Graft and diblock copolymer multifunctional micelles for cancer chemotherapy and imaging

Hsieh Chih Tsai, Wei Hsiang Chang, Chun Liang Lo, Cheng Hung Tsai, Che Hau Chang, Ta Wei Ou, Tzu Chen Yen, Ging Ho Hsiue*

*Corresponding author for this work

Research output: Contribution to journalJournal Article peer-review

102 Scopus citations

Abstract

Multifunctional mixed micelles that constructed from poly(HEMA-co-histidine)-g-PLA and diblock copolymer PEG-PLA with functional moiety was developed in this study. The mixed micelles had well defined core shell structure which was evaluated by TEM. The functional inner core of poly(HEMA-co-histidine)-g-PLA exhibited pH stimulate to enable intracellular drug delivery and outer shell of PEG-b-PLA with functional moiety Cy5.5 for biodistribution diagnosis and folate for cancer specific targeting were synthesized at the end of the polymer chain. The graft and diblock copolymer self assembled to nanospheres against water with an average diameter below 120 nm without doxorubicin, and an average diameter of around 200 nm when loaded with drug. From drug released study, a change in pH destroy the inner core to lead a significant doxorubicin(Dox) release from mixed micelles. Cellular uptake of folate-micelles was found to be higher than that of non-folate-micelles due to the folate-binding effect on the cell membrane, thereby providing a similar cytotoxic effect to drug only against the HeLa cell line. In vivo study revealed that specific targeting of folate-micelles exhibited cancer targeting and efficiency expression on tumor growth, indicating that multifunctional micelles prepared from poly(HEA-co-histidine)-g-PLA and folate-PEG-PLA have great potential in cancer chemotherapy and diagnosis.

Original languageEnglish
Pages (from-to)2293-2301
Number of pages9
JournalBiomaterials
Volume31
Issue number8
DOIs
StatePublished - 03 2010
Externally publishedYes

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