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Lixin Lei

Showing results (11-20 of 15) with videos related to

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Briefings in Bioinformatics|April 17, 2024
Attention-guided variational graph autoencoders reveal heterogeneity in spatial transcriptomicsLixin Lei, Kaitai Han, Zijun Wang, et al.
Journal of Molecular Medicine (Berlin, Germany)|July 21, 2025
GraphCellNet: A deep learning method for integrated single-cell and spatial transcriptomic analysis with applications in development and diseaseRuoyan Dai, Zhenghui Wang, Zhiwei Zhang, et al.
Briefings in Functional Genomics|November 23, 2025
VARGG: a deep learning framework advancing precise spatial domain identification and cellular heterogeneity analysis in spatial transcriptomicsMengqiu Wang, Zhiwei Zhang, Lixin Lei, et al.
Journal of Molecular Modeling|April 13, 2026
HopWD-DTA: a novel framework for drug-target affinity prediction fusing multi-hop neighborhoods and deep featuresXingyu Liu, Maoyuan Zhou, Xiaorui Huang, et al.
Computer Methods and Programs in Biomedicine|August 23, 2025
SpaOmicsVAE: A deep learning framework for integrative analysis of spatial multi-omics dataZhiwei Zhang, Mengqiu Wang, Xinxin Zhang, et al.
Pageof 2

Showing results (11-20 of 15) with videos related to

Sort By:
Pageof 2
You have reached the last page of results.This site can display upto 15 results.
Briefings in Bioinformatics|April 17, 2024
Attention-guided variational graph autoencoders reveal heterogeneity in spatial transcriptomicsLixin Lei, Kaitai Han, Zijun Wang, et al.
Journal of Molecular Medicine (Berlin, Germany)|July 21, 2025
GraphCellNet: A deep learning method for integrated single-cell and spatial transcriptomic analysis with applications in development and diseaseRuoyan Dai, Zhenghui Wang, Zhiwei Zhang, et al.
Briefings in Functional Genomics|November 23, 2025
VARGG: a deep learning framework advancing precise spatial domain identification and cellular heterogeneity analysis in spatial transcriptomicsMengqiu Wang, Zhiwei Zhang, Lixin Lei, et al.
Journal of Molecular Modeling|April 13, 2026
HopWD-DTA: a novel framework for drug-target affinity prediction fusing multi-hop neighborhoods and deep featuresXingyu Liu, Maoyuan Zhou, Xiaorui Huang, et al.
Computer Methods and Programs in Biomedicine|August 23, 2025
SpaOmicsVAE: A deep learning framework for integrative analysis of spatial multi-omics dataZhiwei Zhang, Mengqiu Wang, Xinxin Zhang, et al.
Pageof 2