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首页> 外文期刊>Journal of Medical Systems >Prediction of Minor Head Injured Patients Using Logistic Regression and MLP Neural Network
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Prediction of Minor Head Injured Patients Using Logistic Regression and MLP Neural Network

机译:使用Logistic回归和MLP神经网络预测轻度颅脑损伤患者

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摘要

In this study it is aimed to assess the posttraumatic cerebral hemodynamia in minor head injured patients. Eighty patients with minor head injury (Group 1) evaluated in the early 8 h of posttraumatic period between July 2003 and February 2004. The control group (Group 2) has composed of 32 healthy people. Bilateral blood flow velocities of middle cerebral arteries (MCA) had measured using transtemporal technique while internal carotid arteries were evaluated by submandibular examination. Two different mathematical models such as the traditional statistical method on the basis of logistic regression and a multi-layer perceptron (MLP) neural network are used to classify the age, sex, velocitiy parameters of MCA, mean velocity of extracranial ICAs and V MCA / V ICA ratios. The neural network was trained, cross-validated and tested with subject’s transcranial Doppler signals. As a result of these classifications, we found the success rate of logistic regression, the success rate of MLP neural network is 88.2 and 89.1%, respectively. The classification results show that MLP neural network is offering the best results in the case of diagnosis.
机译:在这项研究中,目的是评估轻度颅脑损伤患者的创伤后脑出血。在2003年7月至2004年2月的创伤后早期8小时内评估了80例轻度颅脑损伤患者(第1组)。对照组(第2组)由32名健康人组成。使用跨颞技术测量了中脑动脉(MCA)的双边血流速度,同时通过下颌下检查评估了颈内动脉。使用两种不同的数学模型(例如基于逻辑回归的传统统计方法和多层感知器(MLP)神经网络)对MCA的年龄,性别,速度参数,颅外ICAs的平均速度和V MCA < / sub> / V ICA 比率。该神经网络经过训练,交叉验证并通过受试者的经颅多普勒信号进行了测试。通过这些分类,我们发现逻辑回归的成功率,MLP神经网络的成功率分别为88.2%和89.1%。分类结果表明,在诊断情况下,MLP神经网络可提供最佳结果。

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