Online Domain Adaptation for Continuous Cross-Subject Liver Viability Evaluation Based on Irregular Thermal Data
Sahand Hajifar, Hongyue Sun

TL;DR
This paper introduces an online domain adaptation framework using graph signal processing features for real-time, non-invasive evaluation of liver viability from irregular thermal data, addressing cross-subject heterogeneity.
Contribution
It proposes a novel online domain adaptation method leveraging GSP features for continuous, non-invasive liver viability assessment during procurement.
Findings
Accurately classifies liver viability using thermal data.
Effectively handles cross-subject heterogeneity.
Demonstrates real-time evaluation capability.
Abstract
Accurate evaluation of liver viability during its procurement is a challenging issue and has traditionally been addressed by taking invasive biopsy on liver. Recently, people have started to investigate on the non-invasive evaluation of liver viability during its procurement using the liver surface thermal images. However, existing works include the background noise in the thermal images and do not consider the cross-subject heterogeneity of livers, thus the viability evaluation accuracy can be affected. In this paper, we propose to use the irregular thermal data of the pure liver region, and the cross-subject liver evaluation information (i.e., the available viability label information in cross-subject livers), for the real-time evaluation of a new liver's viability. To achieve this objective, we extract features of irregular thermal data based on tools from graph signal processing…
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Taxonomy
TopicsInfrared Thermography in Medicine · Liver Disease Diagnosis and Treatment · Artificial Intelligence in Healthcare
