Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

RNN-LSTM BASED REGULAR HEALTH FACTOR ANALYSIS IN MEDICAL ENVIRONMENT

View through CrossRef
In an era where fast-paced routines, high stress, and unhealthy habits have become the norm, modern society is facing a surge in health problems such as high blood pressure, diabetes, poor sleep, and chronic stress. These lifestyle-related conditions often go unnoticed until they become severe, making early detection and preventive care more critical than ever. This project addresses that urgent need by leveraging advanced AI-powered deep learning models, specifically RNN and LSTM, to analyze commonly available health metrics—such as stress levels, blood pressure, glucose, cholesterol, and sleep duration— and accurately predict whether an individual is at high or low health risk. It empowers users to monitor their wellbeing regularly without relying on constant medical supervision, while also supporting healthcare professionals in identifying high-risk individuals who require timely attention. By shifting the focus from reactive treatments to proactive health management, the system promotes healthier lifestyles. This study presents a deep learning-based health risk prediction model using Bidirectional Recurrent Neural Networks (RNN) and Long Short-Term Memory (LSTM) networks to analyze regular health factors. The model focuses on early identification of individuals at risk by processing commonly available health attributes such as stress levels, blood pressure, glucose levels, cholesterol levels, sleep duration, activity level, heart rate, and sex. A structured data pipeline was followed, beginning with an 8-feature dataset of 982 records. Standardization and reshaping techniques were applied to prepare the data for sequential deep learning models. Unlike traditional machine learning approaches, this model utilizes the temporal learning capabilities of RNN and LSTM architectures to capture intricate, non-linear relationships between health parameters. Bidirectional layers further enhance accuracy by analyzing patterns in both forward and backward directions. The model was trained with early stopping and learning rate scheduling to prevent overfitting and improve convergence. The Bidirectional LSTM model achieved superior performance with a test accuracy of over 90%, outperforming the Simple RNN variant. Designed for scalability and realtime integration, the model provides a lightweight and accurate solution for personalized, preventive healthcare. This approach demonstrates the effectiveness deep learning models like RNN, LSTM for heart disease prediction, providing a practi-cal solution for early diagnosis and informed decision-making in medical practice.
Title: RNN-LSTM BASED REGULAR HEALTH FACTOR ANALYSIS IN MEDICAL ENVIRONMENT
Description:
In an era where fast-paced routines, high stress, and unhealthy habits have become the norm, modern society is facing a surge in health problems such as high blood pressure, diabetes, poor sleep, and chronic stress.
These lifestyle-related conditions often go unnoticed until they become severe, making early detection and preventive care more critical than ever.
This project addresses that urgent need by leveraging advanced AI-powered deep learning models, specifically RNN and LSTM, to analyze commonly available health metrics—such as stress levels, blood pressure, glucose, cholesterol, and sleep duration— and accurately predict whether an individual is at high or low health risk.
It empowers users to monitor their wellbeing regularly without relying on constant medical supervision, while also supporting healthcare professionals in identifying high-risk individuals who require timely attention.
By shifting the focus from reactive treatments to proactive health management, the system promotes healthier lifestyles.
This study presents a deep learning-based health risk prediction model using Bidirectional Recurrent Neural Networks (RNN) and Long Short-Term Memory (LSTM) networks to analyze regular health factors.
The model focuses on early identification of individuals at risk by processing commonly available health attributes such as stress levels, blood pressure, glucose levels, cholesterol levels, sleep duration, activity level, heart rate, and sex.
A structured data pipeline was followed, beginning with an 8-feature dataset of 982 records.
Standardization and reshaping techniques were applied to prepare the data for sequential deep learning models.
Unlike traditional machine learning approaches, this model utilizes the temporal learning capabilities of RNN and LSTM architectures to capture intricate, non-linear relationships between health parameters.
Bidirectional layers further enhance accuracy by analyzing patterns in both forward and backward directions.
The model was trained with early stopping and learning rate scheduling to prevent overfitting and improve convergence.
The Bidirectional LSTM model achieved superior performance with a test accuracy of over 90%, outperforming the Simple RNN variant.
Designed for scalability and realtime integration, the model provides a lightweight and accurate solution for personalized, preventive healthcare.
This approach demonstrates the effectiveness deep learning models like RNN, LSTM for heart disease prediction, providing a practi-cal solution for early diagnosis and informed decision-making in medical practice.

Related Results

Energy-efficient architectures for recurrent neural networks
Energy-efficient architectures for recurrent neural networks
Deep Learning algorithms have been remarkably successful in applications such as Automatic Speech Recognition and Machine Translation. Thus, these kinds of applications are ubiquit...
ACKNOWLEDGMENTS
ACKNOWLEDGMENTS
The UP Manila Health Policy Development Hub recognizes the invaluable contribution of the participants in theseries of roundtable discussions listed below: RTD: Beyond Hospit...
Development of a Recurrent Neural Network Model for Prediction of Dengue Importation
Development of a Recurrent Neural Network Model for Prediction of Dengue Importation
ObjectiveWe aim to develop a prediction model for the number of imported cases of infectious disease by using the recurrent neural network (RNN) with the Elman algorithm1, a type o...
Prediction of COVID-19 Data Using an ARIMA-LSTM Hybrid Forecast Model
Prediction of COVID-19 Data Using an ARIMA-LSTM Hybrid Forecast Model
The purpose of this study is to study the spread of COVID-19, establish a predictive model, and provide guidance for its prevention and control. Considering the high complexity of ...
High-precision blood glucose prediction and hypoglycemia warning based on the LSTM-GRU model
High-precision blood glucose prediction and hypoglycemia warning based on the LSTM-GRU model
Objective: The performance of blood glucose prediction and hypoglycemia warning based on the LSTM-GRU (Long Short Term Memory - Gated Recurrent Unit) model was evaluated. Methods: ...
Generative Deep Neural Networks for Estimating Hypervariability in Hepatitis B and C Virus Genomes
Generative Deep Neural Networks for Estimating Hypervariability in Hepatitis B and C Virus Genomes
Abstract Hepatitis B virus (HBV) and Hepatitis C virus (HCV) have always remained a greater global concern. Approximately 1.3 million deaths occur each year due to HBV and ...
Optimized Deep Learning Model Using Nature-Inspired Algorithm for Depression Sentiment Analysis
Optimized Deep Learning Model Using Nature-Inspired Algorithm for Depression Sentiment Analysis
Introduction: Depression is a prevalent mental health disorder that significantly impacts emotional well-being, cognitive function, and daily activities. Early detection is essenti...
ANN-LSTM-A Water Consumption Prediction Based on Attention Mechanism Enhancement
ANN-LSTM-A Water Consumption Prediction Based on Attention Mechanism Enhancement
To reduce the energy consumption of domestic hot water (DHW) production, it is necessary to reasonably select a water supply plan through early predictions of DHW consumption to op...

Back to Top