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Automatic classification of lymphoma lesions in FDG-PET–Differentiation between tumor and non-tumor uptake

INTRODUCTION: The automatic classification of lymphoma lesions in PET is a main topic of ongoing research. An automatic algorithm would enable the swift evaluation of PET parameters, like texture and heterogeneity markers, concerning their prognostic value for patients outcome in large datasets. Mor...

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Autores principales: Georgi, Thomas W, Zieschank, Axel, Kornrumpf, Kevin, Kurch, Lars, Sabri, Osama, Körholz, Dieter, Mauz-Körholz, Christine, Kluge, Regine, Posch, Stefan
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9015138/
https://www.ncbi.nlm.nih.gov/pubmed/35436321
http://dx.doi.org/10.1371/journal.pone.0267275
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author Georgi, Thomas W
Zieschank, Axel
Kornrumpf, Kevin
Kurch, Lars
Sabri, Osama
Körholz, Dieter
Mauz-Körholz, Christine
Kluge, Regine
Posch, Stefan
author_facet Georgi, Thomas W
Zieschank, Axel
Kornrumpf, Kevin
Kurch, Lars
Sabri, Osama
Körholz, Dieter
Mauz-Körholz, Christine
Kluge, Regine
Posch, Stefan
author_sort Georgi, Thomas W
collection PubMed
description INTRODUCTION: The automatic classification of lymphoma lesions in PET is a main topic of ongoing research. An automatic algorithm would enable the swift evaluation of PET parameters, like texture and heterogeneity markers, concerning their prognostic value for patients outcome in large datasets. Moreover, the determination of the metabolic tumor volume would be facilitated. The aim of our study was the development and evaluation of an automatic algorithm for segmentation and classification of lymphoma lesions in PET. METHODS: Pre-treatment PET scans from 60 Hodgkin lymphoma patients from the EuroNet-PHL-C1 trial were evaluated. A watershed algorithm was used for segmentation. For standardization of the scan length, an automatic cropping algorithm was developed. All segmented volumes were manually classified into one of 14 categories. The random forest method and a nested cross-validation was used for automatic classification and evaluation. RESULTS: Overall, 853 volumes were segmented and classified. 203/246 tumor lesions and 554/607 non-tumor volumes were classified correctly by the automatic algorithm, corresponding to a sensitivity, a specificity, a positive and a negative predictive value of 83%, 91%, 79% and 93%. In 44/60 (73%) patients, all tumor lesions were correctly classified. In ten out of the 16 patients with misclassified tumor lesions, only one false-negative tumor lesion occurred. The automatic classification of focal gastrointestinal uptake, brown fat tissue and composed volumes consisting of more than one tissue was challenging. CONCLUSION: Our algorithm, trained on a small number of patients and on PET information only, showed a good performance and is suitable for automatic lymphoma classification.
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spelling pubmed-90151382022-04-19 Automatic classification of lymphoma lesions in FDG-PET–Differentiation between tumor and non-tumor uptake Georgi, Thomas W Zieschank, Axel Kornrumpf, Kevin Kurch, Lars Sabri, Osama Körholz, Dieter Mauz-Körholz, Christine Kluge, Regine Posch, Stefan PLoS One Research Article INTRODUCTION: The automatic classification of lymphoma lesions in PET is a main topic of ongoing research. An automatic algorithm would enable the swift evaluation of PET parameters, like texture and heterogeneity markers, concerning their prognostic value for patients outcome in large datasets. Moreover, the determination of the metabolic tumor volume would be facilitated. The aim of our study was the development and evaluation of an automatic algorithm for segmentation and classification of lymphoma lesions in PET. METHODS: Pre-treatment PET scans from 60 Hodgkin lymphoma patients from the EuroNet-PHL-C1 trial were evaluated. A watershed algorithm was used for segmentation. For standardization of the scan length, an automatic cropping algorithm was developed. All segmented volumes were manually classified into one of 14 categories. The random forest method and a nested cross-validation was used for automatic classification and evaluation. RESULTS: Overall, 853 volumes were segmented and classified. 203/246 tumor lesions and 554/607 non-tumor volumes were classified correctly by the automatic algorithm, corresponding to a sensitivity, a specificity, a positive and a negative predictive value of 83%, 91%, 79% and 93%. In 44/60 (73%) patients, all tumor lesions were correctly classified. In ten out of the 16 patients with misclassified tumor lesions, only one false-negative tumor lesion occurred. The automatic classification of focal gastrointestinal uptake, brown fat tissue and composed volumes consisting of more than one tissue was challenging. CONCLUSION: Our algorithm, trained on a small number of patients and on PET information only, showed a good performance and is suitable for automatic lymphoma classification. Public Library of Science 2022-04-18 /pmc/articles/PMC9015138/ /pubmed/35436321 http://dx.doi.org/10.1371/journal.pone.0267275 Text en © 2022 Georgi et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Georgi, Thomas W
Zieschank, Axel
Kornrumpf, Kevin
Kurch, Lars
Sabri, Osama
Körholz, Dieter
Mauz-Körholz, Christine
Kluge, Regine
Posch, Stefan
Automatic classification of lymphoma lesions in FDG-PET–Differentiation between tumor and non-tumor uptake
title Automatic classification of lymphoma lesions in FDG-PET–Differentiation between tumor and non-tumor uptake
title_full Automatic classification of lymphoma lesions in FDG-PET–Differentiation between tumor and non-tumor uptake
title_fullStr Automatic classification of lymphoma lesions in FDG-PET–Differentiation between tumor and non-tumor uptake
title_full_unstemmed Automatic classification of lymphoma lesions in FDG-PET–Differentiation between tumor and non-tumor uptake
title_short Automatic classification of lymphoma lesions in FDG-PET–Differentiation between tumor and non-tumor uptake
title_sort automatic classification of lymphoma lesions in fdg-pet–differentiation between tumor and non-tumor uptake
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9015138/
https://www.ncbi.nlm.nih.gov/pubmed/35436321
http://dx.doi.org/10.1371/journal.pone.0267275
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