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Drug Reaction Discriminator within Encoder-Decoder Neural Network Model: COVID-19 Pandemic Case Study

机译:编码器解码器神经网络模型中的药物反应鉴别器:Covid-19大流行案例研究

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Social networks become widely used for understanding patients shared experiences, and reaching a vast audience in a matter of seconds. In particular, many health-related organizations used sentiment analysis to automatically reporting treatment issues, drug misuse, new infectious disease symptoms. Few approaches have proposed in this matter, especially for detecting different drug reaction descriptions from patients generated narratives on social networks. Most of them consisted of only detecting adverse drug reaction(ADR), but may fail to retrieve other aspect, e.g, the beneficial drug reaction or drug retroviral effects such as “relieve intraocular pressure associated with glaucoma”. In this study, we propose to develop an encoder-decoder for drug reaction discrimination that involves an enhanced distributed biomedical representation from controlled medical vocabulary such as PubMed and Clinical note MIMIC III. The embedding mechanism primarily leverages contextual information and learn from predefined clinical relationships in term of medical conditions in order to define possible drug reaction of individual meaning and multi-word expressions in the field of distributional semantics configuration that clarifies sentence's similarity in the same contextual target space, which are further share semantically common drug description meanings. Furthermore, the bidirectional sentiment inductive model are created to enhance drug reactions vectorization from real-world patients description whereby achieved higher performance in terms of disambiguating false positive and/or negative assessments. As a result, we achieved an 85.2% accuracy performance and the architecture shows a well-encoding of real-world drug entities descriptions.
机译:社交网络广泛用于了解患者共享经验,并在几秒钟内达到广阔的受众。特别是,许多健康有关的组织使用的情绪分析自动报告治疗问题,滥用滥用,新传染病症状。在此问题中提出了很少的方法,特别是在社交网络中检测来自患者的不同药物反应描述。其中大多数由检测不良药物反应(ADR)组成,但可能无法检测其他方面,例如有益药物反应或药物逆转录病毒效应,例如“缓解与青光眼相关的眼内压力”。在这项研究中,我们建议开发用于药物反应歧视的编码器解码器,其涉及来自受控医学词汇的增强的分布生物医学表示,例如PubMed和临床说明模拟III。嵌入机制主要利用上下文信息,并在医疗条件期间从预定义的临床关系中学习,以便在分布语义配置中定义个人含义和多字表达式的可能的药物反应,以阐明相同的上下文目标空间中的句子的相似性,这进一步分享了语义常见的药物描述含义。此外,产生双向情绪电感模型以增强真实患者的药物反应矢量化,从而在消除歧美假阳性和/或阴性评估方面取得了更高的性能。因此,我们实现了85.2%的精度性能,并且该架构显示了真实的药物实体描述的良好编码。

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