Single Nucleotide Polymorphisms' Causal Structure Robustness within Coronary Artery Disease Patients.
Maria GanopoulouTheodoros MoysiadisAnastasios GounarisNikolaos MittasFani ChatzopoulouDimitrios ChatzidimitriouGeorgios SianosIoannis S VizirianakisLefteris AngelisPublished in: Biology (2023)
An ever-growing amount of accumulated data has materialized in several scientific fields, due to recent technological progress. New challenges emerge in exploiting these data and utilizing the valuable available information. Causal models are a powerful tool that can be employed towards this aim, by unveiling the structure of causal relationships between different variables. The causal structure may avail experts to better understand relationships, or even uncover new knowledge. Based on 963 patients with coronary artery disease, the robustness of the causal structure of single nucleotide polymorphisms was assessed, taking into account the value of the Syntax Score, an index that evaluates the complexity of the disease. The causal structure was investigated, both locally and globally, under different levels of intervention, reflected in the number of patients that were randomly excluded from the original datasets corresponding to two categories of the Syntax Score, zero and positive. It is shown that the causal structure of single nucleotide polymorphisms was more robust under milder interventions, whereas in the case of stronger interventions, the impact increased. The local causal structure around the Syntax Score was studied in the case of a positive Syntax Score, and it was found to be resilient, even when the intervention was strong. Consequently, employing causal models in this context may increase the understanding of the biological aspects of coronary artery disease.
Keyphrases
- coronary artery disease
- end stage renal disease
- ejection fraction
- newly diagnosed
- randomized controlled trial
- chronic kidney disease
- prognostic factors
- physical activity
- healthcare
- heart failure
- cardiovascular disease
- left ventricular
- percutaneous coronary intervention
- acute coronary syndrome
- type diabetes
- big data
- machine learning
- high resolution
- atrial fibrillation
- patient reported outcomes
- coronary artery bypass grafting
- aortic stenosis
- patient reported
- electronic health record
- aortic valve
- data analysis
- solid state