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Differentiation of low and high grade renal cell carcinoma on routine MRI with an externally validated automatic machine learning algorithm

Pre-treatment determination of renal cell carcinoma aggressiveness may help guide clinical decision-making. We aimed to differentiate low-grade (Fuhrman I–II) from high-grade (Fuhrman III–IV) renal cell carcinoma using radiomics features extracted from routine MRI. 482 pathologically confirmed renal...

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Autores principales: Purkayastha, Subhanik, Zhao, Yijun, Wu, Jing, Hu, Rong, McGirr, Aidan, Singh, Sukhdeep, Chang, Ken, Huang, Raymond Y., Zhang, Paul J., Silva, Alvin, Soulen, Michael C., Stavropoulos, S. William, Zhang, Zishu, Bai, Harrison X.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Nature Publishing Group UK 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7658976/
https://www.ncbi.nlm.nih.gov/pubmed/33177576
http://dx.doi.org/10.1038/s41598-020-76132-z
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author Purkayastha, Subhanik
Zhao, Yijun
Wu, Jing
Hu, Rong
McGirr, Aidan
Singh, Sukhdeep
Chang, Ken
Huang, Raymond Y.
Zhang, Paul J.
Silva, Alvin
Soulen, Michael C.
Stavropoulos, S. William
Zhang, Zishu
Bai, Harrison X.
author_facet Purkayastha, Subhanik
Zhao, Yijun
Wu, Jing
Hu, Rong
McGirr, Aidan
Singh, Sukhdeep
Chang, Ken
Huang, Raymond Y.
Zhang, Paul J.
Silva, Alvin
Soulen, Michael C.
Stavropoulos, S. William
Zhang, Zishu
Bai, Harrison X.
author_sort Purkayastha, Subhanik
collection PubMed
description Pre-treatment determination of renal cell carcinoma aggressiveness may help guide clinical decision-making. We aimed to differentiate low-grade (Fuhrman I–II) from high-grade (Fuhrman III–IV) renal cell carcinoma using radiomics features extracted from routine MRI. 482 pathologically confirmed renal cell carcinoma lesions from 2008 to 2019 in a multicenter cohort were retrospectively identified. 439 lesions with information on Fuhrman grade from 4 institutions were divided into training and test sets with an 8:2 split for model development and internal validation. Another 43 lesions from a separate institution were set aside for independent external validation. The performance of TPOT (Tree-Based Pipeline Optimization Tool), an automatic machine learning pipeline optimizer, was compared to hand-optimized machine learning pipeline. The best-performing hand-optimized pipeline was a Bayesian classifier with Fischer Score feature selection, achieving an external validation ROC AUC of 0.59 (95% CI 0.49–0.68), accuracy of 0.77 (95% CI 0.68–0.84), sensitivity of 0.38 (95% CI 0.29–0.48), and specificity of 0.86 (95% CI 0.78–0.92). The best-performing TPOT pipeline achieved an external validation ROC AUC of 0.60 (95% CI 0.50–0.69), accuracy of 0.81 (95% CI 0.72–0.88), sensitivity of 0.12 (95% CI 0.14–0.30), and specificity of 0.97 (95% CI 0.87–0.97). Automated machine learning pipelines can perform equivalent to or better than hand-optimized pipeline on an external validation test non-invasively predicting Fuhrman grade of renal cell carcinoma using conventional MRI.
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spelling pubmed-76589762020-11-13 Differentiation of low and high grade renal cell carcinoma on routine MRI with an externally validated automatic machine learning algorithm Purkayastha, Subhanik Zhao, Yijun Wu, Jing Hu, Rong McGirr, Aidan Singh, Sukhdeep Chang, Ken Huang, Raymond Y. Zhang, Paul J. Silva, Alvin Soulen, Michael C. Stavropoulos, S. William Zhang, Zishu Bai, Harrison X. Sci Rep Article Pre-treatment determination of renal cell carcinoma aggressiveness may help guide clinical decision-making. We aimed to differentiate low-grade (Fuhrman I–II) from high-grade (Fuhrman III–IV) renal cell carcinoma using radiomics features extracted from routine MRI. 482 pathologically confirmed renal cell carcinoma lesions from 2008 to 2019 in a multicenter cohort were retrospectively identified. 439 lesions with information on Fuhrman grade from 4 institutions were divided into training and test sets with an 8:2 split for model development and internal validation. Another 43 lesions from a separate institution were set aside for independent external validation. The performance of TPOT (Tree-Based Pipeline Optimization Tool), an automatic machine learning pipeline optimizer, was compared to hand-optimized machine learning pipeline. The best-performing hand-optimized pipeline was a Bayesian classifier with Fischer Score feature selection, achieving an external validation ROC AUC of 0.59 (95% CI 0.49–0.68), accuracy of 0.77 (95% CI 0.68–0.84), sensitivity of 0.38 (95% CI 0.29–0.48), and specificity of 0.86 (95% CI 0.78–0.92). The best-performing TPOT pipeline achieved an external validation ROC AUC of 0.60 (95% CI 0.50–0.69), accuracy of 0.81 (95% CI 0.72–0.88), sensitivity of 0.12 (95% CI 0.14–0.30), and specificity of 0.97 (95% CI 0.87–0.97). Automated machine learning pipelines can perform equivalent to or better than hand-optimized pipeline on an external validation test non-invasively predicting Fuhrman grade of renal cell carcinoma using conventional MRI. Nature Publishing Group UK 2020-11-11 /pmc/articles/PMC7658976/ /pubmed/33177576 http://dx.doi.org/10.1038/s41598-020-76132-z Text en © The Author(s) 2020 Open Access This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/.
spellingShingle Article
Purkayastha, Subhanik
Zhao, Yijun
Wu, Jing
Hu, Rong
McGirr, Aidan
Singh, Sukhdeep
Chang, Ken
Huang, Raymond Y.
Zhang, Paul J.
Silva, Alvin
Soulen, Michael C.
Stavropoulos, S. William
Zhang, Zishu
Bai, Harrison X.
Differentiation of low and high grade renal cell carcinoma on routine MRI with an externally validated automatic machine learning algorithm
title Differentiation of low and high grade renal cell carcinoma on routine MRI with an externally validated automatic machine learning algorithm
title_full Differentiation of low and high grade renal cell carcinoma on routine MRI with an externally validated automatic machine learning algorithm
title_fullStr Differentiation of low and high grade renal cell carcinoma on routine MRI with an externally validated automatic machine learning algorithm
title_full_unstemmed Differentiation of low and high grade renal cell carcinoma on routine MRI with an externally validated automatic machine learning algorithm
title_short Differentiation of low and high grade renal cell carcinoma on routine MRI with an externally validated automatic machine learning algorithm
title_sort differentiation of low and high grade renal cell carcinoma on routine mri with an externally validated automatic machine learning algorithm
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7658976/
https://www.ncbi.nlm.nih.gov/pubmed/33177576
http://dx.doi.org/10.1038/s41598-020-76132-z
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