Heather Fraser, Edgar L Mounib, et al.
Healthcare financial management : journal of the Healthcare Financial Management Association
Findings from randomized controlled trials (RCTs) of behaviour change interventions encode much of our knowledge on intervention efficacy under defined conditions. Predicting outcomes of novel interventions in novel conditions can be challenging, as can predicting differences in outcomes between different interventions or different conditions. To predict outcomes from RCTs, we propose a generic framework of combining the information from two sources - i) the instances (comprised of surrounding text and their numeric values) of relevant attributes, namely the intervention, setting and population characteristics of a study, and ii) abstract representation of the categories of these attributes themselves. We demonstrate that this way of encoding both the information about an attribute and its value when used as an embedding layer within a standard deep sequence modeling setup improves the outcome prediction effectiveness.
Heather Fraser, Edgar L Mounib, et al.
Healthcare financial management : journal of the Healthcare Financial Management Association
Colm T. Whelan, R.K. Nesbet, et al.
Journal of Electron Spectroscopy and Related Phenomena
Jacqueline S. Dron, Minxian Wang, et al.
Circulation: Genomic and Precision Medicine
MingYu Lu, Zachary Shahn, et al.
AMIA ... Annual Symposium proceedings. AMIA Symposium