PREDICTING MYOCARDIAL INFARCTION COMPLICATIONS AND OUTCOMES WITH DEEP LEARNING

I. Yavru, Sevcan Yilmaz Gündüz
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Abstract

Early diagnosis of cardiovascular diseases, which have high mortality rates all over the world, can save many lives. Various clinical findings and past histories of patients play an important role in diagnosing these diseases. These days, the prediction of cardiovascular diseases has gained great importance in the medical field. Pathological studies are prone to misinterpretation because too many findings are studied. For this reason, many automatic models that work with machine learning methods on patients' findings have been proposed. In this study, a model that predicts twelve myocardial infarction complications based on clinical findings is proposed. The proposed model is a deep learning model with three hidden layers with dropouts and a skip connection. A binary accuracy metric is used for measuring the performance of the proposed method. Rectified Linear Unit is set to the hidden layers and sigmoid function to the output layer as an activation function. Experiments were performed on a real dataset with 1700 patient records and carried out on two main scenarios; training on original data and training on augmented data with 100 epochs. As a result of the experiments, a total accuracy rate of 92% was achieved which is the best accuracy rate that has been proposed on this dataset.
用深度学习预测心肌梗死并发症和预后
心血管疾病在全世界的死亡率都很高,早期诊断可以挽救许多生命。不同的临床表现和患者过去的病史对诊断这些疾病起着重要的作用。近年来,心血管疾病的预测在医学领域得到了很大的重视。病理研究容易产生误解,因为研究的结果太多了。出于这个原因,已经提出了许多与机器学习方法一起工作的自动模型。本研究提出了一种基于临床表现预测12种心肌梗死并发症的模型。提出的模型是一个具有三个隐藏层的深度学习模型,其中包含dropouts和跳跃连接。采用二元精度度量来衡量所提出方法的性能。将整流线性单元设置为隐藏层,将sigmoid函数设置为输出层作为激活函数。实验是在一个有1700个病人记录的真实数据集上进行的,并在两个主要场景下进行;原始数据训练和增广数据100次训练。实验结果表明,总准确率达到92%,是目前在该数据集上提出的最佳准确率。
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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