Fazel Mohamadreza, Hoseini Reza, Mahmoodi Maryam, Xu Lance W Q, Saurabh Ayush, Kilic Zeliha, Antolin Julian, Scrudders Kevin L, Shepherd Douglas, Low-Nam Shalini T, Huang Fang, Pressé Steve
Department of Physics, Arizona State University, Tempe, AZ, USA.
Center for Biological Physics, Arizona State University, Tempe, AZ, USA.
bioRxiv. 2025 May 6:2025.05.02.651986. doi: 10.1101/2025.05.02.651986.
3D tracking and localization of particles, typically fluorescently labeled biomolecules, provides a direct means of monitoring cellular transport and communication. However, sample-induced wavefront distortions of emitted fluorescent light as it passes through the sample and onto the detector often yield point spread function (PSF) aberrations, presenting an important challenge to 3D particle tracking using pre-calibrated PSFs. PSF calibration is typically performed outside cellular samples, ignoring sample-induced aberrations, which can result in localization errors on the order of tens to hundreds of nanometers, ultimately compromising sub-diffraction limited tracking. In practice, correcting sample-induced aberrations currently requires sample-specific hardware adjustments, such as adaptive optics. Yet, information on sample-induced aberrations and PSF shape can be directly decoded from data collected using a 3D imaging setup. To this end, we propose a framework for simultaneous particle tracking, pupil function learning, and PSF reconstruction directly from the input data themselves. To accomplish this, we operate within a Bayesian paradigm, placing continuous 2D priors on all possible pupil phase and amplitudes warranted by the data without limiting ourselves to a finite Zernike set-thereby allowing capture of intricate pupil phase details. We benchmark our framework using a wide range of synthetic and experimental data from static to diffusing particles, and generalize to multiple diffusing particles with overlapping PSFs. Further, as a result of simultaneous particle tracking, phase retrieval, and PSF reconstruction, we retrieve the pupil phase with errors smaller than 10% under a range of realistic scenarios, while restoring sub-diffraction limited localization precisions of 10-25 nm and 20-50 nm in lateral and axial directions, respectively.
粒子(通常是荧光标记的生物分子)的三维跟踪和定位提供了一种监测细胞运输和通讯的直接方法。然而,发射的荧光在穿过样品并到达探测器时,样品引起的波前畸变常常产生点扩散函数(PSF)像差,这对使用预校准PSF进行三维粒子跟踪提出了重大挑战。PSF校准通常在细胞样品外部进行,忽略了样品引起的像差,这可能导致数十到数百纳米量级的定位误差,最终影响亚衍射极限跟踪。实际上,校正样品引起的像差目前需要针对样品的硬件调整,例如自适应光学。然而,关于样品引起的像差和PSF形状的信息可以直接从使用三维成像设置收集的数据中解码出来。为此,我们提出了一个直接从输入数据本身同时进行粒子跟踪、光瞳函数学习和PSF重建的框架。为了实现这一点,我们在贝叶斯范式内操作,对数据所允许的所有可能的光瞳相位和幅度施加连续的二维先验,而不局限于有限的泽尼克集,从而允许捕获复杂的光瞳相位细节。我们使用从静态到扩散粒子的广泛合成数据和实验数据对我们的框架进行基准测试,并推广到具有重叠PSF的多个扩散粒子。此外,由于同时进行粒子跟踪、相位检索和PSF重建,我们在一系列现实场景下以小于10%的误差检索光瞳相位,同时分别在横向和轴向上恢复10 - 25纳米和20 - 50纳米的亚衍射极限定位精度。