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Automatic classification of focal liver lesions based on clinical DCE-MR and T2-weighted images: A feasibility study

机译:基于临床DCE-MR和T2加权图像的局灶性肝病变自动分类:可行性研究

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Focal liver lesion classification is an important part of diagnostics. In clinical practice, T2-weighted (T2W) and dynamic contrast enhanced (DCE) MR images are used to determine the type of lesion. For automatic liver lesion classification only T2W images are exploited. In this feasibility study, a multi-modal approach for automatic lesion classification of five lesion classes (adenoma, cyst, haemangioma, HCC, and metastasis) is studied. Features are derived from four sets: (A) non-corrected, and (B) motion corrected DCE-MRI, (C) T2W images, and (D) B+C combined, originating from 43 patients. An extremely randomized forest is used as classifier. The results show that motion corrected DCE-MRI features are a valuable addition to the T2W features, and improve the accuracy in discriminating benign and malignant lesions, as well as the classification of the five lesion classes. The multimodal approach shows promising results for an automatic liver lesion classification.
机译:焦肝病病变分类是诊断的重要组成部分。在临床实践中,使用T2加权(T2W)和动态对比增强(DCE)MR图像来确定病变的类型。对于自动肝脏病变分类,仅利用T2W图像。在这种可行性研究中,研究了五种病变类(腺瘤,囊肿,血浆瘤,HCC和转移)的自动病变分类的多模态方法。特征来自四组:(a)未校正,(b)运动校正DCE-mRI,(c)T2W图像,(d)b + c组合,源自43名患者。非常随机的森林用作分类器。结果表明,运动校正的DCE-MRI特征是T2W特征的有价值的补充,并提高歧视良性和恶性病变的准确性,以及五个病变类的分类。多式联法方法显示了自动肝病变分类的有希望的结果。

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