Literature DB >> 34100117

Automated and robust organ segmentation for 3D-based internal dose calculation.

Mahmood Nazari1,2, Luis David Jiménez-Franco3, Michael Schroeder4, Andreas Kluge3, Marcus Bronzel3, Sharok Kimiaei3.   

Abstract

PURPOSE: In this work, we address image segmentation in the scope of dosimetry using deep learning and make three main contributions: (a) to extend and optimize the architecture of an existing convolutional neural network (CNN) in order to obtain a fast, robust and accurate computed tomography (CT)-based organ segmentation method for kidneys and livers; (b) to train the CNN with an inhomogeneous set of CT scans and validate the CNN for daily dosimetry; and (c) to evaluate dosimetry results obtained using automated organ segmentation in comparison with manual segmentation done by two independent experts.
METHODS: We adapted a performant deep learning approach using CT-images to delineate organ boundaries with sufficiently high accuracy and adequate processing time. The segmented organs were consequently used as binary masks for further convolution with a point spread function to retrieve the activity values from quantitatively reconstructed SPECT images for "volumetric"/3D dosimetry. The resulting activities were used to perform dosimetry calculations with the kidneys as source organs.
RESULTS: The computational expense of the algorithm was sufficient for clinical daily routine, required minimum pre-processing and performed with acceptable accuracy a Dice coefficient of [Formula: see text] for liver segmentation and of [Formula: see text] for kidney segmentation, respectively. In addition, kidney self-absorbed doses calculated using automated segmentation differed by [Formula: see text] from dosimetry performed by two medical physicists in 8 patients.
CONCLUSION: The proposed approach may accelerate volumetric dosimetry of kidneys in molecular radiotherapy with 177Lu-labelled radiopharmaceuticals such as 177Lu-DOTATOC. However, even though a fully automated segmentation methodology based on CT images accelerates organ segmentation and performs with high accuracy, it does not remove the need for supervision and corrections by experts, mostly due to misalignments in the co-registration between SPECT and CT images. Trial registration EudraCT, 2016-001897-13. Registered 26.04.2016, www.clinicaltrialsregister.eu/ctr-search/search?query=2016-001897-13 .

Entities:  

Keywords:  177Lu; Automation; CT segmentation; Deep learning; Internal dosimetry; Molecular radiotherapy (MRT); SPECT

Year:  2021        PMID: 34100117     DOI: 10.1186/s13550-021-00796-5

Source DB:  PubMed          Journal:  EJNMMI Res        ISSN: 2191-219X            Impact factor:   3.138


  2 in total

1.  MIRD pamphlet No. 17: the dosimetry of nonuniform activity distributions--radionuclide S values at the voxel level. Medical Internal Radiation Dose Committee.

Authors:  W E Bolch; L G Bouchet; J S Robertson; B W Wessels; J A Siegel; R W Howell; A K Erdi; B Aydogan; S Costes; E E Watson; A B Brill; N D Charkes; D R Fisher; M T Hays; S R Thomas
Journal:  J Nucl Med       Date:  1999-01       Impact factor: 10.057

2.  Usefulness of hybrid SPECT/CT in 99mTc-HMPAO-labeled leukocyte scintigraphy for bone and joint infections.

Authors:  Luca Filippi; Orazio Schillaci
Journal:  J Nucl Med       Date:  2006-12       Impact factor: 10.057

  2 in total
  2 in total

Review 1.  An update on computational anthropomorphic anatomical models.

Authors:  Azadeh Akhavanallaf; Hadi Fayad; Yazdan Salimi; Antar Aly; Hassan Kharita; Huda Al Naemi; Habib Zaidi
Journal:  Digit Health       Date:  2022-07-11

2.  Kidney Tumor Semantic Segmentation Using Deep Learning: A Survey of State-of-the-Art.

Authors:  Abubaker Abdelrahman; Serestina Viriri
Journal:  J Imaging       Date:  2022-02-25
  2 in total

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