Machine Learning Methods for High-Dimensional and Multimodal Single-Cell Data
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https://figshare.com/articles/dataset/Machine_Learning_Methods_for_High-Dimensional_and_Multimodal_Single-Cell_Data/29191802
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资源简介:
Recent advances in single-cell and multi-omics technologies have enabled high-resolution profiling of cellular states, but also introduced new computational challenges. This dissertation presents machine learning methods to improve data quality and extract insights from high-dimensional, multimodal single-cell datasets.
First, we propose Decaf K-means, a clustering algorithm that accounts for cluster-specific confounding effects, such as batch variation, directly during clustering. This approach improves clustering accuracy in both synthetic and real data.
Second, we develop scPDA, a denoising method for droplet-based single-cell protein data that eliminates the need for empty droplets or null controls. scPDA models protein-protein relationships to enhance denoising accuracy and significantly improves cell-type identification.
Third, we introduce Scouter, a model that predicts transcriptional outcomes of unseen gene perturbations. Scouter combines neural networks with large language models to generalize across perturbations, reducing prediction error by over 50% compared to existing methods.
Finally, we extend this to TranScouter, which predicts transcriptional responses under new biological conditions without direct perturbation data. Using a tailored encoder-decoder architecture, TranScouter achieves accurate cross-condition predictions, paving the way for more generalizable models in perturbation biology.
创建时间:
2025-06-09



