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Simplifying prediction of disease progression in pre-symptomatic type 1 diabetes using a single blood sample

Bediaga, Naiara G ; Li-Wai-Suen, Connie S N ; Haller, Michael J ; Gitelman, Stephen E ; Evans-Molina, Carmella ; Gottlieb, Peter A ; Hippich, Markus ; Ziegler, Anette-Gabriele ; Lernmark, Ake LU orcid and DiMeglio, Linda A , et al. (2021) In Diabetologia 64(11). p.2432-2444
Abstract

AIMS/HYPOTHESIS: Accurate prediction of disease progression in individuals with pre-symptomatic type 1 diabetes has potential to prevent ketoacidosis and accelerate development of disease-modifying therapies. Current tools for predicting risk require multiple blood samples taken during an OGTT. Our aim was to develop and validate a simpler tool based on a single blood draw.

METHODS: Models to predict disease progression using a single OGTT time point (0, 30, 60, 90 or 120 min) were developed using TrialNet data collected from relatives with type 1 diabetes and validated in independent populations at high genetic risk of type 1 diabetes (TrialNet, Diabetes Prevention Trial-Type 1, The Environmental Determinants of Diabetes in the... (More)

AIMS/HYPOTHESIS: Accurate prediction of disease progression in individuals with pre-symptomatic type 1 diabetes has potential to prevent ketoacidosis and accelerate development of disease-modifying therapies. Current tools for predicting risk require multiple blood samples taken during an OGTT. Our aim was to develop and validate a simpler tool based on a single blood draw.

METHODS: Models to predict disease progression using a single OGTT time point (0, 30, 60, 90 or 120 min) were developed using TrialNet data collected from relatives with type 1 diabetes and validated in independent populations at high genetic risk of type 1 diabetes (TrialNet, Diabetes Prevention Trial-Type 1, The Environmental Determinants of Diabetes in the Young [1]) and in a general population of Bavarian children who participated in Fr1da.

RESULTS: Cox proportional hazards models combining plasma glucose, C-peptide, sex, age, BMI, HbA1c and insulinoma antigen-2 autoantibody status predicted disease progression in all populations. In TrialNet, the AUC for receiver operating characteristic curves for models named M60, M90 and M120, based on sampling at 60, 90 and 120 min, was 0.760, 0.761 and 0.745, respectively. These were not significantly different from the AUC of 0.760 for the gold standard Diabetes Prevention Trial Risk Score, which requires five OGTT blood samples. In TEDDY, where only 120 min blood sampling had been performed, the M120 AUC was 0.865. In Fr1da, the M120 AUC of 0.742 was significantly greater than the M60 AUC of 0.615.

CONCLUSIONS/INTERPRETATION: Prediction models based on a single OGTT blood draw accurately predict disease progression from stage 1 or 2 to stage 3 type 1 diabetes. The operational simplicity of M120, its validity across different at-risk populations and the requirement for 120 min sampling to stage type 1 diabetes suggest M120 could be readily applied to decrease the cost and complexity of risk stratification.

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organization
publishing date
type
Contribution to journal
publication status
published
subject
in
Diabetologia
volume
64
issue
11
pages
2432 - 2444
publisher
Springer
external identifiers
  • scopus:85111810998
  • pmid:34338806
ISSN
1432-0428
DOI
10.1007/s00125-021-05523-2
language
English
LU publication?
yes
id
5b3ee40e-08da-4598-a523-40c090a74524
date added to LUP
2021-08-09 16:43:12
date last changed
2024-04-20 10:02:58
@article{5b3ee40e-08da-4598-a523-40c090a74524,
  abstract     = {{<p>AIMS/HYPOTHESIS: Accurate prediction of disease progression in individuals with pre-symptomatic type 1 diabetes has potential to prevent ketoacidosis and accelerate development of disease-modifying therapies. Current tools for predicting risk require multiple blood samples taken during an OGTT. Our aim was to develop and validate a simpler tool based on a single blood draw.</p><p>METHODS: Models to predict disease progression using a single OGTT time point (0, 30, 60, 90 or 120 min) were developed using TrialNet data collected from relatives with type 1 diabetes and validated in independent populations at high genetic risk of type 1 diabetes (TrialNet, Diabetes Prevention Trial-Type 1, The Environmental Determinants of Diabetes in the Young [1]) and in a general population of Bavarian children who participated in Fr1da.</p><p>RESULTS: Cox proportional hazards models combining plasma glucose, C-peptide, sex, age, BMI, HbA1c and insulinoma antigen-2 autoantibody status predicted disease progression in all populations. In TrialNet, the AUC for receiver operating characteristic curves for models named M60, M90 and M120, based on sampling at 60, 90 and 120 min, was 0.760, 0.761 and 0.745, respectively. These were not significantly different from the AUC of 0.760 for the gold standard Diabetes Prevention Trial Risk Score, which requires five OGTT blood samples. In TEDDY, where only 120 min blood sampling had been performed, the M120 AUC was 0.865. In Fr1da, the M120 AUC of 0.742 was significantly greater than the M60 AUC of 0.615.</p><p>CONCLUSIONS/INTERPRETATION: Prediction models based on a single OGTT blood draw accurately predict disease progression from stage 1 or 2 to stage 3 type 1 diabetes. The operational simplicity of M120, its validity across different at-risk populations and the requirement for 120 min sampling to stage type 1 diabetes suggest M120 could be readily applied to decrease the cost and complexity of risk stratification.</p>}},
  author       = {{Bediaga, Naiara G and Li-Wai-Suen, Connie S N and Haller, Michael J and Gitelman, Stephen E and Evans-Molina, Carmella and Gottlieb, Peter A and Hippich, Markus and Ziegler, Anette-Gabriele and Lernmark, Ake and DiMeglio, Linda A and Wherrett, Diane K and Colman, Peter G and Harrison, Leonard C and Wentworth, John M}},
  issn         = {{1432-0428}},
  language     = {{eng}},
  month        = {{08}},
  number       = {{11}},
  pages        = {{2432--2444}},
  publisher    = {{Springer}},
  series       = {{Diabetologia}},
  title        = {{Simplifying prediction of disease progression in pre-symptomatic type 1 diabetes using a single blood sample}},
  url          = {{http://dx.doi.org/10.1007/s00125-021-05523-2}},
  doi          = {{10.1007/s00125-021-05523-2}},
  volume       = {{64}},
  year         = {{2021}},
}