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Deep Learning vs. Conventional Machine Learning: Pilot Study of WMH Segmentation in Brain MRI with Absence or Mild Vascular Pathology ?¢????

机译:深度学习与常规机器学习:无或轻度血管病理的脑MRI中WMH分割的先行研究

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In the wake of the use of deep learning algorithms in medical image analysis, we compared performance of deep learning algorithms, namely the deep Boltzmann machine (DBM), convolutional encoder network (CEN) and patch-wise convolutional neural network (patch-CNN), with two conventional machine learning schemes: Support vector machine (SVM) and random forest (RF), for white matter hyperintensities (WMH) segmentation on brain MRI with mild or no vascular pathology. We also compared all these approaches with a method in the Lesion Segmentation Tool public toolbox named lesion growth algorithm (LGA). We used a dataset comprised of 60 MRI data from 20 subjects in the Alzheimer?¢????s Disease Neuroimaging Initiative (ADNI) database, each scanned once every year during three consecutive years. Spatial agreement score, receiver operating characteristic and precision-recall performance curves, volume disagreement score, agreement with intra-/inter-observer reliability measurements and visual evaluation were used to find the best configuration of each learning algorithm for WMH segmentation. By using optimum threshold values for the probabilistic output from each algorithm to produce binary masks of WMH, we found that SVM and RF produced good results for medium to very large WMH burden but deep learning algorithms performed generally better than conventional ones in most evaluations.
机译:在将深度学习算法用于医学图像分析之后,我们比较了深度学习算法(即深度Boltzmann机器(DBM),卷积编码器网络(CEN)和逐块卷积神经网络(patch-CNN))的性能。 ,具有两种传统的机器学习方案:支持向量机(SVM)和随机森林(RF),用于在轻度或无血管病理的脑MRI上进行白质超高信号(WMH)分割。我们还将所有这些方法与“病灶分割工具”公共工具箱中名为病灶生长算法(LGA)的方法进行了比较。我们使用的数据集由来自阿尔茨海默病疾病神经影像计划(ADNI)数据库中20位受试者的60份MRI数据组成,每位受试者在连续三年中每年进行一次扫描。使用空间一致性得分,接收器操作特性和精确度召回性能曲线,体积不一致得分,与观察者之间/观察者之间的可靠性测量结果和视觉评估的一致性来找到WMH分割的每种学习算法的最佳配置。通过使用每种算法的概率输出的最佳阈值来生成WMH的二进制掩码,我们发现SVM和RF对于中等到非常大的WMH负担产生了很好的结果,但是在大多数评估中,深度学习算法的性能通常都优于传统算法。

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