mosGraphGPT: a foundation model for multi-omic signaling graphs using generative AI.

mosGraphGPT:一种利用生成式人工智能构建多组学信号图的基础模型

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作者:Zhang Heming, Huang Di, Chen Emily, Cao Dekang, Xu Tim, Dizdar Ben, Li Guangfu, Chen Yixin, Payne Philip, Province Michael, Li Fuhai
Generative pretrained models represent a significant advancement in natural language processing and computer vision, which can generate coherent and contextually relevant content based on the pre-training on large general datasets and fine-tune for specific tasks. Building foundation models using large scale omic data is promising to decode and understand the complex signaling language patterns within cells. Different from existing foundation models of omic data, we build a foundation model, mosGraphGPT, for multi-omic signaling (mos) graphs, in which the multi-omic data was integrated and interpreted using a multi-level signaling graph. The model was pretrained using multi-omic data of cancers in The Cancer Genome Atlas (TCGA), and fine-turned for multi-omic data of Alzheimer's Disease (AD). The experimental evaluation results showed that the model can not only improve the disease classification accuracy, but also is interpretable by uncovering disease targets and signaling interactions. And the model code are uploaded via GitHub with link: https://github.com/mosGraph/mosGraphGPT.

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