Lipotype GmbH, Dresden, Germany.
TWINCORE, Centre for Experimental and Clinical Infection Research, a joint venture between the Hanover Medical School and the Helmholtz Centre for Infection Research, Institute for Experimental Virology, Hanover, Germany.
PLoS Biol. 2022 Mar 3;20(3):e3001561. doi: 10.1371/journal.pbio.3001561. eCollection 2022 Mar.
Type 2 diabetes (T2D) and cardiovascular disease (CVD) represent significant disease burdens for most societies and susceptibility to these diseases is strongly influenced by diet and lifestyle. Physiological changes associated with T2D or CVD, such has high blood pressure and cholesterol and glucose levels in the blood, are often apparent prior to disease incidence. Here we integrated genetics, lipidomics, and standard clinical diagnostics to assess future T2D and CVD risk for 4,067 participants from a large prospective population-based cohort, the Malmö Diet and Cancer-Cardiovascular Cohort. By training Ridge regression-based machine learning models on the measurements obtained at baseline when the individuals were healthy, we computed several risk scores for T2D and CVD incidence during up to 23 years of follow-up. We used these scores to stratify the participants into risk groups and found that a lipidomics risk score based on the quantification of 184 plasma lipid concentrations resulted in a 168% and 84% increase of the incidence rate in the highest risk group and a 77% and 53% decrease of the incidence rate in lowest risk group for T2D and CVD, respectively, compared to the average case rates of 13.8% and 22.0%. Notably, lipidomic risk correlated only marginally with polygenic risk, indicating that the lipidome and genetic variants may constitute largely independent risk factors for T2D and CVD. Risk stratification was further improved by adding standard clinical variables to the model, resulting in a case rate of 51.0% and 53.3% in the highest risk group for T2D and CVD, respectively. The participants in the highest risk group showed significantly altered lipidome compositions affecting 167 and 157 lipid species for T2D and CVD, respectively. Our results demonstrated that a subset of individuals at high risk for developing T2D or CVD can be identified years before disease incidence. The lipidomic risk, which is derived from only one single mass spectrometric measurement that is cheap and fast, is informative and could extend traditional risk assessment based on clinical assays.
2 型糖尿病(T2D)和心血管疾病(CVD)是大多数社会面临的重大疾病负担,而这些疾病的易感性受饮食和生活方式的强烈影响。与 T2D 或 CVD 相关的生理变化,如高血压、血液中的胆固醇和葡萄糖水平,通常在疾病发生之前就已经明显。在这里,我们整合了遗传学、脂质组学和标准临床诊断,以评估来自大型前瞻性基于人群的马尔默饮食和癌症-心血管队列的 4067 名参与者未来患 T2D 和 CVD 的风险。通过在个体健康时的基线测量值上训练基于岭回归的机器学习模型,我们计算了在长达 23 年的随访期间发生 T2D 和 CVD 的几种风险评分。我们使用这些评分将参与者分层到风险组中,并发现基于 184 种血浆脂质浓度定量的脂质组学风险评分导致最高风险组的 T2D 和 CVD 发生率分别增加了 168%和 84%,而最低风险组的 T2D 和 CVD 发生率分别降低了 77%和 53%,与平均病例率 13.8%和 22.0%相比。值得注意的是,脂质组学风险与多基因风险仅呈微弱相关,这表明脂质组和遗传变异可能构成 T2D 和 CVD 的主要独立危险因素。通过将标准临床变量添加到模型中,风险分层得到进一步改善,导致 T2D 和 CVD 的最高风险组的病例率分别为 51.0%和 53.3%。最高风险组的参与者表现出明显改变的脂质组组成,分别影响 167 和 157 种 T2D 和 CVD 的脂质种类。我们的结果表明,可以在疾病发生前数年识别出患有 T2D 或 CVD 的高风险个体。源自仅一次廉价、快速的质谱测量的脂质组学风险是信息丰富的,可以扩展基于临床检测的传统风险评估。