Objective Monitoring of Cardiovascular Biomarkers using Artificial Intelligence (AI)

S. Mahajan, Heemani Dave, S. Bothe, Debarshikar Mahpatra, S. Sonawane, S. Kshirsagar, S. Chhajed
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引用次数: 1

Abstract

Different CVDs (CVD) are the leading wreak of mortality and disability worldwide. The pathology of CVD is complex; multiple biological pathways have been involved. Biomarkers act as a measure of usual or pathogenic biological processes. They play a significant part in the definition, prognostication, and decision-making with respect to the treatment of cardiovascular events. Inthis article, we had summarized key biomarkers which are essential to predict CVDs. We had studied prevalence, pattern of expression of biomarkers (salivary, inflammatory, oxidative stress, chemokines, antioxidants, genetic, etc.), its measurable impact, benefits of early detection and its scope. A considerable number of deaths due to cardiovascular diseases (CVDs) can be attributed to tobacco smoking and it rises the precarious of deathfrom coronary heart disease and cerebrovascular diseases. Cytokines which is categorized into pro inflammatory and anti-inflammatory take part in as biomarkers in CHD, MI, HF. Troponin, growth differentiation factor-15(GDF-15), C-reactive protein, fibrinogen, uric acid diagnose MI and CAD. Matrix Metalloproteins, Cell Adhesion Molecules, Myeloperoxidase, Oxidative stress biomarkers, Incendiary biomarkers are useful to predict the risk of UA, MI, and HF. Increased Endothelin-1, Natriuretic peptides, copeptin, ST-2, Galectin-3, mid-regional-pro-adrenomedullin, catecholamines are used to prognosticate Heart failure. Modern technologies like Artificial Intelligence (AI), Biosensor and high-speed data communication made it possible to collect the high-resolution data in real time. The high-resolution data can be analyzed with advance Machine Learning (ML) algorithms, it will not only help to discover the disease patterns but also an real-time and objective monitoring of bio-signals can help to discover the unknown patterns linked with CVD.
目的:利用人工智能(AI)监测心血管生物标志物
不同的心血管疾病(CVD)是世界范围内导致死亡和残疾的主要原因。心血管疾病的病理是复杂的;涉及多种生物途径。生物标志物是衡量正常或致病生物过程的指标。它们在心血管事件治疗的定义、预测和决策方面发挥着重要作用。本文综述了预测心血管疾病的关键生物标志物。我们研究了患病率,生物标志物(唾液,炎症,氧化应激,趋化因子,抗氧化剂,遗传等)的表达模式,其可测量的影响,早期检测的益处及其范围。相当多因心血管疾病而死亡的人可归因于吸烟,吸烟增加了因冠心病和脑血管疾病死亡的危险。细胞因子分为促炎和抗炎两类,在冠心病、心肌梗死、心衰中作为生物标志物参与治疗。肌钙蛋白、生长分化因子-15(GDF-15)、c反应蛋白、纤维蛋白原、尿酸诊断心肌梗死和冠心病。基质金属蛋白、细胞粘附分子、髓过氧化物酶、氧化应激生物标志物、燃烧性生物标志物可用于预测UA、MI和HF的风险。升高的内皮素-1、利钠肽、copeptin、ST-2、半乳糖凝集素-3、中部促肾上腺髓质素、儿茶酚胺被用来预测心力衰竭。人工智能(AI)、生物传感器和高速数据通信等现代技术使实时收集高分辨率数据成为可能。高分辨率数据可以用先进的机器学习(ML)算法进行分析,它不仅有助于发现疾病模式,而且对生物信号的实时客观监测可以帮助发现与CVD相关的未知模式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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