| Literature DB >> 31740441 |
Brigitte I Frohnert1, Bobbie-Jo Webb-Robertson2, Lisa M Bramer2, Sara M Reehl2, Kathy Waugh3, Andrea K Steck3, Jill M Norris4, Marian Rewers3.
Abstract
This study aims to model genetic, immunologic, metabolomics, and proteomic biomarkers for development of islet autoimmunity (IA) and progression to type 1 diabetes in a prospective high-risk cohort. We studied 67 children: 42 who developed IA (20 of 42 progressed to diabetes) and 25 control subjects matched for sex and age. Biomarkers were assessed at four time points: earliest available sample, just prior to IA, just after IA, and just prior to diabetes onset. Predictors of IA and progression to diabetes were identified across disparate sources using an integrative machine learning algorithm and optimization-based feature selection. Our integrative approach was predictive of IA (area under the receiver operating characteristic curve [AUC] 0.91) and progression to diabetes (AUC 0.92) based on standard cross-validation (CV). Among the strongest predictors of IA were change in serum ascorbate, 3-methyl-oxobutyrate, and the PTPN22 (rs2476601) polymorphism. Serum glucose, ADP fibrinogen, and mannose were among the strongest predictors of progression to diabetes. This proof-of-principle analysis is the first study to integrate large, diverse biomarker data sets into a limited number of features, highlighting differences in pathways leading to IA from those predicting progression to diabetes. Integrated models, if validated in independent populations, could provide novel clues concerning the pathways leading to IA and type 1 diabetes.Entities:
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Year: 2019 PMID: 31740441 PMCID: PMC6971485 DOI: 10.2337/db18-1263
Source DB: PubMed Journal: Diabetes ISSN: 0012-1797 Impact factor: 9.461
Characteristics of the study participants
| Control | AbPos | T1D | ||
|---|---|---|---|---|
| 25 | 20 | 22 | ||
| HLA | 0.55 | |||
| | 17 | 15 | 17 | |
| | 5 | 3 | 3 | |
| Other | 3 | 2 | 2 | |
| FDR, | 9 (36) | 11 (55) | 15 (68) | 0.08 |
| Female sex, | 13 (52) | 8 (40) | 10 (45) | 0.72 |
| NHW ethnicity, | 20 (80) | 15 (75) | 21 (95) | 0.17 |
| Age (years) at development of IA, median (IQR) | 7.4 (5.4, 9.9) | 5.2 (2.9, 7.9) | 0.06 | |
| Age (years) at development of diabetes, median (IQR) | 11.0 (9.4, 13.7) | — |
All comparisons by χ2 except age at IA, which was compared using Wilcoxon rank sum test. IQR, interquartile range; NHW, non-Hispanic white; X, neither HLA DR4 nor DR3.
Figure 1ROC curves. A: Comparing development of IA in control group vs. combined AbPos and T1D groups at transition from earliest time point (T1) to preseroconversion (T2). B: Comparing progression to T1D—transition from postseroconversion (T3) to before T1D diagnosis (T4)—in AbPos vs. T1D groups. Dotted line, prediction based on all features; gray dashed line (RFE), prediction based on features selected 50% of the time or more using recursive feature elimination; solid black line (ROFI), prediction based on features selected at least 50% of the time using ROFI-P3 algorithm; black dashed line (in panel B only), prediction based on glucose change from T3 to T4.
The top 16 predictors for development of IA
| Selected (%) | Source | Feature | Function/description |
|---|---|---|---|
| 100 | Metabolite | Ascorbate (vitamin C) | Antioxidant and coenzyme |
| 100 | Metadata | Age (years) | Age at T1 |
| 98 | Metadata | First-degree relative status | Grouped by mother with type 1 diabetes, other FDR (sibling or father), or no FDR |
| 94 | Metabolite | 3-methyl-2-oxobutyrate | Branched-chain organic acid; precursor to leucine and valine synthesis |
| 93 | Protein | FCRL3 (Fc receptor-like protein 3) | Promotes TLR9-induced B-cell proliferation, activation, and survival |
| 91 | Metabolite | 4-hydroxyhippurate | Microbial end product derived from polyphenol metabolism by the microflora in the intestine |
| 90 | Metadata | Hispanic | Self-report of Hispanic ethnicity |
| 90 | Protein | NKG2D type II integral membrane protein/KLRK1 (Killer cell lectin-like receptor subfamily K member 1) | Stimulatory and costimulatory innate immune response on activated killer cells; involved in immunosurveillance of virus-infected cells |
| 89 | SNP | rs2476601 ( | Autoimmunity gene; negative regulator of T-cell receptor signaling |
| 89 | Protein | SSRP1 (Structure Specific Recognition Protein 1)/FACT (Facilitates Chromatin Transcription) complex subunit | The FACT complex plays a role in mRNA elongation, DNA replication, and DNA repair |
| 89 | Metabolite | Pyroglutamine | Glutamine and glutathione metabolism |
| 87 | Protein | MMP-2 | Metalloproteinase involved in diverse functions including angiogenesis, tissue repair, and inflammation |
| 86 | Protein | Activin A | Member of TGF-β superfamily of cytokines; plays role in regulation of tissue homeostasis, organ development, inflammation, cell proliferation, and apoptosis |
| 85 | SNP | rs2476601 ( | Autoimmunity gene; negative regulator of T-cell receptor signaling |
| 84 | Protein | CSK21 (Casein kinase II subunit alpha) | Regulates various cellular processes including cell cycle progression, apoptosis, and transcription as well as response to viral infections |
| 84 | SNP | rs3087243 ( | Autoimmunity gene; negative regulator of T-cell responses |
Analysis by ROFI-P3 comparing control subjects with pooled antibody-positive subjects and subjects with type 1 diabetes. Ranking by selection frequency for metabolites and proteins (fold change from T1 to T2) or SNPs (risk allele count). Proteins: www.genecards.org and www.uniprot.org. SNPs: www.SNPedia.com. Metabolite: www.hmdb.ca.
Figure 2The top 10 protein, peptide, and metabolite predictors for development of IA. For each analyte, the box plots show log fold change from time 1 (T1) to time 2 (T2) for case and control subjects with individual values noted by circles. The value of log2(T2 − T1) is positive with increasing trajectory and negative with decreasing trajectory.
The top 16 predictors of progression from IA to diabetes
| Selected (%) | Source | Feature | Function/description |
|---|---|---|---|
| 100 | Metabolite | Glucose | Carbohydrate metabolism |
| 100 | Metadata | Age (years) | Age at T3 |
| 100 | Metabolite | ADP fibrinogen | Coagulation |
| 100 | Protein | DRR1 (downregulated in renal cell carcinoma 1)/actin-associated protein FAM107A | Regulation of cytoskeleton organization and cell growth |
| 99 | Metabolite | Mannose | Carbohydrate metabolism |
| 98 | Protein | RAD51 (DNA repair protein RAD51 homolog 1) | Response to DNA damage; DNA repair |
| 98 | Protein | CYTF (cystatin-F) | Inhibits cathepsin L; may play a role in immune regulation |
| 97 | Protein | MAPKAPK3 (MAP kinase–activated protein kinase 3) | Stress-activated serine/threonine protein kinase |
| 92 | SNP | SLE-associated genetic variant on chromosome 6 | |
| 91 | SNP | From GWAS for T1D (rs7221109) | Type 1 diabetes–associated genetic variant on chromosome 17 |
| 90 | Protein | Plasminogen | Dissolves fibrin in blood clots; plays a role in inflammation and tissue remodeling |
| 89 | Metabolite | Ribose | Carbohydrate metabolism |
| 89 | Protein | IL-11 RA (interleukin-11 receptor subunit α) | Development and proliferation of mesenchymal cells |
| 89 | SNP | HLA | Type 1 diabetes–associated genetic variant; associated with HLA |
| 87 | Metabolite | Butyrylcarnitine | Fatty acid ester |
| 86 | Protein | Spondin-1 | Cell adhesion protein |
Analysis by ROFI-P3 comparing islet autoantibody–positive subjects who progressed to diabetes with those who did not progress. Ranking by selection frequency for metabolites and proteins (fold change from T3 to T4) or SNPs (risk allele count). Proteins: www.genecards.org and www.uniprot.org. SNPs: www.SNPedia.com. Metabolite: www.hmdb.ca. GWAS, genome-wide association studies; SLE, systemic lupus erythematosus.
Figure 3The top 12 protein, peptide, and metabolite predictors for progression to diabetes. For each analyte, the box plots show log fold change from time 3 (T3) to time 4 (T4) for case and control subjects with individual values noted by circles. The value of log2(T4 − T3) is positive with increasing trajectory and negative with decreasing trajectory.
Figure 4PCA of (A) predictors of IA based on top 4 metabolites and 6 proteins and (B) progression from IA to diabetes on top 5 metabolites and 7 proteins. Open circles represent control subjects, and closed circles represent combined AbPos and T1D groups. PC1, principal component 1; PC2, principal component 2.