Saved in:
Bibliographic Details
Main Authors: Guha, Subharup, Xu, Mengqi, Li, Yi
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2505.07153
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866915939042197504
author Guha, Subharup
Xu, Mengqi
Li, Yi
author_facet Guha, Subharup
Xu, Mengqi
Li, Yi
contents Lung sepsis remains a significant concern in the Northeastern U.S., yet the national eICU Collaborative Database includes only a small number of patients from this region, highlighting underrepresentation. Understanding clinical variables such as FiO2, creatinine, platelets, and lactate, which reflect oxygenation, kidney function, coagulation, and metabolism, is crucial because these markers influence sepsis outcomes and may vary by sex. Transfer learning helps address small sample sizes by borrowing information from larger datasets, although differences in covariates and outcome-generating mechanisms between the target and external cohorts can complicate the process. We propose a novel weighting method, TRANSfer LeArning wiTh wEights (TRANSLATE), to integrate data from various sources by incorporating domain-specific characteristics through learned weights that align external data with the target cohort. These weights adjust for cohort differences, are proportional to each cohort's effective sample size, and downweight dissimilar cohorts. TRANSLATE offers theoretical guarantees for improved precision and applies to a wide range of estimands, including means, variances, and distribution functions. Simulations and a real-data application to sepsis outcomes in the Northeast cohort, using a much larger sample from other U.S. regions, show that the method enhances inference while accounting for regional heterogeneity.
format Preprint
id arxiv_https___arxiv_org_abs_2505_07153
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Enhancing Inference for Small Cohorts via Transfer Learning and Weighted Integration of Multiple Datasets
Guha, Subharup
Xu, Mengqi
Li, Yi
Methodology
Lung sepsis remains a significant concern in the Northeastern U.S., yet the national eICU Collaborative Database includes only a small number of patients from this region, highlighting underrepresentation. Understanding clinical variables such as FiO2, creatinine, platelets, and lactate, which reflect oxygenation, kidney function, coagulation, and metabolism, is crucial because these markers influence sepsis outcomes and may vary by sex. Transfer learning helps address small sample sizes by borrowing information from larger datasets, although differences in covariates and outcome-generating mechanisms between the target and external cohorts can complicate the process. We propose a novel weighting method, TRANSfer LeArning wiTh wEights (TRANSLATE), to integrate data from various sources by incorporating domain-specific characteristics through learned weights that align external data with the target cohort. These weights adjust for cohort differences, are proportional to each cohort's effective sample size, and downweight dissimilar cohorts. TRANSLATE offers theoretical guarantees for improved precision and applies to a wide range of estimands, including means, variances, and distribution functions. Simulations and a real-data application to sepsis outcomes in the Northeast cohort, using a much larger sample from other U.S. regions, show that the method enhances inference while accounting for regional heterogeneity.
title Enhancing Inference for Small Cohorts via Transfer Learning and Weighted Integration of Multiple Datasets
topic Methodology
url https://arxiv.org/abs/2505.07153