Experts' reasoning selects the final diagnosis from many candidates by using hierarchical differential diagnosis. In other words, candidates gives a sophisticated hiearchical taxonomy, usually described as a tree. In this paper, the characteristics of experts' rules are closely examined from the viewpoint of hierarchical decision steps and and a new approach to rule mining with extraction of diagnostic taxonomy from medical datasets is introduced. The key elements of this approach are calculation of the characterization set of each decision attribute (a given class) and one of the similarities between characterization sets. From the relations between similarities, tree-based taxonomy is obtained, which includes enough information for hierar...
The paper highlights an approach to solving problems of medical diagnosis. The problems are formulat...
AbstractDifferential diagnosis of multiple disorders is a challenging problem in clinical medicine. ...
Neural networks have been widely used in general classification tasks. They have the advantages of b...
Experts' reasoning selects the final diagnosis from many candidates by using hierarchical differenti...
AbstractOne of the most important problems with rule induction methods is that they cannot extract r...
Computer aided diagnosis systems are getting importance in recent years. In this paper i worked on v...
The healthcare industry collects huge amount of healthcare data which, unfortunately, are not mine f...
Discusses eliminating contradictions among rules in computer-aided systems, experts rules, and datab...
[[abstract]]Traditionally, a major task in building a medical diagnosis expert system is the process...
[[abstract]]Traditionally, a major task in building a medical diagnosis expert system is the process...
We present a decision support system to let medical doctors analyze important clinical data, like pa...
A significant amount of data is gathered by the healthcare sector, but it is not appropriately mined...
To emphasize the importance of interpretability in fuzzy medical diagnosis, in this chapter we descr...
In this paper, we used data mining to extract biomedical knowledge. In general, complex biomedical d...
Abstract Differential diagnosis of multiple disorders is a challenging problem in clinical medicine....
The paper highlights an approach to solving problems of medical diagnosis. The problems are formulat...
AbstractDifferential diagnosis of multiple disorders is a challenging problem in clinical medicine. ...
Neural networks have been widely used in general classification tasks. They have the advantages of b...
Experts' reasoning selects the final diagnosis from many candidates by using hierarchical differenti...
AbstractOne of the most important problems with rule induction methods is that they cannot extract r...
Computer aided diagnosis systems are getting importance in recent years. In this paper i worked on v...
The healthcare industry collects huge amount of healthcare data which, unfortunately, are not mine f...
Discusses eliminating contradictions among rules in computer-aided systems, experts rules, and datab...
[[abstract]]Traditionally, a major task in building a medical diagnosis expert system is the process...
[[abstract]]Traditionally, a major task in building a medical diagnosis expert system is the process...
We present a decision support system to let medical doctors analyze important clinical data, like pa...
A significant amount of data is gathered by the healthcare sector, but it is not appropriately mined...
To emphasize the importance of interpretability in fuzzy medical diagnosis, in this chapter we descr...
In this paper, we used data mining to extract biomedical knowledge. In general, complex biomedical d...
Abstract Differential diagnosis of multiple disorders is a challenging problem in clinical medicine....
The paper highlights an approach to solving problems of medical diagnosis. The problems are formulat...
AbstractDifferential diagnosis of multiple disorders is a challenging problem in clinical medicine. ...
Neural networks have been widely used in general classification tasks. They have the advantages of b...