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Formalization of clinical trial eligibility criteria: Evaluation of a pattern-based approach

机译:临床试验资格标准的正式化:基于模式的方法的评估

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The semi-automatic evaluation of eligibility criteria can facilitate the recruitment for clinical trials, timely completion of studies and generation of clinical evidence about new approaches to treatment, prevention and diagnosis. Because eligibility criteria are represented as free text, automatically extracting their meaning and evaluating them for a particular patient is challenging. This paper presents our approach to the problem of automatic interpretation of criteria meaning. It is based on detecting in text semantic entities (diseases, treatment, measurements etc.) using ontology annotators and semantic taggers, and detecting predefined patterns providing the contextual information in which these entities occur. Evaluation of the approach is the main subject of the paper. It covers several aspects: precision and recall of the pattern detection algorithm and the assessment of the implications of using the identified patterns to find potential candidates. It was performed manually using a subset of patterns and randomly selected 33 trials from ClinicalTrials.gov. The average precision and recall of pattern detection algorithm calculated for selected patterns is 0.9 and 0.91, meaning that in most cases using the patterns can lead to correct interpretation of criteria and can support patient recruitment.
机译:资格标准的半自动评估可以促进招募临床试验,及时完成研究并生成有关治疗,预防和诊断新方法的临床证据。由于资格标准以自由文本形式表示,因此自动提取其含义并对特定患者进行评估是一项挑战。本文介绍了我们对标准含义自动解释问题的处理方法。它基于使用本体注释器和语义标记器在文本语义实体(疾病,处理,度量等)中进行检测,并检测预定义模式以提供其中存在这些实体的上下文信息。该方法的评估是本文的主要主题。它涵盖了几个方面:模式检测算法的精度和召回率,以及使用已识别模式查找潜在候选者的含义的评估。它是使用一部分模式手动进行的,并从ClinicalTrials.gov随机选择了33个试验。针对所选模式计算出的模式检测算法的平均精度和召回率分别为0.9和0.91,这意味着在大多数情况下,使用模式可以导致对标准的正确解释并可以支持患者招募。

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