Optimizing Infectious Disease Diagnostics through AI–Driven Hybrid Decision Making Structures based on Image Analysis

Infectious diseases significantly impact global mortality rates, with their complex symptoms complicating the assessment and determination of infection severity. Various countries grapple with different forms of these diseases. This research utilizes three AI-based decision-making techniques to refi...

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Main Authors: Ahsan Muhammad, Damaševičius Robertas, Shahzad Sarmad
Format: Article
Language:English
Published: Sciendo 2024-09-01
Series:International Journal of Applied Mathematics and Computer Science
Subjects:
Online Access:https://doi.org/10.61822/amcs-2024-0037
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author Ahsan Muhammad
Damaševičius Robertas
Shahzad Sarmad
author_facet Ahsan Muhammad
Damaševičius Robertas
Shahzad Sarmad
author_sort Ahsan Muhammad
collection DOAJ
description Infectious diseases significantly impact global mortality rates, with their complex symptoms complicating the assessment and determination of infection severity. Various countries grapple with different forms of these diseases. This research utilizes three AI-based decision-making techniques to refine diagnostic processes through the analysis of medical imagery. The goal is achieved by developing a mathematical model that identifies potential infectious diseases from medical images, adopting a multi-criteria decision-making approach. The avant-garde, AI-centric methodologies are introduced, harnessing an innovative amalgamation of hypersoft sets in a fuzzy context. Decision-making might include recommendations for isolation, quarantine in domestic or specialized environments, or hospital admission for treatment. Visual representations are used to enhance comprehension and underscore the importance and efficacy of the proposed method. The foundational theory and outcomes associated with this innovative approach indicate its potential for broad application in areas like machine learning, deep learning, and pattern recognition.
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publishDate 2024-09-01
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series International Journal of Applied Mathematics and Computer Science
spelling doaj-art-da97297e48c04433bbcf8c712ed157aa2025-08-20T02:51:50ZengSciendoInternational Journal of Applied Mathematics and Computer Science2083-84922024-09-0134454956310.61822/amcs-2024-0037Optimizing Infectious Disease Diagnostics through AI–Driven Hybrid Decision Making Structures based on Image AnalysisAhsan Muhammad0Damaševičius Robertas1Shahzad Sarmad2Faculty of Informatics, Vytautas Magnus University, 28, K. Donelaičio, 44246Kaunas, LithuaniaFaculty of Informatics, Vytautas Magnus University, 28, K. Donelaičio, 44246Kaunas, LithuaniaDepartment of Mathematics Riphah International University, 1, Main Satiana Road, 38000 Faisalabad, Punjab, PakistanInfectious diseases significantly impact global mortality rates, with their complex symptoms complicating the assessment and determination of infection severity. Various countries grapple with different forms of these diseases. This research utilizes three AI-based decision-making techniques to refine diagnostic processes through the analysis of medical imagery. The goal is achieved by developing a mathematical model that identifies potential infectious diseases from medical images, adopting a multi-criteria decision-making approach. The avant-garde, AI-centric methodologies are introduced, harnessing an innovative amalgamation of hypersoft sets in a fuzzy context. Decision-making might include recommendations for isolation, quarantine in domestic or specialized environments, or hospital admission for treatment. Visual representations are used to enhance comprehension and underscore the importance and efficacy of the proposed method. The foundational theory and outcomes associated with this innovative approach indicate its potential for broad application in areas like machine learning, deep learning, and pattern recognition.https://doi.org/10.61822/amcs-2024-0037medical imagingfuzzy logicdisease diagnosticsdecision supporthealth informatics.
spellingShingle Ahsan Muhammad
Damaševičius Robertas
Shahzad Sarmad
Optimizing Infectious Disease Diagnostics through AI–Driven Hybrid Decision Making Structures based on Image Analysis
International Journal of Applied Mathematics and Computer Science
medical imaging
fuzzy logic
disease diagnostics
decision support
health informatics.
title Optimizing Infectious Disease Diagnostics through AI–Driven Hybrid Decision Making Structures based on Image Analysis
title_full Optimizing Infectious Disease Diagnostics through AI–Driven Hybrid Decision Making Structures based on Image Analysis
title_fullStr Optimizing Infectious Disease Diagnostics through AI–Driven Hybrid Decision Making Structures based on Image Analysis
title_full_unstemmed Optimizing Infectious Disease Diagnostics through AI–Driven Hybrid Decision Making Structures based on Image Analysis
title_short Optimizing Infectious Disease Diagnostics through AI–Driven Hybrid Decision Making Structures based on Image Analysis
title_sort optimizing infectious disease diagnostics through ai driven hybrid decision making structures based on image analysis
topic medical imaging
fuzzy logic
disease diagnostics
decision support
health informatics.
url https://doi.org/10.61822/amcs-2024-0037
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AT damaseviciusrobertas optimizinginfectiousdiseasediagnosticsthroughaidrivenhybriddecisionmakingstructuresbasedonimageanalysis
AT shahzadsarmad optimizinginfectiousdiseasediagnosticsthroughaidrivenhybriddecisionmakingstructuresbasedonimageanalysis