In this paper we propose a case-based decision support tool, designed to help physicians in 1st type diabetes therapy revision through the intelligent retrieval of data related to past situations (or ‘cases’) similar to the current one. A case is defined as a set of variable values (or features) collected during a visit. We defined taxonomy of prototypical patients’ conditions, or classes, to which each case should belong. For each input case, the system allows the physician to find similar past cases, both from the same patient and from different ones. We have implemented a two-steps procedure; (1) it finds the classes to which the input case could belong; (2) it lists the most similar cases from these classes, through a nearest neig...
International audiencePurpose: we propose to use different Case Based Reasoning (CBR) methods to ret...
Managing diabetes using intelligent techniques is a recent priority for healthcare information syste...
Background: Effective population management of patients with diabetes requires timely recognition. C...
In this paper we propose a case-based decision support tool, designed to help physicians in Ist type...
We propose a decision support tool based on the Case Based Reasoning technique, meant to help physic...
In this paper we present a tool for the intelligent retrieval of past cases to support Insulin Depen...
We present a knowledge management and decision support methodology for insulin dependent diabetes me...
We present a knowledge management and decision support methodology for insulin dependent diabetes me...
The integration of rule-based and case-based reasoning is particularly useful in medical application...
In the medical field, experts’ knowledge is based on experience, theoretical knowledge and rules. Ca...
Patients suffering from diabetes often develop several comorbidities such as hypertension and dyslip...
This thesis presents a metric for similarity determination and case retrieval for an intelligent dec...
We present a Web-based knowledge management and decision support system for Type I Diabetes patients...
Objective: To develop and validate a phenotyping algorithm for the identification of patients with t...
We present a decision support tool for Insulin Dependent Diabetes Mellitus management, that relies o...
International audiencePurpose: we propose to use different Case Based Reasoning (CBR) methods to ret...
Managing diabetes using intelligent techniques is a recent priority for healthcare information syste...
Background: Effective population management of patients with diabetes requires timely recognition. C...
In this paper we propose a case-based decision support tool, designed to help physicians in Ist type...
We propose a decision support tool based on the Case Based Reasoning technique, meant to help physic...
In this paper we present a tool for the intelligent retrieval of past cases to support Insulin Depen...
We present a knowledge management and decision support methodology for insulin dependent diabetes me...
We present a knowledge management and decision support methodology for insulin dependent diabetes me...
The integration of rule-based and case-based reasoning is particularly useful in medical application...
In the medical field, experts’ knowledge is based on experience, theoretical knowledge and rules. Ca...
Patients suffering from diabetes often develop several comorbidities such as hypertension and dyslip...
This thesis presents a metric for similarity determination and case retrieval for an intelligent dec...
We present a Web-based knowledge management and decision support system for Type I Diabetes patients...
Objective: To develop and validate a phenotyping algorithm for the identification of patients with t...
We present a decision support tool for Insulin Dependent Diabetes Mellitus management, that relies o...
International audiencePurpose: we propose to use different Case Based Reasoning (CBR) methods to ret...
Managing diabetes using intelligent techniques is a recent priority for healthcare information syste...
Background: Effective population management of patients with diabetes requires timely recognition. C...