Artificial Intelligence-Enhanced Optimization of Wireless Breath Sensor Arrays for Detection of Lung Cancer Using Fuzzy Logic-Guided Genetic Algorithm and Multimodal Machine Learning.
1/5 보강
Early detection of lung cancer remains critical for improving patient survival, yet current imaging-based screening methods are costly, invasive, and limited in accessibility.
APA
Dinh D, Shang G, et al. (2026). Artificial Intelligence-Enhanced Optimization of Wireless Breath Sensor Arrays for Detection of Lung Cancer Using Fuzzy Logic-Guided Genetic Algorithm and Multimodal Machine Learning.. ACS sensors, 11(3), 2520-2531. https://doi.org/10.1021/acssensors.5c04441
MLA
Dinh D, et al.. "Artificial Intelligence-Enhanced Optimization of Wireless Breath Sensor Arrays for Detection of Lung Cancer Using Fuzzy Logic-Guided Genetic Algorithm and Multimodal Machine Learning.." ACS sensors, vol. 11, no. 3, 2026, pp. 2520-2531.
PMID
41778589 ↗
Abstract 한글 요약
Early detection of lung cancer remains critical for improving patient survival, yet current imaging-based screening methods are costly, invasive, and limited in accessibility. Here, we present a fully integrated wireless breath sensing platform that combines nanostructured chemiresistive (NC) sensor arrays with an AI-driven Fuzzy logic-guided Genetic Algorithm (Fuzzy-GA) for optimized volatile organic compound (VOC) detection. The sensor array features nanoparticle structured interfaces, enabling selective VOC adsorption to generate unique breath patterns. Data are captured via a portable low-current multichannel electronics module with real-time wireless transmission. Fuzzy-GA optimization identifies the most informative sensors, reducing array size while maintaining high diagnostic performance. Breath samples from lung cancer patients ( = 35) and non-cancer participants ( = 47) were analyzed using multiple supervised machine learning models (KNN, SVM, Random Forest, XGBoost, and CNN). This represents the first application of Fuzzy-GA to optimize breath sensor arrays. The optimized system, validated using breath samples from lung cancer patients and non-lung cancer controls, achieved high classification accuracy (up to 96%) with reduced system complexity, lower cost, and improved scalability for real-world deployment. The platform offers a clinically viable, non-invasive diagnostic tool with potential for at-home monitoring and broader disease detection.
🏷️ 키워드 / MeSH 📖 같은 키워드 OA만
- Lung Neoplasms
- Humans
- Fuzzy Logic
- Breath Tests
- Wireless Technology
- Machine Learning
- Volatile Organic Compounds
- Algorithms
- Artificial Intelligence
- Female
- Genetic Algorithms
- breath sensor array system
- fuzzy-GA optimization
- lung cancer detection
- machine learning classification
- non-invasive screening
- volatile organic compounds
- wireless monitoring
🏷️ 같은 키워드 · 무료전문 — 이 논문 MeSH/keyword 기반
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