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scPred: accurate supervised method for cell-type classification from single-cell RNA-seq data

机译:scPred:从单细胞RNA-seq数据进行细胞类型分类的精确监督方法

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摘要

Summary of the scPred method. Training step. A gene expression matrix is eigendecomposed via singular value decomposition (SVD) to obtain orthonormal linear combinations of the gene expression values. Only PCs explaining greater than 0.01% of the variance of the dataset are considered for the feature selection and model training steps. Informative PCs are selected using a two-tailed Wilcoxon signed-rank test for each cell class distribution (see the “ ” section). The cells-PCs matrix is randomly split into k groups and the first group is considered as a testing dataset for cross-validation. The remaining -1 groups (shown as a single training fold) are used to train a machine learning classification model (a support vector machine). The model parameters are tuned, and each group is used as a testing dataset to evaluate the prediction performance of a ( ) model trained with the remaining -1 groups. The best model in terms of prediction performance is selected. Prediction step. The gene expression values of the cells from an independent test or validation dataset are projected onto the principal component basis from the training model, and the informative PCs are used to predict the class probabilities of each cell using the trained prediction model(s) ( )
机译:scPred方法的摘要。训练步骤。通过奇异值分解(SVD)对基因表达矩阵进行特征分解,以获得基因表达值的正交线性组合。对于特征选择和模型训练步骤,仅考虑解释数据集方差大于0.01%的PC。对于每个细胞类别分布,使用两尾Wilcoxon符号秩检验选择信息丰富的PC(请参阅“”部分)。 cells-PCs矩阵随机分为k组,第一组被视为交叉验证的测试数据集。其余的-1组(显示为单个训练折叠)用于训练机器学习分类模型(支持向量机)。调整模型参数,并将每个组用作测试数据集,以评估使用剩余-1组训练的()模型的预测性能。选择最佳的预测性能模型。预测步骤。来自独立测试或验证数据集的细胞的基因表达值将从训练模型中投影到主成分的基础上,信息性PC用于使用训练后的预测模型来预测每个细胞的分类概率()

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