| Literature DB >> 28579992 |
Xiaoli Jin1, Chunhai Shi1, Chang Yeon Yu2, Toshihiko Yamada3, Erik J Sacks4.
Abstract
Leaf water content is one of the most common physiological parameters limiting efficiency of photosynthesis and biomass productivity in plants including Miscanthus. Therefore, it is of great significance to determine or predict the water content quickly and non-destructively. In this study, we explored the relationship between leaf water content and diffuse reflectance spectra in Miscanthus. Three multivariate calibrations including partial least squares (PLS), least squares support vector machine regression (LSSVR), and radial basis function (RBF) neural network (NN) were developed for the models of leaf water content determination. The non-linear models including RBF_LSSVR and RBF_NN showed higher accuracy than the PLS and Lin_LSSVR models. Moreover, 75 sensitive wavelengths were identified to be closely associated with the leaf water content in Miscanthus. The RBF_LSSVR and RBF_NN models for predicting leaf water content, based on 75 characteristic wavelengths, obtained the high determination coefficients of 0.9838 and 0.9899, respectively. The results indicated the non-linear models were more accurate than the linear models using both wavelength intervals. These results demonstrated that visible and near-infrared (VIS/NIR) spectroscopy combined with RBF_LSSVR or RBF_NN is a useful, non-destructive tool for determinations of the leaf water content in Miscanthus, and thus very helpful for development of drought-resistant varieties in Miscanthus.Entities:
Keywords: Miscanthus; VIS/NIR spectroscopy; drought-resistant breeding; leaf water content; sensitive wavelengths
Year: 2017 PMID: 28579992 PMCID: PMC5437372 DOI: 10.3389/fpls.2017.00721
Source DB: PubMed Journal: Front Plant Sci ISSN: 1664-462X Impact factor: 5.753
Statistic parameters for leaf water content in calibration and testing sets of .
| Calibration set | 416 | 57.77 | 82.64 | 69.55 | 4.54 |
| Testing set | 208 | 58.20 | 85.94 | 74.14 | 5.49 |
| Total samples | 624 | 57.77 | 85.94 | 71.08 | 5.33 |
Sample number;
Standard deviation.
Figure 1Distribution of training samples and testing samples in principal components space.
The evaluation of various pre-treatment models in leaf water content of .
| Raw | 0.927434 | 1.435722 |
| Smoothing | 0.927319 | 1.436861 |
| Normalize | 0.929284 | 1.417296 |
| Spectroscopic | 0.919114 | 1.515791 |
| MSC/EMSC | 0.924611 | 1.463382 |
| Derivatives | 0.927133 | 1.438693 |
| Baseline | 0.916432 | 0.912578 |
| SNV | 0.903898 | 1.652224 |
Figure 2(A,B) Near infrared reflectance spectra of water content in Miscanthus, displayed by raw data (A), and smoothing and normalize (B).
Figure 3The results of four calibration models: (A) PLS, (B) Lin_LSSVR, (C), RBF-LSSVR, (D) FBF_NN. The panes and circles represent the training samples and testing samples, respectively.
Calibration models of leaf water content corresponding to four different arithmetics using the whole and 75 sensitive wavelengths in .
| 400–2,500 nm | PLS | 0.9051 | 1.4747 | 0.9165 | 1.3118 |
| Lin_LSSVR | 0.9857 | 0.7504 | 0.9259 | 1.4905 | |
| RBF_LSSVR | 0.9998 | 0.5782 | 0.9782 | 0.7855 | |
| RBF_NN | 1.0000 | 0.0063 | 1.0000 | 0.0796 | |
| Sensitive wavelengths | PLS | 0.9177 | 1.3024 | 0.9058 | 1.3969 |
| Lin_LSSVR | 0.9579 | 1.0714 | 0.9517 | 1.1691 | |
| RBF_LSSVR | 0.9831 | 0.6823 | 0.97169 | 0.8952 | |
| RBF_NN | 0.9899 | 0.0136 | 0.9868 | 0.1536 | |
Sensitive wavelengths: 11, 14, 17, 21, 34, 64, 80, 91, 102, 108, 115, 120, 131, 140, 149, 156, 164, 175, 264, 279, 336, 348, 353, 365, 373, 382, 391, 408, 421, 439, 461, 485, 499, 511, 530, 565, 593, 627, 641, 647, 655, 661, 670, 721, 750, 759, 761, 765, 785, 806, 825, 838, 850, 855, 863, 886, 917, 927, 939, 949, 958, 965, 985, 999, 1,006, 1,008, 1,014, 1,016, 1,021, 1,023, 1,026, 1,029, 1,032, 1,039, 1,041 nm.