Literature DB >> 32092710

Deep learning-based radiomic features for improving neoadjuvant chemoradiation response prediction in locally advanced rectal cancer.

Jie Fu1, Xinran Zhong, Ning Li, Ritchell Van Dams, John Lewis, Kyunghyun Sung, Ann C Raldow, Jing Jin, X Sharon Qi.   

Abstract

Radiomic features achieve promising results in cancer diagnosis, treatment response prediction, and survival prediction. Our goal is to compare the handcrafted (explicitly designed) and deep learning (DL)-based radiomic features extracted from pre-treatment diffusion-weighted magnetic resonance images (DWIs) for predicting neoadjuvant chemoradiation treatment (nCRT) response in patients with locally advanced rectal cancer (LARC). 43 Patients receiving nCRT were included. All patients underwent DWIs before nCRT and total mesorectal excision surgery 6-12 weeks after completion of nCRT. Gross tumor volume (GTV) contours were drawn by an experienced radiation oncologist on DWIs. The patient-cohort was split into the responder group (n = 22) and the non-responder group (n = 21) based on the post-nCRT response assessed by postoperative pathology, MRI or colonoscopy. Handcrafted and DL-based features were extracted from the apparent diffusion coefficient (ADC) map of the DWI using conventional computer-aided diagnosis methods and a pre-trained convolution neural network, respectively. Least absolute shrinkage and selection operator (LASSO)-logistic regression models were constructed using extracted features for predicting treatment response. The model performance was evaluated with repeated 20 times stratified 4-fold cross-validation using receiver operating characteristic (ROC) curves and compared using the corrected paired t-test. The model built with handcrafted features achieved the mean area under the ROC curve (AUC) of 0.64, while the one built with DL-based features yielded the mean AUC of 0.73. The corrected paired t-test on AUC showed P-value < 0.05. DL-based features extracted from pre-treatment DWIs achieved significantly better classification performance compared with handcrafted features for predicting nCRT response in patients with LARC.

Entities:  

Year:  2020        PMID: 32092710     DOI: 10.1088/1361-6560/ab7970

Source DB:  PubMed          Journal:  Phys Med Biol        ISSN: 0031-9155            Impact factor:   3.609


  9 in total

1.  Studying local tumour heterogeneity on MRI and FDG-PET/CT to predict response to neoadjuvant chemoradiotherapy in rectal cancer.

Authors:  Niels W Schurink; Simon R van Kranen; Maaike Berbee; Wouter van Elmpt; Frans C H Bakers; Sander Roberti; Joost J M van Griethuysen; Lisa A Min; Max J Lahaye; Monique Maas; Geerard L Beets; Regina G H Beets-Tan; Doenja M J Lambregts
Journal:  Eur Radiol       Date:  2021-02-10       Impact factor: 5.315

Review 2.  A narrative review on current imaging applications of artificial intelligence and radiomics in oncology: focus on the three most common cancers.

Authors:  Simone Vicini; Chandra Bortolotto; Marco Rengo; Daniela Ballerini; Davide Bellini; Iacopo Carbone; Lorenzo Preda; Andrea Laghi; Francesca Coppola; Lorenzo Faggioni
Journal:  Radiol Med       Date:  2022-06-30       Impact factor: 6.313

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.  Machine Learning Algorithms for Predicting Surgical Outcomes after Colorectal Surgery: A Systematic Review.

Authors:  Mustafa Bektaş; Jurriaan B Tuynman; Jaime Costa Pereira; George L Burchell; Donald L van der Peet
Journal:  World J Surg       Date:  2022-09-15       Impact factor: 3.282

5.  Deep Learning Model for Predicting the Pathological Complete Response to Neoadjuvant Chemoradiotherapy of Locally Advanced Rectal Cancer.

Authors:  Xiaoying Lou; Niyun Zhou; Lili Feng; Zhenhui Li; Yuqi Fang; Xinjuan Fan; Yihong Ling; Hailing Liu; Xuan Zou; Jing Wang; Junzhou Huang; Jingping Yun; Jianhua Yao; Yan Huang
Journal:  Front Oncol       Date:  2022-06-08       Impact factor: 5.738

Review 6.  Rectal MRI radiomics for predicting pathological complete response: Where we are.

Authors:  Joao Miranda; Gary Xia Vern Tan; Maria Clara Fernandes; Onur Yildirim; John A Sims; Jose de Arimateia Batista Araujo-Filho; Felipe Augusto de M Machado; Antonildes N Assuncao-Jr; Cesar Higa Nomura; Natally Horvat
Journal:  Clin Imaging       Date:  2021-11-16       Impact factor: 2.420

7.  An Automatic Deep Learning-Based Workflow for Glioblastoma Survival Prediction Using Preoperative Multimodal MR Images: A Feasibility Study.

Authors:  Jie Fu; Kamal Singhrao; Xinran Zhong; Yu Gao; Sharon X Qi; Yingli Yang; Dan Ruan; John H Lewis
Journal:  Adv Radiat Oncol       Date:  2021-07-01

8.  A Deep Learning Model to Predict the Response to Neoadjuvant Chemoradiotherapy by the Pretreatment Apparent Diffusion Coefficient Images of Locally Advanced Rectal Cancer.

Authors:  Hai-Tao Zhu; Xiao-Yan Zhang; Yan-Jie Shi; Xiao-Ting Li; Ying-Shi Sun
Journal:  Front Oncol       Date:  2020-10-29       Impact factor: 6.244

9.  Prediction of Neoadjuvant Chemoradiotherapy Response in Rectal Cancer with Metric Learning Using Pretreatment 18F-Fluorodeoxyglucose Positron Emission Tomography.

Authors:  Kuo-Chen Wu; Shang-Wen Chen; Te-Chun Hsieh; Kuo-Yang Yen; Kin-Man Law; Yu-Chieh Kuo; Ruey-Feng Chang; Chia-Hung Kao
Journal:  Cancers (Basel)       Date:  2021-12-17       Impact factor: 6.639

  9 in total

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