A Convolutional Neural Network-Based Auto-Segmentation Pipeline for Breast Cancer Imaging

Author:

Leow Lucas Jian Hoong1,Azam Abu Bakr1,Tan Hong Qi2,Nei Wen Long2ORCID,Cao Qi3ORCID,Huang Lihui1ORCID,Xie Yuan1,Cai Yiyu1ORCID

Affiliation:

1. School of Mechanical and Aerospace Engineering, Nanyang Technological University, Singapore 639798, Singapore

2. National Cancer Center, Singapore 168583, Singapore

3. School of Computing Science, University of Glasgow, Glasgow G12 8RZ, UK

Abstract

Medical imaging is crucial for the detection and diagnosis of breast cancer. Artificial intelligence and computer vision have rapidly become popular in medical image analyses thanks to technological advancements. To improve the effectiveness and efficiency of medical diagnosis and treatment, significant efforts have been made in the literature on medical image processing, segmentation, volumetric analysis, and prediction. This paper is interested in the development of a prediction pipeline for breast cancer studies based on 3D computed tomography (CT) scans. Several algorithms were designed and integrated to classify the suitability of the CT slices. The selected slices from patients were then further processed in the pipeline. This was followed by data generalization and volume segmentation to reduce the computation complexity. The selected input data were fed into a 3D U-Net architecture in the pipeline for analysis and volumetric predictions of cancer tumors. Three types of U-Net models were designed and compared. The experimental results show that Model 1 of U-Net obtained the highest accuracy at 91.44% with the highest memory usage; Model 2 had the lowest memory usage with the lowest accuracy at 85.18%; and Model 3 achieved a balanced performance in accuracy and memory usage, which is a more suitable configuration for the developed pipeline.

Funder

Duke-NUS Oncology Academic Program Goh Foundation Proton Research Program

National Medical Research Council Fellowship

Publisher

MDPI AG

Reference51 articles.

1. Anyoha, R. (2023, November 10). The History of Artificial Intelligence. Available online: https://sitn.hms.harvard.edu/flash/2017/history-artificial-intelligence/.

2. Opportunities of artificial intelligence for supporting complex problem-solving: Findings from a scoping review;Joksimovic;Comput. Educ. Artif. Intell.,2023

3. Zakaryan, V. (2023, November 10). How ML Will Disrupt the Future of Clinical Radiology. Available online: https://postindustria.com/computer-vision-in-radiology-how-ml-will-disrupt-the-future-of-clinical-radiology-healthcare/.

4. Deep learning-based automatic segmentation for size and volumetric measurement of breast cancer on magnetic resonance imaging;Yue;Front. Oncol.,2022

5. Jafari, Z., and Karami, E. (2023). Breast Cancer Detection in Mammography Images: A CNN-Based Approach with Feature Selection. Information, 14.

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