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Comparative Analysis of Distributed, Default, IC, and Fuzzy ARTMAP Neural Networks for Classification of Malignant and Benign Lesions

机译:分布式,默认,IC和模糊ARTMAP神经网络对恶性和良性病变分类的比较分析

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Only one third of all breast cancer biopsies made today confirm the disease, which make these procedures inefficient and expensive. We address the problem by exploring and comparing characteristics of four neural networks used as predictors: fuzzy, distributed, default, and ic ARTMAP, all based on the adaptive resonance theory. The networks were trained using a dataset that contains a combination of 39 mammographic, sonographic, and other descriptors, which is novel for the field. We compared the model performances by using ROC analysis and metrics derived from it, such as max accuracy, full and partial area under the convex hull, and specificity at 98% sensitivity. Our findings show that the four models outperform the most popular MLP neural networks given that they are setup properly and used with appropriate selection of data variables. We also find that two of the models, distributed and ic, are too conservative in their predictions and do not provide sufficient sensitivity and specificity, but the default ARTMAP shows very good characteristics. It outperforms not only its counterparts, but also all other models used with the same data, even some radiologist practices. To the best of our knowledge, the ARTMAP neural networks have not been studied for the purpose of the task until now.
机译:今天进行的所有乳腺癌活检中只有三分之一证实了这种疾病,这使得这些程序效率低下且昂贵。我们通过探索和比较用作预测器的四个神经网络的特征来解决这个问题:模糊,分布式,默认和ic ARTMAP均基于自适应共振理论。使用包含39个乳腺X线照片,超声图像和其他描述符的组合的数据集对网络进行了训练,这对于该领域来说是新颖的。我们通过使用ROC分析和从中得出的度量标准(例如最大精度,凸包下的全部和部分面积以及98%敏感性下的特异性)对模型性能进行了比较。我们的发现表明,只要正确设置并在适当选择数据变量的情况下使用这四个模型,它们的性能就会优于最受欢迎的MLP神经网络。我们还发现,分布式和ic这两个模型的预测过于保守,无法提供足够的敏感性和特异性,但是默认的ARTMAP具有很好的特性。它不仅优于同类产品,而且优于其他所有使用相同数据的模型,甚至包括某些放射科医生的实践。据我们所知,到目前为止,尚未针对任务的目的研究ARTMAP神经网络。

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