High-dimensional multimodal uncertainty estimation by manifold alignment:Application to 3D right ventricular strain computations
Journal:
arXiv
Published Date:
Jan 21, 2025
Abstract
Confidence in the results is a key ingredient to improve the adoption of
machine learning methods by clinicians. Uncertainties on the results have been
considered in the literature, but mostly those originating from the learning
and processing methods. Uncertainty on the data is hardly challenged, as a
single sample is often considered representative enough of each subject
included in the analysis. In this paper, we propose a representation learning
strategy to estimate local uncertainties on a physiological descriptor (here,
myocardial deformation) previously obtained from medical images by different
definitions or computations. We first use manifold alignment to match the
latent representations associated to different high-dimensional input
descriptors. Then, we formulate plausible distributions of latent
uncertainties, and finally exploit them to reconstruct uncertainties on the
input high-dimensional descriptors. We demonstrate its relevance for the
quantification of myocardial deformation (strain) from 3D echocardiographic
image sequences of the right ventricle, for which a lack of consensus exists in
its definition and which directional component to use. We used a database of
100 control subjects with right ventricle overload, for which different types
of strain are available at each point of the right ventricle endocardial
surface mesh. Our approach quantifies local uncertainties on myocardial
deformation from different descriptors defining this physiological concept.
Such uncertainties cannot be directly estimated by local statistics on such
descriptors, potentially of heterogeneous types. Beyond this controlled
illustrative application, our methodology has the potential to be generalized
to many other population analyses considering heterogeneous high-dimensional
descriptors.