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Evaluation of clinical applicability of automated liver parenchyma segmentation of multi-center magnetic resonance images

PURPOSE: Automated algorithms for liver parenchyma segmentation can be used to create patient-specific models (PSM) that assist clinicians in surgery planning. In this work, we analyze the clinical applicability of automated deep learning methods together with level set post-processing for liver seg...

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Autores principales: Nainamalai, Varatharajan, Prasad, Pravda Jith Ray, Pelanis, Egidijus, Edwin, Bjørn, Albregtsen, Fritz, Elle, Ole Jakob, P. Kumar, Rahul
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9640352/
https://www.ncbi.nlm.nih.gov/pubmed/36386761
http://dx.doi.org/10.1016/j.ejro.2022.100448
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author Nainamalai, Varatharajan
Prasad, Pravda Jith Ray
Pelanis, Egidijus
Edwin, Bjørn
Albregtsen, Fritz
Elle, Ole Jakob
P. Kumar, Rahul
author_facet Nainamalai, Varatharajan
Prasad, Pravda Jith Ray
Pelanis, Egidijus
Edwin, Bjørn
Albregtsen, Fritz
Elle, Ole Jakob
P. Kumar, Rahul
author_sort Nainamalai, Varatharajan
collection PubMed
description PURPOSE: Automated algorithms for liver parenchyma segmentation can be used to create patient-specific models (PSM) that assist clinicians in surgery planning. In this work, we analyze the clinical applicability of automated deep learning methods together with level set post-processing for liver segmentation in contrast-enhanced T1-weighted magnetic resonance images. METHODS: UNet variants with/without attention gate, multiple loss functions, and level set post-processing were used in the workflow. A multi-center, multi-vendor dataset from Oslo laparoscopic versus open liver resection for colorectal liver metastasis clinical trial is used in our study. The dataset of 150 volumes is divided as 81:25:25:19 corresponding to train:validation:test:clinical evaluation respectively. We evaluate the clinical use, time to edit automated segmentation, tumor regions, boundary leakage, and over-and-under segmentations of predictions. RESULTS: The deep learning algorithm shows a mean Dice score of 0.9696 in liver segmentation, and we also examined the potential of post-processing to improve the PSMs. The time to create clinical use segmentations of level set post-processed predictions shows a median time of 16 min which is 2 min less than deep learning inferences. The intra-observer variations between manually corrected deep learning and level set post-processed segmentations show a 3% variation in the Dice score. The clinical evaluation shows that 7 out of 19 cases of both deep learning and level set post-processed segmentations contain all required anatomy and pathology, and hence these results could be used without any manual corrections. CONCLUSIONS: The level set post-processing reduces the time to create clinical standard segmentations, and over-and-under segmentations to a certain extent. The time advantage greatly supports clinicians to spend their valuable time with patients.
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spelling pubmed-96403522022-11-15 Evaluation of clinical applicability of automated liver parenchyma segmentation of multi-center magnetic resonance images Nainamalai, Varatharajan Prasad, Pravda Jith Ray Pelanis, Egidijus Edwin, Bjørn Albregtsen, Fritz Elle, Ole Jakob P. Kumar, Rahul Eur J Radiol Open Article PURPOSE: Automated algorithms for liver parenchyma segmentation can be used to create patient-specific models (PSM) that assist clinicians in surgery planning. In this work, we analyze the clinical applicability of automated deep learning methods together with level set post-processing for liver segmentation in contrast-enhanced T1-weighted magnetic resonance images. METHODS: UNet variants with/without attention gate, multiple loss functions, and level set post-processing were used in the workflow. A multi-center, multi-vendor dataset from Oslo laparoscopic versus open liver resection for colorectal liver metastasis clinical trial is used in our study. The dataset of 150 volumes is divided as 81:25:25:19 corresponding to train:validation:test:clinical evaluation respectively. We evaluate the clinical use, time to edit automated segmentation, tumor regions, boundary leakage, and over-and-under segmentations of predictions. RESULTS: The deep learning algorithm shows a mean Dice score of 0.9696 in liver segmentation, and we also examined the potential of post-processing to improve the PSMs. The time to create clinical use segmentations of level set post-processed predictions shows a median time of 16 min which is 2 min less than deep learning inferences. The intra-observer variations between manually corrected deep learning and level set post-processed segmentations show a 3% variation in the Dice score. The clinical evaluation shows that 7 out of 19 cases of both deep learning and level set post-processed segmentations contain all required anatomy and pathology, and hence these results could be used without any manual corrections. CONCLUSIONS: The level set post-processing reduces the time to create clinical standard segmentations, and over-and-under segmentations to a certain extent. The time advantage greatly supports clinicians to spend their valuable time with patients. Elsevier 2022-11-02 /pmc/articles/PMC9640352/ /pubmed/36386761 http://dx.doi.org/10.1016/j.ejro.2022.100448 Text en © 2022 The Authors https://creativecommons.org/licenses/by/4.0/This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Nainamalai, Varatharajan
Prasad, Pravda Jith Ray
Pelanis, Egidijus
Edwin, Bjørn
Albregtsen, Fritz
Elle, Ole Jakob
P. Kumar, Rahul
Evaluation of clinical applicability of automated liver parenchyma segmentation of multi-center magnetic resonance images
title Evaluation of clinical applicability of automated liver parenchyma segmentation of multi-center magnetic resonance images
title_full Evaluation of clinical applicability of automated liver parenchyma segmentation of multi-center magnetic resonance images
title_fullStr Evaluation of clinical applicability of automated liver parenchyma segmentation of multi-center magnetic resonance images
title_full_unstemmed Evaluation of clinical applicability of automated liver parenchyma segmentation of multi-center magnetic resonance images
title_short Evaluation of clinical applicability of automated liver parenchyma segmentation of multi-center magnetic resonance images
title_sort evaluation of clinical applicability of automated liver parenchyma segmentation of multi-center magnetic resonance images
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9640352/
https://www.ncbi.nlm.nih.gov/pubmed/36386761
http://dx.doi.org/10.1016/j.ejro.2022.100448
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