Congenital Heart Septum Defect Diagnosis on Chest X-Ray Features Using Neural Networks

S. Jyothi, K. Vanisree
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引用次数: 1

Abstract

Artificial Neural Network is an information processing paradigm that is inspired by the biological nervous system. Decision Support System (DSS) has been identified as one of the important solution providers in the emerging field of Artificial Neural Networks. Medical Decision Support System (MDSS) is an interactive Decision Support System software, which is designed to assist physicians and other health professionals in decision making tasks and to diagnose the patient disease. The Medical Decision Support System reduces the diagnosis time and improves the accuracy of the diagnosis. One of the clinical tests performed to diagnose Congenital Heart Septum Defect is the Chest Radiography (X-Ray) through the contour of size, position and shape of the heart. In order to diagnose Congenital Heart Septum Defect, a physician analyzes the chest X-ray and extracts the features like heart size measurements. But manual extraction of features and diagnosis is a difficult task for a physician. Therefore, in the present study, an algorithm is developed to automatically analyze and to extract the features from Chest X-ray using Image Processing Techniques. Also, a Decision Support System is developed to Diagnose the Congenital Heart Septum Defect based on chest X-ray features using Backpropagation Neural Network model. The Network is trained by using a Delta Learning Rule. The proposed feature extraction algorithm and Decision Support System are implemented in MATLAB with GUI features.
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应用神经网络诊断先天性心隔缺损的胸部x线特征
人工神经网络是一种受生物神经系统启发的信息处理范式。决策支持系统(DSS)已被确定为人工神经网络新兴领域中重要的解决方案提供者之一。医疗决策支持系统(MDSS)是一个交互式决策支持系统软件,旨在协助医生和其他卫生专业人员进行决策任务和诊断患者的疾病。医疗决策支持系统缩短了诊断时间,提高了诊断的准确性。诊断先天性心隔缺损的临床检查之一是通过胸片检查心脏的大小、位置和形状。为了诊断先天性心隔缺损,医生分析胸部x光片并提取心脏大小测量等特征。但对医生来说,人工提取特征和诊断是一项艰巨的任务。因此,本研究开发了一种利用图像处理技术自动分析和提取胸部x线图像特征的算法。同时,利用反向传播神经网络模型,建立了基于胸片特征的先天性心隔缺损诊断决策支持系统。使用Delta学习规则对网络进行训练。在MATLAB中实现了具有GUI特征的特征提取算法和决策支持系统。
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