首页> 外文会议>Medical Imaging 1995: Image Processing >Computer-aided diagnosis of mammograms using an artificial neural network: merging of standardized input features from the ACR lexicon
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Computer-aided diagnosis of mammograms using an artificial neural network: merging of standardized input features from the ACR lexicon

机译:使用人工神经网络的乳房X线照片的计算机辅助诊断:合并ACR词典中的标准化输入特征

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Abstract: This study aimed to develop an artificial neural network for computer-aided diagnosis in mammography, using an optimally minimized number of inputs from a standardized lexicon for mammographic features. A three-layer backpropagation neural network merged seven inputs (six radiographic findings extracted by radiologists plus age) to predict biopsy outcome as its output. Each input feature was ranked by importance, as determined by the reduction of Az when that feature was excluded and the network retrained. Once ranked, the input features were discarded in order from least to most important until performance was significantly degraded, resulting in an optimized subset of features. The neural network trained on all seven input features performed with an Az of 0.90 $POM 0.02, compared to experienced radiologists' Az of 0.88 $POM 0.02. The difference in Az was not statistically significant (p $EQ 0.29). The network continued to perform well given as few as three inputs: mass margin, age, and calcification description. !12
机译:摘要:本研究旨在开发一种用于乳腺X射线摄影机计算机辅助诊断的人工神经网络,它使用来自乳腺X射线摄影特征的标准化词典的最佳输入数量来实现最小化。一个三层的反向传播神经网络合并了七个输入(放射线医生提取的六个射线照相结果加上年龄),以预测活检结果作为其输出。每个输入功能按重要性排序,这取决于排除该功能并重新训练网络时Az的减少。排序后,将输入的特征按从不重要到最重要的顺序丢弃,直到性能显着下降,从而生成了优化的特征子集。对所有七个输入特征进行训练的神经网络的Az为0.90 $ POM 0.02,而经验丰富的放射科医生的Az为0.88 $ POM 0.02。 Az的差异无统计学意义(p EQ 0.29)。仅提供了以下三个输入,该网络就继续表现良好:质量余量,年龄和钙化描述。 !12

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