HaemoKBS: A knowledge-based system for real-time, continuous categorisation of adverse reactions in blood recipients

Neurocomputing(2021)

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摘要
This work introduces HaemoKBS, a novel Haemovigilance decision support system for adverse reactions in blood recipients. Machine learning inference and rule-based reasoning were applied to build the underlying decision support models, namely to automatically extract evidence from different types of data included in hospital notifications and incorporate a priori expert knowledge. The ultimate aim is to dynamically learn and improve the reasoning abilities of the system and thus, be able to provide educated recommendations to hospital notifiers along with understandable explanations on the acquired knowledge. Experiments over the records of the Portuguese National Haemovigilance System from the last 10 years demonstrate the practical usefulness of HaemoKBS, which will contribute to a better depiction of the adverse reactions and to flag any incomplete notification enforcing data quality.
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关键词
Haemovigilance,Blood recipients,Adverse reactions,Expert knowledge,Machine learning,Knowledge validity,Knowledge and reasoning adaptation
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