4.4 Article

Deep learning-based pancreas volume assessment in individuals with type 1 diabetes

期刊

BMC MEDICAL IMAGING
卷 22, 期 1, 页码 -

出版社

BMC
DOI: 10.1186/s12880-021-00729-7

关键词

Automatic segmentation; Auto-segmentation; Semantic; T1D; MRI; Neural network; Machine learning; Artificial intelligence; Size

资金

  1. NIDDK [R03DK129979]
  2. Thomas J. Beatson, Jr. Foundation [2021-003]
  3. JDRF [3-SRA-2015-102-M-B, 3-SRA-2019-759-M-B]
  4. Cain Foundation-Seton-Dell Medical School Endowment for Collaborative Research
  5. NIDDK Information Network's (dkNET) New Investigator Pilot Program in Bioinformatics [U24DK097771]
  6. NCATS/NIH [UL1 TR000445]
  7. Vanderbilt Diabetes Research & Training Center [DK-020593]

向作者/读者索取更多资源

Pancreas volume is reduced in individuals with diabetes and those at risk for developing type 1 diabetes. This study developed a deep learning algorithm for automated pancreas volume measurement in individuals with diabetes. Training the algorithm on multiple cohorts showed high overlap and excellent correlation with manual segmentations.
Pancreas volume is reduced in individuals with diabetes and in autoantibody positive individuals at high risk for developing type 1 diabetes (T1D). Studies investigating pancreas volume are underway to assess pancreas volume in large clinical databases and studies, but manual pancreas annotation is time-consuming and subjective, preventing extension to large studies and databases. This study develops deep learning for automated pancreas volume measurement in individuals with diabetes. A convolutional neural network was trained using manual pancreas annotation on 160 abdominal magnetic resonance imaging (MRI) scans from individuals with T1D, controls, or a combination thereof. Models trained using each cohort were then tested on scans of 25 individuals with T1D. Deep learning and manual segmentations of the pancreas displayed high overlap (Dice coefficient = 0.81) and excellent correlation of pancreas volume measurements (R-2 = 0.94). Correlation was highest when training data included individuals both with and without T1D. The pancreas of individuals with T1D can be automatically segmented to measure pancreas volume. This algorithm can be applied to large imaging datasets to quantify the spectrum of human pancreas volume.

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