Denis Sidorenko, Stefan Pushkov, Akhmed Sakip, Geoffrey Ho Duen Leung, Sarah Wing Yan Lok, Anatoly Urban, Diana Zagirova, Alexander Veviorskiy, Nina Tihonova, Aleksandr Kalashnikov, Ekaterina Kozlova, Vladimir Naumov, Frank W Pun, Alex Aliper, Feng Ren, Alex Zhavoronkov
{"title":"Precious2GPT:多组学预训练变换器与条件扩散相结合,用于人工多组学多物种多组织样本生成。","authors":"Denis Sidorenko, Stefan Pushkov, Akhmed Sakip, Geoffrey Ho Duen Leung, Sarah Wing Yan Lok, Anatoly Urban, Diana Zagirova, Alexander Veviorskiy, Nina Tihonova, Aleksandr Kalashnikov, Ekaterina Kozlova, Vladimir Naumov, Frank W Pun, Alex Aliper, Feng Ren, Alex Zhavoronkov","doi":"10.1038/s41514-024-00163-3","DOIUrl":null,"url":null,"abstract":"<p><p>Synthetic data generation in omics mimics real-world biological data, providing alternatives for training and evaluation of genomic analysis tools, controlling differential expression, and exploring data architecture. We previously developed Precious1GPT, a multimodal transformer trained on transcriptomic and methylation data, along with metadata, for predicting biological age and identifying dual-purpose therapeutic targets potentially implicated in aging and age-associated diseases. In this study, we introduce Precious2GPT, a multimodal architecture that integrates Conditional Diffusion (CDiffusion) and decoder-only Multi-omics Pretrained Transformer (MoPT) models trained on gene expression and DNA methylation data. Precious2GPT excels in synthetic data generation, outperforming Conditional Generative Adversarial Networks (CGANs), CDiffusion, and MoPT. We demonstrate that Precious2GPT is capable of generating representative synthetic data that captures tissue- and age-specific information from real transcriptomics and methylomics data. Notably, Precious2GPT surpasses other models in age prediction accuracy using the generated data, and it can generate data beyond 120 years of age. Furthermore, we showcase the potential of using this model in identifying gene signatures and potential therapeutic targets in a colorectal cancer case study.</p>","PeriodicalId":94160,"journal":{"name":"npj aging","volume":"10 1","pages":"37"},"PeriodicalIF":4.1000,"publicationDate":"2024-08-08","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC11310469/pdf/","citationCount":"0","resultStr":"{\"title\":\"Precious2GPT: the combination of multiomics pretrained transformer and conditional diffusion for artificial multi-omics multi-species multi-tissue sample generation.\",\"authors\":\"Denis Sidorenko, Stefan Pushkov, Akhmed Sakip, Geoffrey Ho Duen Leung, Sarah Wing Yan Lok, Anatoly Urban, Diana Zagirova, Alexander Veviorskiy, Nina Tihonova, Aleksandr Kalashnikov, Ekaterina Kozlova, Vladimir Naumov, Frank W Pun, Alex Aliper, Feng Ren, Alex Zhavoronkov\",\"doi\":\"10.1038/s41514-024-00163-3\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><p>Synthetic data generation in omics mimics real-world biological data, providing alternatives for training and evaluation of genomic analysis tools, controlling differential expression, and exploring data architecture. 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Precious2GPT: the combination of multiomics pretrained transformer and conditional diffusion for artificial multi-omics multi-species multi-tissue sample generation.
Synthetic data generation in omics mimics real-world biological data, providing alternatives for training and evaluation of genomic analysis tools, controlling differential expression, and exploring data architecture. We previously developed Precious1GPT, a multimodal transformer trained on transcriptomic and methylation data, along with metadata, for predicting biological age and identifying dual-purpose therapeutic targets potentially implicated in aging and age-associated diseases. In this study, we introduce Precious2GPT, a multimodal architecture that integrates Conditional Diffusion (CDiffusion) and decoder-only Multi-omics Pretrained Transformer (MoPT) models trained on gene expression and DNA methylation data. Precious2GPT excels in synthetic data generation, outperforming Conditional Generative Adversarial Networks (CGANs), CDiffusion, and MoPT. We demonstrate that Precious2GPT is capable of generating representative synthetic data that captures tissue- and age-specific information from real transcriptomics and methylomics data. Notably, Precious2GPT surpasses other models in age prediction accuracy using the generated data, and it can generate data beyond 120 years of age. Furthermore, we showcase the potential of using this model in identifying gene signatures and potential therapeutic targets in a colorectal cancer case study.