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Is Cancer Solvable? Towards Efficient and Ethical Biomedical Science

Published online by Cambridge University Press:  01 January 2021

Abstract

Global Cumulative Treatment Analysis (GCTA) is a novel clinical research model combining expert knowledge, and treatment coordination based upon global information-gain, to treat every patient optimally while efficiently searching the vast space that is the realm of cancer research.

Type
Symposium Articles
Copyright
Copyright © American Society of Law, Medicine and Ethics 2019

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