林志翔
副教授
科学与工程智能中心
- 清华大学 生物科学 学士学位;
- 耶鲁大学 生物数学、生物信息学与计算生物学 博士学位
工作经历:
- 至今:香港中文大学统计与数据科学系 副教授
林志翔,博士,香港中文大学统计与数据科学系副教授。毕业于清华大学生物科学专业(学士),耶鲁大学生物数学、生物信息学与计算生物学专业(博士)。主要研究方向为贝叶斯统计、大数据、计算生物学与生物信息学、统计机器学习。在Nature Communications、PNAS、Genome Biology、Briefings in Bioinformatics等顶级期刊发表多篇论文。主持多项香港研究资助局(RGC)研究项目。
科研项目
主持项目:
2023-2026:RGC-GRF 14300923,单细胞多组学数据联合建模与整合分析的统一框架,香港研究资助局,项目负责人;
2020-2023:RGC-GRF 14301120,利用批量基因组数据的单细胞基因组学降维统计方法,香港研究资助局,项目负责人;
2019-2022:RGC-ECS 24301419,单细胞基因组学中多数据类型联合建模与聚类的统一框架,香港研究资助局,项目负责人
参与项目:
2023-2026:RGC-CRF C4003-23Y,揭示精神分裂症及其预后的全谱遗传变异:全基因组测序研究与机器学习预测模型,香港研究资助局,联合首席研究员
学术成果:
Representative Publications (past 5-10 years, in order of impact):
- Qi J, Ge M, Miao J, Zhou X, Lin Z†: STIFT: Spatiotemporal Transcriptomics Integration Through Spatially Informed Multi-Timepoint Bridging. Briefings in Bioinformatics (In press).
- Miao J, Li J, Xin J, Tu J, Ge M, Qi J, Zhou X, Zhu Y, Yang C†, Lin Z†: MultiGATE: Integrative Analysis and Regulatory Inference in Spatial Multi-Omics Data via Graph Representation Learning. Nature Communications 2025, 16: 9403.
- Wang Z, Zeng Y, Tan Z, Chen Y, Huang X, Zhao H†, Lin Z†, Yang C†: A unified framework for identification of cell-type-specific spatially variable genes in spatial transcriptomic studies. PNAS 2025, 122(46): e2503952122.
- Wang Y, Lin Z†, Wang T†: InterVelo: A Mutually Enhancing Model for Estimating Pseudotime and RNA Velocity in Multi-Omic Single-Cell Data. Bioinformatics 2025, btaf500.
- Ge M, Miao J, Qi J, Zhou X, Lin Z†: TIVelo: RNA velocity estimation leveraging cluster-level trajectory inference. Nature Communications 2025, 16: 6258.
- Tu JJ, Yan H, Zhang XF†, Lin Z†: Precise gene expression deconvolution in spatial transcriptomics with STged. Nucleic Acids Research 2025, 53: 4.
- Zhao K, So HC†, Lin Z†: scParser: sparse representation learning for scalable single-cell RNA sequencing data analysis. Genome Biology 2024, 25: 223.
- Zhao K, Huang S, Lin C, Sham PC, So HC†, Lin Z†: INSIDER: Interpretable sparse matrix decomposition for RNA expression data analysis. PLoS Genetics 2024, 20(3): e1011189.
- Li J, Wang J, and Lin Z†: SGCAST: symmetric graph convolutional auto-encoder for scalable and accurate study of spatial transcriptomics. Briefings in Bioinformatics 2024, 25(1), bbad490.
- Li C, Chan TF, Yang C† and Lin Z†: stVAE deconvolves cell-type composition in large-scale cellular resolution spatial transcriptomics. Bioinformatics 2023, 39(10), btad642.
- Wan X, Xiao J, Tam S, Cai M, Sugimura R, Wang Y, Wan X, Lin Z†, Angela Ruohao Wu AR† and Yang C†: SpatialScope: A unified approach for integrating spatial and single-cell transcriptomics data using deep generative models. Nature Communications 2023, 14: 7848.
- Zhang Z, Chen S, Lin Z†: RefTM: reference-guided topic modeling of single-cell chromatin accessibility data. Briefings in Bioinformatics 2022, bbac540.
- Zeng P, Ma Y, Lin Z†: scAWMV: an adaptively weighted multi-view learning framework for the integrative analysis of parallel scRNA-seq and scATAC-seq data. Bioinformatics 2022, btac739.
- Ming J, Lin Z, Wan X, Yang C†, Wu AR†: FIRM: Fast Integration of single-cell RNA-sequencing data across Multiple platforms. Briefings in Bioinformatics 2022, 23(5): bbac167. 15. Hu X, Zhao J, Lin Z, Wang Y, Peng H, Zhao H†, Wan X†, Yang C†: MR-APSS: a unified approach to Mendelian Randomization accounting for pleiotropy and sample structure using genome-wide summary statistic. PNAS 2022, 119(28): e2106858119.
- Ma Y, Sun Z, Zeng P, Zhang W, Lin Z†: JSNMF enables effective and accurate integrative analysis of single-cell multiomics data. Briefings in Bioinformatics 2022, bbac105.
- Wangwu J, Sun Z, Lin Z†: scAMACE: Model-based approach to the joint analysis of single-cell data on chromatin accessibility, gene expression and methylation. Bioinformatics 2021, 37(21):3874–3880.
- Chen S, Yan G, Zhang W, Li J, Jiang R†, Lin Z†: RA3 is a reference-guided approach for epigenetic characterization of single cells. Nature Communications 2021, 12:2177.
- Zeng P, Lin Z†: coupleCoC+: an information-theoretic co-clustering-based transfer learning framework for the integrative analysis of single-cell genomic data. PLOS Computational Biology 2021, 17(6): e1009064.
- Zeng P, Wangwu J, Lin Z†: Coupled Co-clustering-based Unsupervised Transfer Learning for the Integrative Analysis of Single-Cell Genomic Data. Briefings in Bioinformatics 2020, bbaa347.
- Zhang S, Yang L, Yang J, Lin Z, Ng KM: Dimensionality reduction for single cell RNA sequencing data using constrained robust non-negative matrix factorization. NAR Genomics and Bioinformatics 2020, 2(3): lqaa064.
- Lin Z†, Zamanighomi M, Daley T, Ma S and Wong WH†: Model-based approach to the joint analysis of single-cell data on chromatin accessibility and gene expression. Statistical Science 2020, 35(1):2-13.
- Zhang W, Wangwu J and Lin Z†: Weighted K-means Clustering with Observation Weight for Single-cell Epigenomic Data. Statistical Modeling in Biomedical Research, book chapter p37-64.
- Mingfeng Li, ..., BrainSpan Consortium*, ..., Nenad Sestan: Integrative functional genomic analysis of human brain development and neuropsychiatric risks. Science 2018, 362:6420. (Zhixiang Lin is a member of the BrainSpan consortium.)
- Daley T†, Lin Z, Bhate S, Lin X, Liu Y, Wong WH, and Qi L: CRISPhieRmix: a hierarchical mixture model for CRISPR pooled screens. Genome Biology 2018, 19:159.
- Zamanighomi M, Lin Z, Daley T, Chen Xi, Zhana Duren, Schep A, Greenleaf WJ, and Wong WH†: Unsupervised clustering and epigenetic classification of single cells. Nature Communications 2018, 9:2410.
- Zamanighomi M, Lin Z, Wang Y, Jiang R, and Wong WH†: Predicting transcription factor binding motifs from DNA-binding domains, chromatin accessibility, and gene expression data. Nucleic Acids Research 2017, 45(10): 5666-5677.
- Lin Z, Wang T, Yang C, and Zhao H†: On joint estimation of Gaussian graphical models for spatial and temporal data. Biometrics 2017, 73: 769-779.
- Lin Z, Yang C, Zhu Y, Duchi JC, Fu Y, Wang Y, Jiang B, Zamanighomi M, Xu X, Li M, Sestan N, Zhao H†, and Wong WH†: Simultaneous dimension reduction and adjustment for confounding variation. PNAS 2016, 113(51): 14662-14667.
- Lin Z, Sanders SJ, Li M, Sestan N, State MW and Zhao H†: A Markov Random Field-based approach to characterizing human brain developments using spatial-temporal transcriptome data. Annals of Applied Statistics 2015, 9(1): 429-451.
Research Awards:
· Awarded to my PhD student Jishuai Miao, National Natural Science Foundation of China (NSFC) under the Basic Research Scheme (2025) for PhD Students [國家自然科學基金 – 青年學生基礎研究項目 (博士研究生) ] for his research project titled: “Integrated Quantitative Modeling and Evaluation of Cell-Cell Communication and Gene Regulatory Networks from Spatial Multi-omics Data”
· Predoctoral Award in Basic Science, Association of Chinese Geneticists in America, 2012