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MRI-based delta-radiomics predicts pathologic complete response in high-grade soft-tissue sarcoma patients treated with neoadjuvant therapy

Authors :
Peeken, J.C.
Asadpour, R.
Specht, K.
Chen, E.Y.
Klymenko, O.
Akinkuoroye, V.
Hippe, D.S.
Spraker, M.B.
Schaub, S.K.
Dapper, H.
Knebel, C.
Mayr, N.A.
Gersing, A.S.
Woodruff, H.C.
Lambin, P.
Nyflot, M.J.
Combs, S.E.
Peeken, J.C.
Asadpour, R.
Specht, K.
Chen, E.Y.
Klymenko, O.
Akinkuoroye, V.
Hippe, D.S.
Spraker, M.B.
Schaub, S.K.
Dapper, H.
Knebel, C.
Mayr, N.A.
Gersing, A.S.
Woodruff, H.C.
Lambin, P.
Nyflot, M.J.
Combs, S.E.
Source :
Radiotherapy and Oncology vol.164 (2021) date: 2021-11-01 p.73-82 [ISSN 0167-8140]
Publication Year :
2021

Abstract

Purpose: In high-grade soft-tissue sarcomas (STS) the standard of care encompasses multimodal therapy regimens. While there is a growing body of evidence for prognostic pretreatment radiomic models, we hypothesized that temporal changes in radiomic features following neoadjuvant treatment ("delta-radio mics") may be able to predict the pathological complete response (pCR). Methods: MRI scans (T1-weighted with fat-saturation and contrast-enhancement (T1FSGd) and T2 weighted with fat-saturation (T2FS)) of patients with STS of the extremities and trunk treated with neoadjuvant therapy were gathered from two independent institutions (training: 103, external testing: 53 patients). pCR was defined as <5% viable cells. After segmentation and preprocessing, 105 radiomic features were extracted. Delta-radiomic features were calculated by subtraction of features derived from MRI scans obtained before and after neoadjuvant therapy. After feature reduction, machine learning modeling was performed in 100 iterations of 3-fold nested cross-validation. Delta-radiomic models were compared with single timepoint models in the testing cohort. Results: The combined delta-radiomic models achieved the best area under the receiver operating characteristic curve (AUC) of 0.75. Pre-therapeutic tumor volume was the best conventional predictor (AUC 0.70). The T2FS-based delta-radiomic model had the most balanced classification performance with a balanced accuracy of 0.69. Delta-radiomic models achieved better reproducibility than single timepoint radiomic models, RECIST or the peri-therapeutic volume change. Delta-radiomic models were significantly associated with survival in multivariate Cox regression. Conclusion: This exploratory analysis demonstrated that MRI-based delta-radiomics improves prediction of pCR over tumor volume and RECIST. Delta-radiomics may one day function as a biomarker for personalized treatment adaptations. (c) 2021 Elsevier B.V. All rights reserved. Radiotherapy and

Details

Database :
OAIster
Journal :
Radiotherapy and Oncology vol.164 (2021) date: 2021-11-01 p.73-82 [ISSN 0167-8140]
Notes :
DOI: 10.1016/j.radonc.2021.08.023, English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1363324886
Document Type :
Electronic Resource