Model-based deep learning framework for accelerated optical projection tomography.

Journal: Scientific reports
PMID:

Abstract

In this work, we propose a model-based deep learning reconstruction algorithm for optical projection tomography (ToMoDL), to greatly reduce acquisition and reconstruction times. The proposed method iterates over a data consistency step and an image domain artefact removal step achieved by a convolutional neural network. A preprocessing stage is also included to avoid potential misalignments between the sample center of rotation and the detector. The algorithm is trained using a database of wild-type zebrafish (Danio rerio) at different stages of development to minimise the mean square error for a fixed number of iterations. Using a cross-validation scheme, we compare the results to other reconstruction methods, such as filtered backprojection, compressed sensing and a direct deep learning method where the pseudo-inverse solution is corrected by a U-Net. The proposed method performs equally well or better than the alternatives. For a highly reduced number of projections, only the U-Net method provides images comparable to those obtained with ToMoDL. However, ToMoDL has a much better performance if the amount of data available for training is limited, given that the number of network trainable parameters is smaller.

Authors

  • Marcos Obando
    Medical Physics Department, Centro Atómico Bariloche and Instituto Balseiro, 8400, Bariloche, Argentina.
  • Andrea Bassi
    Dipartimento di Fisica, Politecnico di Milano, Piazza Leonardo da Vinci 32, I-20133, Milano, Italy.
  • Nicolas Ducros
  • German Mato
    CONICET - Departamento de Física Médica, Centro Atómico Bariloche, Av. Bustillo 9500, S. C. de Bariloche, Río Negro, 8400 Argentina; Comisión Nacional de Energía Atómica (CNEA) Argentina.
  • Teresa M Correia
    Centre of Marine Sciences, University of Algarve, Faro, Portugal; School of Biomedical Engineering and Imaging Sciences, King's College London, London, United Kingdom.