Which particles to select, and if yes, how many? Subsampling methods for Raman microspectroscopic analysis of very small microplastic

被引:16
作者
Schwaferts, Christian [1 ]
Schwaferts, Patrick [2 ]
von der Esch, Elisabeth [1 ]
Elsner, Martin [1 ]
Ivleva, Natalia P. [1 ]
机构
[1] Tech Univ Munich, Inst Hydrochem, Chair Analyt Chem & Water Chem, Elisabeth Winterhalter Weg 6, D-81377 Munich, Germany
[2] Ludwig Maximilians Univ Munchen, Methodol Fdn Stat & Its Applicat, Dept Stat, Ludwigsstr 33, D-80539 Munich, Germany
关键词
Raman microspectroscopy; Microplastic; Nanoplastic; Automation; Chemometrics; Bootstrap; ENVIRONMENTAL-SAMPLES; DISCRETE MATERIALS; IDENTIFICATION; ECOSYSTEMS; WATER; SIZE;
D O I
10.1007/s00216-021-03326-3
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
摘要
Micro- and nanoplastic contamination is becoming a growing concern for environmental protection and food safety. Therefore, analytical techniques need to produce reliable quantification to ensure proper risk assessment. Raman microspectroscopy (RM) offers identification of single particles, but to ensure that the results are reliable, a certain number of particles has to be analyzed. For larger MP, all particles on the Raman filter can be detected, errors can be quantified, and the minimal sample size can be calculated easily by random sampling. In contrast, very small particles might not all be detected, demanding a window-based analysis of the filter. A bootstrap method is presented to provide an error quantification with confidence intervals from the available window data. In this context, different window selection schemes are evaluated and there is a clear recommendation to employ random (rather than systematically placed) window locations with many small rather than few larger windows. Ultimately, these results are united in a proposed RM measurement algorithm that computes confidence intervals on-the-fly during the analysis and, by checking whether given precision requirements are already met, automatically stops if an appropriate number of particles are identified, thus improving efficiency.
引用
收藏
页码:3625 / 3641
页数:17
相关论文
共 46 条
[1]   Implementation of an open source algorithm for particle recognition and morphological characterisation for microplastic analysis by means of Raman microspectroscopy [J].
Anger, Philipp M. ;
Prechtl, Leonhard ;
Elsner, Martin ;
Niessner, Reinhard ;
Ivleva, Natalia P. .
ANALYTICAL METHODS, 2019, 11 (27) :3483-3489
[2]   Raman microspectroscopy as a tool for microplastic particle analysis [J].
Anger, Philipp M. ;
von der Esch, Elisabeth ;
Baumann, Thomas ;
Elsner, Martin ;
Niessner, Reinhard ;
Ivleva, Natalia P. .
TRAC-TRENDS IN ANALYTICAL CHEMISTRY, 2018, 109 :214-226
[3]  
[Anonymous], 2008, STAT ANAL MODELLING
[4]   Identification of microplastics using Raman spectroscopy: Latest developments and future prospects [J].
Araujo, Catarina F. ;
Nolasco, Mariela M. ;
Ribeiro, Antonio M. P. ;
Ribeiro-Claro, Paulo J. A. .
WATER RESEARCH, 2018, 142 :426-440
[5]   High-Throughput Analyses of Microplastic Samples Using Fourier Transform Infrared and Raman Spectrometry [J].
Brandt, Josef ;
Bittrich, Lars ;
Fischer, Franziska ;
Kanaki, Elisavet ;
Tagg, Alexander ;
Lenz, Robin ;
Labrenz, Matthias ;
Brandes, Elke ;
Fischer, Dieter ;
Eichhorn, Klaus-Jochen .
APPLIED SPECTROSCOPY, 2020, 74 (09) :1185-1197
[6]   Comparison of Raman and Fourier Transform Infrared Spectroscopy for the Quantification of Microplastics in the Aquatic Environment [J].
Cabernard, Livia ;
Roscher, Lisa ;
Lorenz, Claudia ;
Gerdts, Gunnar ;
Primpke, Sebastian .
ENVIRONMENTAL SCIENCE & TECHNOLOGY, 2018, 52 (22) :13279-13288
[7]   Effects of micro- and nanoplastics on aquatic ecosystems: Current research trends and perspectives [J].
Chae, Yooeun ;
An, Youn-Joo .
MARINE POLLUTION BULLETIN, 2017, 124 (02) :624-632
[8]   MIST: Accurate and Scalable Microscopy Image Stitching Tool with Stage Modeling and Error Minimization [J].
Chalfoun, Joe ;
Majurski, Michael ;
Blattner, Tim ;
Bhadriraju, Kiran ;
Keyrouz, Walid ;
Bajcsy, Peter ;
Brady, Mary .
SCIENTIFIC REPORTS, 2017, 7
[9]   Automated thermal extraction-desorption gas chromatography mass spectrometry: A multifunctional tool for comprehensive characterization of polymers and their degradation products [J].
Duemichen, E. ;
Eisentraut, P. ;
Celina, M. ;
Braun, U. .
JOURNAL OF CHROMATOGRAPHY A, 2019, 1592 :133-142
[10]   Fast identification of microplastics in complex environmental samples by a thermal degradation method [J].
Duemichen, Erik ;
Eisentraut, Paul ;
Bannick, Claus Gerhard ;
Barthel, Anne-Kathrin ;
Senz, Rainer ;
Braun, Ulrike .
CHEMOSPHERE, 2017, 174 :572-584