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Computation of Total Kidney Volume from CT Images in Autosomal Dominant Polycystic Kidney Disease Using Multi-task 3D Convolutional Neural Networks

  • Deepak Keshwani
  • Yoshiro Kitamura
  • Yuanzhong Li
Conference paper
Part of the Lecture Notes in Computer Science book series (LNCS, volume 11046)

Abstract

Autosomal dominant polycystic kidney disease (ADPKD) characterized by progressive growth of renal cysts is the most prevalent and potentially lethal monogenic renal disease, affecting one in every 500–1000 people. Total Kidney Volume (TKV) and its growth computed from Computed Tomography images has been accepted as an essential prognostic marker for renal function loss. Due to large variation in shape and size of kidney in ADPKD, existing methods to compute TKV (i.e. to segment ADKP) including those based on 2D convolutional neural networks are not accurate enough to be directly useful in clinical practice. In this work, we propose multi-task 3D Convolutional Neural Networks to segment ADPK and achieve a mean DICE score of 0.95 and mean absolute percentage TKV error of 3.86%. Additionally, to solve the challenge of class imbalance, we propose to simply bootstrap cross entropy loss and compare results with recently prevalent dice loss in medical image segmentation community.

Keywords

Autosomal dominant polycystic kidney disease (ADKPD) Multi-task learning 3D fully convolutional network (3D FCN) 

Notes

Acknowledgements

We acknowledge using Reedbush-L (SGI Rackable C2112-4GP3/C1102-GP8) HPC system in the Information Technology Center, The University of Tokyo for GPU computational resources used in this work.

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Copyright information

© Springer Nature Switzerland AG 2018

Authors and Affiliations

  • Deepak Keshwani
    • 1
  • Yoshiro Kitamura
    • 1
  • Yuanzhong Li
    • 1
  1. 1.Imaging Technology Center, Fujifilm CorporationTokyoJapan

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