Hauser Sophie Louise, Brosig Johanna, Murthy Bhargavi, Attardo Alessio, Kist Andreas M
Department Artificial Intelligence in Biomedical Engineering, Friedrich-Alexander-Universität Erlangen-Nürnberg (FAU), Germany.
Charité - Universitätsmedizin Berlin, Germany.
Biomed Opt Express. 2024 Mar 6;15(4):2175-2186. doi: 10.1364/BOE.515517. eCollection 2024 Apr 1.
Three-dimensional stacks acquired with confocal or two-photon microscopy are crucial for studying neuroanatomy. However, high-resolution image stacks acquired at multiple depths are time-consuming and susceptible to photobleaching. In vivo microscopy is further prone to motion artifacts. In this work, we suggest that deep neural networks with sine activation functions encoding implicit neural representations (SIRENs) are suitable for predicting intermediate planes and correcting motion artifacts, addressing the aforementioned shortcomings. We show that we can accurately estimate intermediate planes across multiple micrometers and fully automatically and unsupervised estimate a motion-corrected denoised picture. We show that noise statistics can be affected by SIRENs, however, rescued by a downstream denoising neural network, shown exemplarily with the recovery of dendritic spines. We believe that the application of these technologies will facilitate more efficient acquisition and superior post-processing in the future.
通过共聚焦或双光子显微镜获得的三维堆栈对于研究神经解剖学至关重要。然而,在多个深度获取的高分辨率图像堆栈既耗时又容易受到光漂白的影响。体内显微镜检查更容易出现运动伪影。在这项工作中,我们认为具有编码隐式神经表示的正弦激活函数的深度神经网络(SIRENs)适用于预测中间平面和校正运动伪影,从而解决上述缺点。我们表明,我们可以精确估计跨越多个微米的中间平面,并完全自动且无监督地估计运动校正后的去噪图片。我们表明,噪声统计可能会受到SIRENs的影响,不过可以通过下游去噪神经网络来挽救,以树突棘的恢复为例进行了展示。我们相信,这些技术的应用将在未来促进更高效的采集和卓越的后处理。