Automatic pancreas segmentation using ResNet-18 deep learning approach

The accurate pancreas segmentation process is essential in the early detection of pancreatic cancer. The pancreas is situated in the abdominal cavity of the human body. The abdominal cavity contains the pancreas, liver, spleen, kidney, and adrenal glands. Sharp and smooth detection of the pancreas...

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Главные авторы: Сангіта Какарвал, Прадіп Паітане
Формат: Статья
Язык:украинский
Опубликовано: Igor Sikorsky Kyiv Polytechnic Institute 2022-08-01
Серии:Sistemnì Doslìdženâ ta Informacìjnì Tehnologìï
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Online-ссылка:http://journal.iasa.kpi.ua/article/view/265645
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author Сангіта Какарвал
Прадіп Паітане
author_facet Сангіта Какарвал
Прадіп Паітане
author_sort Сангіта Какарвал
collection DOAJ
description The accurate pancreas segmentation process is essential in the early detection of pancreatic cancer. The pancreas is situated in the abdominal cavity of the human body. The abdominal cavity contains the pancreas, liver, spleen, kidney, and adrenal glands. Sharp and smooth detection of the pancreas from this abdominal cavity is a challenging and tedious job in medical image investigation. Top-down approaches like Novel Modified K-means Fuzzy clustering algorithm (NMKFCM), Scale Invariant Feature Transform (SIFT), Kernel Density Estimator (KDE) algorithms were applied for pancreas segmentation in the early days. Recently, Bottom-up method has become popular for pancreas segmentation in medical image analysis and cancer diagnosis. LevelSet algorithm is used to detect the pancreas from the abdominal cavity. The deep learning, bottom-up approach performance is better than another. Deep Residual Network (ResNet-18) deep learning, bottom-up approach is used to detect accurate and sharp pancreas from CT scan medical images. 18 layers are used in the architecture of ResNet-18. The automatic pancreas and kidney segmentation is accurately extracted from CT scan images. The proposed method is applied to the medical CT scan images dataset of 82 patients. 699 images and 150 images with different angles are used for training and testing purposes, respectively. ResNet-18 attains a dice similarity index value up to 98.29±0.63, Jaccard Index value up to 96.63±01.25, Bfscore value up to 84.65±03.96. The validation accuracy of the proposed method is 97.01%, and the loss rate value achieves up to 0.0010. The class imbalance problem is solved by class weight and data augmentation.
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publishDate 2022-08-01
publisher Igor Sikorsky Kyiv Polytechnic Institute
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spelling doaj-art-efe9fdff0e9b4c3c888fa449fe6a7e212025-06-27T10:30:35ZukrIgor Sikorsky Kyiv Polytechnic InstituteSistemnì Doslìdženâ ta Informacìjnì Tehnologìï1681-60482308-88932022-08-01210.20535/SRIT.2308-8893.2022.2.08303598Automatic pancreas segmentation using ResNet-18 deep learning approachСангіта Какарвал0Прадіп Паітане1PES Engineering College, AurangabadDr. Babasaheb Ambedkar Marathwada University, Aurangabad The accurate pancreas segmentation process is essential in the early detection of pancreatic cancer. The pancreas is situated in the abdominal cavity of the human body. The abdominal cavity contains the pancreas, liver, spleen, kidney, and adrenal glands. Sharp and smooth detection of the pancreas from this abdominal cavity is a challenging and tedious job in medical image investigation. Top-down approaches like Novel Modified K-means Fuzzy clustering algorithm (NMKFCM), Scale Invariant Feature Transform (SIFT), Kernel Density Estimator (KDE) algorithms were applied for pancreas segmentation in the early days. Recently, Bottom-up method has become popular for pancreas segmentation in medical image analysis and cancer diagnosis. LevelSet algorithm is used to detect the pancreas from the abdominal cavity. The deep learning, bottom-up approach performance is better than another. Deep Residual Network (ResNet-18) deep learning, bottom-up approach is used to detect accurate and sharp pancreas from CT scan medical images. 18 layers are used in the architecture of ResNet-18. The automatic pancreas and kidney segmentation is accurately extracted from CT scan images. The proposed method is applied to the medical CT scan images dataset of 82 patients. 699 images and 150 images with different angles are used for training and testing purposes, respectively. ResNet-18 attains a dice similarity index value up to 98.29±0.63, Jaccard Index value up to 96.63±01.25, Bfscore value up to 84.65±03.96. The validation accuracy of the proposed method is 97.01%, and the loss rate value achieves up to 0.0010. The class imbalance problem is solved by class weight and data augmentation. http://journal.iasa.kpi.ua/article/view/265645Deep LearningDice CoefficientFully Connected Layer (FCN)Residual Network (ResNet-18)Visual Geometry Group (VGG)
spellingShingle Сангіта Какарвал
Прадіп Паітане
Automatic pancreas segmentation using ResNet-18 deep learning approach
Sistemnì Doslìdženâ ta Informacìjnì Tehnologìï
Deep Learning
Dice Coefficient
Fully Connected Layer (FCN)
Residual Network (ResNet-18)
Visual Geometry Group (VGG)
title Automatic pancreas segmentation using ResNet-18 deep learning approach
title_full Automatic pancreas segmentation using ResNet-18 deep learning approach
title_fullStr Automatic pancreas segmentation using ResNet-18 deep learning approach
title_full_unstemmed Automatic pancreas segmentation using ResNet-18 deep learning approach
title_short Automatic pancreas segmentation using ResNet-18 deep learning approach
title_sort automatic pancreas segmentation using resnet 18 deep learning approach
topic Deep Learning
Dice Coefficient
Fully Connected Layer (FCN)
Residual Network (ResNet-18)
Visual Geometry Group (VGG)
url http://journal.iasa.kpi.ua/article/view/265645
work_keys_str_mv AT sangítakakarval automaticpancreassegmentationusingresnet18deeplearningapproach
AT pradíppaítane automaticpancreassegmentationusingresnet18deeplearningapproach