2023
DOI: 10.1101/2023.10.20.23297331
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Deep learning-assisted multiple organ segmentation from whole-body CT images

Yazdan Salimi,
Isaac Shiri,
Zahra Mansouri
et al.

Abstract: Background: Automated organ segmentation from computed tomography (CT) images facilitates a number of clinical applications, including clinical diagnosis, monitoring of treatment response, quantification, radiation therapy treatment planning, and radiation dosimetry. Purpose: To develop a novel deep learning framework to generate multi-organ masks from CT images for 23 different body organs. Methods: A dataset consisting of 3106 CT images (649,398 axial 2D CT slices, 13,640 images/segment pairs) and ground-tru… Show more

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Cited by 4 publications
(6 citation statements)
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References 42 publications
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“…The authors have almost followed the same steps, except that they used 48 radiomics features from each organ to predict the contrast media phase and used TotalSegmentator [33] trained models to generate organs masks. The number of features was lower in our study (five simple features), and we used our own segmentation model [23], which is much faster than TotalSegmentor [33] (ten seconds vs three minutes). In terms of accuracy, our model outperformed their reported results.…”
Section: Discussionmentioning
confidence: 99%
See 2 more Smart Citations
“…The authors have almost followed the same steps, except that they used 48 radiomics features from each organ to predict the contrast media phase and used TotalSegmentator [33] trained models to generate organs masks. The number of features was lower in our study (five simple features), and we used our own segmentation model [23], which is much faster than TotalSegmentor [33] (ten seconds vs three minutes). In terms of accuracy, our model outperformed their reported results.…”
Section: Discussionmentioning
confidence: 99%
“…These classes for each 3D image were used as the ground truth for training and evaluation of our methodology. Meanwhile, seven organs including the liver, spleen, heart, kidneys, lungs, urinary bladder, and aorta plus body contour were segmented from CT images automatically using previously developed algorithm [23]. Then, five first-order features, including the average, standard deviation (SD), ten percentile, median, and 90 percentiles were extracted using basic Python software-based image processing.…”
Section: Methodsmentioning
confidence: 99%
See 1 more Smart Citation
“…We used extended and upgraded versions of previously trained deep learning-based segmentation models in our department [15] to segment 28 volumes of interest in healthy organs on the CT images. Those models were trained using nnU-Net [18] segmentation pipeline using five-fold data split and ensembling all five-folds inferred on the RadioGenomics CT compartment of PET/CT dataset.…”
Section: Methodsmentioning
confidence: 99%
“…Besides we hypothesize that it may contain some information reflecting overall patients’ health in the radiomic features space from structural (CT) and metabolic (PET) images acquired from these regions. Deep learning-based segmentation enables fast and reliable delimitation of healthy organs and hence evaluation any organ separately [15; 16]. To the best of our knowledge, the contribution of healthy organs is always overlooked and studies exploring the importance of healthy organs to estimate overall patient characteristics in survival prediction in NSCLC patients are lacking.…”
Section: Introductionmentioning
confidence: 99%