多模态影像对乳腺癌内在亚型和组织学分级的分类

C. Muramatsu, Takumi Iwasaki, M. Oiwa, T. Kawasaki, H. Fujita
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引用次数: 0

摘要

乳腺癌治疗的成功取决于多种因素,包括癌症分期和癌症等级。根据癌症的特点选择最佳的治疗方法。通过影像学诊断准确、及时地预测肿瘤特征和预后因素是十分必要的。本研究的目的是探讨多模态诊断图像在预测乳腺癌亚型中的应用,以辅助诊断和治疗计划。在这项研究中,我们将病变分为分子亚型,同时通过乳房x线摄影和乳房超声图像预测肿瘤的组织学分级和侵袭性。对单输入层和多输入层、单头模型和多头模型的不同结构模型进行了比较。结果表明,使用多模态图像比使用单一模态更具预测性。使用多模态图像的自动亚型分类可以支持及时的治疗计划和适当的患者护理。
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Classification of intrinsic subtypes and histological grade for breast cancers by multimodality images
Success of breast cancer treatment is subject to various factors, including cancer stage and cancer grade. The best treatment is selected based on the characteristic of cancer. It is desirable to predict the cancer characteristics and prognostic factors accurately and promptly by diagnostic imaging. The purpose of the study is to investigate the use of multimodality diagnostic images in predicting breast cancer subtypes to assist diagnosis and treatment planning. In this study, we classify lesions into molecular subtypes and simultaneously predict histological grades and invasiveness of the cancers by mammography and breast ultrasound images. Models with different architectures including single input and multi-input layers with single head and multiple head models are compared. The results indicate that use of multimodality images is more predictive than using single modalities. The automatic subtype classification using multimodality images may support a prompt treatment planning and proper patient care.
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