使用SNOMED进行临床试验相似性测量的初步研究

D. Wei, Tiara Campbell
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引用次数: 0

摘要

为患者、从业人员和研究人员准确、高效地找到相关临床试验的需求日益增加。本文提出了一种衡量临床试验相似性的方法,并探讨了该方法在有效推荐相关临床试验中的潜在应用。SNOMED术语用于提取和规范化临床试验标题(ctt)。基于相似性度量自动计算相似矩阵。从ClinicalTrial.gov网站中提取了1360个ctt,涵盖了导致美国死亡的五大疾病——心脏病、癌症、中风、糖尿病和肺病。分别为这五种疾病生成了五个相似矩阵。结果显示,1.2%的临床试验对具有相近的相似性。糖尿病临床试验的平均相似比最高。未来的临床试验研究将采用本体论和统计学等多种方法来提高搜索结果的准确率和召回率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A similarity measurement of clinical trials using SNOMED — A preliminary study
There is an increasing need to accurately and efficiently find relevant clinical trials for patients, practitioners, and researchers. This paper proposes a method for measuring the similarity among clinical trials and explores its potential uses in efficiently suggesting relevant clinical trials. SNOMED terms are applied to extract and normalize the clinical trial titles (CTTs). Similarity matrices are calculated automatically based on the similarity measures. One thousand three hundred and sixty CTTs were extracted covering the top five diseases - heart disease, cancer, stroke, diabetes, and lung disease - leading to death in the United States contained in ClinicalTrial.gov. Five similarity matrices are generated for the five diseases, respectively. Results show that 1.2% of the clinical trials pairs have close similarities. Clinical trials for diabetes have the highest average similarity ratio. Future research with clinical trials will use multiple methods such as ontological and statistical approaches to improve the precision and recall of the search results.
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