首页|基于局部信噪比阈值调节的分光谱去相关光学相干断层扫描血管造影方法

基于局部信噪比阈值调节的分光谱去相关光学相干断层扫描血管造影方法

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在基于强度信息的光学相干断层扫描血管造影(OCTA)技术中,去相关映射被广泛应用,但该方法易受噪声影响,尤其是对于低信噪比区域,噪声会使帧间高相关的静态组织信号呈现出高去相关性,与血流信号的高去相关值混叠,从而会降低微血管图像的成像质量。本文提出了一种基于局部信噪比动态阈值调节的分光谱振幅去相关方法,首先探讨了图像局部信噪比与静态体素去相关值的关系及影响因素,并以分频谱处理数据的方式削弱轴向运动伪影并加强血流信息,然后依据图像局部信噪比与静态体素去相关的关系调整设定阈值,用以判定区分动静态体素,阈值以下的去相关值视为静态体素,结合Sigmoid函数予以抑制。采用该算法在高信噪比的皮肤数据和低信噪比的视网膜数据处理中均能取得较好的效果:皮肤enface图像信噪比提升约4dB;视网膜enface图像的对比度相较其他算法优势明显,相比于未进行静态抑制的分频谱振幅去相关造影(SSADA)方法,enface图像的对比度提升了 0。0182。可见该方法能够有效地抑制微血管图像中的静态体素噪声,提升图像对比度和血管可视性,有利于疾病的诊断和评估。
Split-Spectrum Threshold Decorrelation Optical Coherence Tomography Angiography Method Based on Local Signal-to-Noise Ratio
Objective In optical coherence tomography angiography(OCTA),the applications of decorrelation mapping,primarily reliant on intensity data,have caught significant attention.However,this method is particularly vulnerable to the deleterious effects of noise,especially in fields characterized by low signal-to-noise ratios(SNRs).Noise artifacts have a pronounced effect on static tissue signals,which makes them exhibit elevated decorrelation between frames and in turn tends to overlap with the high decorrelation values associated with blood flow signals.This overlap detrimentally affects the quality of microvascular image acquisition.Meanwhile,classical techniques for refining decorrelation mapping,such as frequency-domain decorrelation angiography,still struggle to yield optimal results due to this inherent challenge.In response to the spurious static voxel artifacts,some studies have resorted to employing thresholding to eliminate static voxels falling below a predefined threshold.However,the global and indiscriminate nature of such thresholding often lacks a robust theoretical foundation,making the precise suppression of static voxel artifacts a complex endeavor.To this end,we present a novel OCTA approach that incorporates considerations of SNR and dynamic threshold adjustments.This innovative method is further combined with spectral analysis principles to provide a more precise means for the identification and suppression of static voxels.The ultimate objective is to enhance the microvascular imaging quality,thereby serving as a more dependable foundation for medical diagnostics.Methods We introduce a method for spectral amplitude decorrelation,which features dynamic threshold adjustments based on local SNRs.The methodology commences with an in-depth exploration of the complex relationship between local image SNRs and static voxels,including a comprehensive analysis of the various factors influencing this association.Subsequently,spectral analysis techniques are employed to mitigate artifacts arising from axial motion and accentuate the visualization of blood flow data.Built upon the established connection between local image SNRs and static voxels,our approach proposes adaptive thresholds for each voxel to ensure precise differentiation between dynamic and static voxels.Voxels exhibiting decorrelation values below the established threshold are categorized as static ones and subsequently suppressed.Conversely,voxels surpassing the threshold are identified as dynamic ones and are retained.Meanwhile,we further employ a sigmoid function to apply non-linear mapping to all voxels,thereby facilitating a seamless transition at the boundary between dynamic and static voxels.After the suppression of static voxels,an averaging process is applied to the decorrelation images,which allows us to reconstruct enface microvascular images by the mean projection technique.Additionally,we have established a dedicated posterior segment SS-OCT system to collect retinal data from volunteers.The effectiveness of our algorithm is rigorously validated via the data,and we conduct comparative experiments with other classical intensity-based OCTA methods to comprehensively assess its performance.Results and Discussions In comparison to the conventional decorrelation mapping approach,the retinal blood flow cross-sectional images processed by our algorithm exhibit prominent blood flow signals,whereas the conventional method's results are largely submerged within the noise emanating from static tissue(Fig.6).This disparity highlights that the SSADA algorithm affected by noise-induced interference in individual spectral amplitude decorrelation images produces lower-quality enface microvascular images after averaging.In contrast,our algorithm effectively suppresses the noise arising from static voxels within individual spectral amplitude decorrelation images,ultimately yielding high-quality enface microvascular images.Compared to other intensity-based OCTA techniques,our proposed algorithm demonstrates superior performance across both high SNR skin data and low SNR retinal data,with the same preprocessing,target extraction,and image registration protocols employed.For skin data,the enface microvascular images obtained by our algorithm exhibit an SNR enhancement of approximately 4 dB in contrast to the SSADA method without static voxel suppression(Fig.5).In the case of retinal data,our algorithm produces enface microvascular images with significantly improved contrast ratio,achieving a contrast enhancement of 0.0182 compared to the SSADA method without static suppression(Table 1).Conclusions We conduct a systematic examination of the intricate relationship between local SNRs and the decorrelation values of static voxels in OCT structural images.The results show that as noise levels on voxels increase,static voxels exhibit higher decorrelation values.Based on this pivotal finding,we introduce a dynamic threshold adjustment method within the context of spectral analysis.This combined approach adeptly leverages the sensitivity of decorrelation mapping to subtle differences and the efficacy of spectral analysis in mitigating artifacts stemming from axial motion.The retinal enface microvascular images produced by our algorithm adeptly differentiate capillaries in proximity to the macular region,underscoring the algorithm's competence in effectively suppressing static voxel noise within microvascular images.Furthermore,our algorithm consistently delivers favorable outcomes in retinal data characterized by low SNRs,resulting in enhanced image contrast ratio and superior vessel visibility.This enhancement has great potential in improving disease diagnosis and evaluation,contributing to more precise medical assessments.

optical coherence tomographyangiographysplit spectrumcorrelation mapping methodsignal-to-noise ratio guidance

王露桐、汪毅、徐玉帅、娄世良、蔡怀宇、陈晓冬

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天津大学精密仪器与光电子工程学院光电信息技术教育部重点实验室,天津 300072

光学相干层析 血管造影 分频谱 相关映射法 信噪比引导

国家重点研发计划天津市自然科学基金

2017YFC010990115JCQNJC14200

2024

光学学报
中国光学学会 中国科学院上海光学精密机械研究所

光学学报

CSTPCD北大核心
影响因子:1.931
ISSN:0253-2239
年,卷(期):2024.44(5)
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