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Discovering hidden information in biosignals from patients using artificial intelligence

机译:使用人工智能从患者中发现生物中的隐藏信息

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摘要

Biosignals such as electrocardiogram or photoplethysmogram are widely used for determining and monitoring the medical condition of patients. It was recently discovered that more information could be gathered from biosignals by applying artificial intelligence (AI). At present, one of the most impactful advancements in AI is deep learning. Deep learning-based models can extract important features from raw data without feature engineering by humans, provided the amount of data is sufficient. This AI-enabled feature presents opportunities to obtain latent information that may be used as a digital biomarker for detecting or predicting a clinical outcome or event without further invasive evaluation. However, the black box model of deep learning is difficult to understand for clinicians familiar with a conventional method of analysis of biosignals. A basic knowledge of AI and machine learning is required for the clinicians to properly interpret the extracted information and to adopt it in clinical practice. This review covers the basics of AI and machine learning, and the feasibility of their application to real-life situations by clinicians in the near future.
机译:诸如心电图或光学读数的生物关像族广泛用于确定和监测患者的病态。最近发现,通过应用人工智能(AI),可以从生物社器中收集更多信息。目前,AI最有影响的进步之一是深度学习。基于深度学习的模型可以通过人类的未经功能工程从原始数据中提取重要特征,只要数据量就足够了。该启用AI的特征提供了获得可以用作数字生物标志物的潜在信息的机会,以检测或预测临床结果或事件而无需进一步侵入评估。然而,对于熟悉传统分析生物资源的临床医生,深层学习的黑匣子模型难以理解。临床医生需要对AI和机器学习的基本知识进行适当地解释提取的信息并在临床实践中采用它。本综述涵盖了AI和机器学习的基础知识,以及临床医生在不久的将来的现实生活中申请的可行性。

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