(NMRNN-LSTM) - Novel Modified RNN with Long and Short-Term Memory Unit in Healthcare and Big Data Applications

N. Deepa, S. Prabakeran, D. T
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Abstract

In the modern world, people's expectations and needs are automatically supportive and easy to use such as voice messages, playing music, or movies automatically which may reduce the manual operations mostly. In past decades technological advances such as machine learning and its application over many data like structured and unstructured are very much tedious. Whereas the operations based on non-categorical data, and categorical data are working rapidly using Natural Language Processing (NLP) comparatively, existing ones were not very productive. Each process on the internet is carrying an enormous amount of information which can lag in storage as well as performance. When any CRUD operations such as create, modify, update and delete are being analyzed one at a time, complex data such as unstructured and structured data are used in any field. In such a way the location analysis, social media data, health organization information, etc are categorized in natural language processing (NLP). The proposed work is organized as i) managing the huge amount of data in healthcare and log files created due to electronic health record management(EHR), ii) Unstructured data that are generated from all electronic equipment such as monitoring heartbeat, brain waves, etc that can be interpreted to classify using machine learning algorithms. To overcome the complications and medical records access inefficiency due to the complex structure of the dataset, Natural language processing uses the recurrent neural network along with the novel modified long and short-term memory unit (NMRNN-LSTM). Using the big data types such as structured, unstructured, and reinforcement kind of databases which handle images such as CTs, X-rays, MRI, raw texts, video streaming medical history to have effective systems and clinical records for enhancing the technological Medical care.
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(NMRNN-LSTM) -具有长短期记忆单元的新型改进RNN在医疗保健和大数据中的应用
在现代社会,人们的期望和需求都是自动支持和易于使用的,例如语音信息,自动播放音乐或电影,这可能会大大减少人工操作。在过去的几十年里,机器学习等技术进步及其在许多数据(如结构化和非结构化数据)上的应用非常繁琐。自然语言处理(NLP)对非分类数据和分类数据的处理速度相对较快,但现有的NLP处理效率不高。互联网上的每个进程都承载着大量的信息,这些信息在存储和性能上都存在滞后。当每次分析一个CRUD操作(如创建、修改、更新和删除)时,复杂的数据(如非结构化和结构化数据)将用于任何字段。这样,位置分析、社交媒体数据、卫生组织信息等就可以在自然语言处理(NLP)中进行分类。拟议的工作组织如下:i)管理由于电子健康记录管理(EHR)而创建的医疗保健和日志文件中的大量数据;ii)从所有电子设备(如监测心跳、脑电波等)生成的非结构化数据,这些数据可以使用机器学习算法进行解释和分类。为了克服由于数据集结构复杂而导致的并发症和医疗记录访问效率低下,自然语言处理使用了递归神经网络以及新型修改的长短期记忆单元(NMRNN-LSTM)。利用结构化、非结构化、强化型数据库等大数据类型,处理ct、x光、MRI、原始文本、视频流病史等图像,建立有效的系统和临床记录,提高技术医疗水平。
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