A, Monisha and R, Mariaamutha and Kannaki, Kannaki and Vinayagam, P and Ramaiah, M. and Saranya, M. (2025) Data Driven Deep Learning Model for Effective Stroke Prediction. In: 2025 Global Conference in Emerging Technology (GINOTECH), PUNE, India.
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Abstract
The substantial impact of stroke on society has
driven continuous efforts to enhance its diagnosis and
management. The growing integration of technology with
medical diagnostics empowers healthcare providers to optimize patient care by systematically mining and archiving medical records. This study proposes a Data-Driven Deep Learning (DDDL) model for effective stroke prediction, employing an Attention Residual Network to boost predictive accuracy and support timely clinical interventions. The input data is subjected to a preprocessing stage, where irrelevant and redundant information is cleaned and removed. The Exploratory Data Analysis (EDA) visualization phase incorporates data training and testing, offering valuable insights for further analysis.Classification is executed using the Attention Residual Network, ensuring accurate and dependable predictions. The predicted output aids in the early detection of stroke, enabling prompt clinical decision-making. Python software is utilized for simulation with a accuracy of 90%, validating the model's performance and demonstrating its potential to enhance stroke prediction and improve patient outcomes.
| Item Type: | Conference or Workshop Item (Paper) |
|---|---|
| Subjects: | Electronics and Communication Engineering > Deep Learning |
| Divisions: | Engineering > Electronics and Communication Engineering |
| Depositing User: | Unnamed user with email techsupport@mosys.org |
| Date Deposited: | 22 Dec 2025 09:53 |
| Last Modified: | 01 Jan 2026 06:35 |
| URI: | https://ir.dsce.ac.in/id/eprint/24 |
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