基本信息
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Bio
Research Interests
Our lab focuses on studying cell dynamics in various biological processes in many diseases (e.g., developmental disorder, pulmonary diseases, cancers). Decoding cell dynamics is essential for understanding the pathogenesis of diseases and finding novel therapeutics. The existence of enormous heterogeneity in those diseases makes it challenging to decipher the unknown.
The advancing single-cell technologies that profile individual cell states provide unprecedented opportunities to tackle this problem, which could drive biological discoveries and medical innovations in various fields (such as developmental and cancer biology). However, the single-cell data presents numerous new challenges in developing computational models that bridge the biomedical data and potential discoveries.
Our primary research is to develop machine learning approaches (particularly probabilistic graphical models) to jointly analyze, model, and visualize single-cell (and/or bulk) omics data (preferably longitudinal or spatial). Such computational models will be used to help us derive a deeper understanding of the cell dynamics in different biological systems, which will eventually benefit the public health with machine-learning driven new diagnostic and therapeutic strategies.
Our lab focuses on studying cell dynamics in various biological processes in many diseases (e.g., developmental disorder, pulmonary diseases, cancers). Decoding cell dynamics is essential for understanding the pathogenesis of diseases and finding novel therapeutics. The existence of enormous heterogeneity in those diseases makes it challenging to decipher the unknown.
The advancing single-cell technologies that profile individual cell states provide unprecedented opportunities to tackle this problem, which could drive biological discoveries and medical innovations in various fields (such as developmental and cancer biology). However, the single-cell data presents numerous new challenges in developing computational models that bridge the biomedical data and potential discoveries.
Our primary research is to develop machine learning approaches (particularly probabilistic graphical models) to jointly analyze, model, and visualize single-cell (and/or bulk) omics data (preferably longitudinal or spatial). Such computational models will be used to help us derive a deeper understanding of the cell dynamics in different biological systems, which will eventually benefit the public health with machine-learning driven new diagnostic and therapeutic strategies.
Research Interests
Papers共 94 篇Author StatisticsCo-AuthorSimilar Experts
By YearBy Citation主题筛选期刊级别筛选合作者筛选合作机构筛选
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期刊级别
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合作机构
Salyan Bhattarai,Eva Kaufmann,Feng Liang, Yumin Zheng,Ekaterina Gusev,Qutayba Hamid,Jun Ding,Maziar Divangahi, Basil J. Petrof
JOURNAL OF CACHEXIA SARCOPENIA AND MUSCLEno. 1 (2025)
Communications Biologyno. 1 (2025): 1-18
Yiwei Xiong, Jingtao Wang, Xiaoxiao Shang, Tingting Chen,Douglas D Fraser,Gregory J Fonseca,Simon Rousseau,Jun Ding
Cell reports methodsno. 4 (2025): 101022-101022
Poultry scienceno. 7 (2025): 105255-105255
Environmental health perspectivesno. 1 (2025): 17007-17007
crossref(2025)
medrxiv(2025)
RESEARCH IN COMPUTATIONAL MOLECULAR BIOLOGY, RECOMB 2024 (2024): 314-319
AMERICAN JOURNAL OF RESPIRATORY AND CRITICAL CARE MEDICINE (2024)
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Author Statistics
#Papers: 94
#Citation: 1493
H-Index: 20
G-Index: 38
Sociability: 6
Diversity: 2
Activity: 77
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