Exp Fluids (2012) 53:777–782 DOI 10.1007/s00348-012-1321-5 RESEARCH ARTICLE Imaging diffusion in a microfluidic device by third harmonic microscopy Uwe Petzold • Andreas Büchel • Steffen Hardt Thomas Halfmann • Received: 23 December 2011 / Revised: 11 May 2012 / Accepted: 15 May 2012 / Published online: 6 June 2012 Ó Springer-Verlag 2012 Abstract We monitor and characterize near-surface diffusion of miscible, transparent liquids in a microfluidic device by third harmonic microscopy. The technique enables observations even of transparent or index-matched media without perturbation of the sample. In particular, we image concentrations of ethanol diffusing in water and estimate the diffusion coefficient from the third harmonic images. We obtain a diffusion coefficient D = (460 ± 30) lm2/s, which is consistent with theoretical predictions. The investigations clearly demonstrate the potential of harmonic microscopy also under the challenging conditions of transparent fluids. 1 Introduction In recent years, microfluidic devices have found a large number of attractive applications, for example, in (bio) analytical chemistry (Ohno et al. 2008), biotechnology (Neethirajan et al. 2011), chemical synthesis (Abou-Hassan et al. 2010; Hessel et al. 2008), and pharmacological research (Dittrich and Manz 2006; Kang et al. 2008). Corresponding devices enable processes such as separation, mixing, chemical reaction, and detection of minute samples, often in a superior manner than on the macroscale. Microfluidic technologies permit implementation of the ‘‘lab-on-a-chip’’ concept, that is, integration of sample U. Petzold (&) A. Büchel T. Halfmann Institut für Angewandte Physik, Technische Universität Darmstadt, Hochschulstraße 6, 64289 Darmstadt, Germany e-mail: uwe.petzold@physik.tu-darmstadt.de S. Hardt Center of Smart Interfaces, Technische Universität Darmstadt, Petersenstraße 32, 64287 Darmstadt, Germany preparation and analysis on a credit-card-sized device. The latter offers the commercially attractive features of small size and weight, scalability, easy handling, possible processing of small sample amounts, and the potential for mass production at low costs for the single unit. Mixing is a key step in many biochemical assays as well as in micro-process technology. Typically, flows in microchannels exhibit very low Reynolds numbers—hence permit operation in the regime of laminar flow only (Squires and Quake 2005). In this regime, mixing of liquids becomes a much more difficult task compared to turbulent flows. Therefore, in the past decade, a substantial body of research has been devoted to the development of efficient micromixing schemes (Hessel et al. 2005; Nguyen and Wu 2005). Going along with such efforts, methods have been developed for characterization and diagnostics of micromixing processes. In particular, a variety of spectroscopic techniques offer potential to monitor mixing processes in microfluidics. As examples, we note Raman spectroscopy (Rinke et al. 2010), surface-enhanced Raman spectroscopy (SERS) (Strehle et al. 2007), infrared spectroscopy (Hinsmann et al. 2001), online Fourier transform infrared (FT IR) microscopy (Antes et al. 2003), attenuated total reflection FT IR spectroscopy (Chan et al. 2009), or laserinduced fluorescence (LIF) (Hoffmann et al. 2006). However, these methods exhibit specific limitations, for example, some require tunable laser sources to address resonances in the sample, some lead to perturbations in the medium (e.g., by heating after resonant excitation or the need of labeling with additional markers), some provide only limited spatial selectivity to address a narrow fluid layer directly at the surface of a microchannel, and many techniques cannot image optically transparent media. We also note, that due to the large surface-to-volume ratio of microfluidic devices, it is especially interesting to measure 123 778 species concentrations in the close vicinity of solid–liquid interfaces. For such purposes, a number of experimental techniques have been developed, most notably total internal reflection and surface plasmon resonance microscopy (for an overview, see, e.g., (Kihm 2011)). In this context, fluorophores are usually required to image the sample concentration near channel walls. However, the application of such additional chemical markers is a major disadvantage in a number of applications. As an example, fluorescence markers change some of the key properties of biomolecules, for example, their ability to bind to specific targets (Ray et al. 2010). Therefore, label-free methods for concentration imaging close to solid–liquid interfaces in microfluidics are highly desirable. In the following, we will discuss the experimental implementation of third harmonic generation (THG) microscopy as a powerful alternative to monitor and quantitively characterize diffusion processes in microfluidics. THG microscopy exhibits a specific example of coherent nonlinear microscopy (see, e.g., (Aptel et al. 2010; Cheng and Xie 2004; Tzeng et al. 2011) and refs. therein). The basic concept of coherent nonlinear microscopy is to drive frequency conversion processes in the sample by tightly focussed laser beams. The generated signal yields information on the material and geometric structure in the focal volume. By scanning the laser focus across the sample, we are able to obtain a three-dimensional image. We note that such nonlinear processes result in effective excitation volumes smaller than the diffractionlimited volumes of the fundamental field—which enables a larger resolution. In contrast to multi-photon fluorescence microscopy, coherent nonlinear microscopy uses (coherent) frequency conversion processes rather than (incoherent) radiative decay. Coherent nonlinear microscopy requires no staining, marking, or radiative quenching in the sample. Examples for coherent nonlinear microscopy are imaging techniques involving second harmonic generation (SHG) (Hellwarth and Christensen 1975), third harmonic generation (Barad et al. 1997), or coherent anti-Stokes Raman scattering (CARS) (Duncan et al. 1982). Schafer et al. (2009) already used CARS microscopy to monitor the diffusion of ethanol in water. While CARS microscopy requires tunable laser sources to drive vibronic resonances in the sample, SHG and THG microscopy typically are implemented as off-resonant frequency conversion processes, that is, without the need for tunable light sources. As a significant advantage, off-resonant frequency conversion does not deposit energy in the sample (Carriles et al. 2009), which may otherwise lead to perturbations like heating and degeneration of the medium. Moreover, offresonant SHG and THG are applicable to a larger variety of media. In particular, we note that harmonic microscopy yields a signal even in otherwise (i.e., in the sense of linear 123 Exp Fluids (2012) 53:777–782 optics) fully transparent samples and mixtures. As another interesting feature, in the case of strongly focussed laser beams (which provide large signals and large resolution), SHG and THG appear only at interfaces (Barad et al. 1997; Squier et al. 1998). In the bulk medium, the harmonics interfere destructively due to the Gouy phase shift (Boyd 2008). This makes harmonic microscopy a powerful tool to monitor interfaces (or processes at interfaces). Finally, we note that SHG and THG provide complementary information on samples composed of different types of media. In contrast to THG, SHG is selective for non-centrosymmetric media (Carriles et al. 2009). Due to the cubic intensity dependence, THG enables better intrinsic resolution compared to SHG at the same wavelength. Thus, THG microscopy represents the appropriate technique to monitor, image, and characterize microfluidic systems— even if they involve transparent or index-matched flows and mixtures. Recently, we provided a first basic demonstration of THG microscopy to image immiscible microfluids in specific geometries (Petzold et al. 2012). In the following work, we will present the application of THG microscopy to image and quantitatively characterize mixing (rp. diffusion) processes in microfluidic devices. In particular, we investigate the mixing of ethanol in water near the surface of a microfluidic channel. We note that these fluids are transparent and exhibit almost equal indices of refraction (nw = 1.329 and ne = 1.357). Nevertheless, from the THG images, we directly deduce local ethanol concentration gradients. This enables us to determine diffusion coefficients in the microfluidic device. 2 Experimental setup Figure 1 depicts the schematic setup of our nonlinear microscope. We apply an ultra-fast Titanium:Sapphire laser oscillator (Spectra-Physics, Tsunami), pumped by a continuous wave Nd:YVO4 laser (Coherent, Verdi G7). The laser setup provides a train of ultra-short pulses at center wavelength of 810 nm, average output power of 1 W, pulse duration of 60 fs (FWHM of intensity), and repetition rate of 82 MHz. The laser beam is focused by a microscope objective (Zeiss, 46 04 08) with a numerical aperture of 0.22 and a focal length of 16 mm into the sample. The third harmonic (wavelength, 270 nm) generated in the sample at the laser focus is collimated by a condenser (NA = 0.67), separated by dichroic mirrors (DM) and an interference filter (IF), and finally detected on a photo-multiplier tube (PMT). A lock-in amplifier (Scitec, lock-in amplifier 450DV2 & Chopper 310CD at 75 kHz) serves to amplify the PMT signal. We apply an external chopper rather than the intrinsic laser modulation at Exp Fluids (2012) 53:777–782 82 MHz to reduce signal fluctuations due to coherent pickup. A galvano scanner enables two-dimensional scanning of the laser focus in the xy-plane of the sample (i.e., perpendicular to the optical axis of the laser beam). The microscope objective is mounted on a translation stage, which permits scanning of the laser focus in the z-direction (i.e., parallel to the optical axis of the laser beam). Thus, we are able to obtain point-by-point three-dimensional images with a spatial resolution in the range of microns. To investigate the mixing (rp. diffusion) process of two miscible liquids, we use a fused silica microfluidic chip in Y-channel geometry (Translume, Y-channel). The chip has three inlets and one outlet (see inset of Fig. 1). Three syringe pumps (New Era Pump Systems, NE-500) drive water through two inlets (combined flow rate Qw = 1 ll/ min) and ethanol through the third inlet (flow rate Qe = 1 ll/min). All channels possess a rectangular profile with a width w = 300 lm and a height h = 100 lm. Ethanol and water mix in the outlet channel. We performed all experiments at room temperature (i.e., 25 °C) in an airconditioned and temperature-controlled laboratory. 3 THG images of diffusion in the microfluidic device The laminar flow of ethanol and water in the mixing channel permits us to determine the near-wall concentration profile resulting from the convection–diffusion dynamics inside the channel. As THG microscopy is sensitive to interfaces, we record images with the laser focus scanned at the interface between the fused silica base plate of the microfluidic channels and the fluid layer directly above the base plate. We note that both ethanol and water generate a THG signal in the laser focus. The THG signal from ethanol is significantly stronger (i.e., by a factor of 2.5). To determine 779 the absolute THG yield from ethanol, we also record a reference image with pure water all over the microfluidic device. We subtract the water reference image from the image of the ethanol/water mixture. Thus, the difference image directly maps the ethanol concentration. By simple calibration measurements (not shown here), we also confirmed that the THG difference signal from an ethanol/ water mixture is directly proportional to the ethanol concentration. Also, related experiments by Shcheslavskiy et al. (2004) on methanol/water mixtures at the surface of a fused silica substrate yielded a linear dependence of the THG intensity versus methanol concentration. Figure 2 shows an image of the ethanol concentration in the microfluidic device, obtained by THG microscopy as described above. Close to the inlet, the area of high ethanol concentration is large (indicated by orange color). We see only a rather narrow transition region (indicated by blue color) toward the area with pure water (indicated by black color)—as expected close to the inlet. When the flow proceeds further along the outlet channel (i.e., in y-direction), the width of the area with high ethanol concentration decreases, and the width of the transition region increases. Thus, ethanol and water diffuse in each other and become mixed. The constant laminar flow of the fluids leads to stationary concentrations in the outlet channel. The concentration profile is the result of a quite complex convection– diffusion process with significant concentration gradients in x- and in z-direction. Due to the different flow velocities, the largest concentration gradients in z-direction are in the center plane of the channel (where the largest velocities occur) and in a plane close to the channel wall (here, the velocity is close to zero). At a fixed y-coordinate, differences in the flow velocity correspond to different times available for diffusive mass transfer––leading to concentration gradients in z-direction. Only in the case of very Fig. 1 Schematic setup of the nonlinear microscope. The inset shows an enlarged view of the detected volume (i.e., the microfluidic device) in the range of the scanning laser focus. The direction of the flow in the outlet channel defines the y-axis in our coordinate system 123 780 Exp Fluids (2012) 53:777–782 Fig. 2 THG image of ethanol concentration in the microfluidic device. The THG signal is directly proportional to the ethanol concentration. The background THG signal from pure water is subtracted in the image. The image exhibits an average over 3 experimental runs. Flows are directed from the three inlets on the left to the outlet on the right. We added thin white lines to indicate the channel geometry. The origin of the coordinate system is chosen at the contact point of ethanol and water. The dashed, yellow line close to the inlets indicates the position of a cut in x-direction, which we show in Fig. 3. The image size is 4.1 mm 9 0.5 mm (2,050 pixels 9 250 pixels). The spatial resolution is 2 lm with a pixel dwell time of 2 ms. The absolute position of the transition region between pure ethanol and pure water fluctuates along the channel. This is due to a jitter in the flow rate—which does not affect the determination of the width of the transition region and diffusion coefficient to any significant degree. The two dark spots in the last section of the outlet channel are due to defects on the surface of the fused silica plate. The bright line close to the end of the channel is due to an air bubble in the flow. However, these small defects do not disturb our analysis of the large image shallow mixing channels, an analytical expression for the concentration field is available (Wu et al. 2004). Though mixing processes as discussed in our work are commonly referred to as ‘‘diffusive’’, there is no fully accurate analytic treatment available to precisely determine the diffusion coefficient from a concentration profile in a xy-plane. Nevertheless, determination of diffusion coefficients via the (only available) simplified theoretical model of the mixing process permits at least fine order-of-magnitude estimations. This serves as a consistency check to prove the validity of the image data taken by THG microscopy. A certain position in y-direction measured with respect to the channel crossing at y = 0 corresponds to an average duration t = y/v of the diffusion process. The average velocity of the liquids is given by the flow rates and dimensions as v = (Qw ? Qe)/(hw) & 1.1 mm/s. The width of the transition region at a position y (rp. a diffusion time t = y/v) is a measure for the speed of the diffusion process. For simplicity, we assume that the measured concentration profile is the result of a one-dimensional diffusion process, theoretically described by a simple error function (Cleland 2003): hx x i c cðxÞ ¼ c0 =2 1 þ Erf ð1Þ 2b Dy of one pixel, corresponding to 2 lm). In the averaging procedure, we also ignore few single cuts with deviations of more than 50 % from the average or with a relative uncertainty of more than 50 %. We note that under optimal conditions of observation, the symmetry center should always be at xC = 0. Due to jitter in the flow, the symmetry center xC slightly fluctuates (compare Fig. 2). However, this does not affect the determination of the width b by the fit procedure at all. As an example, Fig. 3 shows the THG intensity in a cut in x-direction of the image in Fig. 2 at position y = 738 lm (see dashed yellow line in Fig. 2). Obviously, outside the channel (i.e., in the fused silica bulk of the substrate), the interface-sensitive THG signal vanishes. Inside the channel, we obtain a plateau of large THG signal in the region of pure ethanol and a plateau of low THG signal in the region of pure water. As indicated above, we show differential THG signals (i.e., calibrated with respect to the background THG signal from pure water). Between the two plateaus, we observe the transition region of the diffusion process, that is, a concentration gradient. By fitting Eq. (1) to the data points, we determine the fit parameters, for example, the width b. From b, we can obtain a rough estimate of the diffusion coefficient pffiffiffiffiffiffiffiffiffi D via the simple relation b ¼ D t (Cleland 2003), with the diffusion time t = y/v. Such a procedure represents a consistency check for the experimental data rather than an accurate determination of D. If we now determine the widths b for all positions y in our THG image (see Fig. 2), we obtain the dependence of b with time. Figure 4 shows the variation of b with the difpffiffiffiffiffiffiffiffiffi fusion time t. The fit with the function b ¼ D t (red line) yields a diffusion coefficient for the ethanol/water sample of D = (460 ± 30) lm2/s. This is consistent with recent theoretical predictions of the diffusion coefficient for ethanol and water in the range between Dmin = 380 lm2/s and Dmax = 840 lm2/s (Zhang et al. 2006). Figure 4 also with the initial concentration of the pure liquid c0, the position x (compare Fig. 2), the symmetry center xC of the transition region, and the width b of the transition region. This form roughly approximates the concentration profile for the case of equal volume flows of water and ethanol. To reduce statistical fluctuations in the image data, we apply a straightforward averaging procedure: We take cuts in xdirection (columns) at each position y in the THG image. Afterwards, we fit function (1) to the measured concentrations and obtain the width b as a fit parameter in each column. Finally, we average the resulting fit parameters b over 300 adjacent columns (each with a column width 123 Exp Fluids (2012) 53:777–782 Fig. 3 THG intensity in a cut in x-direction at position y = 738 lm in the image according to Fig. 2. The THG signal is directly proportional to the ethanol concentration. The dashed lines indicate the boundaries of the outlet channel. Blue dots depict experimental data points. The red line depicts a fit with Eq. (1). The shaded area indicates the width b, as determined from the fit 781 general concentration-dependent. The theoretically expected maximal diffusion coefficient is valid in the dilute limit, that is, small quantities of a specific component diffusing in a background fluid. On the other hand, the theoretically expected minimal diffusion coefficient is based on the assumption of an almost 50:50 initial mixture of water and ethanol. In the experiment and the specific regime of flow rates, diffusion occurs mainly in the transition region between the fluids. This area is characterized by similar concentrations of water and ethanol (even at early times). Thus, the experimentally diffusion coefficient is closer to minimal theoretical value. Finally, we note that we confirmed the derived value of the diffusion coefficient also by systematically varying the velocity v at a fixed location y (rather than varying the position y at fixed velocity v, as applied to determine the data in Fig. 4). This alternative procedure yielded the same value for the diffusion coefficient. 4 Conclusion Fig. 4 Variation of the width of the transition region with the diffusion time. Blue dots depict experimental data points. The error bars indicate the standard deviation after averaging 300 adjacent cuts in x-direction (columns). The red line depicts a fit with the pffiffiffiffiffiffiffiffiffi function D t. The shaded area indicates the range between the theoretical predictions with calculated minimal and maximal diffusion coefficient (Zhang et al. 2006) depicts the full possible range for the time dependence of the width b, as determined by the theoretically predicted limits Dmin and Dmax. The experimentally determined dependence (based on the simplified model) is inside this range. Our result is also consistent with an early (macroscopic) experiment to determine the diffusion coefficient of ethanol in water (Tyn and Calus 1975). We also note that our experimentally determined value of the diffusion coefficient is closer to the lower limit of the theoretical prediction. As our model to determine the diffusion coefficient from the experimental data is very much simplified, we must be careful when interpreting this evidence. Indeed, the convection–diffusion process is already quite complex. Moreover, the diffusion coefficient is in We applied third harmonic microscopy to image and characterize the near-surface diffusion of two miscible, transparent (or even index-matched) fluids, that is, ethanol and water in a Y-channel microfluidic device. No labeling, staining, or resonant excitation is required to obtain highresolution images by harmonic microscopy. After subtracting the background harmonic signal generated by water, the third harmonic yield is directly proportional to the ethanol concentration in the sample. Thus, the technique enables direct mapping of ethanol concentrations in microflows near a surface with a spatial resolution in the range of micrometers. 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