Verma Brijesh
School of Computing Sciences, Central Queensland University, Bruce Highway, North Rockhampton, Queensland, Australia.
Artif Intell Med. 2008 Jan;42(1):67-79. doi: 10.1016/j.artmed.2007.09.003. Epub 2007 Nov 9.
The main objective of this paper is to present a novel learning algorithm for the classification of mass abnormalities in digitized mammograms.
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.
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.
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.
本文的主要目的是提出一种用于数字化乳腺钼靶片中肿块异常分类的新型学习算法。
所提出的方法由新的网络架构和新的学习算法组成。最初的想法是基于为每个输出类别在隐藏层中引入一个额外的神经元。良性和恶性类别的额外神经元有助于提高记忆能力,同时不破坏网络的泛化能力。训练通过结合基于最小距离的相似度/随机权重和输出权重的直接计算来进行。
所提出的方法能够以100%的检索准确率记忆训练模式,并且对于从未见过的模式也能实现较高的泛化准确率。从数字化乳腺钼靶片中提取基于灰度级和乳腺影像报告和数据系统的特征,并使用所提出的架构和学习算法来训练网络。使用所提出的方法在训练集上取得的最佳结果是100%,在测试集上是94%。
所提出的方法产生了非常有前景的结果。在分类准确率、泛化和记忆能力、迭代次数以及在基准数据库上的保证训练方面,它优于现有的分类方法。