Literature DB >> 32249351

Radiomics in gliomas: clinical implications of computational modeling and fractal-based analysis.

Kevin Jang1,2, Carlo Russo3,4, Antonio Di Ieva5,6.   

Abstract

Radiomics is an emerging field that involves extraction and quantification of features from medical images. These data can be mined through computational analysis and models to identify predictive image biomarkers that characterize intra-tumoral dynamics throughout the course of treatment. This is particularly difficult in gliomas, where heterogeneity has been well established at a molecular level as well as visually in conventional imaging. Thus, acquiring clinically useful features remains difficult due to temporal variations in tumor dynamics. Identifying surrogate biomarkers through radiomics may provide a non-invasive means of characterizing biologic activities of gliomas. We present an extensive literature review of radiomics-based analysis, with a particular focus on computational modeling, machine learning, and fractal-based analysis in improving differential diagnosis and predicting clinical outcomes. Novel strategies in extracting quantitative features, segmentation methods, and their clinical applications are producing promising results. Moreover, we provide a detailed summary of the morphometric parameters that have so far been proposed as a means of quantifying imaging characteristics of gliomas. Newly emerging radiomic techniques via machine learning and fractal-based analyses holds considerable potential for improving diagnostic and prognostic accuracy of gliomas. Key points• Radiomic features can be mined through computational analysis to produce quantitative imaging biomarkers that characterize intra-tumoral dynamics throughout the course of treatment.• Surrogate image biomarkers identified through radiomics could enable a non-invasive means of characterizing biologic activities of gliomas.• With novel analytic algorithms, quantification of morphological or sub-regional tumor features to predict survival outcomes is producing promising results.• Quantifying intra-tumoral heterogeneity may improve grading and molecular sub-classifications of gliomas.• Computational fractal-based analysis of gliomas allows geometrical evaluation of tumor irregularities and complexity, leading to novel techniques for tumor segmentation, grading, and therapeutic monitoring.

Entities:  

Keywords:  Computational modeling; Fractal analysis; Glioma; Machine learning; Radiomics

Mesh:

Substances:

Year:  2020        PMID: 32249351     DOI: 10.1007/s00234-020-02403-1

Source DB:  PubMed          Journal:  Neuroradiology        ISSN: 0028-3940            Impact factor:   2.804


  12 in total

Review 1.  Radiomic Features Associated with Extent of Resection in Glioma Surgery.

Authors:  Giovanni Muscas; Simone Orlandini; Eleonora Becattini; Francesca Battista; Victor E Staartjes; Carlo Serra; Alessandro Della Puppa
Journal:  Acta Neurochir Suppl       Date:  2022

Review 2.  Application of artificial intelligence and radiomics in pituitary neuroendocrine and sellar tumors: a quantitative and qualitative synthesis.

Authors:  Kelvin Koong; Veronica Preda; Anne Jian; Benoit Liquet-Weiland; Antonio Di Ieva
Journal:  Neuroradiology       Date:  2021-11-27       Impact factor: 2.804

Review 3.  Glutamine Imaging: A New Avenue for Glioma Management.

Authors:  S Ekici; J A Nye; S G Neill; J W Allen; H-K Shu; C C Fleischer
Journal:  AJNR Am J Neuroradiol       Date:  2021-11-04       Impact factor: 3.825

4.  Predicting MGMT Promoter Methylation in Diffuse Gliomas Using Deep Learning with Radiomics.

Authors:  Sixuan Chen; Yue Xu; Meiping Ye; Yang Li; Yu Sun; Jiawei Liang; Jiaming Lu; Zhengge Wang; Zhengyang Zhu; Xin Zhang; Bing Zhang
Journal:  J Clin Med       Date:  2022-06-15       Impact factor: 4.964

Review 5.  Predicting cancer outcomes with radiomics and artificial intelligence in radiology.

Authors:  Kaustav Bera; Nathaniel Braman; Amit Gupta; Vamsidhar Velcheti; Anant Madabhushi
Journal:  Nat Rev Clin Oncol       Date:  2021-10-18       Impact factor: 65.011

6.  CT-based morphologic and radiomics features for the classification of MYCN gene amplification status in pediatric neuroblastoma.

Authors:  Eelin Tan; Khurshid Merchant; Bhanu Prakash Kn; Arvind Cs; Joseph J Zhao; Seyed Ehsan Saffari; Poh Hwa Tan; Phua Hwee Tang
Journal:  Childs Nerv Syst       Date:  2022-04-23       Impact factor: 1.532

7.  Spherical coordinates transformation pre-processing in Deep Convolution Neural Networks for brain tumor segmentation in MRI.

Authors:  Carlo Russo; Sidong Liu; Antonio Di Ieva
Journal:  Med Biol Eng Comput       Date:  2021-11-02       Impact factor: 2.602

8.  Deep Learning Can Differentiate IDH-Mutant from IDH-Wild GBM.

Authors:  Luca Pasquini; Antonio Napolitano; Emanuela Tagliente; Francesco Dellepiane; Martina Lucignani; Antonello Vidiri; Giulio Ranazzi; Antonella Stoppacciaro; Giulia Moltoni; Matteo Nicolai; Andrea Romano; Alberto Di Napoli; Alessandro Bozzao
Journal:  J Pers Med       Date:  2021-04-09

9.  Quantitative MRI-based radiomics for noninvasively predicting molecular subtypes and survival in glioma patients.

Authors:  Jing Yan; Bin Zhang; Shuaitong Zhang; Jingliang Cheng; Xianzhi Liu; Weiwei Wang; Yuhao Dong; Lu Zhang; Xiaokai Mo; Qiuying Chen; Jin Fang; Fei Wang; Jie Tian; Shuixing Zhang; Zhenyu Zhang
Journal:  NPJ Precis Oncol       Date:  2021-07-26

10.  Differentiating IDH status in human gliomas using machine learning and multiparametric MR/PET.

Authors:  Hiroyuki Tatekawa; Akifumi Hagiwara; Hiroyuki Uetani; Shadfar Bahri; Catalina Raymond; Albert Lai; Timothy F Cloughesy; Phioanh L Nghiemphu; Linda M Liau; Whitney B Pope; Noriko Salamon; Benjamin M Ellingson
Journal:  Cancer Imaging       Date:  2021-03-10       Impact factor: 3.909

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