Chronic disease risk assessment is a common information processing task performed by primary care physicians. However, efficiently and effectively integrating information about many risk factors across many patients is cognitively difficult. Methods for visualizing multidimensional data may augment risk assessment by providing reduced-dimensional displays which classify patient data. This study develops a framework which combines medical evidence, statistical dimensionality reduction techniques, and information visualization to develop visual classifiers for the task of diabetes risk assessment in a population of patients. The framework is evaluated in terms of classification accuracy and medical interpretation for two case studies, predict...
The prevalence of type 2 diabetes in North West London (NWL) is relatively high compared to other pa...
The steep rise of cases pertaining to Diabetes Mellitus (DM) condition among global population has e...
Data mining plays an important part in the healthcare sector disease prediction. Techniques of data ...
Chronic disease risk assessment is a common information processing task performed by primary care ph...
Risk factor analysis; statistical approaches such as t-test or x2-test. To accurately predict the on...
The increasing trend of systematic collection of medical data (diagnoses, hospital admission emergen...
AbstractThis paper applied a use of algorithms to classify the risk of diabetes mellitus. Four well ...
Developing categories for health data is a crucial step for health researchers to explore, analyze, ...
Objective Risk prediction models can assist clinicians in making decisions. To boost the uptake of t...
Early detection and treatment of diabetes play an important role to keep people diagnosed with diabe...
Type 2 diabetes has increased in prevalence globally in recent years, mainly due to obesity. Many ot...
Given the high incidence in Mexico of Diabetes Mellitus (DM), it seems impossible for all patients t...
Patients with type 2 diabetes have a higher chance of developing cardiovascular diseases and an incr...
Since the publication of the Framingham algorithm for heart disease, tools that predict disease risk...
Risk prediction models can assist clinicians in making decisions. To boost the uptake of these model...
The prevalence of type 2 diabetes in North West London (NWL) is relatively high compared to other pa...
The steep rise of cases pertaining to Diabetes Mellitus (DM) condition among global population has e...
Data mining plays an important part in the healthcare sector disease prediction. Techniques of data ...
Chronic disease risk assessment is a common information processing task performed by primary care ph...
Risk factor analysis; statistical approaches such as t-test or x2-test. To accurately predict the on...
The increasing trend of systematic collection of medical data (diagnoses, hospital admission emergen...
AbstractThis paper applied a use of algorithms to classify the risk of diabetes mellitus. Four well ...
Developing categories for health data is a crucial step for health researchers to explore, analyze, ...
Objective Risk prediction models can assist clinicians in making decisions. To boost the uptake of t...
Early detection and treatment of diabetes play an important role to keep people diagnosed with diabe...
Type 2 diabetes has increased in prevalence globally in recent years, mainly due to obesity. Many ot...
Given the high incidence in Mexico of Diabetes Mellitus (DM), it seems impossible for all patients t...
Patients with type 2 diabetes have a higher chance of developing cardiovascular diseases and an incr...
Since the publication of the Framingham algorithm for heart disease, tools that predict disease risk...
Risk prediction models can assist clinicians in making decisions. To boost the uptake of these model...
The prevalence of type 2 diabetes in North West London (NWL) is relatively high compared to other pa...
The steep rise of cases pertaining to Diabetes Mellitus (DM) condition among global population has e...
Data mining plays an important part in the healthcare sector disease prediction. Techniques of data ...