Abstract In oncology, decision-making in individual situations is often very complex. To deal with such complexity, people tend to reduce it by relying on their initial intuition. The downside of this intuitive, subjective way of decision-making is that it is prone to cognitive and emotional biases such as overestimating the quality of its judgements or being influenced by one’s current mood. Hence, clinical predictions based on intuition often turn out to be wrong and to be outperformed by statistical predictions. Structuring and objectivizing oncological decision-making may thus overcome some of these issues and have advantages such as avoidance of unwarranted clinical practice variance or error-prevention. Even for uncertain situations w...
Precision medicine is the future of health care: please watch the animation at https://vimeo.com/241...
This review provides cancer clinicians and researchers with an overview of methods for assessing pre...
Machine learning approaches to problem-solving are growing rapidly within healthcare, and radiation ...
Purpose: Prostate cancer is the most common cancer in the male population. Radiotherapy is often use...
This work is motivated by the need of providing patients with a decision support system that facilit...
A paradigm shift from current population based medicine to personalized and participative medicine i...
Medical decisions can rely on a very large number of parameters, but it is traditionally considered ...
Themainstepsinplanningradiotherapyconsistinselectingforanypatient diagnosed with a solid tumor (i) a...
AbstractPurposeAn overview of the Rapid Learning methodology, its results, and the potential impact ...
In this thesis, a set of novel approaches has been developed by integration of Cased-Based Reasoning...
PURPOSE: An overview of the Rapid Learning methodology, its results, and the potential impact on rad...
The fields of radiotherapy and clinical oncology have been rapidly changed by the advances of techno...
Dose planning of prostate cancer is a complex and time-consuming process. Usually, oncologists use p...
Purpose An overview of the Rapid Learning methodology, its results, and the potential impact on radi...
Radiation is often used in prostate cancer treatments. Radiotherapy treatment planning is a complex ...
Precision medicine is the future of health care: please watch the animation at https://vimeo.com/241...
This review provides cancer clinicians and researchers with an overview of methods for assessing pre...
Machine learning approaches to problem-solving are growing rapidly within healthcare, and radiation ...
Purpose: Prostate cancer is the most common cancer in the male population. Radiotherapy is often use...
This work is motivated by the need of providing patients with a decision support system that facilit...
A paradigm shift from current population based medicine to personalized and participative medicine i...
Medical decisions can rely on a very large number of parameters, but it is traditionally considered ...
Themainstepsinplanningradiotherapyconsistinselectingforanypatient diagnosed with a solid tumor (i) a...
AbstractPurposeAn overview of the Rapid Learning methodology, its results, and the potential impact ...
In this thesis, a set of novel approaches has been developed by integration of Cased-Based Reasoning...
PURPOSE: An overview of the Rapid Learning methodology, its results, and the potential impact on rad...
The fields of radiotherapy and clinical oncology have been rapidly changed by the advances of techno...
Dose planning of prostate cancer is a complex and time-consuming process. Usually, oncologists use p...
Purpose An overview of the Rapid Learning methodology, its results, and the potential impact on radi...
Radiation is often used in prostate cancer treatments. Radiotherapy treatment planning is a complex ...
Precision medicine is the future of health care: please watch the animation at https://vimeo.com/241...
This review provides cancer clinicians and researchers with an overview of methods for assessing pre...
Machine learning approaches to problem-solving are growing rapidly within healthcare, and radiation ...