Literature DB >> 29073725

Radiomics in paediatric neuro-oncology: A multicentre study on MRI texture analysis.

Ahmed E Fetit1,2, Jan Novak2,3, Daniel Rodriguez4, Dorothee P Auer4,5, Christopher A Clark6, Richard G Grundy4,5, Andrew C Peet2,3, Theodoros N Arvanitis1,2,3.   

Abstract

Brain tumours are the most common solid cancers in children in the UK and are the most common cause of cancer deaths in this age group. Despite current advances in MRI, non-invasive diagnosis of paediatric brain tumours has yet to find its way into routine clinical practice. Radiomics, the high-throughput extraction and analysis of quantitative image features (e.g. texture), offers potential solutions for tumour characterization and decision support. In the search for diagnostic oncological markers, the primary aim of this work was to study the application of MRI texture analysis (TA) for the classification of paediatric brain tumours. A multicentre study was carried out, within a supervised classification framework, on clinical MR images, and a support vector machine (SVM) was trained with 3D textural attributes obtained from conventional MRI. To determine the cross-centre transferability of TA, an assessment of how SVM performs on unseen datasets was carried out through rigorous pairwise testing. The study also investigated the nature of features that are most likely to train classifiers that can generalize well with the data. Finally, the issue of class imbalance, which arises due to some tumour types being more common than others, was explored. For each of the tests carried out through pairwise testing, the optimal area under the receiver operating characteristic curve ranged between 76% and 86%, suggesting that the model was able to capture transferable tumour information. Feature selection results suggest that similar aspects of tumour texture are enhanced by MR images obtained at different hospitals. Our results also suggest that the availability of equally represented classes has enabled SVM to better characterize the data points. The findings of the study presented here support the use of 3D TA on conventional MR images to aid diagnostic classification of paediatric brain tumours.
Copyright © 2017 John Wiley & Sons, Ltd.

Entities:  

Keywords:  3D texture analysis; MRI; classification; machine learning; multicentre; paediatric brain tumours; radiomics; transferability

Mesh:

Year:  2017        PMID: 29073725     DOI: 10.1002/nbm.3781

Source DB:  PubMed          Journal:  NMR Biomed        ISSN: 0952-3480            Impact factor:   4.044


  20 in total

1.  Multisite evaluation of radiomic feature reproducibility and discriminability for identifying peripheral zone prostate tumors on MRI.

Authors:  Prathyush Chirra; Patrick Leo; Michael Yim; B Nicolas Bloch; Ardeshir R Rastinehad; Andrei Purysko; Mark Rosen; Anant Madabhushi; Satish E Viswanath
Journal:  J Med Imaging (Bellingham)       Date:  2019-06-14

Review 2.  Machine learning studies on major brain diseases: 5-year trends of 2014-2018.

Authors:  Koji Sakai; Kei Yamada
Journal:  Jpn J Radiol       Date:  2018-11-29       Impact factor: 2.374

3.  Contrast-Enhanced Mammography and Radiomics Analysis for Noninvasive Breast Cancer Characterization: Initial Results.

Authors:  Maria Adele Marino; Katja Pinker; Doris Leithner; Janice Sung; Daly Avendano; Elizabeth A Morris; Maxine Jochelson
Journal:  Mol Imaging Biol       Date:  2020-06       Impact factor: 3.488

4.  Applications of Artificial Intelligence in Pediatric Oncology: A Systematic Review.

Authors:  Siddhi Ramesh; Sukarn Chokkara; Timothy Shen; Ajay Major; Samuel L Volchenboum; Anoop Mayampurath; Mark A Applebaum
Journal:  JCO Clin Cancer Inform       Date:  2021-12

5.  Differentiation of paediatric posterior fossa tumours by the multiregional and multiparametric MRI radiomics approach: a study on the selection of optimal multiple sequences and multiregions.

Authors:  Jie Dong; Suxiao Li; Lei Li; Shengxiang Liang; Bin Zhang; Yun Meng; Xiaofang Zhang; Yong Zhang; Shujun Zhao
Journal:  Br J Radiol       Date:  2021-11-19       Impact factor: 3.039

Review 6.  Radiomics and radiogenomics in pediatric neuro-oncology: A review.

Authors:  Rachel Madhogarhia; Debanjan Haldar; Sina Bagheri; Ariana Familiar; Hannah Anderson; Sherjeel Arif; Arastoo Vossough; Phillip Storm; Adam Resnick; Christos Davatzikos; Anahita Fathi Kazerooni; Ali Nabavizadeh
Journal:  Neurooncol Adv       Date:  2022-05-27

Review 7.  Evolving Role and Translation of Radiomics and Radiogenomics in Adult and Pediatric Neuro-Oncology.

Authors:  M Ak; S A Toll; K Z Hein; R R Colen; S Khatua
Journal:  AJNR Am J Neuroradiol       Date:  2021-10-14       Impact factor: 4.966

Review 8.  Artificial intelligence applications for pediatric oncology imaging.

Authors:  Heike Daldrup-Link
Journal:  Pediatr Radiol       Date:  2019-10-16

9.  Radiomics Analysis of Multi-Sequence MR Images For Predicting Microsatellite Instability Status Preoperatively in Rectal Cancer.

Authors:  Zongbao Li; Hui Dai; Yunxia Liu; Feng Pan; Yanyan Yang; Mengchao Zhang
Journal:  Front Oncol       Date:  2021-07-07       Impact factor: 6.244

10.  Radiomics Nomogram for Identifying Sub-1 cm Benign and Malignant Thyroid Lesions.

Authors:  Xinxin Wu; Jingjing Li; Yakui Mou; Yao Yao; Jingjing Cui; Ning Mao; Xicheng Song
Journal:  Front Oncol       Date:  2021-06-07       Impact factor: 6.244

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