Fast variable selection for distributional regression with application to continuous glucose monitoring data
Alexander Coulter, Rashmi N. Aurora, Naresh M. Punjabi, Irina Gaynanova

TL;DR
This paper introduces a fast, scalable variable selection method for distributional regression applied to continuous glucose monitoring data, revealing new insights into medication effects and sleep-related factors on glucose regulation.
Contribution
The authors develop a novel, explicit gradient and Hessian characterization for sparse distributional regression, enabling up to 10,000-fold faster computation and large-scale data analysis.
Findings
Sulfonylurea medication linked to glucose variability
Overnight oxygen desaturation variability affects glucose regulation
Method enables efficient analysis of large-scale distributional data
Abstract
With the growing prevalence of diabetes and the associated public health burden, it is crucial to identify modifiable factors that could improve patients' glycemic control. In this work, we seek to examine associations between medication usage, concurrent comorbidities, and glycemic control, utilizing data from continuous glucose monitor (CGMs). CGMs provide interstitial glucose measurements, but reducing data to simple statistical summaries is common in clinical studies, resulting in substantial information loss. Recent advancements in the Frechet regression framework allow to utilize more information by treating the full distributional representation of CGM data as the response, while sparsity regularization enables variable selection. However, the methodology does not scale to large datasets. Crucially, variable selection inference using subsampling methods is computationally…
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Taxonomy
TopicsStatistical Methods and Inference · Control Systems and Identification · Fault Detection and Control Systems
