Mohamed bin Zayed University of Artificial Intelligence, Abu Dhabi, UAE.
Sheikh Khalifa Medical City, Abu Dhabi, UAE.
Sci Rep. 2024 Jul 16;14(1):16464. doi: 10.1038/s41598-024-66812-5.
The spread of antimicrobial resistance (AMR) leads to challenging complications and losses of human lives plus medical resources, with a high expectancy of deterioration in the future if the problem is not controlled. From a machine learning perspective, data-driven models could aid clinicians and microbiologists by anticipating the resistance beforehand. Our study serves as the first attempt to harness deep learning (DL) techniques and the multimodal data available in electronic health records (EHR) for predicting AMR. In this work, we utilize and preprocess the MIMIC-IV database extensively to produce separate structured input sources for time-invariant and time-series data customized to the AMR task. Then, a multimodality fusion approach merges the two modalities with clinical notes to determine resistance based on an antibiotic or a pathogen. To efficiently predict AMR, our approach builds the foundation for deploying multimodal DL techniques in clinical practice, leveraging the existing patient data.
抗菌药物耐药性(AMR)的传播导致了具有挑战性的并发症和人类生命的损失,以及医疗资源的损失,如果不加以控制,预计未来情况还会恶化。从机器学习的角度来看,数据驱动的模型可以通过提前预测耐药性来帮助临床医生和微生物学家。我们的研究首次尝试利用深度学习(DL)技术和电子病历(EHR)中可用的多模态数据来预测 AMR。在这项工作中,我们广泛利用和预处理 MIMIC-IV 数据库,为针对 AMR 任务定制的时不变和时间序列数据生成单独的结构化输入源。然后,一种多模态融合方法将两种模态与临床记录融合,根据抗生素或病原体来确定耐药性。为了有效地预测 AMR,我们的方法为在临床实践中部署多模态 DL 技术奠定了基础,利用了现有患者数据。