Literature DB >> 31691122

Radiogenomics of lower-grade gliomas: machine learning-based MRI texture analysis for predicting 1p/19q codeletion status.

Burak Kocak1, Emine Sebnem Durmaz2, Ece Ates3, Ipek Sel3, Saime Turgut Gunes3, Ozlem Korkmaz Kaya4, Amalya Zeynalova5, Ozgur Kilickesmez3.   

Abstract

OBJECTIVE: To evaluate the potential value of the machine learning (ML)-based MRI texture analysis for predicting 1p/19q codeletion status of lower-grade gliomas (LGG), using various state-of-the-art ML algorithms.
MATERIALS AND METHODS: For this retrospective study, 107 patients with LGG were included from a public database. Texture features were extracted from conventional T2-weighted and contrast-enhanced T1-weighted MRI images, using LIFEx software. Training and unseen validation splits were created using stratified 10-fold cross-validation technique along with minority over-sampling. Dimension reduction was done using collinearity analysis and feature selection (ReliefF). Classifications were done using adaptive boosting, k-nearest neighbours, naive Bayes, neural network, random forest, stochastic gradient descent, and support vector machine. Friedman test and pairwise post hoc analyses were used for comparison of classification performances based on the area under the curve (AUC).
RESULTS: Overall, the predictive performance of the ML algorithms were statistically significantly different, χ2(6) = 26.7, p < 0.001. There was no statistically significant difference among the performance of the neural network, naive Bayes, support vector machine, random forest, and stochastic gradient descent, adjusted p > 0.05. The mean AUC and accuracy values of these five algorithms ranged from 0.769 to 0.869 and from 80.1 to 84%, respectively. The neural network had the highest mean rank with mean AUC and accuracy values of 0.869 and 83.8%, respectively.
CONCLUSIONS: The ML-based MRI texture analysis might be a promising non-invasive technique for predicting the 1p/19q codeletion status of LGGs. Using this technique along with various ML algorithms, more than four-fifths of the LGGs can be correctly classified. KEY POINTS: • More than four-fifths of the lower-grade gliomas can be correctly classified with machine learning-based MRI texture analysis. Satisfying classification outcomes are not limited to a single algorithm. • A few-slice-based volumetric segmentation technique would be a valid approach, providing satisfactory predictive textural information and avoiding excessive segmentation duration in clinical practice. • Feature selection is sensitive to different patient data set samples so that each sampling leads to the selection of different feature subsets, which needs to be considered in future works.

Entities:  

Keywords:  Artificial intelligence; Glioma; Machine learning; Mutation; Radiomics

Mesh:

Year:  2019        PMID: 31691122     DOI: 10.1007/s00330-019-06492-2

Source DB:  PubMed          Journal:  Eur Radiol        ISSN: 0938-7994            Impact factor:   5.315


  30 in total

1.  Influence of MRI acquisition protocols and image intensity normalization methods on texture classification.

Authors:  G Collewet; M Strzelecki; F Mariette
Journal:  Magn Reson Imaging       Date:  2004-01       Impact factor: 2.546

2.  LIFEx: A Freeware for Radiomic Feature Calculation in Multimodality Imaging to Accelerate Advances in the Characterization of Tumor Heterogeneity.

Authors:  Christophe Nioche; Fanny Orlhac; Sarah Boughdad; Sylvain Reuzé; Jessica Goya-Outi; Charlotte Robert; Claire Pellot-Barakat; Michael Soussan; Frédérique Frouin; Irène Buvat
Journal:  Cancer Res       Date:  2018-06-29       Impact factor: 12.701

3.  Non-invasive genotype prediction of chromosome 1p/19q co-deletion by development and validation of an MRI-based radiomics signature in lower-grade gliomas.

Authors:  Yuqi Han; Zhen Xie; Yali Zang; Shuaitong Zhang; Dongsheng Gu; Mu Zhou; Olivier Gevaert; Jingwei Wei; Chao Li; Hongyan Chen; Jiang Du; Zhenyu Liu; Di Dong; Jie Tian; Dabiao Zhou
Journal:  J Neurooncol       Date:  2018-08-10       Impact factor: 4.130

Review 4.  Radiomics: extracting more information from medical images using advanced feature analysis.

Authors:  Philippe Lambin; Emmanuel Rios-Velazquez; Ralph Leijenaar; Sara Carvalho; Ruud G P M van Stiphout; Patrick Granton; Catharina M L Zegers; Robert Gillies; Ronald Boellard; André Dekker; Hugo J W L Aerts
Journal:  Eur J Cancer       Date:  2012-01-16       Impact factor: 9.162

5.  Imaging correlates of molecular signatures in oligodendrogliomas.

Authors:  Joseph F Megyesi; Edward Kachur; Donald H Lee; Magdalena C Zlatescu; Rebecca A Betensky; Peter A Forsyth; Yoshifumi Okada; Hikaru Sasaki; Masahiro Mizoguchi; David N Louis; J Gregory Cairncross
Journal:  Clin Cancer Res       Date:  2004-07-01       Impact factor: 12.531

6.  Molecular genetic analysis of oligodendroglial tumors shows preferential allelic deletions on 19q and 1p.

Authors:  J Reifenberger; G Reifenberger; L Liu; C D James; W Wechsler; V P Collins
Journal:  Am J Pathol       Date:  1994-11       Impact factor: 4.307

7.  Molecular classification of patients with grade II/III glioma using quantitative MRI characteristics.

Authors:  Naeim Bahrami; Stephen J Hartman; Yu-Hsuan Chang; Rachel Delfanti; Nathan S White; Roshan Karunamuni; Tyler M Seibert; Anders M Dale; Jona A Hattangadi-Gluth; David Piccioni; Nikdokht Farid; Carrie R McDonald
Journal:  J Neurooncol       Date:  2018-06-02       Impact factor: 4.130

8.  The T2-FLAIR mismatch sign as an imaging marker for non-enhancing IDH-mutant, 1p/19q-intact lower-grade glioma: a validation study.

Authors:  Martinus P G Broen; Marion Smits; Maarten M J Wijnenga; Hendrikus J Dubbink; Monique H M E Anten; Olaf E M G Schijns; Jan Beckervordersandforth; Alida A Postma; Martin J van den Bent
Journal:  Neuro Oncol       Date:  2018-09-03       Impact factor: 13.029

9.  A Visually Interpretable, Dictionary-Based Approach to Imaging-Genomic Modeling, With Low-Grade Glioma as a Case Study.

Authors:  Srikanth Kuthuru; William Deaderick; Harrison Bai; Chang Su; Tiep Vu; Vishal Monga; Arvind Rao
Journal:  Cancer Inform       Date:  2018-10-05

10.  Classifying lower grade glioma cases according to whole genome gene expression.

Authors:  Baoshi Chen; Tingyu Liang; Pei Yang; Haoyuan Wang; Yanwei Liu; Fan Yang; Gan You
Journal:  Oncotarget       Date:  2016-11-08
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  13 in total

Review 1.  How to read and review papers on machine learning and artificial intelligence in radiology: a survival guide to key methodological concepts.

Authors:  Burak Kocak; Ece Ates Kus; Ozgur Kilickesmez
Journal:  Eur Radiol       Date:  2020-10-01       Impact factor: 5.315

Review 2.  Challenges and opportunities for artificial intelligence in oncological imaging.

Authors:  H M C Cheung; D Rubin
Journal:  Clin Radiol       Date:  2021-04-24       Impact factor: 3.389

3.  Radiomics Features Predict Telomerase Reverse Transcriptase Promoter Mutations in World Health Organization Grade II Gliomas via a Machine-Learning Approach.

Authors:  Shengyu Fang; Ziwen Fan; Zhiyan Sun; Yiming Li; Xing Liu; Yuchao Liang; Yukun Liu; Chunyao Zhou; Qiang Zhu; Hong Zhang; Tianshi Li; Shaowu Li; Tao Jiang; Yinyan Wang; Lei Wang
Journal:  Front Oncol       Date:  2021-02-11       Impact factor: 6.244

4.  MRI-Based Machine Learning in Differentiation Between Benign and Malignant Breast Lesions.

Authors:  Yanjie Zhao; Rong Chen; Ting Zhang; Chaoyue Chen; Muhetaer Muhelisa; Jingting Huang; Yan Xu; Xuelei Ma
Journal:  Front Oncol       Date:  2021-10-18       Impact factor: 6.244

5.  Radiogenomics Map Reveals the Landscape of m6A Methylation Modification Pattern in Bladder Cancer.

Authors:  Fangdie Ye; Yun Hu; Jiahao Gao; Yingchun Liang; Yufei Liu; Yuxi Ou; Zhang Cheng; Haowen Jiang
Journal:  Front Immunol       Date:  2021-10-18       Impact factor: 7.561

6.  Noninvasive Determination of IDH and 1p19q Status of Lower-grade Gliomas Using MRI Radiomics: A Systematic Review.

Authors:  A P Bhandari; R Liong; J Koppen; S V Murthy; A Lasocki
Journal:  AJNR Am J Neuroradiol       Date:  2020-11-26       Impact factor: 3.825

7.  Radiomic Based Machine Learning Performance for a Three Class Problem in Neuro-Oncology: Time to Test the Waters?

Authors:  Sarv Priya; Yanan Liu; Caitlin Ward; Nam H Le; Neetu Soni; Ravishankar Pillenahalli Maheshwarappa; Varun Monga; Honghai Zhang; Milan Sonka; Girish Bathla
Journal:  Cancers (Basel)       Date:  2021-05-24       Impact factor: 6.639

8.  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

9.  Thin-Slice Magnetic Resonance Imaging-Based Radiomics Signature Predicts Chromosomal 1p/19q Co-deletion Status in Grade II and III Gliomas.

Authors:  Ziren Kong; Chendan Jiang; Yiwei Zhang; Sirui Liu; Delin Liu; Zeyu Liu; Wenlin Chen; Penghao Liu; Tianrui Yang; Yuelei Lyu; Dachun Zhao; Hui You; Yu Wang; Wenbin Ma; Feng Feng
Journal:  Front Neurol       Date:  2020-10-22       Impact factor: 4.003

10.  FDG PET/CT to Predict Recurrence of Early Breast Invasive Ductal Carcinoma.

Authors:  Joon-Hyung Jo; Hyun Woo Chung; Young So; Young Bum Yoo; Kyoung Sik Park; Sang Eun Nam; Eun Jeong Lee; Woo Chul Noh
Journal:  Diagnostics (Basel)       Date:  2022-03-12
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