Skip to content
  • Our Work
    • Fields
      • Cardiology
      • ENT
      • Gastro
      • Orthopedics
      • Ophthalmology
      • Pulmonology
      • Surgical Intelligence
      • Surgical Robotics
      • Urology
      • Other
    • Modalities
      • Endoscopy
      • Medical Segmentation
      • Microscopy
      • Ultrasound
  • Success Stories
  • Insights
    • Magazine
    • Upcoming Events
    • Webinars
    • Meetups
    • News
    • Blog
  • The company
    • About us
    • Careers
Menu
  • Our Work
    • Fields
      • Cardiology
      • ENT
      • Gastro
      • Orthopedics
      • Ophthalmology
      • Pulmonology
      • Surgical Intelligence
      • Surgical Robotics
      • Urology
      • Other
    • Modalities
      • Endoscopy
      • Medical Segmentation
      • Microscopy
      • Ultrasound
  • Success Stories
  • Insights
    • Magazine
    • Upcoming Events
    • Webinars
    • Meetups
    • News
    • Blog
  • The company
    • About us
    • Careers
Contact

Using AI in Clinical Trials

  • May 6, 2019


Hosts: Moshe Safran and Miki Haimovich – RSIP Vision

Deep Learning solutions are used for image analysis in clinical trials, including detection, measurement and segmentation of pathologies and lesions.
Deep Learning solutions:
A. Provide exact automated measurements of size of lesions (needed for scores such as RECIST) as well as lesions volume.
B. Provide accurate, fast, and scalable results, minimizing radiologist’s time and costs, as well as reducing human-related errors.
C. Relevancy to all radiology modalities – CT, X-ray, MRI, Nuclear Imaging, and Ultrasound, as well as to Microscopy and Pathology.

Share

Share on linkedin
Share on twitter
Share on facebook

More Webinars

Meetup with Daniel Rueckert

AI and the Future of Radiology

AI for Surgical Imaging

Emerging Technologies in AI for Surgical Imaging

Bay Vision Meetup with Lena Maier-Hein June 17

Does machine learning-based biomedical image analysis require domain experts?

Bay Vision Meetup with Ester Bonmati

Endoscopic Ultrasound AI-Guided Interventions: current approaches and challenges

Machine learning in medical imaging: from image acquisition to interpretation

Artificial Intelligence and its impact on healthcare

Integrating clinical guidance in AI product development for Medtech imaging

Bay Vision with Stefanie Speidel

AI-Assisted Surgery: Perspectives and Challenges

Digital Orthopaedics: The rise of specialty focus in digital health

Towards Understanding Surgical Scenes Using Computer Vision

Post-Pandemic Portfolio with David Matheson

Post-Pandemic Portfolio: Managing innovation to drive growth in our new reality

Computer Vision Project Management in the Age of AI

Bay Vision Meetup

Applications of Computer Vision from Endoscopy to Microscopy

Implementing AI in Endoscopy

Regulatory FDA webinar

Regulatory Procedures for AI in Medical Devices

Segmentation in CT

AI-based Segmentation in CT

Ophthalmology webinar

AI in Ophthalmology

AI in Pharma

Computer Vision and AI in Pharma

AI in medical devices

Project Management for AI Implementation in Medical Devices

Implementing AI in your Pharma Company: DOs and DON’Ts

In a heartbeat: Implementing AI in cardiology

How to Boost your Medical Application with AI

AI in Medical Devices and Medical Imaging Applications

Deep Learning for the Segmentation, Classification and Quantification of Dendritic cells

Meetup with Daniel Rueckert

AI and the Future of Radiology

AI for Surgical Imaging

Emerging Technologies in AI for Surgical Imaging

Bay Vision Meetup with Lena Maier-Hein June 17

Does machine learning-based biomedical image analysis require domain experts?

Bay Vision Meetup with Ester Bonmati

Endoscopic Ultrasound AI-Guided Interventions: current approaches and challenges

Machine learning in medical imaging: from image acquisition to interpretation

Artificial Intelligence and its impact on healthcare

Integrating clinical guidance in AI product development for Medtech imaging

Bay Vision with Stefanie Speidel

AI-Assisted Surgery: Perspectives and Challenges

Digital Orthopaedics: The rise of specialty focus in digital health

Towards Understanding Surgical Scenes Using Computer Vision

Post-Pandemic Portfolio with David Matheson

Post-Pandemic Portfolio: Managing innovation to drive growth in our new reality

Computer Vision Project Management in the Age of AI

Bay Vision Meetup

Applications of Computer Vision from Endoscopy to Microscopy

Implementing AI in Endoscopy

Regulatory FDA webinar

Regulatory Procedures for AI in Medical Devices

Segmentation in CT

AI-based Segmentation in CT

Ophthalmology webinar

AI in Ophthalmology

AI in Pharma

Computer Vision and AI in Pharma

AI in medical devices

Project Management for AI Implementation in Medical Devices

Implementing AI in your Pharma Company: DOs and DON’Ts

In a heartbeat: Implementing AI in cardiology

How to Boost your Medical Application with AI

AI in Medical Devices and Medical Imaging Applications

Deep Learning for the Segmentation, Classification and Quantification of Dendritic cells

RSIP Vision

Field-tested software solutions and custom R&D, to power your next medical products with innovative AI and image analysis capabilities.

Read more about us

Get in touch

Please fill the following form and our experts will be happy to reply to you soon

Recent News

PR – Intra-op Virtual Measurements in Laparoscopic and Robotic-Assisted Surgeries

PR – Non-Invasive Planning of Coronary Intervention

PR – Bladder Panorama Generator and Sparse Reconstruction Tool

PR – Registration Module for Orthopedic Surgery

All news
Upcoming Events
Stay informed for our next events
Subscribe to Our Magazines

Subscribe now and receive the Computer Vision News Magazine every month to your mailbox

 
Subscribe for free
Follow us
Linkedin Twitter Facebook Youtube

contact@rsipvision.com

Terms of Use

Privacy Policy

© All rights reserved to RSIP Vision 2021

Created by Shmulik

  • Our Work
    • title-1
      • Ophthalmology
      • Uncategorized
      • Ophthalmology
      • Pulmonology
      • Cardiology
      • Orthopedics
    • Title-2
      • Orthopedics
  • Success Stories
  • Insights
  • The company