Computer-Aided Detection (CADe) and Segmentation Methods for Breast Cancer Using Magnetic Resonance Imaging (MRI)

被引:0
作者
Jannatdoust, Payam [1 ]
Valizadeh, Parya [1 ]
Saeedi, Nikoo [2 ]
Valizadeh, Gelareh [3 ]
Salari, Hanieh Mobarak [3 ]
Rad, Hamidreza Saligheh [3 ,4 ]
Gity, Masoumeh [5 ]
机构
[1] Univ Tehran Med Sci, Sch Med, Tehran, Iran
[2] Islamic Azad Univ, Student Res Comm, Mashhad Branch, Mashhad, Iran
[3] Univ Tehran Med Sci, Quantitat MR Imaging & Spect Grp QMISG, Tehran, Iran
[4] Univ Tehran Med Sci, Dept Med Phys & Biomed Engn, Tehran, Iran
[5] Univ Tehran Med Sci, Adv Diagnost & Intervent Radiol Res Ctr, Tehran, Iran
关键词
breast cancer; artificial intelligence; lesion segmentation; magnetic resonance imaging (MRI); computer-aided detection; PATIENTS DEROGATE PHYSICIANS; CLUSTERING-ALGORITHM; DIAGNOSTIC-ACCURACY; MASS SEGMENTATION; LESION DETECTION; AVERAGE RISK; MAMMOGRAPHY; WOMEN; DENSITY; CLASSIFICATION;
D O I
10.1002/jmri.29687
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
Breast cancer continues to be a major health concern, and early detection is vital for enhancing survival rates. Magnetic resonance imaging (MRI) is a key tool due to its substantial sensitivity for invasive breast cancers. Computer-aided detection (CADe) systems enhance the effectiveness of MRI by identifying potential lesions, aiding radiologists in focusing on areas of interest, extracting quantitative features, and integrating with computer-aided diagnosis (CADx) pipelines. This review aims to provide a comprehensive overview of the current state of CADe systems in breast MRI, focusing on the technical details of pipelines and segmentation models including classical intensity-based methods, supervised and unsupervised machine learning (ML) approaches, and the latest deep learning (DL) architectures. It highlights recent advancements from traditional algorithms to sophisticated DL models such as U-Nets, emphasizing CADe implementation of multi-parametric MRI acquisitions. Despite these advancements, CADe systems face challenges like variable false-positive and negative rates, complexity in interpreting extensive imaging data, variability in system performance, and lack of large-scale studies and multicentric models, limiting the generalizability and suitability for clinical implementation. Technical issues, including image artefacts and the need for reproducible and explainable detection algorithms, remain significant hurdles. Future directions emphasize developing more robust and generalizable algorithms, integrating explainable AI to improve transparency and trust among clinicians, developing multi-purpose AI systems, and incorporating large language models to enhance diagnostic reporting and patient management. Additionally, efforts to standardize and streamline MRI protocols aim to increase accessibility and reduce costs, optimizing the use of CADe systems in clinical practice.Level of EvidenceNATechnical EfficacyStage 2
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页数:15
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共 132 条
  • [1] Kinetic Analysis of Benign and Malignant Breast Lesions With Ultrafast Dynamic Contrast-Enhanced MRI: Comparison With Standard Kinetic Assessment
    Abe, Hiroyuki
    Mori, Naoko
    Tsuchiya, Keiko
    Schacht, David V.
    Pineda, Federico D.
    Jiang, Yulei
    Karczmar, Gregory S.
    [J]. AMERICAN JOURNAL OF ROENTGENOLOGY, 2016, 207 (05) : 1159 - 1166
  • [2] Deep learning applications to breast cancer detection by magnetic resonance imaging: a literature review
    Adam, Richard
    Dell'Aquila, Kevin
    Hodges, Laura
    Maldjian, Takouhie
    Duong, Tim Q.
    [J]. BREAST CANCER RESEARCH, 2023, 25 (01)
  • [3] AlFaris AQ., 2014, Soft computing in industrial applications, P49
  • [4] Lung Nodule Detection via Deep Reinforcement Learning
    Ali, Issa
    Hart, Gregory R.
    Gunabushanam, Gowthaman
    Liang, Ying
    Muhammad, Wazir
    Nartowt, Bradley
    Kane, Michael
    Ma, Xiaomei
    Deng, Jun
    [J]. FRONTIERS IN ONCOLOGY, 2018, 8
  • [5] False-positive incidental lesions detected on contrast-enhanced breast MRI: clinical and imaging features
    Alikhassi, Afsaneh
    Li, Xuan
    Au, Frederick
    Kulkarni, Supriya
    Ghai, Sandeep
    Allison, Grant
    Freitas, Vivianne
    [J]. BREAST CANCER RESEARCH AND TREATMENT, 2023, 198 (02) : 321 - 334
  • [6] GLCM and CNN Deep Learning Model for Improved MRI Breast Tumors Detection
    Alsalihi, Aya A.
    Aljobouri, Hadeel K.
    ALTameemi, Enam Azez Khalel
    [J]. INTERNATIONAL JOURNAL OF ONLINE AND BIOMEDICAL ENGINEERING, 2022, 18 (12) : 123 - 137
  • [7] Review of deep learning: concepts, CNN architectures, challenges, applications, future directions
    Alzubaidi, Laith
    Zhang, Jinglan
    Humaidi, Amjad J.
    Al-Dujaili, Ayad
    Duan, Ye
    Al-Shamma, Omran
    Santamaria, J.
    Fadhel, Mohammed A.
    Al-Amidie, Muthana
    Farhan, Laith
    [J]. JOURNAL OF BIG DATA, 2021, 8 (01)
  • [8] [Anonymous], 2006, Technol Eval Cent Assess Program Exec Summ, V21, P1
  • [9] Can breast MRI computer-aided detection (CAD) improve radiologist accuracy for lesions detected at MRI screening and recommended for biopsy in a high-risk population?
    Arazi-Kleinman, T.
    Causer, P. A.
    Jong, R. A.
    Hill, K.
    Warner, E.
    [J]. CLINICAL RADIOLOGY, 2009, 64 (12) : 1166 - 1174
  • [10] Breast MRI lesion classification: Improved performance of human readers with a backpropagation neural network computer-aided diagnosis (CAD) system
    Arbash Meinel, Lina
    Stolpen, Alan H.
    Berbaum, Kevin S.
    Fajardo, Laurie L.
    Reinhardt, Joseph M.
    [J]. JOURNAL OF MAGNETIC RESONANCE IMAGING, 2007, 25 (01) : 89 - 95