利用胸腔声音数据的机器学习简化心力衰竭患者的护理。

IF 2.8 Q3 CARDIAC & CARDIOVASCULAR SYSTEMS
Rony Marethianto Santoso, Wilbert Huang, Ser Wee, Bambang Budi Siswanto, Amiliana Mardiani Soesanto, Wisnu Jatmiko, Aria Kekalih
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引用次数: 0

摘要

心音和肺音共同构成胸腔音,提供反映患者病情的信息细节,特别是心力衰竭(HF)患者。然而,由于人类听力的限制,从胸腔声音中可以听出的信息数量有限。在人工智能-机器学习的帮助下,这些特征可以被分析并帮助心衰患者的护理。胸腔声音数据的机器学习涉及声音数据的预处理,包括去噪、重采样、分割和归一化。然后,最关键的一步是特征提取和选择,选择相关的特征来训练模型。下一步是分类和模型性能评估。这篇综述总结了目前可用的研究,利用不同的机器学习模型,不同的特征提取和选择方法,以及不同的分类器来产生期望的输出。大多数研究通过分析胸腔音的心音分量来区分正常和心衰患者。此外,一些研究旨在根据胸腔声音对HF患者进行整体分类,而另一些研究则侧重于利用胸腔声音对HF患者进行风险分层和预后评估。总的来说,这些研究的结果显示了有希望的高准确性。因此,未来的前瞻性研究应纳入这些机器学习模型,以加快其整合到日常临床实践中,以管理心衰患者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Streamlining heart failure patient care with machine learning of thoracic cavity sound data.

Streamlining heart failure patient care with machine learning of thoracic cavity sound data.

Together, the heart and lung sound comprise the thoracic cavity sound, which provides informative details that reflect patient conditions, particularly heart failure (HF) patients. However, due to the limitations of human hearing, a limited amount of information can be auscultated from thoracic cavity sounds. With the aid of artificial intelligence-machine learning, these features can be analyzed and aid in the care of HF patients. Machine learning of thoracic cavity sound data involves sound data pre-processing by denoising, resampling, segmentation, and normalization. Afterwards, the most crucial step is feature extraction and selection where relevant features are selected to train the model. The next step is classification and model performance evaluation. This review summarizes the currently available studies that utilized different machine learning models, different feature extraction and selection methods, and different classifiers to generate the desired output. Most studies have analyzed the heart sound component of thoracic cavity sound to distinguish between normal and HF patients. Additionally, some studies have aimed to classify HF patients based on thoracic cavity sounds in their entirety, while others have focused on risk stratification and prognostic evaluation of HF patients using thoracic cavity sounds. Overall, the results from these studies demonstrate a promisingly high level of accuracy. Therefore, future prospective studies should incorporate these machine learning models to expedite their integration into daily clinical practice for managing HF patients.

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来源期刊
World Journal of Cardiology
World Journal of Cardiology CARDIAC & CARDIOVASCULAR SYSTEMS-
CiteScore
3.30
自引率
5.30%
发文量
54
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