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Pseudo-domains in imaging data improve prediction of future disease status in multi-center studies
by
Mesenbrink, Peter
, Ba-Ssalamah, Ahmed
, Langs, Georg
, Goehler, Alexander
, Perkonigg, Matthias
, Martic, Miljen
in
Data acquisition
/ Heterogeneity
/ Image acquisition
/ Medical imaging
2021
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Pseudo-domains in imaging data improve prediction of future disease status in multi-center studies
by
Mesenbrink, Peter
, Ba-Ssalamah, Ahmed
, Langs, Georg
, Goehler, Alexander
, Perkonigg, Matthias
, Martic, Miljen
in
Data acquisition
/ Heterogeneity
/ Image acquisition
/ Medical imaging
2021
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Pseudo-domains in imaging data improve prediction of future disease status in multi-center studies
Paper
Pseudo-domains in imaging data improve prediction of future disease status in multi-center studies
2021
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Overview
In multi-center randomized clinical trials imaging data can be diverse due to acquisition technology or scanning protocols. Models predicting future outcome of patients are impaired by this data heterogeneity. Here, we propose a prediction method that can cope with a high number of different scanning sites and a low number of samples per site. We cluster sites into pseudo-domains based on visual appearance of scans, and train pseudo-domain specific models. Results show that they improve the prediction accuracy for steatosis after 48 weeks from imaging data acquired at an initial visit and 12-weeks follow-up in liver disease
Publisher
Cornell University Library, arXiv.org
Subject
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