%0 Journal Article %T Multi-omics analysis reveals drivers of loss of β-cell function after newly diagnosed autoimmune type 1 diabetes: An INNODIA multicenter study. %A Armenteros JJA %A Brorsson C %A Johansen CH %A Banasik K %A Mazzoni G %A Moulder R %A Hirvonen K %A Suomi T %A Rasool O %A Bruggraber SFA %A Marcovecchio ML %A Hendricks E %A Al-Sari N %A Mattila I %A Legido-Quigley C %A Suvitaival T %A Chmura PJ %A Knip M %A Schulte AM %A Lee JH %A Sebastiani G %A Grieco GE %A Elo LL %A Kaur S %A Pociot F %A Dotta F %A Tree T %A Lahesmaa R %A Overbergh L %A Mathieu C %A Peakman M %A Brunak S %A %J Diabetes Metab Res Rev %V 40 %N 5 %D 2024 Jul %M 38961656 %F 8.128 %R 10.1002/dmrr.3833 %X OBJECTIVE: Heterogeneity in the rate of β-cell loss in newly diagnosed type 1 diabetes patients is poorly understood and creates a barrier to designing and interpreting disease-modifying clinical trials. Integrative analyses of baseline multi-omics data obtained after the diagnosis of type 1 diabetes may provide mechanistic insight into the diverse rates of disease progression after type 1 diabetes diagnosis.
METHODS: We collected samples in a pan-European consortium that enabled the concerted analysis of five different omics modalities in data from 97 newly diagnosed patients. In this study, we used Multi-Omics Factor Analysis to identify molecular signatures correlating with post-diagnosis decline in β-cell mass measured as fasting C-peptide.
RESULTS: Two molecular signatures were significantly correlated with fasting C-peptide levels. One signature showed a correlation to neutrophil degranulation, cytokine signalling, lymphoid and non-lymphoid cell interactions and G-protein coupled receptor signalling events that were inversely associated with a rapid decline in β-cell function. The second signature was related to translation and viral infection was inversely associated with change in β-cell function. In addition, the immunomics data revealed a Natural Killer cell signature associated with rapid β-cell decline.
CONCLUSIONS: Features that differ between individuals with slow and rapid decline in β-cell mass could be valuable in staging and prediction of the rate of disease progression and thus enable smarter (shorter and smaller) trial designs for disease modifying therapies as well as offering biomarkers of therapeutic effect.