presgene.ncl@gmail.com 020 2590 2161



Welcome to PRESGENE

Gene Essentiality Prediction Server

Why Choose PRESGENE?

Unique ML strategies for Gene Essentiality prediction in Prokaryotes and Eukaryotes

Training Data Set Preparation

Total 289 Features (Network topological features, Sequence-based features)

ML Strategy 1:
Prediction of Essential Genes from Sufficient Labeled Data

ML Strategy 2:
Prediction of Essential Genes from Limited Labeled Data

Strategies for Prediction of Essential Genes

Prediction of essential genes help to find minimal genes indispensable for the survival of any organism.


An integrative machine learning strategy for essential gene prediction from sufficient labelled data

Available machine learning techniques for essential gene predictions are inherent with problems like imbalanced provision of training datasets, choice of a best model biased for a given balanced dataset, choice of a complex machine learning algorithm, and data-based automated selection of biologically relevant features for classification.


Essential gene prediction using limited gene essentiality information – An Integrative Semi-supervised Machine Learning Strategy

Essential gene prediction helps to find minimal genes indispensable for appropriate cellular function and survival of any organism. Machine learning (ML) algorithms have been useful for prediction of gene essentiality and annotation. ...




Services

The server provides the users with three channels or ways of predicting the essential genes via the PRESGENE server


Channel I: Feature Matrix With Sample Organisms


The prediction of essential genes by ML Strategy 1 or ML Strategy 2 for 14 sample model organisms, including both prokaryotes and eukaryotes with PRESGENE feature matrix (289 Features i.e., diverse set of biological features such as sequence and network topological features derived from flux coupling and reaction network)


Channel II: Feature Matrix With New Organism


The prediction of essential genes by ML Strategy 1 or ML Strategy 2 for a new organism with PRESGENE feature matrix (289 Features i.e., diverse set of biological features such as sequence and network topological features derived from flux coupling and reaction network)


Channel III: User Created Feature Matrix


The prediction of essential genes by ML Strategy 1 or ML Strategy 2 for a new organism with User Created Feature Matrix

Frequently Asked Questions

Contact Us

Official Contact
Telephone No.

020-25982161

10:00AM - 05:00PM (Mon-Fri) IST

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