Computational Approach for the Development of pH-Selective PD-1/PD-L1 Signaling Pathway Inhibition in Fight with Cancer.
Roderick C McDowellJordhan D BoothAllyson McGowanWojciech KolodziejczykGlake A HillSantanu BanerjeeManliang FengKarina KapustaPublished in: Cancers (2024)
Immunotherapy, particularly targeting the PD-1/PD-L1 pathway, holds promise in cancer treatment by regulating the immune response and preventing cancer cells from evading immune destruction. Nonetheless, this approach poses a risk of unwanted immune system activation against healthy cells. To minimize this risk, our study proposes a strategy based on selective targeting of the PD-L1 pathway within the acidic microenvironment of tumors. We employed in silico methods, such as virtual screening, molecular mechanics, and molecular dynamics simulations, analyzing approximately 10,000 natural compounds from the MolPort database to find potential hits with the desired properties. The simulations were conducted under two pH conditions (pH = 7.4 and 5.5) to mimic the environments of healthy and cancerous cells. The compound MolPort-001-742-690 emerged as a promising pH-selective inhibitor, showing a significant affinity for PD-L1 in acidic conditions and lower toxicity compared to known inhibitors like BMS-202 and LP23. A detailed 1000 ns molecular dynamics simulation confirmed the stability of the inhibitor-PD-L1 complex under acidic conditions. This research highlights the potential of using in silico techniques to discover novel pH-selective inhibitors, which, after experimental validation, may enhance the precision and reduce the toxicity of immunotherapies, offering a transformative approach to cancer treatment.
Keyphrases
- molecular dynamics simulations
- molecular docking
- induced apoptosis
- signaling pathway
- immune response
- cell cycle arrest
- oxidative stress
- endoplasmic reticulum stress
- ionic liquid
- cancer therapy
- emergency department
- pi k akt
- squamous cell carcinoma
- molecular dynamics
- risk assessment
- zika virus
- big data
- inflammatory response
- dendritic cells
- single molecule
- deep learning
- cell death
- adverse drug
- squamous cell