Automated Author Profile

Kang, Qiang

Current S-Index

2.6

Sum of Dataset Indices for all datasets

Average Dataset Index per Dataset

0.4

Average Dataset Index per dataset

Total Datasets

6

Total datasets for this author

Average FAIR Score

22.4%

Average FAIR Score per dataset

Total Citations

1

Total citations to the author's datasets

Total Mentions

0

Total mentions of the author's datasets

S-Index Interpretation

S-Index Over Time

Cumulative Citations Over Time

Cumulative Mentions Over Time

Datasets

Soil Probiotics Dataset

The dataset comprises a total of 998 samples, which are distinctly categorized into two groups: probiotics and non-probiotics. Specifically, the dataset includes 418 probiotics, which serve as the positive samples, and 580 non-probiotics, which constitute the negative samples.

Authors

  • Kang, Qiang ;
  • Sun, Haotong
0 Citations0 Mentions13% FAIR0.3 Dataset Index
10.5281/zenodo.17067024September 2025

Soil Probiotics Dataset

The dataset comprises a total of 998 samples, which are distinctly categorized into two groups: probiotics and non-probiotics. Specifically, the dataset includes 418 probiotics, which serve as the positive samples, and 580 non-probiotics, which constitute the negative samples.

Authors

  • Kang, Qiang ;
  • Sun, Haotong
0 Citations0 Mentions13% FAIR0.3 Dataset Index
10.5281/zenodo.17067025September 2025

spatiAlign: An Unsupervised Contrastive Learning Model for Data Integration of Spatially Resolved Transcriptomics

Integrative analysis of spatially resolved transcriptomics datasets empowers a deeper understanding of complex biological systems. However, integrating multiple tissue sections presents challenges for batch effect removal, particularly when the sections are measured by various technologies or collected at different times. Here, we propose spatiAlign, an unsupervised contrastive learning model that employs the expression of all measured genes and the spatial location of cells, to integrate multiple tissue sections. It enables the joint downstream analysis of multiple datasets not only in low-dimensional embeddings but also in the reconstructed full expression space. In benchmarking analysis, spatiAlign outperforms state-of-the-art methods in learning joint and discriminative representations for tissue sections, each potentially characterized by complex batch effects or distinct biological characteristics. Furthermore, we demonstrate the benefits of spatiAlign for the integrative analysis of time-series brain sections, including spatial clustering, differential expression analysis, and particularly trajectory inference that requires a corrected gene expression matrix.

Authors

  • Zhang, Chao ;
  • Liu, Lin ;
  • Zhang, Ying ;
  • Li, Mei ;
  • Fang, Shuangsang ;
  • Kang, Qiang ;
  • Chen, Ao ;
  • Xu, Xun ;
  • Zhang, Yong ;
  • Li, Yuxiang
0 Citations0 Mentions13% FAIR0.1 Dataset Index
10.5281/zenodo.10453191January 2024

spatiAlign: An Unsupervised Contrastive Learning Model for Data Integration of Spatially Resolved Transcriptomics

Integrative analysis of spatially resolved transcriptomics datasets empowers a deeper understanding of complex biological systems. However, integrating multiple tissue sections presents challenges for batch effect removal, particularly when the sections are measured by various technologies or collected at different times. Here, we propose spatiAlign, an unsupervised contrastive learning model that employs the expression of all measured genes and the spatial location of cells, to integrate multiple tissue sections. It enables the joint downstream analysis of multiple datasets not only in low-dimensional embeddings but also in the reconstructed full expression space. In benchmarking analysis, spatiAlign outperforms state-of-the-art methods in learning joint and discriminative representations for tissue sections, each potentially characterized by complex batch effects or distinct biological characteristics. Furthermore, we demonstrate the benefits of spatiAlign for the integrative analysis of time-series brain sections, including spatial clustering, differential expression analysis, and particularly trajectory inference that requires a corrected gene expression matrix.

Authors

  • Zhang, Chao ;
  • Liu, Lin ;
  • Zhang, Ying ;
  • Li, Mei ;
  • Fang, Shuangsang ;
  • Kang, Qiang ;
  • Chen, Ao ;
  • Xu, Xun ;
  • Zhang, Yong ;
  • Li, Yuxiang
1 Citation0 Mentions65% FAIR1.0 Dataset Index
10.5281/zenodo.10453192January 2024

CCDC 1835990: Experimental Crystal Structure Determination

An entry from the Cambridge Structural Database, the world’s repository for small molecule crystal structures. The entry contains experimental data from a crystal diffraction study. The deposited dataset for this entry is freely available from the CCDC and typically includes 3D coordinates, cell parameters, space group, experimental conditions and quality measures.

Authors

  • Gong, Jun ;
  • Wan, Qian ;
  • Kang, Qiang
0 Citations0 Mentions13% FAIR0.3 Dataset Index
10.5517/ccdc.csd.cc1zmhhlJanuary 2018

CCDC 1832329: Experimental Crystal Structure Determination

An entry from the Cambridge Structural Database, the world’s repository for small molecule crystal structures. The entry contains experimental data from a crystal diffraction study. The deposited dataset for this entry is freely available from the CCDC and typically includes 3D coordinates, cell parameters, space group, experimental conditions and quality measures.

Authors

  • Li, Shi-Wu ;
  • Kang, Qiang
0 Citations0 Mentions15% FAIR0.4 Dataset Index
10.5517/ccdc.csd.cc1zhpdkJanuary 2018