Recent deep learning models for dementia as point-of-care testing: Potential for early detection.

IF 1.1 Q2 MEDICINE, GENERAL & INTERNAL Intractable & rare diseases research Pub Date : 2023-02-01 DOI:10.5582/irdr.2023.01015
Kenji Karako, Peipei Song, Yu Chen
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引用次数: 1

Abstract

Deep learning has been intensively researched over the last decade, yielding several new models for natural language processing, images, speech and time series processing that have dramatically improved performance. This wave of technological developments in deep learning is also spreading to medicine. The effective use of deep learning in medicine is concentrated in diagnostic imaging-related applications, but deep learning has the potential to lead to early detection and prevention of diseases. Physical aspects of disease that went unnoticed can now be used in diagnosis with deep learning. In particular, deep learning models for the early detection of dementia have been proposed to predict cognitive function based on various information such as blood test results, speech, and the appearance of the face, where the effects of dementia can be seen. Deep learning is a useful diagnostic tool, as it has the potential to detect diseases early based on trivial aspects before clear signs of disease appear. The ability to easily make a simple diagnosis based on information such as blood test results, voice, pictures of the body, and lifestyle is a method suited to point-of-cate testing, which requires immediate testing at the desired time and place. Over the past few years, the process of predicting disease can now be visualized using deep learning, providing insights into new methods of diagnosis.

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最近的深度学习模型用于痴呆的即时检测:早期发现的潜力。
在过去的十年中,深度学习得到了深入的研究,产生了几种用于自然语言处理、图像、语音和时间序列处理的新模型,这些模型大大提高了性能。深度学习的技术发展浪潮也蔓延到了医学领域。深度学习在医学中的有效应用主要集中在与诊断成像相关的应用中,但深度学习有可能导致疾病的早期发现和预防。以前未被注意到的疾病的物理方面现在可以通过深度学习用于诊断。特别是,已经提出了用于痴呆症早期检测的深度学习模型,该模型可以根据血液检查结果、语言、面部外观等各种信息预测认知功能,这些信息可以看到痴呆症的影响。深度学习是一种有用的诊断工具,因为它有可能在疾病出现明显迹象之前,根据微不足道的方面及早发现疾病。根据血液检查结果、声音、身体照片和生活方式等信息,轻松做出简单诊断的能力是一种适合于在所需时间和地点立即进行检测的点对点检测的方法。在过去的几年里,预测疾病的过程现在可以使用深度学习进行可视化,为新的诊断方法提供见解。
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来源期刊
Intractable & rare diseases research
Intractable & rare diseases research MEDICINE, GENERAL & INTERNAL-
CiteScore
2.10
自引率
0.00%
发文量
29
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