Javascript must be enabled to continue!
KGen: a knowledge graph generator from biomedical scientific literature
View through CrossRef
Abstract
Background
Knowledge is often produced from data generated in scientific investigations. An ever-growing number of scientific studies in several domains result into a massive amount of data, from which obtaining new knowledge requires computational help. For example, Alzheimer’s Disease, a life-threatening degenerative disease that is not yet curable. As the scientific community strives to better understand it and find a cure, great amounts of data have been generated, and new knowledge can be produced. A proper representation of such knowledge brings great benefits to researchers, to the scientific community, and consequently, to society.
Methods
In this article, we study and evaluate a semi-automatic method that generates knowledge graphs (KGs) from biomedical texts in the scientific literature. Our solution explores natural language processing techniques with the aim of extracting and representing scientific literature knowledge encoded in KGs. Our method links entities and relations represented in KGs to concepts from existing biomedical ontologies available on the Web. We demonstrate the effectiveness of our method by generating KGs from unstructured texts obtained from a set of abstracts taken from scientific papers on the Alzheimer’s Disease. We involve physicians to compare our extracted triples from their manual extraction via their analysis of the abstracts. The evaluation further concerned a qualitative analysis by the physicians of the generated KGs with our software tool.
Results
The experimental results indicate the quality of the generated KGs. The proposed method extracts a great amount of triples, showing the effectiveness of our rule-based method employed in the identification of relations in texts. In addition, ontology links are successfully obtained, which demonstrates the effectiveness of the ontology linking method proposed in this investigation.
Conclusions
We demonstrate that our proposal is effective on building ontology-linked KGs representing the knowledge obtained from biomedical scientific texts. Such representation can add value to the research in various domains, enabling researchers to compare the occurrence of concepts from different studies. The KGs generated may pave the way to potential proposal of new theories based on data analysis to advance the state of the art in their research domains.
Springer Science and Business Media LLC
Title: KGen: a knowledge graph generator from biomedical scientific literature
Description:
Abstract
Background
Knowledge is often produced from data generated in scientific investigations.
An ever-growing number of scientific studies in several domains result into a massive amount of data, from which obtaining new knowledge requires computational help.
For example, Alzheimer’s Disease, a life-threatening degenerative disease that is not yet curable.
As the scientific community strives to better understand it and find a cure, great amounts of data have been generated, and new knowledge can be produced.
A proper representation of such knowledge brings great benefits to researchers, to the scientific community, and consequently, to society.
Methods
In this article, we study and evaluate a semi-automatic method that generates knowledge graphs (KGs) from biomedical texts in the scientific literature.
Our solution explores natural language processing techniques with the aim of extracting and representing scientific literature knowledge encoded in KGs.
Our method links entities and relations represented in KGs to concepts from existing biomedical ontologies available on the Web.
We demonstrate the effectiveness of our method by generating KGs from unstructured texts obtained from a set of abstracts taken from scientific papers on the Alzheimer’s Disease.
We involve physicians to compare our extracted triples from their manual extraction via their analysis of the abstracts.
The evaluation further concerned a qualitative analysis by the physicians of the generated KGs with our software tool.
Results
The experimental results indicate the quality of the generated KGs.
The proposed method extracts a great amount of triples, showing the effectiveness of our rule-based method employed in the identification of relations in texts.
In addition, ontology links are successfully obtained, which demonstrates the effectiveness of the ontology linking method proposed in this investigation.
Conclusions
We demonstrate that our proposal is effective on building ontology-linked KGs representing the knowledge obtained from biomedical scientific texts.
Such representation can add value to the research in various domains, enabling researchers to compare the occurrence of concepts from different studies.
The KGs generated may pave the way to potential proposal of new theories based on data analysis to advance the state of the art in their research domains.
Related Results
Structural and electronic properties of Genm− and KGen− Zintl anions (n=3–10;m=2–4) from density functional theory
Structural and electronic properties of Genm− and KGen− Zintl anions (n=3–10;m=2–4) from density functional theory
Structural optimizations and frequency analyses have been performed on free Genm− and KGen− (n=3–10, m=2–4) Zintl anions and ionization potentials and electron affinities calculate...
Evaluating the Science to Inform the Physical Activity Guidelines for Americans Midcourse Report
Evaluating the Science to Inform the Physical Activity Guidelines for Americans Midcourse Report
Abstract
The Physical Activity Guidelines for Americans (Guidelines) advises older adults to be as active as possible. Yet, despite the well documented benefits of physical a...
Primerjalna književnost na prelomu tisočletja
Primerjalna književnost na prelomu tisočletja
In a comprehensive and at times critical manner, this volume seeks to shed light on the development of events in Western (i.e., European and North American) comparative literature ...
Analisa Pengaruh Tegangan Harmonik Terhadap Regulasi Tegangan Eksitasi Generator Satu Fasa
Analisa Pengaruh Tegangan Harmonik Terhadap Regulasi Tegangan Eksitasi Generator Satu Fasa
Esensinya setiap generator listrik satu fasa maupun tiga fasa telah dilengkapi dengan sistem eksitasi. Sistem eksitasi generator ada tiga, yaitu sistem eksitasi statis, dinamis, da...
Using Kgen to Generate Cross‐Verified Apparent Equilibrium Constants (K
∗
’s) for Palaeoseawater Carbonate Chemistry
Using Kgen to Generate Cross‐Verified Apparent Equilibrium Constants (K
∗
’s) for Palaeoseawater Carbonate Chemistry
Abstract
Quantification of palaeo pH and palaeo CO
2
from marine proxies requires the use of apparent...
Abstract 902: Explainable AI: Graph machine learning for response prediction and biomarker discovery
Abstract 902: Explainable AI: Graph machine learning for response prediction and biomarker discovery
Abstract
Accurately predicting drug sensitivity and understanding what is driving it are major challenges in drug discovery. Graphs are a natural framework for captu...
STUDI ANALISIS EFISIENSI STEAM TURBINE GENERATOR PADA BAGIAN ASAM SULFAT DAN UTILITAS DEPARTEMEN PRODUKSI IIIB PT PETROKIMIA GRESIK
STUDI ANALISIS EFISIENSI STEAM TURBINE GENERATOR PADA BAGIAN ASAM SULFAT DAN UTILITAS DEPARTEMEN PRODUKSI IIIB PT PETROKIMIA GRESIK
Sejumlah energi penggerak peralatan proses sangat diperlukan dalam proses produksi di seluruh pabrik yang ada pada PT Petrokimia Gresik. Departemen Produksi IIIB memiliki unit util...
Big Data as the Foundation of a Novel Training Platform for Biomedical Researchers in Qatar
Big Data as the Foundation of a Novel Training Platform for Biomedical Researchers in Qatar
BackgroundTechnological breakthroughs witnessed over the past decade have led to an explosive increase in molecular profiling capabilities. This has ushered a new “data-rich era” f...

