Atypical architectural distortion detection in digital breast tomosynthesis: a computer-aided detection model with adaptive receptive field

Author:

Li Yue,He Zilong,Pan Jiawei,Zeng Weixiong,Liu Jialing,Zeng Zhaodong,Xu Weimin,Xu Zeyuan,Wang Sina,Wen Chanjuan,Zeng Hui,Wu Jiefang,Ma XiangyuanORCID,Chen Weiguo,Lu Yao

Abstract

Abstract Objective. In digital breast tomosynthesis (DBT), architectural distortion (AD) is a breast lesion that is difficult to detect. Compared with typical ADs, which have radial patterns, identifying a typical ADs is more difficult. Most existing computer-aided detection (CADe) models focus on the detection of typical ADs. This study focuses on atypical ADs and develops a deep learning-based CADe model with an adaptive receptive field in DBT. Approach. Our proposed model uses a Gabor filter and convergence measure to depict the distribution of fibroglandular tissues in DBT slices. Subsequently, two-dimensional (2D) detection is implemented using a deformable-convolution-based deep learning framework, in which an adaptive receptive field is introduced to extract global features in slices. Finally, 2D candidates are aggregated to form the three-dimensional AD detection results. The model is trained on 99 positive cases with ADs and evaluated on 120 AD-positive cases and 100 AD-negative cases. Main results. A convergence-measure-based model and deep-learning model without an adaptive receptive field are reproduced as controls. Their mean true positive fractions (MTPF) ranging from 0.05 to 4 false positives per volume are 0.3846 ± 0.0352 and 0.6501 ± 0.0380, respectively. Our proposed model achieves an MTPF of 0.7148 ± 0.0322, which is a significant improvement (p < 0.05) compared with the other two methods. In particular, our model detects more atypical ADs, primarily contributing to the performance improvement. Significance. The adaptive receptive field helps the model improve the atypical AD detection performance. It can help radiologists identify more ADs in breast cancer screening.

Funder

Guangdong Province Key Laboratory of Computational Science at the Sun Yat-sen University

Construction Project of Shanghai Key Laboratory of Molecular Imaging

National Natural Science Foundation of China

Natural Science Foundation of Guangdong Province

Clinical Research Program of Nanfang Hospital, Southern Medical University

Clinical Research Startup Program of Southern Medical University by High-level University Construction Funding of Guangdong Provincial Department of Education

STU Scientific Research Foundation for Talents

Science and Technology Program of Guangzhou

National Key R&D Programmes of China

President’s fund of Nanfang Hospital, Southern Medical University

Department of Science and Technology of Jilin Province

Publisher

IOP Publishing

Subject

Radiology, Nuclear Medicine and imaging,Radiological and Ultrasound Technology

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