iScience (Jul 2023)

Deep learning-enabled quantification of simultaneous PET/MRI for cell transplantation monitoring

  • Hasaan Hayat,
  • Rui Wang,
  • Aixia Sun,
  • Christiane L. Mallett,
  • Saumya Nigam,
  • Nathan Redman,
  • Demarcus Bunn,
  • Elvira Gjelaj,
  • Nazanin Talebloo,
  • Adam Alessio,
  • Anna Moore,
  • Kurt Zinn,
  • Guo-Wei Wei,
  • Jinda Fan,
  • Ping Wang

Journal volume & issue
Vol. 26, no. 7
p. 107083

Abstract

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Summary: Current methods of in vivo imaging islet cell transplants for diabetes using magnetic resonance imaging (MRI) are limited by their low sensitivity. Simultaneous positron emission tomography (PET)/MRI has greater sensitivity and ability to visualize cell metabolism. However, this dual-modality tool currently faces two major challenges for monitoring cells. Primarily, the dynamic conditions of PET such as signal decay and spatiotemporal change in radioactivity prevent accurate quantification of the transplanted cell number. In addition, selection bias from different radiologists renders human error in segmentation. This calls for the development of artificial intelligence algorithms for the automated analysis of PET/MRI of cell transplantations. Here, we combined K-means++ for segmentation with a convolutional neural network to predict radioactivity in cell-transplanted mouse models. This study provides a tool combining machine learning with a deep learning algorithm for monitoring islet cell transplantation through PET/MRI. It also unlocks a dynamic approach to automated segmentation and quantification of radioactivity in PET/MRI.

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