Kouter Katarina, Videtic Paska Alja
Faculty of Medicine, Institute of Biochemistry and Molecular Genetics, University of Ljubljana, Ljubljana SI-1000, Slovenia.
World J Psychiatry. 2021 Oct 19;11(10):774-790. doi: 10.5498/wjp.v11.i10.774.
Psychiatric disorders, including suicide, are complex disorders that are affected by many different risk factors. It has been estimated that genetic factors contribute up to 50% to suicide risk. As the candidate gene approach has not identified a gene or set of genes that can be defined as biomarkers for suicidal behaviour, much is expected from cutting edge technological approaches that can interrogate several hundred, or even millions, of biomarkers at a time. These include the '-omic' approaches, such as genomics, transcriptomics, epigenomics, proteomics and metabolomics. Indeed, these have revealed new candidate biomarkers associated with suicidal behaviour. The most interesting of these have been implicated in inflammation and immune responses, which have been revealed through different study approaches, from genome-wide single nucleotide studies and the micro-RNA transcriptome, to the proteome and metabolome. However, the massive amounts of data that are generated by the '-omic' technologies demand the use of powerful computational analysis, and also specifically trained personnel. In this regard, machine learning approaches are beginning to pave the way towards personalized psychiatry.
精神疾病,包括自杀,是受多种不同风险因素影响的复杂疾病。据估计,遗传因素对自杀风险的贡献率高达50%。由于候选基因方法尚未确定可被定义为自杀行为生物标志物的一个或一组基因,人们对能够一次性检测数百甚至数百万个生物标志物的前沿技术方法寄予厚望。这些方法包括“组学”方法,如基因组学、转录组学、表观基因组学、蛋白质组学和代谢组学。事实上,这些方法已经揭示了与自杀行为相关的新候选生物标志物。其中最有趣的与炎症和免疫反应有关,这些反应已通过不同的研究方法揭示出来,从全基因组单核苷酸研究和微小RNA转录组,到蛋白质组和代谢组。然而,“组学”技术产生的大量数据需要使用强大的计算分析,也需要经过专门培训的人员。在这方面,机器学习方法正开始为个性化精神病学铺平道路。