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Forbes Healthcare Summit
2014-12-03    
All Day
Forbes Healthcare Summit: Smart Data Transforming Lives How big will the data get? This year we may collect more data about the human body than [...]
Customer Analytics & Engagement in Health Insurance
2014-12-04 - 2014-12-05    
All Day
Using Data Analytics, Product Experience & Innovation to Build a Profitable Customer-Centric Strategy Takeaway business ROI: Drive business value with customer analytics: learn what every business [...]
mHealth Summit
DECEMBER 7-11, 2014 The mHealth Summit, the largest event of its kind, convenes a diverse international delegation to explore the limits of mobile and connected [...]
The 26th Annual IHI National Forum
Overview ​2014 marks the 26th anniversary of an event that has shaped the course of health care quality in profound, enduring ways — the Annual [...]
Why A Risk Assessment is NOT Enough
2014-12-09    
2:00 pm - 3:30 pm
A common misconception is that  “A risk assessment makes me HIPAA compliant” Sadly this thought can cost your practice more than taking no action at [...]
iHT2 Health IT Summit
2014-12-10 - 2014-12-11    
All Day
Each year, the Institute hosts a series of events & programs which promote improvements in the quality, safety, and efficiency of health care through information technology [...]
Design a premium health insurance plan that engages customers, retains subscribers and understands behaviors
2014-12-16    
11:30 am - 12:30 pm
Wed, Dec 17, 2014 1:00 AM - 2:00 AM IST Join our webinar with John Mills - UPMC, Tim Gilchrist - Columbia University HITLAP, and [...]
Events on 2014-12-03
Forbes Healthcare Summit
3 Dec 14
New York City
Events on 2014-12-04
Events on 2014-12-07
mHealth Summit
7 Dec 14
Washington
Events on 2014-12-09
Events on 2014-12-10
iHT2 Health IT Summit
10 Dec 14
Houston
Latest News

Using graphs to develop a deeper understanding of COVID-19

Using graphs to develop a deeper understanding of COVID-19

For more than three years, at DZD (Deutsches Zentrum für Diabetesforschung), the German Centre for Diabetes Research, we have been using graph software to help our main research mission, looking at diabetes. Now, we are using the same software to build a new knowledge graph to help fight COVID-19.

At the DZD we’ve been collaborating with data management software and services firms Kaiser & Preusse, yWorks, ProDyna, Structr, Neo4j, Linkurious, derivo GmbH, Graphileon, S-cubed, Helomics as well as several volunteers to set up the COVID-19 graph database, which connects data from a range of well established public sources and links them in a searchable database.

The initiative is starting to help researchers and scientists find their way through the 51,000-plus publications on the disease and related disease areas such as SARS, over 32,000 relevant patents, and allow them to query data on a gene or protein, clinical trial, drug and create hypotheses. While researchers know a lot of data about genes, proteins and other entities in their particular field, they are normally not aware of other related research in other fields, and no one can read that many papers and assimilate all that information, especially if we want to create effective COVID-19 regimes and get to a vaccine as quickly as possible.

The database allows us to structure this data and to connect it to the fundamental things from biology — genes, the proteins and their functions. It’s not so easy to find that information in different databases, because usually you have to carry out searches on the patent database, the publication database and the gene database, and then make the connections. Usually researchers are creating Excel sheets, a list of identifiers and then they go to the database and then type in these identifiers, to get further information. But this yields limited results because of the lack of connections and is labour intensive, error prone, extremely inefficient and slow.

We have also just added a clinical trials database, providing information on the kinds of COVID-19 clinical trials available, making clear typical inclusion criteria like is there a specific population that is tested for this clinical trial, such as people under a certain age or a risk group, like diabetic patients? This is valuable information that is usually scattered across different databases, and now we can bring it together and link it with everything else.

Why graph technology?

Our first encounter with graph technology at DZD was sparked by a need three years ago to create a metadata repository of expertise and experts across not just the DZD but also related centres, a task that encompassed 500 researchers and 10 university hospitals spread across Germany.

It was obvious that everything we wanted to be able to look at was connected, but heterogeneous on a data level, and that graph technology would be the way to tackle it. We worked with our graph database technology partner on this and on the coronavirus project, Neo4j, to create an internal tool called DZDconnect which sits as a layer over relational databases linking different DZD systems and data feeds.

A significant early insight: ACE2

An early breakthrough is around ACE2, the host cell receptor responsible for mediating infection by SARS-CoV-2, the novel coronavirus responsible for COVID-19. Interestingly, one might assume that the receptor ACE2 is just active lung tissue, because one of the most vulnerable groups is the one with lung disease, but it turns out that of 55 tissues around the body, the receptor is active in 53 of them, which means this receptor is active in almost every tissue of your body. So any vaccine will need to be able to fight the virus in all these different tissue areas.

If you are already researching COVID-19, you’ll know that ACE2 is very relevant, but the majority of researchers do not know these very specific details our research show. Surfacing details like this via our use of data will, we hope, prove very useful in the race to find a vaccine.

Source: https://www.healthcareitnews.com/blog/europe/using-graphs-develop-deeper-understanding-covid-19