论文标题

部分可观测时空混沌系统的无模型预测

Translational Lung Imaging Analysis Through Disentangled Representations

论文作者

Gordaliza, Pedro M., Vaquero, Juan José, Muñoz-Barrutia, Arrate

论文摘要

新疗法的发展通常需要使用(PRE)临床成像的转化动物模型进行临床试验,以表征种间病理学过程。深度学习(DL)模型通常用于自动从图像中检索相关信息。然而,它们通常会遭受低的生成性和解释性的影响,作为其纠缠设计的产物,导致每个动物模型具有特定的DL模型。因此,不可能利用DL的高容量来发现物种间图像的统计关系。 为了减轻这一问题,在这项工作中,我们提出了一个模型,该模型能够从不同动物模型的图像和产生图像的机制中提取分离的信息。我们的方法位于深层生成模型,分离和因果表示学习之间的交集。 It is optimized from images of pathological lung infected by Tuberculosis and is able: a) from an input slice, infer its position in a volume, the animal model to which it belongs, the damage present and even more, generate a mask covering the whole lung (similar overlap measures to the nnU-Net), b) generate realistic lung images by setting the above variables and c) generate counterfactual images, namely, healthy versions of a损坏的输入切片。

The development of new treatments often requires clinical trials with translational animal models using (pre)-clinical imaging to characterize inter-species pathological processes. Deep Learning (DL) models are commonly used to automate retrieving relevant information from the images. Nevertheless, they typically suffer from low generability and explainability as a product of their entangled design, resulting in a specific DL model per animal model. Consequently, it is not possible to take advantage of the high capacity of DL to discover statistical relationships from inter-species images. To alleviate this problem, in this work, we present a model capable of extracting disentangled information from images of different animal models and the mechanisms that generate the images. Our method is located at the intersection between deep generative models, disentanglement and causal representation learning. It is optimized from images of pathological lung infected by Tuberculosis and is able: a) from an input slice, infer its position in a volume, the animal model to which it belongs, the damage present and even more, generate a mask covering the whole lung (similar overlap measures to the nnU-Net), b) generate realistic lung images by setting the above variables and c) generate counterfactual images, namely, healthy versions of a damaged input slice.

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