Publication Details
Overview
 
 
Isel Grau, Dipankar Sengupta, Dewan Md. Farid, Bernard Manderick, Ann Nowe, Maria M. Garcia Lorenzo, Dorien Daneels, Maryse Bonduelle, Didier Croes, Sonia Van Dooren
 

Chapter in Book/ Report/ Conference proceeding

Abstract 

The exome or genome based high throughput screening techniques are becoming a definitive criterion in the conventional clinical analysis of the genetic diseases. However, pathogenic classification of an identified variant, is still a manual and time consuming process for clinical geneticists. Thus, to facilitate the variant classification process, we have developed GeVaCT, a Java based tool that implements a classification approach based on the literature review of cardiac arrhythmia syndromes. Furthermore, the adoption of this automated knowledge engineer by the clinical geneticists will aid to build a knowledge base for the evolution of the variant classification process by use of novel machine learning approaches.

Reference 
 
 
DOI  springer