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Spleen volume-based non-invasive tool for predicting hepatic decompensation in people with compensated cirrhosis (CHESS1701)

BACKGROUND & AIMS: Non-invasive stratification of the liver decompensation risk remains unmet in people with compensated cirrhosis. This study aimed to develop a non-invasive tool (NIT) to predict hepatic decompensation. METHODS: This retrospective study recruited 689 people with compensated cir...

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Autores principales: Yu, Qian, Xu, Chuanjun, Li, Qinyi, Ding, Zhimin, Lv, Yan, Liu, Chuan, Huang, Yifei, Zhou, Jiaying, Huang, Shan, Xia, Cong, Meng, Xiangpan, Lu, Chunqiang, Li, Yuefeng, Tang, Tianyu, Wang, Yuancheng, Song, Yang, Qi, Xiaolong, Ye, Jing, Ju, Shenghong
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9531280/
https://www.ncbi.nlm.nih.gov/pubmed/36204707
http://dx.doi.org/10.1016/j.jhepr.2022.100575
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author Yu, Qian
Xu, Chuanjun
Li, Qinyi
Ding, Zhimin
Lv, Yan
Liu, Chuan
Huang, Yifei
Zhou, Jiaying
Huang, Shan
Xia, Cong
Meng, Xiangpan
Lu, Chunqiang
Li, Yuefeng
Tang, Tianyu
Wang, Yuancheng
Song, Yang
Qi, Xiaolong
Ye, Jing
Ju, Shenghong
author_facet Yu, Qian
Xu, Chuanjun
Li, Qinyi
Ding, Zhimin
Lv, Yan
Liu, Chuan
Huang, Yifei
Zhou, Jiaying
Huang, Shan
Xia, Cong
Meng, Xiangpan
Lu, Chunqiang
Li, Yuefeng
Tang, Tianyu
Wang, Yuancheng
Song, Yang
Qi, Xiaolong
Ye, Jing
Ju, Shenghong
author_sort Yu, Qian
collection PubMed
description BACKGROUND & AIMS: Non-invasive stratification of the liver decompensation risk remains unmet in people with compensated cirrhosis. This study aimed to develop a non-invasive tool (NIT) to predict hepatic decompensation. METHODS: This retrospective study recruited 689 people with compensated cirrhosis (median age, 54 years; 441 men) from 5 centres from January 2016 to June 2020. Baseline abdominal computed tomography (CT), clinical features, and liver stiffness were collected, and then the first decompensation was registered during the follow-up. The spleen-based model was designed for predicting decompensation based on a deep learning segmentation network to generate the spleen volume and least absolute shrinkage and selection operator (LASSO)-Cox. The spleen-based model was trained on the training cohort of 282 individuals (Institutions I–III) and was validated in 2 external validation cohorts (97 and 310 individuals from Institutions IV and V, respectively) and compared with the conventional serum-based models and the Baveno VII criteria. RESULTS: The decompensation rate at 3 years was 23%, with a 37.6-month median (IQR 21.1–52.1 months) follow-up. The proposed model showed good performance in predicting decompensation (C-index ≥0.84) and outperformed the serum-based models (C-index comparison test p <0.05) in both the training and validation cohorts. The hazard ratio (HR) for decompensation in individuals with high risk was 7.3 (95% CI 4.2–12.8) in the training and 5.8 (95% CI 3.9–8.6) in the validation (log-rank test, p <0.05) cohorts. The low-risk group had a negligible 3-year decompensation risk (≤1%), and the model had a competitive performance compared with the Baveno VII criteria. CONCLUSIONS: This spleen-based model provides a non-invasive and user-friendly method to help predict decompensation in people with compensated cirrhosis in diverse healthcare settings where liver stiffness is not available. LAY SUMMARY: People with compensated cirrhosis with larger spleen volume would have a higher risk of decompensation. We developed a spleen-based model and validated it in external validation cohorts. The proposed model might help predict hepatic decompensation in people with compensated cirrhosis when invasive tools are unavailable.
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spelling pubmed-95312802022-10-05 Spleen volume-based non-invasive tool for predicting hepatic decompensation in people with compensated cirrhosis (CHESS1701) Yu, Qian Xu, Chuanjun Li, Qinyi Ding, Zhimin Lv, Yan Liu, Chuan Huang, Yifei Zhou, Jiaying Huang, Shan Xia, Cong Meng, Xiangpan Lu, Chunqiang Li, Yuefeng Tang, Tianyu Wang, Yuancheng Song, Yang Qi, Xiaolong Ye, Jing Ju, Shenghong JHEP Rep Research Article BACKGROUND & AIMS: Non-invasive stratification of the liver decompensation risk remains unmet in people with compensated cirrhosis. This study aimed to develop a non-invasive tool (NIT) to predict hepatic decompensation. METHODS: This retrospective study recruited 689 people with compensated cirrhosis (median age, 54 years; 441 men) from 5 centres from January 2016 to June 2020. Baseline abdominal computed tomography (CT), clinical features, and liver stiffness were collected, and then the first decompensation was registered during the follow-up. The spleen-based model was designed for predicting decompensation based on a deep learning segmentation network to generate the spleen volume and least absolute shrinkage and selection operator (LASSO)-Cox. The spleen-based model was trained on the training cohort of 282 individuals (Institutions I–III) and was validated in 2 external validation cohorts (97 and 310 individuals from Institutions IV and V, respectively) and compared with the conventional serum-based models and the Baveno VII criteria. RESULTS: The decompensation rate at 3 years was 23%, with a 37.6-month median (IQR 21.1–52.1 months) follow-up. The proposed model showed good performance in predicting decompensation (C-index ≥0.84) and outperformed the serum-based models (C-index comparison test p <0.05) in both the training and validation cohorts. The hazard ratio (HR) for decompensation in individuals with high risk was 7.3 (95% CI 4.2–12.8) in the training and 5.8 (95% CI 3.9–8.6) in the validation (log-rank test, p <0.05) cohorts. The low-risk group had a negligible 3-year decompensation risk (≤1%), and the model had a competitive performance compared with the Baveno VII criteria. CONCLUSIONS: This spleen-based model provides a non-invasive and user-friendly method to help predict decompensation in people with compensated cirrhosis in diverse healthcare settings where liver stiffness is not available. LAY SUMMARY: People with compensated cirrhosis with larger spleen volume would have a higher risk of decompensation. We developed a spleen-based model and validated it in external validation cohorts. The proposed model might help predict hepatic decompensation in people with compensated cirrhosis when invasive tools are unavailable. Elsevier 2022-08-27 /pmc/articles/PMC9531280/ /pubmed/36204707 http://dx.doi.org/10.1016/j.jhepr.2022.100575 Text en © 2022 The Author(s) https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Research Article
Yu, Qian
Xu, Chuanjun
Li, Qinyi
Ding, Zhimin
Lv, Yan
Liu, Chuan
Huang, Yifei
Zhou, Jiaying
Huang, Shan
Xia, Cong
Meng, Xiangpan
Lu, Chunqiang
Li, Yuefeng
Tang, Tianyu
Wang, Yuancheng
Song, Yang
Qi, Xiaolong
Ye, Jing
Ju, Shenghong
Spleen volume-based non-invasive tool for predicting hepatic decompensation in people with compensated cirrhosis (CHESS1701)
title Spleen volume-based non-invasive tool for predicting hepatic decompensation in people with compensated cirrhosis (CHESS1701)
title_full Spleen volume-based non-invasive tool for predicting hepatic decompensation in people with compensated cirrhosis (CHESS1701)
title_fullStr Spleen volume-based non-invasive tool for predicting hepatic decompensation in people with compensated cirrhosis (CHESS1701)
title_full_unstemmed Spleen volume-based non-invasive tool for predicting hepatic decompensation in people with compensated cirrhosis (CHESS1701)
title_short Spleen volume-based non-invasive tool for predicting hepatic decompensation in people with compensated cirrhosis (CHESS1701)
title_sort spleen volume-based non-invasive tool for predicting hepatic decompensation in people with compensated cirrhosis (chess1701)
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9531280/
https://www.ncbi.nlm.nih.gov/pubmed/36204707
http://dx.doi.org/10.1016/j.jhepr.2022.100575
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