Zhang Fanhang, Wang Qi, Li Haitao, Zhou Qinyang, Tan Zhihao, Zu Xiaochao, Yan Xin, Zhang Shaoling, Ninomiya Seishi, Mu Yue, Tao Shutian
Sanya Institute, College of Horticulture, Nanjing Agricultural University, Nanjing, Jiangsu 210095, China.
Academy for Advanced Interdisciplinary Studies, Nanjing Agricultural University, Nanjing, Jiangsu 210095, China.
Plant Phenomics. 2024 Aug 14;6:0233. doi: 10.34133/plantphenomics.0233. eCollection 2024.
The leaf area-to-fruit ratio (LAFR) is an important factor affecting fruit quality. Previous studies on LAFR have provided some recommendations for optimal values. However, these recommendations have been quite broad and lack effectiveness during the fruit thinning period. In this study, data on the LAFR and fruit quality of pears at 5 stages were collected by continuously girdling bearing branches throughout the entire fruit development process. Five different clustering algorithms, including KMeans, Agglomerative clustering, Spectral clustering, Birch, and Spectral biclustering, were employed to classify the fruit quality data. Agglomerative clustering yielded the best results when the dataset was divided into 4 clusters. The least squares method was utilized to fit the LAFR corresponding to the best quality cluster, and the optimal LAFR values for 28, 42, 63, 91, and 112 days after flowering were 12.54, 18.95, 23.79, 27.06, and 28.76 dm (the corresponding leaf-to-fruit ratio values were 19, 29, 36, 41, and 44, respectively). Furthermore, field verification experiments demonstrated that the optimal LAFR contributed to improving pear fruit quality, and a relatively high LAFR beyond the optimum value did not further increase quality. In summary, we optimized the LAFR of pear trees at different stages and confirmed the effectiveness of the optimal LAFR in improving fruit quality. Our research provides a theoretical basis for managing pear tree fruit load and achieving high-quality, clean fruit production.
叶面积与果实比(LAFR)是影响果实品质的重要因素。以往关于LAFR的研究给出了一些最佳值建议。然而,这些建议较为宽泛,在疏果期缺乏有效性。在本研究中,通过在整个果实发育过程中持续环剥结果枝,收集了梨在5个阶段的LAFR和果实品质数据。采用了5种不同的聚类算法,包括KMeans、凝聚聚类、谱聚类、Birch和谱双聚类,对果实品质数据进行分类。当数据集分为4个聚类时,凝聚聚类产生了最佳结果。利用最小二乘法拟合与最佳品质聚类相对应的LAFR,开花后28、42、63、91和112天的最佳LAFR值分别为12.54、18.95、23.79、27.06和28.76平方分米(相应的叶果比分别为19、29、36、41和44)。此外,田间验证实验表明,最佳LAFR有助于提高梨果实品质,超过最佳值的相对较高LAFR并不会进一步提高品质。总之,我们优化了梨树不同阶段的LAFR,并证实了最佳LAFR在改善果实品质方面的有效性。我们的研究为管理梨树果实负载量和实现高品质、清洁果实生产提供了理论依据。