Background: Selection bias and unmeasured confounding are fundamental problems in epidemiology that threaten study internal and external validity. These phenomena are particularly dangerous in internet-based public health surveillance, where traditional mitigation and adjustment methods are inapplicable, unavailable, or out of date. Recent theoretical advances in causal modeling can mitigate these threats, but these innovations have not been widely deployed in the epidemiological community.
Objective: The purpose of our paper is to demonstrate the practical utility of causal modeling to both detect unmeasured confounding and selection bias and guide model selection to minimize bias. We implemented this approach in an applied epidemiological study of the COVID-19 cumulative infection rate in the New York City (NYC) spring 2020 epidemic.
Methods: We collected primary data from Qualtrics surveys of Amazon Mechanical Turk (MTurk) crowd workers residing in New Jersey and New York State across 2 sampling periods: April 11-14 and May 8-11, 2020. The surveys queried the subjects on household health status and demographic characteristics. We constructed a set of possible causal models of household infection and survey selection mechanisms and ranked them by compatibility with the collected survey data. The most compatible causal model was then used to estimate the cumulative infection rate in each survey period.
Results: There were 527 and 513 responses collected for the 2 periods, respectively. Response demographics were highly skewed toward a younger age in both survey periods. Despite the extremely strong relationship between age and COVID-19 symptoms, we recovered minimally biased estimates of the cumulative infection rate using only primary data and the most compatible causal model, with a relative bias of +3.8% and -1.9% from the reported cumulative infection rate for the first and second survey periods, respectively.
Conclusions: We successfully recovered accurate estimates of the cumulative infection rate from an internet-based crowdsourced sample despite considerable selection bias and unmeasured confounding in the primary data. This implementation demonstrates how simple applications of structural causal modeling can be effectively used to determine falsifiable model conditions, detect selection bias and confounding factors, and minimize estimate bias through model selection in a novel epidemiological context. As the disease and social dynamics of COVID-19 continue to evolve, public health surveillance protocols must continue to adapt; the emergence of Omicron variants and shift to at-home testing as recent challenges. Rigorous and transparent methods to develop, deploy, and diagnosis adapted surveillance protocols will be critical to their success.
Download full-text PDF |
Source |
---|---|
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9307267 | PMC |
http://dx.doi.org/10.2196/31306 | DOI Listing |
Plast Reconstr Surg
December 2024
Department of Plastic Surgery, Samsung Medical Center, Sungkyunkwan University School of Medicine, 81 Irwon-ro, Gangnam-gu, Seoul, South Korea.
Background: Despite the recent steep rise in the use of prepectoral direct-to-implant (DTI) breast reconstruction, concerns remain regarding the potentially risk of complications, resulting in the selective application of the technique; however, the selection process was empirically based on the operator's decision. Using patient and operation-related factors, this study aimed to develop a nomogram for predicting postoperative complications following prepectoral DTI reconstruction.
Methods: Between August 2019 and March 2023, immediate prepectoral DTI was performed for all patients deemed suitable for one-stage implant-based reconstruction.
PLoS One
January 2025
NWL Patient Safety Research Collaboration, Institute of Global Health Innovation, Imperial College London, London, United Kingdom.
Background: Virtual consultations are being increasingly incorporated into routine primary care, as they offer better time and geographical flexibility for patients while also being cost-effective for both patients and service providers. At the same time, concerns have been raised about the extent to which virtual care is safe for patients. As of now, there is no validated methodology for evaluating the safety nuances and implications of virtual care.
View Article and Find Full Text PDFJAMA Pediatr
December 2024
Centre for Translational Medicine, Semmelweis University, Budapest, Hungary.
Importance: Intraventricular hemorrhage (IVH) has been described to typically occur during the early hours of life (HOL); however, the exact time of onset is still unknown.
Objective: To investigate the temporal distribution of IVH reported in very preterm neonates.
Data Sources: PubMed, Embase, Cochrane Library, and Web of Science were searched on May 9, 2024.
Background: Training a "robust" predictive model is a non-trivial task, especially for observational datasets. Datasets often contain confounding variables which must be de-confounded (also less accurately referred to as "regressed out") to eliminate the bias in predictive models. Due to the inherent uncertainty and complexity that surrounds the identification of true confounders, typically, all such covariates are regressed out indiscriminately.
View Article and Find Full Text PDFAlzheimers Dement
December 2024
Department of Biostatistics, Vanderbilt University Medical Center, Nashville, TN, USA.
Background: Understanding the dynamics of markers throughout Alzheimer's disease (AD) progression in a representative population is critical for early detection of AD. Most existing studies used a single cohort to model the dynamics of AD-related markers, which may lead to biased and unreproducible results. The Alzheimer's Disease Sequencing Project Phenotype Harmonization Consortium (ADSP-PHC) harmonized rich endophenotype data across multiple cohort studies, providing valuable resources for ADRD research.
View Article and Find Full Text PDFEnter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!