Literature DB >> 30277442

Radiomic MRI Phenotyping of Glioblastoma: Improving Survival Prediction.

Sohi Bae1, Yoon Seong Choi1, Sung Soo Ahn1, Jong Hee Chang1, Seok-Gu Kang1, Eui Hyun Kim1, Se Hoon Kim1, Seung-Koo Lee1.   

Abstract

Purpose To investigate whether radiomic features at MRI improve survival prediction in patients with glioblastoma multiforme (GBM) when they are integrated with clinical and genetic profiles. Materials and Methods Data in patients with a diagnosis of GBM between December 2009 and January 2017 (217 patients) were retrospectively reviewed up to May 2017 and allocated to training and test sets (3:1 ratio). Radiomic features (n = 796) were extracted from multiparametric MRI. A random survival forest (RSF) model was trained with the radiomic features along with clinical and genetic profiles (O-6-methylguanine-DNA-methyltransferase promoter methylation and isocitrate dehydrogenase 1 mutation statuses) to predict overall survival (OS) and progression-free survival (PFS). The RSF models were validated on the test set. The incremental values of radiomic features were evaluated by using the integrated area under the receiver operating characteristic curve (iAUC). Results The 217 patients had a mean age of 57.9 years, and there were 87 female patients (age range, 22-81 years) and 130 male patients (age range, 17-85 years). The median OS and PFS of patients were 352 days (range, 20-1809 days) and 264 days (range, 21-1809 days), respectively. The RSF radiomics models were successfully validated on the test set (iAUC, 0.652 [95% confidence interval {CI}, 0.524, 0.769] and 0.590 [95% CI: 0.502, 0.689] for OS and PFS, respectively). The addition of a radiomics model to clinical and genetic profiles improved survival prediction when compared with models containing clinical and genetic profiles alone (P = .04 and .03 for OS and PFS, respectively). Conclusion Radiomic MRI phenotyping can improve survival prediction when integrated with clinical and genetic profiles and thus has potential as a practical imaging biomarker. © RSNA, 2018 Online supplemental material is available for this article. See also the editorial by Jain and Lui in this issue.

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Year:  2018        PMID: 30277442     DOI: 10.1148/radiol.2018180200

Source DB:  PubMed          Journal:  Radiology        ISSN: 0033-8419            Impact factor:   11.105


  39 in total

1.  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

Review 2.  Imaging signatures of glioblastoma molecular characteristics: A radiogenomics review.

Authors:  Anahita Fathi Kazerooni; Spyridon Bakas; Hamidreza Saligheh Rad; Christos Davatzikos
Journal:  J Magn Reson Imaging       Date:  2019-08-27       Impact factor: 4.813

Review 3.  Precision Digital Oncology: Emerging Role of Radiomics-based Biomarkers and Artificial Intelligence for Advanced Imaging and Characterization of Brain Tumors.

Authors:  Reza Forghani
Journal:  Radiol Imaging Cancer       Date:  2020-07-31

Review 4.  Radiomics: an Introductory Guide to What It May Foretell.

Authors:  Stephanie Nougaret; Hichem Tibermacine; Marion Tardieu; Evis Sala
Journal:  Curr Oncol Rep       Date:  2019-06-25       Impact factor: 5.075

5.  Adding radiomics to the 2021 WHO updates may improve prognostic prediction for current IDH-wildtype histological lower-grade gliomas with known EGFR amplification and TERT promoter mutation status.

Authors:  Yae Won Park; Sooyon Kim; Chae Jung Park; Sung Soo Ahn; Kyunghwa Han; Seok-Gu Kang; Jong Hee Chang; Se Hoon Kim; Seung-Koo Lee
Journal:  Eur Radiol       Date:  2022-06-28       Impact factor: 5.315

6.  Predicting survival in patients with glioblastoma using MRI radiomic features extracted from radiation planning volumes.

Authors:  Benjamin J Geraghty; Archya Dasgupta; Arjun Sahgal; Gregory J Czarnota; Michael Sandhu; Nauman Malik; Pejman Jabehdar Maralani; Jay Detsky; Chia-Lin Tseng; Hany Soliman; Sten Myrehaug; Zain Husain; James Perry; Angus Lau
Journal:  J Neurooncol       Date:  2022-01-03       Impact factor: 4.130

Review 7.  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 8.  Artificial intelligence applications for pediatric oncology imaging.

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

9.  Tumor Habitat-derived Radiomic Features at Pretreatment MRI That Are Prognostic for Progression-free Survival in Glioblastoma Are Associated with Key Morphologic Attributes at Histopathologic Examination: A Feasibility Study.

Authors:  Ruchika Verma; Ramon Correa; Virginia B Hill; Volodymyr Statsevych; Kaustav Bera; Niha Beig; Abdelkader Mahammedi; Anant Madabhushi; Manmeet Ahluwalia; Pallavi Tiwari
Journal:  Radiol Artif Intell       Date:  2020-11-11

10.  A Neural Network Approach to Identify Glioblastoma Progression Phenotype from Multimodal MRI.

Authors:  Jiun-Lin Yan; Cheng-Hong Toh; Li Ko; Kuo-Chen Wei; Pin-Yuan Chen
Journal:  Cancers (Basel)       Date:  2021-04-21       Impact factor: 6.639

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