Asefpour Vakilian Keyvan
Department of Biosystems Engineering, Gorgan University of Agricultural Sciences and Natural Resources, Gorgan, Iran.
Plant Mol Biol. 2025 Feb 26;115(2):37. doi: 10.1007/s11103-025-01564-y.
Today, measuring the concentration of various microRNAs in fruits has been introduced to model the storage conditions of agricultural products. However, there is a limiting factor in the extensive utilization of such techniques: the existing methods for measuring microRNA sequences, including PCR and microarrays, are time-consuming and expensive and do not allow for simultaneous measurement of several microRNAs. In this study, a biosensor based on the Förster resonance energy transfer (FRET) of fluorescence dyes that can lead to the hybridization of oligonucleotide probes labeled with such dyes by using an excitation wavelength has been used to simultaneously measure microRNAs. Three microRNA compounds, i.e., miRNA-164, miRNA-167, and miRNA-399a, which play significant roles in the postharvest characteristics of strawberry fruits were measured. The simultaneous measurement was performed using three fluorescence dyes which exert various emission wavelengths at 570, 596, and 670 nm. In the following, machine learning methods including artificial neural networks (ANNs) and support vector machines (SVMs), with hyperparameter values optimized with the help of metaheuristic optimization algorithms, were used to predict the amount of mechanical loading on strawberry fruits and their storage period having the microRNA concentrations. The results showed that the SVM with Gaussian kernel, which was optimized by the Harris hawks optimization, is capable of predicting the mechanical stress and storage period of strawberry fruits with a coefficient of determination (R) of 0.89 and 0.92, respectively. The findings of this study reveal the application of combining FRET-based biosensors and machine learning methods in fruit storage quality assessment.
如今,通过测量水果中各种微小RNA的浓度来模拟农产品的储存条件已被引入。然而,此类技术的广泛应用存在一个限制因素:现有的测量微小RNA序列的方法,包括聚合酶链式反应(PCR)和微阵列,既耗时又昂贵,且无法同时测量多种微小RNA。在本研究中,一种基于荧光染料的Förster共振能量转移(FRET)的生物传感器被用于同时测量微小RNA,该生物传感器可利用激发波长使标记有此类染料的寡核苷酸探针发生杂交。对在草莓果实采后特性中起重要作用的三种微小RNA化合物,即miRNA - 164、miRNA - 167和miRNA - 399a进行了测量。同时测量使用了三种分别在570、596和670 nm处发出不同发射波长的荧光染料。接下来,使用包括人工神经网络(ANN)和支持向量机(SVM)在内的机器学习方法,并借助元启发式优化算法对超参数值进行优化,以预测草莓果实上的机械负荷量及其在含有微小RNA浓度情况下的储存期。结果表明,通过哈里斯鹰优化算法优化的具有高斯核的支持向量机能够分别以0.89和0.92的决定系数(R)预测草莓果实的机械应力和储存期。本研究结果揭示了基于FRET的生物传感器与机器学习方法相结合在水果储存质量评估中的应用。