Over time, methods for the development of clinical decision support (CDS) systems have evolved from interpretable and easy-to-use scoring systems to very complex and non-interpretable mathematical models. In order to accomplish effective decision support, CDS systems should provide information on how the model arrives at a certain decision. To address the issue of incompatibility between performance, interpretability and applicability of CDS systems, this paper proposes an innovative model structure, automatically leading to interpretable and easily applicable models. The resulting models can be used to guide clinicians when deciding upon the appropriate treatment, estimating patient-specific risks and to improve communication with patients...
A clinical prediction model can assist doctors in arriving at the most likely diagnosis or estimatin...
Abstract Currently, international clinical guidelines (CG), provide an evidence-based knowledge appr...
ObjectiveA Clinical Decision Support System (CDSS) that can amass Electronic Health Record (EHR) and...
Over time, methods for the development of clinical decision support (CDS) systems have evolved from ...
Background: Over time, methods for the development of clinical decision support (CDS) systems have e...
Over the last decades, clinical decision support systems have been gaining importance. They help cli...
© 2018 Billiet et al. Over the last decades, clinical decision support systems have been gaining imp...
Background and objective: Ectopic pregnancy is an important cause of morbidity and mortality worldwi...
Background and Aim: The Ovarian epithelial cancer is one of the most deadly types of cancers in wome...
Clinical decision support systems represent important telemedicine tools with the ability to help ph...
International audienceThis paper proposes a Web clinical decision support ...
The relevance of the topic is that currently modern medical information systems are aimed at providi...
Abstract Background Decision analysis techniques can be applied in complex situations involving unce...
Background: Pancreatic cancer is the most aggressive and the most deadly type of cancer. It is the f...
Existing Clinical Decision Support Systems (CDSSs) typically rely on rule-based algorithms and focus...
A clinical prediction model can assist doctors in arriving at the most likely diagnosis or estimatin...
Abstract Currently, international clinical guidelines (CG), provide an evidence-based knowledge appr...
ObjectiveA Clinical Decision Support System (CDSS) that can amass Electronic Health Record (EHR) and...
Over time, methods for the development of clinical decision support (CDS) systems have evolved from ...
Background: Over time, methods for the development of clinical decision support (CDS) systems have e...
Over the last decades, clinical decision support systems have been gaining importance. They help cli...
© 2018 Billiet et al. Over the last decades, clinical decision support systems have been gaining imp...
Background and objective: Ectopic pregnancy is an important cause of morbidity and mortality worldwi...
Background and Aim: The Ovarian epithelial cancer is one of the most deadly types of cancers in wome...
Clinical decision support systems represent important telemedicine tools with the ability to help ph...
International audienceThis paper proposes a Web clinical decision support ...
The relevance of the topic is that currently modern medical information systems are aimed at providi...
Abstract Background Decision analysis techniques can be applied in complex situations involving unce...
Background: Pancreatic cancer is the most aggressive and the most deadly type of cancer. It is the f...
Existing Clinical Decision Support Systems (CDSSs) typically rely on rule-based algorithms and focus...
A clinical prediction model can assist doctors in arriving at the most likely diagnosis or estimatin...
Abstract Currently, international clinical guidelines (CG), provide an evidence-based knowledge appr...
ObjectiveA Clinical Decision Support System (CDSS) that can amass Electronic Health Record (EHR) and...