It is extremely challenging to design a machine learning algorithm that is able to generate tolerable error rates for the class prediction of various types of genetic data. A particular system may be very effective for one microarray dataset but fail to perform in a similar fashion for another dataset. This paper introduces a neural approach to use Generalized Regression Neural Network (GRNN), Collimator Neural Network (CNN) which provides consistent performance stability for various types of microarray data. CNN performance has been cross validated with the k-fold cross validation (leave one out) technique for BRCA1, BRCA2 and Sporadic mutation classification for ovarian and breast cancer data. The paper presents comparative classification...
Cancer is one of the most prevalent diseases worldwide. The most prevalent condition in women when a...
Currently, breast cancer is one of the most common cancers and a main reason of women death worldwid...
Abstract Molecular level diagnostics based on microarray technologies can offer the methodology of p...
An optimal genetic mutation diagnosis requires proper selection of mutation classifier. This work in...
AbstractIn previous work, we applied an advanced genetic algorithm method for feature subset selecti...
In this paper, we present the mathematical foundations of a probabilistic neural network for gene se...
The problem of developing universal classifiers of biomedical data, in particular those that charact...
The problem of developing universal classifiers of biomedical data, in particular those that charact...
Design of a machine learning algorithm as a robust class predictor for various DNA microarray datase...
With the emergence and rapid advancement of DNA microarray technologies, construction of gene expres...
In this paper we are using Generalised Regression Neural Network (GRNN) and Probabilistic Neural Net...
Microarray analysis has made it possible to predict clinical outcomes or diagnosing patients with th...
Deep neural networks are robust techniques and recently used extensively for building cancer classif...
Deep neural networks are robust techniques and recently used extensively for building cancer classif...
International audienceAbstractBackgroundGenome-wide marker data are used both in phenotypic genome-w...
Cancer is one of the most prevalent diseases worldwide. The most prevalent condition in women when a...
Currently, breast cancer is one of the most common cancers and a main reason of women death worldwid...
Abstract Molecular level diagnostics based on microarray technologies can offer the methodology of p...
An optimal genetic mutation diagnosis requires proper selection of mutation classifier. This work in...
AbstractIn previous work, we applied an advanced genetic algorithm method for feature subset selecti...
In this paper, we present the mathematical foundations of a probabilistic neural network for gene se...
The problem of developing universal classifiers of biomedical data, in particular those that charact...
The problem of developing universal classifiers of biomedical data, in particular those that charact...
Design of a machine learning algorithm as a robust class predictor for various DNA microarray datase...
With the emergence and rapid advancement of DNA microarray technologies, construction of gene expres...
In this paper we are using Generalised Regression Neural Network (GRNN) and Probabilistic Neural Net...
Microarray analysis has made it possible to predict clinical outcomes or diagnosing patients with th...
Deep neural networks are robust techniques and recently used extensively for building cancer classif...
Deep neural networks are robust techniques and recently used extensively for building cancer classif...
International audienceAbstractBackgroundGenome-wide marker data are used both in phenotypic genome-w...
Cancer is one of the most prevalent diseases worldwide. The most prevalent condition in women when a...
Currently, breast cancer is one of the most common cancers and a main reason of women death worldwid...
Abstract Molecular level diagnostics based on microarray technologies can offer the methodology of p...