Review of medical image recognition technologies to detect melanomas using neural networks

被引:28
|
作者
Efimenko, Mila [1 ]
Ignatev, Alexander [2 ]
Koshechkin, Konstantin [1 ,3 ]
机构
[1] Sechenov Univ, Digital Hlth Inst, Fed State Autonomous Educ Inst Higher Educ, IM Sechenov First Moscow State Med Univ,Minist Hl, Moscow, Russia
[2] Moscow City Hlth Dept, Moscow Sci & Pract Ctr Dermatol Venereol & Cosmet, Moscow, Russia
[3] Minist Hlth Russian Federat, Fed State Budgetary Inst, Informat Technol Dept, Sci Ctr Expert Evaluat Med Prod, Moscow, Russia
关键词
Melanoma classification; Skin cancer; Deep learning neural network; Convolutional neural network; Fuzzy clustering algorithm; MALIGNANT-MELANOMA; CLASSIFICATION; RISK; DERMATOLOGISTS;
D O I
10.1186/s12859-020-03615-1
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
摘要
BackgroundMelanoma is one of the most aggressive types of cancer that has become a world-class problem. According to the World Health Organization estimates, 132,000 cases of the disease and 66,000 deaths from malignant melanoma and other forms of skin cancer are reported annually worldwide (https://apps.who.int/gho/data/?theme=main) and those numbers continue to grow. In our opinion, due to the increasing incidence of the disease, it is necessary to find new, easy to use and sensitive methods for the early diagnosis of melanoma in a large number of people around the world. Over the last decade, neural networks show highly sensitive, specific, and accurate results.ObjectiveThis study presents a review of PubMed papers including requests << melanoma neural network >> and << melanoma neural network dermatoscopy >>. We review recent researches and discuss their opportunities acceptable in clinical practice.MethodsWe searched the PubMed database for systematic reviews and original research papers on the requests << melanoma neural network >> and << melanoma neural network dermatoscopy >> published in English. Only papers that reported results, progress and outcomes are included in this review.ResultsWe found 11 papers that match our requests that observed convolutional and deep-learning neural networks combined with fuzzy clustering or World Cup Optimization algorithms in analyzing dermatoscopic images. All of them require an ABCD (asymmetry, border, color, and differential structures) algorithm and its derivates (in combination with ABCD algorithm or separately). Also, they require a large dataset of dermatoscopic images and optimized estimation parameters to provide high specificity, accuracy and sensitivity.ConclusionsAccording to the analyzed papers, neural networks show higher specificity, accuracy and sensitivity than dermatologists. Neural networks are able to evaluate features that might be unavailable to the naked human eye. Despite that, we need more datasets to confirm those statements. Nowadays machine learning becomes a helpful tool in early diagnosing skin diseases, especially melanoma.
引用
收藏
页数:7
相关论文
共 50 条
  • [41] Transparency of deep neural networks for medical image analysis: A review of interpretability methods
    Salahuddin, Zohaib
    Woodruff, Henry C.
    Chatterjee, Avishek
    Lambin, Philippe
    COMPUTERS IN BIOLOGY AND MEDICINE, 2022, 140
  • [42] Food Image Recognition with Convolutional Neural Networks
    Zhang, Weishan
    Zhao, Dehai
    Gong, Wenjuan
    Li, Zhongwei
    Lu, Qinghua
    Yang, Su
    IEEE 12TH INT CONF UBIQUITOUS INTELLIGENCE & COMP/IEEE 12TH INT CONF ADV & TRUSTED COMP/IEEE 15TH INT CONF SCALABLE COMP & COMMUN/IEEE INT CONF CLOUD & BIG DATA COMP/IEEE INT CONF INTERNET PEOPLE AND ASSOCIATED SYMPOSIA/WORKSHOPS, 2015, : 690 - 693
  • [43] CONSTRAINT SATISFACTION NEURAL NETWORKS FOR IMAGE RECOGNITION
    TSAO, ECK
    LIN, WC
    CHEN, CT
    PATTERN RECOGNITION, 1993, 26 (04) : 553 - 567
  • [44] APPLICATION OF NEURAL NETWORKS IN IMAGE DEFINITION RECOGNITION
    Chen Guojin
    Zhu Miaofen
    Yu Honghao
    Li Yan
    ICSPC: 2007 IEEE INTERNATIONAL CONFERENCE ON SIGNAL PROCESSING AND COMMUNICATIONS, VOLS 1-3, PROCEEDINGS, 2007, : 1207 - 1210
  • [45] Optical Neural Networks for Holographic Image Recognition
    Feng Y.
    Niu J.
    Zhang Y.
    Li Y.
    Chen H.
    Qian H.
    Progress in Electromagnetics Research, 2023, 176 : 25 - 33
  • [46] Hybrid neural networks for gray image recognition
    Ye, XJ
    Li, ZN
    ELECTRONIC IMAGING AND MULTIMEDIA SYSTEMS II, 1998, 3561 : 7 - 13
  • [47] Robust Convolutional Neural Networks for Image Recognition
    Albeahdili, Hayder M.
    Alwzwazy, Haider A.
    Islam, Naz E.
    INTERNATIONAL JOURNAL OF ADVANCED COMPUTER SCIENCE AND APPLICATIONS, 2015, 6 (11) : 105 - 111
  • [48] Optical Neural Networks for Holographic Image Recognition
    Feng, Yimin
    Niu, Junru
    Zhang, Yiyun
    Li, Yixuan
    Chen, Hongsheng
    Qian, Haolian
    PROGRESS IN ELECTROMAGNETICS RESEARCH-PIER, 2023, 176 : 25 - 33
  • [49] An Analysis of Convolutional Neural Networks for Image Recognition
    He, Jun
    Liu, Yue
    Li, Shuai
    Shen, Jin-ming
    2017 2ND INTERNATIONAL CONFERENCE ON COMPUTATIONAL MODELING, SIMULATION AND APPLIED MATHEMATICS (CMSAM), 2017, : 524 - 528
  • [50] Structured Binary Neural Networks for Image Recognition
    Bohan Zhuang
    Chunhua Shen
    Mingkui Tan
    Peng Chen
    Lingqiao Liu
    Ian Reid
    International Journal of Computer Vision, 2022, 130 : 2081 - 2102