Computed tomography radiomics models of tumor differentiation in canine small intestinal tumors

Radiomics models have been widely exploited in oncology for the investigation of tumor classification, as well as for predicting tumor response to treatment and genomic sequence; however, their performance in veterinary gastrointestinal tumors remains unexplored. Here, we sought to investigate and c...

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Published in:Frontiers in Veterinary Science
Main Authors: Jeongyun Jeong, Hyunji Choi, Minjoo Kim, Sung-Soo Kim, Jinhyong Goh, Jeongyeon Hwang, Jaehwan Kim, Hwan-Ho Cho, Kidong Eom
Format: Article
Language:English
Published: Frontiers Media S.A. 2024-09-01
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Online Access:https://www.frontiersin.org/articles/10.3389/fvets.2024.1450304/full
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author Jeongyun Jeong
Hyunji Choi
Minjoo Kim
Sung-Soo Kim
Jinhyong Goh
Jinhyong Goh
Jeongyeon Hwang
Jaehwan Kim
Hwan-Ho Cho
Kidong Eom
author_facet Jeongyun Jeong
Hyunji Choi
Minjoo Kim
Sung-Soo Kim
Jinhyong Goh
Jinhyong Goh
Jeongyeon Hwang
Jaehwan Kim
Hwan-Ho Cho
Kidong Eom
author_sort Jeongyun Jeong
collection DOAJ
container_title Frontiers in Veterinary Science
description Radiomics models have been widely exploited in oncology for the investigation of tumor classification, as well as for predicting tumor response to treatment and genomic sequence; however, their performance in veterinary gastrointestinal tumors remains unexplored. Here, we sought to investigate and compare the performance of radiomics models in various settings for differentiating among canine small intestinal adenocarcinoma, lymphoma, and spindle cell sarcoma. Forty-two small intestinal tumors were contoured using four different segmentation methods: pre- or post-contrast, each with or without the inclusion of intraluminal gas. The mesenteric lymph nodes of pre- and post-contrast images were also contoured. The bin settings included bin count and bin width of 16, 32, 64, 128, and 256. Multinomial logistic regression, random forest, and support vector machine models were used to construct radiomics models. Using features from both primary tumors and lymph nodes showed significantly better performance than modeling using only the radiomics features of primary tumors, which indicated that the inclusion of mesenteric lymph nodes aids model performance. The support vector machine model exhibited significantly superior performance compared with the multinomial logistic regression and random forest models. Combining radiologic findings with radiomics features improved performance compared to using only radiomics features, highlighting the importance of radiologic findings in model building. A support vector machine model consisting of radiologic findings, primary tumors, and lymph node radiomics features with bin count 16 in post-contrast images with the exclusion of intraluminal gas showed the best performance among the various models tested. In conclusion, this study suggests that mesenteric lymph node segmentation and radiological findings should be integrated to build a potent radiomics model capable of differentiating among small intestinal tumors.
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spelling doaj-art-0485ad3f3f5841e28fa8ead78ee61e6a2025-08-20T00:23:48ZengFrontiers Media S.A.Frontiers in Veterinary Science2297-17692024-09-011110.3389/fvets.2024.14503041450304Computed tomography radiomics models of tumor differentiation in canine small intestinal tumorsJeongyun Jeong0Hyunji Choi1Minjoo Kim2Sung-Soo Kim3Jinhyong Goh4Jinhyong Goh5Jeongyeon Hwang6Jaehwan Kim7Hwan-Ho Cho8Kidong Eom9Department of Veterinary Medical Imaging, College of Veterinary Medicine, Konkuk University, Seoul, Republic of KoreaDepartment of Veterinary Medical Imaging, College of Veterinary Medicine, Konkuk University, Seoul, Republic of KoreaShine Animal Medical Center, Seoul, Republic of KoreaVIP Animal Medical Center, Seoul, Republic of KoreaDaegu Animal Medical Center, Daegu, Republic of KoreaBusan Jeil Animal Medical Center, Busan, Republic of KoreaHelix Animal Medical Center, Seoul, Republic of KoreaDepartment of Veterinary Medical Imaging, College of Veterinary Medicine, Konkuk University, Seoul, Republic of KoreaDepartment of Electronics Engineering, Incheon National University, Incheon, Republic of KoreaDepartment of Veterinary Medical Imaging, College of Veterinary Medicine, Konkuk University, Seoul, Republic of KoreaRadiomics models have been widely exploited in oncology for the investigation of tumor classification, as well as for predicting tumor response to treatment and genomic sequence; however, their performance in veterinary gastrointestinal tumors remains unexplored. Here, we sought to investigate and compare the performance of radiomics models in various settings for differentiating among canine small intestinal adenocarcinoma, lymphoma, and spindle cell sarcoma. Forty-two small intestinal tumors were contoured using four different segmentation methods: pre- or post-contrast, each with or without the inclusion of intraluminal gas. The mesenteric lymph nodes of pre- and post-contrast images were also contoured. The bin settings included bin count and bin width of 16, 32, 64, 128, and 256. Multinomial logistic regression, random forest, and support vector machine models were used to construct radiomics models. Using features from both primary tumors and lymph nodes showed significantly better performance than modeling using only the radiomics features of primary tumors, which indicated that the inclusion of mesenteric lymph nodes aids model performance. The support vector machine model exhibited significantly superior performance compared with the multinomial logistic regression and random forest models. Combining radiologic findings with radiomics features improved performance compared to using only radiomics features, highlighting the importance of radiologic findings in model building. A support vector machine model consisting of radiologic findings, primary tumors, and lymph node radiomics features with bin count 16 in post-contrast images with the exclusion of intraluminal gas showed the best performance among the various models tested. In conclusion, this study suggests that mesenteric lymph node segmentation and radiological findings should be integrated to build a potent radiomics model capable of differentiating among small intestinal tumors.https://www.frontiersin.org/articles/10.3389/fvets.2024.1450304/fullclinical radiomics modelsmultinomial logistic regressionrandom forestsupport vector machine modelscanineadenocarcinoma
spellingShingle Jeongyun Jeong
Hyunji Choi
Minjoo Kim
Sung-Soo Kim
Jinhyong Goh
Jinhyong Goh
Jeongyeon Hwang
Jaehwan Kim
Hwan-Ho Cho
Kidong Eom
Computed tomography radiomics models of tumor differentiation in canine small intestinal tumors
clinical radiomics models
multinomial logistic regression
random forest
support vector machine models
canine
adenocarcinoma
title Computed tomography radiomics models of tumor differentiation in canine small intestinal tumors
title_full Computed tomography radiomics models of tumor differentiation in canine small intestinal tumors
title_fullStr Computed tomography radiomics models of tumor differentiation in canine small intestinal tumors
title_full_unstemmed Computed tomography radiomics models of tumor differentiation in canine small intestinal tumors
title_short Computed tomography radiomics models of tumor differentiation in canine small intestinal tumors
title_sort computed tomography radiomics models of tumor differentiation in canine small intestinal tumors
topic clinical radiomics models
multinomial logistic regression
random forest
support vector machine models
canine
adenocarcinoma
url https://www.frontiersin.org/articles/10.3389/fvets.2024.1450304/full
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