Hyperspectral

高光谱
  • 文章类型: Journal Article
    作物谷物中营养素含量的高通量和低成本量化对于食品加工和营养研究至关重要。然而,传统方法耗时且具有破坏性。本研究提出了一种通过VIS-NIR(400-1700nm)高光谱成像定量小麦养分的高通量低成本方法。使用逐步线性回归(SLR)来准确预测数百种营养素(R2>0.6);当用一阶导数处理高光谱数据时,结果有所改善。还使用敲除材料来验证其实际应用价值。各种营养素的特征波长主要集中在400-500nm和900-1000nm的可见光区域。最后,我们提出了一个改进的pix2pix条件生成网络模型,以可视化的养分分布,并显示出更好的结果比原来。这项研究强调了高光谱技术在通过深度学习高通量和无损测定和可视化谷物养分方面的潜力。
    High-throughput and low-cost quantification of the nutrient content in crop grains is crucial for food processing and nutritional research. However, traditional methods are time-consuming and destructive. A high-throughput and low-cost method of quantification of wheat nutrients with VIS-NIR (400-1700 nm) hyperspectral imaging is proposed in this study. Stepwise linear regression (SLR) was used to predict hundreds of nutrients accurately (R2 > 0.6); results improved when the hyperspectral data was processed with the first derivative. Knockout materials were also used to verify their practical application value. Various nutrients\' characteristic wavelengths were mainly concentrated in the visible regions of 400-500 nm and 900-1000 nm. Finally, we proposed an improved pix2pix conditional generative network model to visualize the nutrients distribution and showed better results compared with the original. This research highlights the potential of hyperspectral technology in high-throughput and non-destructive determination and visualization of grain nutrients with deep learning.
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  • 文章类型: Journal Article
    高光谱成像是一种有价值的分析技术,对环境监测具有重要意义。然而,这些技术的应用仍然有限,很大程度上取决于与可用仪器相关的成本和体积。这导致缺乏来自更具挑战性和极端环境环境的高分辨率数据,限制了我们对这些地区气候变化影响的认识和理解。在本文中,我们通过应用低成本,基于智能手机的高光谱成像仪,用于测量和监测格陵兰冰盖的活动。数据集是在覆盖可见和近红外波长的各种上冰川和前冰川位置捕获的。我们的结果与现有文献相当,尽管被捕获的仪器成本比目前可用的商业技术低一个数量级。还探讨了实地部署的实用性,证明我们的方法是研究领域的宝贵补充,有可能提高来自整个冰冻圈的数据集的可用性,释放了迄今为止不可行的大量数据收集机会。
    Hyperspectral imaging is a valuable analytical technique with significant benefits for environmental monitoring. However, the application of these technologies remains limited, largely by the cost and bulk associated with available instrumentation. This results in a lack of high-resolution data from more challenging and extreme environmental settings, limiting our knowledge and understanding of the effects of climate change in these regions. In this article we challenge these limitations through the application of a low-cost, smartphone-based hyperspectral imaging instrument to measurement and monitoring activities at the Greenland Ice Sheet. Datasets are captured across a variety of supraglacial and proglacial locations covering visible and near infrared wavelengths. Our results are comparable to the existing literature, despite being captured with instrumentation costing over an order of magnitude less than currently available commercial technologies. Practicalities for field deployment are also explored, demonstrating our approach to be a valuable addition to the research field with the potential to improve the availability of datasets from across the cryosphere, unlocking a wealth of data collection opportunities that were hitherto infeasible.
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  • 文章类型: Journal Article
    干旱是导致全球树木死亡的主要因素之一,面对气候变化,干旱事件将变得更加频繁和激烈。量化森林的水分胁迫对于预测和了解森林对干旱造成的死亡率的脆弱性至关重要。这里,我们探索了高分辨率光谱学在预测两种澳大利亚本土树种的水分胁迫指标中的应用,菱形球藻和桉树。从叶片水平光谱学得出的特定光谱特征和指数被评估为预测叶片水势(叶叶)的潜在代理,在专门的实验室实验中,等效水厚度(EWT)和燃料水分含量(FMC)。确定了新的光谱指数,这些指数可以对两个物种(R2>0.85)进行非常高的置信度线性预测,并且在使用分段回归(E.viminalis,R2>0.89;菱形,R2>0.87)。EWT和FMC也以高精度线性预测(E.viminalis,R2>0.90;菱形,R2>0.80)。这项研究强调了光谱学作为非侵入性预测植物水分测量的工具的潜力,为监测和管理植物水分胁迫提供更广泛的应用。
    Drought is one of the main factors contributing to tree mortality worldwide and drought events are set to become more frequent and intense in the face of a changing climate. Quantifying water stress of forests is crucial in predicting and understanding their vulnerability to drought-induced mortality. Here, we explore the use of high-resolution spectroscopy in predicting water stress indicators of two native Australian tree species, Callitris rhomboidea and Eucalyptus viminalis. Specific spectral features and indices derived from leaf-level spectroscopy were assessed as potential proxies to predict leaf water potential (Ψleaf), equivalent water thickness (EWT) and fuel moisture content (FMC) in a dedicated laboratory experiment. New spectral indices were identified that enabled very high confidence linear prediction of Ψleaf for both species (R2 > 0.85) with predictive capacity increasing when accounting for a breakpoint in the relationships using segmented regression (E. viminalis, R2 > 0.89; C. rhomboidea, R2 > 0.87). EWT and FMC were also linearly predicted to a high accuracy (E. viminalis, R2 > 0.90; C. rhomboidea, R2 > 0.80). This study highlights the potential of spectroscopy as a tool for predicting measures of plant water noninvasively, enabling broader applications for monitoring and managing plant water stress.
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  • 文章类型: Journal Article
    在植物育种和作物管理中,可解释性在灌输对人工智能驱动方法的信任和提供可操作的见解方面起着至关重要的作用。这项研究的主要目的是探索和评估使用堆叠LSTM进行季末玉米籽粒产量预测的深度学习网络体系结构的潜在贡献。第二个目标是通过调整这些网络以更好地适应和利用遥感数据的多模态属性来扩展这些网络的能力。在这项研究中,一种从异构数据流中吸收输入的多模态深度学习架构,包括高分辨率的高光谱图像,激光雷达点云,和环境数据,建议预测玉米作物产量。该架构包括注意力机制,这些机制将不同级别的重要性分配给不同的模态和时间特征,反映了植物生长和环境相互作用的动态。在多模式网络中研究了注意力权重的可解释性,该网络旨在改善预测并将作物产量结果归因于遗传和环境变量。这种方法还有助于增加模型预测的可解释性。时间注意力权重分布突出了有助于预测的相关因素和关键增长阶段。这项研究的结果确认,注意权重与公认的生物生长阶段一致,从而证实了网络学习生物学可解释特征的能力。在这项以遗传学为重点的研究中,模型预测产量的准确性范围为0.82-0.93R2ref,进一步突出了基于注意力的模型的潜力。Further,这项研究有助于理解多模态遥感如何与玉米的生理阶段保持一致。拟议的架构显示了改善预测和提供可解释的见解影响玉米作物产量的因素的希望,同时证明了通过不同方式收集数据对整个生长季节的影响。通过确定相关因素和关键生长阶段,该模型的注意力权重提供了有价值的信息,可用于植物育种和作物管理。注意力权重与生物生长阶段的一致性增强了深度学习网络在农业应用中的潜力。特别是在利用遥感数据进行产量预测方面。据我们所知,这是第一项研究使用高光谱和LiDAR无人机时间序列数据来解释/解释深度学习网络中的植物生长阶段,并使用具有注意力机制的后期融合模式预测地块水平的玉米籽粒产量。
    In both plant breeding and crop management, interpretability plays a crucial role in instilling trust in AI-driven approaches and enabling the provision of actionable insights. The primary objective of this research is to explore and evaluate the potential contributions of deep learning network architectures that employ stacked LSTM for end-of-season maize grain yield prediction. A secondary aim is to expand the capabilities of these networks by adapting them to better accommodate and leverage the multi-modality properties of remote sensing data. In this study, a multi-modal deep learning architecture that assimilates inputs from heterogeneous data streams, including high-resolution hyperspectral imagery, LiDAR point clouds, and environmental data, is proposed to forecast maize crop yields. The architecture includes attention mechanisms that assign varying levels of importance to different modalities and temporal features that, reflect the dynamics of plant growth and environmental interactions. The interpretability of the attention weights is investigated in multi-modal networks that seek to both improve predictions and attribute crop yield outcomes to genetic and environmental variables. This approach also contributes to increased interpretability of the model\'s predictions. The temporal attention weight distributions highlighted relevant factors and critical growth stages that contribute to the predictions. The results of this study affirm that the attention weights are consistent with recognized biological growth stages, thereby substantiating the network\'s capability to learn biologically interpretable features. Accuracies of the model\'s predictions of yield ranged from 0.82-0.93 R2 ref in this genetics-focused study, further highlighting the potential of attention-based models. Further, this research facilitates understanding of how multi-modality remote sensing aligns with the physiological stages of maize. The proposed architecture shows promise in improving predictions and offering interpretable insights into the factors affecting maize crop yields, while demonstrating the impact of data collection by different modalities through the growing season. By identifying relevant factors and critical growth stages, the model\'s attention weights provide valuable information that can be used in both plant breeding and crop management. The consistency of attention weights with biological growth stages reinforces the potential of deep learning networks in agricultural applications, particularly in leveraging remote sensing data for yield prediction. To the best of our knowledge, this is the first study that investigates the use of hyperspectral and LiDAR UAV time series data for explaining/interpreting plant growth stages within deep learning networks and forecasting plot-level maize grain yield using late fusion modalities with attention mechanisms.
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  • 文章类型: Journal Article
    与透射电子显微镜(TEM)结合的原位电子能量损失谱(EELS)传统上对于理解材料加工选择如何影响局部结构和成分至关重要。然而,监测和响应超快瞬态变化的能力,现在可以用EELS和TEM实现,需要创新的分析框架。这里,我们引入了一个机器学习(ML)框架,用于实时评估和表征操作EELS光谱图像(EELS-SI)。我们专注于2DMXenes作为样品材料系统,专门针对其原子尺度结构转换的理解和控制,这些转换严重影响其电子和光学性质。与典型的深度学习分类方法相比,这种方法需要更少的标记训练数据点。通过在独特的训练方法中使用变分自动编码器(VAE)将计算生成的MXenes和实验数据集的结构集成到统一的潜在空间中,我们的框架准确地预测了与TEM内闭环处理相关的延迟的结构演化。这项研究提出了实现自动化,即时合成和表征,在原子尺度上显著增强材料发现和功能材料精密工程的能力。
    In situ Electron Energy Loss Spectroscopy (EELS) combined with Transmission Electron Microscopy (TEM) has traditionally been pivotal for understanding how material processing choices affect local structure and composition. However, the ability to monitor and respond to ultrafast transient changes, now achievable with EELS and TEM, necessitates innovative analytical frameworks. Here, we introduce a machine learning (ML) framework tailored for the real-time assessment and characterization of in operando EELS Spectrum Images (EELS-SI). We focus on 2D MXenes as the sample material system, specifically targeting the understanding and control of their atomic-scale structural transformations that critically influence their electronic and optical properties. This approach requires fewer labeled training data points than typical deep learning classification methods. By integrating computationally generated structures of MXenes and experimental datasets into a unified latent space using Variational Autoencoders (VAE) in a unique training method, our framework accurately predicts structural evolutions at latencies pertinent to closed-loop processing within the TEM. This study presents a critical advancement in enabling automated, on-the-fly synthesis and characterization, significantly enhancing capabilities for materials discovery and the precision engineering of functional materials at the atomic scale.
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  • 文章类型: Journal Article
    叶绿素荧光(ChlF)参数为在光系统水平上量化能量转移和分配提供了有价值的见解。然而,基于反射光谱信息跟踪它们的变化对于大规模遥感应用和生态建模仍然具有挑战性。光谱预处理方法,如分数阶导数(FOD),已被证明在突出光谱特征方面具有优势。在这项研究中,我们开发并评估了从FOD光谱和其他光谱转换得出的新型光谱指数的能力,以检索各种物种和叶组的ChlF参数。获得的结果表明,经验谱指数在估计ChlF参数时可靠性较低。相比之下,从低阶FOD光谱得出的指数显示出估计值的显着改善。此外,物种特异性的掺入增强了日照叶片的非光化学猝灭(NPQ)的跟踪(R2=0.61,r=0.79,RMSE=0.15,MAE=0.13),阴影叶的PSII开放中心(qL)的分数(R2=0.50,r=0.71,RMSE=0.09,MAE=0.08),阴影叶的荧光量子产率(ΦF)(R2=0.71,r=0.85,RMSE=0.002,MAE=0.001)。我们的研究证明了FOD光谱在捕获ChlF参数变化方面的潜力。然而,考虑到ChlF参数的复杂性和敏感性,在利用光谱指数进行追踪时,谨慎行事。
    Chlorophyll fluorescence (ChlF) parameters offer valuable insights into quantifying energy transfer and allocation at the photosystem level. However, tracking their variation based on reflectance spectral information remains challenging for large-scale remote sensing applications and ecological modeling. Spectral preprocessing methods, such as fractional-order derivatives (FODs), have been demonstrated to have advantages in highlighting spectral features. In this study, we developed and assessed the ability of novel spectral indices derived from FOD spectra and other spectral transformations to retrieve the ChlF parameters of various species and leaf groups. The results obtained showed that the empirical spectral indices were of low reliability in estimating the ChlF parameters. In contrast, the indices developed from low-order FOD spectra demonstrated a significant improvement in estimation. Furthermore, the incorporation of species specificity enhanced the tracking of the non-photochemical quenching (NPQ) of sunlit leaves (R2 = 0.61, r = 0.79, RMSE = 0.15, MAE = 0.13), the fraction of PSII open centers (qL) of shaded leaves (R2 = 0.50, r = 0.71, RMSE = 0.09, MAE = 0.08), and the fluorescence quantum yield (ΦF) of shaded leaves (R2 = 0.71, r = 0.85, RMSE = 0.002, MAE = 0.001). Our study demonstrates the potential of FOD spectra in capturing variations in ChlF parameters. Nevertheless, given the complexity and sensitivity of ChlF parameters, it is prudent to exercise caution when utilizing spectral indices for tracking them.
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  • 文章类型: Journal Article
    背景:灰疫病(GB)是茶叶的一种重要疾病,对产量和质量都构成严重威胁。在这项研究中,模拟了GB病病原分离株(DDZ-6)的叶片感染过程。正常叶子的高光谱图像,感染的叶子没有症状,收集轻度和中度症状的感染叶。结合卷积神经网络(CNN),长短期记忆(LSTM),和支持向量机(SVM)算法,GB疾病的早期检测模型,建立了抗性品种快速筛选模型。通过在现场条件下收集数据集,验证了该方法的通用性。
    结果:可见的红光带显示出对GB疾病的明显反应,通过严格的筛选过程利用无信息变量消除(UVE)识别出三个敏感带,竞争性自适应重加权抽样(CARS),和连续投影算法(SPA)。693、727和766nm波段是GB的高度敏感指标。在理想条件下,CARS-LSTM模型在早期检测GB方面表现出色,达到92.6%的准确率。然而,在现场条件下,与CNN集成的693和727nm波段的组合提供了最有效的早期检测模型,达到87.8%的准确率。为了筛选抗GB的茶叶品种,SPA-LSTM模型非常出色,达到82.9%的准确率。
    结论:本研究为具有检测功能的GB疾病仪器提供了核心算法,这对茶园GB病的早期预防具有重要意义。©2024化学工业学会。
    BACKGROUND: Gray blight (GB) is a significant disease of tea leaves, posing a severe threat to both the yield and quality. In this study, the process of leaf infection by a pathogenic isolate of the GB disease (DDZ-6) was simulated. Hyperspectral images of normal leaves, infected leaves without symptoms, and infected leaves with mild and moderate symptoms were collected. Combining convolution neural network (CNN), long short-term memory (LSTM), and support vector machine (SVM) algorithms, the early detection model of GB disease, and the rapid screening model of resistant varieties were established. The generality of this method was verified by collecting datasets under field conditions.
    RESULTS: The visible red-light band demonstrated a pronounced responsiveness to GB disease, with three sensitive bands identified through rigorous screening processes utilizing uninformative variable elimination (UVE), competitive adaptive reweighted sampling (CARS), and the successive projections algorithm (SPA). The 693, 727, and 766 nm bands emerged as highly sensitive indicators of GB. Under ideal conditions, the CARS-LSTM model excelled in early detection of GB, achieving an accuracy of 92.6%. However, under field conditions, the combination of 693 and 727 nm bands integrated with a CNN provided the most effective early detection model, attaining an accuracy of 87.8%. For screening tea varieties resistant to GB, the SPA-LSTM model excelled, achieving an accuracy of 82.9%.
    CONCLUSIONS: This study provides a core algorithm for a GB disease instrument with detection capabilities, which is of great importance for the early prevention of GB disease in tea plantations. © 2024 Society of Chemical Industry.
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  • 文章类型: Journal Article
    高光谱成像已成为大量军事中有效的强大工具,环境,以及过去三十年的民事申请。现代遥感方法足以以惊人的时间覆盖巨大的地球表面,光谱,空间分辨率。这些特征使HSI在遥感的各种应用中更有效,这取决于对相同材料识别的物理估计和具有完成光谱分辨率的多种复合表面。最近,HSI在食品安全和质量评估研究中具有重要意义,医学分析,和农业应用。这篇综述的重点是恒生指数的基本原理及其应用,如食品安全和质量评估,医学分析,农业,水资源,植物胁迫识别,杂草和作物歧视,和洪水管理。根据HSI,各种研究人员都为自动系统提供了有希望的解决方案。未来的研究可能会将此综述用作基线和未来发展分析。
    Hyperspectral imaging has emerged as an effective powerful tool in plentiful military, environmental, and civil applications over the last three decades. The modern remote sensing approaches are adequate for covering huge earth surfaces with phenomenal temporal, spectral, and spatial resolutions. These features make HSI more effective in various applications of remote sensing depending upon the physical estimation of identical material identification and manifold composite surfaces having accomplished spectral resolutions. Recently, HSI has attained immense significance in the research on safety and quality assessment of food, medical analysis, and agriculture applications. This review focuses on HSI fundamentals and its applications like safety and quality assessment of food, medical analysis, agriculture, water resources, plant stress identification, weed & crop discrimination, and flood management. Various investigators have promising solutions for automatic systems depending upon HSI. Future research may use this review as a baseline and future advancement analysis.
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  • 文章类型: Journal Article
    农业遥感中有机质含量变化率的高光谱检测需要较高的信噪比(SNR)。然而,由于组件的数量和效率限制,很难提高信噪比。这项研究使用高效率的凸光栅,在360-850nm范围内衍射效率超过50%,具有95%峰值波长效率的背照式互补金属氧化物半导体(CMOS)检测器,和镀银的镜子,以开发用于检测土壤有机质(SOM)的成像光谱仪。设计的系统在360-850nm范围内满足10nm的光谱分辨率,并在648.2km的轨道高度处实现100km的条带和100m的空间分辨率。这项研究还使用了Offner的基本结构,在设计中使用了较少的组件,并将Offner结构的反射镜设置为具有相同的球体,从而可以实现协标准的快速调整。本研究对基于经典Rowland圆形结构开发的Offner成像光谱仪进行了理论分析,21.8mm狭缝长度;模拟其抑制+2级衍射杂散光的能力;并分析满足公差要求后的成像质量,这与高效光栅的表面形状特性相结合。在这个测试之后,光栅的衍射效率高于50%,镀银镜的反射值平均在95%以上。最后,实验室测试表明,该波段的信噪比超过300,在550nm处达到800,高于目前轨道上的一些土壤观测仪器。拟议的成像光谱仪具有10nm的光谱分辨率,在奈奎斯特频率下,其调制传递函数(MTF)大于0.23,适用于SOM变化率的遥感观测。这种高效宽带光栅的制造和所提出的具有高能量传输效率的仪器的开发可以为高信噪比的微弱目标观测提供可行的技术方案。
    Hyperspectral detection of the change rate of organic matter content in agricultural remote sensing requires a high signal-to-noise ratio (SNR). However, due to the large number and efficiency limitation of the components, it is difficult to improve the SNR. This study uses high-efficiency convex grating with a diffraction efficiency exceeding 50% across the 360-850 nm range, a back-illuminated Complementary Metal Oxide Semiconductor (CMOS) detector with a 95% efficiency in peak wavelength, and silver-coated mirrors to develop an imaging spectrometer for detecting soil organic matter (SOM). The designed system meets the spectral resolution of 10 nm in the 360-850 nm range and achieves a swath of 100 km and a spatial resolution of 100 m at an orbital height of 648.2 km. This study also uses the basic structure of Offner with fewer components in the design and sets the mirrors of the Offner structure to have the same sphere, which can achieve the rapid adjustment of the co-standard. This study performs a theoretical analysis of the developed Offner imaging spectrometer based on the classical Rowland circular structure, with a 21.8 mm slit length; simulates its capacity for suppressing the +2nd-order diffraction stray light with the filter; and analyzes the imaging quality after meeting the tolerance requirements, which is combined with the surface shape characteristics of the high-efficiency grating. After this test, the grating has a diffraction efficiency above 50%, and the silver-coated mirrors have a reflection value above 95% on average. Finally, the laboratory tests show that the SNR over the waveband exceeds 300 and reaches 800 at 550 nm, which is higher than some current instruments in orbit for soil observation. The proposed imaging spectrometer has a spectral resolution of 10 nm, and its modulation transfer function (MTF) is greater than 0.23 at the Nyquist frequency, making it suitable for remote sensing observation of SOM change rate. The manufacture of such a high-efficiency broadband grating and the development of the proposed instrument with high energy transmission efficiency can provide a feasible technical solution for observing faint targets with a high SNR.
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  • 文章类型: Journal Article
    视网膜高光谱成像(HSI)是一种非侵入性的体内方法,已在阿尔茨海默氏病中显示出希望。帕金森病是另一种神经退行性疾病,其中脑病理学如α-突触核蛋白和铁的过度积累与视网膜有关。然而,尚不清楚HSI在帕金森病的体内模型中是否发生改变,它是否不同于健康的衰老,以及推动这些变化的机制。为了解决这个问题,我们在两个不同年龄的帕金森病小鼠模型中进行了HSI;α-突触核蛋白过度积累模型(hA53T转基因株系M83,A53T)和铁沉积模型(Tau敲除,TauKO).与野生型同窝相比,A53T和TauKO小鼠在短波长〜450至600nm处的反射率均增加。相比之下,三个背景菌株的健康衰老表现出相反的效果,在短波长光谱中反射率降低。我们还证明了帕金森的高光谱特征与阿尔茨海默病模型相似,5xFAD小鼠。当相对于年龄作图时,HSI的多变量分析是有意义的。此外,当α-突触核蛋白,添加铁或视网膜神经纤维层厚度作为辅因子,这改善了某些组中相关性的R2值。这项研究证明了帕金森病的体内高光谱特征,这在两个小鼠模型中是一致的,并且与健康衰老不同。还有一个建议,包括α-突触核蛋白和铁的视网膜沉积在内的因素可能在晚期衰老中驱动帕金森氏病的高光谱轮廓和视网膜神经纤维层厚度中起作用。这些发现表明,HSI可能是帕金森病的一个有前途的翻译工具。
    Retinal hyperspectral imaging (HSI) is a non-invasive in vivo approach that has shown promise in Alzheimer\'s disease. Parkinson\'s disease is another neurodegenerative disease where brain pathobiology such as alpha-synuclein and iron overaccumulation have been implicated in the retina. However, it remains unknown whether HSI is altered in in vivo models of Parkinson\'s disease, whether it differs from healthy aging, and the mechanisms which drive these changes. To address this, we conducted HSI in two mouse models of Parkinson\'s disease across different ages; an alpha-synuclein overaccumulation model (hA53T transgenic line M83, A53T) and an iron deposition model (Tau knock out, TauKO). In comparison to wild-type littermates the A53T and TauKO mice both demonstrated increased reflectivity at short wavelengths ~ 450 to 600 nm. In contrast, healthy aging in three background strains exhibited the opposite effect, a decreased reflectance in the short wavelength spectrum. We also demonstrate that the Parkinson\'s hyperspectral signature is similar to that from an Alzheimer\'s disease model, 5xFAD mice. Multivariate analyses of HSI were significant when plotted against age. Moreover, when alpha-synuclein, iron or retinal nerve fibre layer thickness were added as a cofactor this improved the R2 values of the correlations in certain groups. This study demonstrates an in vivo hyperspectral signature in Parkinson\'s disease that is consistent in two mouse models and is distinct from healthy aging. There is also a suggestion that factors including retinal deposition of alpha-synuclein and iron may play a role in driving the Parkinson\'s disease hyperspectral profile and retinal nerve fibre layer thickness in advanced aging. These findings suggest that HSI may be a promising translation tool in Parkinson\'s disease.
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