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Automated classification of eligibility criteria in clinical trials to facilitate patient-trial matching for specific patient populations

机译:对临床试验中的资格标准进行自动分类以促进针对特定患者群体的患者试验匹配

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摘要

>Objective:To develop automated classification methods for eligibility criteria in ClinicalTrials.gov to facilitate patient-trial matching for specific populations such as persons living with HIV or pregnant women. >Materials and Methods:We annotated 891 interventional cancer trials from ClinicalTrials.gov based on their eligibility for human immunodeficiency virus (HIV)-positive patients using their eligibility criteria. These annotations were used to develop classifiers based on regular expressions and machine learning (ML). After evaluating classification of cancer trials for eligibility of HIV-positive patients, we sought to evaluate the generalizability of our approach to more general diseases and conditions. We annotated the eligibility criteria for 1570 of the most recent interventional trials from ClinicalTrials.gov for HIV-positive and pregnancy eligibility, and the classifiers were retrained and reevaluated using these data. >Results:On the cancer-HIV dataset, the baseline regex model, the bag-of-words ML classifier, and the ML classifier with named entity recognition (NER) achieved macro-averaged F2 scores of 0.77, 0.87, and 0.87, respectively; the addition of NER did not result in a significant performance improvement. On the general dataset, ML + NER achieved macro-averaged F2 scores of 0.91 and 0.85 for HIV and pregnancy, respectively. >Discussion and Conclusion:The eligibility status of specific patient populations, such as persons living with HIV and pregnant women, for clinical trials is of interest to both patients and clinicians. We show that it is feasible to develop a high-performing, automated trial classification system for eligibility status that can be integrated into consumer-facing search engines as well as patient-trial matching systems.
机译:>目标:在ClinicalTrials.gov中开发符合资格标准的自动分类方法,以促进针对特定人群(如HIV感染者或孕妇)的患者-试验匹配。 >材料和方法:我们根据临床合格审定的资格,对来自ClinicalTrials.gov的891项介入性癌症试验进行了注释,这些试验基于其对人类免疫缺陷病毒(HIV)阳性患者的资格。这些注释用于基于正则表达式和机器学习(ML)开发分类器。在评估了符合HIV阳性患者资格的癌症试验的分类之后,我们试图评估我们对更常见疾病和状况的研究方法的一般性。我们注释了来自ClinicalTrials.gov的最新干预试验中1570例符合HIV阳性和妊娠资格的资格标准,并使用这些数据对分类器进行了重新训练和重新评估。 >结果:在癌症HIV数据集上,基线正则表达式模型,词袋ML分类器和命名实体识别(NER)的ML分类器获得的平均F2得分为0.77,分别为0.87和0.87; NER的添加并没有显着改善性能。在一般数据集上,ML + NER在HIV和妊娠方面分别获得了0.91和0.85的宏观平均F2分数。 >讨论和结论:特定的患者群体(例如HIV感染者和孕妇)是否符合临床试验的资格状态,这对患者和临床医生都具有兴趣。我们表明开发一种针对资格状态的高性能,自动化的试验分类系统是可行的,该系统可以集成到面向消费者的搜索引擎以及患者试验匹配系统中。

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