BACKGROUND AND PURPOSE: A rapid learning approach has been proposed to extract and apply knowledge from routine care data rather than solely relying on clinical trial evidence. To validate this in practice we deployed a previously developed decision support system (DSS) in a typical, busy clinic for non-small cell lung cancer (NSCLC) patients.MATERIAL AND METHODS: Gender, age, performance status, lung function, lymph node status, tumor volume and survival were extracted without review from clinical data sources for lung cancer patients. With these data the DSS was tested to predict overall survival.RESULTS: 3919 lung cancer patients were identified with 159 eligible for inclusion, due to ineligible histology or stage, non-radical dose, miss...
AbstractPurposeAn overview of the Rapid Learning methodology, its results, and the potential impact ...
PurposeAlthough patients with stage III non-small cell lung cancer (NSCLC) are homogeneous according...
Background Lung cancer treatment decisions are typically made among clinical experts in a multidisci...
BACKGROUND AND PURPOSE: A rapid learning approach has been proposed to extract and apply knowledge f...
Background and purpose: A rapid learning approach has been proposed to extract and apply knowledge f...
AbstractBackground and purposeA rapid learning approach has been proposed to extract and apply knowl...
Background: A clinical decision support system (CDSS) has been designed to predict the outcome (over...
PURPOSE: An overview of the Rapid Learning methodology, its results, and the potential impact on rad...
Purpose An overview of the Rapid Learning methodology, its results, and the potential impact on radi...
We describe an online clinical decision support (CDS) system, Lung Cancer Assistant (LCA), which we ...
The purpose of this study was to find out whether a decision-support system is able to assist a clin...
Background and PurposeTo improve quality and personalization of oncology health care, decision aid t...
Background: A clinical decision support system (CDSS) has been designed to predict the outcome (ove...
Background and Purpose To improve quality and personalization of oncology health care, decision aid ...
Multidisciplinary team (MDT) meetings are becoming the model of care for cancer patients worldwide. ...
AbstractPurposeAn overview of the Rapid Learning methodology, its results, and the potential impact ...
PurposeAlthough patients with stage III non-small cell lung cancer (NSCLC) are homogeneous according...
Background Lung cancer treatment decisions are typically made among clinical experts in a multidisci...
BACKGROUND AND PURPOSE: A rapid learning approach has been proposed to extract and apply knowledge f...
Background and purpose: A rapid learning approach has been proposed to extract and apply knowledge f...
AbstractBackground and purposeA rapid learning approach has been proposed to extract and apply knowl...
Background: A clinical decision support system (CDSS) has been designed to predict the outcome (over...
PURPOSE: An overview of the Rapid Learning methodology, its results, and the potential impact on rad...
Purpose An overview of the Rapid Learning methodology, its results, and the potential impact on radi...
We describe an online clinical decision support (CDS) system, Lung Cancer Assistant (LCA), which we ...
The purpose of this study was to find out whether a decision-support system is able to assist a clin...
Background and PurposeTo improve quality and personalization of oncology health care, decision aid t...
Background: A clinical decision support system (CDSS) has been designed to predict the outcome (ove...
Background and Purpose To improve quality and personalization of oncology health care, decision aid ...
Multidisciplinary team (MDT) meetings are becoming the model of care for cancer patients worldwide. ...
AbstractPurposeAn overview of the Rapid Learning methodology, its results, and the potential impact ...
PurposeAlthough patients with stage III non-small cell lung cancer (NSCLC) are homogeneous according...
Background Lung cancer treatment decisions are typically made among clinical experts in a multidisci...