基于迁移学习方法的肺音识别研究进展

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

摘要

“肺部疾病现在被认为是全球致命疾病之一。然而,肺部疾病的早期发现可能有助于提供早期治疗,因为大多数肺部疾病只有在进展到晚期才被发现。今天的医疗保健系统依赖于最近的技术进步。肺音分析在肺部疾病的诊断中起着至关重要的作用。此外,医疗系统的成功导航需要获取新信息并在新环境中利用它的能力。为了进行分类,本研究提出了几种迁移学习策略,包括ALEXNET、VGGNET和RES NET,用于分析肺音。为了补充这些技术,使用了一种迁移学习模型,该模型结合了改进的RESNET和肺声信号的Mel谱图来进行分类。这些迁移学习模型在肺音分类方面表现有效,可用于呼吸道疾病的诊断。本研究分析了几种迁移学习方法,并讨论了它们在识别四种不同类型肺音方面的优缺点。最后,对今后肺音识别的研究方向进行了探讨。
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Lung Sounds Identification based On Transfer Learning Approaches : A Review
“lung diseases are now considered as one of the fatal diseases across the globe. However, early detection of lung disease may help in providing earlier treatment since most cases of lung diseases are only detected after they have progressed to advanced stage. Today's healthcare system relies on the recent technological advancements. Lung sound analysis plays a crucial role in the diagnosis of lung disease. Further, the successful navigation of medical system requires the ability to acquire new information and utilize it in new contexts. To perform classification, this research work presents several transfer learning strategies, including ALEXNET, VGGNET, and RES NET for analyzing the lung sounds. To complement the techniques, a Transfer learning model that incorporates a Modified RESNET with a Mel spectrogram of lung sound signals are used to perform classification. These transfer learning models perform efficiently in classifying the lung sounds, which can be later used to diagnose respiratory diseases. This research study analyzes several transfer learning methods and discuss their benefits and drawbacks in identifying four distinct types of lung sounds. Finally, the further research directions on the identification of lung sounds are discussed.”
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