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Simplifying Microplastic via Continuous Probability Distributions for Size, Shape, and Density

Environmental Science & Technology Letters 2019 577 citations ? Citation count from OpenAlex, updated daily. May differ slightly from the publisher's own count. Score: 60 ? 0–100 AI score estimating relevance to the microplastics field. Papers below 30 are filtered from public browse.
Merel Kooi, Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Merel Kooi, Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Merel Kooi, Albert A. Koelmans Merel Kooi, Merel Kooi, Merel Kooi, Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Merel Kooi, Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Merel Kooi, Merel Kooi, Merel Kooi, Merel Kooi, Merel Kooi, Merel Kooi, Merel Kooi, Merel Kooi, Merel Kooi, Merel Kooi, Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Merel Kooi, Merel Kooi, Merel Kooi, Merel Kooi, Merel Kooi, Merel Kooi, Merel Kooi, Merel Kooi, Albert A. Koelmans Merel Kooi, Albert A. Koelmans Albert A. Koelmans Merel Kooi, Albert A. Koelmans Merel Kooi, Albert A. Koelmans Merel Kooi, Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Merel Kooi, Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Merel Kooi, Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Albert A. Koelmans Merel Kooi, Merel Kooi, Albert A. Koelmans Albert A. Koelmans

Summary

Researchers proposed using continuous probability distributions instead of rigid categories to describe the size, shape, and density of microplastics in environmental samples. This mathematical approach simplifies comparisons between studies and better captures the inherently continuous nature of microplastic properties. The method could help standardize how scientists measure and report microplastic contamination worldwide.

Because of their diverse sizes, shapes and densities, environmental microplastics are often perceived as complex. Many studies struggle with this complexity, and either address only a part of this diversity, or present data using discrete classifications for sizes, shapes and densities. We argue that such classifications will never be fully satisfactory, as any definition using classes does not capture the essentially continuous nature of environmental microplastic. Therefore, we propose to simplify microplastics by fully defining them through a 3D probability distribution, with size, shape and density as dimensions. Besides introducing the concept, we parameterize these probability distributions, using empirical data. This parameterization results in an approximate yet realistic representation of ‘true’ environmental microplastic. This approach to simplify microplastic could be applicable to exposure measurements, effect studies and fate modelling. Furthermore, it allows for easy comparison between studies, irrespective of sampling or laboratory setup. We demonstrate how the 3D probability distribution of environmental versus ingested microplastic can be helpful in understanding bioavailability of and exposure to microplastic. We argue that the concept of simplified microplastic will also be helpful in probabilistic risk modelling, which would greatly enhance the understanding of the risk that microplastics pose to the environment.

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