Skip to main content
Top
Published in: Diabetologia 5/2024

Open Access 22-02-2024 | Type 2 Diabetes | Article

Phenotype-based targeted treatment of SGLT2 inhibitors and GLP-1 receptor agonists in type 2 diabetes

Authors: Pedro Cardoso, Katie G. Young, Anand T. N. Nair, Rhian Hopkins, Andrew P. McGovern, Eram Haider, Piyumanga Karunaratne, Louise Donnelly, Bilal A. Mateen, Naveed Sattar, Rury R. Holman, Jack Bowden, Andrew T. Hattersley, Ewan R. Pearson, Angus G. Jones, Beverley M. Shields, Trevelyan J. McKinley, John M. Dennis, on behalf of the MASTERMIND consortium

Published in: Diabetologia | Issue 5/2024

Login to get access

Abstract

Aims/hypothesis

A precision medicine approach in type 2 diabetes could enhance targeting specific glucose-lowering therapies to individual patients most likely to benefit. We aimed to use the recently developed Bayesian causal forest (BCF) method to develop and validate an individualised treatment selection algorithm for two major type 2 diabetes drug classes, sodium–glucose cotransporter 2 inhibitors (SGLT2i) and glucagon-like peptide-1 receptor agonists (GLP1-RA).

Methods

We designed a predictive algorithm using BCF to estimate individual-level conditional average treatment effects for 12-month glycaemic outcome (HbA1c) between SGLT2i and GLP1-RA, based on routine clinical features of 46,394 people with type 2 diabetes in primary care in England (Clinical Practice Research Datalink; 27,319 for model development, 19,075 for hold-out validation), with additional external validation in 2252 people with type 2 diabetes from Scotland (SCI-Diabetes [Tayside & Fife]). Differences in glycaemic outcome with GLP1-RA by sex seen in clinical data were replicated in clinical trial data (HARMONY programme: liraglutide [n=389] and albiglutide [n=1682]). As secondary outcomes, we evaluated the impacts of targeting therapy based on glycaemic response on weight change, tolerability and longer-term risk of new-onset microvascular complications, macrovascular complications and adverse kidney events.

Results

Model development identified marked heterogeneity in glycaemic response, with 4787 (17.5%) of the development cohort having a predicted HbA1c benefit >3 mmol/mol (>0.3%) with SGLT2i over GLP1-RA and 5551 (20.3%) having a predicted HbA1c benefit >3 mmol/mol with GLP1-RA over SGLT2i. Calibration was good in hold-back validation, and external validation in an independent Scottish dataset identified clear differences in glycaemic outcomes between those predicted to benefit from each therapy. Sex, with women markedly more responsive to GLP1-RA, was identified as a major treatment effect modifier in both the UK observational datasets and in clinical trial data: HARMONY-7 liraglutide (GLP1-RA): 4.4 mmol/mol (95% credible interval [95% CrI] 2.2, 6.3) (0.4% [95% CrI 0.2, 0.6]) greater response in women than men. Targeting the two therapies based on predicted glycaemic response was also associated with improvements in short-term tolerability and long-term risk of new-onset microvascular complications.

Conclusions/interpretation

Precision medicine approaches can facilitate effective individualised treatment choice between SGLT2i and GLP1-RA therapies, and the use of routinely collected clinical features for treatment selection could support low-cost deployment in many countries.

Graphical Abstract

Appendix
Available only for authorised users
Literature
2.
go back to reference Davies MJ, Aroda VR, Collins BS et al (2022) Management of hyperglycemia in type 2 diabetes, 2022. A consensus report by the American Diabetes Association (ADA) and the European Association for the Study of Diabetes (EASD). Diabetologia 65(12):1925–1966CrossRefPubMedPubMedCentral Davies MJ, Aroda VR, Collins BS et al (2022) Management of hyperglycemia in type 2 diabetes, 2022. A consensus report by the American Diabetes Association (ADA) and the European Association for the Study of Diabetes (EASD). Diabetologia 65(12):1925–1966CrossRefPubMedPubMedCentral
13.
19.
go back to reference Caron A (2020) SparseBCF: sparse Bayesian causal forest for heterogeneous treatment. R package version 1.0 Caron A (2020) SparseBCF: sparse Bayesian causal forest for heterogeneous treatment. R package version 1.0
20.
go back to reference Kapelner A, Bleich J (2016) bartMachine: machine learning with Bayesian additive regression trees. J Stat Softw 70(4):1–40CrossRef Kapelner A, Bleich J (2016) bartMachine: machine learning with Bayesian additive regression trees. J Stat Softw 70(4):1–40CrossRef
23.
go back to reference Harrell FE (2016) Regression modeling strategies. Springer International Publishing Harrell FE (2016) Regression modeling strategies. Springer International Publishing
31.
Metadata
Title
Phenotype-based targeted treatment of SGLT2 inhibitors and GLP-1 receptor agonists in type 2 diabetes
Authors
Pedro Cardoso
Katie G. Young
Anand T. N. Nair
Rhian Hopkins
Andrew P. McGovern
Eram Haider
Piyumanga Karunaratne
Louise Donnelly
Bilal A. Mateen
Naveed Sattar
Rury R. Holman
Jack Bowden
Andrew T. Hattersley
Ewan R. Pearson
Angus G. Jones
Beverley M. Shields
Trevelyan J. McKinley
John M. Dennis
on behalf of the MASTERMIND consortium
Publication date
22-02-2024
Publisher
Springer Berlin Heidelberg
Keyword
Type 2 Diabetes
Published in
Diabetologia / Issue 5/2024
Print ISSN: 0012-186X
Electronic ISSN: 1432-0428
DOI
https://doi.org/10.1007/s00125-024-06099-3

Other articles of this Issue 5/2024

Diabetologia 5/2024 Go to the issue
Live Webinar | 27-06-2024 | 18:00 (CEST)

Keynote webinar | Spotlight on medication adherence

Live: Thursday 27th June 2024, 18:00-19:30 (CEST)

WHO estimates that half of all patients worldwide are non-adherent to their prescribed medication. The consequences of poor adherence can be catastrophic, on both the individual and population level.

Join our expert panel to discover why you need to understand the drivers of non-adherence in your patients, and how you can optimize medication adherence in your clinics to drastically improve patient outcomes.

Prof. Kevin Dolgin
Prof. Florian Limbourg
Prof. Anoop Chauhan
Developed by: Springer Medicine
Obesity Clinical Trial Summary

At a glance: The STEP trials

A round-up of the STEP phase 3 clinical trials evaluating semaglutide for weight loss in people with overweight or obesity.

Developed by: Springer Medicine