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Mammographic Masses Classification: Comparison between backpropagation neural network (BNN), K nearest neighbors (KNN), and human readers

机译:乳房XMPORAGE群众分类:BESTAPAGAGAGION神经网络(BNN),K最近邻居(KNN)和人类读者之间的比较

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PURPOSE: We compare mammographic mass classification performance between a backpropagation neural network (BNN), K nearest neighbors, expert radiologists, and residents. Our goal is to reduce false negatives during screening of mammograms. METHODS: 160 cases were used. Each case contained at least one mass and had an accompanying biopsy result. Masses were extracted using region growing with seed locations identified by an expert radiologist. 10 texture and shape based features were used as inputs to a BNN and KNN. 140 cases were used for training the BNN and the KNN. The remaining 20 cases were used for testing. The testing set was diagnosed by three expert radiologists, three residents, the BNN, and the KNN. We evaluated the human readers and the BNN by computing the area under the ROC curve (AUC). The KNN was evaluated by computing the sensitivity, specificity, and number of false negatives (FN). RESULTS: The AUC was 0.923 for the BNN, 0.846 for the expert radiologists, and 0.648 for the residents. The KNN had a specificity 85.7% with sensitivity 84.6% and with FN=2. These results illustrate the promise of using the BNN as a physician's assistant for breast mass classification.
机译:目的:我们比较BackPropagation神经网络(BNN),K最近邻居,专家放射科学家和居民之间的乳房X XMPACTION大众分类性能。我们的目标是减少在筛查乳房X光检查期间的假阴性。方法:使用160例。每种情况含有至少一个质量并具有伴随的活检结果。使用由专家放射科医师鉴定的种子位置生长的区域提取质量。 10纹理和基于形状的特征被用作BNN和KNN的输入。使用140例训练BNN和KNN。其余20例用于测试。测试集被三名专家放射科医师,三名居民,BNN和KNN诊断出来。我们通过计算ROC曲线(AUC)下的区域评估人类读者和BNN。通过计算敏感度,特异性和错误底片(FN)的敏感性,特异性和数量来评估KNN。结果:AUC为BNN为0.923,适用于专家放射科医师0.846,居民的0.648。 KNN的特异性为85.7%,灵敏度为84.6%,FN = 2。这些结果说明了使用BNN作为医生乳房分类助手的承诺。

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