Big data and models: Are they really useful in disease
management?
J.F. LoweIntegrated Food Animal Management Systems
Department of Veterinary Clinical Medicine
University of Illinois
What is in an engineer’s head?Measur
e• Inputs and
outputs
Model• Understand
how things are related
Fix • Implement solution
Data: The Hidden Key to Today’s Agriculture!
Small Data –
Why?
Big Data – What!
Opportunity For Synergy
Big Data (via Wikipedia)
• Amazon.com – millions of back-end operations every day, as well as queries from more than half a million third-party sellers.• Walmart – more than 1 million customer transactions every hour• databases w/ more than 2.5 petabytes (2560 terabytes) of data• 167 times the information contained in all the books in the US Library of
Congress.
• Facebook handles 50 billion photos from its user base.• Windermere Real Estate uses anonymous GPS signals from nearly
100 million drivers to help new home buyers determine commute times. • Volume of business data worldwide doubles every 1.2 years.
The underlying view of big data?Society will need to shed some of its
obsession for causality in exchange for simple correlations:
not knowing why but only what.
The Truth about Nutrition• The Japanese eat very little fat • suffer fewer heart attacks than do the British or Americans
• The French eat a lot of fat • suffer fewer heart attacks than do the British or Americans
• The Italians drink excessive amounts of red wine • suffer fewer heart attacks than do the British or Americans
• The Japanese drink very little red wine • suffer fewer heart attacks than do the British or Americans
• The Germans drink a lot of beer and eat lots of sausages • suffer fewer heart attacks than do the British or Americans
The Truth about NutritionSO…………..
EAT what you want,Apparently it’s
SPEAKING ENGLISHthat kills you!
So how do we leverage big data to
improve animal health?
Well we are doing it!!
Area Regional Control (ARC) projects!!
BUT WE COULD BE BETTER!!!
So where are the gaps?• They are great at coordinating, at a local level, vaccination, pig
movement and herd elimination strategies to improve disease control.
• One of the weakness is that they do not provide a broad context for current and potential sources of new viruses to that region.
• Can even bigger data solve that problem?
The challenges are scale and lack of uniformity!
Collaboration• building
collaborations to address complex, interrelated problems
Aggregation• aggregating
diverse data streams into meaningful data sets
Analysis• analyzing data
sets using robust tools
Synthesis• synthesizing
information into novel solutions
Well we are tying to solve those issues
Develop the data collection methods, infrastructure and collaborations between producers, veterinarians, and technical experts to facilitate dynamic, real time estimates of the risk of disease introduction into a pig farm to facilitate the development and deployment of the optimum prevention strategies for herds, local production ecosystems and regional production ecosystems
2127 PRRS ORF5 sequences 783 IAV HA sequences
Participation – 572 sites across the Midwest
• Phylogenic analysis rooted to VR-2332
• Excludes all vaccine like viruses
• Colors are linages that are >2% different at the nucleotide level
Expansion of a 1-7-4 like viral lineage outbreak over time and multiple states
7/1/2014 7/1/2015 7/1/2016
Subset of closely related 1-7-4 like linages that emerged in 2014, colored by production system/group
To have understanding you have to know WHAT! Before you can know WHY!!
Society will need to shed some of its obsession for causality in exchange for
simple correlations: not knowing why but only what.
So if we know WHAT with big
data, how do we drive
change?
What is in an engineer’s head?Measur
e• Inputs and
outputs
Model• Understand
how things are related
Fix • Implement solution
Big and Small data
Transportation, PRRS and PEDV: An example
model
Background• It is common in the US swine industry to move pigs to
harvest plants on trucks/trailers (vehicles) that have not been cleaned and disinfected since the last load of pigs. • This practice was adopted with the implementation of all
in- all out (AIAO) growing pig sites • The risk of transport associated spread is exacerbated by
the fact that transport vehicles are often shared between different pig owners
Measure • Inputs and outputs
Model• Understand
how things are related
Fix • Implement solution
One positive trailer in means 1.7 positive trailers at exit
PlantContaminated
at entryContaminated
at PlantContamination
RatioA 2.25% 8.05% 3.58B 7.00% 4.30% 0.61C 10.84% 10.81% 1.00D 2.00% 0.00% 0.00E 14.56% 3.08% 0.62G 3.00% 1.03% 0.34
All 5.98% 4.31% 0.72
Lowe et al, EID 2014
Measure • Inputs and outputs
Model• Understand
how things are related
Fix • Implement solution
More contact increases risk Measure • Inputs and outputs
Model• Understand
how things are related
Fix • Implement solution
More virus increases risk Measure • Inputs and outputs
Model• Understand
how things are related
Fix • Implement solution
So what do we do about it????1. How do we change what we do at the plant to minimize
the risk of PEDV (or PRRS or XYZ) transmission between sites via the packing plant?
2. We are not going to wash trucks… so what else is there that we could do?
3. We don’t have all day… 5-15 minutes between trucks at the same dock.
4. We don’t an unlimited budget5. And by the way… no to plants are alike.
Measure • Inputs and outputs
Model• Understand
how things are related
Fix • Implement solution
The Punchline• There is NO substitution for washing and drying trucks and all the
things on the trucks that come back from buying stations or harvest plants. • Everything that I am going to tell you today is a “less bad” approach
than doing nothing!!
•MORE POOP MATTERS!!!!!!
Steppin’ in the poop!
Does Temperature in the Hour After Plant Contact Change the risk of PEDV Transmission?
Dock Before Transmission
Trailer Time 0 Trailer Time 60262728293031
4°C 15°C 28°C All
Mea
n CT
Val
ue (L
og2
Tran
sfor
med
) NO!
Measure • Inputs and outputs
Model• Understand
how things are related
Fix • Implement solution
Does Temperature of the Dock Change the risk of PEDV Transmission?
Trailer/0 Trailer/5 Trailer/10 Trailer/60 Dock/50%
20%
40%
60%
80%
100%
25C 35C
NO!
Measure • Inputs and outputs
Model• Understand
how things are related
Fix • Implement solution
Does UV light on the Dock Change the risk of PEDV Transmission?
Trailer/0 Trailer/5 Trailer/10 Trailer/60 Dock/50%
20%
40%
60%
80%
100%
Lo UV Hi UV
NO!
Measure • Inputs and outputs
Model• Understand
how things are related
Fix • Implement solution
Does Removing Gross Contamination on the Dock Change the risk of PEDV Transmission?
Trailer/0 Trailer/5 Trailer/10 Trailer/60 Dock/50%
20%
40%
60%
80%
100%
Non-Scraped Scraped
YES!
Measure • Inputs and outputs
Model• Understand
how things are related
Fix • Implement solution
Does Dock Surface Change the risk of PEDV Transmission when physically debulking ?
Prior 0 5 10 200%
25%
50%
75%
100%
CONCRETE DOCK CONCRETE TRAILERPLASTIC DOCK PLASTIC TRAILER
Time Post Treatment
Perc
ent P
CR P
os
N=4 replicates
Measure • Inputs and outputs
Model• Understand
how things are related
Fix • Implement solution
NO!
Conclusions and Next Steps• Scraping of manure at the dock between trucks may be an adequate
way to lower the risk of PEDV transmission below a threshold to propagate an outbreak.• It appears to work for other diseases (PRRS) – broader utility for the
next “unknown”• We have to model how much of a reduction is needed to minimize
the propagation of an outbreak.
Measure • Inputs and outputs
Model• Understand
how things are related
Fix • Implement solution
Take homes:• In integrated, complex systems thinking and acting like an
engineer has value. • We have to know WHAT is happening!• BIG DATA can help us do that!• But so can “SMALL data”• But we have to understand HOW the process works in its native state
• Investigating multiple solutions at a small scale (aka a model) can be useful for understanding the robustness of solutions• Models are better at understanding solutions than “telling us how the
system works”
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