School of Civil and Environmental Engineering, Cornell University, 220 Hollister Hall, Ithaca, New York 14853, USA.
Biotechnol Bioeng. 2012 Apr;109(4):894-903. doi: 10.1002/bit.24376. Epub 2011 Nov 22.
Fourier transform infrared, attenuated total reflectance (FTIR-ATR) spectroscopy, combined with partial least squares (PLS) regression, accurately predicted solubilization of plant cell wall constituents and NaOH consumption through pretreatment, and overall sugar productions from combined pretreatment and enzymatic hydrolysis. PLS regression models were constructed by correlating FTIR spectra of six raw biomasses (two switchgrass cultivars, big bluestem grass, a low-impact, high-diversity mixture of prairie biomasses, mixed hardwood, and corn stover), plus alkali loading in pretreatment, to nine dependent variables: glucose, xylose, lignin, and total solids solubilized in pretreatment; NaOH consumed in pretreatment; and overall glucose and xylose conversions and yields from combined pretreatment and enzymatic hydrolysis. PLS models predicted the dependent variables with the following values of coefficient of determination for cross-validation (Q²): 0.86 for glucose, 0.90 for xylose, 0.79 for lignin, and 0.85 for total solids solubilized in pretreatment; 0.83 for alkali consumption; 0.93 for glucose conversion, 0.94 for xylose conversion, and 0.88 for glucose and xylose yields. The sugar yield models are noteworthy for their ability to predict overall saccharification through combined pretreatment and enzymatic hydrolysis per mass dry untreated solids without a priori knowledge of the composition of solids. All wavenumbers with significant variable-important-for-projection (VIP) scores have been attributed to chemical features of lignocellulose, demonstrating the models were based on real chemical information. These models suggest that PLS regression can be applied to FTIR-ATR spectra of raw biomasses to rapidly predict effects of pretreatment on solids and on subsequent enzymatic hydrolysis.
傅里叶变换红外衰减全反射(FTIR-ATR)光谱结合偏最小二乘(PLS)回归可准确预测植物细胞壁成分的溶解和预处理过程中氢氧化钠的消耗,以及预处理和酶解联合作用下的整体糖产量。通过将六种原料生物量(两种柳枝稷品种、大蓝茎草、低影响、高多样性的草原生物量混合物、混合硬木和玉米秸秆)的 FTIR 光谱与预处理中的碱加载相关联,构建了 PLS 回归模型,以九个因变量:预处理中溶解的葡萄糖、木糖、木质素和总固体;预处理中消耗的氢氧化钠;以及预处理和酶解联合作用下的总葡萄糖和木糖转化率和产率。PLS 模型对交叉验证的因变量(Q²)的预测值如下:葡萄糖的系数为 0.86,木糖的系数为 0.90,木质素的系数为 0.79,预处理中溶解的总固体的系数为 0.85;碱的消耗的系数为 0.83;葡萄糖转化率的系数为 0.93,木糖转化率的系数为 0.94,葡萄糖和木糖产率的系数为 0.88。这些糖产量模型的显著特点是,它们能够根据未经处理的干固体质量预测预处理和酶解联合作用下的整体糖化,而无需事先了解固体的组成。具有显著变量重要性投影(VIP)得分的所有波数都归因于木质纤维素的化学特征,这表明模型是基于真实的化学信息。这些模型表明,PLS 回归可以应用于原始生物量的 FTIR-ATR 光谱,快速预测预处理对固体的影响以及对随后的酶解的影响。