Degenhard A, Tanner C, Hayes C, Hawkes D J, Leach M O
Cancer Research UK Clinical Magnetic Resonance Research Group, The Institute of Cancer Research and the Royal Marsden NHS Trust, Sutton, Surrey SM2 5PT, UK.
Physiol Meas. 2002 Nov;23(4):727-39. doi: 10.1088/0967-3334/23/4/311.
The imaging protocol of the UK multicentre magnetic resonance imaging study for screening in women at genetic risk of breast cancer aims to assist in detecting and diagnosing malignant breast lesions. In this paper, we evaluate a three-layer, feed-forward, backpropagation neural network as an artificial radiological classifier using receiver operating characteristic (ROC) curve analysis and compare the results with those obtained using a proposed radiological scoring system for the study which currently supplements the radiologist's clinical opinion, in comparison with histological diagnosis. Based on the 76 symptomatic cases evaluated, descriptive features scored by radiologists showed considerable overlap between benign and malignant, although some features such as irregular contours and heterogeneous enhancement were more often associated with malignant pathology. In this preliminary evaluation, ROC analysis showed that the proposed scoring scheme did not perform well, indicating further refinement is required. When all 23 features were used in the neural network, its performance was poorer than that of the scoring scheme. When only ten features were used, limited to descriptors of enhancement characteristics, the neural network performed similar to the scoring scheme. This comparison shows that the neural network approach to clinical diagnosis has considerable potential and warrants further development.
英国多中心磁共振成像研究的成像方案旨在筛查有乳腺癌遗传风险的女性,以协助检测和诊断乳腺恶性病变。在本文中,我们使用接受者操作特征(ROC)曲线分析评估了一个三层前馈反向传播神经网络作为人工放射学分类器,并将结果与使用该研究中提出的放射学评分系统所获得的结果进行比较,该评分系统目前作为放射科医生临床意见的补充,与组织学诊断进行对比。基于对76例有症状病例的评估,放射科医生评分的描述性特征显示良性和恶性之间有相当大的重叠,尽管一些特征如轮廓不规则和强化不均匀更常与恶性病理相关。在这项初步评估中,ROC分析表明所提出的评分方案表现不佳,表明需要进一步完善。当神经网络使用所有23个特征时,其性能比评分方案差。当仅使用十个特征,且限于强化特征的描述符时,神经网络的表现与评分方案相似。这种比较表明,神经网络方法用于临床诊断具有相当大的潜力,值得进一步发展。