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Predicting Diabetic Nephropathy Using a Multifactorial Genetic Model

AIMS: The tendency to develop diabetic nephropathy is, in part, genetically determined, however this genetic risk is largely undefined. In this proof-of-concept study, we tested the hypothesis that combined analysis of multiple genetic variants can improve prediction. METHODS: Based on previous repo...

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Autores principales: Blech, Ilana, Katzenellenbogen, Mark, Katzenellenbogen, Alexandra, Wainstein, Julio, Rubinstein, Ardon, Harman-Boehm, Ilana, Cohen, Joseph, Pollin, Toni I., Glaser, Benjamin
Formato: Texto
Lenguaje:English
Publicado: Public Library of Science 2011
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3077408/
https://www.ncbi.nlm.nih.gov/pubmed/21533139
http://dx.doi.org/10.1371/journal.pone.0018743
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author Blech, Ilana
Katzenellenbogen, Mark
Katzenellenbogen, Alexandra
Wainstein, Julio
Rubinstein, Ardon
Harman-Boehm, Ilana
Cohen, Joseph
Pollin, Toni I.
Glaser, Benjamin
author_facet Blech, Ilana
Katzenellenbogen, Mark
Katzenellenbogen, Alexandra
Wainstein, Julio
Rubinstein, Ardon
Harman-Boehm, Ilana
Cohen, Joseph
Pollin, Toni I.
Glaser, Benjamin
author_sort Blech, Ilana
collection PubMed
description AIMS: The tendency to develop diabetic nephropathy is, in part, genetically determined, however this genetic risk is largely undefined. In this proof-of-concept study, we tested the hypothesis that combined analysis of multiple genetic variants can improve prediction. METHODS: Based on previous reports, we selected 27 SNPs in 15 genes from metabolic pathways involved in the pathogenesis of diabetic nephropathy and genotyped them in 1274 Ashkenazi or Sephardic Jewish patients with Type 1 or Type 2 diabetes of >10 years duration. A logistic regression model was built using a backward selection algorithm and SNPs nominally associated with nephropathy in our population. The model was validated by using random “training” (75%) and “test” (25%) subgroups of the original population and by applying the model to an independent dataset of 848 Ashkenazi patients. RESULTS: The logistic model based on 5 SNPs in 5 genes (HSPG2, NOS3, ADIPOR2, AGER, and CCL5) and 5 conventional variables (age, sex, ethnicity, diabetes type and duration), and allowing for all possible two-way interactions, predicted nephropathy in our initial population (C-statistic = 0.672) better than a model based on conventional variables only (C = 0.569). In the independent replication dataset, although the C-statistic of the genetic model decreased (0.576), it remained highly associated with diabetic nephropathy (χ(2) = 17.79, p<0.0001). In the replication dataset, the model based on conventional variables only was not associated with nephropathy (χ(2) = 3.2673, p = 0.07). CONCLUSION: In this proof-of-concept study, we developed and validated a genetic model in the Ashkenazi/Sephardic population predicting nephropathy more effectively than a similarly constructed non-genetic model. Further testing is required to determine if this modeling approach, using an optimally selected panel of genetic markers, can provide clinically useful prediction and if generic models can be developed for use across multiple ethnic groups or if population-specific models are required.
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spelling pubmed-30774082011-04-29 Predicting Diabetic Nephropathy Using a Multifactorial Genetic Model Blech, Ilana Katzenellenbogen, Mark Katzenellenbogen, Alexandra Wainstein, Julio Rubinstein, Ardon Harman-Boehm, Ilana Cohen, Joseph Pollin, Toni I. Glaser, Benjamin PLoS One Research Article AIMS: The tendency to develop diabetic nephropathy is, in part, genetically determined, however this genetic risk is largely undefined. In this proof-of-concept study, we tested the hypothesis that combined analysis of multiple genetic variants can improve prediction. METHODS: Based on previous reports, we selected 27 SNPs in 15 genes from metabolic pathways involved in the pathogenesis of diabetic nephropathy and genotyped them in 1274 Ashkenazi or Sephardic Jewish patients with Type 1 or Type 2 diabetes of >10 years duration. A logistic regression model was built using a backward selection algorithm and SNPs nominally associated with nephropathy in our population. The model was validated by using random “training” (75%) and “test” (25%) subgroups of the original population and by applying the model to an independent dataset of 848 Ashkenazi patients. RESULTS: The logistic model based on 5 SNPs in 5 genes (HSPG2, NOS3, ADIPOR2, AGER, and CCL5) and 5 conventional variables (age, sex, ethnicity, diabetes type and duration), and allowing for all possible two-way interactions, predicted nephropathy in our initial population (C-statistic = 0.672) better than a model based on conventional variables only (C = 0.569). In the independent replication dataset, although the C-statistic of the genetic model decreased (0.576), it remained highly associated with diabetic nephropathy (χ(2) = 17.79, p<0.0001). In the replication dataset, the model based on conventional variables only was not associated with nephropathy (χ(2) = 3.2673, p = 0.07). CONCLUSION: In this proof-of-concept study, we developed and validated a genetic model in the Ashkenazi/Sephardic population predicting nephropathy more effectively than a similarly constructed non-genetic model. Further testing is required to determine if this modeling approach, using an optimally selected panel of genetic markers, can provide clinically useful prediction and if generic models can be developed for use across multiple ethnic groups or if population-specific models are required. Public Library of Science 2011-04-14 /pmc/articles/PMC3077408/ /pubmed/21533139 http://dx.doi.org/10.1371/journal.pone.0018743 Text en Blech et al. http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
Blech, Ilana
Katzenellenbogen, Mark
Katzenellenbogen, Alexandra
Wainstein, Julio
Rubinstein, Ardon
Harman-Boehm, Ilana
Cohen, Joseph
Pollin, Toni I.
Glaser, Benjamin
Predicting Diabetic Nephropathy Using a Multifactorial Genetic Model
title Predicting Diabetic Nephropathy Using a Multifactorial Genetic Model
title_full Predicting Diabetic Nephropathy Using a Multifactorial Genetic Model
title_fullStr Predicting Diabetic Nephropathy Using a Multifactorial Genetic Model
title_full_unstemmed Predicting Diabetic Nephropathy Using a Multifactorial Genetic Model
title_short Predicting Diabetic Nephropathy Using a Multifactorial Genetic Model
title_sort predicting diabetic nephropathy using a multifactorial genetic model
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3077408/
https://www.ncbi.nlm.nih.gov/pubmed/21533139
http://dx.doi.org/10.1371/journal.pone.0018743
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