Deep Learning Approaches Applied to Image Classification of Renal Tumors: A Systematic Review

被引:0
|
作者
Sandra Amador
Felix Beuschlein
Vedant Chauhan
Judith Favier
David Gil
Phillip Greenwood
R. R. de Krijger
Matthias Kroiss
Samanta Ortuño-Miquel
Attila Patocs
Anthony Stell
Axel Walch
机构
[1] University of Alicante,Department of Computer Science Technology and Computation
[2] Ludwig-Maximilians-Universität München,Medizinische Klinik and Poliklinik IV
[3] UniversitätsSpital Zürich (USZ) und Universität Zürich (UZH),Endokrinologie, Diabetologie und Klinische Ernährung
[4] University of Melbourne,School of Computing and Information Systems
[5] Université Paris cité,University Hospital Munich
[6] PARCC,undefined
[7] INSERM,undefined
[8] Equipe Labellisée par la Ligue contre le Cancer,undefined
[9] Dept. of Pathology,undefined
[10] University Medical Center Utrecht,undefined
[11] Utrecht,undefined
[12] The Netherlands and Princess Máxima Center for pediatric oncology,undefined
[13] Ludwig-Maximilians-Universität München,undefined
[14] Health and Biomedical Research Institute of Alicante,undefined
[15] ELKH Hereditary Cancer Research Group,undefined
[16] Department of Laboratory Medicine,undefined
[17] Semmelweis University and Department of Molecular Genetics,undefined
[18] National Institute of Oncology,undefined
[19] Research Unit Analytical Pathology,undefined
[20] Helmholtz Zentrum München,undefined
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摘要
Renal cancer is one of the ten most common cancers in the population that affects 65,000 new patients a year. Nowadays, to predict pathologies or classify tumors, deep learning (DL) methods are effective in addition to extracting high-performance features and dealing with segmentation tasks. This review has focused on the different studies related to the application of DL techniques for the detection or segmentation of renal tumors in patients. From the bibliographic search carried out, a total of 33 records were identified in Scopus, PubMed and Web of Science. The results derived from the systematic review give a detailed description of the research objectives, the types of images used for analysis, the data sets used, whether the database used is public or private, and the number of patients involved in the studies. The first paper where DL is applied compared to other types of tumors was in 2019 which is relatively recent. Public collection and sharing of data sets are of utmost importance to increase research in this field as many studies use private databases. We can conclude that future research will identify many benefits, such as unnecessary incisions for patients and more accurate diagnoses. As research in this field grows, the amount of open data is expected to increase.
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页码:615 / 622
页数:7
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