Literature DB >> 32697964

Reinventing radiation therapy with machine learning and imaging bio-markers (radiomics): State-of-the-art, challenges and perspectives.

Laurent Dercle1, Theophraste Henry2, Alexandre Carré3, Nikos Paragios4, Eric Deutsch3, Charlotte Robert5.   

Abstract

Radiation therapy is a pivotal cancer treatment that has significantly progressed over the last decade due to numerous technological breakthroughs. Imaging is now playing a critical role on deployment of the clinical workflow, both for treatment planning and treatment delivery. Machine-learning analysis of predefined features extracted from medical images, i.e. radiomics, has emerged as a promising clinical tool for a wide range of clinical problems addressing drug development, clinical diagnosis, treatment selection and implementation as well as prognosis. Radiomics denotes a paradigm shift redefining medical images as a quantitative asset for data-driven precision medicine. The adoption of machine-learning in a clinical setting and in particular of radiomics features requires the selection of robust, representative and clinically interpretable biomarkers that are properly evaluated on a representative clinical data set. To be clinically relevant, radiomics must not only improve patients' management with great accuracy but also be reproducible and generalizable. Hence, this review explores the existing literature and exposes its potential technical caveats, such as the lack of quality control, standardization, sufficient sample size, type of data collection, and external validation. Based upon the analysis of 165 original research studies based on PET, CT-scan, and MRI, this review provides an overview of new concepts, and hypotheses generating findings that should be validated. In particular, it describes evolving research trends to enhance several clinical tasks such as prognostication, treatment planning, response assessment, prediction of recurrence/relapse, and prediction of toxicity. Perspectives regarding the implementation of an AI-based radiotherapy workflow are presented.
Copyright © 2020 Elsevier Inc. All rights reserved.

Entities:  

Keywords:  CT; MR; Machine-learning; PET; Radiation therapy; Radiomics

Year:  2020        PMID: 32697964     DOI: 10.1016/j.ymeth.2020.07.003

Source DB:  PubMed          Journal:  Methods        ISSN: 1046-2023            Impact factor:   3.608


  9 in total

Review 1.  Challenges in ensuring the generalizability of image quantitation methods for MRI.

Authors:  Kathryn E Keenan; Jana G Delfino; Kalina V Jordanova; Megan E Poorman; Prathyush Chirra; Akshay S Chaudhari; Bettina Baessler; Jessica Winfield; Satish E Viswanath; Nandita M deSouza
Journal:  Med Phys       Date:  2021-09-29       Impact factor: 4.506

Review 2.  Imaging approaches and radiomics: toward a new era of ultraprecision radioimmunotherapy?

Authors:  Roger Sun; Théophraste Henry; Adrien Laville; Alexandre Carré; Anthony Hamaoui; Sophie Bockel; Ines Chaffai; Antonin Levy; Cyrus Chargari; Charlotte Robert; Eric Deutsch
Journal:  J Immunother Cancer       Date:  2022-07       Impact factor: 12.469

Review 3.  [Magnetic-resonance-guided radiotherapy : The beginning of a new era in radiation oncology?]

Authors:  P Hoegen; C K Spindeldreier; C Buchele; C Rippke; S Regnery; F Weykamp; S Klüter; J Debus; J Hörner-Rieber
Journal:  Radiologe       Date:  2021-01       Impact factor: 0.635

Review 4.  Understanding Sources of Variation to Improve the Reproducibility of Radiomics.

Authors:  Binsheng Zhao
Journal:  Front Oncol       Date:  2021-03-29       Impact factor: 6.244

5.  Medical image analysis based on deep learning approach.

Authors:  Muralikrishna Puttagunta; S Ravi
Journal:  Multimed Tools Appl       Date:  2021-04-06       Impact factor: 2.757

Review 6.  Deep Learning With Radiomics for Disease Diagnosis and Treatment: Challenges and Potential.

Authors:  Xingping Zhang; Yanchun Zhang; Guijuan Zhang; Xingting Qiu; Wenjun Tan; Xiaoxia Yin; Liefa Liao
Journal:  Front Oncol       Date:  2022-02-17       Impact factor: 6.244

Review 7.  Artificial intelligence and radiomics: fundamentals, applications, and challenges in immunotherapy.

Authors:  Laurent Dercle; Jeremy McGale; Shawn Sun; Aurelien Marabelle; Randy Yeh; Eric Deutsch; Fatima-Zohra Mokrane; Michael Farwell; Samy Ammari; Heiko Schoder; Binsheng Zhao; Lawrence H Schwartz
Journal:  J Immunother Cancer       Date:  2022-09       Impact factor: 12.469

8.  Investigation of radiomics based intra-patient inter-tumor heterogeneity and the impact of tumor subsampling strategies.

Authors:  T Henry; R Sun; M Lerousseau; T Estienne; C Robert; B Besse; C Robert; N Paragios; E Deutsch
Journal:  Sci Rep       Date:  2022-10-14       Impact factor: 4.996

9.  Convolutional Neural Network Addresses the Confounding Impact of CT Reconstruction Kernels on Radiomics Studies.

Authors:  Jin H Yoon; Shawn H Sun; Manjun Xiao; Hao Yang; Lin Lu; Yajun Li; Lawrence H Schwartz; Binsheng Zhao
Journal:  Tomography       Date:  2021-12-03
  9 in total

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