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Inflammatory risk stratification individualizes anti-inflammatory pharmacotherapy for acute type A aortic dissection

The systemic benefits of anti-inflammatory pharmacotherapy vary across cardiovascular diseases in clinical practice. We aimed to evaluate the application of artificial intelligence to acute type A aortic dissection (ATAAD) patients to determine the optimal target population who would benefit from ur...

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Autores principales: Liu, Hong, Li, Haiyang, Han, Lu, Zhang, Yingyuan, Wu, Ying, Hong, Liang, Yang, Jinong, Zhong, Jisheng, Wang, Yuqi, Wu, Dongkai, Fan, Guoliang, Chen, Junquan, Zhang, Shengqiang, Peng, Xingxing, Zeng, Zhihua, Tang, Zhiwei, Lu, Zhanjie, Sun, Lizhong, Qian, Sichong, Shao, Yongfeng, Zhang, Hongjia
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10276284/
https://www.ncbi.nlm.nih.gov/pubmed/37333431
http://dx.doi.org/10.1016/j.xinn.2023.100448
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author Liu, Hong
Li, Haiyang
Han, Lu
Zhang, Yingyuan
Wu, Ying
Hong, Liang
Yang, Jinong
Zhong, Jisheng
Wang, Yuqi
Wu, Dongkai
Fan, Guoliang
Chen, Junquan
Zhang, Shengqiang
Peng, Xingxing
Zeng, Zhihua
Tang, Zhiwei
Lu, Zhanjie
Sun, Lizhong
Qian, Sichong
Shao, Yongfeng
Zhang, Hongjia
author_facet Liu, Hong
Li, Haiyang
Han, Lu
Zhang, Yingyuan
Wu, Ying
Hong, Liang
Yang, Jinong
Zhong, Jisheng
Wang, Yuqi
Wu, Dongkai
Fan, Guoliang
Chen, Junquan
Zhang, Shengqiang
Peng, Xingxing
Zeng, Zhihua
Tang, Zhiwei
Lu, Zhanjie
Sun, Lizhong
Qian, Sichong
Shao, Yongfeng
Zhang, Hongjia
author_sort Liu, Hong
collection PubMed
description The systemic benefits of anti-inflammatory pharmacotherapy vary across cardiovascular diseases in clinical practice. We aimed to evaluate the application of artificial intelligence to acute type A aortic dissection (ATAAD) patients to determine the optimal target population who would benefit from urinary trypsin inhibitor use (ulinastatin). Patient characteristics at admission in the Chinese multicenter 5A study database (2016–2022) were used to develop an inflammatory risk model to predict multiple organ dysfunction syndrome (MODS). The population (5,126 patients from 15 hospitals) was divided into a 60% sample for model derivation, with the remaining 40% used for model validation. Next, we trained an extreme gradient-boosting algorithm (XGBoost) to develop a parsimonious patient-level inflammatory risk model for predicting MODS. Finally, a top-six-feature tool consisting of estimated glomerular filtration rate, leukocyte count, platelet count, De Ritis ratio, hemoglobin, and albumin was built and showed adequate predictive performance regarding its discrimination, calibration, and clinical utility in derivation and validation cohorts. By individual risk probability and treatment effect, our analysis identified individuals with differential benefit from ulinastatin use (risk ratio [RR] for MODS of RR 0.802 [95% confidence interval (CI) 0.656, 0.981] for the predicted risk of 23.5%–41.6%; RR 1.196 [0.698–2.049] for the predicted risk of <23.5%; RR 0.922 [95% CI 0.816–1.042] for the predicted risk of >41.6%). By using artificial intelligence to define an individual’s benefit based on the risk probability and treatment effect prediction, we found that individual differences in risk probability likely have important effects on ulinastatin treatment and outcome, which highlights the need for individualizing the selection of optimal anti-inflammatory treatment goals for ATAAD patients.
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spelling pubmed-102762842023-06-18 Inflammatory risk stratification individualizes anti-inflammatory pharmacotherapy for acute type A aortic dissection Liu, Hong Li, Haiyang Han, Lu Zhang, Yingyuan Wu, Ying Hong, Liang Yang, Jinong Zhong, Jisheng Wang, Yuqi Wu, Dongkai Fan, Guoliang Chen, Junquan Zhang, Shengqiang Peng, Xingxing Zeng, Zhihua Tang, Zhiwei Lu, Zhanjie Sun, Lizhong Qian, Sichong Shao, Yongfeng Zhang, Hongjia Innovation (Camb) Report The systemic benefits of anti-inflammatory pharmacotherapy vary across cardiovascular diseases in clinical practice. We aimed to evaluate the application of artificial intelligence to acute type A aortic dissection (ATAAD) patients to determine the optimal target population who would benefit from urinary trypsin inhibitor use (ulinastatin). Patient characteristics at admission in the Chinese multicenter 5A study database (2016–2022) were used to develop an inflammatory risk model to predict multiple organ dysfunction syndrome (MODS). The population (5,126 patients from 15 hospitals) was divided into a 60% sample for model derivation, with the remaining 40% used for model validation. Next, we trained an extreme gradient-boosting algorithm (XGBoost) to develop a parsimonious patient-level inflammatory risk model for predicting MODS. Finally, a top-six-feature tool consisting of estimated glomerular filtration rate, leukocyte count, platelet count, De Ritis ratio, hemoglobin, and albumin was built and showed adequate predictive performance regarding its discrimination, calibration, and clinical utility in derivation and validation cohorts. By individual risk probability and treatment effect, our analysis identified individuals with differential benefit from ulinastatin use (risk ratio [RR] for MODS of RR 0.802 [95% confidence interval (CI) 0.656, 0.981] for the predicted risk of 23.5%–41.6%; RR 1.196 [0.698–2.049] for the predicted risk of <23.5%; RR 0.922 [95% CI 0.816–1.042] for the predicted risk of >41.6%). By using artificial intelligence to define an individual’s benefit based on the risk probability and treatment effect prediction, we found that individual differences in risk probability likely have important effects on ulinastatin treatment and outcome, which highlights the need for individualizing the selection of optimal anti-inflammatory treatment goals for ATAAD patients. Elsevier 2023-05-25 /pmc/articles/PMC10276284/ /pubmed/37333431 http://dx.doi.org/10.1016/j.xinn.2023.100448 Text en © 2023 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 Report
Liu, Hong
Li, Haiyang
Han, Lu
Zhang, Yingyuan
Wu, Ying
Hong, Liang
Yang, Jinong
Zhong, Jisheng
Wang, Yuqi
Wu, Dongkai
Fan, Guoliang
Chen, Junquan
Zhang, Shengqiang
Peng, Xingxing
Zeng, Zhihua
Tang, Zhiwei
Lu, Zhanjie
Sun, Lizhong
Qian, Sichong
Shao, Yongfeng
Zhang, Hongjia
Inflammatory risk stratification individualizes anti-inflammatory pharmacotherapy for acute type A aortic dissection
title Inflammatory risk stratification individualizes anti-inflammatory pharmacotherapy for acute type A aortic dissection
title_full Inflammatory risk stratification individualizes anti-inflammatory pharmacotherapy for acute type A aortic dissection
title_fullStr Inflammatory risk stratification individualizes anti-inflammatory pharmacotherapy for acute type A aortic dissection
title_full_unstemmed Inflammatory risk stratification individualizes anti-inflammatory pharmacotherapy for acute type A aortic dissection
title_short Inflammatory risk stratification individualizes anti-inflammatory pharmacotherapy for acute type A aortic dissection
title_sort inflammatory risk stratification individualizes anti-inflammatory pharmacotherapy for acute type a aortic dissection
topic Report
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10276284/
https://www.ncbi.nlm.nih.gov/pubmed/37333431
http://dx.doi.org/10.1016/j.xinn.2023.100448
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