LaserLab Amsterdam, Department of Physics, Faculty of Science, Vrije Universiteit Amsterdam, Amsterdam, The Netherlands.
Medical Image Analysis Group (IMAG/e), Department of Biomedical Engineering, University of Technology, Eindhoven, The Netherlands.
PLoS One. 2023 Jun 27;18(6):e0279525. doi: 10.1371/journal.pone.0279525. eCollection 2023.
In diseases such as interstitial lung diseases (ILDs), patient diagnosis relies on diagnostic analysis of bronchoalveolar lavage fluid (BALF) and biopsies. Immunological BALF analysis includes differentiation of leukocytes by standard cytological techniques that are labor-intensive and time-consuming. Studies have shown promising leukocyte identification performance on blood fractions, using third harmonic generation (THG) and multiphoton excited autofluorescence (MPEF) microscopy.
To extend leukocyte differentiation to BALF samples using THG/MPEF microscopy, and to show the potential of a trained deep learning algorithm for automated leukocyte identification and quantification.
Leukocytes from blood obtained from three healthy individuals and one asthma patient, and BALF samples from six ILD patients were isolated and imaged using label-free microscopy. The cytological characteristics of leukocytes, including neutrophils, eosinophils, lymphocytes, and macrophages, in terms of cellular and nuclear morphology, and THG and MPEF signal intensity, were determined. A deep learning model was trained on 2D images and used to estimate the leukocyte ratios at the image-level using the differential cell counts obtained using standard cytological techniques as reference.
Different leukocyte populations were identified in BALF samples using label-free microscopy, showing distinctive cytological characteristics. Based on the THG/MPEF images, the deep learning network has learned to identify individual cells and was able to provide a reasonable estimate of the leukocyte percentage, reaching >90% accuracy on BALF samples in the hold-out testing set.
Label-free THG/MPEF microscopy in combination with deep learning is a promising technique for instant differentiation and quantification of leukocytes. Immediate feedback on leukocyte ratios has potential to speed-up the diagnostic process and to reduce costs, workload and inter-observer variations.
在间质性肺疾病(ILDs)等疾病中,患者的诊断依赖于对支气管肺泡灌洗液(BALF)和活检的诊断分析。免疫性 BALF 分析包括通过标准细胞技术对白细胞进行区分,这种方法既耗费劳力又耗时。研究表明,基于血液的三分量谐波产生(THG)和多光子激发自荧光(MPEF)显微镜在白细胞识别上具有良好的性能。
使用 THG/MPEF 显微镜将白细胞区分扩展到 BALF 样本,并展示经过训练的深度学习算法在自动白细胞识别和定量方面的潜力。
从 3 名健康个体和 1 名哮喘患者的血液中以及 6 名 ILD 患者的 BALF 样本中分离出白细胞,并使用无标记显微镜对其进行成像。基于细胞和核形态以及 THG 和 MPEF 信号强度,确定白细胞的细胞学特征,包括中性粒细胞、嗜酸性粒细胞、淋巴细胞和巨噬细胞。将深度学习模型在 2D 图像上进行训练,并使用标准细胞技术获得的差异细胞计数作为参考,来估计图像级别的白细胞比例。
使用无标记显微镜在 BALF 样本中识别出不同的白细胞群体,显示出独特的细胞学特征。基于 THG/MPEF 图像,深度学习网络已经学会识别单个细胞,并能够提供白细胞百分比的合理估计,在保留测试集中 BALF 样本的准确率超过 90%。
无标记的 THG/MPEF 显微镜与深度学习相结合是一种有前途的白细胞即时区分和定量技术。白细胞比例的即时反馈有可能加速诊断过程并降低成本、工作量和观察者间的差异。