Neutrosophic Topological Spaces for Spatially-Aware Uncertainty Modeling in Lung Cancer Diagnosis

Authors

  • S. A. Alblowi Department of Mathematics and Statistics, College of Science and, University of Jeddah, Jeddah, Saudi Arabia.
  • A.A. Salama Dept. of Math and Computer Sci., Faculty of Science, Port Said Univ.,
  • Huda E. Khalid University of Telafer, The Administration Assistant for the President of the Telafer University, Telafer, Iraq;
  • Ahmed K. Essa University of Telafer, The Administration Assistant for the President of the Telafer University, Telafer, Iraq;
  • Arafa A.Nasef Department of Physics and Engineering Mathematics, Faculty of Engineering, Kafrelsheikh University, Kafrelsheikh 33516, Egypt;

Keywords:

Neutrosophic Logic; Neutrosophic Topological Spaces; Lung Cancer Detection; Medical Uncertainty Modeling; Chest X-ray Analysis; Diagnostic Ambiguity; Spatial Reasoning; Indeterminacy Modeling; Topological Operators; Explainable Medical AI.

Abstract

 Diagnostic uncertainty in chest X-rays particularly for early-stage lung cancer 
arises from overlapping radiographic features and indeterminate boundaries. While 
neutrosophic logic effectively represents ambiguity through truth (T), indeterminacy (I), and 
falsity (F) sets, its inability to encode spatial relationships among uncertain regions limits its 
clinical utility. To address this, we develop neutrosophic topological spaces (NTS), where 
topological operators (interior, closure, boundary) act on T, I, and F components 
independently. This allows: 
1. Spatial reasoning: Quantification of transitional zones (e.g., between tumor and 
parenchyma) via boundary operators. 
2. Structured ambiguity: Hierarchical clustering of indeterminate regions based on 
connectivity. 
Evaluated on the ChestX-ray8 dataset, NTS achieves 90% accuracy (vs. 81% for 
conventional neutrosophic classifiers), with a 15% reduction in false positives for sub
centimeter nodules. Crucially, the model’s topological constraints enable radiologist
aligned interpretability, as demonstrated by a 0.82 inter-rater agreement score (Cohen’s κ) 
in a clinician study. By fusing spatial semantics with neutrosophic uncertainty, NTS provides 
a path toward actionable diagnostics in low-certainty scenarios.

 

DOI: 10.5281/zenodo.16754964

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Published

2025-12-01

How to Cite

S. A. Alblowi, A.A. Salama, Huda E. Khalid, Ahmed K. Essa, & Arafa A.Nasef. (2025). Neutrosophic Topological Spaces for Spatially-Aware Uncertainty Modeling in Lung Cancer Diagnosis . Neutrosophic Sets and Systems, 91, 390-410. https://fs.unm.edu/nss8/index.php/111/article/view/6986

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