊断工具。设计了一份基于当前文献的包含15项内容的诊断症状问卷,使用5点李克特量表来衡量反流和消化不良症状的存在及严重程度。前瞻性招募了132名有未检查过上腹部症状的受试者进行症状评估。对所有患者进行了访谈和检查,接受了上消化道内镜检查,并完成了问卷。根据内镜检查结果以及医学访谈,将受试者分为患有反流病(GERD)或非反流病(非GERD)。使用数据挖掘模型和算法(神经网络、决策树和逻辑回归)构建一个简短且简单的新鉴别问卷。区分GERD患者和非GERD患者的最相关变量是烧心、反流、对抗酸剂的临床反应、酸味以及大餐后症状加重。新症状评分的敏感性和特异性分别为70%-75%和63%-78%。逻辑回归和神经网络的ROC曲线下面积分别为0.783和0.787。我们使用数据挖掘技术展示了一种经过验证的新的GERD鉴别问卷。该问卷实用、友好且简短,因此可轻松应用于临床实践,为有上消化道不适的患者选择合适的诊断检查。

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