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A0164
Title: Bias adjustment in scalar-on-function regression: An instrumental variable approach Authors:  Carmen Tekwe - Indiana University - Bloomington (United States) [presenting]
Abstract: Instrumental variables (IVs) are widely used to adjust for measurement error (ME) bias when assessing associations of health outcomes with ME-prone independent variables. IV approaches addressing ME in longitudinal models are well established, but few methods exist for functional regression. We develop two methods to adjust for ME bias in scalar-on-function linear models. We regress a scalar outcome on an ME-prone functional variable using a functional IV for model identification and propose two least squaresbased methods to adjust for ME bias. Our methods alleviate potential computational challenges encountered when applying classical regression calibration methods for bias adjustment in high-dimensional settings and adjust for potential serial correlations across time. Simulations demonstrate faster run times, lower bias, and lower AIMSE for the proposed methods when compared to existing approaches. We applied our methods to a cluster randomized trial investigating the association between body mass index and device-based energy expenditure among elementary school students in a school district in Texas.