深度学习在医疗大数据分析中的应用分析综述

Subham Kumar, F. Haneef
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引用次数: 0

摘要

医疗健康数据也急剧增加,随着时代的要求,产生了解读医疗驱动的海量大数据的方法,随着计算机技术的广泛应用,智能地协助医疗健康状况的重组。由于医疗大数据具有异构性、噪声性和非结构化等特点,对医疗大数据进行分析仍然是一项艰巨的任务。传统的机器学习方法不能有效地发现医疗大数据中涉及的主要信息,而深度学习设计了一个分层模型。它由有效特征提取、潜在特征表达和典型模型构建三部分组成。本文致力于研究利用深度学习方法处理医疗大数据的不同方法,并为未来的研究范围提取发现
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Analytical Review on Application of Deep Learning in Medical Big Data Analysis
The data of medical health has also incremented dramatically and methods of interpreting medical-driven huge big data have originated as the requirement with time, assisting in the reorganization of medical health condition intelligently the with the use of technologies of computer widely. Due to the heterogeneous, noisy, and unstructured nature of medical big data, it is still a difficult task to analyze medical big data. The conventional methods of machine learning can’t find out the major information involved in the medical big data efficiently, while deep learning designs a hierarchical model. It consists of effective features of extraction, potential feature expression, and typical model construction. This paper is dedicated to surveying different approaches for medical big data processing using a deep learning approach and extracting finding for future research scope
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