Predicting Cancer Chemosensitivity Based on Intensity/Distribution Profiles of Cells Loaded with a Fluorescent Sphingolipid Analogue
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Quirós Fernández, Isaac
Molina Mora, José Arturo
Kop Montero, Mariana
Salas Hidalgo, Elvira
Mora Rodríguez, Rodrigo Antonio
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Abstract
Cancer is a group of heterogeneous and complex
diseases, with limited therapeutic options due to the recurrent
emergence of drug resistance. Sphingolipids are bioactive
molecules that participate in signaling of cell death or
proliferation. Because there is no laboratory test to rapidly
predict a tumor chemosensitivity, we propose the use of a
sphingomyelin fluorescent analogue as a chemotherapy
response sensor.
Through kinetic live cell imaging experiments, we extracted
1611 fluorescence features with single cell time resolved
resolution. After comparing the variations in this reporter,
induced by different chemotherapies, it was possible to reduce
the system complexity to elaborate a decision tree algorithm
based in only 3 fluorescence features capable of predicting
chemosensitivity with a 73% of accuracy.
This approach serves as a proof of principle for the possible
future implementation of a chemosensitivity test that could be
used with patient primary tumors, and thus contribute to
personalized therapy against cancer.
Description
Trabajo forma parte de los presentados en el International Work Conference on Bioinspired Intelligence (IWOBI).Estados Unidos, IEEE. 2018.
Keywords
Chemosensitivity, Sphingolipids, Decision trees, CÁNCER
Citation
https://ieeexplore.ieee.org/document/8464199