An Investigation Of The Potential Value Of Neural Network Computing In Diagnosis And Assessment Of Breast Cancer: Analysis Of Blood Plasma By 1H Nuclear Magnetic Resonance Spectroscopy

R. Maxwell, S. Howells, S. Chen, J. Griffiths
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Abstract

Introduction 'H Nuclear Magnetic Resonance (WR) spectra were obtained from plasma samples from patients with breast cancer, with benign breast disease and from healthy volunteers. Preprocessing of the data included the use of principal component (PC) analysis and resulted in reduction of the data dimensions to 6-8 PC scores. A backpropogation neural network with two hidden layers was used to learn how to convert these PC scores (used as inputs) into outputs indicative of class membership. Examination of the similarity between the PC scores for these samples was performed using cluster analysis and from the weights obtainedfrom a single layer network From these results it could be predicted that, contrary to our prior expectations, it should be relatively easy to distinguish benign breast disease from the other two clwses but that there would be considerable overlap between cancer and normal subjects. fiis was also the conclusion of an assessment of the reliability of the network when c1assifLing samples that had not been included in the learning stage. Ihe best resultsfrom this study were that 85% of samples in the normal versus benign diseace datmet could be correctly assigned after having been omitted from the learning stage. i%e other 15% were designated ar unclassified since the output scores were ambiguous. Moderately good results from the most clinically interesting pair of classes, benign disease versus cancer, were improved on by incorporating information about type of treatment and secondary diseases into additional output scores. l%is approach appears to be helpful in reducing the problems associated with heterogeneity within one or more of the classes.
神经网络计算在乳腺癌诊断和评估中的潜在价值探讨:1H核磁共振谱分析血浆
从乳腺癌患者、乳腺良性疾病患者和健康志愿者的血浆样本中获得H核磁共振(WR)谱。数据的预处理包括使用主成分(PC)分析,并导致数据维度减少到6-8个PC分数。使用具有两个隐藏层的反向传播神经网络来学习如何将这些PC分数(用作输入)转换为指示班级成员的输出。使用聚类分析对这些样本的PC分数之间的相似性进行了检查,并从单层网络获得的权重中进行了检查。从这些结果可以预测,与我们先前的预期相反,将良性乳腺疾病与其他两个类别区分开来应该相对容易,但癌症与正常受试者之间存在相当大的重叠。这也是在对未包括在学习阶段的样本进行分类时对网络可靠性评估的结论。该研究的最佳结果是,85%的正常与良性疾病数据样本在从学习阶段被省略后可以正确分配。另外15%被指定为未分类,因为输出分数是模糊的。通过将有关治疗类型和继发性疾病的信息纳入额外的输出评分,最具临床意义的两类(良性疾病与癌症)的中等良好结果得到了改善。这种方法似乎有助于减少与一个或多个类中的异构性相关的问题。
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