toplogo
Log på
indsigt - Medical Imaging Analysis - # Contrastive Variational Autoencoder for separating pathological and healthy patterns

Separating Pathological Patterns from Healthy Factors in Medical Imaging using a Contrastive Variational Autoencoder (SepVAE)


Kernekoncepter
SepVAE, a contrastive variational autoencoder, effectively separates the common factors of variation between a background (healthy) dataset and a target (pathological) dataset from the target-specific factors of variation.
Resumé

The paper introduces SepVAE, a novel Contrastive Analysis Variational Autoencoder (CA-VAE) method, which aims to separate the common factors of variation between a background (healthy) dataset and a target (pathological) dataset from the target-specific factors of variation.

Key highlights:

  • Previous CA-VAE methods failed to prevent information leakage between the common and salient latent spaces effectively and to capture all salient factors of variation.
  • SepVAE introduces two crucial regularization losses: a disentangling term between common and salient representations, and a classification term between background and target samples in the salient space.
  • SepVAE demonstrates better performance than previous CA-VAE methods on three medical applications (pneumonia, schizophrenia, autism) and a natural images dataset (CelebA).
  • The method can effectively separate healthy patterns encoded in the common space from pathological patterns encoded in the salient space, enabling interpretable analysis of medical imaging data.
edit_icon

Tilpas resumé

edit_icon

Genskriv med AI

edit_icon

Generer citater

translate_icon

Oversæt kilde

visual_icon

Generer mindmap

visit_icon

Besøg kilde

Statistik
"Radiographies were selected from a cohort of pediatric patients aged between one and five years old from Guangzhou Women and Children's Medical Center, Guangzhou." (Pneumonia dataset) "We merged images of schizophrenic patients (TG) and healthy controls (BG) from the datasets SCHIZCONNECT-VIP and BSNIP." (Schizophrenia dataset) "We combine patients with autism from ABIDE1 and ABIDE2 (TG) with healthy controls (BG)." (Autism dataset)
Citater
"Contrastive Analysis VAE (CA-VAEs) is a family of Variational auto-encoders (VAEs) that aims at separating the common factors of variation between a background dataset (BG) (i.e., healthy subjects) and a target dataset (TG) (i.e., patients) from the ones that only exist in the target dataset." "Until recently, separating the various latent mechanisms that drive neuro-anatomical variability in neuro-degenerative disorders was considered hardly feasible. This can be attributed to the intertwining between the variability due to natural aging and the variability due to neurodegenerative disease development."

Vigtigste indsigter udtrukket fra

by Robin Louise... kl. arxiv.org 04-09-2024

https://arxiv.org/pdf/2307.06206.pdf
SepVAE

Dybere Forespørgsler

How could SepVAE be extended to handle multiple target datasets (e.g., healthy population vs. several pathologies) to obtain a continuum from healthy to severe pathology

To extend SepVAE to handle multiple target datasets, such as a healthy population versus several pathologies, we can modify the model to accommodate the varying degrees of severity across different pathologies. One approach would be to introduce a continuous variable that represents the severity or type of pathology present in the target dataset. This variable can be used to modulate the salient space representation, allowing for a smooth transition from healthy to severe pathology. By incorporating this continuous variable into the model, SepVAE can learn to disentangle the common factors of variation from the specific pathological patterns across a spectrum of conditions. This extension would enable the model to capture the nuances and complexities of different pathologies while still maintaining the separation between common and salient features.

What theoretical guarantees could be obtained regarding the identifiability of the joint distribution over observed and latent variables in the SepVAE model

In the context of the SepVAE model, theoretical guarantees of identifiability can be obtained by analyzing the conditions under which the joint distribution over observed and latent variables can be uniquely determined. Identifiability in this context refers to the ability to uniquely recover the underlying parameters of the model from the observed data. One approach to establishing identifiability in SepVAE would involve analyzing the properties of the generative process and the inference mechanism to ensure that the latent variables can be accurately estimated from the observed data. By studying the model's architecture, loss functions, and optimization procedures, researchers can determine the conditions under which the joint distribution can be uniquely identified. By conducting a rigorous theoretical analysis of SepVAE, researchers can provide guarantees on the model's ability to accurately capture the underlying factors of variation and separate common from salient features in the data.

How could the SepVAE framework be adapted to other generative models, such as GANs, to improve the quality of generated samples while maintaining the separation of common and salient factors

Adapting the SepVAE framework to other generative models, such as Generative Adversarial Networks (GANs), can enhance the quality of generated samples while maintaining the separation of common and salient factors. One way to achieve this is by incorporating the principles of contrastive learning and disentanglement into the GAN architecture. By integrating the salient discrimination and mutual information minimization techniques from SepVAE into a GAN framework, researchers can ensure that the generated samples reflect the specific pathological patterns while preserving the general characteristics of the data. This approach can lead to more realistic and diverse generated samples that capture the nuances of different pathologies. Additionally, leveraging the strengths of GANs in generating high-quality images and combining them with the interpretability and separation capabilities of SepVAE can result in a powerful generative model that produces realistic and meaningful samples across a spectrum of conditions. This integration can open up new possibilities for generating diverse and informative data in various applications.
0
star