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Identifying High Risk of Atherosclerosis Using Deep Learning and Ensemble Learning

机译:使用深度学习和集合学习鉴定动脉粥样硬化的高风险

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Atherosclerosis refers to the buildup of plaque on the artery walls. As the disease advances in its further stages, its burden could lead to stroke or heart attack. Atherosclerosis develops gradually, and mild stages of the condition are usually symptomless. Diagnosing patients in their early stages of the disease can facilitate timely clinical interventions enhancing patient’s quality of life by altering the course of the disease. The work presented in this paper is focused on classifying patients who are at high risk of Atherosclerosis using simple diagnosis tools available in every clinic. The final system is a prescreening tool providing the medical practitioners with recommendations regarding the disease. High risk patients can be referred to a cardiologist for further assessments. A dataset of 44 patients was collected including 17 low-risk and 27 high-risk patients. Two different approaches were taken, 1. using deep learning and time series data (ECG signals) 2. using traditional machine learning algorithms and tabular data. In the first approach, a Conv-GRU model was trained using ECG signals collected from patients. This method resulted in an average accuracy of 77% which was computed over 4 folds using cross validation. In the second approach, Stacking, an ensemble learning technique in which the final prediction is obtained by combining the prediction of different machine learning models trained on several attributes readily collected in the clinic, was used. An average accuracy of 81% was achieved using this method.
机译:动脉粥样硬化是指动脉墙上的斑块的积聚。随着疾病的进一步阶段,其负担可能导致中风或心脏病发作。动脉粥样硬化逐渐发展,条件的温和阶段通常是无形的。诊断患者在其早期疾病中可以通过改变疾病的过程来及时促进临床干预,提高患者的生活质量。本文提出的工作旨在使用每种诊所中可用的简单诊断工具分类为高风险患者。最终系统是一个预先筛选工具,提供有关疾病的建议。高风险患者可以参考心脏病专家进行进一步评估。收集了44名患者的数据集,包括17例低风险和27名高风险患者。采取了两种不同的方法,1.使用深度学习和时间序列数据(ECG信号)2。使用传统的机器学习算法和表格数据。在第一种方法中,使用从患者收集的ECG信号培训CONV-GRU模型。该方法导致平均精度为77%,使用交叉验证计算超过4倍。在第二方法中,堆叠,通过组合在诊所容​​易收集的几个属性上培训的不同机器学习模型的预测来获得最终预测的集合学习技术。使用该方法实现了81%的平均精度。

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