Data-Driven Technology Roadmaps to Identify Potential Technology Opportunities for Hyperuricemia Drugs.

Lijie Feng, Weiyu Zhao, Jinfeng Wang, Kuo-Yi Lin, Yanan Guo, Luyao Zhang
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引用次数: 4

Abstract

Hyperuricemia is a metabolic disease with an increasing incidence in recent years. It is critical to identify potential technology opportunities for hyperuricemia drugs to assist drug innovation. A technology roadmap (TRM) can efficiently integrate data analysis tools to track recent technology trends and identify potential technology opportunities. Therefore, this paper proposes a systematic data-driven TRM approach to identify potential technology opportunities for hyperuricemia drugs. This data-driven TRM includes the following three aspects: layer mapping, content mapping and opportunity finding. First we deal with layer mapping.. The BERT model is used to map the collected literature, patents and commercial hyperuricemia drugs data into the technology layer and market layer in TRM. The SAO model is then used to analyze the semantics of technology and market layer for hyperuricemia drugs. We then deal with content mapping. The BTM model is used to identify the core SAO component topics of hyperuricemia in technology and market dimensions. Finally, we consider opportunity finding. The link prediction model is used to identify potential technological opportunities for hyperuricemia drugs. This data-driven TRM effectively identifies potential technology opportunities for hyperuricemia drugs and suggests pathways to realize these opportunities. The results indicate that resurrecting the pseudogene of human uric acid oxidase and reducing the toxicity of small molecule drugs will be potential opportunities for hyperuricemia drugs. Based on the identified potential opportunities, comparing the DNA sequences from different sources and discovering the critical amino acid site that affects enzyme activity will be helpful in realizing these opportunities. Therefore, this research provides an attractive option analysis technology opportunity for hyperuricemia drugs.

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数据驱动的技术路线图确定高尿酸血症药物的潜在技术机会。
高尿酸血症是近年来发病率不断上升的代谢性疾病。确定高尿酸血症药物的潜在技术机会以协助药物创新至关重要。技术路线图(TRM)可以有效地集成数据分析工具,以跟踪最新的技术趋势并识别潜在的技术机会。因此,本文提出了一种系统的数据驱动的TRM方法,以确定高尿酸血症药物的潜在技术机会。这种数据驱动的TRM包括以下三个方面:层映射、内容映射和机会发现。首先我们处理图层映射。利用BERT模型将收集到的文献、专利和商业高尿酸血症药物数据映射到TRM中的技术层和市场层。利用SAO模型分析了高尿酸血症药物的技术层和市场层语义。然后我们处理内容映射。BTM模型用于在技术和市场维度上确定高尿酸血症的核心SAO组件主题。最后,我们考虑机会寻找。链接预测模型用于识别高尿酸血症药物的潜在技术机会。这种数据驱动的TRM有效地识别了高尿酸血症药物的潜在技术机会,并提出了实现这些机会的途径。结果表明,复活人尿酸氧化酶假基因和降低小分子药物的毒性将是高尿酸血症药物的潜在机遇。在确定潜在机会的基础上,比较不同来源的DNA序列,发现影响酶活性的关键氨基酸位点,将有助于实现这些机会。因此,本研究为高尿酸血症药物提供了一个有吸引力的期权分析技术机会。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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