A crucial challenge in medicine is choosing which drug (or combination) will be the most advantageous for a particular patient. Usually, drug response rates differ substantially, and the reasons for this response unpredictability remain ambiguous. Consequently, it is central to classify features that contribute to the observed drug response variability. Pancreatic cancer is one of the deadliest cancers with limited therapeutic achievements due to the massive presence of stroma that generates an environment that enables tumor growth, metastasis, and drug resistance. To under-stand the cancer–stroma cross talk within the tumor microenvironment and to develop personalized adjuvant therapies, there is a necessity for effective approaches that offer measurable data to monitor the effect of drugs at the single-cell level. Here, we develop a computational approach, based on cell imaging, that quantifies the cellular cross talk between pancreatic tumor cells (L3.6pl or AsPC1) and pancreatic stellate cells (PSCs), coordinating their kinetics in presence of the chemotherapeutic agent gemcitabine. We report significant heterogeneity in the organization of cellular interactions in response to the drug. For L3.6pl cells, gemcitabine sensibly decreases stroma–stroma interactions but increases stroma–cancer interactions, overall enhancing motility and crowding. In the AsPC1 case, gemcitabine promotes the interactions among tumor cells, but it doesnot affect stroma–cancer interplay, possibly suggesting a milder effect of the drug oncell dynamics.

Quantifying heterogeneity to drug response in cancer–stroma kinetics / Alemanno, Francesco; Cavo, Marta; Delle Cavec, Donatella; Fachechi, Alberto; Rizzo, Riccardo; D’Amone, Eliana; Gigli, Giuseppe; Lonardo, Enza; Barra, Adriano; del Mercato, Loretta. - In: PROCEEDINGS OF THE NATIONAL ACADEMY OF SCIENCES OF THE UNITED STATES OF AMERICA. - ISSN 1091-6490. - 120:11(2023), p. 2122352120. [10.1073/pnas.2122352120]

Quantifying heterogeneity to drug response in cancer–stroma kinetics

Alberto Fachechi;Adriano Barra;
2023

Abstract

A crucial challenge in medicine is choosing which drug (or combination) will be the most advantageous for a particular patient. Usually, drug response rates differ substantially, and the reasons for this response unpredictability remain ambiguous. Consequently, it is central to classify features that contribute to the observed drug response variability. Pancreatic cancer is one of the deadliest cancers with limited therapeutic achievements due to the massive presence of stroma that generates an environment that enables tumor growth, metastasis, and drug resistance. To under-stand the cancer–stroma cross talk within the tumor microenvironment and to develop personalized adjuvant therapies, there is a necessity for effective approaches that offer measurable data to monitor the effect of drugs at the single-cell level. Here, we develop a computational approach, based on cell imaging, that quantifies the cellular cross talk between pancreatic tumor cells (L3.6pl or AsPC1) and pancreatic stellate cells (PSCs), coordinating their kinetics in presence of the chemotherapeutic agent gemcitabine. We report significant heterogeneity in the organization of cellular interactions in response to the drug. For L3.6pl cells, gemcitabine sensibly decreases stroma–stroma interactions but increases stroma–cancer interactions, overall enhancing motility and crowding. In the AsPC1 case, gemcitabine promotes the interactions among tumor cells, but it doesnot affect stroma–cancer interplay, possibly suggesting a milder effect of the drug oncell dynamics.
2023
pancreatic cancer; mathematical modelling; statistical inference
01 Pubblicazione su rivista::01a Articolo in rivista
Quantifying heterogeneity to drug response in cancer–stroma kinetics / Alemanno, Francesco; Cavo, Marta; Delle Cavec, Donatella; Fachechi, Alberto; Rizzo, Riccardo; D’Amone, Eliana; Gigli, Giuseppe; Lonardo, Enza; Barra, Adriano; del Mercato, Loretta. - In: PROCEEDINGS OF THE NATIONAL ACADEMY OF SCIENCES OF THE UNITED STATES OF AMERICA. - ISSN 1091-6490. - 120:11(2023), p. 2122352120. [10.1073/pnas.2122352120]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1707709
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