纤维
化学
流变学
β-乳球蛋白
硫黄素
圆二色性
降级(电信)
粘度
特性粘度
傅里叶变换红外光谱
形态学(生物学)
乳清蛋白
结晶学
蛋白质聚集
化学工程
材料科学
聚合物
色谱法
有机化学
生物化学
复合材料
计算机科学
工程类
生物
电信
病理
遗传学
医学
疾病
阿尔茨海默病
作者
Da Chen,Lorena Silva Pinho,Enrico Federici,Xiaobing Zuo,Ján Ilavský,Ivan Kuzmenko,Zhi Yang,Owen G. Jones,Osvaldo H. Campanella
标识
DOI:10.1016/j.foodhyd.2021.107291
摘要
Fibrous aggregates of β-lactoglobulin display superior mechanical and interfacial properties compared to the native protein. These properties directly link to the protein morphology and structure. When incorporated into food matrices, during processing protein fibrils are exposed to pH shifts and high temperature conditions, which accelerate their degradation. In the present study, neutralized β-lactoglobulin fibrils were heated at 100 °C and 121 °C for various times to assess their degradation. Fibril morphology, structure, and viscosity in solution were examined by microscopy, scattering, spectroscopy, and rheology. Atomic force microscopy showed the contour length of the protein fibrils decreased gradually with heating at 100 °C and 121 °C, with greater decreases at 121 °C. Increased fibril diameters (∼15–25 nm) were observed at 121 °C for 5–15 min heating and were disrupted upon further heating. Small-angle x-ray scattering indicated an increase in fibril radius with heating at pH 7 followed by a decrease at prolonged heating, whereas fibril length decreased continuously with heating. Thioflavin T fluorescence, circular dichroism and Fourier transform infrared spectroscopy confirmed the conversion of β-sheet to random coils as fibrils were degraded during thermal treatment at pH 7. Surface hydrophobicity of fibrils decreased with increase in heating temperature and time, coinciding with an increase in the content of non-aggregated proteins. Viscosity of fibril solutions increased when fibrils were heated at 100 °C, whereas at 121 °C their viscosity first increased and then decreased. These findings imply heating at 100 °C and 121 °C facilitates degradation and depolymerisation of β-lactoglobulin fibrils with aggregation as an intermediate step.
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