Securing LYTAC with Logic-Identification System for Cancer Cell-Selective Membrane Protein Degradation

SMALL(2024)

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摘要
Lysosome-targeting chimera (LYTAC) links proteins of interest (POIs) with lysosome-targeting receptors (LTRs) to achieve membrane protein degradation, which is becoming a promising therapeutic modality. However, cancer cell-selective membrane protein degradation remains a big challenge considering expressions of POIs in both cancer cells and normal cells, as well as broad tissue distribution of LTRs. Here a logic-identification system is designed, termed Logic-TAC, based on cell membrane-guided DNA calculations to secure LYTAC selectively for cancer cells. Logic-TAC is designed as a duplex DNA structure, with both POI and LTR recognition regions sealed to avoid systematic toxicity during administration. MCF-7 and MCF-10A are chosen as sample cancer cell and normal cell respectively. As input 1 for logic-identification, membrane proteins EpCAM, which is highly expressed by MCF-7 but barely by MCF-10A, reacts with Logic-TAC to expose POI recognition region. As input 2 for logic-identification, Logic-TAC binds to POI, membrane protein MUC1, to expose LTR recognition region. As output, MUC1 is connected to LTR and degraded via lysosome pathway selectively for cancer cell MCF-7 with little side effect on normal cell MCF-10A. The logic-identification system also demonstrated satisfactory in vivo therapeutic results, indicating its promising potential in precise targeted therapy. A logic-identification system programmed LYTAC (Logic-TAC) strategy relies on DNA calculations is presented for cancer cell-selective membrane protein degradation. Logic-TAC sequentially reacts with cancer cell membrane proteins EpCAM and MUC1, which served as input 1 and 2 respectively to achieve MUC1 degradation. The as-designed Logic-TAC achieves cancer cell-selective MUC1 degradation with enhanced degradation efficiency for in vivo therapy. image
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关键词
cancer therapy,cell membrane engineering,DNA nanostructure,logic gate,membrane protein degradation
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