| Literature DB >> 31988660 |
Xiaoli Li1,2,3, Junjing Sha1,2,3, Yihua Xia1,2,3, Kuichuan Sheng1,2,3, Yufei Liu1,2,3, Yong He1,2,3.
Abstract
BACKGROUND: As a renewable carbon source, biomass energy not only helps in resolving the management problems of lignocellulosic wastes, but also helps to alleviate the global climate change by controlling environmental pollution raised by their generation on a large scale. However, the bottleneck problem of extensive production of biofuels lies in the filamentous crystal structure of cellulose and the embedded connection with lignin in biomass that leads to poor accessibility, weak degradation and digestion by microorganisms. Some pretreatment methods have shown significant improvement of methane yield and production rate, but the promotion mechanism has not been thoroughly studied. Revealing the temporal and spatial effects of pretreatment on lignocellulose will greatly help deepen our understanding of the optimization mechanism of pretreatment, and promote efficient utilization of lignocellulosic biomass. Here, we propose an approach for qualitative, quantitative, and location analysis of subcellular lignocellulosic changes induced by alkali treatment based on label-free Raman microspectroscopy combined with chemometrics.Entities:
Keywords: Alkali pretreatment; Chemical imaging; Lignocellulosic biomass; Raman; Rice straw; Spectral unmixing
Year: 2020 PMID: 31988660 PMCID: PMC6966900 DOI: 10.1186/s13068-020-1648-8
Source DB: PubMed Journal: Biotechnol Biofuels ISSN: 1754-6834 Impact factor: 6.040
Fig. 1System framework diagram of this study
Fig. 2Extraction of spectral characteristic with wavelet transform
Fig. 3Raman spectral response of untreated and alkali-treated rice straw. a Noise reduction. b Noise reduction + WT
Fig. 4PCA scores plot of Raman spectra from untreated and alkali-treated rice straw
Fig. 5Loading weight plot of the first two principal components
Classification accuracy of quantitative classifier
| Algorithm | Input feature | Raw | A8 | D1 | D2 | D3 | D4 | D5 | D6 | D7 | D8 |
|---|---|---|---|---|---|---|---|---|---|---|---|
| LDA | Full-range spectra | 80.56 | 47.92 | 75.00 | 79.17 | 84.72 | 76.39 | 88.19 | 79.86 | 78.47 | 57.64 |
| Two bands (1620 + 1089 cm−1) | 87.22 | 90.28 | 85.42 | 84.06 | 85.42 | 84.72 | 86.81 | 88.89 | 88.89 | 90.28 | |
| KNN | Full-range spectra | 79.86 | 84.72 | 84.03 | 85.42 | 86.81 | 84.03 | 93.75 | 95.14 | 96.53 | 87.5 |
| Two bands (1620 + 1089 cm−1) | 82.64 | 86.11 | 85.42 | 86.11 | 85.42 | 83.33 | 88.89 | 95.14 | 93.75 | 90.28 |
Fig. 6Raman spectra of lignocellulosic standards
Main composition contents of untreated and alkali-treated rice straw (%, dry base, d.b.)
| Cellulose (sd) | Hemicellulose (sd) | Lignin (sd) | CHL | ΔCHL | Ash | |
|---|---|---|---|---|---|---|
| Untreated | 39.5 (3.0) | 33.2 (0.5) | 4.5 (0) | 77.2 | 0 | 2.6(0.2) |
| Alkali-treated | 34.4 (0.8) | 15.6 (1.1) | 3.4 (0.3) | 53.4 | 15.8 | 2.0(0.3) |
CHL total contents of cellulose, hemicellulose, and lignin, ΔCHL variation of CHL, sd standard deviation
Fig. 7Raman images at characteristic bands of transverse sections of untreated and alkali-treated rice straw
Fig. 8Chemical imaging of lignocellulose by spectral unmixing analysis of the FCLS. (in the fourth row, the sections were stained with Safranin O–Fast Green. Safranin O stained lignin red, Fast Green stained cellulose green). vb vascular bundle, par parenchyma, epi epidermis
Fig. 9Transmission electron microscope images of rice straw tissues. a Untreated rice straw tissue. b Alkali-treated rice straw tissues
Fig. 10Lignocellulosic content histogram of Raman chemical images based on spectral unmixing of FCLS
Fig. 11Biogas production per kilogram vs of substrates