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Early Pharmacological Profiling of Antiproliferative Compounds by Live Cell Imaging.

Adrián PuertaAday González-BakkerGuido SantosJosé Manuel Padrón
Published in: Molecules (Basel, Switzerland) (2022)
Natural products represent an excellent source of unprecedented anticancer compounds. However, the identification of the mechanism of action remains a major challenge. Several techniques and methodologies have been considered, but with limited success. In this work, we explored the combination of live cell imaging and machine learning techniques as a promising tool to depict in a fast and affordable test the mode of action of natural compounds with antiproliferative activity. To develop the model, we selected the non-small cell lung cancer cell line SW1573, which was exposed to the known antimitotic drugs paclitaxel, colchicine and vinblastine. The novelty of our methodology focuses on two main features with the highest relevance, (a) meaningful phenotypic metrics, and (b) fast Fourier transform (FFT) of the time series of the phenotypic parameters into their corresponding amplitudes and phases. The resulting algorithm was able to cluster the microtubule disruptors, and meanwhile showed a negative correlation between paclitaxel and the other treatments. The FFT approach was able to group the samples as efficiently as checking by eye. This methodology could easily scale to group a large amount of data without visual supervision.
Keyphrases
  • machine learning
  • high resolution
  • big data
  • deep learning
  • electronic health record
  • fluorescence imaging
  • photodynamic therapy
  • data analysis
  • chemotherapy induced