Multi-source Information Gain for Random Forest: An Application to CT Image Prediction from MRI Data.

Tri Huynh, Yaozong Gao, Jiayin Kang, Li Wang, Pei Zhang, Dinggang Shen
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引用次数: 3

Abstract

Random forest has been widely recognized as one of the most powerful learning-based predictors in literature, with a broad range of applications in medical imaging. Notable efforts have been focused on enhancing the algorithm in multiple facets. In this paper, we present an original concept of multi-source information gain that escapes from the conventional notion inherent to random forest. We propose the idea of characterizing information gain in the training process by utilizing multiple beneficial sources of information, instead of the sole governing of prediction targets as conventionally known. We suggest the use of location and input image patches as the secondary sources of information for guiding the splitting process in random forest, and experiment on the challenging task of predicting CT images from MRI data. The experimentation is thoroughly analyzed in two datasets, i.e., human brain and prostate, with its performance further validated with the integration of auto-context model. Results prove that the multi-source information gain concept effectively helps better guide the training process with consistent improvement in prediction accuracy.

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随机森林的多源信息增益:MRI数据在CT图像预测中的应用。
随机森林被广泛认为是文献中最强大的基于学习的预测因子之一,在医学成像中有着广泛的应用。值得注意的工作集中在从多个方面增强算法上。在本文中,我们提出了多源信息增益的原始概念,该概念摆脱了随机森林固有的传统概念。我们提出了通过利用多个有益的信息源来表征训练过程中的信息增益的想法,而不是传统上对预测目标的唯一控制。我们建议使用位置和输入图像块作为指导随机森林中分裂过程的二级信息源,并对从MRI数据预测CT图像这一具有挑战性的任务进行实验。实验在人脑和前列腺两个数据集中进行了深入分析,并通过自动上下文模型的集成进一步验证了其性能。结果证明,多源信息增益概念有助于更好地指导训练过程,并不断提高预测精度。
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