Wu Y, Giger M L, Doi K, Vyborny C J, Schmidt R A, Metz C E
Kurt Rossmann Laboratories for Radiologic Image Research, Department of Radiology, University of Chicago, IL 60637.
Radiology. 1993 Apr;187(1):81-7. doi: 10.1148/radiology.187.1.8451441.
The authors investigated the potential utility of artificial neural networks as a decision-making aid to radiologists in the analysis of mammographic data. Three-layer, feed-forward neural networks with a back-propagation algorithm were trained for the interpretation of mammograms on the basis of features extracted from mammograms by experienced radiologists. A network that used 43 image features performed well in distinguishing between benign and malignant lesions, yielding a value of 0.95 for the area under the receiver operating characteristic curve for textbook cases in a test with the round-robin method. With clinical cases, the performance of a neural network in merging 14 radiologist-extracted features of lesions to distinguish between benign and malignant lesions was found to be higher than the average performance of attending and resident radiologists alone (without the aid of a neural network). The authors conclude that such networks may provide a potentially useful tool in the mammographic decision-making task of distinguishing between benign and malignant lesions.
作者们研究了人工神经网络在乳腺钼靶数据分析中作为放射科医生决策辅助工具的潜在效用。基于经验丰富的放射科医生从乳腺钼靶片中提取的特征,使用反向传播算法的三层前馈神经网络被训练用于解读乳腺钼靶片。一个使用43个图像特征的网络在区分良性和恶性病变方面表现良好,在循环法测试中,对于教科书病例,其受试者操作特征曲线下面积值为0.95。对于临床病例,发现一个神经网络在合并14个放射科医生提取的病变特征以区分良性和恶性病变时的表现高于仅由主治放射科医生和住院放射科医生(无神经网络辅助)的平均表现。作者们得出结论,此类网络可能在区分良性和恶性病变的乳腺钼靶决策任务中提供一个潜在有用的工具。