8 results on '"Reinius, Marika"'
Search Results
2. Integrated radiogenomics models predict response to neoadjuvant chemotherapy in high grade serous ovarian cancer.
- Author
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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, and Zerunian, Marta
- Subjects
NEOADJUVANT chemotherapy ,OVARIAN cancer ,MACHINE learning ,RADIOMICS ,DIAGNOSTIC imaging - 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. Response to treatment in high grade serous ovarian carcinoma (HGSOC) is highly variable. Here, the authors leverage a radiogenomic model to predict neoadjuvant chemotherapy response in HGSOC, including clinical data, medical imaging, and blood-based biomarkers such as CA-125 and ctDNA features. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
3. Clinically Interpretable Radiomics-Based Prediction of Histopathologic Response to Neoadjuvant Chemotherapy in High-Grade Serous Ovarian Carcinoma.
- Author
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Rundo, Leonardo, Beer, Lucian, Escudero Sanchez, Lorena, Crispin-Ortuzar, Mireia, Reinius, Marika, McCague, Cathal, Sahin, Hilal, Bura, Vlad, Pintican, Roxana, Zerunian, Marta, Ursprung, Stephan, Allajbeu, Iris, Addley, Helen, Martin-Gonzalez, Paula, Buddenkotte, Thomas, Singh, Naveena, Sahdev, Anju, Funingana, Ionut-Gabriel, Jimenez-Linan, Mercedes, and Markowetz, Florian
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NEOADJUVANT chemotherapy ,RADIOMICS ,COMPUTED tomography ,ABDOMINAL surgery ,CARCINOMA ,OVARIAN cancer - Abstract
Background: Pathological response to neoadjuvant treatment for patients with high-grade serous ovarian carcinoma (HGSOC) is assessed using the chemotherapy response score (CRS) for omental tumor deposits. The main limitation of CRS is that it requires surgical sampling after initial neoadjuvant chemotherapy (NACT) treatment. Earlier and non-invasive response predictors could improve patient stratification. We developed computed tomography (CT) radiomic measures to predict neoadjuvant response before NACT using CRS as a gold standard. Methods: Omental CT-based radiomics models, yielding a simplified fully interpretable radiomic signature, were developed using Elastic Net logistic regression and compared to predictions based on omental tumor volume alone. Models were developed on a single institution cohort of neoadjuvant-treated HGSOC (n = 61; 41% complete response to NCT) and tested on an external test cohort (n = 48; 21% complete response). Results: The performance of the comprehensive radiomics models and the fully interpretable radiomics model was significantly higher than volume-based predictions of response in both the discovery and external test sets when assessed using G-mean (geometric mean of sensitivity and specificity) and NPV, indicating high generalizability and reliability in identifying non-responders when using radiomics. The performance of a fully interpretable model was similar to that of comprehensive radiomics models. Conclusions: CT-based radiomics allows for predicting response to NACT in a timely manner and without the need for abdominal surgery. Adding pre-NACT radiomics to volumetry improved model performance for predictions of response to NACT in HGSOC and was robust to external testing. A radiomic signature based on five robust predictive features provides improved clinical interpretability and may thus facilitate clinical acceptance and application. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
4. Can integrative biomarker approaches improve prediction of platinum and PARP inhibitor response in ovarian cancer?
- Author
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Funingana, Ionut-Gabriel, Reinius, Marika A.V., Petrillo, Angelica, Ang, Joo Ern, and Brenton, James D.
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OVARIAN cancer , *POLY(ADP-ribose) polymerase , *OVARIAN epithelial cancer , *BIOMARKERS , *INDIVIDUALIZED medicine - Abstract
Epithelial ovarian carcinoma (EOC) encompasses distinct histological, molecular and genomic entities that determine intrinsic sensitivity to platinum-based chemotherapy. Current management of each subtype is determined by factors including tumour grade and stage, but only a small number of biomarkers can predict treatment response. The recent incorporation of PARP inhibitors into routine clinical practice has underscored the need to personalise ovarian cancer treatment based on tumour biology. In this article, we review the strengths and limitations of predictive biomarkers in current clinical practice and highlight integrative strategies that may inform the development of future personalised medicine programs and composite biomarkers. [ABSTRACT FROM AUTHOR]
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- 2021
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- View/download PDF
5. Ultrasound-guided targeted biopsies of CT-based radiomic tumour habitats: technical development and initial experience in metastatic ovarian cancer.
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Beer, Lucian, Martin-Gonzalez, Paula, Delgado-Ortet, Maria, Reinius, Marika, Rundo, Leonardo, Woitek, Ramona, Ursprung, Stephan, Escudero, Lorena, Sahin, Hilal, Funingana, Ionut-Gabriel, Ang, Joo-Ern, Jimenez-Linan, Mercedes, Lawton, Tristan, Phadke, Gaurav, Davey, Sally, Nguyen, Nghia Q., Markowetz, Florian, Brenton, James D., Crispin-Ortuzar, Mireia, and Addley, Helen
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OVARIAN cancer ,COMPUTED tomography ,METASTASIS ,GAUSSIAN mixture models ,HABITATS ,ULTRASONIC imaging - Abstract
Purpose: To develop a precision tissue sampling technique that uses computed tomography (CT)–based radiomic tumour habitats for ultrasound (US)-guided targeted biopsies that can be integrated in the clinical workflow of patients with high-grade serous ovarian cancer (HGSOC). Methods: Six patients with suspected HGSOC scheduled for US-guided biopsy before starting neoadjuvant chemotherapy were included in this prospective study from September 2019 to February 2020. The tumour segmentation was performed manually on the pre-biopsy contrast-enhanced CT scan. Spatial radiomic maps were used to identify tumour areas with similar or distinct radiomic patterns, and tumour habitats were identified using the Gaussian mixture modelling. CT images with superimposed habitat maps were co-registered with US images by means of a landmark-based rigid registration method for US-guided targeted biopsies. The dice similarity coefficient (DSC) was used to assess the tumour-specific CT/US fusion accuracy. Results: We successfully co-registered CT-based radiomic tumour habitats with US images in all patients. The median time between CT scan and biopsy was 21 days (range 7–30 days). The median DSC for tumour-specific CT/US fusion accuracy was 0.53 (range 0.79 to 0.37). The CT/US fusion accuracy was high for the larger pelvic tumours (DSC: 0.76–0.79) while it was lower for the smaller omental metastases (DSC: 0.37–0.53). Conclusion: We developed a precision tissue sampling technique that uses radiomic habitats to guide in vivo biopsies using CT/US fusion and that can be seamlessly integrated in the clinical routine for patients with HGSOC. Key Points: • We developed a prevision tissue sampling technique that co-registers CT-based radiomics–based tumour habitats with US images. • The CT/US fusion accuracy was high for the larger pelvic tumours (DSC: 0.76–0.79) while it was lower for the smaller omental metastases (DSC: 0.37–0.53). [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
6. Integrative radiogenomics for virtual biopsy and treatment monitoring in ovarian cancer
- Author
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Martin-Gonzalez, Paula, Crispin-Ortuzar, Mireia, Rundo, Leonardo, Delgado-Ortet, Maria, Reinius, Marika, Beer, Lucian, Woitek, Ramona, Ursprung, Stephan, Addley, Helen, Brenton, James D., Markowetz, Florian, and Sala, Evis
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Radiomics ,Ovarian cancer ,Radiogenomics ,Tumour habitats ,Critical Review ,3. Good health ,Virtual biopsies - Abstract
Background: Ovarian cancer survival rates have not changed in the last 20 years. The majority of cases are High-grade serous ovarian carcinomas (HGSOCs), which are typically diagnosed at an advanced stage with multiple metastatic lesions. Taking biopsies of all sites of disease is infeasible, which challenges the implementation of stratification tools based on molecular profiling. Main body: In this review, we describe how these challenges might be overcome by integrating quantitative features extracted from medical imaging with the analysis of paired genomic profiles, a combined approach called radiogenomics, to generate virtual biopsies. Radiomic studies have been used to model different imaging phenotypes, and some radiomic signatures have been associated with paired molecular profiles to monitor spatiotemporal changes in the heterogeneity of tumours. We describe different strategies to integrate radiogenomic information in a global and local manner, the latter by targeted sampling of tumour habitats, defined as regions with distinct radiomic phenotypes. Conclusion: Linking radiomics and biological correlates in a targeted manner could potentially improve the clinical management of ovarian cancer. Radiogenomic signatures could be used to monitor tumours during the course of therapy, offering additional information for clinical decision making. In summary, radiogenomics may pave the way to virtual biopsies and treatment monitoring tools for integrative tumour analysis.
7. Integrative radiogenomics for virtual biopsy and treatment monitoring in ovarian cancer
- Author
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Martin-Gonzalez, Paula, Crispin-Ortuzar, Mireia, Rundo, Leonardo, Delgado-Ortet, Maria, Reinius, Marika, Beer, Lucian, Woitek, Ramona, Ursprung, Stephan, Addley, Helen, Brenton, James D, Markowetz, Florian, and Sala, Evis
- Subjects
Radiomics ,Ovarian cancer ,Radiogenomics ,Tumour habitats ,3. Good health ,Virtual biopsies - Abstract
BACKGROUND: Ovarian cancer survival rates have not changed in the last 20 years. The majority of cases are High-grade serous ovarian carcinomas (HGSOCs), which are typically diagnosed at an advanced stage with multiple metastatic lesions. Taking biopsies of all sites of disease is infeasible, which challenges the implementation of stratification tools based on molecular profiling. MAIN BODY: In this review, we describe how these challenges might be overcome by integrating quantitative features extracted from medical imaging with the analysis of paired genomic profiles, a combined approach called radiogenomics, to generate virtual biopsies. Radiomic studies have been used to model different imaging phenotypes, and some radiomic signatures have been associated with paired molecular profiles to monitor spatiotemporal changes in the heterogeneity of tumours. We describe different strategies to integrate radiogenomic information in a global and local manner, the latter by targeted sampling of tumour habitats, defined as regions with distinct radiomic phenotypes. CONCLUSION: Linking radiomics and biological correlates in a targeted manner could potentially improve the clinical management of ovarian cancer. Radiogenomic signatures could be used to monitor tumours during the course of therapy, offering additional information for clinical decision making. In summary, radiogenomics may pave the way to virtual biopsies and treatment monitoring tools for integrative tumour analysis.
8. Integrative radiogenomics for virtual biopsy and treatment monitoring in ovarian cancer
- Author
-
Martin-Gonzalez, Paula, Crispin-Ortuzar, Mireia, Rundo, Leonardo, Delgado-Ortet, Maria, Reinius, Marika, Beer, Lucian, Woitek, Ramona, Ursprung, Stephan, Addley, Helen, Brenton, James D., Markowetz, Florian, and Sala, Evis
- Subjects
Radiomics ,Ovarian cancer ,Radiogenomics ,Tumour habitats ,Critical Review ,3. Good health ,Virtual biopsies - Abstract
Background: Ovarian cancer survival rates have not changed in the last 20 years. The majority of cases are High-grade serous ovarian carcinomas (HGSOCs), which are typically diagnosed at an advanced stage with multiple metastatic lesions. Taking biopsies of all sites of disease is infeasible, which challenges the implementation of stratification tools based on molecular profiling. Main body: In this review, we describe how these challenges might be overcome by integrating quantitative features extracted from medical imaging with the analysis of paired genomic profiles, a combined approach called radiogenomics, to generate virtual biopsies. Radiomic studies have been used to model different imaging phenotypes, and some radiomic signatures have been associated with paired molecular profiles to monitor spatiotemporal changes in the heterogeneity of tumours. We describe different strategies to integrate radiogenomic information in a global and local manner, the latter by targeted sampling of tumour habitats, defined as regions with distinct radiomic phenotypes. Conclusion: Linking radiomics and biological correlates in a targeted manner could potentially improve the clinical management of ovarian cancer. Radiogenomic signatures could be used to monitor tumours during the course of therapy, offering additional information for clinical decision making. In summary, radiogenomics may pave the way to virtual biopsies and treatment monitoring tools for integrative tumour analysis.
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