利用深度学习预测不同的呼吸肺部声音

Rajeshree Parsingbhai Vasava, Hetal A. Joshiara
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引用次数: 0

摘要

呼吸时肺部发出的声音可能为医生提供重要信息。基于这些发现,我们推荐了一种基于深度学习的方法来预测与呼吸相关的肺音。所提出的模型是在从患有各种呼吸疾病的人身上收集的肺音中进行训练的。该研究改进了肺音的分类,通过提取声像谱特征并用于训练深度卷积神经网络。所提出的技术准确地预测了许多不同类型的呼吸肺部声音,展示了深度学习在这一领域的前景。该研究结果对自动化诊断工具的开发具有重要意义,可以帮助医生更快、更准确地正确诊断呼吸系统疾病。
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Different Respiratory Lung Sounds Prediction using Deep Learning
The sounds produced by the lungs when breathing might provide important information to physicians. Based on the findings, a deep learning-based approach is recommended for the prediction of breathing-related lung sounds. The Proposed model was trained in lung sounds collected from people suffering from a broad variety of respiratory conditions. The research improves classifying lung sounds, by audio to image spectrogram features is taken and used to train a deep convolutional neural network. The proposed technique accurately predicts many different types of respiratory lung sounds, demonstrating the promise of deep learning in this domain. This research results have important implications for the development of automated diagnostic tools that might help doctors make correct diagnoses of respiratory disorders more quickly and accurately.
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