Literature DB >> 32160109

Radiomics Method for the Differential Diagnosis of Radionecrosis Versus Progression after Fractionated Stereotactic Body Radiotherapy for Brain Oligometastasis.

Liza Hettal1, Anais Stefani2, Julia Salleron3, Florent Courrech2, Isabelle Behm-Ansmant1, Jean Marc Constans4, Guillaume Gauchotte5,6, Guillaume Vogin1,2.   

Abstract

Stereotactic radiotherapy (SRT) is recommended for treatment of brain oligometastasis (BoM) in patients with controlled primary disease. Where contrast enhancement enlargement occurs during follow-up, distinguishing between radionecrosis and progression presents a critical challenge. Without pathological confirmation, decision-making may be inappropriate and delayed. Quantitative imaging features extracted from routinely performed examinations are of interest in potentially addressing this problem. We explored the added value of the radiomics method for the differential diagnosis of these two entities. Twenty patients who received SRT for BoM, from any primary location, were included (8 radionecrosis, 12 progressions, pathologically confirmed). We assessed the clinical relevance of 1,766 radiomics features, extracted using IBEX software, from the first T1-weighted postcontrast magnetic resonance imaging (MRI) after SRT showing a lesion modification. We evaluated seven feature-selection methods and 12 classification methods in terms of respective predictive performance. The classification accuracy was measured using Cohen's kappa after leave-one-out cross-validation. In this work, the best predictive power reached was a Cohen's kappa of 0.68 (overall accuracy of 85%), expressing a strong agreement between the algorithm prediction and the histological gold standard. Prediction accuracy was 75% for radionecrosis, and 91% for progression. The area under a curve reached 0.83 using a bagging algorithm trained with the chi-square score features set. These findings indicated that the radiomics method is able to discriminate radionecrosis from progression in an accurate, early and noninvasive way. This promising study is a proof of concept, preceding a larger prospective study for defining a robust model to support decision-making in BoM. In summary, distinguishing between radionecrosis and progression is challenging without pathology. We built a classification model based on imaging data and machine learning. Using this model, we were able predict progression and radionecrosis in, respectively, 91% and 75% of cases.

Entities:  

Year:  2020        PMID: 32160109     DOI: 10.1667/RR15517.1

Source DB:  PubMed          Journal:  Radiat Res        ISSN: 0033-7587            Impact factor:   2.841


  5 in total

Review 1.  Machine Learning-Based Radiomics in Neuro-Oncology.

Authors:  Felix Ehret; David Kaul; Hans Clusmann; Daniel Delev; Julius M Kernbach
Journal:  Acta Neurochir Suppl       Date:  2022

Review 2.  Classification of true progression after radiotherapy of brain metastasis on MRI using artificial intelligence: a systematic review and meta-analysis.

Authors:  Hae Young Kim; Se Jin Cho; Leonard Sunwoo; Sung Hyun Baik; Yun Jung Bae; Byung Se Choi; Cheolkyu Jung; Jae Hyoung Kim
Journal:  Neurooncol Adv       Date:  2021-07-01

3.  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

Review 4.  Beyond Glioma: The Utility of Radiomic Analysis for Non-Glial Intracranial Tumors.

Authors:  Darius Kalasauskas; Michael Kosterhon; Naureen Keric; Oliver Korczynski; Andrea Kronfeld; Florian Ringel; Ahmed Othman; Marc A Brockmann
Journal:  Cancers (Basel)       Date:  2022-02-07       Impact factor: 6.639

5.  Radiomics-Based Detection of Radionecrosis Using Harmonized Multiparametric MRI.

Authors:  Clément Acquitter; Lucie Piram; Umberto Sabatini; Julia Gilhodes; Elizabeth Moyal Cohen-Jonathan; Soleakhena Ken; Benjamin Lemasson
Journal:  Cancers (Basel)       Date:  2022-01-07       Impact factor: 6.639

  5 in total

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