Inflammatory signature-based theranostics for acute lung injury in acute type A aortic dissection.

IF 2.2 Q2 MULTIDISCIPLINARY SCIENCES
PNAS nexus Pub Date : 2024-08-27 eCollection Date: 2024-09-01 DOI:10.1093/pnasnexus/pgae371
Hong Liu, Yi-Fei Diao, Si-Chong Qian, Yong-Feng Shao, Sheng Zhao, Hai-Yang Li, Hong-Jia Zhang
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Abstract

Acute lung injury (ALI) is a serious adverse event in the management of acute type A aortic dissection (ATAAD). Using a large-scale cohort, we applied artificial intelligence-driven approach to stratify patients with different outcomes and treatment responses. A total of 2,499 patients from China 5A study database (2016-2022) from 10 cardiovascular centers were divided into 70% for derivation cohort and 30% for validation cohort, in which extreme gradient boosting algorithm was used to develop ALI risk model. Logistic regression was used to assess the risk under anti-inflammatory strategies in different risk probability. Eight top features of importance (leukocyte, platelet, hemoglobin, base excess, age, creatinine, glucose, and left ventricular end-diastolic dimension) were used to develop and validate an ALI risk model, with adequate discrimination ability regarding area under the receiver operating characteristic curve of 0.844 and 0.799 in the derivation and validation cohort, respectively. By the individualized treatment effect prediction, ulinastatin use was significantly associated with significantly lower risk of developing ALI (odds ratio [OR] 0.623 [95% CI 0.456, 0.851]; P = 0.003) in patients with a predicted ALI risk of 32.5-73.0%, rather than in pooled patients with a risk of <32.5 and >73.0% (OR 0.929 [0.682, 1.267], P = 0.642) (Pinteraction = 0.075). An artificial intelligence-driven risk stratification of ALI following ATAAD surgery were developed and validated, and subgroup analysis showed the heterogeneity of anti-inflammatory pharmacotherapy, which suggested individualized anti-inflammatory strategies in different risk probability of ALI.

基于炎症特征的疗法治疗急性 A 型主动脉夹层中的急性肺损伤。
急性肺损伤(ALI)是急性 A 型主动脉夹层(ATAAD)治疗过程中的一个严重不良事件。我们利用大规模队列,采用人工智能驱动的方法对不同结局和治疗反应的患者进行分层。我们将来自10个心血管中心的中国5A研究数据库(2016-2022年)中的2499名患者分为70%的衍生队列和30%的验证队列,并使用极端梯度提升算法建立ALI风险模型。采用逻辑回归评估不同风险概率下抗炎策略的风险。八个最重要的特征(白细胞、血小板、血红蛋白、基数过高、年龄、肌酐、血糖和左心室舒张末期尺寸)被用于开发和验证 ALI 风险模型,在衍生队列和验证队列中,接收器操作特征曲线下面积分别为 0.844 和 0.799,具有足够的区分能力。通过个体化治疗效果预测,在预测ALI风险为32.5-73.0%的患者中,使用乌利那他汀与明显较低的ALI发生风险显著相关(比值比[OR] 0.623 [95% CI 0.456, 0.851];P = 0.003),而不是在风险为73.0%的集合患者中(OR 0.929 [0.682, 1.267],P = 0.642)(Pinteraction = 0.075)。开发并验证了人工智能驱动的ATAAD手术后ALI风险分层,亚组分析显示了抗炎药物治疗的异质性,建议针对不同的ALI风险概率采取个体化的抗炎策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
1.80
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