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Decoding cancer heterogeneity: studying patient-specific signaling signatures towards personalized cancer therapy

The past years have witnessed a rapid increase in the amount of large-scale tumor datasets. The challenge has now become to find a way to obtain useful information from these masses of data that will allow to determine which combination of FDA-approved drugs is best suited to treat the specific tumo...

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Autores principales: Flashner-Abramson, Efrat, Vasudevan, Swetha, Adejumobi, Ibukun Adesoji, Sonnenblick, Amir, Kravchenko-Balasha, Nataly
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Ivyspring International Publisher 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6691586/
https://www.ncbi.nlm.nih.gov/pubmed/31410207
http://dx.doi.org/10.7150/thno.31657
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author Flashner-Abramson, Efrat
Vasudevan, Swetha
Adejumobi, Ibukun Adesoji
Sonnenblick, Amir
Kravchenko-Balasha, Nataly
author_facet Flashner-Abramson, Efrat
Vasudevan, Swetha
Adejumobi, Ibukun Adesoji
Sonnenblick, Amir
Kravchenko-Balasha, Nataly
author_sort Flashner-Abramson, Efrat
collection PubMed
description The past years have witnessed a rapid increase in the amount of large-scale tumor datasets. The challenge has now become to find a way to obtain useful information from these masses of data that will allow to determine which combination of FDA-approved drugs is best suited to treat the specific tumor. Various statistical analyses are being developed to extract significant signals from cancer datasets. However, tumors are still being assigned to pre-defined categories (breast luminal A, triple negative, etc.), conceptually contradicting the vast heterogeneity that is known to exist among tumors, and likely overlooking unique tumors that must be addressed and treated individually. We present herein an approach based on information theory that, rather than searches for what makes a tumor similar to other tumors, addresses tumors individually and unbiasedly, and impartially decodes the critical patient-specific molecular network reorganization in every tumor. Methods: Using a large dataset obtained from ~3500 tumors of 11 types we decipher the altered protein network structure in each tumor, namely the patient-specific signaling signature. Each signature can harbor several altered protein subnetworks. We suggest that simultaneous targeting of central proteins from every altered subnetwork is essential to efficiently disturb the altered signaling in each tumor. We experimentally validate our ability to dissect sample-specific signaling signatures and to rationally design personalized drug combinations. Results: We unraveled a surprisingly simple order that underlies the extreme apparent complexity of tumor tissues, demonstrating that only 17 altered protein subnetworks characterize ~3500 tumors of 11 types. Each tumor was described by a specific subset of 1-4 subnetworks out of 17, i.e. a tumor-specific altered signaling signature. We show that the majority of tumor-specific signaling signatures are extremely rare, and are shared by only 5 tumors or less, supporting a personalized, comprehensive study of tumors in order to design the optimal combination therapy for every patient. We validate the results by confirming that the processes identified in the 11 original cancer types characterize patients harboring a different cancer type as well. We show experimentally, using different cancer cell lines, that the individualized combination therapies predicted by us achieved higher rates of killing than the clinically prescribed treatments. Conclusions: We present a new strategy to deal with the inter-tumor heterogeneity and to break down the high complexity of cancer systems into simple, easy to crack, patient-specific signaling signatures that guide the rational design of personalized drug therapies.
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spelling pubmed-66915862019-08-13 Decoding cancer heterogeneity: studying patient-specific signaling signatures towards personalized cancer therapy Flashner-Abramson, Efrat Vasudevan, Swetha Adejumobi, Ibukun Adesoji Sonnenblick, Amir Kravchenko-Balasha, Nataly Theranostics Research Paper The past years have witnessed a rapid increase in the amount of large-scale tumor datasets. The challenge has now become to find a way to obtain useful information from these masses of data that will allow to determine which combination of FDA-approved drugs is best suited to treat the specific tumor. Various statistical analyses are being developed to extract significant signals from cancer datasets. However, tumors are still being assigned to pre-defined categories (breast luminal A, triple negative, etc.), conceptually contradicting the vast heterogeneity that is known to exist among tumors, and likely overlooking unique tumors that must be addressed and treated individually. We present herein an approach based on information theory that, rather than searches for what makes a tumor similar to other tumors, addresses tumors individually and unbiasedly, and impartially decodes the critical patient-specific molecular network reorganization in every tumor. Methods: Using a large dataset obtained from ~3500 tumors of 11 types we decipher the altered protein network structure in each tumor, namely the patient-specific signaling signature. Each signature can harbor several altered protein subnetworks. We suggest that simultaneous targeting of central proteins from every altered subnetwork is essential to efficiently disturb the altered signaling in each tumor. We experimentally validate our ability to dissect sample-specific signaling signatures and to rationally design personalized drug combinations. Results: We unraveled a surprisingly simple order that underlies the extreme apparent complexity of tumor tissues, demonstrating that only 17 altered protein subnetworks characterize ~3500 tumors of 11 types. Each tumor was described by a specific subset of 1-4 subnetworks out of 17, i.e. a tumor-specific altered signaling signature. We show that the majority of tumor-specific signaling signatures are extremely rare, and are shared by only 5 tumors or less, supporting a personalized, comprehensive study of tumors in order to design the optimal combination therapy for every patient. We validate the results by confirming that the processes identified in the 11 original cancer types characterize patients harboring a different cancer type as well. We show experimentally, using different cancer cell lines, that the individualized combination therapies predicted by us achieved higher rates of killing than the clinically prescribed treatments. Conclusions: We present a new strategy to deal with the inter-tumor heterogeneity and to break down the high complexity of cancer systems into simple, easy to crack, patient-specific signaling signatures that guide the rational design of personalized drug therapies. Ivyspring International Publisher 2019-07-09 /pmc/articles/PMC6691586/ /pubmed/31410207 http://dx.doi.org/10.7150/thno.31657 Text en © The author(s) This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/). See http://ivyspring.com/terms for full terms and conditions.
spellingShingle Research Paper
Flashner-Abramson, Efrat
Vasudevan, Swetha
Adejumobi, Ibukun Adesoji
Sonnenblick, Amir
Kravchenko-Balasha, Nataly
Decoding cancer heterogeneity: studying patient-specific signaling signatures towards personalized cancer therapy
title Decoding cancer heterogeneity: studying patient-specific signaling signatures towards personalized cancer therapy
title_full Decoding cancer heterogeneity: studying patient-specific signaling signatures towards personalized cancer therapy
title_fullStr Decoding cancer heterogeneity: studying patient-specific signaling signatures towards personalized cancer therapy
title_full_unstemmed Decoding cancer heterogeneity: studying patient-specific signaling signatures towards personalized cancer therapy
title_short Decoding cancer heterogeneity: studying patient-specific signaling signatures towards personalized cancer therapy
title_sort decoding cancer heterogeneity: studying patient-specific signaling signatures towards personalized cancer therapy
topic Research Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6691586/
https://www.ncbi.nlm.nih.gov/pubmed/31410207
http://dx.doi.org/10.7150/thno.31657
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