Sensitivity of Estimators for Measuring Information Amount in Web-Based Medical Documents

Jolanta Mizera-Pietraszko
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Abstract

Nowadays, communication between patient and doctor during an appointment has changed significantly owning to the opportunity that medical portals provide. Whether or not necessarily appreciated by the doctors, the patients became more aware of the first symptoms’ suggesting a particular disease and the medical procedures that apply as a standard. Estimating amount of reliable factual medical information in a document is carried out by parametrizing space of digital documents and dividing it into subsequent layers that represent distribution of the system responses computed as random variables to a query about medical information. Analyzed are the following attributes: dynamism of decrease of query words numbers in the documents, precision, recall in the metric space layers, their mutual correlation and specifically the amount of reliable medical information in the documents. Sensitivity of estimators is explored in order to determine the final decision about further browsing digital documents of the metric space for more medical information that satisfies the user’s need. For identification of the true positive information in the space layer and then, in each document of this layer, matching of medical terminology with the document contents, is processed following binary Boolean search space model.
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基于网络的医学文献信息量估计器的灵敏度
如今,由于医疗门户网站提供的机会,预约期间患者和医生之间的沟通发生了重大变化。无论是否得到医生的认可,患者都越来越意识到最初的症状表明了一种特定的疾病,以及作为标准的医疗程序。通过对数字文档的空间进行参数化,并将其划分为后续的层,这些层表示作为随机变量计算的系统响应对医疗信息查询的分布,从而估计文档中可靠的事实医学信息的数量。分析了文档中查询词数减少的动态性、度量空间层的查全率、查全率、查全率和查全率之间的相互关系,特别是文档中可靠医疗信息的数量。探讨了估计器的灵敏度,以确定是否进一步浏览度量空间的数字文档以获得更多满足用户需求的医疗信息的最终决策。为了识别空间层中的真正信息,然后在该层的每个文档中,按照二进制布尔搜索空间模型进行医学术语与文档内容的匹配。
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