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A constructive neural network for detecting left ventricular hypertrophy

机译:一种检测左心室肥大的建设性神经网络

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Neural networks apply non-linear statistics to classification problems. One such problem is a medical diagnosis of a left ventricular hypertrophy. The objective of this paper is to develop a model based on self constructed artificial neural networks to support a medical diagnosis. The database used was composed of 101 individuals registered at the university hospital of Federal University of Pernambuco. Input data included: anthropometric, biographical, the biochemistry series, hormones, results of the ABPM-24h, echocardiography and electrocardiographic variables. Many combinations of the available variables were tested to select those that produced the best performance in terms of correct classification rate, sensitivity, specificity and area under ROC curve. The results were compared to those obtained with a classical approach used in medical area, logistic regression. The echocardiography findings were used in this study as a gold standard. Results show a good accuracy rate in classification using the neural system and encourage future improvements.
机译:神经网络将非线性统计数据应用于分类问题。一个这样的问题是左心室肥厚的医学诊断。本文的目的是开发基于自建造的人工神经网络的模型,以支持医学诊断。使用的数据库由在联邦Pernambuco大学医院注册的101人组成。输入数据包括:人类测量,传记,生物化学系列,激素,ABPM-24H,超声心动图和心电图变量的结果。测试了可用变量的许多组合,以选择在ROC曲线下的正确分类率,敏感度,特异性和面积方面产生最佳性能的那些。将结果与用医疗区域使用的经典方法获得的结果进行比较,逻辑回归。在本研究中使用超声心动图发现作为金标准。结果在使用神经系统的分类中显示出良好的准确度,并鼓励未来的改进。

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