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Shape-Based Glioma Mutation Prediction Using Magnetic Resonance Imaging

机译:基于形状的胶质瘤突变预测使用磁共振成像预测

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Gliomas are the most frequently occurring primary brain tumors. Determination of the IDH-mutation (Isocitrate De-Hydrogenase) in these tumors improves classification and predicts survival. Currently, the only way of determining the mutation status is through a brain biopsy, which is an invasive procedure. This paper concerns the classification of a brain tumor’s mutation status through medical imaging. This study proposes a method based on shape description and machine learning. Magnetic resonance images of brain tumors were manually segmented through contour drawing, then analyzed through mathematical shape description. The extracted features were classified using multiple algorithms of which Random Undersampling Boosted Trees gave the highest accuracy. An accuracy of 86.4% was found using leave-one-out cross-validation on a data set of 13 IDH-positive and 9 IDH-wild-type gliomas. The results indicate the feasibility of the proposed approach, but further research on a larger data set is required.
机译:胶质瘤是最常见的原发性脑肿瘤。这些肿瘤中的IDH突变(异柠檬酸脱氢酶)的测定改善了分类并预测存活率。目前,确定突变状态的唯一方法是通过脑活组织检查,这是一种侵入性程序。本文涉及通过医学成像进行脑肿瘤突变状态的分类。本研究提出了一种基于形状描述和机器学习的方法。通过轮廓绘制手动分割脑肿瘤的磁共振图像,然后通过数学形状描述分析。使用多个算法进行分类所提取的特征,其中随机缺口增强树的准确度。使用13个IDH阳性和9个IDH野生型Gliomas的数据集的休假交叉验证发现了86.4%的准确性。结果表明,所提出的方法的可行性,但需要进一步研究更大的数据集。

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