利用深度学习对心脏异常自动检测进行强化优化

Ananta Ojha, D. Yadav, Manish Kumar Goyal
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引用次数: 0

摘要

深度学习是人工智能的一个分支,在科学领域越来越有名。尤其是,作者建议使用卷积神经网络(CNN)从心电图记录中发现异常。此外,他们还应用了迁移学习技术来提高对脑电图事实的掌握。作者在两个心电图记录数据集上查看了他们优化后的规则集,结果显示正常准确率为 88.9%。这表明,深度认知技术在检测心脏异常方面具有越来越可靠和坚固的潜力。作者还谈到了未来研究的可行方向以及深度学习在费用和效率方面用于临床安全和诊断的潜力。
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An Enhanced Optimization of Automated Detection of Cardiac Abnormalities Using Deep Learning
Deep gaining knowledge of is a place of artificial intelligence that is becoming increasingly famous inside the scientific area. This paper provides an improved optimization of computerized detection of cardiac abnormalities the use of deep learning. particularly, the authors recommend using a convolutional neural community (CNN) to stumble on abnormalities from ECG records. They use an ensemble of models to further improve accuracy and reduce false superb quotes. moreover, they apply transfer learning techniques to higher generalize the mastering from the EEG facts. The authors take a look at their optimized set of rules on two datasets of ECG recordings and file an normal accuracy of 88.9%. This demonstrates the potential for deep getting to know techniques to end up an increasing number of reliable and sturdy for detecting cardiac abnormalities. The authors also talk the feasible directions of future studies and the potentials of deep learning for clinical safety and diagnostics in phrases of fee and efficiency.
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