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Unsupervised Clustering of Quantitative Imaging Phenotypes Using Autoencoder and Gaussian Mixture Model

机译:使用自动编码器和高斯混合模型的定量成像表型的无监督聚类

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Quantitative medical image computing (radiomics) has been widely applied to build prediction models from medical images. However, overfitting is a significant issue in conventional radiomics, where a large number of radiomic features are directly used to train and test models that predict genotypes or clinical outcomes. In order to tackle this problem, we propose an unsupervised learning pipeline composed of an autoencoder for representation learning of radiomic features and a Gaussian mixture model based on minimum message length criterion for clustering. By incorporating probabilistic modeling, disease heterogeneity has been taken into account. The performance of the proposed pipeline was evaluated on an institutional MRI cohort of 108 patients with colorectal cancer liver metastases. Our approach is capable of automatically selecting the optimal number of clusters and assigns patients into clusters (imaging subtypes) with significantly different survival rates. Our method outperforms other unsupervised clustering methods that have been used for radiomics analysis and has comparable performance to a state-of-the-art imaging biomarker.
机译:定量医学图像计算(放射学)已广泛应用于从医学图像构建预测模型。但是,过拟合是常规放射线学中的重要问题,在传统放射线学中,大量放射线特征直接用于训练和测试可预测基因型或临床结果的模型。为了解决这个问题,我们提出了一种无监督的学习管道,该管道由用于编码放射学特征的自动编码器和基于最小消息长度准则进行聚类的高斯混合模型组成。通过合并概率模型,已经考虑了疾病异质性。拟议中的管道的性能在108名大肠癌肝转移患者的MRI机构队列中进行了评估。我们的方法能够自动选择最佳的聚类数量,并将患者分配到具有明显不同生存率的聚类(成像亚型)中。我们的方法优于用于放射组学分析的其他无监督聚类方法,并且其性能可与最新的成像生物标记物相媲美。

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