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Explainable anatomical shape analysis through deep hierarchical generative models
File | Description | Size | Format | |
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LVAE_TMI.pdf | Accepted version | 3.25 MB | Adobe PDF | View/Open |
Title: | Explainable anatomical shape analysis through deep hierarchical generative models |
Authors: | Biffi, C Cerrolaza Martinez, JJ Tarroni, G Bai, W Simoes Monteiro de Marvao, A Oktay, O Ledig, C Le Folgoc, L Kamnitsas, K Doumou, G Duan, J Prasad, S Cook, S O'Regan, D Rueckert, D |
Item Type: | Journal Article |
Abstract: | Quantification of anatomical shape changes currently relies on scalar global indexes which are largely insensitive to regional or asymmetric modifications. Accurate assessment of pathology-driven anatomical remodeling is a crucial step for the diagnosis and treatment of many conditions. Deep learning approaches have recently achieved wide success in the analysis of medical images, but they lack interpretability in the feature extraction and decision processes. In this work, we propose a new interpretable deep learning model for shape analysis. In particular, we exploit deep generative networks to model a population of anatomical segmentations through a hierarchy of conditional latent variables. At the highest level of this hierarchy, a two-dimensional latent space is simultaneously optimised to discriminate distinct clinical conditions, enabling the direct visualisation of the classification space. Moreover, the anatomical variability encoded by this discriminative latent space can be visualised in the segmentation space thanks to the generative properties of the model, making the classification task transparent. This approach yielded high accuracy in the categorisation of healthy and remodelled left ventricles when tested on unseen segmentations from our own multi-centre dataset as well as in an external validation set, and on hippocampi from healthy controls and patients with Alzheimer’s disease when tested on ADNI data. More importantly, it enabled the visualisation in three-dimensions of both global and regional anatomical features which better discriminate between the conditions under exam. The proposed approach scales effectively to large populations, facilitating highthroughput analysis of normal anatomy and pathology in largescale studies of volumetric imaging. |
Issue Date: | 1-Jun-2020 |
Date of Acceptance: | 21-Dec-2019 |
URI: | http://hdl.handle.net/10044/1/76573 |
DOI: | 10.1109/TMI.2020.2964499 |
ISSN: | 0278-0062 |
Publisher: | Institute of Electrical and Electronics Engineers |
Start Page: | 2088 |
End Page: | 2099 |
Journal / Book Title: | IEEE Transactions on Medical Imaging |
Volume: | 39 |
Issue: | 6 |
Copyright Statement: | © 2020 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for all other uses, in any current or future media, including reprinting/republishing this material for advertising or promotional purposes, creating new collective works, for resale or redistribution to servers or lists, or reuse of any copyrighted component of this work in other works. |
Sponsor/Funder: | British Heart Foundation The Academy of Medical Sciences Imperial College Healthcare NHS Trust- BRC Funding British Heart Foundation Imperial College Healthcare NHS Trust- BRC Funding |
Funder's Grant Number: | RE/08/002/23906 nil RDC04 NH/17/1/32725 RDB02 |
Keywords: | 08 Information and Computing Sciences 09 Engineering Nuclear Medicine & Medical Imaging |
Publication Status: | Published |
Online Publication Date: | 2020-01-06 |
Appears in Collections: | Faculty of Engineering Faculty of Medicine Institute of Clinical Sciences National Heart and Lung Institute Department of Brain Sciences Computing |