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Evaluating cell lines as models for metastatic breast cancer through integrative analysis of genomic data.


ABSTRACT: Cell lines are widely-used models to study metastatic cancer although the extent to which they recapitulate the disease in patients remains unknown. The recent accumulation of genomic data provides an unprecedented opportunity to evaluate the utility of them for metastatic cancer research. Here, we reveal substantial genomic differences between breast cancer cell lines and metastatic breast cancer patient samples. We also identify cell lines that more closely resemble the different subtypes of metastatic breast cancer seen in the clinic and show that surprisingly, MDA-MB-231 cells bear little genomic similarities to basal-like metastatic breast cancer patient samples. Further comparison suggests that organoids more closely resemble the transcriptome of metastatic breast cancer samples compared to cell lines. Our work provides a guide for cell line selection in the context of breast cancer metastasis and highlights the potential of organoids in these studies.

SUBMITTER: Liu K 

PROVIDER: S-EPMC6520398 | biostudies-literature | 2019 May

REPOSITORIES: biostudies-literature

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Evaluating cell lines as models for metastatic breast cancer through integrative analysis of genomic data.

Liu Ke K   Newbury Patrick A PA   Glicksberg Benjamin S BS   Zeng William Z D WZD   Paithankar Shreya S   Andrechek Eran R ER   Chen Bin B  

Nature communications 20190515 1


Cell lines are widely-used models to study metastatic cancer although the extent to which they recapitulate the disease in patients remains unknown. The recent accumulation of genomic data provides an unprecedented opportunity to evaluate the utility of them for metastatic cancer research. Here, we reveal substantial genomic differences between breast cancer cell lines and metastatic breast cancer patient samples. We also identify cell lines that more closely resemble the different subtypes of m  ...[more]

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