利用机器学习个性化预测移植受者的纵向COVID-19疫苗反应

IF 8.9 2区 医学 Q1 SURGERY
Ghazal Azarfar, Yingji Sun, Elisa Pasini, Aman Sidhu, Michael Brudno, Atul Humar, Deepali Kumar, Mamatha Bhat, Victor H Ferreira
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引用次数: 0

摘要

COVID-19大流行凸显了疫苗的重要性,特别是对于实体器官移植(SOT)接受者等免疫功能低下人群,他们的免疫反应往往较弱。本研究的目的是比较在这一高危人群接种疫苗12个月后预测SARS-CoV-2疫苗反应的深度学习架构。利用来自加拿大多中心队列的303名SOT受者的数据,开发了预测抗受体结合域(RBD)抗体水平的模型。该研究比较了传统的机器学习模型——逻辑回归、epsilon支持向量回归、随机森林回归和梯度增强回归——和深度学习架构,包括长短期记忆(LSTM)、循环神经网络和一种新的模型——路由LSTM。这种新模型将胶囊网络与LSTM相结合,以减少对大型数据集的需求。人口统计学、临床和移植特异性数据,以及纵向抗体测量,被纳入模型。路由LSTM表现最好,均方误差(MSE)为0.02±0.02,Pearson相关系数(PCC)为0.79±0.24,优于所有其他模型。影响疫苗应答的关键因素包括年龄、免疫抑制、突破性感染、BMI、性别和移植类型。这些发现表明,人工智能可能是一种有价值的工具,可用于定制疫苗策略,改善弱势移植受者的健康结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using machine learning for personalized prediction of longitudinal coronavirus disease 2019 vaccine responses in transplant recipients.

The coronavirus disease 2019 pandemic has underscored the importance of vaccines, especially for immunocompromised populations like solid organ transplant recipients, who often have weaker immune responses. The purpose of this study was to compare deep learning architectures for predicting severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) vaccine responses 12 months postvaccination in this high-risk group. Using data from 303 solid organ transplant recipients from a Canadian multicenter cohort, models were developed to forecast anti-receptor-binding domain antibody levels. The study compared traditional machine learning models-logistic regression, epsilon-support vector regression, random forest regressor, and gradient boosting regressor-and deep learning architectures, including long short-term memory (LSTM), recurrent neural networks, and a novel model, routed LSTM. This new model combines capsule networks with LSTM to reduce the need for large data sets. Demographic, clinical, and transplant-specific data, along with longitudinal antibody measurements, were incorporated into the models. The routed LSTM performed best, achieving a mean square error of 0.02 ± 0.02 and a Pearson correlation coefficient of 0.79 ± 0.24, outperforming all other models. Key factors influencing vaccine response included age, immunosuppression, breakthrough infection, body mass index, sex, and transplant type. These findings suggest that artificial intelligence could be a valuable tool in tailoring vaccine strategies, improving health outcomes for vulnerable transplant recipients.

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来源期刊
CiteScore
18.70
自引率
4.50%
发文量
346
审稿时长
26 days
期刊介绍: The American Journal of Transplantation is a leading journal in the field of transplantation. It serves as a forum for debate and reassessment, an agent of change, and a major platform for promoting understanding, improving results, and advancing science. Published monthly, it provides an essential resource for researchers and clinicians worldwide. The journal publishes original articles, case reports, invited reviews, letters to the editor, critical reviews, news features, consensus documents, and guidelines over 12 issues a year. It covers all major subject areas in transplantation, including thoracic (heart, lung), abdominal (kidney, liver, pancreas, islets), tissue and stem cell transplantation, organ and tissue donation and preservation, tissue injury, repair, inflammation, and aging, histocompatibility, drugs and pharmacology, graft survival, and prevention of graft dysfunction and failure. It also explores ethical and social issues in the field.
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