Abstract Background We present a method utilizing Healthcare Cost and Utilization Project (HCUP) dataset for predicting disease risk of individuals based on their medical diagnosis history. The presented methodology may be incorporated in a variety of applications such as risk management, tailored health communication and decision support systems in healthcare. Methods We employed the National Inpatient Sample (NIS) data, which is publicly available through Healthcare Cost and Utilization Project (HCUP), to train random forest classifiers for disease prediction. Since the HCUP data is highly imbalanced, we employed an ensemble learning approach based on repeated random sub-sampling. This technique divides the training data into multiple sub...
ABSTRACT - This study aimed to investigate the application of machine learning techniques for diseas...
Proceedings of the International Conference on Science and Science Education August 2015, p. MA.26-4...
Background: Aggregated claims data on medication are often used as a proxy for the prevalence of dis...
Abstract: In today’s scenario, disease prediction plays an important role in medical field. Early de...
Abstract: According to the world health organization (WHO), cardiovascular diseases are the leading ...
Cardiovascular diseases (CVDs) such as hypertension, heart failure, stroke, and coronary artery dise...
Present days one of the major application areas of machine learning algorithms is medical diagnosis ...
For the identification and prediction of different diseases, machine learning techniques are commonl...
In predictive healthcare data analytics, high accuracy is both vital and paramount as low accuracy c...
Shatkay, HagitElectronic Health Records (EHRs) provide valuable clinical information that can be use...
heart disease is a major cause of death worldwide. Thus, diagnosis and prediction of heart disease r...
With the advent of the data age, the continuous improvement and widespread application of medical in...
With the advent of the data age, the continuous improvement and widespread application of medical in...
Mustafa Jan,1 Akber A Awan,2 Muhammad S Khalid,1 Salman Nisar1 1Department of Industrial and Manufac...
Improving the accuracy of the diagnosis of disease can help to increase the quality of healthcare. M...
ABSTRACT - This study aimed to investigate the application of machine learning techniques for diseas...
Proceedings of the International Conference on Science and Science Education August 2015, p. MA.26-4...
Background: Aggregated claims data on medication are often used as a proxy for the prevalence of dis...
Abstract: In today’s scenario, disease prediction plays an important role in medical field. Early de...
Abstract: According to the world health organization (WHO), cardiovascular diseases are the leading ...
Cardiovascular diseases (CVDs) such as hypertension, heart failure, stroke, and coronary artery dise...
Present days one of the major application areas of machine learning algorithms is medical diagnosis ...
For the identification and prediction of different diseases, machine learning techniques are commonl...
In predictive healthcare data analytics, high accuracy is both vital and paramount as low accuracy c...
Shatkay, HagitElectronic Health Records (EHRs) provide valuable clinical information that can be use...
heart disease is a major cause of death worldwide. Thus, diagnosis and prediction of heart disease r...
With the advent of the data age, the continuous improvement and widespread application of medical in...
With the advent of the data age, the continuous improvement and widespread application of medical in...
Mustafa Jan,1 Akber A Awan,2 Muhammad S Khalid,1 Salman Nisar1 1Department of Industrial and Manufac...
Improving the accuracy of the diagnosis of disease can help to increase the quality of healthcare. M...
ABSTRACT - This study aimed to investigate the application of machine learning techniques for diseas...
Proceedings of the International Conference on Science and Science Education August 2015, p. MA.26-4...
Background: Aggregated claims data on medication are often used as a proxy for the prevalence of dis...