Department of Electronics and Instrumentation Engineering, Karpagam College of Engineering, Coimbatore, India.
Department of Information Technology, SRM Institute of Science and Technology, Ramapuram Campus, Bharathi Salai, Ramapuram, Chennai, 600 089 Tamil Nadu, India.
Comput Math Methods Med. 2022 Mar 17;2022:7120983. doi: 10.1155/2022/7120983. eCollection 2022.
Medical data processing is exponentially increasing day by day due to the frequent demand for many applications. Healthcare data is one such field, which is dynamically growing day by day. In today's scenario, an enormous amount of sensing devices and data collection units have been employed to generate and collect medical data all over the world. These healthcare devices will result in big real-time data streams. Hence, healthcare-based big data analytics and monitoring have gained hawk-eye importance but needs improvisation. Recently, machine and deep learning algorithms have gained importance to analyze huge amounts of medical data, extract the information, and even predict the future insights of diseases and also cope with the huge volume of data. But applying the learning models to handle big/medical data streams remains to be a challenge among the researchers. This paper proposes the novel deep learning electronic record search engine algorithm (ERSEA) along with firefly optimized long short-term memory (LSTM) model for better data analytics and monitoring. The experimentations have been carried out using Apache Spark using the different medical respiratory data. Finally, the proposed framework results are contrasted with existing models. It shows the accuracy, sensitivity, and specificity like 94%, 93.5%, and 94% for less than 5 GB dataset, and also, more than 5 GB it provides 94%, 92%, and 93% to prove the extraordinary performance of the proposed framework.
由于许多应用程序的频繁需求,医疗数据处理每天都在呈指数级增长。医疗保健数据就是这样一个领域,它每天都在动态增长。在当今的场景中,已经使用了大量的传感器设备和数据收集单元来生成和收集世界各地的医疗数据。这些医疗保健设备将产生大量的实时数据流。因此,基于医疗保健的大数据分析和监测已经变得至关重要,但需要改进。最近,机器学习和深度学习算法在分析大量医疗数据、提取信息,甚至预测疾病的未来趋势以及应对大量数据方面的重要性日益增加。但是,将学习模型应用于处理大数据/医疗数据流仍然是研究人员面临的挑战。本文提出了一种新的深度学习电子病历搜索引擎算法 (ERSEA) 以及萤火虫优化的长短时记忆 (LSTM) 模型,用于更好地进行数据分析和监测。使用不同的医疗呼吸数据在 Apache Spark 上进行了实验。最后,将提出的框架结果与现有模型进行了对比。它在小于 5GB 的数据集上提供了 94%、93.5%和 94%的准确率、灵敏度和特异性,对于超过 5GB 的数据集,它提供了 94%、92%和 93%的准确率、灵敏度和特异性,证明了该框架的卓越性能。