TY - JOUR
T1 - Decoding PM2.5 oxidative potential in Ningbo, China
T2 - Key chemicals, sources, and health risks via dual-assay and machine learning
AU - Famiyeh, Lord
AU - Chen, Ke
AU - Xu, Jingsha
AU - Tesema, Fiseha Berhanu
AU - Solomon, Mosses
AU - Ji, Dongsheng
AU - Xu, Honghui
AU - Wang, Chengjun
AU - Guo, Qingjun
AU - Wen, Conghua
AU - Zhou, John L.
AU - He, Jun
N1 - Publisher Copyright:
© 2025 Elsevier B.V.
PY - 2025/9/5
Y1 - 2025/9/5
N2 - PM2.5 oxidative potential (OP), a key driver of health risks, was investigated in Ningbo, China, using dual dithiothreitol (DTT) and ascorbic acid (AA) assays combined with machine learning (ML). This approach accounts for the complexity of interactions among key chemical drivers and accurately identifies chemical species and PM2.5 sources associated with OP - a critical gap in prior studies relying solely on correlation analysis and linear regression. Year-long PM2.5 samples revealed higher nighttime and summer OP (volume-based OP-DTTv and OP-AAv), linked to aerosol acidity and photochemical aging. Among six ML models, Extremely Randomized Trees (ERT) outperformed others by 9.5–30.7 %, identifying Cu, Fe, V, As, Co, Cd, NO3-, Ni, and quinones as primary OP drivers, with synergistic effects for most constituents except antagonistic Fe. Source apportionment attributed OP mainly to vehicular emissions (40 %), marine/sea salt (20 %), and secondary aerosols (16 %). Biomass burning, industry, and road dust contributed minimally. Results emphasize targeting quinones, traffic-related metals (Cu, V), and synergistic metal interactions to mitigate PM2.5 toxicity in coastal cities. The dual-assay ML framework provides actionable insights for prioritizing OP-driven regulation, particularly in regions blending anthropogenic and marine influences, to reduce oxidative stress-related health burdens.
AB - PM2.5 oxidative potential (OP), a key driver of health risks, was investigated in Ningbo, China, using dual dithiothreitol (DTT) and ascorbic acid (AA) assays combined with machine learning (ML). This approach accounts for the complexity of interactions among key chemical drivers and accurately identifies chemical species and PM2.5 sources associated with OP - a critical gap in prior studies relying solely on correlation analysis and linear regression. Year-long PM2.5 samples revealed higher nighttime and summer OP (volume-based OP-DTTv and OP-AAv), linked to aerosol acidity and photochemical aging. Among six ML models, Extremely Randomized Trees (ERT) outperformed others by 9.5–30.7 %, identifying Cu, Fe, V, As, Co, Cd, NO3-, Ni, and quinones as primary OP drivers, with synergistic effects for most constituents except antagonistic Fe. Source apportionment attributed OP mainly to vehicular emissions (40 %), marine/sea salt (20 %), and secondary aerosols (16 %). Biomass burning, industry, and road dust contributed minimally. Results emphasize targeting quinones, traffic-related metals (Cu, V), and synergistic metal interactions to mitigate PM2.5 toxicity in coastal cities. The dual-assay ML framework provides actionable insights for prioritizing OP-driven regulation, particularly in regions blending anthropogenic and marine influences, to reduce oxidative stress-related health burdens.
KW - Chemical constituents
KW - Machine learning
KW - Oxidative potential
KW - PM
KW - Source apportionment
UR - http://www.scopus.com/inward/record.url?scp=105007598150&partnerID=8YFLogxK
U2 - 10.1016/j.jhazmat.2025.138877
DO - 10.1016/j.jhazmat.2025.138877
M3 - Article
AN - SCOPUS:105007598150
SN - 0304-3894
VL - 495
JO - Journal of Hazardous Materials
JF - Journal of Hazardous Materials
M1 - 138877
ER -