首页> 外文会议>2011 Seventh International Conference on Natural Computation >Prediction of the basic gonadotrophic hormone levels in girls with precocious puberty using ultrasonic union artificial neural network
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Prediction of the basic gonadotrophic hormone levels in girls with precocious puberty using ultrasonic union artificial neural network

机译:超声联合人工神经网络预测性早熟女孩的基本促性腺激素水平

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Objective To Predict the basic luteinizing hormone (LH) and follicle stimulating hormone (FSH) levels in girls with precocious puberty using ultrasonic union artificial neural network. Methods In 71 girls with precocious puberty, the uterine and ovarian were examined with ultrasound. The back-propagation (BP) neural network was established using uterine volume, ovarian volume and the largest diameter of bilateral ovarian follicles as the input variables and the basic LH and FSH levels as the output variable. The data of 61 cases were used to train the model, and the other 10 cases were used to test the model. Results The predicted values of basic LH levels were correlated with the actual values with the correlation coefficient of 0.997 and the regression slope of 1.0088. The predicted values of basic FSH levels were correlated with the actual values with the correlation coefficient of 0.63 and the regression slope of 1.0054. Conclusions The ultrasonic union artificial neural network can be used to predict the basic LH level quite well and effective.
机译:目的通过超声联合人工神经网络预测性早熟女童的基本黄体生成激素(LH)和促卵泡激素(FSH)水平。方法对71例性早熟的女孩进行子宫和卵巢超声检查。使用子宫体积,卵巢体积和双侧卵泡最大直径作为输入变量,并以基本LH和FSH水平作为输出变量,建立了反向传播(BP)神经网络。 61例数据用于训练模型,其余10例用于模型测试。结果基础LH水平的预测值与实际值相关,相关系数为0.997,回归斜率为1.0088。基本FSH水平的预测值与实际值相关,相关系数为0.63,回归斜率为1.0054。结论超声联合人工神经网络可以很好地,有效地预测基本的LH水平。

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