Keyword search (4,163 papers available)

"Contaminants" Keyword-tagged Publications:

Title Authors PubMed ID
1 Development of an evaporation-driven sampling system for the in situ long-term monitoring of heavy metals in surface water Li X; Ma H; Shi S; Tian X; Nie L; Han X; Sun J; Chen Z; Li J; Chen K; 41886856
ENCS
2 Towards smart PFAS management: Integrating artificial intelligence in water and wastewater systems Yaghoobian S; An J; Jeong DW; Hwang JH; 41483514
ENCS
3 First report of synthetic antioxidants in baby wipes: Insights into occurrence, sources, and infant exposure Wang X; Liu W; Wang J; Johannessen C; Zhang X; Xia K; Wu X; Liu Q; 41259909
CHEMBIOCHEM
4 Mapping the distribution of contaminants identified by non-targeted screening of passively sampled urban air Liu L; Gillet AP; Akiki C; Tian L; Ma Y; Zhang X; Bowman DT; Wania F; Delbès G; Apparicio P; Bayen S; 41033295
CHEMBIOCHEM
5 Unraveling glyphosate sequestration: The role of natural organic matter fractions in soil-water contamination and retention Adeola AO; Paramo L; Duarte MP; Fuoco G; Naccache R; 40939356
CHEMBIOCHEM
6 Elucidating the size distribution of p‑Phenylenediamine-Derived quinones in atmospheric particles Xia K; Qin M; Han M; Zhang X; Wu X; Liu M; Liu S; Wang X; Liu W; Xie Z; Yuan R; Liu Q; 39978217
CHEMBIOCHEM
7 Emerging hazardous chemicals and biological pollutants in Canadian aquatic systems and remediation approaches: A comprehensive status report Adeola AO; Paramo L; Fuoco G; Naccache R; 39278485
CHEMBIOCHEM
8 Efficient Decaffeination with Recyclable Magnetic Microporous Carbon from Renewable Sources: Kinetics and Isotherm Analysis Duarte MP; Adeola AO; Fuoco G; Jargaille TJ; Naccache R; 38909946
CHEMBIOCHEM
9 From wastewater to clean water: Recent advances on the removal of metronidazole, ciprofloxacin, and sulfamethoxazole antibiotics from water through adsorption and advanced oxidation processes (AOPs) Gahrouei AE; Vakili S; Zandifar A; Pourebrahimi S; 38685299
ENCS
10 Towards a better understanding of deep convolutional neural network processes for recognizing organic chemicals of environmental concern Sun X; Zhang X; Wang L; Li Y; Muir DCG; Zeng EY; 34388923
CHEMBIOCHEM

 

Title:Towards a better understanding of deep convolutional neural network processes for recognizing organic chemicals of environmental concern
Authors:Sun XZhang XWang LLi YMuir DCGZeng EY
Link:https://pubmed.ncbi.nlm.nih.gov/34388923/
DOI:10.1016/j.jhazmat.2021.126746
Publication:Journal of hazardous materials
Keywords:Gradient-weighted class activation mappingGuided backpropagationOrganic contaminantsPrediction uncertaintyRedundancy
PMID:34388923 Category: Date Added:2021-08-14
Dept Affiliation: CHEMBIOCHEM
1 Guangdong Key Laboratory of Environmental Pollution and Health, School of Environment, Jinan University, Guangzhou 511443, China.
2 Department of Chemistry and Biochemistry, Concordia University, Montreal, Quebec H4B 1R6, Canada.
3 Guangdong Key Laboratory of Environmental Pollution and Health, School of Environment, Jinan University, Guangzhou 511443, China; Environment and Climate Change Canada, Aquatic Contaminants Research Division, 867 Lakeshore Road, Burlington, Ontario L7S 1A1, Canada.
4 Guangdong Key Laboratory of Environmental Pollution and Health, School of Environment, Jinan University, Guangzhou 511443, China. Electronic address: eddyzeng@jnu.edu.cn.

Description:

Deep convolutional neural network (DCNN) has proved to be a promising tool for identifying organic chemicals of environmental concern. However, the uncertainty associated with DCNN predictions remains to be quantified. The training process contains many random configurations, including dataset segmentation, input sequences, and initial weight, etc. Moreover, the DCNN working mechanism is non-linear and opaque. To increase confidence to use this novel approach, persistent, bioaccumulative, and toxic substances (PBTs) were utilized as representative chemicals of environmental concern to estimate the prediction uncertainty under five distinguished datasets and ten different molecular descriptor (MD) arrangements with 111,852 chemicals and 2424 available MDs. An internal correlation coefficient test indicated that the prediction confidence reached 0.98 when a mean of 50 DCNNs' predictions was used instead of a sing DCNN prediction. A threshold for PBT categorization was determined by considering costs between false-negative and false-positive predictions. As revealed by the guided backpropagation-class activation mapping (GBP-CAM) saliency images, only 12% of all selected MDs were activated by DCNN and influenced decision-making process. However, the activated MDs not only varied among chemical classes but also shifted with different DCNNs. Principal component analysis indicated that 2424 MDs could transform into 370 orthogonal variables. Both results suggest that redundancy exists among selected MDs. Yet, DCNN was found to adapt to redundant data by focusing on the most important information for better prediction performance.





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