Department Nephrology and Dialysis, Eboli Hospital, 84025 Eboli, Italy.
Department Translational Medical Sciences, University of Campania, 81100 Naples, Italy.
Int J Mol Sci. 2024 Aug 6;25(16):8592. doi: 10.3390/ijms25168592.
Personalized medicine, which involves modifying treatment strategies/drug dosages based on massive laboratory/imaging data, faces large statistical and study design problems. The authors believe that the use of continuous multidimensional data, such as those regarding gut microbiota, or binary multidimensional systems properly transformed into a continuous variable, such as the epigenetic clock, offer an advantageous scenario for the design of trials of personalized medicine. We will discuss examples focusing on kidney diseases, specifically on IgA nephropathy. While gut dysbiosis can provide a treatment strategy to restore the standard gut microbiota using probiotics, transforming epigenetic omics data into epigenetic clocks offers a promising tool for personalized acute and chronic kidney disease care. Epigenetic clocks involve a complex transformation of DNA methylome data into estimated biological age. These clocks can identify people at high risk of developing kidney problems even before symptoms appear. Some of the effects of both the epigenetic clock and microbiota on kidney diseases seem to be mediated by endothelial dysfunction. These "big data" (epigenetic clocks and microbiota) can help tailor treatment plans by pinpointing patients likely to experience rapid declines or those who might not need overly aggressive therapies.
个体化医学涉及根据大量实验室/影像数据修改治疗策略/药物剂量,面临着较大的统计和研究设计问题。作者认为,使用连续多维数据,如肠道微生物组数据,或通过适当转化为连续变量的二元多维系统,如表观遗传时钟,为个体化医学试验的设计提供了有利的方案。我们将讨论专注于肾脏疾病的示例,特别是 IgA 肾病。虽然肠道菌群失调可以提供一种使用益生菌恢复标准肠道微生物组的治疗策略,但将表观遗传学组学数据转化为表观遗传时钟为个体化急性和慢性肾病护理提供了有前途的工具。表观遗传时钟涉及将 DNA 甲基化组数据复杂地转化为估计的生物年龄。这些时钟可以识别出有发展为肾脏问题风险的人,甚至在出现症状之前。表观遗传时钟和微生物组对肾脏疾病的一些影响似乎是通过内皮功能障碍介导的。这些“大数据”(表观遗传时钟和微生物组)可以通过确定可能经历快速下降的患者或可能不需要过度激进治疗的患者来帮助制定治疗计划。