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Radiomic Features of Primary Rectal Cancers on Baseline T 2 ‐Weighted MRI Are Associated With Pathologic Complete Response to Neoadjuvant Chemoradiation: A Multisite Study
Author(s) -
Antunes Jacob T.,
Ofshteyn Asya,
Bera Kaustav,
Wang Erik Y.,
Brady Justin T.,
Willis Joseph E.,
Friedman Kenneth A.,
Marderstein Eric L.,
Kalady Matthew F.,
Stein Sharon L.,
Purysko Andrei S.,
Paspulati Rajmohan,
Gollamudi Jayakrishna,
Madabhushi Anant,
Viswanath Satish E.
Publication year - 2020
Publication title -
journal of magnetic resonance imaging
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.563
H-Index - 160
eISSN - 1522-2586
pISSN - 1053-1807
DOI - 10.1002/jmri.27140
Subject(s) - medicine , radiomics , random forest , neoadjuvant therapy , colorectal cancer , radiology , receiver operating characteristic , magnetic resonance imaging , feature selection , nuclear medicine , cancer , artificial intelligence , computer science , breast cancer
Background Twenty‐five percent of rectal adenocarcinoma patients achieve pathologic complete response (pCR) to neoadjuvant chemoradiation and could avoid proctectomy. However, pretreatment clinical or imaging markers are lacking in predicting response to chemoradiation. Radiomic texture features from MRI have recently been associated with therapeutic response in other cancers. Purpose To construct a radiomics texture model based on pretreatment MRI for identifying patients who will achieve pCR to neoadjuvant chemoradiation in rectal cancer, including validation across multiple scanners and sites. Study Type Retrospective. Subjects In all, 104 rectal cancer patients staged with MRI prior to long‐course chemoradiation followed by proctectomy; curated from three institutions. Field Strength/Sequence 1.5T–3.0T, axial higher resolution T 2 ‐weighted turbo spin echo sequence. Assessment Pathologic response was graded on postsurgical specimens. In total, 764 radiomic features were extracted from single‐slice sections of rectal tumors on processed pretreatment T 2 ‐weighted MRI. Statistical Tests Three feature selection schemes were compared for identifying radiomic texture descriptors associated with pCR via a discovery cohort (one site, N = 60, cross‐validation). The top‐selected radiomic texture features were used to train and validate a random forest classifier model for pretreatment identification of pCR (two external sites, N = 44). Model performance was evaluated via area under the curve (AUC), accuracy, sensitivity, and specificity. Results Laws kernel responses and gradient organization features were most associated with pCR ( P ≤ 0.01); as well as being commonly identified across all feature selection schemes. The radiomics model yielded a discovery AUC of 0.699 ± 0.076 and a hold‐out validation AUC of 0.712 with 70.5% accuracy (70.0% sensitivity, 70.6% specificity) in identifying pCR. Radiomic texture features were resilient to variations in magnetic field strength as well as being consistent between two different expert annotations. Univariate analysis revealed no significant associations of baseline clinicopathologic or MRI findings with pCR ( P = 0.07–0.96). Data Conclusion Radiomic texture features from pretreatment MRIs may enable early identification of potential pCR to neoadjuvant chemoradiation, as well as generalize across sites. Level of Evidence 3 Technical Efficacy Stage 2