2021
DOI: 10.1101/2021.11.15.21266351
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Bayesian Logical Neural Networks for Human-Centered Applications in Medicine

Abstract: Medicine is characterized by its inherent ambiguity, i.e., the difficulty to identify and obtain exact outcomes from available data. Regarding this problem, electronic Health Records (EHRs) aim to avoid imprecisions in the data recording, for instance by its recording in an automatic way or by the integration of data that is both readable by humans and machines. However, the inherent biology and physiological processes introduce a constant epistemic uncertainty, which has a deep implication in the way the cond… Show more

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Cited by 2 publications
(1 citation statement)
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“…The proposed method was tested on EHR of heart failure, depression, and diabetes to estimate uncertainty. Diaz et al [106] also used a Bayesian method with a logical neural network to focus on individualbased prediction on EHR. The logical neural network has the characteristic of combining both classical neural networks for the learning process and symbolic logic for identifying knowledge and reasoning.…”
Section: Electronic Health Record (Ehr)mentioning
confidence: 99%
“…The proposed method was tested on EHR of heart failure, depression, and diabetes to estimate uncertainty. Diaz et al [106] also used a Bayesian method with a logical neural network to focus on individualbased prediction on EHR. The logical neural network has the characteristic of combining both classical neural networks for the learning process and symbolic logic for identifying knowledge and reasoning.…”
Section: Electronic Health Record (Ehr)mentioning
confidence: 99%