USING MACHINE LEARNING METHODS FOR THE CORRECTION OF BEHAVIORAL RISK FACTORS FOR PREVENTION OF CARDIOVASCULAR DISEASES

2020 ◽  
Vol 4 (97) ◽  
pp. 54-68
Author(s):  
GEORGII G. RAPAKOV ◽  
GENNADII T. BANSHCHIKOV ◽  
VYACHESLAV A. GORBUNOV ◽  
ALEKSEY V. UDARATIN

The article describes machine learning methods in the correction of behavioral risk factors while preventing cardiovascular diseases. The monitoring of health saving educational space in the regional system of medical prevention was implemented. Applying computer modeling the authors developed a model of binding rules based on the method of association rules and suggested the set of 5 logical rules for the risk factor of arterial hypertension. Decision tree method was used to induce decision rules and identify the target group to correct risk factors and increase the quality of arterial hypertension control. The present study provided the analysis and confidence estimation of the prognostic model. The results of this analysis were used to support management decisions in the regional system of preventive medicine.

Sensors ◽  
2020 ◽  
Vol 20 (9) ◽  
pp. 2734 ◽  
Author(s):  
Ayan Chatterjee ◽  
Martin W. Gerdes ◽  
Santiago G. Martinez

Social determining factors such as the adverse influence of globalization, supermarket growth, fast unplanned urbanization, sedentary lifestyle, economy, and social position slowly develop behavioral risk factors in humans. Behavioral risk factors such as unhealthy habits, improper diet, and physical inactivity lead to physiological risks, and “obesity/overweight” is one of the consequences. “Obesity and overweight” are one of the major lifestyle diseases that leads to other health conditions, such as cardiovascular diseases (CVDs), chronic obstructive pulmonary disease (COPD), cancer, diabetes type II, hypertension, and depression. It is not restricted within the age and socio-economic background of human beings. The “World Health Organization” (WHO) has anticipated that 30% of global death will be caused by lifestyle diseases by 2030 and it can be prevented with the appropriate identification of associated risk factors and behavioral intervention plans. Health behavior change should be given priority to avoid life-threatening damages. The primary purpose of this study is not to present a risk prediction model but to provide a review of various machine learning (ML) methods and their execution using available sample health data in a public repository related to lifestyle diseases, such as obesity, CVDs, and diabetes type II. In this study, we targeted people, both male and female, in the age group of >20 and <60, excluding pregnancy and genetic factors. This paper qualifies as a tutorial article on how to use different ML methods to identify potential risk factors of obesity/overweight. Although institutions such as “Center for Disease Control and Prevention (CDC)” and “National Institute for Clinical Excellence (NICE)” guidelines work to understand the cause and consequences of overweight/obesity, we aimed to utilize the potential of data science to assess the correlated risk factors of obesity/overweight after analyzing the existing datasets available in “Kaggle” and “University of California, Irvine (UCI) database”, and to check how the potential risk factors are changing with the change in body-energy imbalance with data-visualization techniques and regression analysis. Analyzing existing obesity/overweight related data using machine learning algorithms did not produce any brand-new risk factors, but it helped us to understand: (a) how are identified risk factors related to weight change and how do we visualize it? (b) what will be the nature of the data (potential monitorable risk factors) to be collected over time to develop our intended eCoach system for the promotion of a healthy lifestyle targeting “obesity and overweight” as a study case in the future? (c) why have we used the existing “Kaggle” and “UCI” datasets for our preliminary study? (d) which classification and regression models are performing better with a corresponding limited volume of the dataset following performance metrics?


2021 ◽  
Vol 12 (5) ◽  
pp. 95-99
Author(s):  
M. Zamboriova ◽  
L. Dimunova ◽  
J. Buckova ◽  
I. Nagyova

Objective: The aim of this research is to identify behavioral risk factors in patients with cardiovascular diseases with a focus on obesity. Design: Descriptive study. Participants: The sample group consisted of 878 patients with ischemic heart disease. Methods: Clinical, laboratory parameters and a questionnaire focused on identifying behavioral risk factors of one ́s lifestyle. Data processing through descriptive and inductive statistics. Results:The mean BMI is 29.39 (± SD 4.69). The results show that 355 (40.2%) patients have obesity and we identified overweight as a precursor to obesity in 377 (42.93%) patients. We found deficiencies in behavioral risk factors (smoking, al- cohol consumption, nutrition, physical activity) in all patients. A significant relationship was confirmed between smoking, alcohol consumption and obesity. Conclusion: The results of our research suggest that there is a need to improve primary and secondary prevention inpa- tients, healthcare professionals and government policy.


2020 ◽  
Vol 3 (38) ◽  
pp. 10-16
Author(s):  
Gulzhan Mukhanova ◽  
◽  
Nurlan Imambayev ◽  
Marina Bakirova ◽  
Laura Sakhanova ◽  
...  

Abstract According to the world health organization, the prevalence of chronic non-communicable diseases has reached epidemic proportions. In today’s world there is a significant increase in the number of patients with arterial hypertension annually. The reasons for the development of this disease, in addition to adverse environmental conditions, are a number of factors related to the lifestyle of a person, as well as behavioral risk factors (bad habits) that provoke violations of the body’s functions and, as a result, the development of the disease. The most significant of them are: overweight, excessive salt consumption, smoking and alcohol abuse, and sedentary lifestyle. These factors are manageable, because as a result of corrective measures, it is possible to reduce their negative impact on the body or to eliminate it completely. In this regard, raising public awareness and actively combating manageable risk factors at the state level is crucial for arterial hypertension prevention. Key words: non-communicable diseases, arterial hypertension, arterial pressure, cardiovascular diseases, risk factors.


Circulation ◽  
2020 ◽  
Vol 141 (Suppl_1) ◽  
Author(s):  
Hesam Dashti ◽  
Yanyan Liu ◽  
Robert J Glynn ◽  
Paul M Ridker ◽  
Samia Mora ◽  
...  

Introduction: Applications of machine learning (ML) methods have been demonstrated by the recent FDA approval of new ML-based biomedical image processing methods. In this study, we examine applications of ML, specifically artificial neural networks (ANN), for predicting risk of cardiovascular (CV) events. Hypothesis: We hypothesized that using the same CV risk factors, ML-based CV prediction models can improve the performance of current predictive models. Methods: Justification for the Use of Statins in Prevention: An Intervention Trial Evaluating Rosuvastatin (JUPITER; NCT00239681) is a multi-ethnic trial that randomized non-diabetic participants with LDL-C<130 mg/dL and hsCRP≥2 mg/L to rosuvastatin versus placebo. We restricted the analysis to white and black participants allocated to the placebo arm, and estimated the race- and sex-specific Pooled Cohorts Equations (PCE) 5-year risk score using race, sex, age, HDL-C, total cholesterol, systolic BP, antihypertensive medications, and smoking. A total of 218 incident CV cases occurred (maximum follow-up 5 years). For every participant in the case group, we randomly selected 4 controls from the placebo arm after stratifying for the baseline risk factors (Table 1). The risk factors from a total of n=1,090 participants were used to train and test the ANN model. We used 80% of the participants (n=872) for designing the network and left out 20% of the data (n=218) for testing the predictive model. We used the TensorFlow software to design, train, and evaluate the ANN model. Results: We compared the performances of the ANN and the PCE score on the 218 test subjects (Figure 1). The high AUC of the neural network (0.85; 95% CI 0.78-0.91) on this dataset suggests advantages of machine learning methods compared to the current methods. Conclusions: This result demonstrates the potential of machine learning methods for enhancing and improving the current techniques used in cardiovascular risk prediction and should be evaluated in other cohorts.


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