| Literature DB >> 30515717 |
Daniel Pinto Dos Santos1, Bettina Baeßler2.
Abstract
The past few years have seen a considerable rise in interest towards artificial intelligence and machine learning applications in radiology. However, in order for such systems to perform adequately, large amounts of training data are required. These data should ideally be standardised and of adequate quality to allow for further usage in training of artificial intelligence algorithms. Unfortunately, in many current clinical and radiological information technology ecosystems, access to relevant pieces of information is difficult. This is mostly because a significant portion of information is handled as a collection of narrative texts and interoperability is still lacking. This review aims at giving a brief overview on how structured reporting can help to facilitate research in artificial intelligence and the context of big data.Entities:
Keywords: Artificial intelligence; Information technology; Machine learning; Radiology
Year: 2018 PMID: 30515717 PMCID: PMC6279752 DOI: 10.1186/s41747-018-0071-4
Source DB: PubMed Journal: Eur Radiol Exp ISSN: 2509-9280
Fig. 1Images from the ChestXray14 dataset labelled as showing atelectasis (red boxes indicate wrong label, orange indicate doubtful). Courtesy of Luke Oakden-Rayner (available at: https://lukeoakdenrayner.wordpress.com/2017/12/18/the-chestxray14-dataset-problems/) , with permission
Fig. 2Example of a structured report template for pulmonary embolism (left), and a dashboard visualising summary results of all reports created with this template (right). Such information could also be used as labels to the corresponding imaging study