基于AI的移动健康应用系统动态预测模型

Adari Ramesh, Dr. C K Subbaraya, Dr. G K Ravi Kumar
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引用次数: 1

摘要

近几十年来,移动医疗(m-health)应用程序在医疗保健领域获得了极大的关注,因为它们在心脏病、脊髓问题和脑损伤等危重病例中得到了越来越多的支持。此外,移动医疗服务被认为更有价值,特别是在设施不足的地方。此外,它还支持有线和先进的无线技术,用于数据传输和通信。在这项工作中,实现了基于人工智能的深度学习模型来预测医疗保健数据,其中执行数据处理以提高预测性能。它包括数据收集、规范化、基于人工智能的分类和决策等工作模块。在这里,移动健康数据是通过服务提供商从智能设备获得的,其中包括与血压、心率、血糖水平等相关的健康信息。本文的主要贡献是使用基于人工智能的移动医疗系统从患者数据集中准确预测心血管疾病(CVD)。在获得数据后,由于预测性能高度依赖于数据质量,因此可以进行预处理以进行降噪和归一化。因此,我们使用大猩猩群体优化算法(GTOA)来选择最相关的函数进行分类器训练和测试。使用双向长期记忆(Bi-LSTM)根据一组选定的特征对他的CVD类型进行分类。此外,使用不同的度量对所提出的基于人工智能的预测模型的性能进行了验证和比较。
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AI based Dynamic Prediction Model for Mobile Health Application System
In recent decades, mobile health (m-health) applications have gained significant attention in the healthcare sector due to their increased support during critical cases like cardiac disease, spinal cord problems, and brain injuries. Also, m-health services are considered more valuable, mainly where facilities are deficient. In addition, it supports wired and advanced wireless technologies for data transmission and communication. In this work, an AI-based deep learning model is implemented to predict healthcare data, where the data handling is performed to improve the prediction performance. It includes the working modules of data collection, normalization, AI-based classification, and decision-making. Here, the m-health data are obtained from the smart devices through the service providers, which comprises the health information related to blood pressure, heart rate, glucose level, etc. The main contribution of this paper is to accurately predict Cardio Vascular Disease (CVD) from the patient dataset using the AI-based m-health system. After obtaining the data, preprocessing can be performed for noise reduction and normalization because prediction performance highly depends on data quality. Consequently, We use the Gorilla Troop Optimization Algorithm (GTOA) to select the most relevant functions for classifier training and testing. Classify his CVD type according to a selected set of features using bidirectional long-term memory (Bi-LSTM). Moreover, the proposed AI-based prediction model’s performance is validated and compared using different measures.
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