Literature DB >> 29789422

Machine Learning-Based Radiomics for Molecular Subtyping of Gliomas.

Chia-Feng Lu1,2,3, Fei-Ting Hsu2,4,5, Kevin Li-Chun Hsieh2,4,5, Yu-Chieh Jill Kao2,5, Sho-Jen Cheng4, Justin Bo-Kai Hsu6, Ping-Huei Tsai2,7,8, Ray-Jade Chen9,10, Chao-Ching Huang11,12,13, Yun Yen14, Cheng-Yu Chen15,4,5.   

Abstract

Purpose: The new classification announced by the World Health Organization in 2016 recognized five molecular subtypes of diffuse gliomas based on isocitrate dehydrogenase (IDH) and 1p/19q genotypes in addition to histologic phenotypes. We aim to determine whether clinical MRI can stratify these molecular subtypes to benefit the diagnosis and monitoring of gliomas.Experimental Design: The data from 456 subjects with gliomas were obtained from The Cancer Imaging Archive. Overall, 214 subjects, including 106 cases of glioblastomas and 108 cases of lower grade gliomas with preoperative MRI, survival data, histology, IDH, and 1p/19q status were included. We proposed a three-level machine-learning model based on multimodal MR radiomics to classify glioma subtypes. An independent dataset with 70 glioma subjects was further collected to verify the model performance.
Results: The IDH and 1p/19q status of gliomas can be classified by radiomics and machine-learning approaches, with areas under ROC curves between 0.922 and 0.975 and accuracies between 87.7% and 96.1% estimated on the training dataset. The test on the validation dataset showed a comparable model performance with that on the training dataset, suggesting the efficacy of the trained classifiers. The classification of 5 molecular subtypes solely based on the MR phenotypes achieved an 81.8% accuracy, and a higher accuracy of 89.2% could be achieved if the histology diagnosis is available.Conclusions: The MR radiomics-based method provides a reliable alternative to determine the histology and molecular subtypes of gliomas. Clin Cancer Res; 24(18); 4429-36. ©2018 AACR. ©2018 American Association for Cancer Research.

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Year:  2018        PMID: 29789422     DOI: 10.1158/1078-0432.CCR-17-3445

Source DB:  PubMed          Journal:  Clin Cancer Res        ISSN: 1078-0432            Impact factor:   12.531


  80 in total

1.  Use of radiomics based on 18F-FDG PET/CT and machine learning methods to aid clinical decision-making in the classification of solitary pulmonary lesions: an innovative approach.

Authors:  Yi Zhou; Xue-Lei Ma; Ting Zhang; Jian Wang; Tao Zhang; Rong Tian
Journal:  Eur J Nucl Med Mol Imaging       Date:  2021-02-05       Impact factor: 9.236

2.  Quality of science and reporting of radiomics in oncologic studies: room for improvement according to radiomics quality score and TRIPOD statement.

Authors:  Ji Eun Park; Donghyun Kim; Ho Sung Kim; Seo Young Park; Jung Youn Kim; Se Jin Cho; Jae Ho Shin; Jeong Hoon Kim
Journal:  Eur Radiol       Date:  2019-07-26       Impact factor: 5.315

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

Authors:  Burak Kocak; Emine Sebnem Durmaz; Ece Ates; Ipek Sel; Saime Turgut Gunes; Ozlem Korkmaz Kaya; Amalya Zeynalova; Ozgur Kilickesmez
Journal:  Eur Radiol       Date:  2019-11-05       Impact factor: 5.315

4.  Development and validation of a CT-based nomogram for preoperative prediction of clear cell renal cell carcinoma grades.

Authors:  Zaosong Zheng; Zhiliang Chen; Yingwei Xie; Qiyu Zhong; Wenlian Xie
Journal:  Eur Radiol       Date:  2021-01-29       Impact factor: 5.315

5.  Deep learning for fully automated tumor segmentation and extraction of magnetic resonance radiomics features in cervical cancer.

Authors:  Yu-Chun Lin; Chia-Hung Lin; Hsin-Ying Lu; Hsin-Ju Chiang; Ho-Kai Wang; Yu-Ting Huang; Shu-Hang Ng; Ji-Hong Hong; Tzu-Chen Yen; Chyong-Huey Lai; Gigin Lin
Journal:  Eur Radiol       Date:  2019-11-11       Impact factor: 5.315

6.  Diffusion tensor imaging radiomics in lower-grade glioma: improving subtyping of isocitrate dehydrogenase mutation status.

Authors:  Chae Jung Park; Yoon Seong Choi; Yae Won Park; Sung Soo Ahn; Seok-Gu Kang; Jong-Hee Chang; Se Hoon Kim; Seung-Koo Lee
Journal:  Neuroradiology       Date:  2019-12-09       Impact factor: 2.804

7.  Diffusion- and perfusion-weighted MRI radiomics model may predict isocitrate dehydrogenase (IDH) mutation and tumor aggressiveness in diffuse lower grade glioma.

Authors:  Minjae Kim; So Yeong Jung; Ji Eun Park; Yeongheun Jo; Seo Young Park; Soo Jung Nam; Jeong Hoon Kim; Ho Sung Kim
Journal:  Eur Radiol       Date:  2019-12-11       Impact factor: 5.315

8.  Prediction of lower-grade glioma molecular subtypes using deep learning.

Authors:  Yutaka Matsui; Takashi Maruyama; Masayuki Nitta; Taiichi Saito; Shunsuke Tsuzuki; Manabu Tamura; Kaori Kusuda; Yasukazu Fukuya; Hidetsugu Asano; Takakazu Kawamata; Ken Masamune; Yoshihiro Muragaki
Journal:  J Neurooncol       Date:  2019-12-21       Impact factor: 4.130

9.  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

10.  A Multiparametric MRI-Based Radiomics Analysis to Efficiently Classify Tumor Subregions of Glioblastoma: A Pilot Study in Machine Learning.

Authors:  Fang-Ying Chiu; Nguyen Quoc Khanh Le; Cheng-Yu Chen
Journal:  J Clin Med       Date:  2021-05-10       Impact factor: 4.241

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