scholarly journals Dietary protein is the strong predictor of coronary artery disease; a data mining approach

Author(s):  
Sara Saffar Soflaei ◽  
Elham Shamsara ◽  
Toktam Sahranavard ◽  
Habibollah Esmaily ◽  
Mohsen Moohebati ◽  
...  
2013 ◽  
Vol 111 (1) ◽  
pp. 52-61 ◽  
Author(s):  
Roohallah Alizadehsani ◽  
Jafar Habibi ◽  
Mohammad Javad Hosseini ◽  
Hoda Mashayekhi ◽  
Reihane Boghrati ◽  
...  

2020 ◽  
Author(s):  
Sara Saffar Soflaei ◽  
Elham Shamsara ◽  
Toktam Sahranavard ◽  
Habibollah Esmaily ◽  
Mohsen Moohebati ◽  
...  

Abstract Backgrounds and aims: Coronary artery disease (CAD) is the major cause of mortality and morbidity globally. Diet is known to contribute to CAD risk, and the dietary intake of specific macro- or micro-nutrients might be potential predictors of CAD risk. Machine learning methods may be helpful in the analysis of the contribution of several parameters in dietary including macro- and micro-nutrients to CAD risk. Here we aimed to determine the most important dietary factors for predicting CAD.Methods: Total 273 cases with more than 50% obstruction in at least one coronary artery and 443 healthy controls who completed a food frequency questionnaire (FFQ) were entered into the study. All dietary intakes were adjusted for energy intake. QUEST method was applied to determine the diagnosis pattern of CAD.Results: Total 34 dietary variables obtained from FFQ were entered the study that 23 of these variables were significantly associated with CAD according to t-test. Out of 23 dietary input variables adjusted protein, manganese, biotin, zinc and cholesterol remained in the model. According to our tree, only protein intake could identify the patients with coronary artery stenosis according to angiography from healthy participant up to 80%. Manganese dietary intake was the second important variable after protein. The accuracy of the tree was 84.36% for training dataset and 82.94% for testing dataset.Conclusion: Among different macro- and micro-nutrients in the dietary, a combination of protein, manganese, biotin, zinc and cholesterol could predict the presence of CAD.


2020 ◽  
Author(s):  
Sara Saffar Soflaei ◽  
Elham Shamsara ◽  
Toktam Sahranavard ◽  
Habibollah Esmaily ◽  
Mohsen Moohebati ◽  
...  

Abstract Backgrounds and aims: Coronary artery disease (CAD) is the major cause of mortality and morbidity globally. Diet is known to contribute to CAD risk, and the dietary intake of specific macro- or micro-nutrients might be potential predictors of CAD risk. Machine learning methods may be helpful in the analysis of the contribution of several parameters in dietary including macro- and micro-nutrients to CAD risk. Here we aimed to determine the most important dietary factors for predicting CAD.Methods: Total 273 cases with more than 50% obstruction in at least one coronary artery and 443 healthy controls who completed a food frequency questionnaire (FFQ) were entered into the study. All dietary intakes were adjusted for energy intake. QUEST method was applied to determine the diagnosis pattern of CAD.Results: Total 34 dietary variables obtained from FFQ were entered the study that 23 of these variables were significantly associated with CAD according to t-test. Out of 23 dietary input variables adjusted protein, manganese, biotin, zinc and cholesterol remained in the model. According to our tree, only protein intake could identify the patients with coronary artery stenosis according to angiography from healthy participant up to 80%. Manganese dietary intake was the second important variable after protein. The accuracy of the tree was 84.36% for training dataset and 82.94% for testing dataset.Conclusion: Among different macro- and micro-nutrients in the dietary, a combination of protein, manganese, biotin, zinc and cholesterol could predict the presence of CAD.


Author(s):  
Ahmed Abba Haruna ◽  
L. J. Muhammad ◽  
B. Z. Yahaya ◽  
E. J. Garba ◽  
N. D. Oye ◽  
...  

Author(s):  
Matjaž Kukar ◽  
Igor Kononenko ◽  
Ciril Grošelj

The authors present results and the latest advancement in their long-term study on using image processing and data mining methods in medical image analysis in general, and in clinical diagnostics of coronary artery disease in particular. Since the evaluation of modern medical images is often difficult and time-consuming, authors integrate advanced analytical and decision support tools in diagnostic process. Partial diagnostic results, frequently obtained from tests with substantial imperfections, can be thus integrated in ultimate diagnostic conclusion about the probability of disease for a given patient. Authors study various topics, such as improving the predictive power of clinical tests by utilizing pre-test and post-test probabilities, texture representation, multi-resolution feature extraction, feature construction and data mining algorithms that significantly outperform the medical practice. During their long-term study (1995-2011) authors achieved, among other minor results, two really significant milestones. The first was achieved by using machine learning to significantly increase post-test diagnostic probabilities with respect to expert physicians. The second, even more significant result utilizes various advanced data analysis techniques, such as automatic multi-resolution image parameterization combined with feature extraction and machine learning methods to significantly improve on all aspects of diagnostic performance. With the proposed approach clinical results are significantly as well as fully automatically, improved throughout the study. Overall, the most significant result of the work is an improvement in the diagnostic power of the whole diagnostic process. The approach supports, but does not replace, physicians’ diagnostic process, and can assist in decisions on the cost-effectiveness of diagnostic tests.


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