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Synthesizing Cell Protein data for Human Protein Cell Profiling Using Dual Deep Generative Modeling

机译:使用双层深发电建模合成人蛋白细胞分析的细胞蛋白质数据

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To understand the biology of health, and how molecular dysfunction leads to disease, knowledge of the human cell is essential. The protein is the core unit of the human body made from trillions of cells, forming the body's various tissues. These tissues come together to create human organs. It is essential to understand the Spatio-temporal distribution of proteins in cells and to investigate human RNA-sequencing for human genes characterization. For this, it requires a massive amount of annotated data. However, due to many considerations like the high cost of data sample collection, lack of data sample availability, and lawful clauses for patient privacy, the majority of medical data is out of reach for general public research. In this study, we propose a new dual deep generative method for synthesizing human cell protein images by using the Generative Adversarial Network technique. Specifically, for that, we pair original cell protein images with their respective Cell-protein-tree. These pairs are then used to learn the mapping from a binary cell protein to a new cell protein image. For this purpose, we use an image-to-image translation technique based on adversarial learning. The generated cell protein images are expected to preserve the structural and visual quality of the training images. Visual and quantitative analysis of the experimental results demonstrates that the synthesized data are preserving the desired quality while maintaining the different forms of original data. Contribution-We have proposed a new dual deep generative model for synthesizing cell protein data.
机译:要了解健康的生物学,以及分子功能障碍如何导致疾病,人体细胞的知识至关重要。蛋白质是人体的核心单元,由百万细胞制成,形成身体的各种组织。这些组织聚集在一起创造人体器官。必须了解细胞中蛋白质的时空分布并研究人类基因表征的人RNA测序。为此,它需要大量的注释数据。然而,由于许多考虑因素,如数据样本收集的高成本,缺乏数据样本可用性,以及患者隐私的合法条款,大多数医疗数据都无法达到一般公众研究。在这项研究中,我们提出了一种新的双重生成方法,用于通过使用生成的对抗网络技术来合成人细胞蛋白质图像。具体地,为此,我们将原始细胞蛋白质图像与各自的细胞蛋白树配对。然后使用这些对来从二元细胞蛋白到新的细胞蛋白质图像来学习映射。为此目的,我们使用基于对抗学习的图像到图像翻译技术。预期产生的细胞蛋白质图像保留训练图像的结构和视觉质量。实验结果的视觉和定量分析表明,合成数据在维护不同形式的原始数据的同时保留所需的质量。贡献 - 我们提出了一种用于合成细胞蛋白数据的新的双重生成模型。

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