Matricis.ai

Detection of endometriosis lesions from MRI images
Underway
01/09/2022

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30/09/2023

Main objectives

Develop AI software to detect and characterize endometriosis on pelvic MRI

Challenge

Endometriosis is a disease that is still poorly known and poorly diagnosed. The average length of time before a patient is diagnosed is 7 years after the onset of the first symptoms and 75% of patients receive at least one erroneous diagnosis. Diagnostic errors are partly due to the difficulty of analyzing pelvic MRI images and the lack of specialized radiologists, who represent less than 1% of radiologists in France and are poorly distributed throughout the country.

Methodology/Technology used

The project employs a set of machine learning technologies to recognize and model the organs of the female pelvis and classify the different types of endometriosis lesions according to their location.

Publications

Contacts

Elise Mekkaoui () & Raphaelle Taub ()

Members

AP-HP, Inria

Useful links

https://matricis.ai/

Other projects

COVIPREDS

Description

US Caractérisation et prédiction de la survenue de formes graves ou létales du COVID-19 à partir des données issues de l’EDS de l’AP-HP

Names of partners involved
AP-HP, Inria & Centrale Supélec

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