Literature DB >> 32727886

A Radiomics Model for Predicting the Response to Bevacizumab in Brain Necrosis after Radiotherapy.

Jinhua Cai1, Junjiong Zheng2, Jun Shen3, Zhiyong Yuan4, Mingwei Xie3, Miaomiao Gao4, Hongqi Tan5, Zhongguo Liang5,6, Xiaoming Rong1, Yi Li1, Honghong Li1, Jingru Jiang1, Huiying Zhao7,8, Andreas A Argyriou9, Melvin L K Chua5,10, Yamei Tang11,8,12.   

Abstract

PURPOSE: Bevacizumab is considered a promising therapy for brain necrosis after radiotherapy, while some patients fail to derive benefit or even worsen. Hence, we developed and validated a radiomics model for predicting the response to bevacizumab in patients with brain necrosis after radiotherapy. EXPERIMENTAL
DESIGN: A total of 149 patients (with 194 brain lesions; 101, 51, and 42 in the training, internal, and external validation sets, respectively) receiving bevacizumab were enrolled. In total, 1,301 radiomic features were extracted from the pretreatment MRI images of each lesion. In the training set, a radiomics signature was constructed using the least absolute shrinkage and selection operator algorithm. Multivariable logistic regression analysis was then used to develop a radiomics model incorporated in the radiomics signature and independent clinical predictors. The performance of the model was assessed by its discrimination, calibration, and clinical usefulness with internal and external validation.
RESULTS: The radiomics signature consisted of 18 selected features and showed good discrimination performance. The model, which integrates the radiomics signature, the interval between radiotherapy and diagnosis of brain necrosis, and the interval between diagnosis of brain necrosis and treatment with bevacizumab, showed favorable calibration and discrimination in the training set (AUC 0.916). These findings were confirmed in the validation sets (AUC 0.912 and 0.827, respectively). Decision curve analysis confirmed the clinical utility of the model.
CONCLUSIONS: The presented radiomics model, available as an online calculator, can serve as a user-friendly tool for individualized prediction of the response to bevacizumab in patients with brain necrosis after radiotherapy. ©2020 American Association for Cancer Research.

Entities:  

Year:  2020        PMID: 32727886     DOI: 10.1158/1078-0432.CCR-20-1264

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


  9 in total

Review 1.  Radiomics for precision medicine in glioblastoma.

Authors:  Kiran Aftab; Faiqa Binte Aamir; Saad Mallick; Fatima Mubarak; Whitney B Pope; Tom Mikkelsen; Jack P Rock; Syed Ather Enam
Journal:  J Neurooncol       Date:  2022-01-12       Impact factor: 4.130

Review 2.  Radiation myelopathy following stereotactic body radiation therapy for spine metastases.

Authors:  Wee Loon Ong; Shun Wong; Hany Soliman; Sten Myrehaug; Chia-Lin Tseng; Jay Detsky; Zain Husain; Pejman Maralani; Lijun Ma; Simon S Lo; Arjun Sahgal
Journal:  J Neurooncol       Date:  2022-06-23       Impact factor: 4.506

Review 3.  Review of Radiomics- and Dosiomics-based Predicting Models for Rectal Cancer.

Authors:  Yun Qin; Li-Hua Zhu; Wei Zhao; Jun-Jie Wang; Hao Wang
Journal:  Front Oncol       Date:  2022-08-09       Impact factor: 5.738

Review 4.  How Machine Learning is Powering Neuroimaging to Improve Brain Health.

Authors:  Nalini M Singh; Jordan B Harrod; Sandya Subramanian; Mitchell Robinson; Ken Chang; Suheyla Cetin-Karayumak; Adrian Vasile Dalca; Simon Eickhoff; Michael Fox; Loraine Franke; Polina Golland; Daniel Haehn; Juan Eugenio Iglesias; Lauren J O'Donnell; Yangming Ou; Yogesh Rathi; Shan H Siddiqi; Haoqi Sun; M Brandon Westover; Susan Whitfield-Gabrieli; Randy L Gollub
Journal:  Neuroinformatics       Date:  2022-03-28

5.  Bevacizumab Combined with Corticosteroids Does Not Improve the Clinical Outcome of Nasopharyngeal Carcinoma Patients With Radiation-Induced Brain Necrosis.

Authors:  Honghong Li; Xiaoming Rong; Weihan Hu; Yuhua Yang; Ming Lei; Wenjie Wen; Zongwei Yue; Xiaolong Huang; Melvin L K Chua; Yi Li; Jinhua Cai; Lei He; Dong Pan; Jinping Cheng; Yaxuan Pi; Ruiqi Xue; Yongteng Xu; Yamei Tang
Journal:  Front Oncol       Date:  2021-09-28       Impact factor: 6.244

6.  Multiparametric radiomic tissue signature and machine learning for distinguishing radiation necrosis from tumor progression after stereotactic radiosurgery.

Authors:  Xuguang Chen; Vishwa S Parekh; Luke Peng; Michael D Chan; Kristin J Redmond; Michael Soike; Emory McTyre; Doris Lin; Michael A Jacobs; Lawrence R Kleinberg
Journal:  Neurooncol Adv       Date:  2021-10-25

7.  Analysis of EPID Transmission Fluence Maps Using Machine Learning Models and CNN for Identifying Position Errors in the Treatment of GO Patients.

Authors:  Guyu Dai; Xiangbin Zhang; Wenjie Liu; Zhibin Li; Guangyu Wang; Yaxin Liu; Qing Xiao; Lian Duan; Jing Li; Xinyu Song; Guangjun Li; Sen Bai
Journal:  Front Oncol       Date:  2021-09-14       Impact factor: 6.244

8.  Building reliable radiomic models using image perturbation.

Authors:  Xinzhi Teng; Jiang Zhang; Alex Zwanenburg; Jiachen Sun; Yuhua Huang; Saikit Lam; Yuanpeng Zhang; Bing Li; Ta Zhou; Haonan Xiao; Chenyang Liu; Wen Li; Xinyang Han; Zongrui Ma; Tian Li; Jing Cai
Journal:  Sci Rep       Date:  2022-06-16       Impact factor: 4.996

Review 9.  Machine Learning and Radiomics Applications in Esophageal Cancers Using Non-Invasive Imaging Methods-A Critical Review of Literature.

Authors:  Chen-Yi Xie; Chun-Lap Pang; Benjamin Chan; Emily Yuen-Yuen Wong; Qi Dou; Varut Vardhanabhuti
Journal:  Cancers (Basel)       Date:  2021-05-19       Impact factor: 6.639

  9 in total

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