학술논문

A Deep Learning-based Computer-aided Diagnosis System for Mammographic Lesion Detection / 乳がん病変検出のための深層学習を用いた計算機支援画像診断システム
Document Type
Journal Article
Source
計測自動制御学会論文集 / Transactions of the Society of Instrument and Control Engineers. 2018, 54(8):659
Subject
computer-aided diagnosis (CAD)
deep convolutional neural network (DCNN)
mammogram
transfer learning
Language
Japanese
ISSN
0453-4654
1883-8189
Abstract
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.

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