Whitfield John B
QIMR Berghofer Medical Research Institute, Brisbane, Australia.
Clin Biochem Rev. 2014 Feb;35(1):15-36.
Many biochemical traits are recognised as risk factors, which contribute to or predict the development of disease. Only a few are in widespread use, usually to assist with treatment decisions and motivate behavioural change. The greatest effort has gone into evaluation of risk factors for cardiovascular disease and/or diabetes, with substantial overlap as 'cardiometabolic' risk. Over the past few years many genome-wide association studies (GWAS) have sought to account for variation in risk factors, with the expectation that identifying relevant polymorphisms would improve our understanding or prediction of disease; others have taken the direct approach of genomic case-control studies for the corresponding diseases. Large GWAS have been published for coronary heart disease and Type 2 diabetes, and also for associated biomarkers or risk factors including body mass index, lipids, C-reactive protein, urate, liver function tests, glucose and insulin. Results are not encouraging for personal risk prediction based on genotyping, mainly because known risk loci only account for a small proportion of risk. Overlap of allelic associations between disease and marker, as found for low density lipoprotein cholesterol and heart disease, supports a causal association, but in other cases genetic studies have cast doubt on accepted risk factors. Some loci show unexpected effects on multiple markers or diseases. An intriguing feature of risk factors is the blurring of categories shown by the correlation between them and the genetic overlap between diseases previously thought of as distinct. GWAS can provide insight into relationships between risk factors, biomarkers and diseases, with potential for new approaches to disease classification.
许多生化特征被认为是风险因素,它们促成或预测疾病的发展。只有少数几种被广泛应用,通常用于辅助治疗决策和推动行为改变。人们在评估心血管疾病和/或糖尿病的风险因素方面付出了最大努力,这些因素大量重叠,构成了“心脏代谢”风险。在过去几年中,许多全基因组关联研究(GWAS)试图解释风险因素的变异,期望识别相关多态性能够增进我们对疾病的理解或预测;其他研究则采用针对相应疾病的基因组病例对照研究的直接方法。已经发表了关于冠心病和2型糖尿病以及包括体重指数、血脂、C反应蛋白、尿酸、肝功能检查、血糖和胰岛素在内的相关生物标志物或风险因素的大型GWAS。基于基因分型进行个人风险预测的结果并不令人鼓舞,主要是因为已知的风险位点仅占风险的一小部分。疾病与标志物之间等位基因关联的重叠,如低密度脂蛋白胆固醇与心脏病之间的关联,支持因果关系,但在其他情况下,基因研究对公认的风险因素提出了质疑。一些位点对多种标志物或疾病显示出意想不到的影响。风险因素的一个有趣特征是它们之间的相关性以及以前被认为是不同疾病之间的基因重叠所显示的类别模糊性。GWAS可以深入了解风险因素、生物标志物和疾病之间的关系,为疾病分类的新方法提供潜力。