Towards Medical Knowmetrics: Representing and Computing Medical Knowledge using Semantic Predications as the Knowledge Unit and the Uncertainty as the Knowledge Context
Xiaoying Li, Suyuan Peng, Jian Du

TL;DR
This paper proposes a framework for medical knowmetrics that uses semantic predications as knowledge units and incorporates uncertainty to better measure and analyze medical knowledge evolution and reliability.
Contribution
It introduces an uncertainty-centric approach to evaluate and track medical knowledge claims using SPO triples, addressing the overlooked aspect of knowledge uncertainty in biomedical informatics.
Findings
Uncertainty helps identify research fronts and knowledge claim reliability.
The framework effectively tracks knowledge evolution over time.
Application to lung cancer literature demonstrates practical utility.
Abstract
In China, Prof. Hongzhou Zhao and Zeyuan Liu are the pioneers of the concept "knowledge unit" and "knowmetrics" for measuring knowledge. However, the definition of "computable knowledge object" remains controversial so far in different fields. For example, it is defined as 1) quantitative scientific concept in natural science and engineering, 2) knowledge point in the field of education research, and 3) semantic predications, i.e., Subject-Predicate-Object (SPO) triples in biomedical fields. The Semantic MEDLINE Database (SemMedDB), a high-quality public repository of SPO triples extracted from medical literature, provides a basic data infrastructure for measuring medical knowledge. In general, the study of extracting SPO triples as computable knowledge unit from unstructured scientific text has been overwhelmingly focusing on scientific knowledge per se. Since the SPO triples would be…
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Taxonomy
TopicsTopic Modeling · Explainable Artificial Intelligence (XAI) · Machine Learning in Healthcare
