Using gene expression profiling, others and we have recently found that claudin-3 (CLDN3) and claudin-4 (CLDN4) are two of the most highly and consistently up-regulated genes in ovarian carcinomas. Because these tight junction proteins are the naturally occurring receptors for Clostridium perfringens enterotoxin (CPE), in this study, we used the COOH-terminal 30 amino acids of the CPE (CPE(290-319)), a fragment that is known to retain full binding affinity but have no cytolytic effect, to target tumor necrosis factor (TNF) to ovarian cancers. We constructed a pET32-based vector that expressed the fusion protein, designated here as CPE(290-319)-TNF, in which CPE(290-319) was fused to TNF at its NH(2)-terminal end. Western blotting confirmed presence of both CPE(290-319) and TNF in the fusion protein. The TNF component in CPE(290-319)-TNF was 5-fold less potent than free TNF as determined by a standard L-929 TNF bioassay. However, the CPE(290-319)-TNF was >6.7-fold more cytotoxic than free TNF to 2008 human ovarian cancer cells, which express both CLDN3 and CLDN4 receptors. shRNAi-mediated knockdown of either CLDN3 or CLDN4 expression in 2008 markedly attenuated the cytotoxic effects of CPE(290-319)-TNF. The fusion construct was efficiently delivered into target cells and located in both cytosol and vesicular compartments as assessed by immunofluorescent staining. We conclude that CPE(290-319) effectively targeted TNF to ovarian cancer cells and is an attractive targeting moiety for development of CPE-based toxins for therapy of ovarian carcinomas that overexpress CLDN3 and CLDN4.

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http://dx.doi.org/10.1158/1535-7163.MCT-09-0106DOI Listing

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