Early Prediction of Sepsis: Feature-Aligned Transfer Learning
Journal:
arXiv
Published Date:
May 5, 2025
Abstract
Sepsis is a life threatening medical condition that occurs when the body has
an extreme response to infection, leading to widespread inflammation, organ
failure, and potentially death. Because sepsis can worsen rapidly, early
detection is critical to saving lives. However, current diagnostic methods
often identify sepsis only after significant damage has already occurred. Our
project aims to address this challenge by developing a machine learning based
system to predict sepsis in its early stages, giving healthcare providers more
time to intervene.
A major problem with existing models is the wide variability in the patient
information or features they use, such as heart rate, temperature, and lab
results. This inconsistency makes models difficult to compare and limits their
ability to work across different hospitals and settings. To solve this, we
propose a method called Feature Aligned Transfer Learning (FATL), which
identifies and focuses on the most important and commonly reported features
across multiple studies, ensuring the model remains consistent and clinically
relevant.
Most existing models are trained on narrow patient groups, leading to
population bias. FATL addresses this by combining knowledge from models trained
on diverse populations, using a weighted approach that reflects each models
contribution. This makes the system more generalizable and effective across
different patient demographics and clinical environments. FATL offers a
practical and scalable solution for early sepsis detection, particularly in
hospitals with limited resources, and has the potential to improve patient
outcomes, reduce healthcare costs, and support more equitable healthcare
delivery.