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基于Web的中医方证分析平台的设计 被引量:1
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作者 周卫强 黄惠勇 +8 位作者 邓宇 刘勇 易钊旭 雷洋 刘芳 宁泽璞 谭英 张振铭 刘东亮 《中国数字医学》 2020年第2期98-100,共3页
目的:为中医学人工智能提供可用数据,并服务于科研和临床医疗之目标。方法:以"病症、证候、处方、疗效的数据分析"为切入点,打造多人在线协同科研、数据共享的网络平台。实现Apriori等数据挖掘算法,获得智能诊断、处方对比、... 目的:为中医学人工智能提供可用数据,并服务于科研和临床医疗之目标。方法:以"病症、证候、处方、疗效的数据分析"为切入点,打造多人在线协同科研、数据共享的网络平台。实现Apriori等数据挖掘算法,获得智能诊断、处方对比、病证分型、病因病机分析等信息。调用D3.js等开源库,在浏览器端生成可交互的动态图表。结果:能帮助用户快捷高效地获取科研数据和分析结果。结论:利用互联网技术,能增强获取数据的能力。 展开更多
关键词 数据挖掘 医方证分析平台 中医学人工智能 数据可视化
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Research on Text Mining of Syndrome Element Syndrome Differentiation by Natural Language Processing 被引量:5
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作者 DENG Wen-Xiang ZHU Jian-Ping +6 位作者 LI Jing YUAN Zhi-Ying WU Hua-Ying YAO Zhong-Hua ZHANG Yi-Ge ZHANG Wen-An HUANG Hui-Yong 《Digital Chinese Medicine》 2019年第2期61-71,共11页
Objective Natural language processing (NLP) was used to excavate and visualize the core content of syndrome element syndrome differentiation (SESD). Methods The first step was to build a text mining and analysis envir... Objective Natural language processing (NLP) was used to excavate and visualize the core content of syndrome element syndrome differentiation (SESD). Methods The first step was to build a text mining and analysis environment based on Python language, and built a corpus based on the core chapters of SESD. The second step was to digitalize the corpus. The main steps included word segmentation, information cleaning and merging, document-entry matrix, dictionary compilation and information conversion. The third step was to mine and display the internal information of SESD corpus by means of word cloud, keyword extraction and visualization. Results NLP played a positive role in computer recognition and comprehension of SESD. Different chapters had different keywords and weights. Deficiency syndrome elements were an important component of SESD, such as "Qi deficiency""Yang deficiency" and "Yin deficiency". The important syndrome elements of substantiality included "Blood stasis""Qi stagnation", etc. Core syndrome elements were closely related. Conclusions Syndrome differentiation and treatment was the core of SESD. Using NLP to excavate syndromes differentiation could help reveal the internal relationship between syndromes differentiation and provide basis for artificial intelligence to learn syndromes differentiation. 展开更多
关键词 Syndrome element syndrome differentiation (SESD) Natural language processing (NLP) Diagnostics of TCM Artificial intelligence Text mining
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MEDICLOUD:a holistic study on the digital evolution of medical data
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作者 Astha Modi Nandish Bhayani +1 位作者 Samir Patel Manan Shah 《Digital Chinese Medicine》 2022年第2期112-122,共11页
The Corona Virus Disease 2019(COVID-19) pandemic has taught us many valuable lessons regarding the importance of our physical and mental health. Even with so many technological advancements, we still lag in developing... The Corona Virus Disease 2019(COVID-19) pandemic has taught us many valuable lessons regarding the importance of our physical and mental health. Even with so many technological advancements, we still lag in developing a system that can fully digitalize the medical data of each individual and make it readily accessible for both the patient and health worker at any point in time. Moreover, there are also no ways for the government to identify the legitimacy of a particular clinic. This study merges modern technology with traditional approaches,thereby highlighting a scenario where artificial intelligence(AI) merges with traditional Chinese medicine(TCM), proposing a way to advance the conventional approaches. The main objective of our research is to provide a one-stop platform for the government, doctors,nurses, and patients to access their data effortlessly. The proposed portal will also check the doctors’ authenticity. Data is one of the most critical assets of an organization, so a breach of data can risk users’ lives. Data security is of primary importance and must be prioritized. The proposed methodology is based on cloud computing technology which assures the security of the data and avoids any kind of breach. The study also accounts for the difficulties encountered in creating such an infrastructure in the cloud and overcomes the hurdles faced during the project, keeping enough room for possible future innovations. To summarize, this study focuses on the digitalization of medical data and suggests some possible ways to achieve it. Moreover, it also focuses on some related aspects like security and potential digitalization difficulties. 展开更多
关键词 Cloud computing Medical data DIGITALIZATION One-stop platform Artifical intelligence(AI) Traditional Chinese medicine(TCM)
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