| Literature DB >> 32875550 |
Valentina Giannini1,2, Samanta Rosati3, Arianna Defeudis1,2, Gabriella Balestra3, Lorenzo Vassallo4, Giovanni Cappello1, Simone Mazzetti1,2, Cristina De Mattia5, Francesco Rizzetto6, Alberto Torresin5,7, Andrea Sartore-Bianchi8,9, Salvatore Siena8,9, Angelo Vanzulli6,8, Francesco Leone10,11, Vittorina Zagonel12, Silvia Marsoni13, Daniele Regge1,2.
Abstract
The aim of our study was to develop and validate a machine learning algorithm to predict response of individual HER2-amplified colorectal cancer liver metastases (lmCRC) undergoing dual HER2-targeted therapy. Twenty-four radiomics features were extracted after 3D manual segmentation of 141 lmCRC on pretreatment portal CT scans of a cohort including 38 HER2-amplified patients; feature selection was then performed using genetic algorithms. lmCRC were classified as nonresponders (R-), if their largest diameter increased more than 10% at a CT scan performed after 3 months of treatment, responders (R+) otherwise. Sensitivity, specificity, negative (NPV) and positive (PPV) predictive values in correctly classifying individual lesion and overall patient response were assessed on a training dataset and then validated on a second dataset using a Gaussian naïve Bayesian classifier. Per-lesion sensitivity, specificity, NPV and PPV were 89%, 85%, 93%, 78% and 90%, 42%, 73%, 71% respectively in the testing and validation datasets. Per-patient sensitivity and specificity were 92% and 86%. Heterogeneous response was observed in 9 of 38 patients (24%). Five of nine patients were carriers of nonresponder lesions correctly classified as such by our radiomics signature, including four of seven harboring only one nonresponder lesion. The developed method has been proven effective in predicting behavior of individual metastases to targeted treatment in a cohort of HER2 amplified patients. The model accurately detects responder lesions and identifies nonresponder lesions in patients with heterogeneous response, potentially paving the way to multimodal treatment in selected patients. Further validation will be needed to confirm our findings.Entities:
Keywords: CT liver metastases; genetic algorithms; machine learning; prediction of response to therapy; radiomics
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Year: 2020 PMID: 32875550 DOI: 10.1002/ijc.33271
Source DB: PubMed Journal: Int J Cancer ISSN: 0020-7136 Impact factor: 7.396