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2020
DOI: 10.21203/rs.3.rs-107700/v1
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Health improvement framework for planning actionable treatment process using surrogate Bayesian model

Abstract: Clinical decision making regarding treatments based on personal characteristics leads to effective health improvements. Machine learning (ML) has been the primary concern of diagnosis support according to comprehensive patient information. However, the remaining prominent issue is the development of objective treatment processes in clinical situations. This study proposes a novel framework to plan treatment processes in a data-driven manner. A key point of the framework is the evaluation of the "actionability"… Show more

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