Clinical predictions using clinical data by computational methods are common in bioinformatics. However, clinical predictions using information from genomics datasets as well is not a frequently observed phenomenon in research. Precision medicine research requires information from all available datasets to provide intelligent clinical solutions. In this paper, we have attempted to create a prediction model which uses information from both clinical and genomics datasets. We have demonstrated multiclass disease predictions based on combined clinical and genomics datasets using machine learning methods. We have created an integrated dataset, using a clinical (ClinVar) and a genomics (gene expression) dataset, and trained it using instancebased...
In genome medicine, which is now being implemented in medical care, variants detected by genome anal...
The sequencing of the human genome has opened up completely new avenues in research and the notion o...
International audienceThis paper introduces a framework for disease prediction from multimodal gene...
Clinical predictions using clinical data by computational methods are common in bioinformatics. Howe...
An analysis of various diseases have been predicted using multiple data mining and text mining techn...
In the past decade, precision genomics based medicine has emerged to provide tailored and effective ...
In the present era, Machine learning (ML) algorithms are extensively used in computer assisted diagn...
Predictive data mining in clinical medicine deals with learning models to predict patients' health. ...
Automated Multiple Disease Prediction System using Machine Learning is an advanced healthcare applic...
A major milestone in modern biology was the complete sequencing of the human genome. But it produced...
The turn of events and misuse of a few noticeable Data mining strategies in various genuine applicat...
Discerning genetic contributions to diseases not only enhances our understanding of disease mechanis...
Abstract— The modern approach of health care is to detect the disease early instead of going for tre...
Precision medicine is being developed as a preventative, diagnostic and treatment tool to combat com...
ABSTRACT - This study aimed to investigate the application of machine learning techniques for diseas...
In genome medicine, which is now being implemented in medical care, variants detected by genome anal...
The sequencing of the human genome has opened up completely new avenues in research and the notion o...
International audienceThis paper introduces a framework for disease prediction from multimodal gene...
Clinical predictions using clinical data by computational methods are common in bioinformatics. Howe...
An analysis of various diseases have been predicted using multiple data mining and text mining techn...
In the past decade, precision genomics based medicine has emerged to provide tailored and effective ...
In the present era, Machine learning (ML) algorithms are extensively used in computer assisted diagn...
Predictive data mining in clinical medicine deals with learning models to predict patients' health. ...
Automated Multiple Disease Prediction System using Machine Learning is an advanced healthcare applic...
A major milestone in modern biology was the complete sequencing of the human genome. But it produced...
The turn of events and misuse of a few noticeable Data mining strategies in various genuine applicat...
Discerning genetic contributions to diseases not only enhances our understanding of disease mechanis...
Abstract— The modern approach of health care is to detect the disease early instead of going for tre...
Precision medicine is being developed as a preventative, diagnostic and treatment tool to combat com...
ABSTRACT - This study aimed to investigate the application of machine learning techniques for diseas...
In genome medicine, which is now being implemented in medical care, variants detected by genome anal...
The sequencing of the human genome has opened up completely new avenues in research and the notion o...
International audienceThis paper introduces a framework for disease prediction from multimodal gene...