Casper Biotech Clusters
Casper Biotech Clusters
Casper Biotech Clusters
biotechnology clusters
Steven Casper
Associate Professor
Keck Graduate Institute, Claremont, CA
Source: Meldman, M. and E. Romanelli, “Organizational Legacy and Internal Dynamics of Clusters”, working paper, University of Toronto, 2006
US-European comparisons on the
success of biotechnology clusters
140
Size of the company (number of employees)
Bay Area
120
100 Boston
80
60
North Carolina
40 Cambridge
UK
Rheinland
20 Berlin / Brandenburg
Rhein-Neckar
Munich
0 # of firms 50 100 150 200 250
$1.5 B
150
$1.4 B With similar “engines of scientific ideas”
Boston is transforming those ideas into more
pronounced economic value compared to UK
100
UK
Boston
58 Data from 2001
Source: DTI,
51
50 Brookings
40 Institute, Ernest &
32,000 Young, NIH
Boston
Boston 20,000
UK 13 Boston
UK UK
0
Research Public Firms Phase III Products Employees
Perspectives on creating biotechnology
clusters: public policy approach
Governments can orchestrate the development of
biotech
Most biotech firms originate in universities – which
governments control through funding and regulation
Policies can:
Stimulate the commercialization of science
Surround universities with infrastructures designed to
hasten commercial development (e.g. technology parks)
However…
There are many more world-class universities than there
are well-performing clusters
There is very little evidence that government
intervention has directly lead to successful cluster
creation
German experience with “public venture capital”
Frameworks, e.g. Bayh-Dole in USA, are important
Economic sociology approach
Successful high-regions develop social
structures promoting innovation
Social ties and labor market mobility – Saxenian
(1994); Almeida and Kogut (1999):
Studies have documented high inter-firm mobility in
Silicon Valley and a correlation between high mobility
and innovation within clusters – mobility helps
generate a decentralized social structure
Mobility helps explain cluster performance in two
ways:
Innovation: knowledge is diffused through job-hopping
Career management –High inter-firm mobility (implicitly
facilitated through social networks) can dramatically
reduce the career risk of leaving a stable job to work in a
start-up
My current project: a ‘sociometric’
history of California biotech
Study compares social networks linking senior
scientists and managers over the history of
California biotechnology, 1976-2005
Two of the world’s very few successful
biotechnology clusters are in California (SF Bay
Area and San Diego), but also a perhaps
surprising failure case: the Los Angeles area
My previous research focused on public policy
towards technology clusters in Europe, focusing on
UK-Germany comparisons
Modest success of UK/Cambridge biotechnology
cluster
Failure of German technology policy towards
biotechnology
Resulted in book: Creating Silicon Valley in Europe,
Oxford University Press, 2007.
Characteristics of successful technology
clusters – three factors to emphasize
Network
effect: Successful clusters
develop social networks linking
managers, scientists, and financiers
Heterogeneity: They are populated by
individuals and organization with a
diverse range of skills and experiences
Marketplace orientation: They become
“hubs” of activity, with fairly rapid entry
and exit of organizations and individuals
1. Successful clusters develop rich
networks linking individuals and firms
Draws on ideas from Saxenian and other researchers linking
cluster performance to the quality of social ties linking scientists,
engineers, and managers.
Allergan
Amgen
Role of founders
Role of anchor companies
Networks linking founders often form
the “backbone” of technology clusters
2005
1987
Number of Companies LA SD SF
Founded
1 80% (85) 75% (134) 54% (146)
Genentech Amgen
Total number of 25 4
Senior Managers
that worked in
(22 Companies) (3 Companies)
company and went
on to found another
biotech firm
Percent of Senior 16% 3.5%
Managers that (25/158) (4/116)
founded biotech
companies
Academic
Composition of biotech inventor networks, 1995 Biotech
Source: NBER patent database
Device
Industry
Pharma
Within biotech clusters, recruiting a large
population of individuals with industry experience
is crucial to success.
Non-scientists
3. Successful clusters develop a “hub”
or marketplace effect
Source: Casper, 2007; German data from 44 companies located in Munich Heidelberg, Cologne, and Berlin.
Previous jobs of senior managers: San Diego 1982-2003
100
90
80
70 Other Academic
Local Academic
60
Industry
50
Pharma
40 Biotech
30 Local Biotech
20
10
0
82
84
86
88
90
92
94
96
98
00
02
19
19
19
19
19
19
19
19
19
20
20
Note: Very few people came to a senior management position from an academic
background (e.g. as part of the founder network) – this differs from Europe
San Diego Biotech: Agglomeration effects
v. inter-firm mobility
100
90
80
70
60 Agglomeration
Effects
50 (539 new entrants)
40
30
20 Mobility effects
(267 total moves,
10 plus 44 local moves
from universities)
0
1982 1985 1988 1991 1994 1997 2000 2003
Wrap-up: take away points
Social network methods are an important lens to
examine how technology clusters emerge and become
sustainable
Benchmarks and comparisons across clusters are
important and often neglected within cluster research
My research on technology clusters re-affirms the
importance of universities as participants in clusters,
but also stresses the importance of organizing social
networks across “market” participants
Furthermore, the growth of CA biotech regions was
strongly linked to founder and company dynamics
I’m critical of “strong” public policies hoping to
orchestrate the growth of companies within clusters
(again German experience)
Thank you!
Acknowledgements:
KGI REU students: Tiffany Sun (Cornell),
Christina Sher (MIT), Erin Robertson (U.
Chicago), Alana Celia (Linfield), Christine
Tarleton (U. Georgia), David Lee (UCSD), Nick
Szapiro (Swarthmore)
KGI students: Kim Sevilla and Jennifer Boyd
(SD founder networks)
160
140
120
100 SF
SD
80 LA
60
40
20
0
76
78
80
82
84
86
88
90
92
94
96
98
00
02
04
19
19
19
19
19
19
19
19
19
19
19
19
20
20
20
Los
SF Bay Area San Diego Angeles
Total Firms 208 207 32
Exits 63 73 19
IPOs 68 68 4
Number of Public Companies,
California Biotechnology 1976-2005
50
45
40
35
30
San Francisco
25 San Diego
Los Angeles
20
15
10
0
76
78
80
82
84
86
88
90
92
94
96
98
00
02
04
19
19
19
19
19
19
19
19
19
19
19
19
20
20
20