Lung Respiratory Audio Prediction using Transfer Learning Models

Arohi Patel, S. Degadwala, Dhairya Vyas
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引用次数: 4

Abstract

lung disease is now the leading cause of death worldwide. Lung disease is typically discovered in its final stages, after it has progressed to a serious state. However, the early detection of lung disease may assist in treatment. Technological advancements are critical to the delivery of healthcare services in today’s society. Electronic stethoscopes are used to record the audio clips from patients’ lungs. The audio clips provide useful information for lung diagnosis. The medical community is now focusing on the significance of detecting the lung syndrome using audio acoustics, which is a new research topic. This research study provide a range of transfer learning algorithms for lung audio classification, by utilizing the well-known ALEXNET, VGGNET, and RESNET models. With its high accuracy in classifying the lung audio, the aforementioned transfer learning models might be used to diagnose the lung disorders. Transfer learning strategies, its advantages and disadvantages will be discussed in this research study. Furthermore, this research study also suggests future directions for lung audio identification research as a means of distinguishing between the four distinct lung clips.
使用迁移学习模型的肺呼吸音频预测
肺部疾病现在是世界范围内死亡的主要原因。肺部疾病通常在发展到严重状态后的最后阶段被发现。然而,肺部疾病的早期发现可能有助于治疗。在当今社会,技术进步对于提供医疗保健服务至关重要。电子听诊器用于记录患者肺部的音频片段。这些音频片段为肺部诊断提供了有用的信息。作为一个新的研究课题,声学检测肺综合征的意义正受到医学界的关注。本研究利用著名的ALEXNET、VGGNET和RESNET模型,为肺音频分类提供了一系列迁移学习算法。上述迁移学习模型对肺部音频的分类准确率较高,可用于肺部疾病的诊断。本研究将探讨迁移学习策略及其优缺点。此外,本研究还提出了肺音频识别研究的未来方向,以区分四种不同的肺片段。
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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