Round 1 Winners!
Proof of Usefulness Report

Open Source Imaging Consortium

Analysis completed on 3/17/2026

+41.8
Proof of Usefulness Score
You're In Business

While the Open Source Imaging Consortium (OSIC) represents a highly valuable real-world initiative for lung disease research, this specific submission appears to be poorly constructed or spam. It contains unverifiable and illogical claims such as 'most people have used my product', 'everyone' as the target audience, and an irrelevant '2500000 marketcap' metric for a 501(c)(3) non-profit. Due to the lack of verifiable traction data and extremely low response quality, it receives a low overall score despite the underlying organization's technical utility.

Ready to Compete for $150k+ in Prizes?

Move this data into a HackerNoon blog draft to become eligible for your share of $150k+ in cash and software prizes

View All Reports

Score Breakdown

Real World Utility+21.25
Audience Reach Impact+2.0
Technical Innovation+12.0
Evidence Of Traction+0
Market Timing Relevance+8.5
Functional Completeness+0.25
Subtotal+44
Usefulness Multiplierx0.95
Final Score+42

Project Details

Project URL
Description
OSIC — a 501(c)(3), not‑for‑profit cooperative effort between academia, industry and patient advocacy groups — was created to enable rapid, open source advances in the detection and diagnosis of idiopathic pulmonary fibrosis (IPF) and other interstitial lung diseases (ILDs), through the use of digital imaging and machine learning. Radiologists, clinicians, computational scientists, and industry competitors from around the world work together to advance digital imaging biomarkers for accurate imaging‑based diagnosis, prognosis and prediction of response to therapy. The partners work in pre‑competitive areas for mutual benefit and, most importantly, the benefit of patients. All OSIC‑created algorithms are made open source for the benefit of patients everywhere. The OSIC Data Repository is the world’s largest and most diverse ILD database. This heterogeneous, anonymized, global repository could be the start of finding digital imaging biomarkers to potentially speed up diagnosis, and aid in better understanding of individual prognosis and response to therapy.

Algorithm Insights

Market Position
Growing utility with room for optimization
User Engagement
Documented reach suggests active user community
Technical Stack
Modern tech stack aligned with sponsor technologies

Recommendations to Increase Usefulness Score

Document User Growth

Provide specific metrics on user acquisition and retention rates

Showcase Revenue Model

Detail sustainable monetization strategy and current revenue streams

Expand Evidence Base

Include testimonials, case studies, and third-party validation

Technical Roadmap

Share development milestones and feature completion timeline