Enhancing particulate matter risk assessment with novel machine learning-driven toxicity threshold prediction

被引:0
|
作者
Jairi, Idriss [1 ]
Rekbi, Amelle [3 ]
Ben-Othman, Sarah [2 ]
Hammadi, Slim [2 ]
Canivet, Ludivine [3 ]
Zgaya-Biau, Hayfa [1 ]
机构
[1] Univ Lille, Ctr Rech Informat Signal & Automat Lille, UMR 9189, CRIStAL, F-59000 Lille, France
[2] Ctr Rech Informat Signal & Automat Lille, UMR 9189, Cent Lille, CRIStAL, F-59000 Lille, France
[3] Univ Lille, ULR 4515, Lab Genie Civil & Geoenvironm, LGCgE, F-59000 Lille, France
关键词
Particulate matter; Machine learning; Toxicity assessment; Data-driven approach; Predictive modeling; Environmental monitoring; LOGISTIC-REGRESSION; DYSFUNCTION; PM2.5;
D O I
10.1016/j.engappai.2024.109531
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Airborne particulate matter (PM) poses significant health risks, necessitating accurate toxicity threshold determination for effective risk assessment. This study introduces a novel machine-learning (ML) approach to predict PM toxicity thresholds and identify the key physico-chemical and exposure characteristics. Five machine learning algorithms - logistic regression, support vector classifier, decision tree, random forest, and extreme gradient boosting - were employed to develop predictive models using a comprehensive dataset from existing studies. We developed models using the initial dataset and a class weight approach to address data imbalance. For the imbalanced data, the Random Forest classifier outperformed others with 87% accuracy, 81% recall, and the fewest false negatives (23). In the class weight approach, the Support Vector Classifier minimized false negatives (21), while the Random Forest model achieved superior overall performance with 86% accuracy, 80% recall, and an F1-score of 82%. Furthermore, eXplainable Artificial Intelligence (XAI) techniques, specifically SHAP (SHapley Additive exPlanations) values, were utilized to quantify feature contributions to predictions, offering insights beyond traditional laboratory approaches. This study represents the first application of machine learning for predicting PM toxicity thresholds, providing a robust tool for health risk assessment. The proposed methodology offers a time- and cost-effective alternative to classical laboratory tests, potentially revolutionizing PM toxicity threshold determination in scientific and epidemiological research. This innovative approach has significant implications for shaping regulatory policies and designing targeted interventions to mitigate health risks associated with airborne PM.
引用
收藏
页数:17
相关论文
共 50 条
  • [31] Machine learning-driven interfacial characterization and dielectric breakdown prediction in polymer nanocomposites
    Wang, Qi
    He, Wanxin
    Deng, Yuheng
    Zhang, Yue
    Chern, Wen Kwang
    Lv, Zepeng
    Chen, Zhong
    COMPOSITES PART B-ENGINEERING, 2025, 296
  • [32] Enhancing breast cancer outcomes with machine learning-driven glutamine metabolic reprogramming signature
    Li, Xukui
    Li, Xue
    Yang, Bin
    Sun, Songyang
    Wang, Shu
    Yu, Fuxun
    Wang, Tao
    FRONTIERS IN IMMUNOLOGY, 2024, 15
  • [33] Machine Learning-Driven Prediction of Comorbidities and Mortality in Adults With Type 1 Diabetes
    Andersen, Jonas Dahl
    Stoltenberg, Carsten Wridt
    Jensen, Morten Hasselstrom
    Vestergaard, Peter
    Hejlesen, Ole
    Hangaard, Stine
    JOURNAL OF DIABETES SCIENCE AND TECHNOLOGY, 2024,
  • [34] Machine learning-driven solar irradiance prediction: advancing renewable energy in Rajasthan
    Tandon, Aayushi
    Awasthi, Amit
    Pattnayak, Kanhu Charan
    Tandon, Aditya
    Choudhury, Tanupriya
    Kotecha, Ketan
    DISCOVER APPLIED SCIENCES, 2025, 7 (02)
  • [35] Machine Learning-Driven Prediction of Vitamin D Deficiency Severity with Hybrid Optimization
    Bhimavarapu, Usharani
    Battineni, Gopi
    Chintalapudi, Nalini
    BIOENGINEERING-BASEL, 2025, 12 (02):
  • [36] Machine Learning-Driven Assessment of Fire-Induced Concrete Spalling of Columns
    Naser, M. Z.
    Salehi, Hadi
    ACI MATERIALS JOURNAL, 2020, 117 (06) : 7 - 16
  • [37] Cholesterol Contributes to Risk, Severity, and Machine Learning-Driven Diagnosis of Lyme Disease
    Forrest, Iain S.
    O'Neal, Anya J.
    Pedra, Joao H. F.
    Do, Ron
    CLINICAL INFECTIOUS DISEASES, 2023, 77 (06) : 839 - 847
  • [38] Machine Learning for Nanomaterial Toxicity Risk Assessment
    Gernand, Jeremy M.
    Casman, Elizabeth A.
    IEEE INTELLIGENT SYSTEMS, 2014, 29 (03) : 84 - 88
  • [39] Drug-induced torsadogenicity prediction model: An explainable machine learning-driven quantitative structure-toxicity relationship approach
    Kelleci Çelik, Feyza
    Doğan, Seyyide
    Karaduman, Gül
    Computers in Biology and Medicine, 2024, 182
  • [40] Machine learning-driven discovery of novel therapeutic targets in diabetic foot ulcers
    Yu, Xin
    Wu, Zhuo
    Zhang, Nan
    MOLECULAR MEDICINE, 2024, 30 (01)