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首页> 外文期刊>BMC Medical Informatics and Decision Making >Efficient identification of patients eligible for clinical studies using case-based reasoning on Scottish Health Research register (SHARE)
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Efficient identification of patients eligible for clinical studies using case-based reasoning on Scottish Health Research register (SHARE)

机译:利用基于苏格兰健康研究登记册(分享)的案例推理有资格鉴定患者符合临床研究的患者

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Trials often struggle to achieve their target sample size with only half doing so. Some researchers have turned to Electronic Health Records (EHRs), seeking a more efficient way of recruitment. The Scottish Health Research Register (SHARE) obtained patients’ consent for their EHRs to be used as a searching base from which researchers can find potential participants. However, due to the fact that EHR data is not complete, sufficient or accurate, a database search strategy may not generate the best case-finding result. The current study aims to evaluate the performance of a case-based reasoning method in identifying participants for population-based clinical studies recruiting through SHARE, and assess the difference between its resultant cohort and the original one deriving from searching EHRs. A case-based reasoning framework was applied to 119 participants in nine projects using two-fold cross-validation, with records from a further 86,292 individuals used for testing. A prediction score for study participation was derived from the diagnosis, procedure, pharmaceutical prescription, and laboratory test results attributes of each participant. Evaluation was conducted by calculating Area Under the ROC Curve and information retrieval metrics for the ranking list of the test set by prediction score. We compared the most likely participants as identified by searching a database to those ranked highest by our model. The average ROCAUC for nine projects was 81% indicating strong predictive ability for these data. However, the derived ranking lists showed lower predictive performance, with only 21% of the persons ranked within top 50 positions being the same as identified by searching databases. Case-based reasoning is may be more effective than a database search strategy for participant identification for clinical studies using population EHRs. The lower performance of ranking lists derived from case-based reasoning means that patients identified as highly suitable for study participation may still not be recruited. This suggests that further study is needed into improvements in the collection and curation of population EHRs, such as use of free text data to aid reliable identification of people more likely to be recruited to clinical trials.
机译:试验往往努力实现他们的目标样本大小,只有一半这样做。一些研究人员已经转向电子健康记录(EHRS),寻求更有效的招聘方式。苏格兰健康研究登记册(股份)获得了患者同意其EHRS作为搜索基础,研究人员可以找到潜在的参与者。但是,由于EHR数据不完整,足够或准确,数据库搜索策略可能不会产生最佳案例查找结果。目前的研究旨在评估基于案例的推理方法的表现,以识别通过分享招募的基于人口的临床研究的参与者,并评估其所得队列与原始的差异搜索EHRS之间的差异。将基于案例的推理框架应用于使用两倍交叉验证的九个项目的119名参与者,其中来自用于测试的另外86,292个个体的记录。学习参与的预测分数来自每个参与者的诊断,程序,药物处方和实验室测试结果属性。评估是通过计算ROC曲线下的面积和通过预测得分设置测试设置的排名列表的信息检索度量来进行评估。我们将最有可能的参与者与我们的模型中排名最高的人进行了比较。九个项目的平均rocauc为81%,表明这些数据的强烈预测能力。然而,派生的排名列表显示出更低的预测性能,只有21%的人排名在前50个位置,与通过搜索数据库标识的相同。基于案例的推理可能比使用人口EHRS的临床研究的参与者识别数据库搜索策略更有效。源于基于案例的推理的排名列表的性能较低意味着仍然不会招募标识为高度适合研究参与的患者。这表明需要进一步研究,以改善人口EHR的收集和策划,例如使用自由文本数据,以帮助可靠地识别人们更有可能被招募到临床试验的人。

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