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Comparative Multicentric Evaluation of Inter-Observer Variability in Manual and Automatic Segmentation of Neuroblastic Tumors in Magnetic Resonance Images

SIMPLE SUMMARY: Tumor segmentation is a key step in oncologic imaging processing and is a time-consuming process usually performed manually by radiologists. To facilitate it, there is growing interest in applying deep-learning segmentation algorithms. Thus, we explore the variability between two obs...

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Autores principales: Veiga-Canuto, Diana, Cerdà-Alberich, Leonor, Sangüesa Nebot, Cinta, Martínez de las Heras, Blanca, Pötschger, Ulrike, Gabelloni, Michela, Carot Sierra, José Miguel, Taschner-Mandl, Sabine, Düster, Vanessa, Cañete, Adela, Ladenstein, Ruth, Neri, Emanuele, Martí-Bonmatí, Luis
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9367307/
https://www.ncbi.nlm.nih.gov/pubmed/35954314
http://dx.doi.org/10.3390/cancers14153648
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author Veiga-Canuto, Diana
Cerdà-Alberich, Leonor
Sangüesa Nebot, Cinta
Martínez de las Heras, Blanca
Pötschger, Ulrike
Gabelloni, Michela
Carot Sierra, José Miguel
Taschner-Mandl, Sabine
Düster, Vanessa
Cañete, Adela
Ladenstein, Ruth
Neri, Emanuele
Martí-Bonmatí, Luis
author_facet Veiga-Canuto, Diana
Cerdà-Alberich, Leonor
Sangüesa Nebot, Cinta
Martínez de las Heras, Blanca
Pötschger, Ulrike
Gabelloni, Michela
Carot Sierra, José Miguel
Taschner-Mandl, Sabine
Düster, Vanessa
Cañete, Adela
Ladenstein, Ruth
Neri, Emanuele
Martí-Bonmatí, Luis
author_sort Veiga-Canuto, Diana
collection PubMed
description SIMPLE SUMMARY: Tumor segmentation is a key step in oncologic imaging processing and is a time-consuming process usually performed manually by radiologists. To facilitate it, there is growing interest in applying deep-learning segmentation algorithms. Thus, we explore the variability between two observers performing manual segmentation and use the state-of-the-art deep learning architecture nnU-Net to develop a model to detect and segment neuroblastic tumors on MR images. We were able to show that the variability between nnU-Net and manual segmentation is similar to the inter-observer variability in manual segmentation. Furthermore, we compared the time needed to manually segment the tumors from scratch with the time required for the automatic model to segment the same cases, with posterior human validation with manual adjustment when needed. ABSTRACT: Tumor segmentation is one of the key steps in imaging processing. The goals of this study were to assess the inter-observer variability in manual segmentation of neuroblastic tumors and to analyze whether the state-of-the-art deep learning architecture nnU-Net can provide a robust solution to detect and segment tumors on MR images. A retrospective multicenter study of 132 patients with neuroblastic tumors was performed. Dice Similarity Coefficient (DSC) and Area Under the Receiver Operating Characteristic Curve (AUC ROC) were used to compare segmentation sets. Two more metrics were elaborated to understand the direction of the errors: the modified version of False Positive (FPRm) and False Negative (FNR) rates. Two radiologists manually segmented 46 tumors and a comparative study was performed. nnU-Net was trained-tuned with 106 cases divided into five balanced folds to perform cross-validation. The five resulting models were used as an ensemble solution to measure training (n = 106) and validation (n = 26) performance, independently. The time needed by the model to automatically segment 20 cases was compared to the time required for manual segmentation. The median DSC for manual segmentation sets was 0.969 (±0.032 IQR). The median DSC for the automatic tool was 0.965 (±0.018 IQR). The automatic segmentation model achieved a better performance regarding the FPRm. MR images segmentation variability is similar between radiologists and nnU-Net. Time leverage when using the automatic model with posterior visual validation and manual adjustment corresponds to 92.8%.
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spelling pubmed-93673072022-08-12 Comparative Multicentric Evaluation of Inter-Observer Variability in Manual and Automatic Segmentation of Neuroblastic Tumors in Magnetic Resonance Images Veiga-Canuto, Diana Cerdà-Alberich, Leonor Sangüesa Nebot, Cinta Martínez de las Heras, Blanca Pötschger, Ulrike Gabelloni, Michela Carot Sierra, José Miguel Taschner-Mandl, Sabine Düster, Vanessa Cañete, Adela Ladenstein, Ruth Neri, Emanuele Martí-Bonmatí, Luis Cancers (Basel) Article SIMPLE SUMMARY: Tumor segmentation is a key step in oncologic imaging processing and is a time-consuming process usually performed manually by radiologists. To facilitate it, there is growing interest in applying deep-learning segmentation algorithms. Thus, we explore the variability between two observers performing manual segmentation and use the state-of-the-art deep learning architecture nnU-Net to develop a model to detect and segment neuroblastic tumors on MR images. We were able to show that the variability between nnU-Net and manual segmentation is similar to the inter-observer variability in manual segmentation. Furthermore, we compared the time needed to manually segment the tumors from scratch with the time required for the automatic model to segment the same cases, with posterior human validation with manual adjustment when needed. ABSTRACT: Tumor segmentation is one of the key steps in imaging processing. The goals of this study were to assess the inter-observer variability in manual segmentation of neuroblastic tumors and to analyze whether the state-of-the-art deep learning architecture nnU-Net can provide a robust solution to detect and segment tumors on MR images. A retrospective multicenter study of 132 patients with neuroblastic tumors was performed. Dice Similarity Coefficient (DSC) and Area Under the Receiver Operating Characteristic Curve (AUC ROC) were used to compare segmentation sets. Two more metrics were elaborated to understand the direction of the errors: the modified version of False Positive (FPRm) and False Negative (FNR) rates. Two radiologists manually segmented 46 tumors and a comparative study was performed. nnU-Net was trained-tuned with 106 cases divided into five balanced folds to perform cross-validation. The five resulting models were used as an ensemble solution to measure training (n = 106) and validation (n = 26) performance, independently. The time needed by the model to automatically segment 20 cases was compared to the time required for manual segmentation. The median DSC for manual segmentation sets was 0.969 (±0.032 IQR). The median DSC for the automatic tool was 0.965 (±0.018 IQR). The automatic segmentation model achieved a better performance regarding the FPRm. MR images segmentation variability is similar between radiologists and nnU-Net. Time leverage when using the automatic model with posterior visual validation and manual adjustment corresponds to 92.8%. MDPI 2022-07-27 /pmc/articles/PMC9367307/ /pubmed/35954314 http://dx.doi.org/10.3390/cancers14153648 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Veiga-Canuto, Diana
Cerdà-Alberich, Leonor
Sangüesa Nebot, Cinta
Martínez de las Heras, Blanca
Pötschger, Ulrike
Gabelloni, Michela
Carot Sierra, José Miguel
Taschner-Mandl, Sabine
Düster, Vanessa
Cañete, Adela
Ladenstein, Ruth
Neri, Emanuele
Martí-Bonmatí, Luis
Comparative Multicentric Evaluation of Inter-Observer Variability in Manual and Automatic Segmentation of Neuroblastic Tumors in Magnetic Resonance Images
title Comparative Multicentric Evaluation of Inter-Observer Variability in Manual and Automatic Segmentation of Neuroblastic Tumors in Magnetic Resonance Images
title_full Comparative Multicentric Evaluation of Inter-Observer Variability in Manual and Automatic Segmentation of Neuroblastic Tumors in Magnetic Resonance Images
title_fullStr Comparative Multicentric Evaluation of Inter-Observer Variability in Manual and Automatic Segmentation of Neuroblastic Tumors in Magnetic Resonance Images
title_full_unstemmed Comparative Multicentric Evaluation of Inter-Observer Variability in Manual and Automatic Segmentation of Neuroblastic Tumors in Magnetic Resonance Images
title_short Comparative Multicentric Evaluation of Inter-Observer Variability in Manual and Automatic Segmentation of Neuroblastic Tumors in Magnetic Resonance Images
title_sort comparative multicentric evaluation of inter-observer variability in manual and automatic segmentation of neuroblastic tumors in magnetic resonance images
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9367307/
https://www.ncbi.nlm.nih.gov/pubmed/35954314
http://dx.doi.org/10.3390/cancers14153648
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