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Main Authors: Chang, Sicong, Shen, Yidan, Varghese, Justina, Prabhakar, Akshay R, Guadarrama-Sistos-Vazquez, Sebastian, Chen, Jiefu, Takashima, Masayoshi, Ahmed, Omar G., Hu, Renjie, Fu, Xin
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.05213
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author Chang, Sicong
Shen, Yidan
Varghese, Justina
Prabhakar, Akshay R
Guadarrama-Sistos-Vazquez, Sebastian
Chen, Jiefu
Takashima, Masayoshi
Ahmed, Omar G.
Hu, Renjie
Fu, Xin
author_facet Chang, Sicong
Shen, Yidan
Varghese, Justina
Prabhakar, Akshay R
Guadarrama-Sistos-Vazquez, Sebastian
Chen, Jiefu
Takashima, Masayoshi
Ahmed, Omar G.
Hu, Renjie
Fu, Xin
contents Chronic rhinosinusitis (CRS) is a common heterogeneous inflammatory disorder that causes substantial morbidity and healthcare costs. CRS is difficult to identify early from routine encounters, as symptom presentations overlap with common conditions such as allergic rhinitis, and heterogeneous phenotypes further obscure risk patterns. Prior predictive studies often rely on single-institutional cohorts , which reduce population-level generalizability. To overcome this, we leveraged nationwide longitudinal EHR data from the \textit{All of Us} Research Program to predict CRS diagnosis using two years of pre-diagnostic history. To address extreme feature sparsity and dimensionality in coded EHR data, we implemented a hybrid feature-selection pipeline that combines prevalence-based statistical screening with model-based importance ranking, compressing approximately 110,000 candidate codes into 100 interpretable features. To capture demographic heterogeneity, we trained demographic stratified models across six adult sex and life-stage subgroups with subgroup-specific hyperparameter tuning. Our framework achieved an overall AUC of 0.8461, improving discrimination by 0.0168 over the best baseline. These results demonstrate that routinely collected EHR data may support population-representative CRS risk stratification and inform earlier triage and referral prioritization in primary care.
format Preprint
id arxiv_https___arxiv_org_abs_2605_05213
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Nationwide EHR-Based Chronic Rhinosinusitis Prediction Using Demographic-Stratified Models
Chang, Sicong
Shen, Yidan
Varghese, Justina
Prabhakar, Akshay R
Guadarrama-Sistos-Vazquez, Sebastian
Chen, Jiefu
Takashima, Masayoshi
Ahmed, Omar G.
Hu, Renjie
Fu, Xin
Machine Learning
Quantitative Methods
Chronic rhinosinusitis (CRS) is a common heterogeneous inflammatory disorder that causes substantial morbidity and healthcare costs. CRS is difficult to identify early from routine encounters, as symptom presentations overlap with common conditions such as allergic rhinitis, and heterogeneous phenotypes further obscure risk patterns. Prior predictive studies often rely on single-institutional cohorts , which reduce population-level generalizability. To overcome this, we leveraged nationwide longitudinal EHR data from the \textit{All of Us} Research Program to predict CRS diagnosis using two years of pre-diagnostic history. To address extreme feature sparsity and dimensionality in coded EHR data, we implemented a hybrid feature-selection pipeline that combines prevalence-based statistical screening with model-based importance ranking, compressing approximately 110,000 candidate codes into 100 interpretable features. To capture demographic heterogeneity, we trained demographic stratified models across six adult sex and life-stage subgroups with subgroup-specific hyperparameter tuning. Our framework achieved an overall AUC of 0.8461, improving discrimination by 0.0168 over the best baseline. These results demonstrate that routinely collected EHR data may support population-representative CRS risk stratification and inform earlier triage and referral prioritization in primary care.
title Nationwide EHR-Based Chronic Rhinosinusitis Prediction Using Demographic-Stratified Models
topic Machine Learning
Quantitative Methods
url https://arxiv.org/abs/2605.05213