基于边缘的深度学习模型用于癌症的早期检测

Luca Barillaro, Giuseppe Agapito, M. Cannataro
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引用次数: 0

摘要

癌症是世界上最常见的死亡原因之一。通常,如果出现特征性症状,癌症很容易被诊断出来。然而,许多患有癌症的人没有任何症状。肿瘤的早期诊断对于对比其进展至关重要,有助于确定更有效的治疗方法,以提供长期生存。如果可以通过边缘计算等高性能技术调查敏感数据,那么早期癌症检测是有效的。边缘计算是一种新的范例,它可以在尽可能接近源的地方分析数据,避免将数据导出到外部。因此,基于边缘的深度学习模型可以用于提高早期癌症检测。本文提供了一个基于著名的UCI机器学习数据集库的肿瘤相关数据分类任务的用例,使用基于边缘计算的深度学习方法。此外,手稿提供了边缘计算范式的概述,突出其优点和可用性。我们还描述了一个使用真实肿瘤数据的小实验,以表征性能考虑因素。此外,所提出的模型可用于不同的数据类型,如图像、EGC和ECC信号。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Edge-based Deep Learning Model for Early Detection of Cancer
Cancer is one of the most frequent causes of death in the world. Usually, cancer can be easily diagnosed if characteristic symptoms occur. However, many people who are suffering from cancer have no symptoms. Early diagnosis of tumors is essential to contrast their progression, helping to define more effective treatments to provide long-term survival. Early cancer detection is effective if sensible data can be investigated through high-performance technologies like edge computing. Edge computing is a new paradigm for analyzing data as close to the source as possible, avoiding exporting them outside. Hence, edge-based deep learning models can be applied to improve early cancer detection. This paper provides an use case of a classification task on tumor-related data based on the famous UCI machine learning data sets repository using a deep learning approach based on edge computing. In addition, the manuscript provides an overview of the edge computing paradigm, highlighting its advantages and usability. We also described a small experiment with real tumor data to characterize performance considerations. Moreover, the presented model can be used with different data types, such as images, EGC, and ECC signals.
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