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首页> 外文期刊>International journal of computer science and network security >Applying K-Nearest Neighbors (Knn) Classifier For The Prediction Of Carotid Intima-Media Thickness
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Applying K-Nearest Neighbors (Knn) Classifier For The Prediction Of Carotid Intima-Media Thickness

机译:应用K-Collect邻居(KNN)分类器进行颈动脉内膜厚度的预测

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The ability to predict the progress of silent disorders that yields to high-risk disease prevention is a key success in health services. As atherosclerosis runs silently inside our arteries, the ability of predicting its existence noninvasively may contribute significantly towards heart attack and brain stroke pre-detection and prevention. This study developed a KNN-based classifier for predicting the high-risk atherosclerosis based on the analysis of photoplethysmogram waveform. The developed model showed an overall accuracy of 85.185%, 73.58% specificity, and 90.8% sensitivity. The obtained results strengthen the ability of KNN to classify patients based on their atherosclerosis progress into high-risk patient or normal patient. This model can be used to assist the evaluation of the silent progress of atherosclerosis, arteriosclerosis, arterial stiffness, heart attack, and brain strokes in clinical settings using the non-invasive, affordable, and easy to implement PPG technique.
机译:预测静音疾病的进展能力,即高危疾病预防疾病的进展是卫生服务的关键取得成功。随着动脉粥样硬化在我们的动脉内部静静地运行,预测其存在的能力可能对心脏病发作和脑卒中预测和预防有显着贡献。该研究开发了一种基于KNN的分类器,用于预测基于光增性倍差分析的高危动脉粥样硬化。开发模型显示出85.185%,特异性73.58%的总体精度和90.8%的灵敏度。所获得的结果增强了KNN将患者基于动脉粥样硬化进展分类为高危患者或正常患者的能力。该模型可用于评估使用非侵入性,实惠且易于实施PPG技术的临床环境中动脉粥样硬化,动脉硬化,动脉僵硬,心脏病发作和脑卒中的静音进展。

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