Automated Author Profile

Yu, Jiangang

Current S-Index

45.9

Sum of Dataset Indices for all datasets

Average Dataset Index per Dataset

0.6

Average Dataset Index per dataset

Total Datasets

72

Total datasets for this author

Average FAIR Score

44.6%

Average FAIR Score per dataset

Total Citations

59

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

Predicting postoperative complications after pneumonectomy using machine learning: a 10-year study

Reducing postoperative cardiovascular and neurological complications (PCNC) during thoracic surgery is the key to improving postoperative survival. We aimed to investigate independent predictors of PCNC, develop machine learning models, and construct a predictive nomogram for PCNC in patients undergoing thoracic surgery for lung cancer. This study used data from a previous retrospective study of 16,368 patients with lung cancer (training set: 11,458; validation set: 4,910) with American Standards Association physical statuses I–IV who underwent surgery. Postoperative information was collected from electronic medical records to help build models based on cause-and-effect and statistical data, potentially revealing hidden dependencies between factors and diseases in a big data environment. The optimal model was analyzed and filtered using multiple machine-learning models (Logistic regression, eXtreme Gradient Boosting, Random forest, Light Gradient Boosting Machine and Naïve Bayes). A predictive nomogram was built and receiver operating characteristics were used to assess the validity of the model. The discriminative power and clinical validity were assessed using calibration and decision-making curve analyses. Multivariate logistic regression analysis revealed that age, surgery duration, intraoperative intercostal nerve block, postoperative patient-controlled analgesia, bronchial blocker use and sufentanil use were independent predictors of PCNC. Random forest was identified as the optimal model with an area under the curve of 0.898 in the training set and 0.752 in the validation set, confirming the excellent prediction accuracy of the nomogram. All the net benefits of the five machine-learning models in the training and validation sets demonstrated excellent clinical applicability, and the calibration curves showed good agreement between the predicted and observed risks. The combination of machine-learning models and nomograms may contribute to the early prediction and reduction in the incidence of PCNC.

Authors

  • Wang, Yaxuan ;
  • Xie, Shiyang ;
  • Liu, Jiayun ;
  • Wang, He ;
  • Yu, Jiangang ;
  • Li, Wenya ;
  • Guan, Aika ;
  • Xu, Shun ;
  • Cui, Yong ;
  • Tan, Wenfei
1 Citation0 Mentions85% FAIR0.7 Dataset Index
10.6084/m9.figshare.28743008.v12025

CCDC 2432242: 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

  • Daniliuc, Constantin G. ;
  • Yu, Jiangang ;
  • Erker, Gerhard
0 Citations0 Mentions50% FAIR0.3 Dataset Index
10.5517/ccdc.csd.cc2mmyfn2025

CCDC 2430757: 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

  • Daniliuc, Constantin G. ;
  • Yu, Jiangang ;
  • Erker, Gerhard
0 Citations0 Mentions50% FAIR0.3 Dataset Index
10.5517/ccdc.csd.cc2mldj52025

CCDC 2429000: 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

  • Daniliuc, Constantin G. ;
  • Yu, Jiangang ;
  • Erker, Gerhard
0 Citations0 Mentions46% FAIR1.1 Dataset Index
10.5517/ccdc.csd.cc2mjkvl2025

CCDC 2440365: 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

  • Daniliuc, Constantin G. ;
  • Yu, Jiangang ;
  • Erker, Gerhard
0 Citations0 Mentions50% FAIR0.3 Dataset Index
10.5517/ccdc.csd.cc2mxdgf2025

CCDC 2428983: 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

  • Daniliuc, Constantin G. ;
  • Yu, Jiangang ;
  • Erker, Gerhard
0 Citations0 Mentions50% FAIR0.3 Dataset Index
10.5517/ccdc.csd.cc2mjk912025

Predicting postoperative complications after pneumonectomy using machine learning: a 10-year study

Reducing postoperative cardiovascular and neurological complications (PCNC) during thoracic surgery is the key to improving postoperative survival. We aimed to investigate independent predictors of PCNC, develop machine learning models, and construct a predictive nomogram for PCNC in patients undergoing thoracic surgery for lung cancer. This study used data from a previous retrospective study of 16,368 patients with lung cancer (training set: 11,458; validation set: 4,910) with American Standards Association physical statuses I–IV who underwent surgery. Postoperative information was collected from electronic medical records to help build models based on cause-and-effect and statistical data, potentially revealing hidden dependencies between factors and diseases in a big data environment. The optimal model was analyzed and filtered using multiple machine-learning models (Logistic regression, eXtreme Gradient Boosting, Random forest, Light Gradient Boosting Machine and Naïve Bayes). A predictive nomogram was built and receiver operating characteristics were used to assess the validity of the model. The discriminative power and clinical validity were assessed using calibration and decision-making curve analyses. Multivariate logistic regression analysis revealed that age, surgery duration, intraoperative intercostal nerve block, postoperative patient-controlled analgesia, bronchial blocker use and sufentanil use were independent predictors of PCNC. Random forest was identified as the optimal model with an area under the curve of 0.898 in the training set and 0.752 in the validation set, confirming the excellent prediction accuracy of the nomogram. All the net benefits of the five machine-learning models in the training and validation sets demonstrated excellent clinical applicability, and the calibration curves showed good agreement between the predicted and observed risks. The combination of machine-learning models and nomograms may contribute to the early prediction and reduction in the incidence of PCNC.

Authors

  • Wang, Yaxuan ;
  • Xie, Shiyang ;
  • Liu, Jiayun ;
  • Wang, He ;
  • Yu, Jiangang ;
  • Li, Wenya ;
  • Guan, Aika ;
  • Xu, Shun ;
  • Cui, Yong ;
  • Tan, Wenfei
1 Citation0 Mentions85% FAIR0.6 Dataset Index
10.6084/m9.figshare.287430082025

CCDC 2411053: 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

  • Daniliuc, Constantin G. ;
  • Yu, Jiangang ;
  • Erker, Gerhard
0 Citations0 Mentions15% FAIR0.4 Dataset Index
10.5517/ccdc.csd.cc2lxwxb2024

CCDC 2401753: 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

  • Daniliuc, Constantin G. ;
  • Yu, Jiangang ;
  • Erker, Gerhard
0 Citations0 Mentions15% FAIR0.4 Dataset Index
10.5517/ccdc.csd.cc2lm6xc2024

CCDC 2394911: 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

  • Daniliuc, Constantin G. ;
  • Yu, Jiangang ;
  • Erker, Gerhard
0 Citations0 Mentions15% FAIR0.4 Dataset Index
10.5517/ccdc.csd.cc2ld36b2024