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Implementation of machine learning into clinical breast MRI: Potential for objective and accurate decision-making in suspicious breast masses

We investigated whether the integration of machine learning (ML) into MRI interpretation can provide accurate decision rules for the management of suspicious breast masses. A total of 173 consecutive patients with suspicious breast masses upon complementary assessment (BI-RADS IV/V: n = 100/76) rece...

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Autores principales: Ellmann, Stephan, Wenkel, Evelyn, Dietzel, Matthias, Bielowski, Christian, Vesal, Sulaiman, Maier, Andreas, Hammon, Matthias, Janka, Rolf, Fasching, Peter A., Beckmann, Matthias W., Schulz Wendtland, Rüdiger, Uder, Michael, Bäuerle, Tobias
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6992224/
https://www.ncbi.nlm.nih.gov/pubmed/31999755
http://dx.doi.org/10.1371/journal.pone.0228446
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author Ellmann, Stephan
Wenkel, Evelyn
Dietzel, Matthias
Bielowski, Christian
Vesal, Sulaiman
Maier, Andreas
Hammon, Matthias
Janka, Rolf
Fasching, Peter A.
Beckmann, Matthias W.
Schulz Wendtland, Rüdiger
Uder, Michael
Bäuerle, Tobias
author_facet Ellmann, Stephan
Wenkel, Evelyn
Dietzel, Matthias
Bielowski, Christian
Vesal, Sulaiman
Maier, Andreas
Hammon, Matthias
Janka, Rolf
Fasching, Peter A.
Beckmann, Matthias W.
Schulz Wendtland, Rüdiger
Uder, Michael
Bäuerle, Tobias
author_sort Ellmann, Stephan
collection PubMed
description We investigated whether the integration of machine learning (ML) into MRI interpretation can provide accurate decision rules for the management of suspicious breast masses. A total of 173 consecutive patients with suspicious breast masses upon complementary assessment (BI-RADS IV/V: n = 100/76) received standardized breast MRI prior to histological verification. MRI findings were independently assessed by two observers (R1/R2: 5 years of experience/no experience in breast MRI) using six (semi-)quantitative imaging parameters. Interobserver variability was studied by ICC (intraclass correlation coefficient). A polynomial kernel function support vector machine was trained to differentiate between benign and malignant lesions based on the six imaging parameters and patient age. Ten-fold cross-validation was applied to prevent overfitting. Overall diagnostic accuracy and decision rules (rule-out criteria) to accurately exclude malignancy were evaluated. Results were integrated into a web application and published online. Malignant lesions were present in 107 patients (60.8%). Imaging features showed excellent interobserver variability (ICC: 0.81–0.98) with variable diagnostic accuracy (AUC: 0.65–0.82). Overall performance of the ML algorithm was high (AUC = 90.1%; BI-RADS IV: AUC = 91.6%). The ML algorithm provided decision rules to accurately rule-out malignancy with a false negative rate <1% in 31.3% of the BI-RADS IV cases. Thus, integration of ML into MRI interpretation can provide objective and accurate decision rules for the management of suspicious breast masses, and could help to reduce the number of potentially unnecessary biopsies.
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spelling pubmed-69922242020-02-20 Implementation of machine learning into clinical breast MRI: Potential for objective and accurate decision-making in suspicious breast masses Ellmann, Stephan Wenkel, Evelyn Dietzel, Matthias Bielowski, Christian Vesal, Sulaiman Maier, Andreas Hammon, Matthias Janka, Rolf Fasching, Peter A. Beckmann, Matthias W. Schulz Wendtland, Rüdiger Uder, Michael Bäuerle, Tobias PLoS One Research Article We investigated whether the integration of machine learning (ML) into MRI interpretation can provide accurate decision rules for the management of suspicious breast masses. A total of 173 consecutive patients with suspicious breast masses upon complementary assessment (BI-RADS IV/V: n = 100/76) received standardized breast MRI prior to histological verification. MRI findings were independently assessed by two observers (R1/R2: 5 years of experience/no experience in breast MRI) using six (semi-)quantitative imaging parameters. Interobserver variability was studied by ICC (intraclass correlation coefficient). A polynomial kernel function support vector machine was trained to differentiate between benign and malignant lesions based on the six imaging parameters and patient age. Ten-fold cross-validation was applied to prevent overfitting. Overall diagnostic accuracy and decision rules (rule-out criteria) to accurately exclude malignancy were evaluated. Results were integrated into a web application and published online. Malignant lesions were present in 107 patients (60.8%). Imaging features showed excellent interobserver variability (ICC: 0.81–0.98) with variable diagnostic accuracy (AUC: 0.65–0.82). Overall performance of the ML algorithm was high (AUC = 90.1%; BI-RADS IV: AUC = 91.6%). The ML algorithm provided decision rules to accurately rule-out malignancy with a false negative rate <1% in 31.3% of the BI-RADS IV cases. Thus, integration of ML into MRI interpretation can provide objective and accurate decision rules for the management of suspicious breast masses, and could help to reduce the number of potentially unnecessary biopsies. Public Library of Science 2020-01-30 /pmc/articles/PMC6992224/ /pubmed/31999755 http://dx.doi.org/10.1371/journal.pone.0228446 Text en © 2020 Ellmann et al http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Ellmann, Stephan
Wenkel, Evelyn
Dietzel, Matthias
Bielowski, Christian
Vesal, Sulaiman
Maier, Andreas
Hammon, Matthias
Janka, Rolf
Fasching, Peter A.
Beckmann, Matthias W.
Schulz Wendtland, Rüdiger
Uder, Michael
Bäuerle, Tobias
Implementation of machine learning into clinical breast MRI: Potential for objective and accurate decision-making in suspicious breast masses
title Implementation of machine learning into clinical breast MRI: Potential for objective and accurate decision-making in suspicious breast masses
title_full Implementation of machine learning into clinical breast MRI: Potential for objective and accurate decision-making in suspicious breast masses
title_fullStr Implementation of machine learning into clinical breast MRI: Potential for objective and accurate decision-making in suspicious breast masses
title_full_unstemmed Implementation of machine learning into clinical breast MRI: Potential for objective and accurate decision-making in suspicious breast masses
title_short Implementation of machine learning into clinical breast MRI: Potential for objective and accurate decision-making in suspicious breast masses
title_sort implementation of machine learning into clinical breast mri: potential for objective and accurate decision-making in suspicious breast masses
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6992224/
https://www.ncbi.nlm.nih.gov/pubmed/31999755
http://dx.doi.org/10.1371/journal.pone.0228446
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