InHealth Ventures

Type

Venture Capital

Status

Active

Location

Greater London, United Kingdom

Total investments

19

Average round size

9M

Portfolio companies

13

Rounds per year

2.71

Lead investments

2

Follow on index

0.32

Stages of investment
Venture
Areas of investment
SoftwareInformation TechnologyArtificial IntelligenceMachine LearningHealth CareHospitalMedical DeviceMedicalInformation and Communications Technology (ICT)Natural Language Processing

Investor highlights

Industry focus
HealthcareBiotech/Life Sciences
Stage focus
SeedSeries APre-SeedSeries B
Geo focus
Generalist
Check size
500K — 3M

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Investments analytics

Analytics

Total investments
19
Lead investments
2
Rounds per year
2.71
Follow on index
0.32
Investments by industry
  • Health Care (18)
  • Medical (6)
  • Software (4)
  • Hospital (3)
  • Artificial Intelligence (3)
  • Show 20 more
Investments by region
  • United States (10)
  • United Kingdom (7)
  • India (2)
Peak activity year
2021

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Quantitative data

Avg. startup age at the time of investment
5
Group Appearance index
0.95

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Latest deals

Company name Deal date Industry Deal stage Deal size Location
Airnguru S.A. 01 Aug 2018 Software, Information Technology, SaaS, Air Transportation Seed 848K Region Metropolitana, Santiago, Chile
Alyve Health 18 Jun 2024 Early Stage Venture 5M Maharashtra, Mumbai, India
Laudio 12 Dec 2019 Health Care, SaaS Early Stage Venture 7M United States, Massachusetts, Boston

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