Low-dose anti-inflammatory combinatorial therapy reduced cancer stem cell formation in patient-derived preclinical models for tumour relapse prevention

Background: Emergence of drug-resistant cancer phenotypes is a challenge for anti-cancer therapy. Cancer stem cells are identified as one of the ways by which chemoresistance develops. Method: We investigated the anti-inflammatory combinatorial treatment (DA) of doxorubicin and aspirin using a precl...

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Bibliographic Details
Main Authors: Khoo, Bee Luan, Grenci, Gianluca, Lim, Joey Sze Yun, Lim, Yan Ping, Fong, July, Yeap, Wei Hseun, Lim, Su Bin, Chua, Song Lin, Wong, Siew Cheng, Yap, Yoon-Sim, Lee, Soo Chin, Lim, Chwee-Teck, Han, Jongyoon
Other Authors: Singapore-MIT Alliance in Research and Technology (SMART)
Format: Article
Language:English
Published: 2020
Online Access:https://hdl.handle.net/1721.1/125700
Description
Summary:Background: Emergence of drug-resistant cancer phenotypes is a challenge for anti-cancer therapy. Cancer stem cells are identified as one of the ways by which chemoresistance develops. Method: We investigated the anti-inflammatory combinatorial treatment (DA) of doxorubicin and aspirin using a preclinical microfluidic model on cancer cell lines and patient-derived circulating tumour cell clusters. The model had been previously demonstrated to predict patient overall prognosis. Results: We demonstrated that low-dose aspirin with a sub-optimal dose of doxorubicin for 72 h could generate higher killing efficacy and enhanced apoptosis. Seven days of DA treatment significantly reduced the proportion of cancer stem cells and colony-forming ability. DA treatment delayed the inhibition of interleukin-6 secretion, which is mediated by both COX-dependent and independent pathways. The response of patients varied due to clinical heterogeneity, with 62.5% and 64.7% of samples demonstrating higher killing efficacy or reduction in cancer stem cell (CSC) proportions after DA treatment, respectively. These results highlight the importance of using patient-derived models for drug discovery. Conclusions: This preclinical proof of concept seeks to reduce the onset of CSCs generated post treatment by stressful stimuli. Our study will promote a better understanding of anti-inflammatory treatments for cancer and reduce the risk of relapse in patients.