OTTM: an automated classification tool for translational drug discovery from omics data.
Xiaobo YangBei ZhangSiqi WangYe LuKaixian ChenCheng LuoAihua SunHao ZhangPublished in: Briefings in bioinformatics (2023)
Omics data from clinical samples are the predominant source of target discovery and drug development. Typically, hundreds or thousands of differentially expressed genes or proteins can be identified from omics data. This scale of possibilities is overwhelming for target discovery and validation using biochemical or cellular experiments. Most of these proteins and genes have no corresponding drugs or even active compounds. Moreover, a proportion of them may have been previously reported as being relevant to the disease of interest. To facilitate translational drug discovery from omics data, we have developed a new classification tool named Omics and Text driven Translational Medicine (OTTM). This tool can markedly narrow the range of proteins or genes that merit further validation via drug availability assessment and literature mining. For the 4489 candidate proteins identified in our previous proteomics study, OTTM recommended 40 FDA-approved or clinical trial drugs. Of these, 15 are available commercially and were tested on hepatocellular carcinoma Hep-G2 cells. Two drugs-tafenoquine succinate (an FDA-approved antimalarial drug targeting CYC1) and branaplam (a Phase 3 clinical drug targeting SMN1 for the treatment of spinal muscular atrophy)-showed potent inhibitory activity against Hep-G2 cell viability, suggesting that CYC1 and SMN1 may be potential therapeutic target proteins for hepatocellular carcinoma. In summary, OTTM is an efficient classification tool that can accelerate the discovery of effective drugs and targets using thousands of candidate proteins identified from omics data. The online and local versions of OTTM are available at http://otter-simm.com/ottm.html.
Keyphrases
- combination therapy
- drug discovery
- single cell
- electronic health record
- clinical trial
- big data
- machine learning
- deep learning
- high throughput
- genome wide
- systematic review
- healthcare
- emergency department
- social media
- data analysis
- induced apoptosis
- adverse drug
- oxidative stress
- randomized controlled trial
- climate change
- cancer therapy
- signaling pathway
- dna methylation
- open label
- smoking cessation
- endoplasmic reticulum stress
- phase ii
- drug administration
- pi k akt