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Knowledge Guided Multi-instance Multi-label Learning via Neural Networks in Medicines Prediction

机译:知识指导的神经网络在药物预测中进行多实例多标签学习

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Predicting medicines for patients with co-morbidity has long been recognized as a hard task due to complex dependencies between diseases and medicines. Efforts have been made recently to build high-order dependency between diseases and medicines by extracting knowledge from electronic health records (EHR). But current works failed to utilize additional knowledge and ignored the data skewness problem which lead to sub-optimal combination of medicines. In this paper, we formulate the medicines prediction task in multi-instance multi-label learning framework considering the multi-diagnoses as input instances and multi-medicines as output labels. We propose a knowledge-guided multi-instance multi-label networks called mname where two types of additional knowledge are incorporated into a RNN encoder-decoder model. The utilization of structural knowledge like clinical ontology provides a way to learn better representation called tree embedding by utilizing the ancestors’ information. Contextual knowledge is a global summarization of input instances which is informative for personal prediction. Experiments are conducted on a real world clinical dataset which showed the necessity to combine both contextual and structural knowledge and the mname performs better than baselines up to 4+% in terms of Jaccard similarity score.
机译:由于疾病和药物之间的复杂依赖关系,长期以来人们一直认为为合并症患者预测药物是一项艰巨的任务。最近,人们已经通过从电子健康记录(EHR)中提取知识来建立疾病与药物之间的高级依赖性。但是当前的工作未能利用额外的知识,而忽略了导致药物组合不理想的数据偏度问题。在本文中,我们将多诊断作为输入实例,将多药物作为输出标签,在多实例多标签学习框架中制定药物预测任务。我们提出了一种称为 mname的知识导向的多实例多标签网络,其中两种类型的附加知识都被合并到RNN编码器-解码器模型中。利用诸如临床本体论之类的结构知识,可以通过利用祖先的信息来学习更好的表示方法,称为树嵌入。上下文知识是输入实例的全局汇总,可为个人预测提供信息。在真实世界的临床数据集上进行的实验表明,必须结合上下文和结构知识, mname的表现要比Jaccard相似度得分高4%以上。

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