Machine learning and bioinformatic analyses link the cell surface receptor transcript levels to the drug response of breast cancer cells and drug off-target effects.
Musalula SinkalaKrupa NaranDharanidharan RamamurthyNeelakshi MungraKevin DzoboDarren MartinStefan BarthPublished in: PloS one (2024)
Breast cancer responds variably to anticancer therapies, often leading to significant off-target effects. This study proposes that the variability in tumour responses and drug-induced adverse events is linked to the transcriptional profiles of cell surface receptors (CSRs) in breast tumours and normal tissues. We analysed multiple datasets to compare CSR expression in breast tumours with that in non-cancerous human tissues. Our findings correlate the drug responses of breast cancer cell lines with the expression levels of their targeted CSRs. Notably, we identified distinct differences in CSR expression between primary breast tumour subtypes and corresponding cell lines, which may influence drug response predictions. Additionally, we used clinical trial data to uncover associations between CSR gene expression in healthy tissues and the incidence of adverse drug reactions. This integrative approach facilitates the selection of optimal CSR targets for therapy, leveraging cell line dose-responses, CSR expression in normal tissues, and patient adverse event profiles.
Keyphrases
- adverse drug
- gene expression
- drug induced
- poor prognosis
- cell surface
- liver injury
- clinical trial
- machine learning
- electronic health record
- binding protein
- breast cancer cells
- endothelial cells
- emergency department
- long non coding rna
- stem cells
- randomized controlled trial
- drug delivery
- rna seq
- open label
- single cell
- transcription factor
- double blind
- phase ii