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An application of least squares fit mapping to clinical classification.

机译:最小二乘拟合映射在临床分类中的应用。

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摘要

This paper describes a unique approach, "Least Square Fit Mapping," to clinical data classification. We use large collections of human-assigned text-to-category matches as training sets to compute the correlations between physicians' terms and canonical concepts. A Linear Least Squares Fit (LLSF) technique is employed to obtain a mapping function which optimally fits the known matches given in a training set and probabilistically captures the unknown matches for arbitrary texts. We tested our method with 16,032 texts from the Mayo Clinic, and judged the results using human-assigned answers. In a test for comparison, the LLSF mapping achieved a precision rate of 89% at 100% recall, outperforming alternative approaches including string matching (36% precision), string matching enhanced by morphological parsing (51% precision), and statistical weighting (61% precision).
机译:本文介绍了一种用于临床数据分类的独特方法“最小二乘拟合映射”。我们使用人类分配的文本到类别匹配的大量集合作为训练集,以计算医生的术语与规范概念之间的相关性。线性最小二乘拟合(LLSF)技术用于获得映射函数,该函数最佳地拟合训练集中给出的已知匹配,并概率性地捕获任意文本的未知匹配。我们用Mayo诊所的16,032篇文章测试了我们的方法,并使用人类指定的答案来判断结果。在比较测试中,LLSF映射在100%召回率下的准确率达到89%,优于其他方法,包括字符串匹配(36%精度),通过形态解析增强的字符串匹配(51%精度)和统计加权(61) %精度)。

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