High grade serous ovarian carcinoma (HGSOC) is a highly heterogeneous disease that typically presents at an advanced, metastatic state. The multi-scale complexity of HGSOC is a major obstacle to predicting response to neoadjuvant chemotherapy (NACT) and understanding critical determinants of response. Here we present a framework to predict the response of HGSOC patients to NACT integrating baseline clinical, blood-based, and radiomic biomarkers extracted from all primary and metastatic lesions. We use an ensemble machine learning model trained to predict the change in total disease volume using data obtained at diagnosis (n = 72). The model is validated in an internal hold-out cohort (n = 20) and an independent external patient cohort (n = 42). In the external cohort the integrated radiomics model reduces the prediction error by 8% with respect to the clinical model, achieving an AUC of 0.78 for RECIST 1.1 classification compared to 0.47 for the clinical model. Our results emphasize the value of including radiomics data in integrative models of treatment response and provide methods for developing new biomarker-based clinical trials of NACT in HGSOC.

Integrated radiogenomics models predict response to neoadjuvant chemotherapy in high grade serous ovarian cancer / Crispin-Ortuzar, Mireia; Woitek, Ramona; Reinius, Marika A V; Moore, Elizabeth; Beer, Lucian; Bura, Vlad; Rundo, Leonardo; Mccague, Cathal; Ursprung, Stephan; Escudero Sanchez, Lorena; Martin-Gonzalez, Paula; Mouliere, Florent; Chandrananda, Dineika; Morris, James; Goranova, Teodora; Piskorz, Anna M; Singh, Naveena; Sahdev, Anju; Pintican, Roxana; Zerunian, Marta; Rosenfeld, Nitzan; Addley, Helen; Jimenez-Linan, Mercedes; Markowetz, Florian; Sala, Evis; Brenton, James D. - In: NATURE COMMUNICATIONS. - ISSN 2041-1723. - 14:1(2023), pp. 1-14. [10.1038/s41467-023-41820-7]

Integrated radiogenomics models predict response to neoadjuvant chemotherapy in high grade serous ovarian cancer

Zerunian, Marta
Data Curation
;
2023

Abstract

High grade serous ovarian carcinoma (HGSOC) is a highly heterogeneous disease that typically presents at an advanced, metastatic state. The multi-scale complexity of HGSOC is a major obstacle to predicting response to neoadjuvant chemotherapy (NACT) and understanding critical determinants of response. Here we present a framework to predict the response of HGSOC patients to NACT integrating baseline clinical, blood-based, and radiomic biomarkers extracted from all primary and metastatic lesions. We use an ensemble machine learning model trained to predict the change in total disease volume using data obtained at diagnosis (n = 72). The model is validated in an internal hold-out cohort (n = 20) and an independent external patient cohort (n = 42). In the external cohort the integrated radiomics model reduces the prediction error by 8% with respect to the clinical model, achieving an AUC of 0.78 for RECIST 1.1 classification compared to 0.47 for the clinical model. Our results emphasize the value of including radiomics data in integrative models of treatment response and provide methods for developing new biomarker-based clinical trials of NACT in HGSOC.
2023
ovarian cancer; predictive markers; cancer imaging
01 Pubblicazione su rivista::01a Articolo in rivista
Integrated radiogenomics models predict response to neoadjuvant chemotherapy in high grade serous ovarian cancer / Crispin-Ortuzar, Mireia; Woitek, Ramona; Reinius, Marika A V; Moore, Elizabeth; Beer, Lucian; Bura, Vlad; Rundo, Leonardo; Mccague, Cathal; Ursprung, Stephan; Escudero Sanchez, Lorena; Martin-Gonzalez, Paula; Mouliere, Florent; Chandrananda, Dineika; Morris, James; Goranova, Teodora; Piskorz, Anna M; Singh, Naveena; Sahdev, Anju; Pintican, Roxana; Zerunian, Marta; Rosenfeld, Nitzan; Addley, Helen; Jimenez-Linan, Mercedes; Markowetz, Florian; Sala, Evis; Brenton, James D. - In: NATURE COMMUNICATIONS. - ISSN 2041-1723. - 14:1(2023), pp. 1-14. [10.1038/s41467-023-41820-7]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1695385
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