Predicting Osteoarthritis Progression in Radiographs via Unsupervised
Representation Learning
- URL: http://arxiv.org/abs/2111.11439v1
- Date: Mon, 22 Nov 2021 13:11:55 GMT
- Title: Predicting Osteoarthritis Progression in Radiographs via Unsupervised
Representation Learning
- Authors: Tianyu Han, Jakob Nikolas Kather, Federico Pedersoli, Markus
Zimmermann, Sebastian Keil, Maximilian Schulze-Hagen, Marc Terwoelbeck, Peter
Isfort, Christoph Haarburger, Fabian Kiessling, Volkmar Schulz, Christiane
Kuhl, Sven Nebelung, and Daniel Truhn
- Abstract summary: Osteoarthritis (OA) is the most common joint disorder affecting substantial proportions of the global population, primarily the elderly.
Despite its individual and socioeconomic burden, the onset and progression of OA can still not be reliably predicted.
We introduce an unsupervised learning scheme based on generative models to predict the future development of OA based on knee joint radiographs.
- Score: 2.694774938469758
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Osteoarthritis (OA) is the most common joint disorder affecting substantial
proportions of the global population, primarily the elderly. Despite its
individual and socioeconomic burden, the onset and progression of OA can still
not be reliably predicted. Aiming to fill this diagnostic gap, we introduce an
unsupervised learning scheme based on generative models to predict the future
development of OA based on knee joint radiographs. Using longitudinal data from
osteoarthritis studies, we explore the latent temporal trajectory to predict a
patient's future radiographs up to the eight-year follow-up visit. Our model
predicts the risk of progression towards OA and surpasses its supervised
counterpart whose input was provided by seven experienced radiologists. With
the support of the model, sensitivity, specificity, positive predictive value,
and negative predictive value increased significantly from 42.1% to 51.6%, from
72.3% to 88.6%, from 28.4% to 57.6%, and from 83.9% to 88.4%, respectively,
while without such support, radiologists performed only slightly better than
random guessing. Our predictive model improves predictions on OA onset and
progression, despite requiring no human annotation in the training phase.
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