Jing Jing, Gao Yue, Gao Ying-Lian, Li Feng, Wang Juan, Liu Jin-Xing
School of Computer Science, Qufu Normal University, Rizhao, 276826, Shandong, China.
Qufu Normal University Library, Qufu Normal University, Rizhao, 276826, Shandong, China.
Comput Biol Med. 2025 Jul;193:110280. doi: 10.1016/j.compbiomed.2025.110280. Epub 2025 May 21.
Complex biological tissues are composed of many cells in a highly coordinated manner and play a variety of biological functions. In recent years, many methods for spatial clustering have been developed. However, it remains a major challenge to effectively utilize these high-dimensional and noisy spatial transcriptomics data, with similar gene expression and histological features, to more accurately identify spatial domains. Here, a novel method of spatial domain identification, named stDGAC, was proposed by jointly using a denoising autoencoder and a graph attention contrastive network for subsequent analysis of spatial transcriptomics data. The pre-trained denoising autoencoder performed dimensionality reduction and denoising, and then the low-dimensional latent representation was learned through a graph attention contrastive network to aggregate the neighborhood information of the spatial context and acquire a more robust representation. Finally, the proposed method stDGAC was experimentally demonstrated to outperform other existing methods in downstream analysis, such as identifying spatial domains, trajectory inference, and gene expression data denoising.
复杂的生物组织由许多细胞以高度协调的方式组成,并发挥多种生物学功能。近年来,已经开发了许多用于空间聚类的方法。然而,有效利用这些具有相似基因表达和组织学特征的高维且有噪声的空间转录组学数据,以更准确地识别空间域,仍然是一项重大挑战。在此,通过联合使用去噪自动编码器和图注意力对比网络,提出了一种名为stDGAC的新型空间域识别方法,用于后续的空间转录组学数据分析。预训练的去噪自动编码器进行降维和去噪,然后通过图注意力对比网络学习低维潜在表示,以聚合空间上下文的邻域信息并获得更稳健的表示。最后,实验证明所提出的方法stDGAC在下游分析中优于其他现有方法,如识别空间域、轨迹推断和基因表达数据去噪。