• Skip to main content
  • Skip to secondary menu
  • Skip to primary sidebar
  • Skip to secondary sidebar
  • Skip to footer

  • Opinion
  • Health IT
    • Behavioral Health
    • Care Coordination
    • EMR/EHR
    • Interoperability
    • Patient Engagement
    • Population Health Management
    • Revenue Cycle Management
    • Social Determinants of Health
  • Digital Health
    • AI
    • Blockchain
    • Precision Medicine
    • Telehealth
    • Wearables
  • Life Sciences
  • Investments
  • M&A
  • Value-based Care
    • Accountable Care (ACOs)
    • Medicare Advantage

Mass General Brigham Researchers Develop AI Foundation Models to Advance Pathology

by Fred Pennic 03/19/2024 Leave a Comment

  • LinkedIn
  • Twitter
  • Facebook
  • Email
  • Print

What You Should Know:

– Researchers at Mass General Brigham have developed two powerful AI models, UNI and CONCH, that represent a significant leap forward in computational pathology (CPath).

– Published today in Nature Medicine, the two new foundation models, trained on massive datasets, hold immense potential for improving diagnoses, predicting patient outcomes, and even identifying rare diseases.

What are Foundation Models?

Foundation models are advanced AI systems trained on vast amounts of data. This training allows them to learn complex patterns and relationships within the data. In CPath, foundation models are trained on pathology images, often accompanied by corresponding medical text descriptions. This empowers them to analyze tissue samples, identify abnormalities, and glean insights from associated reports.

Understanding UNI and CONCH Foundational Models

  • UNI: This model focuses on understanding pathology images, excelling at tasks like disease detection and whole slide image analysis. Trained on over 100 million tissue samples, UNI leverages transfer learning to apply its knowledge to various clinical scenarios. It outperformed existing models in 34 tasks, showcasing its adaptability and potential as a versatile CPath tool.
  • CONCH: This unique model integrates image and text data, allowing pathologists to interact with it using medical terminology. This enables CONCH to excel at tasks like identifying rare diseases, segmenting tumors, and understanding complex whole slide images. In 14 clinical evaluations, CONCH surpassed standard models, demonstrating its effectiveness and versatility.

UNI and CONCH Foundational Model Benefits and Future Implications

These foundation models offer several advantages:

  • Improved Diagnostic Accuracy: UNI and CONCH can potentially lead to more accurate diagnoses, aiding pathologists in complex cases.
  • Enhanced Prognostic Insights: The models may provide valuable insights into disease progression and patient outcomes.
  • Rare Disease Identification: CONCH’s ability to analyze text descriptions might prove crucial in identifying rare diseases with limited visual data.

Availability

The research team is making the code publicly available, encouraging further development and application in tackling real-world clinical problems. This marks a significant step towards a new era of AI-powered CPath, with the potential to revolutionize medical diagnosis and patient care.

“Foundation models represent a new paradigm in medical artificial intelligence,” said corresponding author Faisal Mahmood, PhD, of the Division of Computational Pathology in the Department of Pathology at Mass General Brigham. “These models are AI systems that can be adapted to many downstream, clinically relevant tasks. We hope that the proof-of-concept presented in these studies will set the stage for such self-supervised models to be trained on larger and more diverse datasets.”

  • LinkedIn
  • Twitter
  • Facebook
  • Email
  • Print

Tagged With: Artificial Intelligence, Digital Pathology

Tap Native

Get in-depth healthcare technology analysis and commentary delivered straight to your email weekly

Reader Interactions

Primary Sidebar

Subscribe to HIT Consultant

Latest insightful articles delivered straight to your inbox weekly.

Submit a Tip or Pitch

2026 Predictions & Trends

Healthcare 2026 Forecast: Executives on AI Survival, Financial Reckoning, and the End of Point Solutions

2026 Healthcare Executive Predictions: Why the AI “Pilot Era” Is Officially Over

Featured Research Report

Digital Health Funding Hits $14.2B in 2025: A Year of AI Exuberance and Market Bifurcation

Most-Read

Anthropic Debuts ‘Claude for Healthcare’ and Opus 4.5 to Engineer the Future of Life Sciences

Anthropic Debuts ‘Claude for Healthcare’ and Opus 4.5 to Engineer the Future of Life Sciences

OpenAI Debuts ChatGPT Health: A ‘Digital Front Door’ That Connects Medical Records to Agentic AI

OpenAI Debuts ChatGPT Health: A ‘Digital Front Door’ That Connects Medical Records to Agentic AI

From Genes to Hackers: The Hidden Cybersecurity Risks in Life Sciences

From Genes to Hackers: The Hidden Cybersecurity Risks in Life Sciences

Utah Becomes First State to Approve AI System for Prescription Renewals

Utah Becomes First State to Approve AI System for Prescription Renewals

NYC Health + Hospitals to Acquire Maimonides in $2.2B Safety Net Overhaul

NYC Health + Hospitals to Acquire Maimonides in $2.2B Safety Net Overhaul

KLAS Report: Why Hospitals Are Choosing Efficiency Over 'Agentic' AI Hype in 2025

KLAS Report: Why Hospitals Are Choosing Efficiency Over ‘Agentic’ AI Hype in 2025

Advanced Primary Care 2026: Top 6 Investments for Health Systems According to Harvard Medical School

Advanced Primary Care 2026: Top 6 Investments for Health Systems According to Harvard Medical School

AI Nutrition Labels: The Key to Provider Adoption and Patient Trust?

AI Nutrition Labels: The Key to Provider Adoption and Patient Trust?

Kristen Hartsell, VP of Clinical Services, RedSail Technologies

The Pharmacy Closures Crisis: How Independent Pharmacies Are Fixing Pharmacy Deserts

HHS Launches 'OneHHS' AI Strategy to Integrate AI Across CDC, CMS, and FDA for Efficiency and Public Trust

HHS Launches ‘OneHHS’ AI Strategy to Integrate AI Across CDC, CMS, and FDA for Efficiency and Public Trust

Secondary Sidebar

Footer

Company

  • About Us
  • 2026 Editorial Calendar
  • Advertise with Us
  • Reprints and Permissions
  • Op-Ed Submission Guidelines
  • Contact
  • Subscribe

Editorial Coverage

  • Opinion
  • Health IT
    • Care Coordination
    • EMR/EHR
    • Interoperability
    • Population Health Management
    • Revenue Cycle Management
  • Digital Health
    • Artificial Intelligence
    • Blockchain Tech
    • Precision Medicine
    • Telehealth
    • Wearables
  • Startups
  • Value-Based Care
    • Accountable Care
    • Medicare Advantage

Connect

Subscribe to HIT Consultant Media

Latest insightful articles delivered straight to your inbox weekly

Copyright © 2026. HIT Consultant Media. All Rights Reserved. Privacy Policy |