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Identifying ureteral stent encrustation using machine learning based on CT radiomics features: a bicentric study

OBSTRUCTIVE: To develop and validate radiomics and machine learning models for identifying encrusted stents and compare their recognition performance with multiple metrics. METHODS: A total of 354 patients with ureteral stent placement were enrolled from two medical institutions and divided into the...

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Autores principales: Qiu, Junliang, Yan, Minbo, Wang, Haojie, Liu, Zicheng, Wang, Guojie, Wu, Xianbo, Gao, Qindong, Hu, Hongji, Chen, Junyong, Dai, Yingbo
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10433756/
https://www.ncbi.nlm.nih.gov/pubmed/37601775
http://dx.doi.org/10.3389/fmed.2023.1202486
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author Qiu, Junliang
Yan, Minbo
Wang, Haojie
Liu, Zicheng
Wang, Guojie
Wu, Xianbo
Gao, Qindong
Hu, Hongji
Chen, Junyong
Dai, Yingbo
author_facet Qiu, Junliang
Yan, Minbo
Wang, Haojie
Liu, Zicheng
Wang, Guojie
Wu, Xianbo
Gao, Qindong
Hu, Hongji
Chen, Junyong
Dai, Yingbo
author_sort Qiu, Junliang
collection PubMed
description OBSTRUCTIVE: To develop and validate radiomics and machine learning models for identifying encrusted stents and compare their recognition performance with multiple metrics. METHODS: A total of 354 patients with ureteral stent placement were enrolled from two medical institutions and divided into the training cohort (n = 189), internal validation cohort (n = 81) and external validation cohort (n = 84). Based on features selected by Wilcoxon test, Spearman Correlation Analysis and least absolute shrinkage and selection operator (LASSO) regression algorithm, six machine learning models based on radiomics features were established with six classifiers (LR, DT, SVM, RF, XGBoost, KNN). After comparison with those models, the most robust model was selected. Considering its feature importance as radscore, the combined model and a nomogram were constructed by incorporating indwelling time. Accuracy, sensitivity, specificity, area under the curve (AUC), decision curve analysis (DCA) and calibration curve were used to evaluate the recognition performance of models. RESULTS: 1,409 radiomics features were extracted from 641 volumes of interest (VOIs) and 20 significant radiomics features were selected. Considering the superior performance (AUC 0.810, 95%CI, 0.722–0.888) in the external validation cohort, feature importance of XGBoost was used as a radscore, constructing a combined model and a nomogram with indwelling time. The accuracy, sensitivity, specificity and AUC of the combined model were 98, 100, 97.3% and 0.999 for the training cohort, 83.3, 80, 84.5% and 0.867 for the internal cohort and 78.2, 76.3, 78.8% and 0.820 for the external cohort, respectively. DCA indicates the favorable clinical utility of models. CONCLUSION: Machine learning model based on radiomics features enables to identify ureteral stent encrustation with high accuracy.
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spelling pubmed-104337562023-08-18 Identifying ureteral stent encrustation using machine learning based on CT radiomics features: a bicentric study Qiu, Junliang Yan, Minbo Wang, Haojie Liu, Zicheng Wang, Guojie Wu, Xianbo Gao, Qindong Hu, Hongji Chen, Junyong Dai, Yingbo Front Med (Lausanne) Medicine OBSTRUCTIVE: To develop and validate radiomics and machine learning models for identifying encrusted stents and compare their recognition performance with multiple metrics. METHODS: A total of 354 patients with ureteral stent placement were enrolled from two medical institutions and divided into the training cohort (n = 189), internal validation cohort (n = 81) and external validation cohort (n = 84). Based on features selected by Wilcoxon test, Spearman Correlation Analysis and least absolute shrinkage and selection operator (LASSO) regression algorithm, six machine learning models based on radiomics features were established with six classifiers (LR, DT, SVM, RF, XGBoost, KNN). After comparison with those models, the most robust model was selected. Considering its feature importance as radscore, the combined model and a nomogram were constructed by incorporating indwelling time. Accuracy, sensitivity, specificity, area under the curve (AUC), decision curve analysis (DCA) and calibration curve were used to evaluate the recognition performance of models. RESULTS: 1,409 radiomics features were extracted from 641 volumes of interest (VOIs) and 20 significant radiomics features were selected. Considering the superior performance (AUC 0.810, 95%CI, 0.722–0.888) in the external validation cohort, feature importance of XGBoost was used as a radscore, constructing a combined model and a nomogram with indwelling time. The accuracy, sensitivity, specificity and AUC of the combined model were 98, 100, 97.3% and 0.999 for the training cohort, 83.3, 80, 84.5% and 0.867 for the internal cohort and 78.2, 76.3, 78.8% and 0.820 for the external cohort, respectively. DCA indicates the favorable clinical utility of models. CONCLUSION: Machine learning model based on radiomics features enables to identify ureteral stent encrustation with high accuracy. Frontiers Media S.A. 2023-08-02 /pmc/articles/PMC10433756/ /pubmed/37601775 http://dx.doi.org/10.3389/fmed.2023.1202486 Text en Copyright © 2023 Qiu, Yan, Wang, Liu, Wang, Wu, Gao, Hu, Chen and Dai. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Medicine
Qiu, Junliang
Yan, Minbo
Wang, Haojie
Liu, Zicheng
Wang, Guojie
Wu, Xianbo
Gao, Qindong
Hu, Hongji
Chen, Junyong
Dai, Yingbo
Identifying ureteral stent encrustation using machine learning based on CT radiomics features: a bicentric study
title Identifying ureteral stent encrustation using machine learning based on CT radiomics features: a bicentric study
title_full Identifying ureteral stent encrustation using machine learning based on CT radiomics features: a bicentric study
title_fullStr Identifying ureteral stent encrustation using machine learning based on CT radiomics features: a bicentric study
title_full_unstemmed Identifying ureteral stent encrustation using machine learning based on CT radiomics features: a bicentric study
title_short Identifying ureteral stent encrustation using machine learning based on CT radiomics features: a bicentric study
title_sort identifying ureteral stent encrustation using machine learning based on ct radiomics features: a bicentric study
topic Medicine
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10433756/
https://www.ncbi.nlm.nih.gov/pubmed/37601775
http://dx.doi.org/10.3389/fmed.2023.1202486
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