College of Enology, Northwest A&F University, Yangling 712100, China.
Shangri-La Winery Co., LTD, Shangri-La 674400, China.
Food Res Int. 2024 Sep;191:114644. doi: 10.1016/j.foodres.2024.114644. Epub 2024 Jun 17.
With the increasing threat of global warming, the cultivation of wine grapes in high-altitude with cool-temperature climates has become a viable option. However, the precise mechanism of environmental factors regulating grape quality remains unclear. Therefore, principal component analysis (PCA) was utilized to evaluate the quality of wine grape (Cabernet Sauvignon) in six high-altitude wine regions (1987, 2076, 2181, 2300, 2430, 2540 m). Structural equation modeling (SEM) was applied for the first time to identify the environmental contribution to grape quality. The wine grape quality existed spatial variation in basic physical attributes (BP), basic chemical compositions (BC), phenolic compounds (PC) and individual phenols. The PCA models (variance > 85 %) well separate wine grapes from the six altitudes into three groups according to scores. The score of grapes at 2300 m was significantly high (3.83), and the grapes of 2540 m showed a significantly low score (1.46). Subsequently, the malic acid, total tannin, total phenol, titratable acid, total anthocyanin, and skin thickness were the main differing indexes. SEM model characterized the relational network of differing indexes and microclimatic factors, which showed that temperature and extreme air temperature had a greater direct effect on differing indexes than light, with great contributions from soil temperature (0.98**), day-night temperature difference (0.825*), and day air temperature (0.789**). Our findings provided a theoretical basis for grape cultivation management in high-altitude regions and demonstrated that the SEM model is a useful tool for exploring the relationship between climate and fruit quality.
随着全球变暖威胁的加剧,在高海拔、凉爽气候下种植酿酒葡萄成为一种可行的选择。然而,环境因素调节葡萄品质的确切机制仍不清楚。因此,利用主成分分析(PCA)评估了 6 个高海拔葡萄酒产区(1987、2076、2181、2300、2430 和 2540 m)的酿酒葡萄(赤霞珠)的品质。首次应用结构方程模型(SEM)来确定环境对葡萄品质的贡献。葡萄的基本物理属性(BP)、基本化学成分(BC)、酚类化合物(PC)和单体酚类的品质存在空间变化。PCA 模型(方差>85%)很好地根据得分将来自 6 个不同海拔高度的葡萄酒葡萄分为 3 组。2300 m 处葡萄的得分显著较高(3.83),而 2540 m 处葡萄的得分显著较低(1.46)。随后,苹果酸、总单宁、总酚、可滴定酸、总花色苷和果皮厚度是主要的差异指标。SEM 模型描述了差异指标与小气候因子的关系网络,表明温度和极端气温对差异指标的直接影响大于光照,土壤温度(0.98**)、昼夜温差(0.825*)和日气温(0.789**)的贡献较大。我们的研究结果为高海拔地区葡萄种植管理提供了理论依据,并表明 SEM 模型是探索气候与果实品质关系的有用工具。