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Deep Semantic Segmentation Feature-Based Radiomics for the Classification Tasks in Medical Image Analysis

机译:基于深度语义分割特征的医学图像分析中的分类任务的射频

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摘要

Recently, an emerging trend in medical image classification is to combine radiomics framework with deep learning classification network in an integrated system. Although this combination is efficient in some tasks, the deep learning-based classification network is often difficult to capture an effective representation of lesion regions, and prone to face the challenge of overfitting, leading to unreliable features and inaccurate results, especially when the sizes of the lesions are small or the training dataset is small. In addition, these combinations mostly lack an effective feature selection mechanism, which makes it difficult to obtain the optimal feature selection. In this paper, we introduce a novel and effective deep semantic segmentation feature-based radiomics (DSFR) framework to overcome the above-mentioned challenges, which consists of two modules: the deep semantic feature extraction module and the feature selection module. Specifically, the extraction module is utilized to extract hierarchical semantic features of the lesions from a trained segmentation network. The feature selection module aims to select the most representative features by using a novel feature similarity adaptation algorithm. Experiments are extensively conducted to evaluate our method in two clinical tasks: the pathological grading prediction in pancreatic neuroendocrine neoplasms (pNENs), and the prediction of thrombolytic therapy efficacy in deep venous thrombosis (DVT). Experimental results on both tasks demonstrate that the proposed method consistently outperforms the state-of-the-art approaches by a large margin.
机译:最近,医学图像分类的新兴趋势是将射频框架与集成系统中的深度学习分类网络相结合。虽然这种组合在某些任务中有效,但基于深度学习的分类网络通常难以捕获病变区域的有效表示,并且容易面对过度拟合的挑战,从而导致不可靠的特征和不准确的结果,特别是当尺寸时病变很小或训练数据集很小。另外,这些组合主要缺乏有效的特征选择机制,这使得难以获得最佳特征选择。在本文中,我们介绍了一种新颖且有效的深度语义分割特征基础射频(DSFR)框架,以克服上述挑战,包括两个模块:深度语义特征提取模块和特征选择模块。具体地,提取模块用于从培训的分割网络中提取病变的分层语义特征。特征选择模块旨在通过使用新颖的特征相似度适应算法来选择最代表性的特征。广泛进行实验,以评估我们在两种临床任务中的方法:胰腺神经内分泌肿瘤(PNENS)的病理分级预测,以及深静脉血栓形成(DVT)中溶栓治疗疗效的预测。两项任务的实验结果表明,该方法始终如一地优于最先进的方法。

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