A Study of Representational Properties of Unsupervised Anomaly Detection
in Brain MRI
- URL: http://arxiv.org/abs/2211.15527v1
- Date: Mon, 28 Nov 2022 16:38:34 GMT
- Title: A Study of Representational Properties of Unsupervised Anomaly Detection
in Brain MRI
- Authors: Ayantika Das, Arun Palla, Keerthi Ram, Mohanasankar Sivaprakasam
- Abstract summary: Unsupervised methods for anomaly detection offer a way to observe properties related to factorization.
We study four existing modeling methods, and report our empirical observations using simple data science tools.
Our study indicates that anomaly detection algorithms that exhibit factorization related properties are well capacitated with delineatory capabilities.
- Score: 1.376408511310322
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Anomaly detection in MRI is of high clinical value in imaging and diagnosis.
Unsupervised methods for anomaly detection provide interesting formulations
based on reconstruction or latent embedding, offering a way to observe
properties related to factorization. We study four existing modeling methods,
and report our empirical observations using simple data science tools, to seek
outcomes from the perspective of factorization as it would be most relevant to
the task of unsupervised anomaly detection, considering the case of brain
structural MRI. Our study indicates that anomaly detection algorithms that
exhibit factorization related properties are well capacitated with delineatory
capabilities to distinguish between normal and anomaly data. We have validated
our observations in multiple anomaly and normal datasets.
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