Evaluation of the Effectiveness of Herbal Components Based on Their Regulatory Signature on Carcinogenic Cancer Cells.
Fazileh EsmaeiliTahmineh LohrasebiManijeh Mohammadi-DehcheshmehEsmaeil EbrahimiePublished in: Cells (2021)
Predicting cancer cells' response to a plant-derived agent is critical for the drug discovery process. Recently transcriptomes advancements have provided an opportunity to identify regulatory signatures to predict drug activity. Here in this study, a combination of meta-analysis and machine learning models have been used to determine regulatory signatures focusing on differentially expressed transcription factors (TFs) of herbal components on cancer cells. In order to increase the size of the dataset, six datasets were combined in a meta-analysis from studies that had evaluated the gene expression in cancer cell lines before and after herbal extract treatments. Then, categorical feature analysis based on the machine learning methods was applied to examine transcription factors in order to find the best signature/pattern capable of discriminating between control and treated groups. It was found that this integrative approach could recognize the combination of TFs as predictive biomarkers. It was observed that the random forest (RF) model produced the best combination rules, including AIP/TFE3/VGLL4/ID1 and AIP/ZNF7/DXO with the highest modulating capacity. As the RF algorithm combines the output of many trees to set up an ultimate model, its predictive rules are more accurate and reproducible than other trees. The discovered regulatory signature suggests an effective procedure to figure out the efficacy of investigational herbal compounds on particular cells in the drug discovery process.
Keyphrases
- drug discovery
- transcription factor
- machine learning
- systematic review
- gene expression
- deep learning
- artificial intelligence
- dna binding
- induced apoptosis
- big data
- genome wide
- signaling pathway
- dna methylation
- oxidative stress
- climate change
- clinical trial
- high resolution
- meta analyses
- neural network
- young adults
- newly diagnosed
- drug induced
- network analysis
- cell wall
- electronic health record
- endoplasmic reticulum stress