Schmidt F, Sorantin E, Szepesvàri C, Graif E, Becker M, Mayer H, Hartwagner K
Department of Radiology, Karl-Franzens-University, Graz, Austria.
Phys Med Biol. 1999 May;44(5):1231-43. doi: 10.1088/0031-9155/44/5/011.
We investigated a method for a fully automatic identification and interpretation process for clustered microcalcifications in mammograms. Mammographic films of 100 patients containing microcalcifications with known histology were digitized and preprocessed using standard techniques. Microcalcifications detected by an artificial neural network (ANN) were clustered and some cluster features served as the input of another ANN trained to differentiate between typical and atypical clusters, while others were fed into an ANN trained on typical clusters to evaluate these lesions. The measured sensitivity for the detection of grouped microcalcifications was 0.98. For the task of differentiation between typical and atypical clusters an Az value of 0.87 was computed, while for the diagnosis an Az value of 0.87 with a sensitivity of 0.97 and a specificity of 0.47 was obtained. The results show that a fully automatic computer system was developed for the identification and interpretation of clustered microcalcitications in mammograms with the ability to differentiate most benign lesions from malignant ones in an automatically selected subset of cases.
我们研究了一种用于乳腺钼靶片中簇状微钙化的全自动识别与解读流程的方法。对100例含有已知组织学结果的微钙化的患者的乳腺钼靶片进行数字化处理,并使用标准技术进行预处理。通过人工神经网络(ANN)检测到的微钙化被聚类,一些聚类特征作为另一个经训练以区分典型和非典型聚类的ANN的输入,而其他特征则被输入到一个基于典型聚类训练的ANN中以评估这些病变。检测成组微钙化的测量灵敏度为0.98。对于典型和非典型聚类的区分任务,计算出的Az值为0.87,而对于诊断,获得的Az值为0.87,灵敏度为0.97,特异性为0.47。结果表明,开发了一种全自动计算机系统,用于乳腺钼靶片中簇状微钙化的识别与解读,能够在自动选择的病例子集中区分大多数良性病变和恶性病变。