Computational Chemistry in Structure-Based Solute Carrier Transporter Drug Design: Recent Advances and Future Perspectives.
Gao TuTingting FuGuoxun ZhengBinbin XuRongpei GouDing LuoPanpan WangWei Wei XuePublished in: Journal of chemical information and modeling (2024)
Solute carrier transporters (SLCs) are a class of important transmembrane proteins that are involved in the transportation of diverse solute ions and small molecules into cells. There are approximately 450 SLCs within the human body, and more than a quarter of them are emerging as attractive therapeutic targets for multiple complex diseases, e.g., depression, cancer, and diabetes. However, only 44 unique transporters (∼9.8% of the SLC superfamily) with 3D structures and specific binding sites have been reported. To design innovative and effective drugs targeting diverse SLCs, there are a number of obstacles that need to be overcome. However, computational chemistry, including physics-based molecular modeling and machine learning- and deep learning-based artificial intelligence (AI), provides an alternative and complementary way to the classical drug discovery approach. Here, we present a comprehensive overview on recent advances and existing challenges of the computational techniques in structure-based drug design of SLCs from three main aspects: (i) characterizing multiple conformations of the proteins during the functional process of transportation, (ii) identifying druggability sites especially the cryptic allosteric ones on the transporters for substrates and drugs binding, and (iii) discovering diverse small molecules or synthetic protein binders targeting the binding sites. This work is expected to provide guidelines for a deep understanding of the structure and function of the SLC superfamily to facilitate rational design of novel modulators of the transporters with the aid of state-of-the-art computational chemistry technologies including artificial intelligence.
Keyphrases
- artificial intelligence
- drug discovery
- machine learning
- deep learning
- big data
- small molecule
- endothelial cells
- type diabetes
- convolutional neural network
- drug induced
- induced apoptosis
- cancer therapy
- depressive symptoms
- cardiovascular disease
- papillary thyroid
- adverse drug
- quantum dots
- high resolution
- emergency department
- binding protein
- metabolic syndrome
- cell proliferation
- squamous cell carcinoma
- insulin resistance
- oxidative stress
- skeletal muscle
- sleep quality
- squamous cell
- cell death
- physical activity