TY - JOUR
T1 - Rapid Mass Conversion for Environmental Microplastics of Diverse Shapes
AU - Chen, Qiqing
AU - Yang, Yan
AU - Qi, Huiqing
AU - Su, Lei
AU - Zuo, Chencheng
AU - Shen, Xiaoteng
AU - Chu, Wenhai
AU - Li, Fang
AU - Shi, Huahong
N1 - Publisher Copyright:
© 2024 American Chemical Society.
PY - 2024/6/18
Y1 - 2024/6/18
N2 - Rivers have been recognized as the primary conveyors of microplastics to the oceans, and seaward transport flux of riverine microplastics is an issue of global attention. However, there is a significant discrepancy in how microplastic concentration is expressed in field occurrence investigations (number concentration) and in mass flux (mass concentration). Of urgent need is to establish efficient conversion models to correlate these two important paradigms. Here, we first established an abundant environmental microplastic dataset and then employed a deep neural residual network (ResNet50) to successfully separate microplastics into fiber, fragment, and pellet shapes with 92.67% accuracy. We also used the circularity (C) parameter to represent the surface shape alteration of pellet-shaped microplastics, which always have a more uneven surface than other shapes. Furthermore, we added thickness information to two-dimensional images, which has been ignored by most prior research because labor-intensive processes were required. Eventually, a set of accurate models for microplastic mass conversion was developed, with absolute estimation errors of 7.1, 3.1, 0.2, and 0.9% for pellet (0.50 ≤ C < 0.75), pellet (0.75 ≤ C ≤ 1.00), fiber, and fragment microplastics, respectively; environmental samples have validated that this set is significantly faster (saves ∼2 h/100 MPs) and less biased (7-fold lower estimation errors) compared to previous empirical models.
AB - Rivers have been recognized as the primary conveyors of microplastics to the oceans, and seaward transport flux of riverine microplastics is an issue of global attention. However, there is a significant discrepancy in how microplastic concentration is expressed in field occurrence investigations (number concentration) and in mass flux (mass concentration). Of urgent need is to establish efficient conversion models to correlate these two important paradigms. Here, we first established an abundant environmental microplastic dataset and then employed a deep neural residual network (ResNet50) to successfully separate microplastics into fiber, fragment, and pellet shapes with 92.67% accuracy. We also used the circularity (C) parameter to represent the surface shape alteration of pellet-shaped microplastics, which always have a more uneven surface than other shapes. Furthermore, we added thickness information to two-dimensional images, which has been ignored by most prior research because labor-intensive processes were required. Eventually, a set of accurate models for microplastic mass conversion was developed, with absolute estimation errors of 7.1, 3.1, 0.2, and 0.9% for pellet (0.50 ≤ C < 0.75), pellet (0.75 ≤ C ≤ 1.00), fiber, and fragment microplastics, respectively; environmental samples have validated that this set is significantly faster (saves ∼2 h/100 MPs) and less biased (7-fold lower estimation errors) compared to previous empirical models.
KW - environmental microplastics
KW - mass conversion
KW - shape autoclassification
KW - thickness incorporation
UR - https://www.scopus.com/pages/publications/85195300598
U2 - 10.1021/acs.est.4c01031
DO - 10.1021/acs.est.4c01031
M3 - 文章
C2 - 38838101
AN - SCOPUS:85195300598
SN - 0013-936X
VL - 58
SP - 10776
EP - 10785
JO - Environmental Science and Technology
JF - Environmental Science and Technology
IS - 24
ER -