Division of Cardiology, Department of Internal Medicine, University of Texas Southwestern Medical Center, Dallas, TX, USA.
Parkland Health and Hospital System, Dallas, TX, USA.
Diabetologia. 2021 Jul;64(7):1583-1594. doi: 10.1007/s00125-021-05426-2. Epub 2021 Mar 13.
AIMS/HYPOTHESIS: Type 2 diabetes is a heterogeneous disease process with variable trajectories of CVD risk. We aimed to evaluate four phenomapping strategies and their ability to stratify CVD risk in individuals with type 2 diabetes and to identify subgroups who may benefit from specific therapies.
Participants with type 2 diabetes and free of baseline CVD in the Action to Control Cardiovascular Risk in Diabetes (ACCORD) trial were included in this study (N = 6466). Clustering using Gaussian mixture models, latent class analysis, finite mixture models (FMMs) and principal component analysis was compared. Clustering variables included demographics, medical and social history, laboratory values and diabetes complications. The interaction between the phenogroup and intensive glycaemic, combination lipid and intensive BP therapy for the risk of the primary outcome (composite of fatal myocardial infarction, non-fatal myocardial infarction or unstable angina) was evaluated using adjusted Cox models. The phenomapping strategies were independently assessed in an external validation cohort (Look Action for Health in Diabetes [Look AHEAD] trial: n = 4211; and Bypass Angioplasty Revascularisation Investigation 2 Diabetes [BARI 2D] trial: n = 1495).
Over 9.1 years of follow-up, 789 (12.2%) participants had a primary outcome event. FMM phenomapping with three phenogroups was the best-performing clustering strategy in both the derivation and validation cohorts as determined by Bayesian information criterion, Dunn index and improvement in model discrimination. Phenogroup 1 (n = 663, 10.3%) had the highest burden of comorbidities and diabetes complications, phenogroup 2 (n = 2388, 36.9%) had an intermediate comorbidity burden and lowest diabetes complications, and phenogroup 3 (n = 3415, 52.8%) had the fewest comorbidities and intermediate burden of diabetes complications. Significant interactions were observed between phenogroups and treatment interventions including intensive glycaemic control (p-interaction = 0.042) and combination lipid therapy (p-interaction < 0.001) in the ACCORD, intensive lifestyle intervention (p-interaction = 0.002) in the Look AHEAD and early coronary revascularisation (p-interaction = 0.003) in the BARI 2D trial cohorts for the risk of the primary composite outcome. Favourable reduction in the risk of the primary composite outcome with these interventions was noted in low-risk participants of phenogroup 3 but not in other phenogroups. Compared with phenogroup 3, phenogroup 1 participants were more likely to have severe/symptomatic hypoglycaemic events and medication non-adherence on follow-up in the ACCORD and Look AHEAD trial cohorts.
CONCLUSIONS/INTERPRETATION: Clustering using FMMs was the optimal phenomapping strategy to identify replicable subgroups of patients with type 2 diabetes with distinct clinical characteristics, CVD risk and response to therapies.
目的/假设:2 型糖尿病是一种异质性疾病过程,心血管疾病(CVD)风险具有不同的轨迹。我们旨在评估四种表型映射策略及其在 2 型糖尿病患者中分层 CVD 风险的能力,并确定可能受益于特定治疗的亚组。
在行动控制心血管风险中的糖尿病(ACCORD)试验中纳入了无基线 CVD 的 2 型糖尿病患者(N=6466)进行本研究。使用高斯混合模型、潜在类别分析、有限混合模型(FMM)和主成分分析比较聚类。聚类变量包括人口统计学、医疗和社会史、实验室值和糖尿病并发症。使用调整后的 Cox 模型评估表型组与强化血糖、联合降脂和强化血压治疗之间对主要结局(致命性心肌梗死、非致命性心肌梗死或不稳定型心绞痛的复合)风险的相互作用。在外部验证队列(Look Action for Health in Diabetes [Look AHEAD] 试验:n=4211;和旁路血管成形术血运重建 2 型糖尿病 [BARI 2D] 试验:n=1495)中独立评估了表型映射策略。
在 9.1 年的随访中,789 名(12.2%)参与者发生了主要结局事件。FMM 表型映射具有三个表型组,是在推导和验证队列中表现最佳的聚类策略,由贝叶斯信息准则、邓恩指数和模型区分度的提高确定。表型组 1(n=663,10.3%)合并症和糖尿病并发症负担最高,表型组 2(n=2388,36.9%)合并症负担中等,糖尿病并发症最低,表型组 3(n=3415,52.8%)合并症最少,糖尿病并发症负担中等。在 ACCORD 中观察到表型组与治疗干预之间存在显著的相互作用,包括强化血糖控制(p 交互=0.042)和联合降脂治疗(p 交互<0.001),在 Look AHEAD 中观察到强化生活方式干预(p 交互=0.002),在 BARI 2D 试验队列中观察到早期冠状动脉血运重建(p 交互=0.003)与主要复合结局的风险。在这些干预措施中,低危的表型组 3 参与者的主要复合结局风险降低,而其他表型组没有。与表型组 3 相比,ACCORD 和 Look AHEAD 试验队列中的表型组 1 参与者更有可能在随访中发生严重/有症状的低血糖事件和药物不依从。
结论/解释:使用 FMM 的聚类是识别具有不同临床特征、CVD 风险和对治疗反应的可复制 2 型糖尿病患者亚组的最佳表型映射策略。