pre-empting the emergence of zoonoses by understanding their socio-ecology

50
Peter Daszak EcoHealth Alliance, New York, USA www.ecohealthalliance.org Pre-empting the emergence of zoonoses by understanding their socio-ecology

Upload: driversofdisease

Post on 14-Apr-2017

539 views

Category:

Health & Medicine


1 download

TRANSCRIPT

Page 1: Pre-empting the emergence of zoonoses by understanding their socio-ecology

Peter DaszakEcoHealth Alliance, New York, USAwww.ecohealthalliance.org

Pre-empting the emergence of zoonoses by understanding their socio-ecology

Page 2: Pre-empting the emergence of zoonoses by understanding their socio-ecology

Economic Impact of Emerging Diseases

Page 3: Pre-empting the emergence of zoonoses by understanding their socio-ecology

Temporal patterns in EID events

Jones et al. 2008

• EID events have increased over time, correcting for reporter bias (GLMP,JID F = 86.4, p <0.001, d.f.=57)

• ~5 new EIDs each year

• ~3 new Zoonoses each year

• Zoonotic EIDs from wildlife reach highest proportion in recent decade

Page 4: Pre-empting the emergence of zoonoses by understanding their socio-ecology

Optimal Stopping Problem

Pike et al. PNAS 2014

Page 5: Pre-empting the emergence of zoonoses by understanding their socio-ecology

Simulation resultsCritical Damage Level, D*, Mean EID Event Trigger, Z*, Expected First-Passage Time, t*, option value, OV, and Expected Net Present Cost

Conclusion: Mitigating pandemics is cost-effective (10-fold ROI), but we need to act rapidly (34 yrs) to reduce underlying drivers of spillover and spread.

Policy option A Policy option B Policy option C Policy option D 𝑚2 = 2.8857 𝑚2 = 2.5651 𝑚2 = 1.9238 𝑚2 = 0.8016 K = $56.3B K = $112.5B K = $225.0B K = $562.5B D* $17.1B $20.0B $25.7B $47.6B Z* 237.74 252.61 276.90 336.64 t* 3 8 15 34 OV $98.1B $156.2 $215.2 $215.1 E* $808.7 $790.0 $712.4 $743.4

Pike et al. PNAS 2014

Page 6: Pre-empting the emergence of zoonoses by understanding their socio-ecology
Page 7: Pre-empting the emergence of zoonoses by understanding their socio-ecology

Emerging Zoonotic Disease Hotspots I

Jones et al. 2008, Nature

• ~3 new zoonoses/year

• Corrected for sampling bias (research effort)

• Two variables predicted zoonotic disease emergence from wildlife:• Human population density• Mammal species diversity

Page 8: Pre-empting the emergence of zoonoses by understanding their socio-ecology

Pre-empt or combat, at their source, the first stage of emergence of zoonotic diseases

Page 9: Pre-empting the emergence of zoonoses by understanding their socio-ecology

Which species will the next pandemic emerge from?

Page 10: Pre-empting the emergence of zoonoses by understanding their socio-ecology
Page 11: Pre-empting the emergence of zoonoses by understanding their socio-ecology

VIRUS-INDEPENDENT TRAITS

RISK OF SPILLOVERVIRUS-SPECIFIC TRAITS+ =

Geographic hotspots for emergence

Host species traits, geographic range, relatedness

Epidemiological/contact interface

Viral prevalence in host

Host abundance

% pos

Host breadth/plasticity

Ranking risk for zoonotic potential of novel viruses

Proportion known zoonoses in virus family

Phylogenetic relatedness to known zoonoses

Other virus-specific traits

Page 12: Pre-empting the emergence of zoonoses by understanding their socio-ecology
Page 13: Pre-empting the emergence of zoonoses by understanding their socio-ecology
Page 14: Pre-empting the emergence of zoonoses by understanding their socio-ecology

SARS-like CoV locate within SARS cluster

P1b

S

Page 15: Pre-empting the emergence of zoonoses by understanding their socio-ecology

Li et al. (2005) Science 310: 676-679

Page 16: Pre-empting the emergence of zoonoses by understanding their socio-ecology

Ge et al. (2013) Nature

Human SARS CoV Tor2 Human SARS CoV BJ01 Human SARS CoV GZ02 Civet SARS CoV SZ3 Bat SL-CoV Rs_4087-1 Bat SL-CoV Rs_4110 Bat SL-CoV Rs_4090 Bat SL-CoV Rs_4079 Bat SL-CoV Rs_3367 Bat SL-CoV Rs_4105

Bat SL-CoV Rs_SHC014 Bat SL-CoV Rs_4084 Bat SL-CoV Rs_3267-1 Bat SL-CoV Rs_3262-1 Bat SL-CoV Rs_3369

Bat SL-CoV Rf1 Bat SL-CoV Rs_4075 Bat SL-CoV Rs_4092

Bat SL-CoV Rs_4085 Bat SL-CoV Rs_3262-2 Bat SL-CoV Rs_3267-2 Bat SL-CoV HKU3-1

Bat SL-CoV Rm1 Bat SL-CoV Rp3 Bat SL-CoV Rs_4108 Bat SL-CoV Rs672 Bat SL-CoV Rs_4081 Bat SL-CoV Rs_4096 Bat SL-CoV Rs_4087-2 Bat Sl-CoV Rs_4097 Bat SL-CoV Rs_4080

Bat SARS-related CoV BM48 Bat CoV HKU9-1

68

99

9485

98

80

92

64

97

99

51

95

86

*

*

Page 17: Pre-empting the emergence of zoonoses by understanding their socio-ecology

0 200 400 600 800 1000 1200 1400 1600 18000

1

2

3

4

5

Discovery Curve for CoV in Pteropus Bats (Bangladesh)

I

II

IIIIVCoronavirus

Positive = 3.7%

Page 18: Pre-empting the emergence of zoonoses by understanding their socio-ecology

Anthony et al. mBio 2013

• ~58 unknown viruses in Pteropus giganteus• ~320,000 unknown viruses in all mammals; ~72,152 in the 1,244 known bat species • One-off cost to identify 100% = $6.8 Billion• One-off cost to identify 85% = $1.4 Billion ($140 million p.a. over 10 yrs)• Cost of SARS = $10-50 Billion• ~250 bat viruses in last 5 years, 530 total = 7% of the estimated #

Page 19: Pre-empting the emergence of zoonoses by understanding their socio-ecology
Page 20: Pre-empting the emergence of zoonoses by understanding their socio-ecology

relative influence

(%)std. dev.

population 27.99 2.99mammal diversity 19.84 3.30

change: pop 13.54 1.54change: pasture 11.71 1.30

urban extent 9.77 1.62

Hotspots II – new variables and methods

Page 21: Pre-empting the emergence of zoonoses by understanding their socio-ecology

Hotspots II – influence of each variable

Allen et al., in prep

Page 22: Pre-empting the emergence of zoonoses by understanding their socio-ecology
Page 23: Pre-empting the emergence of zoonoses by understanding their socio-ecology

Human-Camel Interface

Photo: K.J. Olival

http://www.efratnakash.com

Page 24: Pre-empting the emergence of zoonoses by understanding their socio-ecology

• Modeled distribution of MERS-CoV bats

• Camel production (FAO)

• Modeled risk of MERS spillover (horn of Africa)

Where did MERS originate?

Page 25: Pre-empting the emergence of zoonoses by understanding their socio-ecology

Unidentified MERS-CoV cases:

Page 26: Pre-empting the emergence of zoonoses by understanding their socio-ecology

USAID PREDICT-2

AfricaCameroonGabonDR CongoRepublic of CongoRwandaTanzaniaUgandaLiberiaGuineaSierra LeoneKenyaEthiopiaEgyptJordanSudan & S. Sudan

AsiaBangladeshCambodiaChinaLao PDRN. IndiaIndonesiaNepalMalaysiaMyanmarThailandVietnam

Geographic Focus

Page 27: Pre-empting the emergence of zoonoses by understanding their socio-ecology

• Linking specific behaviors and practices with evidence of spillover – Identify relationships between exposure and outcome– What are the mechanisms of spillover transmission

• Understand the communities and context within which risk occurs– What are the circumstances that increase or decrease risk

PREDICT 2: Behavioral Research

Page 28: Pre-empting the emergence of zoonoses by understanding their socio-ecology

Observational Research– Introduction of research to target community – Identify individuals of power and influence/barriers to access– Evaluation of settings of possible disease transmission from animals to humans– Does not require IRB approval to conduct

Page 29: Pre-empting the emergence of zoonoses by understanding their socio-ecology

Focus group discussions

Carefully planned and guided discussion Captures ideas that people agree on in public Targets ‘experts’ with regular animal contact Requires IRB approval and informed consent

Page 30: Pre-empting the emergence of zoonoses by understanding their socio-ecology

Ethnographic interviews – One-to-one semi-structured interviews– Learn about daily and household life – Assess privately held beliefs and experiences– Requires IRB approval and informed consent

Page 31: Pre-empting the emergence of zoonoses by understanding their socio-ecology

Uganda Malaysia BrazilDEEP FOREST

Pristine Intermediate Urban

• Systematic animal sampling• Broad viral screening• Human behavioral data collection

Page 32: Pre-empting the emergence of zoonoses by understanding their socio-ecology

Mapping human-animal contact from behavioral surveys

A) Raw Landscape Development Intensity (LDI) Index (0=pristine, 1=highly disturbed)

B) Reclassified LDI (P=Pristine, I=Intermediate, D=disturbed)

C) Percentage of respondents reporting wildlife consumption

D) Relative human-animal contact rate

Brazil Malaysia Uganda

Page 33: Pre-empting the emergence of zoonoses by understanding their socio-ecology

Wildlife Trade in China

Page 34: Pre-empting the emergence of zoonoses by understanding their socio-ecology

Presumed medicinal properties

• Reduces blood viscosity• Anti-inflammatory

Page 35: Pre-empting the emergence of zoonoses by understanding their socio-ecology

Questionnaire ImplementationField Investigation Phase Human investigation

Page 36: Pre-empting the emergence of zoonoses by understanding their socio-ecology

oropharyngeal swab sample collection

Field Investigation Phase Human investigation

Page 37: Pre-empting the emergence of zoonoses by understanding their socio-ecology

Field Investigation Phase

Blood sample collectionHuman investigation

Page 38: Pre-empting the emergence of zoonoses by understanding their socio-ecology
Page 39: Pre-empting the emergence of zoonoses by understanding their socio-ecology
Page 40: Pre-empting the emergence of zoonoses by understanding their socio-ecology
Page 41: Pre-empting the emergence of zoonoses by understanding their socio-ecology

Valuing Ecosystem ServicesIf we convert forest, diseases emerge.

These diseases cost billions of dollars annually.

Can we include these costs in decision making to reduce deforestation?

Page 42: Pre-empting the emergence of zoonoses by understanding their socio-ecology
Page 43: Pre-empting the emergence of zoonoses by understanding their socio-ecology

Conversion: Benefits

Benefits• Meet global demand for

goods and services

• Generate household income

• Regional/national economic growth

Page 44: Pre-empting the emergence of zoonoses by understanding their socio-ecology

Costs• Converting land costs money - clearing forest- cultivating field

• Maintaining land productivity- fertilizer- irrigation

• Lost ecosystem benefits- Abiotic and biotic services- Naturally derived products- Exposure to disease

Conversion: Costs

Page 45: Pre-empting the emergence of zoonoses by understanding their socio-ecology

How much to convert?

0

benefit of converting a little more land

cost of converting a little more land

no difference between benefits and costs

Page 46: Pre-empting the emergence of zoonoses by understanding their socio-ecology

deforestation and malaria in Sabah, MYN

umber of m

alaria cases

Deforested area in Sabah – Malaysia (red) and the number of cases of Malaria in blue (2001 – 2013) (Zambrana-Torrelio unpub. data)

Similar trends observed in Brazil (Olson et al. 2010) and Indonesia (Garg 2015)

Page 47: Pre-empting the emergence of zoonoses by understanding their socio-ecology

Simulations: Sabah

ES

ES + H

Page 48: Pre-empting the emergence of zoonoses by understanding their socio-ecology

Collaborators• 100+ partners in 24 countries

• Wuhan Inst. Virol.: Zhengli Shi, Ben Hu, Xingye Ge

• Yunnan CDC: Yunzhe Zhang

• Wuhan CDC: Shiyue Li

• Columbia Univ. (Ian Lipkin, Simon Anthony)

• UC Davis, Metabiota, WCS, Smithsonian

• Universiti Malaysia Sabah, Sabah Wildlife Dept.

Funders

Page 49: Pre-empting the emergence of zoonoses by understanding their socio-ecology
Page 50: Pre-empting the emergence of zoonoses by understanding their socio-ecology