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Novel network architecture and learning algorithm for the classification of mass abnormalities in digitized mammograms

机译:用于数字化乳房X线照片中质量异常分类的新型网络架构和学习算法

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摘要

Objective: The main objective of this paper is to present a novel learning algorithm for the classification of mass abnormalities in digitized mammograms. Methods and material: The proposed approach consists of new network architecture and a new learning algorithm. The original idea is based on the introduction of an additional neuron in the hidden layer for each output class. The additional neurons for benign and malignant classes help in improving memorization ability without destroying the generalization ability of the network. The training is conducted by combining minimal distance-based similarity/random weights and direct calculation of output weights. Results: The proposed approach can memorize training patterns with 100% retrieval accuracy as well as achieve high generalization accuracy for patterns which it has never seen before. The grey-level and breast imaging reporting and data system-based features from digitized mammograms are extracted and used to train the network with the proposed architecture and learning algorithm. The best results achieved by using the proposed approach are 100% on training set and 94% on test set. Conclusion: The proposed approach produced very promising results. It has outperformed existing classification approaches in terms of classification accuracy, generalization and memorization abilities, number of iterations, and guaranteed training on a benchmark database.
机译:目的:本文的主要目的是提出一种新的学习算法,用于对数字化乳腺X线照片中的质量异常进行分类。方法和材料:所提出的方法包括新的网络体系结构和新的学习算法。最初的想法是基于在每个输出类别的隐藏层中引入额外的神经元。用于良性和恶性类的附加神经元有助于提高记忆能力,而不会破坏网络的泛化能力。通过结合基于距离的最小相似度/随机权重和直接计算输出权重来进行训练。结果:所提出的方法可以记住具有100%检索精度的训练模式,并且可以实现以前从未见过的模式的高泛化精度。从数字化的乳房X线照片中提取灰度和乳房成像报告以及基于数据系统的功能,并利用提出的架构和学习算法对网络进行训练。使用建议的方法获得的最佳结果是训练集为100%,测试集为94%。结论:提出的方法产生了非常有希望的结果。在分类准确性,归纳和记忆能力,迭代次数以及在基准数据库上有保证的训练方面,它的表现优于现有分类方法。

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