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Predicting clinical response to anticancer drugs using an ex vivo platform that captures tumour heterogeneity

Authors :
Massimo Loda
Ulaganathan Baraneedharan
Saravanan Thiyagarajan
Shivani Agarwal
Rameen Beroukhim
Padhma Radhakrishnan
Govind Babu
Harikrishna Narasimhan
Moni Abraham Kuriakose
Basavaraja U. Shanthappa
Dency D. Pinto
Pradip K. Majumder
Ashok M. Shenoy
Rajagopalan Surendran
Mallikarjun Sundaram
Peleg M. Horowitz
Allen Thayakumar
Arun Prasath
Nilesh Brijwani
Biswanath Majumder
Guillaume Bergthold
Muthu Dhandapani
Shiladitya Sengupta
Harvard University--MIT Division of Health Sciences and Technology
Sengupta, Shiladitya
Source :
Nature Publishing Group, Nature Communications
Publication Year :
2014
Publisher :
Nature Publishing Group, 2014.

Abstract

Predicting clinical response to anticancer drugs remains a major challenge in cancer treatment. Emerging reports indicate that the tumour microenvironment and heterogeneity can limit the predictive power of current biomarker-guided strategies for chemotherapy. Here we report the engineering of personalized tumour ecosystems that contextually conserve the tumour heterogeneity, and phenocopy the tumour microenvironment using tumour explants maintained in defined tumour grade-matched matrix support and autologous patient serum. The functional response of tumour ecosystems, engineered from 109 patients, to anticancer drugs, together with the corresponding clinical outcomes, is used to train a machine learning algorithm; the learned model is then applied to predict the clinical response in an independent validation group of 55 patients, where we achieve 100% sensitivity in predictions while keeping specificity in a desired high range. The tumour ecosystem and algorithm, together termed the CANScript technology, can emerge as a powerful platform for enabling personalized medicine.<br />Efficacy of anticancer treatments vary across patients, imposing a need for personalized approaches. Here the authors show that responsiveness to chemotherapy can be predicted using tumour explant cultures in a patient-matched microenvironment, coupled with a machine-learning algorithm.

Details

Language :
English
Database :
OpenAIRE
Journal :
Nature Publishing Group, Nature Communications
Accession number :
edsair.doi.dedup.....f98ad9c7e8e0eaa899f870754d9b6b97