Pandey Vikas, Erbas Ismail, Michalet Xavier, Ulku Arin, Bruschini Claudio, Charbon Edoardo, Barroso Margarida, Intes Xavier
Opt Lett. 2024 Nov 15;49(22):6457-6460. doi: 10.1364/OL.533923.
The acquisition of the time of flight (ToF) of photons has found numerous applications in the biomedical field. Over the last decades, a few strategies have been proposed to deconvolve the temporal instrument response function (IRF) that distorts the experimental time-resolved data. However, these methods require burdensome computational strategies and regularization terms to mitigate noise contributions. Herein, we propose a deep learning model specifically to perform the deconvolution task in fluorescence lifetime imaging (FLI). The model is trained and validated with representative simulated FLI data with the goal of retrieving the true photon ToF distribution. Its performance and robustness are validated with well-controlled in vitro experiments using three time-resolved imaging modalities with markedly different temporal IRFs. The model aptitude is further established with in vivo preclinical investigation. Overall, these in vitro and in vivo validations demonstrate the flexibility and accuracy of deep learning model-based deconvolution in time-resolved FLI and diffuse optical imaging.
光子飞行时间(ToF)的获取在生物医学领域有众多应用。在过去几十年里,人们提出了一些策略来对使实验时间分辨数据失真的时间仪器响应函数(IRF)进行反卷积。然而,这些方法需要繁琐的计算策略和正则化项来减轻噪声影响。在此,我们提出一种深度学习模型,专门用于在荧光寿命成像(FLI)中执行反卷积任务。该模型使用具有代表性的模拟FLI数据进行训练和验证,目标是检索真实的光子ToF分布。通过使用三种具有明显不同时间IRF的时间分辨成像模式进行的严格体外实验,验证了其性能和稳健性。通过体内临床前研究进一步确立了该模型的适用性。总体而言,这些体外和体内验证证明了基于深度学习模型的反卷积在时间分辨FLI和扩散光学成像中的灵活性和准确性。