Tumor detection in automated breast ultrasound using 3-D CNN and prioritized candidate aggregation
Journal
IEEE Transactions on Medical Imaging
Journal Volume
38
Journal Issue
1
Pages
240-249
Date Issued
2019
Author(s)
Abstract
Automated whole breast ultrasound (ABUS) has been widely used as a screening modality for examination of breast abnormalities. Reviewing hundreds of slices produced by ABUS, however, is time consuming. Therefore, in this paper, a fast and effective computer-aided detection system based on 3-D convolutional neural networks (CNNs) and prioritized candidate aggregation is proposed to accelerate this reviewing. First, an efficient sliding window method is used to extract volumes of interest (VOIs). Then, each VOI is estimated the tumor probability with a 3-D CNN, and VOIs with higher estimated probability are selected as tumor candidates. Since the candidates may overlap each other, a novel scheme is designed to aggregate the overlapped candidates. During the aggregation, candidates are prioritized based on estimated tumor probability to alleviate over-aggregation issue. The relationship between the sizes of VOI and target tumor is optimally exploited to effectively perform each stage of our detection algorithm. On evaluation with a test set of 171 tumors, our method achieved sensitivities of 95% (162/171), 90% (154/171), 85% (145/171), and 80% (137/171) with 14.03, 6.92, 4.91, and 3.62 false positives per patient (with six passes), respectively. In summary, our method is more general and much faster than preliminary works and demonstrates promising results. ? 1982-2012 IEEE.
SDGs
Other Subjects
Automation; Computer networks; Convolution; Diagnosis; Diseases; Edge detection; Feature extraction; Neural networks; Probability; Tumors; Ultrasonic imaging; Breast Cancer; Breast ultrasound; Computer aided detection; Convolutional neural network; Image edge detection; Lesions; Medical imaging; Article; automated whole breast ultrasound; cancer diagnosis; convolutional neural network; echomammography; false positive result; human; major clinical study; nerve cell network; algorithm; breast; breast tumor; computer assisted diagnosis; diagnostic imaging; echomammography; female; procedures; three dimensional imaging; Algorithms; Breast; Breast Neoplasms; Female; Humans; Image Interpretation, Computer-Assisted; Imaging, Three-Dimensional; Neural Networks, Computer; Ultrasonography, Mammary
Publisher
Institute of Electrical and Electronics Engineers Inc.
Type
journal article