首页|基于共定位相位成像的白细胞亚结构特征参数研究

基于共定位相位成像的白细胞亚结构特征参数研究

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白细胞分类在血液分析、临床疾病的诊断和治疗中具有重要意义。人工镜检作为血细胞分析的金标准,耗时较长且高度依赖检测人员的经验。定量相位成像可测量细胞各处的相位分布,是研究细胞形态学和生物化学特征的有效方法。利用基于数字全息显微和明场显微成像的共定位相位成像系统对健康人外周血涂片中的5种白细胞进行研究,定量分析了不同白细胞及其亚结构中的相位分布情况,提取出多个有效辅助白细胞分类的特征参数,并进一步分析了镜检中容易混淆的异型淋巴细胞。结果表明,利用提取的细胞亚结构特征参数可对白细胞进行有效分类,也能较好区分异型淋巴细胞。因此,基于共定位相位成像的细胞亚结构特征参数可为白细胞分类、各类血液疾病的诊断和治疗提供依据和参考,且此种方法无须再对常用的染色样品进行特殊处理,应用场景众多。
Study on White Blood Cell Substructure Feature Parameters Based on Co-localized Phase Imaging
Objective The accurate classification of white blood cells(WBCs)is crucial in the examination of blood and the diagnosis and treatment of clinical conditions.Manual examination under a bright-field microscope,the gold standard for blood cell analysis,is time-consuming and inspector-dependent.Currently,blood cell analyzers based on the impedance method or flow cytometry are extensively employed.However,some false positives may occur because of the structural variability of WBCs,which requires a manual microscopic review.In addition,these instruments are expensive.Deep learning,which can reduce the technical requirements of inspectors,is widely used for WBC classification.However,this analysis continues to rely on the morphology and color characteristics of the stained cells.To achieve high accuracy in the classification of WBCs,the process usually requires image acquisition and processing under a 100× objective lens,which can be time-consuming and data-intensive.Quantitative-phase imaging(QPI)is an effective method for studying cell morphology and biochemistry.However,identifying WBCs solely based on their phase characteristics is challenging,particularly when these phase characteristics are not prominent.Research on stained cells using QPI has shown that the inclusion of phase information,alongside bright-field pictures,might provide useful insights for WBC classification.In this study,the phase distributions of five different types of WBCs were quantitatively analyzed,and the substructure phase information was effectively divided using a co-localization imaging system based on digital holographic microscopy(DHM)and bright-field microscopy.A series of feature parameters were extracted to assist with the WBC classification.The accuracies of the classification of the three types of granulocytes based on the extracted phase feature parameters were 94%.Additionally,atypical lymphocytes were studied,and a recognition accuracy of 84.5%was achieved.The proposed method utilizes routine blood smear samples stained for clinical microscopy,making it easy to integrate into a commercial microscopic system and providing a wide range of practical applications.Methods A benchtop co-localization imaging system was used to obtain bright-field images and quantitative phase images of WBCs from peripheral blood smears of healthy individuals.Quantitative phase images of the WBCs were reconstructed from off-axis holograms obtained from DHM.To segment the phase information,WBCs were first extracted and divided into two parts,the nucleus and the cytoplasm,based on bright-field images.Then,the position information of the nucleus and cytoplasm of the WBCs in the bright-field images was transposed onto the corresponding phase images.Finally,the quantitative phase distributions of WBCs and their corresponding nuclei and cytoplasm were successfully acquired.A substantial number of WBC samples consisting of 100 neutrophils,eosinophils,basophils,monocytes,large lymphocytes,and small lymphocytes were selected for co-localization imaging and statistical analysis.Various feature parameters were extracted to quantitatively describe and analyze the morphological and substructural features of the different WBCs.Results and Discussions The feature parameters of the five types of WBCs were subjected to analysis and comparison,revealing distinct phase characteristics for each type.Neutrophils had a substantially higher nuclear phase value than the cytoplasmic phase value[Fig.4(a)],whereas eosinophils had comparable nuclear and cytoplasmic phase values(Fig.4).The cytoplasmic phase values in basophils fluctuated substantially[Fig.5(c)],and monocytes showed a smaller phase difference between the nucleus and cytoplasm than lymphocytes[Fig.4(b)].Using the extracted feature parameters,three types of granulocytes were successfully classified with 94%accuracy.The efficiency of classifying phase features was evaluated by analyzing a total of 1200 neutrophils and eosinophils.This analysis was conducted using a phase feature method based on a 40X co-localization microscope,deep learning classification based on a 40× brightfield microscope,and a commercial system called Morphogo with a 100× microscope.The results showed that the phase feature accurately identified easily confused cells in deep learning classification or the Morphogo system(Fig.7).Furthermore,an examination of atypical cells was conducted,revealing that the use of phase characteristics resulted in a classification accuracy of 84.5%.These results demonstrate that the phase feature parameters are effective in aiding WBC classification.Conclusions This study proposes a method for classifying WBCs using QPI.The approach involved analyzing different types of WBCs using a co-localization imaging system that combines DHM and bright-field microscopy.The position and structural information of WBCs were obtained from bright-field images,and the phase information of WBCs and their nuclei and cytoplasm were extracted accordingly.Statistical analysis was then used to extract feature parameters that effectively aided in the classification of WBCs.This method achieved an accuracy rate of 94%for classifying the three types of granulocytes based on the substructure phase characteristic parameters.Further analysis showed an accuracy rate of 84.5%for identifying atypical lymphocytes,which are often misinterpreted during microscopic examinations.Compared with using only phase information to classify WBCs,the proposed method incorporates high contrast between the nucleus and cytoplasm in bright-field images to effectively compare the characteristics of different WBC substructures,leading to an improved classification scope and accuracy.In addition,compared to conventional microscopic classification,the proposed method provides additional phase information that can assist in WBC classification.This method is easy to integrate with microscope and does not require the special treatment of conventionally stained blood smear samples.It is expected to be widely used for the leukocyte classification and diagnosis and treatment of various blood diseases.

bio-opticsquantitative phase imagingdigital holographywhite blood cell substructuresphase distribution characteristics

查宝飞、王祉涵、苏衍峰、刘辰

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中国计量大学光学与电子科技学院,浙江杭州 310018

生物光学 定量相位成像 数字全息 白细胞亚结构 相位分布特征

国家自然科学基金浙江省自然科学基金浙江省基本科研业务费

62005260LQ22F050005220053

2024

中国激光
中国光学学会 中科院上海光机所

中国激光

CSTPCD北大核心
影响因子:2.204
ISSN:0258-7025
年,卷(期):2024.51(3)
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