It is widely considered that approximately 10% of the population suffers from type 2 diabetes. Unfortunately, the impact of this disease is underestimated. Patient's mortality often occurs due to complications caused by the disease and not the disease itself. Many techniques utilized in modeling diseases are often in the form of a “black box” where the internal workings and complexities are extremely difficult to understand, both from practitioners' and patients' perspective. In this work, we address this issue and present an informative model/pattern, known as a “latent phenotype,” with an aim to capture the complexities of the associated complications' over time. We further extend this idea by using a combination of temporal association r...
Data mining plays an important part in the healthcare sector disease prediction. Techniques of data ...
Objectives: Identifying an appropriate set of predictors for the outcome of interest is a major chal...
OBJECTIVE: Modern healthcare data reflect massive multi-level and multi-scale information collected ...
It is widely considered that approximately 10% of the population suffers from type 2 diabetes. Unfor...
There is a great deal of debate over the importance of explanation in AI models inferred from health...
One of the areas where Artificial Intelligence is having more impact is machine learning, which deve...
Context: Some individuals represent forms of atypical diabetes (AD) that do not conform to typical...
Nowadays diabetes has become a chronic disease that may cause many complications. There are some sym...
Type 2 diabetes mellitus (T2DM) often results in high morbidity and mortality. In addition, T2DM pre...
Diabetes is a chronic, metabolic disease characterized by high blood sugar levels. Among the main ty...
In this work we describe the application of a careflow mining algorithm to detect the most frequent ...
Thesis: S.M. in Engineering and Management, Massachusetts Institute of Technology, System Design and...
© 2018 Elsevier B.V. Background: The present study aims to identify the patients at risk of type 2 d...
Diabetes is a chronic disease characterized by high blood glucose level that results either from a d...
Recent advances in genomic research have generated vast amounts of information that can help identif...
Data mining plays an important part in the healthcare sector disease prediction. Techniques of data ...
Objectives: Identifying an appropriate set of predictors for the outcome of interest is a major chal...
OBJECTIVE: Modern healthcare data reflect massive multi-level and multi-scale information collected ...
It is widely considered that approximately 10% of the population suffers from type 2 diabetes. Unfor...
There is a great deal of debate over the importance of explanation in AI models inferred from health...
One of the areas where Artificial Intelligence is having more impact is machine learning, which deve...
Context: Some individuals represent forms of atypical diabetes (AD) that do not conform to typical...
Nowadays diabetes has become a chronic disease that may cause many complications. There are some sym...
Type 2 diabetes mellitus (T2DM) often results in high morbidity and mortality. In addition, T2DM pre...
Diabetes is a chronic, metabolic disease characterized by high blood sugar levels. Among the main ty...
In this work we describe the application of a careflow mining algorithm to detect the most frequent ...
Thesis: S.M. in Engineering and Management, Massachusetts Institute of Technology, System Design and...
© 2018 Elsevier B.V. Background: The present study aims to identify the patients at risk of type 2 d...
Diabetes is a chronic disease characterized by high blood glucose level that results either from a d...
Recent advances in genomic research have generated vast amounts of information that can help identif...
Data mining plays an important part in the healthcare sector disease prediction. Techniques of data ...
Objectives: Identifying an appropriate set of predictors for the outcome of interest is a major chal...
OBJECTIVE: Modern healthcare data reflect massive multi-level and multi-scale information collected ...