Hong Yucai, Chen Lin, Yu Yang, Zhao Ziyue, Wu Ronghua, Gong Rui, Cheng Yandong, Yuan Lingmin, Zheng Shaojun, Zheng Cheng, Lin Ronghai, Chen Jianping, Sun Kangwei, Xu Ping, Ye Li, Han Chaoting, Zhou Xihao, Liu Yaqing, Yu Jianhua, Zheng Yaqin, Yang Jie, Huang Jiajie, Chen Juan, Fang Junjie, Chen Chensong, Fan Bo, Fang Honglong, Ye Baning, Chen Xiyun, Qian Xiaoli, Chen Junxiang, Yu Haitao, Zhang Jun, Pan Xi-Ming, Zhan Yi-Xing, Zheng You-Hai, Huang Zhang-Hong, Zhong Chao, Liu Ning, Ni Hongying, Zhang Gengsheng, Zhang Zhongheng
Department of Emergency Medicine, Sir Run Run Shaw Hospital, Zhejiang University School of Medicine, Hangzhou, Zhejiang, China.
Department of Critical Care Medicine, Second Affiliated Hospital, Zhejiang University School of Medicine, Hangzhou, Zhejiang, China.
J Intensive Med. 2024 Dec 16;5(3):252-261. doi: 10.1016/j.jointm.2024.11.001. eCollection 2025 Jul.
Heterogeneity is a critical characteristic of severe coronavirus disease 2019 (COVID-19) pneumonia. Integrating chest computed tomography (CT) imaging and plasma proteomics holds the potential to elucidate Image-Expression Axes (IEAs) that can effectively address this disease heterogeneity.
A cohort of subjects diagnosed with severe COVID-19 pneumonia at 12 participating hospitals between December 2022 and March 2023 was prospectively screened for eligibility. Context-aware self-supervised representation learning (CSRL) was employed to extract intricate features from CT images. Quantification of plasma proteins was achieved using the Olink® inflammation panel. A deep learning model was meticulously trained, with CSRL features serving as input and the proteomic data as the target. This trained model facilitated the construction of IEAs, offering a representation of the underlying disease heterogeneity. The potential of these IEAs for prognostic and predictive enrichment was subsequently explored via conventional regression models.
The study cohort comprised 1979 eligible patients, who were stratified into a training set of 630 individuals and a testing set of 1349 individuals. Three distinct IEAs were identified: IEA1 was correlated with shock conditions, IEA2 was associated with the systemic inflammatory response syndrome (SIRS), and IEA3 was reflective of the coagulation profile. Notably, IEA1 (odds ratio [OR]= 0.52, 95 % confidence interval [CI]: 0.40 to 0.67, < 0.001) and IEA2 (OR=0.74, 95 % CI: 0.62 to 0.90, =0.002) exhibited significant associations with the risk of mortality. Intriguingly, patients characterized by lower IEA1 values (<-2, indicative of more severe shock) demonstrated a reduced mortality risk when administered with steroids. Conversely, patients with higher IEA2 values seemed to benefit from a judicious approach to fluid infusion.
Our comprehensive approach, seamlessly integrating advanced deep learning techniques, proteomic profiling, and clinical data, has unraveled intricate interdependencies between IEAs, protein abundance patterns, therapeutic interventions, and ultimate patient outcomes in the context of severe COVID-19 pneumonia. These discoveries make a significant contribution to the rapidly advancing field of precision medicine, paving the way for tailored therapeutic strategies that can significantly impact patient care.
异质性是2019年冠状病毒病(COVID-19)重症肺炎的一个关键特征。整合胸部计算机断层扫描(CT)成像和血浆蛋白质组学有可能阐明能够有效应对这种疾病异质性的图像-表达轴(IEA)。
对2022年12月至2023年3月期间在12家参与研究的医院被诊断为COVID-19重症肺炎的一组受试者进行前瞻性资格筛查。采用上下文感知自监督表征学习(CSRL)从CT图像中提取复杂特征。使用Olink®炎症检测板对血浆蛋白进行定量。精心训练一个深度学习模型,将CSRL特征作为输入,蛋白质组学数据作为目标。这个经过训练的模型有助于构建IEA,呈现潜在的疾病异质性。随后通过传统回归模型探索这些IEA在预后和预测富集方面的潜力。
研究队列包括1979名符合条件的患者,他们被分层为一个由630名个体组成的训练集和一个由1349名个体组成的测试集。识别出三种不同的IEA:IEA1与休克状态相关,IEA2与全身炎症反应综合征(SIRS)相关,IEA3反映凝血情况。值得注意的是,IEA1(比值比[OR]=0.52,95%置信区间[CI]:0.40至0.67,<0.001)和IEA2(OR=0.74,95%CI:0.62至0.90,=0.002)与死亡风险显著相关。有趣的是,IEA1值较低(<-2,表明休克更严重)的患者在使用类固醇治疗时死亡风险降低。相反,IEA2值较高的患者似乎从谨慎的液体输注方法中获益。
我们的综合方法无缝整合了先进的深度学习技术、蛋白质组学分析和临床数据,揭示了在COVID-19重症肺炎背景下IEA、蛋白质丰度模式、治疗干预和最终患者结局之间复杂的相互依赖关系。这些发现对迅速发展的精准医学领域做出了重大贡献,为能够显著影响患者护理的量身定制治疗策略铺平了道路。