Longitudinal Self-supervised Learning Using Neural Ordinary Differential Equation

被引:1
|
作者
Zeghlache, Rachid [1 ,2 ]
Conze, Pierre-Henri [1 ,3 ]
Daho, Mostafa El Habib [1 ,2 ]
Li, Yihao [1 ,2 ]
Le Boite, Hugo [5 ]
Tadayoni, Ramin [5 ]
Massin, Pascal [5 ]
Cochener, Beatrice [1 ,2 ,4 ]
Brahim, Ikram [1 ,2 ,6 ]
Quellec, Gwenole [1 ]
Lamard, Mathieu [1 ,2 ]
机构
[1] INSERM, LaTIM UMR 1101, Brest, France
[2] Univ Western Brittany, Brest, France
[3] IMT Atlantique, Brest, France
[4] CHRU Brest, Ophtalmol Dept, Brest, France
[5] Lariboisiere Hosp, AP HP, Paris, France
[6] INSERM, LBAI UMR 1227, Brest, France
关键词
Longitudinal analysis; longitudinal self supervised learning; neural ODE; disease progression; diabetic retinopathy;
D O I
10.1007/978-3-031-46005-0_1
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Longitudinal analysis in medical imaging is crucial to investigate the progressive changes in anatomical structures or disease progression over time. In recent years, a novel class of algorithms has emerged with the goal of learning disease progression in a self-supervised manner, using either pairs of consecutive images or time series of images. By capturing temporal patterns without external labels or supervision, longitudinal self-supervised learning (LSSL) has become a promising avenue. To better understand this core method, we explore in this paper the LSSL algorithm under different scenarios. The original LSSL is embedded in an auto-encoder (AE) structure. However, conventional self-supervised strategies are usually implemented in a Siamese-like manner. Therefore, (as a first novelty) in this study, we explore the use of Siamese-like LSSL. Another new core framework named neural ordinary differential equation (NODE). NODE is a neural network architecture that learns the dynamics of ordinary differential equations (ODE) through the use of neural networks. Many temporal systems can be described by ODE, including modeling disease progression. We believe that there is an interesting connection to make between LSSL and NODE. This paper aims at providing a better understanding of those core algorithms for learning the disease progression with the mentioned change. In our different experiments, we employ a longitudinal dataset, named OPHDIAT, targeting diabetic retinopathy (DR) follow-up. Our results demonstrate the application of LSSL without including a reconstruction term, as well as the potential of incorporating NODE in conjunction with LSSL.
引用
收藏
页码:1 / 13
页数:13
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