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Maize haploid recognition study based on nuclear magnetic resonance spectrum and manifold learning

机译:基于核磁共振谱和歧管学习的玉米单倍体识别研究

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摘要

Haploid breeding is a significant technology of maize breeding. Nondestructively, rapidly and accurately haploid kernel identification method is the basis of developing haploid breeding technology. The commonly adopted maize haploid recognition methods at present are mainly near-infrared spectroscopy (NIBS), machine vision and nuclear magnetic resonance (NMR) oil measurement. NMR spectrum analysis method based on pattern recognition was used in this paper for haploid recognition, which on the one hand could improve recognition efficiency, and on the other hand could overcome the limitation of NMR oil measurement method namely it could not be applied to maize kernels produced by conventional inducer. NMR spectrum as a kind of high-dimensional data, manifold learning could effectively maintain the nonlinear structural properties of data while reducing dimensionality and extract easily identifiable features from these structures. Most manifold learning algorithms used at present map data of different categories onto the same low-dimensional embedded manifold. In order to better reserve essential structures of different categories of data, a new multi-manifold recognition framework was proposed in this paper for haploid recognition. The new framework uses the manifold learning algorithm to conduct feature extraction of NMR spectra of haploid and diploid respectively, and two low-dimensional manifold expressions are established; new samples are discriminated using the distance measurement method after being respectively mapped to two low-dimensional manifolds. For the difficulty existing in the calculation of point-to-manifold distance, the low-dimensional manifold structure is expressed in way of manifold coverage, and then point-to-manifold distance is expressed by calculating the distance from the sample point to the covered geometry. Maize kernels generated by high-oil induction system and conventional induction system were experimented in this paper. First of all, the feasibility of NMR spectrum analysis method based on pattern recognition for haploid identification was analyzed, the experiment was carried out using single-manifold and multi-manifold identification frameworks respectively, and stability of the multi-manifold identification framework was discussed finally. Experimental results indicate that the recognition rate of maize kernels induced by high-oil inducer can reach as high as 98.33% and the recognition rate of maize kernels induced by conventional inducer can reach as high as 90%, it proved that NMR spectrum combining manifold learning algorithm is feasible for haploid recognition; in the meantime, the multi-manifold recognition framework proposed in this paper has achieved better result than single-manifold recognition framework with the recognition rate elevated by 5% or so.
机译:单倍体育种是玉米育种的重要技术。无损,快速,准确地单倍体核核鉴定方法是开发单倍性育种技术的基础。目前通常采用的玉米单倍体识别方法主要是近红外光谱(NIBS),机器视觉和核磁共振(NMR)油测量。本文使用了基于图案识别的NMR谱分析方法,用于单针识别,一方面可以提高识别效率,另一方面,可以克服NMR油测量方法的限制,即它不能应用于玉米核由常规诱导剂产生。 NMR频谱作为一种高维数据,歧管学习可以有效地保持数据的非线性结构特性,同时减少维度和从这些结构中提取容易识别的特征。大多数歧管学习算法用于当前不同类别的地图数据到相同的低维嵌入式歧管上。为了更好地储备不同类别数据的基本结构,本文提出了一种新的多歧管识别框架,用于单倍体识别。新框架使用歧管学习算法分别进行单倍体和二倍体的NMR光谱的特征提取,并且建立了两个低维歧管表达式;在分别映射到两个低维歧管之后,使用距离测量方法区分新样本。为了在计算点对歧管距离的计算中,低维歧管结构以歧管覆盖方式表示,然后通过计算从采样点到覆盖的距离来表示点对歧管距离几何学。用高油感应系统和传统的感应系统产生的玉米内核进行了实验。首先,分析了基于模式识别的单倍体识别模式识别的NMR谱分析方法的可行性,使用单歧管和多歧管识别框架进行实验,最后讨论了多歧管识别框架的稳定性。实验结果表明,高油诱导症诱导的玉米核识别率可以高达98.33%,常规诱导剂诱导的玉米核的识别率可以高达90%,证明了NMR谱结合了歧管学习算法对于单倍体识别是可行的;同时,本文提出的多流形识别框架已经实现了比单流识别框架的结果更好,识别率升高了5%左右。

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