XADLiME: eXplainable Alzheimer's Disease Likelihood Map Estimation via
Clinically-guided Prototype Learning
- URL: http://arxiv.org/abs/2207.13223v1
- Date: Wed, 27 Jul 2022 00:25:55 GMT
- Title: XADLiME: eXplainable Alzheimer's Disease Likelihood Map Estimation via
Clinically-guided Prototype Learning
- Authors: Ahmad Wisnu Mulyadi, Wonsik Jung, Kwanseok Oh, Jee Seok Yoon, Heung-Il
Suk
- Abstract summary: We propose a novel deep-learning approach through XADLiME for AD progression modeling over 3D sMRIs.
Specifically, we establish a set of topologically-aware prototypes onto the clusters of latent clinical features, uncovering an AD spectrum manifold.
We then measure the similarities between latent clinical features and well-established prototypes, estimating a "pseudo" likelihood map.
- Score: 3.286378299443229
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Diagnosing Alzheimer's disease (AD) involves a deliberate diagnostic process
owing to its innate traits of irreversibility with subtle and gradual
progression. These characteristics make AD biomarker identification from
structural brain imaging (e.g., structural MRI) scans quite challenging.
Furthermore, there is a high possibility of getting entangled with normal
aging. We propose a novel deep-learning approach through eXplainable AD
Likelihood Map Estimation (XADLiME) for AD progression modeling over 3D sMRIs
using clinically-guided prototype learning. Specifically, we establish a set of
topologically-aware prototypes onto the clusters of latent clinical features,
uncovering an AD spectrum manifold. We then measure the similarities between
latent clinical features and well-established prototypes, estimating a "pseudo"
likelihood map. By considering this pseudo map as an enriched reference, we
employ an estimating network to estimate the AD likelihood map over a 3D sMRI
scan. Additionally, we promote the explainability of such a likelihood map by
revealing a comprehensible overview from two perspectives: clinical and
morphological. During the inference, this estimated likelihood map served as a
substitute over unseen sMRI scans for effectively conducting the downstream
task while providing thorough explainable states.
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