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Enhancing context-aware SARS disorder management: a proposed multi-agent simulation framework with machine learning and bio-sensor data integration

Abdullah, Zulaikha Fatima, Nida Hafeez, Muhammad Ateeb Ather, Rolando Quintero Tellez, Grigori Sidorov, Carlos Guzmán Sanchéz-Mejorada, Miguel Jesús Torres Ruiz
April 15, 2026
Published Date

Research Abstract & Technology Focus

In this work, SARS disorder denotes a generic acute severe respiratory distress condition characterized by abnormal respiratory rate, oxygen saturation, fever, and cardiovascular stress indicators, and does not represent a COVID-19 diagnostic system. Our research aims at analyzing a context-aware SARS disorder management system through the implementation of a multi-agent simulation framework using the NetLogo setting. The system relies on the use of interacting agents as well as non-monotonic, context-sensitive reasoning to reduce uncertainty and deal with the possible inconsistencies that happen due to biosensor recordings. A knowledge-based inference component is the combination of physiological sensor outputs and domain specific contextual data to assist in making informed decisions. The research involved the use of several machine-learning classifiers, that is, Naïve Bayes, Multinomial Naïve Bayes, Decision Table, Logistic Regression, and Sequential Minimal Optimization (SMO) so as to evaluate their appropriateness in being incorporated into the developed structure. To measure the system performance, standard evaluation measures were used such as True Positive (TP), False Positive (FP), Precision, Recall, F-Measure, Matthews Correlation Coefficient (MCC), Receiver Operating Characteristic (ROC) curve, and the Precision-Recall curve (PRC). The framework includes a list of physiological, environmental, and contextual variables, such as electrocardiographic parameters, heart-rate parameters, blood-pressure parameters, arterial oxygen saturation parameters, core body temperature, room temperature, the past history of the patient, and parameters that relate to alerts. The classification task is to produce probabilistic forecasts that help to define whether a patient should be alerted or clinical staff members informed in order to facilitate context-specific healthcare response.
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What is the core focus of the research titled 'Enhancing context-aware SARS disorder management: a proposed multi-agent simulation framework with machine learning and bio-sensor data integration'?

This literature focuses on: In this work, SARS disorder denotes a generic acute severe respiratory distress condition characterized by abnormal respiratory rate, oxygen saturation, fever, and cardiovascular stress indicators, and does not represent a COVID-19 diagnostic syst...

Are there commercial applications of 'Enhancing context-aware SARS disorder management: a proposed multi-agent simulation framework with machine learning and bio-sensor data integration' in GitHub?

Yes, highly correlated activity was mapped. An entry titled 'Featured Proposal:Supervisory Interface for Long-Horizon Interaction-Empirical Evidence from 180-Day LSO Trace' discusses this: This detailed proposal identifies critical limitations in `AttnRes` for 'long-horizon human–AI interactions,' specifically 'attention saturation' a...

What other academic literature is closely related to 'Enhancing context-aware SARS disorder management: a proposed multi-agent simulation framework with machine learning and bio-sensor data integration'?

Yes, highly correlated activity was mapped. An entry titled 'Holistic Review of UAV-Centric Situational Awareness: Applications, Limitations, and Algorithmic Challenges' discusses this: This paper presents a comprehensive survey of UAV-centric situational awareness (SA), delineating its applications, limitations, and underlying alg...

How is the concept of 'Enhancing context-aware SARS disorder management: a proposed multi-agent simulation framework with machine learning and bio-sensor data integration' being discussed by engineers on Hacker News?

Yes, highly correlated activity was mapped. An entry titled 'Show HN: A living Vancouver. Connor is walking dogs at the SPCA this morning' discusses this: This project represents a shift from static demographic modeling to dynamic, agent-based simulation. By integrating real-time external data (transi...

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