Validation of automated whole-body analysis of metabolic and morphological parameters from an integrated FDG-PET/MRI acquisition
暂无分享,去创建一个
J. Kullberg | H. Ahlström | S. Skrtic | J. Eriksson | R. Strand | F. Malmberg | R. Visvanathar | P. Guglielmo | S. Ekström | E. Johansson | M. J. Pereira | B. C. L. Carlsson
[1] Filip Malmberg,et al. Fast Graph-Cut Based Optimization for Practical Dense Deformable Registration of Volume Images , 2018, Comput. Medical Imaging Graph..
[2] Claudio Aguayo,et al. Association between insulin resistance and the development of cardiovascular disease , 2018, Cardiovascular Diabetology.
[3] M. Lubberink,et al. Altered Glucose Uptake in Muscle, Visceral Adipose Tissue, and Brain Predict Whole-Body Insulin Resistance and may Contribute to the Development of Type 2 Diabetes: A Combined PET/MR Study , 2018, Hormone and Metabolic Research.
[4] Anders Forslund,et al. Fully convolutional networks for automated segmentation of abdominal adipose tissue depots in multicenter water–fat MRI , 2018, Magnetic resonance in medicine.
[5] L. Groop,et al. Novel subgroups of adult-onset diabetes and their association with outcomes: a data-driven cluster analysis of six variables. , 2018, The lancet. Diabetes & endocrinology.
[6] A. Alavi,et al. Regional Variation in Skeletal Muscle and Adipose Tissue FDG Uptake Using PET/CT and Their Relation to BMI. , 2017, Academic radiology.
[7] J. Al-Lawati. Diabetes Mellitus: A Local and Global Public Health Emergency! , 2017, Oman medical journal.
[8] Filip Malmberg,et al. A concept for holistic whole body MRI data analysis, Imiomics , 2017, PloS one.
[9] Filip Malmberg,et al. SmartPaint: a tool for interactive segmentation of medical volume images , 2017, Comput. methods Biomech. Biomed. Eng. Imaging Vis..
[10] T. Baum,et al. MR-based assessment of body fat distribution and characteristics. , 2016, European journal of radiology.
[11] Koen Van Laere,et al. Quantification, Variability, and Reproducibility of Basal Skeletal Muscle Glucose Uptake in Healthy Humans Using 18F-FDG PET/CT , 2015, The Journal of Nuclear Medicine.
[12] P. Iozzo,et al. Tissue specificity in fasting glucose utilization in slightly obese diabetic patients submitted to bariatric surgery , 2013, Obesity.
[13] Krishna S Nayak,et al. Automatic intra‐subject registration‐based segmentation of abdominal fat from water–fat MRI , 2013, Journal of magnetic resonance imaging : JMRI.
[14] Milan Sonka,et al. 3D Slicer as an image computing platform for the Quantitative Imaging Network. , 2012, Magnetic resonance imaging.
[15] Charles Laymon,et al. PET imaging reveals distinctive roles for different regional adipose tissue depots in systemic glucose metabolism in nonobese humans. , 2012, American journal of physiology. Endocrinology and metabolism.
[16] J. Linseisen,et al. Die Nationale Kohorte , 2012, Bundesgesundheitsblatt - Gesundheitsforschung - Gesundheitsschutz.
[17] K F King,et al. Removal of olefinic fat chemical shift artifact in diffusion MRI , 2011, Magnetic resonance in medicine.
[18] S. Nesterov,et al. Effects of Insulin on Brain Glucose Metabolism in Impaired Glucose Tolerance , 2011, Diabetes.
[19] P. Iozzo,et al. Insulin-mediated hepatic glucose uptake is impaired in type 2 diabetes: evidence for a relationship with glycemic control. , 2003, The Journal of clinical endocrinology and metabolism.
[20] R. Huupponen,et al. Glucose uptake and perfusion in subcutaneous and visceral adipose tissue during insulin stimulation in nonobese and obese humans. , 2002, The Journal of clinical endocrinology and metabolism.
[21] C S Patlak,et al. Graphical Evaluation of Blood-to-Brain Transfer Constants from Multiple-Time Uptake Data , 1983, Journal of cerebral blood flow and metabolism : official journal of the International Society of Cerebral Blood Flow and Metabolism.
[22] R. DeFronzo,et al. Glucose clamp technique: a method for quantifying insulin secretion and resistance. , 1979, The American journal of physiology.
[23] M. Lubberink,et al. Whole-Body Imaging of Tissue-specific Insulin Sensitivity and Body Composition by Using an Integrated PET/MR System: A Feasibility Study. , 2018, Radiology.
[24] A. Secchi,et al. The Burden of Diabetes: Emerging Data. , 2017, Developments in ophthalmology.
[25] D. Minhas,et al. Dynamic PET imaging reveals heterogeneity of skeletal muscle insulin resistance. , 2014, The Journal of clinical endocrinology and metabolism.
[26] Kirby G. Vosburgh,et al. 3D Slicer: A Platform for Subject-Specific Image Analysis, Visualization, and Clinical Support , 2014 .
[27] J. Affeldt,et al. The feasibility study , 2019, The Information System Consultant’s Handbook.