Risk prediction models of cardiovascular diseases and mortality

 

Identification of the risk factors and development of risk prediction models of cardiovascular diseases and mortality
Write a 500–1000-word research proposal, please? I would like to have a proposal about
identification of risk factors that are associated with cardiovascular diseases and mortality and how could predict those factors to prevent both diseases and
mortality. Feel free if you suggest another topic!
I would like to have a 500–1000-word research proposal which it must include a well described statistical methodology and must clearly identify the research
gap. The proposal should include:
1. Introduction and research gap and a justification why the research question is plausible (150-300 words)
2. Research question and aims (150-200 words): Aiming to investigate the role of various factors (e.g alcohol consumption) in cardiovascular related
problem.
3. Methodology (150-300 words): Machine learning approaches (such as neural network and random forest models) to predict a cardiovascular related
problem (e.g. stroke, hypertension) and their risk factors (e.g. smoking) using the local city hospital databases.
4. Expected outcomes (40-100 words).
5. Timeline (as a 3-year research) (40-100 words)
References with weblinks. (Number of references does not matter)

 

Sample Solution

Knowledge is power. If you understand the risks for heart attack, you can take steps to improve your health. Cardiovascular disease is a broad, umbrella term used to describe all conditions affecting the heart and circulatory system, including coronary heart disease, stroke, heart attack and aortic disease. Risk factors for cardiovascular disease are particular habits, behaviors, circumstances or conditions that increase a person`s risk of developing cardiovascular disease, including lack of exercise, unhealthy eating, smoking, diabetes, age and family history. A heart attack can occur at any age. You are never too young to start living healthier. Be a team player and ask for support.

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