ID-Checker Technology for the Highly Selective Macroscale Delivery of Anticancer Agents to the Cancer Cells
Journal of Medicinal Chemistry(2022)
Biometrix Technol Inc
Abstract
Cancer cells deploy several glucose transport protein (GLUT) channels on the cell membranes to increase glucose uptake. Cancer cells die within 24 h in the absence of glucose. Thus, preventing the deployment of GLUT channels can deprive them of glucose, resulting in apoptosis within 24 h. Herein, we developed the ID-Checker with a glucose tag that ensures its highly specific macroscale delivery of anticancer agents to the cancer cells through the GLUT channels. ID-Checker presented here showed IC50 values of 0.17-0.27 and 3.34 mu M in cancer and normal cell lines, respectively. ID-Checker showed a selectivity index of 12.5-20.2, which is about 10-20 times higher than that of known anticancer agents such as colchicine. ID-Checker inhibits the microtubule formation, which results in the prevention of the deployment of GLUT channels in 6 h and kills the cancer cells within 24 h without any damage to normal cells.
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