Literature DB >> 33404910

Reviewing Machine Learning and Image Processing Based Decision-Making Systems for Breast Cancer Imaging.

Hasnae Zerouaoui1, Ali Idri2,3.   

Abstract

Breast cancer (BC) is the leading cause of death among women worldwide. It affects in general women older than 40 years old. Medical images analysis is one of the most promising research areas since it provides facilities for diagnosis and decision-making of several diseases such as BC. This paper conducts a Structured Literature Review (SLR) of the use of Machine Learning (ML) and Image Processing (IP) techniques to deal with BC imaging. A set of 530 papers published between 2000 and August 2019 were selected and analyzed according to ten criteria: year and publication channel, empirical type, research type, medical task, machine learning techniques, datasets used, validation methods, performance measures and image processing techniques which include image pre-processing, segmentation, feature extraction and feature selection. Results showed that diagnosis was the most used medical task and that Deep Learning techniques (DL) were largely used to perform classification. Furthermore, we found out that classification was the most ML objective investigated followed by prediction and clustering. Most of the selected studies used Mammograms as imaging modalities rather than Ultrasound or Magnetic Resonance Imaging with the use of public or private datasets with MIAS as the most frequently investigated public dataset. As for image processing techniques, the majority of the selected studies pre-process their input images by reducing the noise and normalizing the colors, and some of them use segmentation to extract the region of interest with the thresholding method. For feature extraction, we note that researchers extracted the relevant features using classical feature extraction techniques (e.g. Texture features, Shape features, etc.) or DL techniques (e. g. VGG16, VGG19, ResNet, etc.), and finally few papers used feature selection techniques in particular the filter methods.

Entities:  

Keywords:  Breast Cancer. Machine learning. Image processing. Structured literature review. Deep learning

Mesh:

Year:  2021        PMID: 33404910     DOI: 10.1007/s10916-020-01689-1

Source DB:  PubMed          Journal:  J Med Syst        ISSN: 0148-5598            Impact factor:   4.460


  22 in total

Review 1.  The benefits and harms of breast cancer screening: an independent review.

Authors:  M G Marmot; D G Altman; D A Cameron; J A Dewar; S G Thompson; M Wilcox
Journal:  Br J Cancer       Date:  2013-06-06       Impact factor: 7.640

2.  Comparative assessment of CNN architectures for classification of breast FNAC images.

Authors:  Amartya Ranjan Saikia; Kangkana Bora; Lipi B Mahanta; Anup Kumar Das
Journal:  Tissue Cell       Date:  2019-02-05       Impact factor: 2.466

Review 3.  A systematic map of medical data preprocessing in knowledge discovery.

Authors:  A Idri; H Benhar; J L Fernández-Alemán; I Kadi
Journal:  Comput Methods Programs Biomed       Date:  2018-05-05       Impact factor: 5.428

4.  A fully integrated computer-aided diagnosis system for digital X-ray mammograms via deep learning detection, segmentation, and classification.

Authors:  Mugahed A Al-Antari; Mohammed A Al-Masni; Mun-Taek Choi; Seung-Moo Han; Tae-Seong Kim
Journal:  Int J Med Inform       Date:  2018-06-18       Impact factor: 4.046

Review 5.  Computer-aided diagnosis of breast cancer using cytological images: A systematic review.

Authors:  Monjoy Saha; Rashmi Mukherjee; Chandan Chakraborty
Journal:  Tissue Cell       Date:  2016-07-30       Impact factor: 2.466

6.  Cochrane review on screening for breast cancer with mammography.

Authors:  O Olsen; P C Gøtzsche
Journal:  Lancet       Date:  2001-10-20       Impact factor: 79.321

7.  RAMS: Remote and automatic mammogram screening.

Authors:  Timothy Cogan; Maribeth Cogan; Lakshman Tamil
Journal:  Comput Biol Med       Date:  2019-02-05       Impact factor: 4.589

Review 8.  Reviewing ensemble classification methods in breast cancer.

Authors:  Mohamed Hosni; Ibtissam Abnane; Ali Idri; Juan M Carrillo de Gea; José Luis Fernández Alemán
Journal:  Comput Methods Programs Biomed       Date:  2019-05-20       Impact factor: 5.428

9.  Transfer Learning From Convolutional Neural Networks for Computer-Aided Diagnosis: A Comparison of Digital Breast Tomosynthesis and Full-Field Digital Mammography.

Authors:  Kayla Mendel; Hui Li; Deepa Sheth; Maryellen Giger
Journal:  Acad Radiol       Date:  2018-08-01       Impact factor: 3.173

10.  Fast ScanNet: Fast and Dense Analysis of Multi-Gigapixel Whole-Slide Images for Cancer Metastasis Detection.

Authors:  Huangjing Lin; Hao Chen; Simon Graham; Qi Dou; Nasir Rajpoot; Pheng-Ann Heng
Journal:  IEEE Trans Med Imaging       Date:  2019-01-07       Impact factor: 10.048

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  3 in total

1.  A Complex Radiomic Signature in Luminal Breast Cancer from a Weighted Statistical Framework: A Pilot Study.

Authors:  Rossana Castaldo; Nunzia Garbino; Carlo Cavaliere; Mariarosaria Incoronato; Luca Basso; Renato Cuocolo; Leonardo Pace; Marco Salvatore; Monica Franzese; Emanuele Nicolai
Journal:  Diagnostics (Basel)       Date:  2022-02-15

Review 2.  Medical image processing and COVID-19: A literature review and bibliometric analysis.

Authors:  Rabab Ali Abumalloh; Mehrbakhsh Nilashi; Muhammed Yousoof Ismail; Ashwaq Alhargan; Abdullah Alghamdi; Ahmed Omar Alzahrani; Linah Saraireh; Reem Osman; Shahla Asadi
Journal:  J Infect Public Health       Date:  2021-11-17       Impact factor: 3.718

3.  A Deep Learning Computer-Aided Diagnosis Approach for Breast Cancer.

Authors:  Ahmed M Zaalouk; Gamal A Ebrahim; Hoda K Mohamed; Hoda Mamdouh Hassan; Mohamed M A Zaalouk
Journal:  Bioengineering (Basel)       Date:  2022-08-15
  3 in total

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