Exploiting Latent Semantic Subspaces to Derive Associations for Specific Pharmaceutical Semantics
State-of-the-art approaches in the field of neural embedding models (NEMs) enable progress in the automatic extraction and prediction of semantic relations between important entities like active substances, diseases, and genes. In particular, the prediction property is making them valuable for impor...
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Veröffentlicht in: | Data science and engineering 2020-12, Vol.5 (4), p.333-345 |
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Sprache: | eng |
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Zusammenfassung: | State-of-the-art approaches in the field of neural embedding models (NEMs) enable progress in the automatic extraction and prediction of semantic relations between important entities like active substances, diseases, and genes. In particular, the
prediction property
is making them valuable for important research-related tasks such as hypothesis generation and drug repositioning. A core challenge in the biomedical domain is to have
interpretable
semantics from NEMs that can distinguish, for instance, between the following two situations: (a) drug x
induces
disease y and (b) drug x
treats
disease y. However, NEMs alone cannot distinguish between associations such as treats or induces. Is it possible to develop a model to learn a
latent representation
from the NEMs capable of such disambiguation? To what extent do we need domain knowledge to succeed in the task? In this paper, we answer both questions and show that our proposed approach not only succeeds in the
disambiguation
task but also advances current growing research efforts to find real predictions using a sophisticated retrospective analysis. Furthermore, we investigate which type of associations is generally better contextualized and therefore probably has a stronger influence in our disambiguation task. In this context, we present an approach to extract an interpretable
latent semantic subspace
from the original embedding space in which
therapeutic
drug–disease associations are more likely . |
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ISSN: | 2364-1185 2364-1541 |
DOI: | 10.1007/s41019-020-00140-2 |