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Identifying Evidence Quality for Updating Evidence-Based Medical Guidelines

机译:识别证据质量以更新基于证据的医学指南

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Evidence-based medical guidelines contain a collection of recommendations which have been created using the best clinical research findings (a.k.a. evidences) of the highest value to aid in the delivery of optimum clinical care to patients. In evidence-based medical guidelines, the conclusions (a.k.a. recommendations) are marked with different evidence levels according to quality of the supporting evidences. Finding new relevant and higher quality evidences is an important issue for supporting the process of updating medical guidelines. In this paper, we propose a method to automatically identify all evidence classes. Furthermore, the proposed approach has been implemented by a rule-based approach, in which the identification knowledge is formalized as a set of rules in the declarative logic programming language Prolog, so that the knowledge can be easily maintained, updated, and re-used. Our experiments show that the proposed method for identifying the evidence quality has a recall of 0.35 and a precision of 0.42. For the identification of A-class evidences (the top evidence class), the performance of the proposed method improves to recall = 0.63 and precision = 0.74.
机译:循证医学指南包含一系列建议,这些建议是使用具有最高价值的最佳临床研究结果(又称证据)创建的,有助于为患者提供最佳的临床护理。在基于证据的医学指南中,根据支持证据的质量,结论(也称为建议)标有不同的证据级别。寻找新的相关且质量更高的证据是支持更新医学指南过程的重要问题。在本文中,我们提出了一种自动识别所有证据类别的方法。此外,所提出的方法已经通过基于规则的方法来实现,在该方法中,识别知识被形式化为声明性逻辑编程语言Prolog中的一组规则,以便可以轻松地维护,更新和重复使用该知识。 。我们的实验表明,提出的用于鉴定证据质量的方法具有0.35的召回率和0.42的精度。为了识别A级证据(顶级证据类别),所提方法的性能提高为召回率= 0.63和精度= 0.74。

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