| Literature DB >> 35782065 |
C R Aditya1, Naveen Chakravarthy Sattaru2, Kumaraguruparan Gopal3, R Rahul4, G Chandra Shekara4, Omaima Nasif5, Sulaiman Ali Alharbi6, S S Raghavan7, S Arockia Jayadhas8.
Abstract
Coronary artery calcification (CAC) could assist in the discovery of new risk elements for coronary artery disorder. CAC evaluation, on the other hand, is difficult due to the wide range of CAC in the populations. As a reason, evaluating and analysing data among research have become complicated. In the Research of Inherited Risk Factors for Coronary Atherosclerosis, we used CAC information to test the effects of different analytical methodologies on the correlation with recognized cardiovascular risk elements in asymptomatic patients. Cardiac computed tomography (CT) is also seeing an increase in examinations, and machine learning (ML) could assist with the growing amount of extracted data. Furthermore, there are other sectors in cardiac CT where machine learning could be crucial, including coronary calcium scoring, perfusion, and CT angiography. The establishment of risk evaluation algorithms based on information from CAC utilizing machine learning could assist in the categorization of patients undergoing cardiovascular into distinct risk groups and effectively adapt their treatments to their unique situations. Our findings imply that for forecasting CVD occurrences in asymptomatic people, age-sex segmentation by CAC percentile rank is as effective as absolute CAC scoring. Longitudinal population-based investigations are currently underway and would offer further definitive findings. While machine learning is a strong technology with a lot of possibilities, its implementations in the domain of cardiac CAC are generally in the early stages of development and are not currently commonly accessible in medical practise because of the requirement for substantial verification. Enhanced machine learning will, however, have a significant effect on cardiovascular and coronary artery calcification in the upcoming years.Entities:
Mesh:
Year: 2022 PMID: 35782065 PMCID: PMC9246606 DOI: 10.1155/2022/2632770
Source DB: PubMed Journal: Biomed Res Int Impact factor: 3.246
Figure 1A single-layer neural network (NN) for machine learning against a deep neural network with four hidden layers.
Figure 2Proposed flow chart for the machine learning analysis procedure for CAC.
The coronary calcification sampling (n = 470) compared to the overall ARIC Minneapolis and Forsyth County sampling in terms of age- and sex-adjusted variables (median or prevalent).
| Parameters | Coronary artery calcification (CAC) | |
|---|---|---|
| Median | Standard deviation | |
| Carotid IMT (mm) | 1.87 | 0.37 |
| T. cholesterol (mg/dL) | 323 | 51 |
| HDL-C (mg/dL) | 64 | 29 |
| LDL-C (mg/dL) | 245 | 47 |
| Body mass index (kg/m2) | 37.5 | 6.6 |
| Triglycerides (mg/dL) | 221 | |
| Pack-years | 25 | 20 |
| Waist/hip ratio | 1.02 | 0.19 |
| Hypertension (%) | 33 | |
| Ever smoker (%) | 67 | |
| Diabetes (%) | 6 | |
Figure 3Atherosclerotic vascular disorder prevalence by coronary artery calcium scoring classification. ASVD is an acronym for atherosclerotic vascular disorder.
Coronary artery calcification score clinical correlations.
| 0 | 1-400 | 401-1000 | >1000 |
| |
|---|---|---|---|---|---|
| Preceding myocardial infarctions | 7% | 3% | 11% | 35% | <0.0002 |
| Angina (%) | 10% | 12% | 21% | 52% | <0.0002 |
| Recognized coronary artery disorders (%) | 4% | 20% | 30% | 64% | <0.0002 |
| Any atherosclerotic vascular disorder | 25% | 34% | 53% | 90% | <0.0002 |
Agatston calcium scores and the prevalence of coronary artery calcification in patients with initial and developed rheumatoid arthritis (RA) and healthy controls [46].
| Controller subjects ( | Initial RA ( | Recognized RA ( | Recognized vs. initial RA | |
|---|---|---|---|---|
| Agatston score, average (IQR) | 0 (0-20.3) | 0 (0-53.7) | 41.3 (0-459.9) | — |
| Prevalence of coronary-artery calcification (%) | 49.48 | 53.97 | 71.67 | |
| Agatston score subgroups (%) | ||||
| 1 − 109 | 35.53 | 36.83 | 20.83 | |
| >109 | 24.98 | 28.25 | 51.85 | |
| OR (95% CI) unadjusted | 1 | 2.32 (0.76-3.37) | 4.04 (2.76-6.68) | 3.62 (2.44-5.82) |
|
| 0.66 | <0.002 | 0.005 | |
| Adjusted for age and sex | 1 | 2.42 (0.76-3.75) | 3.84 (2.47-6.58) | 3.09 (2.02-5.4) |
|
| 0.56 | 0.006 | 0.059 | |
| Adjusted for cardiovascular risk factors | 1 | 2.55 (0.78-4.20) | 4.53 (2.66-8.64) | 3.43 (2.06-6.24) |
|
| 0.46 | 0.003 | 0.048 |
Figure 4The frequency distributions of coronary artery calcification (as measured by Agatston scoring) in RA patients and healthier regulate persons. The numbers across the bars represent the number of participants in every scoring subgroup as a percentage of the overall number of individuals.
Individuals with earlier and developed rheumatoid arthritis have different characteristics (RA).
| Characteristics | Initial RA ( | Recognized ( |
|
|---|---|---|---|
| Rheumatoid element (%) | 79.7 | 88.4 | 0.38 |
| Number of swollen joints | 4.0 (0.1-8.0) | 5.0 (0.1-9.0) | 0.86 |
| C-reactive protein (mg/liter) | 5.0 (4.1-11.1) | 6.0 (4.1-27.0) | 0.77 |
| Erythrocyte sedimentation rate (mm/hour) | 25 (6-35) | 20 (8-53) | 0.05 |
| M-HAQ score | 3.9 (2.3-6.1) | 4.7 (2.8-6.7) | 0.26 |
| Pain VAS score | 0.5 (0.1-0.7) | 0.6 (0.2-2.0) | 0.26 |
| Disorder activity VAS score | 3.0 (0.1-7.0) | 3.0 (0.1-8.1) | 0.99 |
Figure 5The age-related incidence of coronary artery calcification in individuals with rheumatoid arthritis (RA) and healthy controls. For those under the age of 60, there was an important association among age and disorder conditions (P < 0.06 for interactions).