Ex vivo modelling of drug efficacy in a rare metastatic urachal carcinoma

罕见转移性脐尿管癌的体外药物疗效建模

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作者:Rami Mäkelä, Antti Arjonen, Ville Härmä, Nina Rintanen, Lauri Paasonen, Tobias Paprotka, Kerstin Rönsch, Teijo Kuopio, Juha Kononen, Juha K Rantala

Background

Ex vivo drug screening refers to the out-of-body assessment of drug efficacy in patient derived vital tumor cells. The

Conclusions

All the tested ex vivo drug screening methods captured the patient's tumor cells' sensitivity to drugs that could be associated with the oncogenic KRASG12V mutation found in the patient's tumor cells. Specific drug classes however resulted in differential dose response profiles dependent on the used cell culture method indicating that the choice of assay could bias results from ex vivo drug screening assays for selected drug classes.

Methods

To compare the feasibility and

Results

Dose response data from the enzymatic cell viability assay and the image-based assay of 2D cell cultures showed the best consistency. With 3D cell culture conditions, the proliferation rate of the tumor cells was slower and potency of several drugs was reduced even following growth rate normalization of the responses. MEK, mTOR, and MET inhibitors were identified as the most cytotoxic targeted drugs. Secondary validation analyses confirmed the efficacy of these drugs also with the new human urachal adenocarcinoma cell line (MISB18) established from the patient's tumor. Conclusions: All the tested ex vivo drug screening methods captured the patient's tumor cells' sensitivity to drugs that could be associated with the oncogenic KRASG12V mutation found in the patient's tumor cells. Specific drug classes however resulted in differential dose response profiles dependent on the used cell culture method indicating that the choice of assay could bias results from ex vivo drug screening assays for selected drug classes.

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