Literature DB >> 32040669

Deep Convolutional Radiomic Features on Diffusion Tensor Images for Classification of Glioma Grades.

Zhiwei Zhang1, Jingjing Xiao2,3, Shandong Wu4, Fajin Lv1, Junwei Gong1, Lin Jiang5, Renqiang Yu1, Tianyou Luo6.   

Abstract

The grading of glioma has clinical significance in determining a treatment strategy and evaluating prognosis to investigate a novel set of radiomic features extracted from the fractional anisotropy (FA) and mean diffusivity (MD) maps of brain diffusion tensor imaging (DTI) sequences for computer-aided grading of gliomas. This retrospective study included 108 patients who had pathologically confirmed brain gliomas and DTI scanned during 2012-2018. This cohort included 43 low-grade gliomas (LGGs; all grade II) and 65 high-grade gliomas (HGGs; grade III or IV). We extracted a set of radiomic features, including traditional texture, morphological, and novel deep features derived from pre-trained convolutional neural network models, in the manually-delineated tumor regions. We employed support vector machine and these radiomic features for two classification tasks: LGGs vs HGGs, and grade III vs IV. The area under the receiver operating characteristic (ROC) curve (AUC), accuracy, sensitivity, and specificity was reported as the performance metrics using the leave-one-out cross-validation method. When combining FA+MD, AUC = 0.93, accuracy = 0.94, sensitivity = 0.98, and specificity = 0.86 in classifying LGGs from HGGs, while AUC = 0.99, accuracy = 0.98, sensitivity = 0.98, and specificity = 1.00 in classifying grade III from IV. The AUC and accuracy remain close when features were extracted from only the solid tumor or additionally including necrosis, cyst, and peritumoral edema. Still, the effects in terms of sensitivity and specificity are mixed. Deep radiomic features derived from pre-trained convolutional neural networks showed higher prediction ability than the traditional texture and shape features in both classification experiments. Radiomic features extracted on the FA and MD maps of brain DTI images are useful for noninvasively classification/grading of LGGs vs HGGs, and grade III vs IV.

Entities:  

Keywords:  Brain tumor; Deep learning; Diffusion tensor imaging; Glioma grading; Radiomic features

Year:  2020        PMID: 32040669      PMCID: PMC7522150          DOI: 10.1007/s10278-020-00322-4

Source DB:  PubMed          Journal:  J Digit Imaging        ISSN: 0897-1889            Impact factor:   4.056


  36 in total

1.  Diagnostic performance of texture analysis on MRI in grading cerebral gliomas.

Authors:  Karoline Skogen; Anselm Schulz; Johann Baptist Dormagen; Balaji Ganeshan; Eirik Helseth; Andrès Server
Journal:  Eur J Radiol       Date:  2016-01-21       Impact factor: 3.528

2.  Radiomics strategy for glioma grading using texture features from multiparametric MRI.

Authors:  Qiang Tian; Lin-Feng Yan; Xi Zhang; Xin Zhang; Yu-Chuan Hu; Yu Han; Zhi-Cheng Liu; Hai-Yan Nan; Qian Sun; Ying-Zhi Sun; Yang Yang; Ying Yu; Jin Zhang; Bo Hu; Gang Xiao; Ping Chen; Shuai Tian; Jie Xu; Wen Wang; Guang-Bin Cui
Journal:  J Magn Reson Imaging       Date:  2018-03-23       Impact factor: 4.813

3.  Diagnostic performance of apparent diffusion coefficient parameters for glioma grading.

Authors:  Qun Wang; JiaShu Zhang; Xinghua Xu; XiaoLei Chen; BaiNan Xu
Journal:  J Neurooncol       Date:  2018-03-24       Impact factor: 4.130

4.  Diffusion radiomics as a diagnostic model for atypical manifestation of primary central nervous system lymphoma: development and multicenter external validation.

Authors:  Daesung Kang; Ji Eun Park; Young-Hoon Kim; Jeong Hoon Kim; Joo Young Oh; Jungyoun Kim; Yikyung Kim; Sung Tae Kim; Ho Sung Kim
Journal:  Neuro Oncol       Date:  2018-08-02       Impact factor: 12.300

5.  Glioma grade assessment by using histogram analysis of diffusion tensor imaging-derived maps.

Authors:  András Jakab; Péter Molnár; Miklós Emri; Ervin Berényi
Journal:  Neuroradiology       Date:  2010-09-21       Impact factor: 2.804

Review 6.  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

Review 7.  Imaging Correlates of Adult Glioma Genotypes.

Authors:  Marion Smits; Martin J van den Bent
Journal:  Radiology       Date:  2017-08       Impact factor: 11.105

8.  Classification of brain tumor type and grade using MRI texture and shape in a machine learning scheme.

Authors:  Evangelia I Zacharaki; Sumei Wang; Sanjeev Chawla; Dong Soo Yoo; Ronald Wolf; Elias R Melhem; Christos Davatzikos
Journal:  Magn Reson Med       Date:  2009-12       Impact factor: 4.668

9.  Decoding tumour phenotype by noninvasive imaging using a quantitative radiomics approach.

Authors:  Hugo J W L Aerts; Emmanuel Rios Velazquez; Ralph T H Leijenaar; Chintan Parmar; Patrick Grossmann; Sara Carvalho; Sara Cavalho; Johan Bussink; René Monshouwer; Benjamin Haibe-Kains; Derek Rietveld; Frank Hoebers; Michelle M Rietbergen; C René Leemans; Andre Dekker; John Quackenbush; Robert J Gillies; Philippe Lambin
Journal:  Nat Commun       Date:  2014-06-03       Impact factor: 14.919

10.  Radiomics: Images Are More than Pictures, They Are Data.

Authors:  Robert J Gillies; Paul E Kinahan; Hedvig Hricak
Journal:  Radiology       Date:  2015-11-18       Impact factor: 11.105

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  8 in total

Review 1.  A Survey of Radiomics in Precision Diagnosis and Treatment of Adult Gliomas.

Authors:  Peng Du; Hongyi Chen; Kun Lv; Daoying Geng
Journal:  J Clin Med       Date:  2022-06-30       Impact factor: 4.964

2.  Brain Tumor Imaging: Applications of Artificial Intelligence.

Authors:  Muhammad Afridi; Abhi Jain; Mariam Aboian; Seyedmehdi Payabvash
Journal:  Semin Ultrasound CT MR       Date:  2022-02-11       Impact factor: 1.875

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.  Combining Radiology and Pathology for Automatic Glioma Classification.

Authors:  Xiyue Wang; Ruijie Wang; Sen Yang; Jun Zhang; Minghui Wang; Dexing Zhong; Jing Zhang; Xiao Han
Journal:  Front Bioeng Biotechnol       Date:  2022-03-21

5.  Diffusion Tensor Imaging Radiomics for Diagnosis of Parkinson's Disease.

Authors:  Jingwen Li; Xiaoming Liu; Xinyi Wang; Hanshu Liu; Zhicheng Lin; Nian Xiong
Journal:  Brain Sci       Date:  2022-06-29

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

Review 7.  Accuracy of Machine Learning Algorithms for the Classification of Molecular Features of Gliomas on MRI: A Systematic Literature Review and Meta-Analysis.

Authors:  Evi J van Kempen; Max Post; Manoj Mannil; Benno Kusters; Mark Ter Laan; Frederick J A Meijer; Dylan J H A Henssen
Journal:  Cancers (Basel)       Date:  2021-05-26       Impact factor: 6.639

Review 8.  Application of Artificial Intelligence in Diagnosis of Craniopharyngioma.

Authors:  Caijie Qin; Wenxing Hu; Xinsheng Wang; Xibo Ma
Journal:  Front Neurol       Date:  2022-01-06       Impact factor: 4.003

  8 in total

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