基于社交媒体的临床推荐深度自编码器模型

IF 0.4 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS
D. Singh, Kretika Tiwari
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引用次数: 0

摘要

现代医学中研究最活跃的主题之一是使用深度学习和患者临床数据来制定药物和ADR建议。然而,临床界仍有一些工作要做,以建立一个混合推荐系统的模型。作为一种用于临床推荐的基于社交媒体学习的深度自动编码器模型,本研究提出了一种混合模型,该模型将深度自解码器与前n个相似的患者信息相结合,以产生联合优化函数(SAeCR)。可以使用网络表示学习技术提取内隐临床信息。在两个真实世界的社交网络数据集上进行了三个实验,以评估SAeCR模型的功效。实验表明,该模型在更大、更稀疏的数据集上优于其他分类方法。此外,社交网络数据可以帮助医生确定患者与合作患者关系的性质。SAeCR模型更有效,因为它融合了网络表征学习和社会理论的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Social Media Based Deep Auto-Encoder Model for Clinical Recommendation
One of the most actively studied topics in modern medicine is the use of deep learning and patient clinical data to make medication and ADR recommendations. However, the clinical community still has some work to do in order to build a model that hybridises the recommendation system. As a social media learning based deep auto-encoder model for clinical recommendation, this research proposes a hybrid model that combines deep self-decoder with Top n similar co-patient information to produce a joint optimisation function (SAeCR). Implicit clinical information can be extracted using the network representation learning technique. Three experiments were conducted on two real-world social network data sets to assess the efficacy of the SAeCR model. As demonstrated by the experiments, the suggested model outperforms the other classification method on a larger and sparser data set. In addition, social network data can help doctors determine the nature of a patient's relationship with a co-patient. The SAeCR model is more effective since it incorporates insights from network representation learning and social theory.
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来源期刊
CiteScore
0.70
自引率
0.00%
发文量
28
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