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Related Concept Videos

Blood Studies for Cardiovascular System I: Cardiac Biomarkers01:20

Blood Studies for Cardiovascular System I: Cardiac Biomarkers

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Cardiac biomarkers are enzymes, proteins, and hormones released into the blood when cardiac cells are injured. They are powerful tools for triaging.
The essential diagnostic tools for detecting myocardial necrosis and monitoring individuals suspected of having acute coronary syndrome (ACS) include:
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Assessment of the Cardiovascular System I: Subjective Data01:23

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A thorough health history and physical assessment are essential for identifying cardiovascular disease (CVD) symptoms and distinguishing them from other health issues.
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Blood Studies for Cardiovascular System II: CRP, Hcy, and Cardiac Natriuretic Peptide Markers01:19

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Cardiac biomarkers are critical in diagnosing, prognosing, and managing cardiovascular diseases. Routine measurement of specific biomarkers such as B-type natriuretic peptide (BNP), C-reactive protein (CRP), and homocysteine (Hcy) is common practice in clinical settings to evaluate heart function and predict cardiovascular events.
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Factors Influencing Heart Rate01:30

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The heart rate, or pulse rate, is a vital indicator of cardiovascular health. It reflects the number of times the heart beats per minute. Various physiological and environmental factors influence heart rate, increasing or decreasing cardiac output. Understanding these factors is crucial for assessing heart function and identifying potential health issues.
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Coronary Artery Disease I: Introduction01:30

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Coronary Artery Disease (CAD): An Overview with Scientific InsightsCoronary Artery Disease (CAD), often referred to as C-A-D, is a prevalent blood vessel disorder classified under the broader category of atherosclerosis. Atherosclerosis is a pathological process characterized by the hardening and narrowing of arteries due to the accumulation of atherosclerotic plaques. These plaques are composed of cholesterol, fatty substances, inflammatory cells, calcium, and fibrin, reducing blood flow to...
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Psychoneuroimmunology: Cardiovascular Disease01:27

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Psychoneuroimmunology (PNI) is a multidisciplinary field that examines how psychological factors, particularly stress, interact with the immune system and impact physical health. Research in PNI has shown that chronic or traumatic stress can disrupt both the hypothalamic-pituitary-adrenal axis and the sympathetic nervous system. These disruptions contribute to serious health conditions, including cardiovascular diseases.
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Hydra, a Computer-Based Platform for Aiding Clinicians in Cardiovascular Analysis and Diagnosis
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Machine Learning Model for Predicting CVD Risk on NHANES Data.

G A Klados, K Politof, E S Bei

    Annual International Conference of the IEEE Engineering in Medicine and Biology Society. IEEE Engineering in Medicine and Biology Society. Annual International Conference
    |December 11, 2021
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    Summary
    This summary is machine-generated.

    This study developed a machine learning model using NHANES data to predict cardiovascular disease (CVD) risk. This tool aids in early detection and prevention of serious cardiac events, especially in young adults.

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    Area of Science:

    • Cardiology
    • Machine Learning
    • Public Health

    Background:

    • Cardiovascular disease (CVD) is a leading global cause of death and economic burden.
    • Early symptoms, often self-assessed and recorded, are clinically relevant for CVD risk.
    • Existing CVD assessment methods can be enhanced with predictive tools.

    Purpose of the Study:

    • To develop a machine learning model for assessing cardiovascular disease risk.
    • To utilize selected CVD-related information from NHANES data for risk prediction.
    • To create a screening tool for early CVD detection and prevention.

    Main Methods:

    • Machine learning model development.
    • Analysis of NHANES data for CVD-related factors.
    • Model validation for screening and retrospective assessment.

    Main Results:

    • The proposed machine learning model shows promising results in CVD risk prediction.
    • The model can effectively complement current clinical data for improved CVD assessment.
    • The model is suitable for mass screening of young adults.

    Conclusions:

    • The developed machine learning model can serve as an effective screening tool for cardiovascular disease risk.
    • Early prediction and control of cardiovascular problems can be improved.
    • The model supports timely intervention to prevent serious cardiac events.