Cargando…

Artificial intelligence-based non-invasive tumor segmentation, grade stratification and prognosis prediction for clear-cell renal-cell carcinoma

Due to the complicated histopathological characteristics of clear-cell renal-cell carcinoma (ccRCC), non-invasive prognosis before operative treatment is crucial in selecting the appropriate treatment. A total of 126 345 computerized tomography (CT) images from four independent patient cohorts were...

Descripción completa

Detalles Bibliográficos
Autores principales: Chen, Siteng, Song, Dandan, Chen, Lei, Guo, Tuanjie, Jiang, Beibei, Liu, Aie, Pan, Xianpan, Wang, Tao, Tang, Heting, Chen, Guihua, Xue, Zhong, Wang, Xiang, Zhang, Ning, Zheng, Junhua
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Oxford University Press 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10680020/
https://www.ncbi.nlm.nih.gov/pubmed/38025974
http://dx.doi.org/10.1093/pcmedi/pbad019
_version_ 1785142299819245568
author Chen, Siteng
Song, Dandan
Chen, Lei
Guo, Tuanjie
Jiang, Beibei
Liu, Aie
Pan, Xianpan
Wang, Tao
Tang, Heting
Chen, Guihua
Xue, Zhong
Wang, Xiang
Zhang, Ning
Zheng, Junhua
author_facet Chen, Siteng
Song, Dandan
Chen, Lei
Guo, Tuanjie
Jiang, Beibei
Liu, Aie
Pan, Xianpan
Wang, Tao
Tang, Heting
Chen, Guihua
Xue, Zhong
Wang, Xiang
Zhang, Ning
Zheng, Junhua
author_sort Chen, Siteng
collection PubMed
description Due to the complicated histopathological characteristics of clear-cell renal-cell carcinoma (ccRCC), non-invasive prognosis before operative treatment is crucial in selecting the appropriate treatment. A total of 126 345 computerized tomography (CT) images from four independent patient cohorts were included for analysis in this study. We propose a V Bottleneck multi-resolution and focus-organ network (VB-MrFo-Net) using a cascade framework for deep learning analysis. The VB-MrFo-Net achieved better performance than VB-Net in tumor segmentation, with a Dice score of 0.87. The nuclear-grade prediction model performed best in the logistic regression classifier, with area under curve values from 0.782 to 0.746. Survival analysis revealed that our prediction model could significantly distinguish patients with high survival risk, with a hazard ratio (HR) of 2.49 [95% confidence interval (CI): 1.13–5.45, P = 0.023] in the General cohort. Excellent performance had also been verified in the Cancer Genome Atlas cohort, the Clinical Proteomic Tumor Analysis Consortium cohort, and the Kidney Tumor Segmentation Challenge cohort, with HRs of 2.77 (95%CI: 1.58–4.84, P = 0.0019), 3.83 (95%CI: 1.22–11.96, P = 0.029), and 2.80 (95%CI: 1.05–7.47, P = 0.025), respectively. In conclusion, we propose a novel VB-MrFo-Net for the renal tumor segmentation and automatic diagnosis of ccRCC. The risk stratification model could accurately distinguish patients with high tumor grade and high survival risk based on non-invasive CT images before surgical treatments, which could provide practical advice for deciding treatment options.
format Online
Article
Text
id pubmed-10680020
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher Oxford University Press
record_format MEDLINE/PubMed
spelling pubmed-106800202023-08-17 Artificial intelligence-based non-invasive tumor segmentation, grade stratification and prognosis prediction for clear-cell renal-cell carcinoma Chen, Siteng Song, Dandan Chen, Lei Guo, Tuanjie Jiang, Beibei Liu, Aie Pan, Xianpan Wang, Tao Tang, Heting Chen, Guihua Xue, Zhong Wang, Xiang Zhang, Ning Zheng, Junhua Precis Clin Med Research Article Due to the complicated histopathological characteristics of clear-cell renal-cell carcinoma (ccRCC), non-invasive prognosis before operative treatment is crucial in selecting the appropriate treatment. A total of 126 345 computerized tomography (CT) images from four independent patient cohorts were included for analysis in this study. We propose a V Bottleneck multi-resolution and focus-organ network (VB-MrFo-Net) using a cascade framework for deep learning analysis. The VB-MrFo-Net achieved better performance than VB-Net in tumor segmentation, with a Dice score of 0.87. The nuclear-grade prediction model performed best in the logistic regression classifier, with area under curve values from 0.782 to 0.746. Survival analysis revealed that our prediction model could significantly distinguish patients with high survival risk, with a hazard ratio (HR) of 2.49 [95% confidence interval (CI): 1.13–5.45, P = 0.023] in the General cohort. Excellent performance had also been verified in the Cancer Genome Atlas cohort, the Clinical Proteomic Tumor Analysis Consortium cohort, and the Kidney Tumor Segmentation Challenge cohort, with HRs of 2.77 (95%CI: 1.58–4.84, P = 0.0019), 3.83 (95%CI: 1.22–11.96, P = 0.029), and 2.80 (95%CI: 1.05–7.47, P = 0.025), respectively. In conclusion, we propose a novel VB-MrFo-Net for the renal tumor segmentation and automatic diagnosis of ccRCC. The risk stratification model could accurately distinguish patients with high tumor grade and high survival risk based on non-invasive CT images before surgical treatments, which could provide practical advice for deciding treatment options. Oxford University Press 2023-08-17 /pmc/articles/PMC10680020/ /pubmed/38025974 http://dx.doi.org/10.1093/pcmedi/pbad019 Text en © The Author(s) 2023. Published by Oxford University Press on behalf of the West China School of Medicine & West China Hospital of Sichuan University. https://creativecommons.org/licenses/by-nc/4.0/This is an Open Access article distributed under the terms of the Creative Commons Attribution Non-Commercial License (https://creativecommons.org/licenses/by-nc/4.0/), which permits non-commercial re-use, distribution, and reproduction in any medium, provided the original work is properly cited. For commercial re-use, please contact journals.permissions@oup.com
spellingShingle Research Article
Chen, Siteng
Song, Dandan
Chen, Lei
Guo, Tuanjie
Jiang, Beibei
Liu, Aie
Pan, Xianpan
Wang, Tao
Tang, Heting
Chen, Guihua
Xue, Zhong
Wang, Xiang
Zhang, Ning
Zheng, Junhua
Artificial intelligence-based non-invasive tumor segmentation, grade stratification and prognosis prediction for clear-cell renal-cell carcinoma
title Artificial intelligence-based non-invasive tumor segmentation, grade stratification and prognosis prediction for clear-cell renal-cell carcinoma
title_full Artificial intelligence-based non-invasive tumor segmentation, grade stratification and prognosis prediction for clear-cell renal-cell carcinoma
title_fullStr Artificial intelligence-based non-invasive tumor segmentation, grade stratification and prognosis prediction for clear-cell renal-cell carcinoma
title_full_unstemmed Artificial intelligence-based non-invasive tumor segmentation, grade stratification and prognosis prediction for clear-cell renal-cell carcinoma
title_short Artificial intelligence-based non-invasive tumor segmentation, grade stratification and prognosis prediction for clear-cell renal-cell carcinoma
title_sort artificial intelligence-based non-invasive tumor segmentation, grade stratification and prognosis prediction for clear-cell renal-cell carcinoma
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10680020/
https://www.ncbi.nlm.nih.gov/pubmed/38025974
http://dx.doi.org/10.1093/pcmedi/pbad019
work_keys_str_mv AT chensiteng artificialintelligencebasednoninvasivetumorsegmentationgradestratificationandprognosispredictionforclearcellrenalcellcarcinoma
AT songdandan artificialintelligencebasednoninvasivetumorsegmentationgradestratificationandprognosispredictionforclearcellrenalcellcarcinoma
AT chenlei artificialintelligencebasednoninvasivetumorsegmentationgradestratificationandprognosispredictionforclearcellrenalcellcarcinoma
AT guotuanjie artificialintelligencebasednoninvasivetumorsegmentationgradestratificationandprognosispredictionforclearcellrenalcellcarcinoma
AT jiangbeibei artificialintelligencebasednoninvasivetumorsegmentationgradestratificationandprognosispredictionforclearcellrenalcellcarcinoma
AT liuaie artificialintelligencebasednoninvasivetumorsegmentationgradestratificationandprognosispredictionforclearcellrenalcellcarcinoma
AT panxianpan artificialintelligencebasednoninvasivetumorsegmentationgradestratificationandprognosispredictionforclearcellrenalcellcarcinoma
AT wangtao artificialintelligencebasednoninvasivetumorsegmentationgradestratificationandprognosispredictionforclearcellrenalcellcarcinoma
AT tangheting artificialintelligencebasednoninvasivetumorsegmentationgradestratificationandprognosispredictionforclearcellrenalcellcarcinoma
AT chenguihua artificialintelligencebasednoninvasivetumorsegmentationgradestratificationandprognosispredictionforclearcellrenalcellcarcinoma
AT xuezhong artificialintelligencebasednoninvasivetumorsegmentationgradestratificationandprognosispredictionforclearcellrenalcellcarcinoma
AT wangxiang artificialintelligencebasednoninvasivetumorsegmentationgradestratificationandprognosispredictionforclearcellrenalcellcarcinoma
AT zhangning artificialintelligencebasednoninvasivetumorsegmentationgradestratificationandprognosispredictionforclearcellrenalcellcarcinoma
AT zhengjunhua artificialintelligencebasednoninvasivetumorsegmentationgradestratificationandprognosispredictionforclearcellrenalcellcarcinoma