2018 Volume 54 Issue 8 Pages 659-669
In recent years, deep convolutional neural network (DCNN) has widely been applied for image recognition, and shown a remarkable performance in various natural image-related applications. However, for medical image-related application such as computer-aided diagnosis (CAD), due to the limitation of training data and the modality difference between the natural and medical images, training the DCNN for medical image recognition is still a research topic. In this paper, we propose a DCNN-based method for lesion detection in mammograms. The proposed method consists of the following two steps. Given a mammogram, lesion candidates are firstly detected from the mammogram based on their intensity characteristics. Secondly, a transfer learning-based method is applied for training an existing DCNN to classify the lesion candidates into lesions or normal tissues. The proposed method is tested on a public mammogram database. Compared with several previous studies, our proposed method achieved a higher true positive rate and a lower false positive in lesion detection.