Identification and validation of gestational diabetes subgroups by data-driven cluster analysis.

IF 8.4 1区 医学 Q1 ENDOCRINOLOGY & METABOLISM
Diabetologia Pub Date : 2024-08-01 Epub Date: 2024-05-27 DOI:10.1007/s00125-024-06184-7
Benedetta Salvatori, Silke Wegener, Grammata Kotzaeridi, Annika Herding, Florian Eppel, Iris Dressler-Steinbach, Wolfgang Henrich, Agnese Piersanti, Micaela Morettini, Andrea Tura, Christian S Göbl
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Abstract

Aims/hypothesis: Gestational diabetes mellitus (GDM) is a heterogeneous condition. Given such variability among patients, the ability to recognise distinct GDM subgroups using routine clinical variables may guide more personalised treatments. Our main aim was to identify distinct GDM subtypes through cluster analysis using routine clinical variables, and analyse treatment needs and pregnancy outcomes across these subgroups.

Methods: In this cohort study, we analysed datasets from a total of 2682 women with GDM treated at two central European hospitals (1865 participants from Charité University Hospital in Berlin and 817 participants from the Medical University of Vienna), collected between 2015 and 2022. We evaluated various clustering models, including k-means, k-medoids and agglomerative hierarchical clustering. Internal validation techniques were used to guide best model selection, while external validation on independent test sets was used to assess model generalisability. Clinical outcomes such as specific treatment needs and maternal and fetal complications were analysed across the identified clusters.

Results: Our optimal model identified three clusters from routinely available variables, i.e. maternal age, pre-pregnancy BMI (BMIPG) and glucose levels at fasting and 60 and 120 min after the diagnostic OGTT (OGTT0, OGTT60 and OGTT120, respectively). Cluster 1 was characterised by the highest OGTT values and obesity prevalence. Cluster 2 displayed intermediate BMIPG and elevated OGTT0, while cluster 3 consisted mainly of participants with normal BMIPG and high values for OGTT60 and OGTT120. Treatment modalities and clinical outcomes varied among clusters. In particular, cluster 1 participants showed a much higher need for glucose-lowering medications (39.6% of participants, compared with 12.9% and 10.0% in clusters 2 and 3, respectively, p<0.0001). Cluster 1 participants were also at higher risk of delivering large-for-gestational-age infants. Differences in the type of insulin-based treatment between cluster 2 and cluster 3 were observed in the external validation cohort.

Conclusions/interpretation: Our findings confirm the heterogeneity of GDM. The identification of subgroups (clusters) has the potential to help clinicians define more tailored treatment approaches for improved maternal and neonatal outcomes.

Abstract Image

通过数据驱动的聚类分析确定和验证妊娠糖尿病亚组。
目的/假设:妊娠糖尿病(GDM)是一种异质性疾病。鉴于患者之间的这种差异性,利用常规临床变量识别不同的 GDM 亚群的能力可为更个性化的治疗提供指导。我们的主要目的是利用常规临床变量通过聚类分析确定不同的 GDM 亚型,并分析这些亚型的治疗需求和妊娠结局:在这项队列研究中,我们分析了在欧洲中部两家医院接受治疗的 2 682 名 GDM 妇女的数据集(柏林夏里特大学医院的 1 865 名参与者和维也纳医科大学的 817 名参与者),这些数据集收集于 2015 年至 2022 年期间。我们评估了各种聚类模型,包括k-means、k-medoids和聚类分层聚类。内部验证技术用于指导最佳模型的选择,而独立测试集上的外部验证则用于评估模型的通用性。在已确定的聚类中分析了特定治疗需求、母体和胎儿并发症等临床结果:我们的最佳模型从常规可用变量(即产妇年龄、孕前体重指数(BMIPG)和空腹及诊断性 OGTT(分别为 OGTT0、OGTT60 和 OGTT120)后 60 分钟和 120 分钟的血糖水平)中确定了三个群组。组 1 的特点是 OGTT 值和肥胖率最高。第 2 组的 BMIPG 中等,OGTT0 升高,而第 3 组主要由 BMIPG 正常、OGTT60 和 OGTT120 值较高的参与者组成。各组群的治疗方式和临床结果各不相同。特别是,群组 1 的参与者对降糖药物的需求更高(39.6% 的参与者,而群组 2 和群组 3 分别为 12.9% 和 10.0%,p 结论/解释:我们的研究结果证实了 GDM 的异质性。亚组(群组)的确定有可能帮助临床医生确定更有针对性的治疗方法,从而改善孕产妇和新生儿的预后。
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来源期刊
Diabetologia
Diabetologia 医学-内分泌学与代谢
CiteScore
18.10
自引率
2.40%
发文量
193
审稿时长
1 months
期刊介绍: Diabetologia, the authoritative journal dedicated to diabetes research, holds high visibility through society membership, libraries, and social media. As the official journal of the European Association for the Study of Diabetes, it is ranked in the top quartile of the 2019 JCR Impact Factors in the Endocrinology & Metabolism category. The journal boasts dedicated and expert editorial teams committed to supporting authors throughout the peer review process.
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