Tirkes, TemelChinchilli, Vernon M.Bagci, UlasParker, Jason G.Zhao, XuandongDasyam, Anil K.Feranec, NicholasGrajo, Joseph R.Shah, Zarine K.Poullos, Peter D.Spilseth, BenjaminZaheer, AtifXie, Karen L.Wachsman, Ashley M.Campbell-Thompson, MarthaConwell, Darwin L.Fogel, Evan L.Forsmark, Christopher E.Hart, Phil A.Pandol, Stephen J.Park, Walter G.Pratley, Richard E.Yazici, CemalLaughlin, Maren R.Andersen, Dana K.Serrano, JoseBellin, Melena D.Yadav, DhirajType 1 Diabetes in Acute Pancreatitis Consortium (T1DAPC)2024-01-312024-01-312022Tirkes T, Chinchilli VM, Bagci U, et al. Design and Rationale for the Use of Magnetic Resonance Imaging Biomarkers to Predict Diabetes After Acute Pancreatitis in the Diabetes RElated to Acute Pancreatitis and Its Mechanisms Study: From the Type 1 Diabetes in Acute Pancreatitis Consortium. Pancreas. 2022;51(6):586-592. doi:10.1097/MPA.0000000000002080https://hdl.handle.net/1805/38242This core component of the Diabetes RElated to Acute pancreatitis and its Mechanisms (DREAM) study will examine the hypothesis that advanced magnetic resonance imaging (MRI) techniques can reflect underlying pathophysiologic changes and provide imaging biomarkers that predict diabetes mellitus (DM) following acute pancreatitis (AP). A subset of participants in the DREAM study will enroll and undergo serial MRI examinations using a specific research protocol. We aim to differentiate at-risk individuals from those who remain euglycemic by identifying parenchymal features following AP. Performing longitudinal MRI will enable us to observe and understand the natural history of post-AP DM. We will compare MRI parameters obtained by interrogating tissue properties in euglycemic, prediabetic and incident diabetes subjects and correlate them with metabolic, genetic, and immunological phenotypes. Differentiating imaging parameters will be combined to develop a quantitative composite risk score. This composite risk score will potentially have the ability to monitor the risk of DM in clinical practice or trials. We will use artificial intelligence, specifically deep learning, algorithms to optimize the predictive ability of MRI. In addition to the research MRI, the DREAM study will also correlate clinical computerized tomography and MRI scans with DM development.en-USPublisher PolicyPancreasMRICTVolumePerfusionArtificial intelligenceDesign and Rationale for the Use of Magnetic Resonance Imaging Biomarkers to Predict Diabetes After Acute Pancreatitis in the Diabetes RElated to Acute Pancreatitis and Its Mechanisms Study: From the Type 1 Diabetes in Acute Pancreatitis ConsortiumArticle