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Application of Model-Building Based on Arterial Ultrasound Imaging Evaluation to Predict CHD Risk

OBJECTIVE: Atherosclerotic is a chronic systemic disease that may occur in multiple vascular beds, including the carotid arteries, renal arteries, lower limb arteries, and cerebral vessels. Coronary atherosclerosis shares similar risk factors, pathogenesis, and pathophysiological basis with the athe...

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Autores principales: Chen, Xiaoya, Chu, Yinzhu, Hou, Xiaobo, Han, Yue, Zhang, Chunmei, Zhang, Yue, Leng, Yue, Wu, Changjun
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Hindawi 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9553327/
https://www.ncbi.nlm.nih.gov/pubmed/36238469
http://dx.doi.org/10.1155/2022/4615802
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author Chen, Xiaoya
Chu, Yinzhu
Hou, Xiaobo
Han, Yue
Zhang, Chunmei
Zhang, Yue
Leng, Yue
Wu, Changjun
author_facet Chen, Xiaoya
Chu, Yinzhu
Hou, Xiaobo
Han, Yue
Zhang, Chunmei
Zhang, Yue
Leng, Yue
Wu, Changjun
author_sort Chen, Xiaoya
collection PubMed
description OBJECTIVE: Atherosclerotic is a chronic systemic disease that may occur in multiple vascular beds, including the carotid arteries, renal arteries, lower limb arteries, and cerebral vessels. Coronary atherosclerosis shares similar risk factors, pathogenesis, and pathophysiological basis with the atherosclerotic lesions of arteries at these sites. Arterial ultrasound assessment data were used to explore the correlation of atherosclerotic disease with CHD lesions and their severity and the number of lesion branches, as well as to evaluate its value in predicting CHD risk, in combination with traditional risk factors. METHODS: A total of 363 inpatients with suspected CHD in the Department of Cardiology of the First Hospital of Harbin Medical University from November 2017 to June 2021 were selected. Patient clinical data, blood biochemical examination results, and ultrasound examination of neck vessels, abdominal arteries, and limb arteries were collected to obtain atherosclerosis assessment data. We then compared the differences between the CHD group and the control group, analyzed their correlation with CHD lesions and severity and the number of lesion branches, and evaluated the correlation with the coronary Gensini score. After adjustment for traditional risk factors, logistic regression was applied to analyze the relationship between arterial ultrasound assessment data and the risk of CHD. In addition, ROC plots were drawn to evaluate the risk of arterial ultrasound assessment data, combined with traditional risk factors, to predict CHD. RESULTS: With regard to abnormal blood biochemical index values, differences in lipids, HDL-C, FIB, CK-MB, hs-cTnI, BNP, and GGT were found between the CHD group and the control group. Carotid plaque count, abdominal aortic flow velocity, inferior mesenteric artery flow velocity, classification of the number of stenotic branches of abdominal aortic branch arteries, lower-extremity-artery plaque count, degree of lower-extremity-artery stenosis, and lower-extremity-artery AS were risk factors for arterial ultrasound assessment data of CHD. Carotid plaque count, carotid artery AS, inferior mesenteric artery flow velocity, abdominal aortic flow velocity, abdominal aortic plaque count, abdominal aortic branch artery stenosis branch classification, lower-extremity-artery plaque count, lower-extremity-artery stenosis branch classification, degree of lower-extremity-artery stenosis, and lower-extremity-artery AS, combined with traditional risk factors, were mostly more effective than traditional risk factor models in predicting CHD, its severity, and the number of branch lesions; moreover, the predictive value was higher. Specifically, carotid plaque count, carotid AS, lower-extremity-artery AS, the degree of stenosis of lower-extremity arteries, and abdominal aortic branch artery stenosis branch classification can be used as predictor variables for CHD risk. Among these variables, the carotid plaque count can be used as an independent predictor of CHD. CONCLUSION: The incidence of arterial intima–media thickening (IMT), plaques, and stenosis can provide a reference for understanding the pattern of systemic atherogenesis and the distribution of atherosclerosis.
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spelling pubmed-95533272022-10-12 Application of Model-Building Based on Arterial Ultrasound Imaging Evaluation to Predict CHD Risk Chen, Xiaoya Chu, Yinzhu Hou, Xiaobo Han, Yue Zhang, Chunmei Zhang, Yue Leng, Yue Wu, Changjun Comput Math Methods Med Research Article OBJECTIVE: Atherosclerotic is a chronic systemic disease that may occur in multiple vascular beds, including the carotid arteries, renal arteries, lower limb arteries, and cerebral vessels. Coronary atherosclerosis shares similar risk factors, pathogenesis, and pathophysiological basis with the atherosclerotic lesions of arteries at these sites. Arterial ultrasound assessment data were used to explore the correlation of atherosclerotic disease with CHD lesions and their severity and the number of lesion branches, as well as to evaluate its value in predicting CHD risk, in combination with traditional risk factors. METHODS: A total of 363 inpatients with suspected CHD in the Department of Cardiology of the First Hospital of Harbin Medical University from November 2017 to June 2021 were selected. Patient clinical data, blood biochemical examination results, and ultrasound examination of neck vessels, abdominal arteries, and limb arteries were collected to obtain atherosclerosis assessment data. We then compared the differences between the CHD group and the control group, analyzed their correlation with CHD lesions and severity and the number of lesion branches, and evaluated the correlation with the coronary Gensini score. After adjustment for traditional risk factors, logistic regression was applied to analyze the relationship between arterial ultrasound assessment data and the risk of CHD. In addition, ROC plots were drawn to evaluate the risk of arterial ultrasound assessment data, combined with traditional risk factors, to predict CHD. RESULTS: With regard to abnormal blood biochemical index values, differences in lipids, HDL-C, FIB, CK-MB, hs-cTnI, BNP, and GGT were found between the CHD group and the control group. Carotid plaque count, abdominal aortic flow velocity, inferior mesenteric artery flow velocity, classification of the number of stenotic branches of abdominal aortic branch arteries, lower-extremity-artery plaque count, degree of lower-extremity-artery stenosis, and lower-extremity-artery AS were risk factors for arterial ultrasound assessment data of CHD. Carotid plaque count, carotid artery AS, inferior mesenteric artery flow velocity, abdominal aortic flow velocity, abdominal aortic plaque count, abdominal aortic branch artery stenosis branch classification, lower-extremity-artery plaque count, lower-extremity-artery stenosis branch classification, degree of lower-extremity-artery stenosis, and lower-extremity-artery AS, combined with traditional risk factors, were mostly more effective than traditional risk factor models in predicting CHD, its severity, and the number of branch lesions; moreover, the predictive value was higher. Specifically, carotid plaque count, carotid AS, lower-extremity-artery AS, the degree of stenosis of lower-extremity arteries, and abdominal aortic branch artery stenosis branch classification can be used as predictor variables for CHD risk. Among these variables, the carotid plaque count can be used as an independent predictor of CHD. CONCLUSION: The incidence of arterial intima–media thickening (IMT), plaques, and stenosis can provide a reference for understanding the pattern of systemic atherogenesis and the distribution of atherosclerosis. Hindawi 2022-09-19 /pmc/articles/PMC9553327/ /pubmed/36238469 http://dx.doi.org/10.1155/2022/4615802 Text en Copyright © 2022 Xiaoya Chen et al. https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Article
Chen, Xiaoya
Chu, Yinzhu
Hou, Xiaobo
Han, Yue
Zhang, Chunmei
Zhang, Yue
Leng, Yue
Wu, Changjun
Application of Model-Building Based on Arterial Ultrasound Imaging Evaluation to Predict CHD Risk
title Application of Model-Building Based on Arterial Ultrasound Imaging Evaluation to Predict CHD Risk
title_full Application of Model-Building Based on Arterial Ultrasound Imaging Evaluation to Predict CHD Risk
title_fullStr Application of Model-Building Based on Arterial Ultrasound Imaging Evaluation to Predict CHD Risk
title_full_unstemmed Application of Model-Building Based on Arterial Ultrasound Imaging Evaluation to Predict CHD Risk
title_short Application of Model-Building Based on Arterial Ultrasound Imaging Evaluation to Predict CHD Risk
title_sort application of model-building based on arterial ultrasound imaging evaluation to predict chd risk
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9553327/
https://www.ncbi.nlm.nih.gov/pubmed/36238469
http://dx.doi.org/10.1155/2022/4615802
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