增强多帧大脑图像中的面部特征去识别:生成式对抗网络方法

4区 医学 Q3 Neuroscience Progress in brain research Pub Date : 2024-01-01 Epub Date: 2024-08-31 DOI:10.1016/bs.pbr.2024.07.003
Chung-Yueh Lien, Rui-Jun Deng, Jong-Ling Fuh, Yun-Ni Ting, Albert C Yang
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引用次数: 0

摘要

近年来,脑科学领域的公共数据集所收集的头部图像显著增加,这凸显了对稳健的去识别方法的需求,以符合隐私法规。本文阐明了一种基于深度学习的新方法,利用生成式对抗网络合成新的面部特征和轮廓,从而去识别脑图像中的面部特征。我们利用三维 U-Net 模型的精度来检测耳朵、鼻子、嘴巴和眼睛等特定特征。结果我们的方法与之前的研究不同,它突出了头部图像的部分区域,而不是全面的头部图像。我们在一个数据集上对模型进行了训练和测试,该数据集由公开的头部计算机断层扫描图像数据集中的 490 个病例和另外 70 个头部磁共振图像病例组成。综合数据被证明是有优势的,并取得了令人满意的结果。在训练数据集中,鼻子、嘴巴和眼睛的检测准确率达到了 100%,而耳朵的检测准确率达到了 85.03%。在测试数据集中,耳朵检测的准确率为 65.98%,而验证数据集中耳朵检测的准确率达到了 100%。对像素值直方图的分析表明,不同面部特征的原始特征和生成特征之间存在不同程度的相似性,以结构相似性指数(SSIM)来衡量。所提出的方法专为部分头部图像处理量身定制,非常适合真实世界的成像检查场景,并具有未来临床应用的潜力,有助于推动去身份识别技术的研究,从而加强隐私保护。
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Enhancing facial feature de-identification in multiframe brain images: A generative adversarial network approach.

The collection of head images for public datasets in the field of brain science has grown remarkably in recent years, underscoring the need for robust de-identification methods to adhere with privacy regulations. This paper elucidates a novel deep learning-based approach to deidentifying facial features in brain images using a generative adversarial network to synthesize new facial features and contours. We employed the precision of the three-dimensional U-Net model to detect specific features such as the ears, nose, mouth, and eyes. Results: Our method diverges from prior studies by highlighting partial regions of the head image rather than comprehensive full-head images. We trained and tested our model on a dataset comprising 490 cases from a publicly available head computed tomography image dataset and an additional 70 cases with head MR images. Integrated data proved advantageous, with promising results. The nose, mouth, and eye detection achieved 100% accuracy, while ear detection reached 85.03% in the training dataset. In the testing dataset, ear detection accuracy was 65.98%, and the validation dataset ear detection attained 100%. Analysis of pixel value histograms demonstrated varying degrees of similarity, as measured by the Structural Similarity Index (SSIM), between raw and generated features across different facial features. The proposed methodology, tailored for partial head image processing, is well suited for real-world imaging examination scenarios and holds potential for future clinical applications contributing to the advancement of research in de-identification technologies, thus fortifying privacy safeguards.

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来源期刊
Progress in brain research
Progress in brain research 医学-神经科学
CiteScore
5.20
自引率
0.00%
发文量
174
审稿时长
6-12 weeks
期刊介绍: Progress in Brain Research is the most acclaimed and accomplished series in neuroscience. The serial is well-established as an extensive documentation of contemporary advances in the field. The volumes contain authoritative reviews and original articles by invited specialists. The rigorous editing of the volumes assures that they will appeal to all laboratory and clinical brain research workers in the various disciplines: neuroanatomy, neurophysiology, neuropharmacology, neuroendocrinology, neuropathology, basic neurology, biological psychiatry and the behavioral sciences.
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