Clinical Trial Generalizability Assessment in the Big Data Era: A Review.
Jiang BianXiang TangXi YangYi GuoThomas J GeorgeNeil CharnessKelsa Bartley Quan HemWilliam R HoganJiang BianPublished in: Clinical and translational science (2020)
Clinical studies, especially randomized, controlled trials, are essential for generating evidence for clinical practice. However, generalizability is a long-standing concern when applying trial results to real-world patients. Generalizability assessment is thus important, nevertheless, not consistently practiced. We performed a systematic review to understand the practice of generalizability assessment. We identified 187 relevant articles and systematically organized these studies in a taxonomy with three dimensions: (i) data availability (i.e., before or after trial (a priori vs. a posteriori generalizability)); (ii) result outputs (i.e., score vs. nonscore); and (iii) populations of interest. We further reported disease areas, underrepresented subgroups, and types of data used to profile target populations. We observed an increasing trend of generalizability assessments, but < 30% of studies reported positive generalizability results. As a priori generalizability can be assessed using only study design information (primarily eligibility criteria), it gives investigators a golden opportunity to adjust the study design before the trial starts. Nevertheless, < 40% of the studies in our review assessed a priori generalizability. With the wide adoption of electronic health records systems, rich real-world patient databases are increasingly available for generalizability assessment; however, informatics tools are lacking to support the adoption of generalizability assessment practice.
Keyphrases
- electronic health record
- big data
- clinical trial
- study protocol
- phase iii
- artificial intelligence
- healthcare
- machine learning
- clinical practice
- randomized controlled trial
- primary care
- phase ii
- chronic kidney disease
- end stage renal disease
- ejection fraction
- systematic review
- newly diagnosed
- case control
- case report
- deep learning
- quality improvement
- peritoneal dialysis
- social media
- genetic diversity