Artificial intelligence to enhance clinical value across the spectrum of cardiovascular healthcare.
Simrat K GillAndreas KarwathHae-Won UhVictor Roth CardosoZhujie GuAndrey BarskyLuke T SlaterAnimesh AcharjeeJinming DuanLorenzo Dall'OlioSaid El BouhaddaniSaisakul ChernbumroongMary StanburySandra HaynesFolkert W. AsselbergsDiederick E GrobbeeMarinus J C EijkemansGeorgios V GkoutosDipak Kotechanull nullPublished in: European heart journal (2023)
Artificial intelligence (AI) is increasingly being utilized in healthcare. This article provides clinicians and researchers with a step-wise foundation for high-value AI that can be applied to a variety of different data modalities. The aim is to improve the transparency and application of AI methods, with the potential to benefit patients in routine cardiovascular care. Following a clear research hypothesis, an AI-based workflow begins with data selection and pre-processing prior to analysis, with the type of data (structured, semi-structured, or unstructured) determining what type of pre-processing steps and machine-learning algorithms are required. Algorithmic and data validation should be performed to ensure the robustness of the chosen methodology, followed by an objective evaluation of performance. Seven case studies are provided to highlight the wide variety of data modalities and clinical questions that can benefit from modern AI techniques, with a focus on applying them to cardiovascular disease management. Despite the growing use of AI, further education for healthcare workers, researchers, and the public are needed to aid understanding of how AI works and to close the existing gap in knowledge. In addition, issues regarding data access, sharing, and security must be addressed to ensure full engagement by patients and the public. The application of AI within healthcare provides an opportunity for clinicians to deliver a more personalized approach to medical care by accounting for confounders, interactions, and the rising prevalence of multi-morbidity.
Keyphrases
- artificial intelligence
- big data
- machine learning
- healthcare
- deep learning
- electronic health record
- end stage renal disease
- cardiovascular disease
- ejection fraction
- newly diagnosed
- prognostic factors
- chronic kidney disease
- peritoneal dialysis
- type diabetes
- data analysis
- coronary artery disease
- risk assessment
- climate change
- patient reported
- risk factors
- cardiovascular risk factors
- clinical practice
- quality improvement