Article
?
AI-assigned paper type based on the abstract. Classification may not be perfect — flag errors using the feedback button.
Tier 2
?
Original research — experimental, observational, or case-control study. Direct primary evidence.
Detection Methods
Sign in to save
Identification and visualisation of microplastics via PCA to decode Raman spectrum matrix towards imaging
Chemosphere2021
92 citations
?
Citation count from OpenAlex, updated daily. May differ slightly from the publisher's own count.
Score: 45
?
0–100 AI score estimating relevance to the microplastics field. Papers below 30 are filtered from public browse.
Cheng Fang,
Cheng Fang,
Cheng Fang,
Cheng Fang,
Cheng Fang,
Cheng Fang,
Cheng Fang,
Cheng Fang,
Cheng Fang,
Cheng Fang,
Cheng Fang,
Cheng Fang,
Yunlong Luo,
Yunlong Luo,
Yunlong Luo,
Yunlong Luo,
Yunlong Luo,
Yunlong Luo,
Yunlong Luo,
Yunlong Luo,
Yunlong Luo,
Yunlong Luo,
Yunlong Luo,
Yunlong Luo,
Yunlong Luo,
Yunlong Luo,
Yunlong Luo,
Yunlong Luo,
Yunlong Luo,
Yunlong Luo,
Yunlong Luo,
Yunlong Luo,
Yunlong Luo,
Cheng Fang,
Cheng Fang,
Cheng Fang,
Cheng Fang,
Cheng Fang,
Cheng Fang,
Cheng Fang,
Cheng Fang,
Cheng Fang,
Cheng Fang,
Cheng Fang,
Ravi Naidu,
Ravi Naidu,
Ravi Naidu,
Ravi Naidu,
Yunlong Luo,
Yunlong Luo,
Yunlong Luo,
Xian Zhang
Ravi Naidu,
Yunlong Luo,
Cheng Fang,
Ravi Naidu,
Ravi Naidu,
Xian Zhang
Yunlong Luo,
Yunlong Luo,
Yunlong Luo,
Ravi Naidu,
Yunlong Luo,
Yunlong Luo,
Yunlong Luo,
Ravi Naidu,
Cheng Fang,
Yunlong Luo,
Ravi Naidu,
Cheng Fang,
Yunlong Luo,
Cheng Fang,
Xian Zhang
Xian Zhang
Cheng Fang,
Xian Zhang
Cheng Fang,
Cheng Fang,
Ravi Naidu,
Ravi Naidu,
Ravi Naidu,
Ravi Naidu,
Ravi Naidu,
Ravi Naidu,
Ravi Naidu,
Ravi Naidu,
Ravi Naidu,
Cheng Fang,
Cheng Fang,
Xian Zhang
Yunlong Luo,
Xian Zhang
Ravi Naidu,
Ravi Naidu,
Ravi Naidu,
Ravi Naidu,
Ravi Naidu,
Ravi Naidu,
Ravi Naidu,
Cheng Fang,
Cheng Fang,
Cheng Fang,
Cheng Fang,
Xian Zhang
Xian Zhang
Hongping Zhang,
Xian Zhang
Cheng Fang,
Cheng Fang,
Annette L. Nolan,
Annette L. Nolan,
Xian Zhang
Ravi Naidu,
Cheng Fang,
Ravi Naidu,
Cheng Fang,
Ravi Naidu,
Ravi Naidu,
Ravi Naidu,
Ravi Naidu,
Ravi Naidu,
Ravi Naidu,
Ravi Naidu,
Cheng Fang,
Ravi Naidu,
Cheng Fang,
Ravi Naidu,
Ravi Naidu,
Cheng Fang,
Cheng Fang,
Cheng Fang,
Cheng Fang,
Cheng Fang,
Cheng Fang,
Cheng Fang,
Xian Zhang
Cheng Fang,
Cheng Fang,
Cheng Fang,
Ravi Naidu,
Ravi Naidu,
Ravi Naidu,
Ravi Naidu,
Ravi Naidu,
Ravi Naidu,
Ravi Naidu,
Ravi Naidu,
Ravi Naidu,
Cheng Fang,
Cheng Fang,
Xian Zhang
Cheng Fang,
Yunlong Luo,
Ravi Naidu,
Cheng Fang,
Ravi Naidu,
Ravi Naidu,
Cheng Fang,
Cheng Fang,
Yunlong Luo,
Xian Zhang
Ravi Naidu,
Cheng Fang,
Xian Zhang
Cheng Fang,
Ravi Naidu,
Xian Zhang
Xian Zhang
Ravi Naidu,
Ravi Naidu,
Xian Zhang
Summary
Two approaches to decoding Raman spectral imaging matrices for microplastic identification were compared, with principal component analysis outperforming manual peak selection for discriminating mixed polymer samples and enabling accurate visualization of particle location and composition in heterogeneous environmental matrices.
To visualise microplastics and nanoplastics via Raman imaging, we need to scan the sample surface over a pixel array to collect Raman spectra as a matrix. The challenge is how to decode this spectrum matrix to map accurate and meaningful Raman images. This study compares two decoding approaches. The first approach is used when the sample contains several known types of microplastics whose standard spectra are available. We can map the Raman intensity at selected characteristic peaks as images. In order to increase the image certainty, we employ a logic-based algorithm to merge several images that are simultaneously mapped at several characteristic peaks to one image. However, the rest of the signals other than the selected peaks are ignored, meaning a low signal-noise ratio. The second approach for decoding is used when samples are complicated and standard spectra are not available. We employ principal component analysis (PCA) to decode the spectrum matrix. By selecting principal components (PC) and generating PC score curves to mimic the Raman spectrum, we can justify and assign the suspected items to microplastics and other materials. By mapping the PC loadings as images, microplastics and other materials can be simultaneously visualised. We analyse a sample containing two known microplastics to validate the effectiveness of the PCA-based algorithm. We then apply this method to analyse "unknown" microplastics printed on paper to extract Raman spectra from the complicated background and individually assign the images to paper fabric/additive, black carbon and microplastics, etc. Overall, the PCA-based algorithm shows some advantages and suggests a further step to decode Raman spectrum matrices towards machine learning.