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犬小肠肿瘤中肿瘤分化的计算机断层扫描放射组学模型

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

作者信息

Jeong Jeongyun, Choi Hyunji, Kim Minjoo, Kim Sung-Soo, Goh Jinhyong, Hwang Jeongyeon, Kim Jaehwan, Cho Hwan-Ho, Eom Kidong

机构信息

Department of Veterinary Medical Imaging, College of Veterinary Medicine, Konkuk University, Seoul, Republic of Korea.

Shine Animal Medical Center, Seoul, Republic of Korea.

出版信息

Front Vet Sci. 2024 Sep 23;11:1450304. doi: 10.3389/fvets.2024.1450304. eCollection 2024.

Abstract

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.

摘要

放射组学模型已在肿瘤学中广泛用于肿瘤分类研究,以及预测肿瘤对治疗的反应和基因组序列;然而,它们在兽医胃肠肿瘤中的表现仍未得到探索。在此,我们试图研究和比较放射组学模型在不同情况下区分犬小肠腺癌、淋巴瘤和梭形细胞肉瘤的性能。使用四种不同的分割方法对42个小肠肿瘤进行轮廓勾画:增强前或增强后,每种情况都有或没有包含腔内气体。还对增强前和增强后图像的肠系膜淋巴结进行了轮廓勾画。箱设置包括箱数和箱宽为16、32、64、128和256。使用多项逻辑回归、随机森林和支持向量机模型构建放射组学模型。使用原发肿瘤和淋巴结的特征显示出比仅使用原发肿瘤的放射组学特征进行建模的性能显著更好,这表明包含肠系膜淋巴结有助于模型性能。与多项逻辑回归和随机森林模型相比,支持向量机模型表现出显著优越的性能。与仅使用放射组学特征相比,将放射学结果与放射组学特征相结合可提高性能,突出了放射学结果在模型构建中的重要性。在测试的各种模型中,由放射学结果、原发肿瘤和淋巴结放射组学特征组成的支持向量机模型在增强后图像中箱数为16且排除腔内气体的情况下表现最佳。总之,本研究表明应整合肠系膜淋巴结分割和放射学结果以构建能够区分小肠肿瘤的有效放射组学模型。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f543/11457012/66df5094d7e1/fvets-11-1450304-g001.jpg

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