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Assessment of Optimizers and their Performance in Autosegmenting Lung Tumors

PURPOSE: Optimizers are widely utilized across various domains to enhance desired outcomes by either maximizing or minimizing objective functions. In the context of deep learning, they help to minimize the loss function and improve model’s performance. This study aims to evaluate the accuracy of dif...

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Autores principales: Ramachandran, Prabhakar, Eswarlal, Tamma, Lehman, Margot, Colbert, Zachery
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Wolters Kluwer - Medknow 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10419743/
https://www.ncbi.nlm.nih.gov/pubmed/37576091
http://dx.doi.org/10.4103/jmp.jmp_54_23
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author Ramachandran, Prabhakar
Eswarlal, Tamma
Lehman, Margot
Colbert, Zachery
author_facet Ramachandran, Prabhakar
Eswarlal, Tamma
Lehman, Margot
Colbert, Zachery
author_sort Ramachandran, Prabhakar
collection PubMed
description PURPOSE: Optimizers are widely utilized across various domains to enhance desired outcomes by either maximizing or minimizing objective functions. In the context of deep learning, they help to minimize the loss function and improve model’s performance. This study aims to evaluate the accuracy of different optimizers employed for autosegmentation of non-small cell lung cancer (NSCLC) target volumes on thoracic computed tomography images utilized in oncology. MATERIALS AND METHODS: The study utilized 112 patients, comprising 92 patients from “The Cancer Imaging Archive” (TCIA) and 20 of our local clinical patients, to evaluate the efficacy of various optimizers. The gross tumor volume was selected as the foreground mask for training and testing the models. Of the 92 TCIA patients, 57 were used for training and validation, and the remaining 35 for testing using nnU-Net. The performance of the final model was further evaluated on the 20 local clinical patient datasets. Six different optimizers, namely AdaDelta, AdaGrad, Adam, NAdam, RMSprop, and stochastic gradient descent (SGD), were investigated. To assess the agreement between the predicted volume and the ground truth, several metrics including Dice similarity coefficient (DSC), Jaccard index, sensitivity, precision, Hausdorff distance (HD), 95(th) percentile Hausdorff distance (HD95), and average symmetric surface distance (ASSD) were utilized. RESULTS: The DSC values for AdaDelta, AdaGrad, Adam, NAdam, RMSprop, and SGD were 0.75, 0.84, 0.85, 0.84, 0.83, and 0.81, respectively, for the TCIA test data. However, when the model trained on TCIA datasets was applied to the clinical datasets, the DSC, HD, HD95, and ASSD metrics showed a statistically significant decrease in performance compared to the TCIA test datasets, indicating the presence of image and/or mask heterogeneity between the data sources. CONCLUSION: The choice of optimizer in deep learning is a critical factor that can significantly impact the performance of autosegmentation models. However, it is worth noting that the behavior of optimizers may vary when applied to new clinical datasets, which can lead to changes in models’ performance. Therefore, selecting the appropriate optimizer for a specific task is essential to ensure optimal performance and generalizability of the model to different datasets.
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spelling pubmed-104197432023-08-12 Assessment of Optimizers and their Performance in Autosegmenting Lung Tumors Ramachandran, Prabhakar Eswarlal, Tamma Lehman, Margot Colbert, Zachery J Med Phys Original Article PURPOSE: Optimizers are widely utilized across various domains to enhance desired outcomes by either maximizing or minimizing objective functions. In the context of deep learning, they help to minimize the loss function and improve model’s performance. This study aims to evaluate the accuracy of different optimizers employed for autosegmentation of non-small cell lung cancer (NSCLC) target volumes on thoracic computed tomography images utilized in oncology. MATERIALS AND METHODS: The study utilized 112 patients, comprising 92 patients from “The Cancer Imaging Archive” (TCIA) and 20 of our local clinical patients, to evaluate the efficacy of various optimizers. The gross tumor volume was selected as the foreground mask for training and testing the models. Of the 92 TCIA patients, 57 were used for training and validation, and the remaining 35 for testing using nnU-Net. The performance of the final model was further evaluated on the 20 local clinical patient datasets. Six different optimizers, namely AdaDelta, AdaGrad, Adam, NAdam, RMSprop, and stochastic gradient descent (SGD), were investigated. To assess the agreement between the predicted volume and the ground truth, several metrics including Dice similarity coefficient (DSC), Jaccard index, sensitivity, precision, Hausdorff distance (HD), 95(th) percentile Hausdorff distance (HD95), and average symmetric surface distance (ASSD) were utilized. RESULTS: The DSC values for AdaDelta, AdaGrad, Adam, NAdam, RMSprop, and SGD were 0.75, 0.84, 0.85, 0.84, 0.83, and 0.81, respectively, for the TCIA test data. However, when the model trained on TCIA datasets was applied to the clinical datasets, the DSC, HD, HD95, and ASSD metrics showed a statistically significant decrease in performance compared to the TCIA test datasets, indicating the presence of image and/or mask heterogeneity between the data sources. CONCLUSION: The choice of optimizer in deep learning is a critical factor that can significantly impact the performance of autosegmentation models. However, it is worth noting that the behavior of optimizers may vary when applied to new clinical datasets, which can lead to changes in models’ performance. Therefore, selecting the appropriate optimizer for a specific task is essential to ensure optimal performance and generalizability of the model to different datasets. Wolters Kluwer - Medknow 2023 2023-06-29 /pmc/articles/PMC10419743/ /pubmed/37576091 http://dx.doi.org/10.4103/jmp.jmp_54_23 Text en Copyright: © 2023 Journal of Medical Physics https://creativecommons.org/licenses/by-nc-sa/4.0/This is an open access journal, and articles are distributed under the terms of the Creative Commons Attribution-NonCommercial-ShareAlike 4.0 License, which allows others to remix, tweak, and build upon the work non-commercially, as long as appropriate credit is given and the new creations are licensed under the identical terms.
spellingShingle Original Article
Ramachandran, Prabhakar
Eswarlal, Tamma
Lehman, Margot
Colbert, Zachery
Assessment of Optimizers and their Performance in Autosegmenting Lung Tumors
title Assessment of Optimizers and their Performance in Autosegmenting Lung Tumors
title_full Assessment of Optimizers and their Performance in Autosegmenting Lung Tumors
title_fullStr Assessment of Optimizers and their Performance in Autosegmenting Lung Tumors
title_full_unstemmed Assessment of Optimizers and their Performance in Autosegmenting Lung Tumors
title_short Assessment of Optimizers and their Performance in Autosegmenting Lung Tumors
title_sort assessment of optimizers and their performance in autosegmenting lung tumors
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10419743/
https://www.ncbi.nlm.nih.gov/pubmed/37576091
http://dx.doi.org/10.4103/jmp.jmp_54_23
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