DermoGAN:用于人体表皮体内反射共聚焦显微镜图像无监督自动细胞识别的多任务循环生成对抗网络。

IF 3 3区 医学 Q2 BIOCHEMICAL RESEARCH METHODS Journal of Biomedical Optics Pub Date : 2024-08-01 Epub Date: 2024-08-02 DOI:10.1117/1.JBO.29.8.086003
Imane Lboukili, Georgios Stamatas, Xavier Descombes
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引用次数: 0

摘要

意义重大:准确识别反射共聚焦显微镜(RCM)图像上的表皮细胞对于研究健康和患病皮肤的表皮结构和拓扑非常重要。然而,目前对这些图像的分析都是人工完成的,因此非常耗时,而且容易出现人为错误和专家之间的解释。目的:我们的目标是设计一个自动管道,用于分析 RCM 图像中的表皮结构:在 RCM 图像上自动定位表皮细胞(称为角质细胞)的尝试有两种:第一种基于旋转对称误差函数掩码,第二种基于细胞形态特征。在此,我们提出了一种双任务网络,用于自动识别 RCM 图像上的角质形成细胞。每个任务都由一个循环生成对抗网络组成。第一个任务旨在将真实的 RCM 图像转换成二值图像,从而学习 RCM 图像的噪声和纹理模型,而第二个任务则将 Gabor 过滤后的 RCM 图像映射成二值图像,学习 RCM 图像上可见的表皮结构。这两项任务的结合使其中一项任务限制了另一项任务的求解空间,从而改善了整体结果。我们通过应用预先训练好的 StarDist 算法来检测星凸形状,从而关闭任何不完整的膜并分离相邻细胞,从而完善细胞识别:结果:我们在模拟数据和人工标注的真实 RCM 数据上对结果进行了评估。结果:我们在模拟数据和人工标注的真实 RCM 数据上对结果进行了评估,并使用召回率和精确度指标对准确性进行了衡量,总结为 F 1 分数:我们证明了所提出的完全无监督方法能成功识别表皮 RCM 图像上的角质形成细胞,其准确率与专家的细胞识别水平相当,而且不受有限可用注释数据的限制,无需重新训练即可扩展到使用各种成像技术获取的图像。
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DermoGAN: multi-task cycle generative adversarial networks for unsupervised automatic cell identification on in-vivo reflectance confocal microscopy images of the human epidermis.

Significance: Accurate identification of epidermal cells on reflectance confocal microscopy (RCM) images is important in the study of epidermal architecture and topology of both healthy and diseased skin. However, analysis of these images is currently done manually and therefore time-consuming and subject to human error and inter-expert interpretation. It is also hindered by low image quality due to noise and heterogeneity.

Aim: We aimed to design an automated pipeline for the analysis of the epidermal structure from RCM images.

Approach: Two attempts have been made at automatically localizing epidermal cells, called keratinocytes, on RCM images: the first is based on a rotationally symmetric error function mask, and the second on cell morphological features. Here, we propose a dual-task network to automatically identify keratinocytes on RCM images. Each task consists of a cycle generative adversarial network. The first task aims to translate real RCM images into binary images, thus learning the noise and texture model of RCM images, whereas the second task maps Gabor-filtered RCM images into binary images, learning the epidermal structure visible on RCM images. The combination of the two tasks allows one task to constrict the solution space of the other, thus improving overall results. We refine our cell identification by applying the pre-trained StarDist algorithm to detect star-convex shapes, thus closing any incomplete membranes and separating neighboring cells.

Results: The results are evaluated both on simulated data and manually annotated real RCM data. Accuracy is measured using recall and precision metrics, which is summarized as the F 1 -score.

Conclusions: We demonstrate that the proposed fully unsupervised method successfully identifies keratinocytes on RCM images of the epidermis, with an accuracy on par with experts' cell identification, is not constrained by limited available annotated data, and can be extended to images acquired using various imaging techniques without retraining.

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来源期刊
CiteScore
6.40
自引率
5.70%
发文量
263
审稿时长
2 months
期刊介绍: The Journal of Biomedical Optics publishes peer-reviewed papers on the use of modern optical technology for improved health care and biomedical research.
期刊最新文献
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