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Deep Neural Networks and Machine Learning Radiomics Modelling for Prediction of Relapse in Mantle Cell Lymphoma

SIMPLE SUMMARY: Mantle cell lymphoma (MCL) is an aggressive lymphoid tumour with a poor prognosis. There exist no routine biomarkers for the early prediction of relapse. Our study compared the potential of radiomics-based machine learning and 3D deep learning models as non-invasive biomarkers to ris...

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Autores principales: Lisson, Catharina Silvia, Lisson, Christoph Gerhard, Mezger, Marc Fabian, Wolf, Daniel, Schmidt, Stefan Andreas, Thaiss, Wolfgang M., Tausch, Eugen, Beer, Ambros J., Stilgenbauer, Stephan, Beer, Meinrad, Goetz, Michael
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9028737/
https://www.ncbi.nlm.nih.gov/pubmed/35454914
http://dx.doi.org/10.3390/cancers14082008
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author Lisson, Catharina Silvia
Lisson, Christoph Gerhard
Mezger, Marc Fabian
Wolf, Daniel
Schmidt, Stefan Andreas
Thaiss, Wolfgang M.
Tausch, Eugen
Beer, Ambros J.
Stilgenbauer, Stephan
Beer, Meinrad
Goetz, Michael
author_facet Lisson, Catharina Silvia
Lisson, Christoph Gerhard
Mezger, Marc Fabian
Wolf, Daniel
Schmidt, Stefan Andreas
Thaiss, Wolfgang M.
Tausch, Eugen
Beer, Ambros J.
Stilgenbauer, Stephan
Beer, Meinrad
Goetz, Michael
author_sort Lisson, Catharina Silvia
collection PubMed
description SIMPLE SUMMARY: Mantle cell lymphoma (MCL) is an aggressive lymphoid tumour with a poor prognosis. There exist no routine biomarkers for the early prediction of relapse. Our study compared the potential of radiomics-based machine learning and 3D deep learning models as non-invasive biomarkers to risk-stratify MCL patients, thus promoting precision imaging in clinical oncology. ABSTRACT: Mantle cell lymphoma (MCL) is a rare lymphoid malignancy with a poor prognosis characterised by frequent relapse and short durations of treatment response. Most patients present with aggressive disease, but there exist indolent subtypes without the need for immediate intervention. The very heterogeneous behaviour of MCL is genetically characterised by the translocation t(11;14)(q13;q32), leading to Cyclin D1 overexpression with distinct clinical and biological characteristics and outcomes. There is still an unfulfilled need for precise MCL prognostication in real-time. Machine learning and deep learning neural networks are rapidly advancing technologies with promising results in numerous fields of application. This study develops and compares the performance of deep learning (DL) algorithms and radiomics-based machine learning (ML) models to predict MCL relapse on baseline CT scans. Five classification algorithms were used, including three deep learning models (3D SEResNet50, 3D DenseNet, and an optimised 3D CNN) and two machine learning models based on K-nearest Neighbor (KNN) and Random Forest (RF). The best performing method, our optimised 3D CNN, predicted MCL relapse with a 70% accuracy, better than the 3D SEResNet50 (62%) and the 3D DenseNet (59%). The second-best performing method was the KNN-based machine learning model (64%) after principal component analysis for improved accuracy. Our optimised CNN developed by ourselves correctly predicted MCL relapse in 70% of the patients on baseline CT imaging. Once prospectively tested in clinical trials with a larger sample size, our proposed 3D deep learning model could facilitate clinical management by precision imaging in MCL.
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spelling pubmed-90287372022-04-23 Deep Neural Networks and Machine Learning Radiomics Modelling for Prediction of Relapse in Mantle Cell Lymphoma Lisson, Catharina Silvia Lisson, Christoph Gerhard Mezger, Marc Fabian Wolf, Daniel Schmidt, Stefan Andreas Thaiss, Wolfgang M. Tausch, Eugen Beer, Ambros J. Stilgenbauer, Stephan Beer, Meinrad Goetz, Michael Cancers (Basel) Article SIMPLE SUMMARY: Mantle cell lymphoma (MCL) is an aggressive lymphoid tumour with a poor prognosis. There exist no routine biomarkers for the early prediction of relapse. Our study compared the potential of radiomics-based machine learning and 3D deep learning models as non-invasive biomarkers to risk-stratify MCL patients, thus promoting precision imaging in clinical oncology. ABSTRACT: Mantle cell lymphoma (MCL) is a rare lymphoid malignancy with a poor prognosis characterised by frequent relapse and short durations of treatment response. Most patients present with aggressive disease, but there exist indolent subtypes without the need for immediate intervention. The very heterogeneous behaviour of MCL is genetically characterised by the translocation t(11;14)(q13;q32), leading to Cyclin D1 overexpression with distinct clinical and biological characteristics and outcomes. There is still an unfulfilled need for precise MCL prognostication in real-time. Machine learning and deep learning neural networks are rapidly advancing technologies with promising results in numerous fields of application. This study develops and compares the performance of deep learning (DL) algorithms and radiomics-based machine learning (ML) models to predict MCL relapse on baseline CT scans. Five classification algorithms were used, including three deep learning models (3D SEResNet50, 3D DenseNet, and an optimised 3D CNN) and two machine learning models based on K-nearest Neighbor (KNN) and Random Forest (RF). The best performing method, our optimised 3D CNN, predicted MCL relapse with a 70% accuracy, better than the 3D SEResNet50 (62%) and the 3D DenseNet (59%). The second-best performing method was the KNN-based machine learning model (64%) after principal component analysis for improved accuracy. Our optimised CNN developed by ourselves correctly predicted MCL relapse in 70% of the patients on baseline CT imaging. Once prospectively tested in clinical trials with a larger sample size, our proposed 3D deep learning model could facilitate clinical management by precision imaging in MCL. MDPI 2022-04-15 /pmc/articles/PMC9028737/ /pubmed/35454914 http://dx.doi.org/10.3390/cancers14082008 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Lisson, Catharina Silvia
Lisson, Christoph Gerhard
Mezger, Marc Fabian
Wolf, Daniel
Schmidt, Stefan Andreas
Thaiss, Wolfgang M.
Tausch, Eugen
Beer, Ambros J.
Stilgenbauer, Stephan
Beer, Meinrad
Goetz, Michael
Deep Neural Networks and Machine Learning Radiomics Modelling for Prediction of Relapse in Mantle Cell Lymphoma
title Deep Neural Networks and Machine Learning Radiomics Modelling for Prediction of Relapse in Mantle Cell Lymphoma
title_full Deep Neural Networks and Machine Learning Radiomics Modelling for Prediction of Relapse in Mantle Cell Lymphoma
title_fullStr Deep Neural Networks and Machine Learning Radiomics Modelling for Prediction of Relapse in Mantle Cell Lymphoma
title_full_unstemmed Deep Neural Networks and Machine Learning Radiomics Modelling for Prediction of Relapse in Mantle Cell Lymphoma
title_short Deep Neural Networks and Machine Learning Radiomics Modelling for Prediction of Relapse in Mantle Cell Lymphoma
title_sort deep neural networks and machine learning radiomics modelling for prediction of relapse in mantle cell lymphoma
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9028737/
https://www.ncbi.nlm.nih.gov/pubmed/35454914
http://dx.doi.org/10.3390/cancers14082008
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