Centre for Health Informatics, Australian Institute of Health Innovation, Macquarie University, Sydney, NSW, Australia.
Computational Health Informatics Program, Boston Children's Hospital, Boston, MA, USA.
BMC Med Res Methodol. 2021 Dec 18;21(1):281. doi: 10.1186/s12874-021-01485-6.
Clinical trial registries can be used as sources of clinical evidence for systematic review synthesis and updating. Our aim was to evaluate methods for identifying clinical trial registrations that should be screened for inclusion in updates of published systematic reviews.
A set of 4644 clinical trial registrations (ClinicalTrials.gov) included in 1089 systematic reviews (PubMed) were used to evaluate two methods (document similarity and hierarchical clustering) and representations (L2-normalised TF-IDF, Latent Dirichlet Allocation, and Doc2Vec) for ranking 163,501 completed clinical trials by relevance. Clinical trial registrations were ranked for each systematic review using seeding clinical trials, simulating how new relevant clinical trials could be automatically identified for an update. Performance was measured by the number of clinical trials that need to be screened to identify all relevant clinical trials.
Using the document similarity method with TF-IDF feature representation and Euclidean distance metric, all relevant clinical trials for half of the systematic reviews were identified after screening 99 trials (IQR 19 to 491). The best-performing hierarchical clustering was using Ward agglomerative clustering (with TF-IDF representation and Euclidean distance) and needed to screen 501 clinical trials (IQR 43 to 4363) to achieve the same result.
An evaluation using a large set of mined links between published systematic reviews and clinical trial registrations showed that document similarity outperformed hierarchical clustering for identifying relevant clinical trials to include in systematic review updates.
临床试验注册可以作为系统评价综合和更新的临床证据来源。我们的目的是评估识别临床试验注册的方法,这些注册应筛选纳入已发表系统评价的更新。
使用包含在 1089 项系统评价中的 4644 项临床试验注册(ClinicalTrials.gov)来评估两种方法(文档相似度和层次聚类)和表示(L2 归一化 TF-IDF、潜在狄利克雷分配和 Doc2Vec),以对 163501 项已完成的临床试验进行相关性排序。使用种子临床试验对每个系统评价进行临床试验注册排序,模拟如何自动为更新识别新的相关临床试验。性能通过需要筛选的临床试验数量来衡量,以识别所有相关的临床试验。
使用基于 TF-IDF 特征表示和欧几里得距离度量的文档相似度方法,在筛选 99 项试验后,可识别出一半系统评价的所有相关临床试验(IQR 19 至 491)。表现最好的层次聚类使用 Ward 凝聚聚类(基于 TF-IDF 表示和欧几里得距离),需要筛选 501 项试验(IQR 43 至 4363)才能达到相同的结果。
使用已发表系统评价和临床试验注册之间挖掘的大量链接进行评估表明,在识别要纳入系统评价更新的相关临床试验时,文档相似度优于层次聚类。