Journal of Translational Medicine (Feb 2022)

Targets preliminary screening for the fresh natural drug molecule based on Cosine-correlation and similarity-comparison of local network

  • Pengcheng Zhao,
  • Lin Lin,
  • Mozheng Wu,
  • Lili Wang,
  • Qi Geng,
  • Li Li,
  • Ning Zhao,
  • Jianyu Shi,
  • Cheng Lu

DOI
https://doi.org/10.1186/s12967-022-03279-w
Journal volume & issue
Vol. 20, no. 1
pp. 1 – 9

Abstract

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Abstract Background Chinese herbal medicine is made up of hundreds of natural drug molecules and has played a major role in traditional Chinese medicine (TCM) for several thousand years. Therefore, it is of great significance to study the target of natural drug molecules for exploring the mechanism of treating diseases with TCM. However, it is very difficult to determine the targets of a fresh natural drug molecule due to the complexity of the interaction between drug molecules and targets. Compared with traditional biological experiments, the computational method has the advantages of less time and low cost for targets screening, but it remains many great challenges, especially for the molecules without social ties. Methods This study proposed a novel method based on the Cosine-correlation and Similarity-comparison of Local Network (CSLN) to perform the preliminary screening of targets for the fresh natural drug molecules and assign weights to them through a trained parameter. Results The performance of CSLN is superior to the popular drug-target-interaction (DTI) prediction model GRGMF on the gold standard data in the condition that is drug molecules are the objects for training and testing. Moreover, CSLN showed excellent ability in checking the targets screening performance for a fresh-natural-drug-molecule (scenario simulation) on the TCMSP (13 positive samples in top20), meanwhile, Western-Blot also further verified the accuracy of CSLN. Conclusions In summary, the results suggest that CSLN can be used as an alternative strategy for screening targets of fresh natural drug molecules.

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