Advances in the Use of Deep Learning for the Analysis of Magnetic Resonance Image in Neuro-Oncology

被引:3
|
作者
Pitarch, Carla [1 ,2 ,3 ]
Ungan, Gulnur [4 ,5 ,6 ]
Julia-Sape, Margarida [4 ,5 ,6 ]
Vellido, Alfredo [1 ,2 ,6 ]
机构
[1] Univ Politecn Cataluna, Dept Comp Sci, UPC BarcelonaTech, Barcelona 08034, Spain
[2] Intelligent Data Sci & Artificial Intelligence IDE, Barcelona 08034, Spain
[3] Eurecat, Digital Hlth Unit, Technol Ctr Catalonia, Barcelona 08005, Spain
[4] Univ Autonoma Barcelona UAB, Dept Bioquim & Biol Mol, Barcelona 08193, Spain
[5] Univ Autonoma Barcelona UAB, Inst Biotecnol & Biomed IBB, Barcelona 08193, Spain
[6] Ctr Invest Biomed Red CIBER, Madrid 28029, Spain
基金
欧盟地平线“2020”;
关键词
machine learning; neuro-oncology; radiology; deep learning; data analysis pipeline; ultra-low field magnetic resonance imaging; BRAIN-TUMOR CLASSIFICATION; CONVOLUTIONAL NEURAL-NETWORK; ARTIFICIAL-INTELLIGENCE; GLIOMA; SEGMENTATION; ALGORITHMS; CHALLENGES; FEATURES; CRITERIA;
D O I
10.3390/cancers16020300
中图分类号
R73 [肿瘤学];
学科分类号
100214 ;
摘要
Simple Summary Within the rapidly evolving landscape of Machine Learning in the medical field, this paper focuses on the forefront advancements in neuro-oncological radiology. More specifically, it aims to provide the reader with an in-depth exploration of the latest advancements in employing Deep Learning methodologies for the classification of brain tumor radiological images. This review meticulously scrutinizes papers published from 2018 to 2023, unveiling ongoing topics of research while underscoring the main remaining challenges and potential avenues for future research identified by those studies. Beyond the review itself, the paper also underscores the importance of placing the image data modelling provided by Deep Learning techniques within the framework of analytical pipeline research. This means that data quality control and pre-processing should be correctly coupled with modelling itself, in a way that emphasizes the importance of responsible data utilization, as well as the critical need for transparency in data disclosure to ensure trustworthiness and reproducibility of findings.Abstract Machine Learning is entering a phase of maturity, but its medical applications still lag behind in terms of practical use. The field of oncological radiology (and neuro-oncology in particular) is at the forefront of these developments, now boosted by the success of Deep-Learning methods for the analysis of medical images. This paper reviews in detail some of the most recent advances in the use of Deep Learning in this field, from the broader topic of the development of Machine-Learning-based analytical pipelines to specific instantiations of the use of Deep Learning in neuro-oncology; the latter including its use in the groundbreaking field of ultra-low field magnetic resonance imaging.
引用
收藏
页数:54
相关论文
共 50 条
  • [31] Can Deep Learning Replace Gadolinium in Neuro-Oncology? A Reader Study
    Ammari, Samy
    Bone, Alexandre
    Balleyguier, Corinne
    Moulton, Eric
    Chouzenoux, Emilie
    Volk, Andreas
    Menu, Yves
    Bidault, Francois
    Nicolas, Francois
    Robert, Philippe
    Rohe, Marc-Michel
    Lassau, Nathalie
    INVESTIGATIVE RADIOLOGY, 2022, 57 (02) : 99 - 107
  • [32] Corticosteroid use in neuro-oncology: an update
    Roth, Patrick
    Happold, Caroline
    Weller, Michael
    NEURO-ONCOLOGY PRACTICE, 2015, 2 (01) : 6 - 12
  • [33] AUTOMATIC BRAIN TUMOR VOLUMETRIC ANALYSIS IN MAGNETIC RESONANCE IMAGING GENERALIZABLE TO PEDIATRIC NEURO-ONCOLOGY
    Jiang, Zhifan
    Capellan-Martin, Daniel
    Parida, Abhijeet
    Liu, Xinyang
    Nisar, Hareem
    Tapp, Austin
    Ledesma-Carbayo, Maria J.
    Anwar, Syed Muhammad
    Linguraru, Marius George
    NEURO-ONCOLOGY, 2024, 26
  • [34] SNO 25th anniversary history series: Spotlight on Neuro-Oncology Practice and Neuro-Oncology Advances
    Venere, Monica
    Zadeh, Gelareh
    Puduvalli, Vinay
    Haynes, Chas
    NEURO-ONCOLOGY, 2020, 22 (06) : 739 - 740
  • [35] Utilization of volumetric magnetic resonance imaging for baseline and surveillance imaging in Neuro-oncology
    Mills, Samantha J.
    Radon, Mark R.
    Baird, Richard D.
    Hanemann, C. Oliver
    Lewis, Joanne
    Pollock, Jonathan
    Sanghera, Paul
    Santarius, Thomas
    Whitfield, Gillian
    Zakaria, Rasheed
    Michael, Jenkinson D.
    BRITISH JOURNAL OF RADIOLOGY, 2019, 92 (1098):
  • [36] Highlights of the inaugural ten - the launch of Neuro-Oncology Advances
    Nassiri, Farshad
    Aldape, Kenneth
    Alhuwalia, Manmeet
    Brastianos, Priscilla
    Ducray, Francois
    Galldiks, Norbert
    Kim, Albert
    Lamszus, Katrin
    Mitchell, Duane
    Nabors, L. Burt
    Nam, Do-Hyun
    Natsume, Atsushi
    Ng, Ho-Keung
    Niclou, Simone
    Sahm, Felix
    Short, Susan
    Walsh, Kyle
    Wick, Wolfgang
    Zadeh, Gelareh
    NEURO-ONCOLOGY ADVANCES, 2019, 1 (01)
  • [37] Optimizing Neuro-Oncology Imaging: A Review of Deep Learning Approaches for Glioma Imaging
    Shaver, Madeleine M.
    Kohanteb, Paul A.
    Chiou, Catherine
    Bardis, Michelle D.
    Chantaduly, Chanon
    Bota, Daniela
    Filippi, Christopher G.
    Weinberg, Brent
    Grinband, Jack
    Chow, Daniel S.
    Chang, Peter D.
    CANCERS, 2019, 11 (06)
  • [38] An Update on Machine Learning in Neuro-Oncology Diagnostics
    Booth, Thomas C.
    BRAINLESION: GLIOMA, MULTIPLE SCLEROSIS, STROKE AND TRAUMATIC BRAIN INJURIES, BRAINLES 2018, PT I, 2019, 11383 : 37 - 44
  • [39] Perioperative corticosteroid use in paediatric neuro-oncology
    Carruthers, Vickyanne
    Hill, Rebecca M.
    Coulter, Ian C.
    Cowie, Christopher J. A.
    Halliday, Gail
    Bailey, Simon
    CHILDS NERVOUS SYSTEM, 2021, 37 (12) : 3669 - 3671
  • [40] Use of antisense vectors and oligodeoxynucleotides in neuro-oncology
    Engelhard, HH
    Egli, M
    Rozental, JM
    PEDIATRIC NEUROSURGERY, 1998, 28 (06) : 279 - 285