From evidence-based medicine to digital twin technology for predicting ventricular tachycardia in ischaemic cardiomyopathy.
Anouk G W de LepperCarlijn M A BuckMarcel van 't VeerWouter HubertsFrans N van de VosseLukas R C DekkerPublished in: Journal of the Royal Society, Interface (2022)
Survivors of myocardial infarction are at risk of life-threatening ventricular tachycardias (VTs) later in their lives. Current guidelines for implantable cardioverter defibrillators (ICDs) implantation to prevent VT-related sudden cardiac death is solely based on symptoms and left ventricular ejection fraction. Catheter ablation of scar-related VTs is performed following ICD therapy, reducing VTs, painful shocks, anxiety, depression and worsening heart failure. We postulate that better prediction of the occurrence and circuit of VT, will improve identification of patients at risk for VT and boost preventive ablation, reducing mortality and morbidity. For this purpose, multiple time-evolving aspects of the underlying pathophysiology, including the anatomical substrate, triggers and modulators, should be part of VT prediction models. We envision digital twins as a solution combining clinical expertise with three prediction approaches: evidence-based medicine (clinical practice), data-driven models (data science) and mechanistic models (biomedical engineering). This paper aims to create a mutual understanding between experts in the different fields by providing a comprehensive description of the clinical problem and the three approaches in an understandable manner, leveraging future collaborations and technological innovations for clinical decision support. Moreover, it defines open challenges and gains for digital twin solutions and discusses the potential of hybrid modelling.
Keyphrases
- ejection fraction
- heart failure
- catheter ablation
- left ventricular
- aortic stenosis
- atrial fibrillation
- clinical practice
- left atrial
- clinical decision support
- cardiac resynchronization therapy
- electronic health record
- sleep quality
- newly diagnosed
- left atrial appendage
- acute myocardial infarction
- end stage renal disease
- hypertrophic cardiomyopathy
- public health
- depressive symptoms
- small molecule
- mitral valve
- risk assessment
- young adults
- minimally invasive
- acute heart failure
- prognostic factors
- big data
- type diabetes
- bone marrow
- cardiovascular disease
- machine learning
- patient reported
- artificial intelligence
- stem cells