Detection of acquired radioresistance in breast cancer cell lines using Raman spectroscopy and machine learning.
Kevin Saruni TipatetLiam Davison-GatesThomas Johann TewesEmmanuel Kwasi FiagbedziAlistair ElfickBjörn NeuAndrew DownesPublished in: The Analyst (2021)
Radioresistance-a living cell's response to, and development of resistance to ionising radiation-can lead to radiotherapy failure and/or tumour recurrence. We used Raman spectroscopy and machine learning to characterise biochemical changes that occur in acquired radioresistance for breast cancer cells. We were able to distinguish between wild-type and acquired radioresistant cells by changes in chemical composition using Raman spectroscopy and machine learning with 100% accuracy. In studying both hormone receptor positive and negative cells, we found similar changes in chemical composition that occur with the development of acquired radioresistance; these radioresistant cells contained less lipids and proteins compared to their parental counterparts. As well as characterising acquired radioresistance in vitro, this approach has the potential to be translated into a clinical setting, to look for Raman signals of radioresistance in tumours or biopsies; that would lead to tailored clinical treatments.
Keyphrases
- raman spectroscopy
- machine learning
- induced apoptosis
- dna damage response
- cell cycle arrest
- cancer stem cells
- breast cancer cells
- early stage
- endoplasmic reticulum stress
- wild type
- signaling pathway
- cell death
- squamous cell carcinoma
- cell proliferation
- oxidative stress
- single cell
- bone marrow
- young adults
- dna repair
- human health
- pi k akt
- locally advanced