Breast Cancer Detection/Diagnosis with Upstream Data Fusion and Machine Learning

被引:1
|
作者
Porter, David W. [1 ]
Walton, William C. [1 ,4 ]
Harvey, Susan C. [5 ]
Mullen, Lisa A. [2 ]
Tsui, Benjamin M. W. [3 ]
Kim, Seung-Jun [4 ]
Peyton, Keith S. [1 ]
机构
[1] Johns Hopkins Univ, Appl Phys Lab, Laurel, MD 20723 USA
[2] Johns Hopkins Med, Breast Imaging Div, Baltimore, MD USA
[3] Johns Hopkins Med, Dept Radiol, Baltimore, MD USA
[4] Univ Maryland, Dept Comp Sci Electr Eng, Baltimore, MD 21201 USA
[5] Hologic Inc, Danbury, CT USA
来源
15TH INTERNATIONAL WORKSHOP ON BREAST IMAGING (IWBI2020) | 2020年 / 11513卷
关键词
D O I
10.1117/12.2564159
中图分类号
R71 [妇产科学];
学科分类号
100211 ;
摘要
Machine learning (ML) has made great advancements in imaging for breast cancer detection, including reducing radiologists read times, yet its performance is still reported to be at best similar to that of expert radiologists. This leaves a performance gap between what is desired by radiologists and what can actually be achieved in terms of early detection, reduction of excessive false positives and minimization of unnecessary biopsies. We have seen a similar situation with military intelligence that is expressed by operators as "drowning in data and starving for information". We invented Upstream Data Fusion (UDF) to help fill the gap. ML is used to produce candidate detections for individual sensing modalities with high detection rates and high false positive rates. Data fusion is used to combine modalities and dramatically diminish false positives. Upstream data, that is closer to raw data, is hard for operators to visualize. Yet it is used for fusion to recover information that would otherwise be lost by the processing to make it visually acceptable to humans. Our research with breast cancer detection involving the fusion of Digital Breast Tomosynthesis (DBT) with Magnetic Resonance Imaging (MRI) and also the fusion of DBT with ultrasound (US) data has yielded preliminary results which lead us to conclude that UDF can help to both fill the performance gap and reduce radiologist read time. Our findings suggest that UDF, combined with ML techniques, can result in paradigm changes in the achievable accuracy and efficiency of early breast cancer detection.
引用
收藏
页数:8
相关论文
共 50 条
  • [11] Machine Learning Techniques for Breast Cancer Detection
    Hall, Karl
    Chang, Victor
    Mitchell, Paul
    PROCEEDINGS OF THE 7TH INTERNATIONAL CONFERENCE ON COMPLEXITY, FUTURE INFORMATION SYSTEMS AND RISK (COMPLEXIS), 2022, : 116 - 122
  • [12] Breast Cancer Detection with Topological Machine Learning
    Yadav, Ankur
    Yadav, Nisha
    Coskunuzer, Baris
    2023 10TH INTERNATIONAL CONFERENCE ON BIOMEDICAL AND BIOINFORMATICS ENGINEERING, ICBBE 2023, 2023, : 217 - 222
  • [13] Comparison of Machine Learning Classifiers for Breast Cancer Diagnosis
    Arshed, Muhammad Asad
    Qureshi, Wajeeha
    Rumaan, Muhammad
    Ubaid, Muhammad Talha
    Qudoos, Abdul
    Khan, Muhammad Usman Ghani
    4TH INTERNATIONAL CONFERENCE ON INNOVATIVE COMPUTING (IC)2, 2021, : 244 - 249
  • [14] Diagnosis methods of breast cancer based on machine learning
    Liu, Jinwan
    Guo, Shuzhen
    Fei, Teng
    BASIC & CLINICAL PHARMACOLOGY & TOXICOLOGY, 2019, 125 : 3 - 3
  • [15] A novel machine learning approach for breast cancer diagnosis
    Bacha, Sawssen
    Taouali, Okba
    MEASUREMENT, 2022, 187
  • [16] Machine learning and new insights for breast cancer diagnosis
    Guo, Ya
    Zhang, Heng
    Yuan, Leilei
    Chen, Weidong
    Zhao, Haibo
    Yu, Qing-Qing
    Shi, Wenjie
    JOURNAL OF INTERNATIONAL MEDICAL RESEARCH, 2024, 52 (04)
  • [17] Diagnosis for photoacoustic breast cancer images with machine learning
    Zhang, Jiayao
    Chen, Bin
    Zhou, Meng
    Lan, Hengrong
    Gao, Fei
    OPTICS IN HEALTH CARE AND BIOMEDICAL OPTICS VIII, 2018, 10820
  • [18] Machine Learning and Metabolomics: Diagnosis of Malignant Breast Cancer
    Winnicki, Andrew
    Qin, Yujia
    Jijiwa, Mayumi
    Nasu, Masaki
    Fu, Yuanyuan
    Deng, Youping
    FASEB JOURNAL, 2021, 35
  • [19] Machine Learning Approaches for Breast Cancer Diagnosis and Prognosis
    Sharma, Ayush
    Kulshrestha, Sudhanshu
    Daniel, Sibi
    2017 INTERNATIONAL CONFERENCE ON SOFT COMPUTING AND ITS ENGINEERING APPLICATIONS (ICSOFTCOMP), 2017,
  • [20] Comparison of Machine Learning Methods for Breast Cancer Diagnosis
    Bayrak, Ebru Aydindag
    Kirci, Pinar
    Ensari, Tolga
    2019 SCIENTIFIC MEETING ON ELECTRICAL-ELECTRONICS & BIOMEDICAL ENGINEERING AND COMPUTER SCIENCE (EBBT), 2019,