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Personalized Prescription for Comorbidity

机译:合并症的个性化处方

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摘要

Personalized medicine (PM) aiming at tailoring medical treatment to individual patient is critical in guiding precision prescription. An important challenge for PM is comorbidity due to the complex interrelation of diseases, medications and individual characteristics of the patient. To address this, we study the problem of PM for comorbidity and propose a neural network framework Deep Personalized Prescription for Comorbidity (PPC). PPC exploits multi-source information from massive electronic medical records (EMRs), such as demographic information and laboratory indicators, to support personalized prescription. Patient-level, disease-level and drug-level representations are simultaneously learned and fused with a trilinear method to achieve personalized prescription for comorbidity. Experiments on a publicly real world EMRs dataset demonstrate PPC outperforms state-of-the-art works.
机译:旨在针对个别患者量身定制医疗服务的个性化医学(PM)对于指导精确处方至关重要。 PM的一个重要挑战是由于疾病,药物和患者个体特征之间复杂的相互关系而导致的合并症。为了解决这个问题,我们研究了PM用于合并症的问题,并提出了一种神经网络框架用于合并症的深度个性化处方(PPC)。 PPC利用来自大量电子病历(EMR)的多源信息(例如人口统计信息和实验室指标)来支持个性化处方。同时学习患者水平,疾病水平和药物水平的表示,并与三线性方法融合,以实现针对合并症的个性化处方。在公开的真实世界EMR数据集上进行的实验表明,PPC的表现优于最新作品。

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