StAC-DA:结构感知跨模态域适应框架,用于医学图像分割的图像和特征级适应。

IF 2.9 3区 医学 Q2 HEALTH CARE SCIENCES & SERVICES DIGITAL HEALTH Pub Date : 2024-09-02 eCollection Date: 2024-01-01 DOI:10.1177/20552076241277440
Maria Baldeon-Calisto, Susana K Lai-Yuen, Bernardo Puente-Mejia
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引用次数: 0

摘要

目的:卷积神经网络(CNN)在各种医学图像分割任务中取得了最先进的成果。然而,卷积神经网络通常假定源数据集和目标数据集遵循相同的概率分布,当这一假定不满足时,其性能就会显著下降。这在医学图像分析中造成了限制,因为包含不同成像模式的信息会带来巨大的临床效益。在这项工作中,我们提出了一种用于医学图像分割的无监督结构感知跨模态域自适应(StAC-DA)框架:方法:StAC-DA 采用连续两步法实现图像和特征级自适应。第一步执行图像级配准,通过实施基于 CycleGAN 的模型,将源域的图像转换到像素空间的目标域。后一模型包括一个结构感知网络,可在翻译过程中保留解剖结构的形状。第二步是特征级配准。利用转换后的源域图像和目标域图像,以对抗方式训练具有深度监督功能的 U-Net 网络,以生成目标域的可能分割结果:结果:该框架在双向心脏亚结构分割上进行了评估。StAC-DA优于主要的无监督域适应方法,在升主动脉的分割中,StAC-DA从磁共振成像(MRI)域适应到计算机断层扫描(CT)域,以及从CT域适应到MRI域,均名列第一:本文提出的框架克服了训练数据集和测试数据集分布不同所带来的局限性。此外,实验结果凸显了该框架在提高不同成像模式下医学图像分割准确性方面的潜力。
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StAC-DA: Structure aware cross-modality domain adaptation framework with image and feature-level adaptation for medical image segmentation.

Objective: Convolutional neural networks (CNNs) have achieved state-of-the-art results in various medical image segmentation tasks. However, CNNs often assume that the source and target dataset follow the same probability distribution and when this assumption is not satisfied their performance degrades significantly. This poses a limitation in medical image analysis, where including information from different imaging modalities can bring large clinical benefits. In this work, we present an unsupervised Structure Aware Cross-modality Domain Adaptation (StAC-DA) framework for medical image segmentation.

Methods: StAC-DA implements an image- and feature-level adaptation in a sequential two-step approach. The first step performs an image-level alignment, where images from the source domain are translated to the target domain in pixel space by implementing a CycleGAN-based model. The latter model includes a structure-aware network that preserves the shape of the anatomical structure during translation. The second step consists of a feature-level alignment. A U-Net network with deep supervision is trained with the transformed source domain images and target domain images in an adversarial manner to produce probable segmentations for the target domain.

Results: The framework is evaluated on bidirectional cardiac substructure segmentation. StAC-DA outperforms leading unsupervised domain adaptation approaches, being ranked first in the segmentation of the ascending aorta when adapting from Magnetic Resonance Imaging (MRI) to Computed Tomography (CT) domain and from CT to MRI domain.

Conclusions: The presented framework overcomes the limitations posed by differing distributions in training and testing datasets. Moreover, the experimental results highlight its potential to improve the accuracy of medical image segmentation across diverse imaging modalities.

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来源期刊
DIGITAL HEALTH
DIGITAL HEALTH Multiple-
CiteScore
2.90
自引率
7.70%
发文量
302
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