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Real-time Inferential Analytics Based on Online Databases of Trends: A Breakthrough Within the Discipline of Digital Epidemiology of Dentistry and Oral-Maxillofacial Surgery

机译:基于趋势在线数据库的实时推理分析:牙科和口腔颌面外科数字流行病学学科的突破

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Background: Epidemiological sciences have been evolving at an exponential rate paralleled only by the comparable growth within the discipline of data science. Digital epidemiological studies are playing a vital role in medical science analytics for the past few decades. To date, there are no published attempts at deploying the use of real-time analytics in connection with the disciplines of Dentistry or Medicine. Aims and Objectives: We deployed a real-time statistical analysis in connection with topics in Dental Anatomy and Dental Pathology represented by the maxillary sinus, posterior maxillary teeth, related oral pathology. The purpose is to infer the digital epidemiology based on a continuous stream of raw data retrieved from Google Trends database. Materials and Methods: Statistical analysis was carried out via Microsoft Excel 2016 and SPSS version 24. Google Trends database was used to retrieve data for digital epidemiology. Real-time analysis and the statistical inference were based on encoding a programming script using Python high-level programming language. A systematic review of the literature was carried out via PubMed-NCBI, the Cochrane Library, and Elsevier databases. Results: The comprehensive review of the literature, based on specific keywords search, yielded 491813 published studies. These were distributed as 488884 (PubMed-NCBI), 1611 (the Cochrane Library), and 1318 (Elsevier). However, there was no single study attempting real-time analytics. Nevertheless, we succeeded in achieving an automated real-time stream of data accompanied by a statistical inference based on data extrapolated from Google Trends. Conclusion: Real-time analytics are of considerable impact when implemented in biological and life sciences as they will tremendously reduce the required resources for research. Predictive analytics, based on artificial neural networks and machine learning algorithms, can be the next step to be deployed in continuation of the real-time systems to prognosticate changes in the temporal trends and the digital epidemiology of phenomena of interest.
机译:背景:流行病学以指数级的速度发展,仅与数据科学领域的可比增长相提并论。在过去的几十年中,数字流行病学研究在医学分析中起着至关重要的作用。迄今为止,还没有公开的尝试将实时分析与牙科或医学学科结合使用。目的和目的:我们针对以上颌窦,上颌后牙和相关口腔病理学为代表的“牙齿解剖学和牙科病理学”中的主题进行了实时统计分析。目的是根据从Google趋势数据库检索到的连续原始数据流来推断数字流行病学。材料和方法:通过Microsoft Excel 2016和SPSS 24版进行统计分析。使用Google趋势数据库检索数字流行病学数据。实时分析和统计推断基于使用Python高级编程语言对编程脚本进行编码的基础。通过PubMed-NCBI,Cochrane图书馆和Elsevier数据库对文献进行了系统的综述。结果:根据特定的关键词搜索对文献进行的全面审查产生了491813个已发表的研究。这些以488884(PubMed-NCBI),1611(Cochrane库)和1318(Elsevier)的形式分发。但是,没有一项研究尝试进行实时分析。不过,我们成功实现了自动实时数据流,并根据从Google趋势推断的数据进行了统计推断。结论:实时分析在生物学和生命科学中实施时具有重大影响,因为它们将大大减少研究所需的资源。基于人工神经网络和机器学习算法的预测分析可以成为实时系统延续中的下一步,以预测时间趋势的变化和感兴趣现象的数字流行病学。

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