Embedded fluorescence lifetime determination for high throughput real-time droplet sorting with microfluidics

T. Lieske, W. Uhring, N. Dumas, J. Léonard, D. Fey
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引用次数: 3

Abstract

Time-resolved fluorescence (TRF) analysis is considered to be among the primary research tools in biochemistry and biophysics. One application of this method is the investigation of biomolecular interactions with promising applications for biosensing. For the latter context, time-correlated single photon counting (TCSPC) is the most sensitive, hence preferred implementation of TRF. However, high throughput applications are presently limited by the maximum achievable photon acquisition rate, and even more by the data processing rate. The latter rate is actually limited by the computational complexity to estimate accurately the fluorescence lifetime from TCSPC data. Here we propose a solution that would enable the implementation of TRF detection for fluorescence-activated droplet sorting (FADS), a particularly high throughput, microfluidic-based technology. Most fluorescence lifetime algorithms require a large number of detected photons for an accurate lifetime computation. This paper presents an implementation based on a maximum likelihood estimator (MLE), enabling high precision estimation with a limited number of detected photons, significantly reducing the total measurement time. This speedup rapidly increases the input data rate. As a result, off-the-shelf embedded products cannot handle the data rates produced by current TCSPC units that are used to measure the fluorescence. Therefore, a configurable real-time capable hardware architecture is implemented on a field-programmable gate array (FPGA) that can handle the data rates of future TCSPC units, rendering high throughput droplet sorting with microfluidics possible.
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微流体高通量实时液滴分选的嵌入式荧光寿命测定
时间分辨荧光(TRF)分析被认为是生物化学和生物物理学的主要研究工具之一。该方法的一个应用是生物分子相互作用的研究,具有生物传感的前景。在后一种情况下,时间相关单光子计数(TCSPC)是最敏感的,因此首选TRF实现。然而,高通量应用目前受到最大可实现的光子采集速率的限制,甚至更多的受到数据处理速率的限制。后一种速率实际上受到计算复杂性的限制,无法准确估计TCSPC数据的荧光寿命。在这里,我们提出了一种解决方案,可以实现荧光激活液滴分选(FADS)的TRF检测,这是一种特别高通量、基于微流体的技术。大多数荧光寿命算法需要大量的检测光子来进行精确的寿命计算。本文提出了一种基于最大似然估计器(MLE)的实现方法,可以在有限的检测光子数量下实现高精度估计,大大缩短了总测量时间。这种加速迅速提高了输入数据速率。因此,现成的嵌入式产品无法处理当前用于测量荧光的TCSPC单元产生的数据速率。因此,在现场可编程门阵列(FPGA)上实现了可配置的实时硬件架构,该架构可以处理未来TCSPC单元的数据速率,从而使微流体的高通量液滴分选成为可能。
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