Faites-nous part de vos impressions sur le Serveur terminologique, et aidez-nous à améliorer nos services! Vous avez jusqu’au 3 décembre 2024 pour répondre au sondage. Votre avis nous intéresse! En savoir plus >

Partager :

Le contenu créé par les communautés et les groupes de travail est accessible dans la version originale seulement.

Calendrier des événements

Flat View
Par année
Par mois
Par mois
Weekly View
Par semaine
Daily View
Aujourd'hui
Search
Rechercher

Probabilistic Terminology Management with a Machine Learning Model

Groupe: Enterprise Imaging
Télécharger au format iCal
Vendredi, Septembre 20, 2019, 12:00pm - 01:00pm ET
par Jason Nagels
Summary:

The use of foreign exam management to share diagnostic images (DI) and reports across disparate organizations has been well adopted across various provinces and territories in Canada. It is common that each site contributing to a Diagnostic Imaging Repository (DIR) will have a unique terminology lexicon local to that specific site. Deterministic terminology mappings are often applied to associate a relationship between the local to regional DI procedure codes and names.

In this presentation, we will examine the use of Machine Learning to create a probabilistic model to predict image type with 90% accuracy and offer a new unsupervised methodology that clusters the images based on similarities in their metadata.

Learning objectives:
  1. Identify the key challenges with semantic interoperability as it relates to sharing exams between sites with disparate terminology lexicons.
  2. Explain the process involved that built the Machine Learning model to function successfully.
  3. Understand how your organization can apply the use of this Machine Learning model and appreciate future opportunities this model may assist with.
Zoom Meeting: https://zoom.us/j/3434442853
Teleconference: 1-855-703-8985
Meeting code: 343 444 2853
Lieu Zoom Meeting
Contact Jason Nagels

Logo d'InfoCentral

La santé numérique à votre service

 

Transformer les soins de santé au Canada grâce aux technologies de l'information sur la santé.