AI and Annotated Medical Images – OpenPath, PLIP, and “Medical Twitter”

By Michael Awood

September 1, 2023

The lack of available annotated medical images has historically hindered healthcare innovation. However, a solution is emerging as healthcare professionals start to share anonymised images and insights on public platforms – which includes the social media site previously known as Twitter (X). This has led to the creation of OpenPath, a comprehensive dataset of over 200,000 pathology images coupled with natural language descriptions, marking it as the largest public dataset of its kind.

Researchers have used OpenPath to develop Pathology Language–Image Pre-training (PLIP), a multimodal AI trained on this dataset. PLIP has demonstrated impressive results in zero-shot learning and transfer learning for classifying new pathology images across various tasks. Additionally, PLIP enables users to locate similar cases using either image or natural language search, encouraging knowledge sharing.

The researchers collected over 240,000 public pathology images using popular pathology-related hashtags and expanded the collection with data from other online sources. After thorough data quality checks, they assembled over 200,000 pathology image-text pairs named OpenPath, which they used to develop the versatile PLIP.

PLIP outperformed previous models in tasks such as zero-shot learning, linear probing, and text-to-image and image-to-image retrieval. Unlike other digital pathology machine learning methods, PLIP can adapt to new datasets and provide zero-shot predictions based on any text input, making it a flexible tool for potential new disease subtypes.

The study did note some limitations, including irrelevant data in the image-text pairs and challenges in accounting for varying magnification levels and staining styles. However, researchers are optimistic that PLIP can adjust to images with diverse magnification levels and staining protocols. They expect that OpenPath and PLIP will significantly contribute to advancing AI in pathology and encourage a data-focused approach in this area.

Reference url

Recent Posts

AI Drug Safety Surveillance
           

Created and Validated by FDA: AI Drug Safety Surveillance Tool

🚀 Discover how the AI-driven LabelComp tool is transforming drug safety surveillance! By automating the identification of adverse events in drug labelling, LabelComp enhances accuracy and efficiency, supporting regulatory decision-making and public health. 🌐💊
#SyenzaNews #AIinHealthcare #DrugSafety #PharmaInnovation #RegulatoryScience

School-based health centres
                      

The Role of School-Based Health Centres in Advancing Health Equity

🌟 School-based health centres (SBHCs) are improving healthcare for underserved youth across the US! These centres provide vital services, from preventive care to chronic disease management, right where students need them most – in schools. 📚🏥

SBHCs improve academic performance, reduce absenteeism, and enhance overall student well-being. Let’s support these essential centres and ensure every child has access to quality healthcare. 🌟

#SyenzaNews #SBHC #ChronicDiseaseManagement #HealthEquity #PreventiveCare

ABA guidelines for Autism
                

Enhancing Care in Abu Dhabi: The New ABA Guidelines for Autism

🌟 Exciting developments in Abu Dhabi! The Department of Health has introduced new ABA guidelines for Autism Spectrum Disorder, aiming to improve care for People of Determination. This initiative focuses on standardising care, enhancing accessibility, and fostering collaboration between healthcare and education professionals.
Learn more about how these guidelines can make a difference in the lives of individuals with ASD.
#SyenzaNews #HealthcareInnovation #AutismCare #InclusiveHealth #ABAGuidelines #AbuDhabiHealth

When you collaborate with VSH Foundation, it's like unlocking a new dimension in healthcare innovation.

Our research synergizes with your vision, combining expertise in health economics, policy analysis, advanced analytics, and AI applications in healthcare. You’ll witness the fusion of cutting-edge methodologies and real- world impact, as we work together to transform healthcare systems and improve patient outcomes globally.

CORRESPONDENCE ADDRESS

PO Box 8547, #95478, Boston, MA 02114, USA

© 2024 Value Science Health Foundation. All rights reserved.
Made with by Frogiez