22 December 2015 Self-referenced, microdegree, optical rotation polarimeter for biomedical applications: an analysis
Author Affiliations +
J. of Biomedical Optics, 21(7), 071104 (2015). doi:10.1117/1.JBO.21.7.071104
We comprehensively analyze the performance of a type of optical rotation (OR) polarimeter, which has been designed from the outset to fit the special requirements of two major applications: general chiral detection during the separation of optical isomers by high-pressure liquid chromatography systems in the pharmaceutical industry, and monitoring of glucose in the interstitial fluid of diabetics by a fully implanted long-term optical sensor. Both very demanding applications call for an OR polarimeter that can be miniaturized while maintaining high resolution and accuracy in the microdegree range in the face of considerable noise from various sources. These two characteristics—miniature size and immunity to noise—set this polarimeter apart from the traditional OR polarimeters currently in use, which are both bulky and very susceptible to noise. The following detailed analysis demonstrates the advantages of this polarimeter and its potential as an analytic and diagnostic tool.
Weissman and Goldberg: Self-referenced, microdegree, optical rotation polarimeter for biomedical applications: an analysis



Optical rotation (OR) polarimeters are valuable tools for measuring the concentration of optically active substances in a solution. Such polarimeters are used extensively in the food and pharmaceutical industries and also in research laboratories. High-end, very sensitive polarimeters can be found mainly in the pharmaceutical industry.1 These sophisticated polarimeters are used for the detection of chiral molecules (a.k.a. optical isomers or enantiomers) as they are separated by high-pressure liquid chromatography (HPLC) systems during the process of drug manufacturing, where in many cases the complete separation of the active chiral isomer of a drug from its (sometimes toxic) counterpart is required by the U.S. Food and Drug Administration (FDA).2,3

Similar high-end polarimeters have also been tried, so far unsuccessfully, for the noninvasive monitoring of glucose—mainly in the aqueous humor of the eye of diabetics.4 The strong scattering by the tissues and birefringence artifacts have prevented reliable noninvasive glucose measurements by a polarimeter.5 However, glucose at its physiological concentration in the interstitial fluid (ISF), a transparent fluid surrounding the cells in our body, has a relatively strong optical activity (OA). All other ISF metabolites, except for proteins, have negligible combined OA (our unpublished results). This situation offers a unique opportunity for the polarimetric detection of glucose by a fully implanted device. Therefore, it is possible that a miniature accurate polarimeter could be used as a future continuous glucose monitor (CGM) suitable for long-term implantation in diabetics, as has already been suggested in the past.6

The typical OR polarimeter currently in commercial use in the pharmaceutical industry is the Faraday rotation (FR) polarimeter.3 Such polarimeters are based on a principle first described by Gillham7 and successfully implemented by Yeung et al.,8 in which the angle of the linearly polarized light beam is constantly modulated by a Faraday rotator. This modulation results in a significant amplification, because the OA signal becomes proportional to the rotation angle, as opposed to its square in ordinary null polarimeters. Unfortunately, FR polarimeters have two fundamental limitations. The first limitation is their sensitivity to polarization noise—in particular refractive index (RI) artifacts, known as pseudorotation.9,10 This essentially degrades their limit of detection (LOD) in actual operating situations. The second limitation is their size. Modern polarimeters are bulky (typically the size of a desktop PC11) and expensive devices, which cannot be easily integrated with the existing equipment.

The same applies to another important type of OR polarimeters, the optical heterodyne (OH) polarimeter. The OH method facilitates signal amplification, which can thus provide higher sensitivity. In principle, OH polarimeters, first introduced by King et al.12 and Mitsui and Sakurai,13 have a resolution comparable to that of FR polarimeters.13 However, their system is substantially complex, and, in addition, they should be just as sensitive to polarization noise as their older FR counterparts. Indeed, OH polarimeters described in the literature, although sensitive,1415.16 seem to be severely limited by such noise.1415.16.17

Intracavity OR polarimetry is a third, less explored method to measure OR with increased sensitivity.1819.20 Bougas et al.18 have recently described a chiral cavity ring down (CCRD) polarimeter, which uses an intracavity modulated Faraday rotator to overcome the depolarizing effect of linear birefringence and translates optical rotation into a proportional frequency change. Their method seems to be less sensitive to polarization noise than FR and OH polarimetries. Furthermore, the authors expect a high-potential OA sensitivity, although currently it is still in the millidegree range. The complexity and size of the CCRD polarimeter seem substantial and may not be amenable to miniaturization.

The specifications required from an HPLC polarimetric detector are determined by the conditions encountered in the flow-cell of the HPLC system and the OA and concentration of the separated chiral molecules. The optically active molecules moving inside the tubing of the HPLC system form a plug with a Gaussian concentration profile, which consequently appears at the detector as a Gaussian-like rotation pulse. The baseline rotation level is usually influenced by artifacts and therefore is sometimes not zero. The pulse height [or more accurately, its area under the curve (AUC)] varies with the concentration. The LOD of the polarimeter is determined by its resolution and sensitivity to various sources of noise. The higher the resolution and immunity to noise, the lower the LOD. Lower LOD means better quality of drugs and efficiency of handling expensive reagents.

The requirements for a glucose monitoring polarimeter are determined by the physiological characteristics of the sugar. The concentration of blood glucose in healthy humans is 80 to 120  mg/dL. In diabetics, this concentration spans a much wider range of 50 to 400  mg/dL. The accuracy required by the 2013 ISO standard for blood glucose monitors is ±15  mg/dL.21 For a polarimeter with a 10-mm optical path length, these values translate into ORs of 0.0038 to 0.0058, 0.0024 to 0.0192, and ±0.00072  deg, respectively. A fully implanted polarimeter capable of accurately and reliably measuring such ORs in the ISF could, in principle, be used for CGM in diabetics. When the polarimeter’s light beam is not blocked by strong scattering in the completely transparent ISF, the measurement of the sugar’s OA can prove superior, in both specificity and accuracy, to the measurement, e.g., of its near-infrared absorption spectrum. As a solid-state device, a polarimetry-based implanted CGM will have the potential to be sufficiently reliable in order to control an insulin pump in a closed-loop system termed artificial pancreas (AP)—a long-sought solution for diabetes still waiting for a suitable sensor.

We have recently described a type of high-resolution OR polarimeter,22 which we believe can overcome the shortcomings of similar FR and OH polarimeters. It uses a built-in reference mechanism that compensates for polarization noises, as well as a simple gain mechanism that contributes to LOD reduction. Furthermore, this optical configuration is amenable for miniaturization, possibly to the size of modern pacemakers.

Both applications described above create a substantial motivation to miniaturize the polarimeter. A miniaturized device with low LOD, immunity to polarization noises, and a reasonably stable operation—even under unstable environmental conditions—would have merit for both HPLC chiral detection and glucose monitoring. A small-footprint HPLC chiral detector, which also solves the pseudorotation problem currently plaguing commercial HPLC polarimeters, could more easily be integrated into existing HPLC equipment and gain wider acceptance in the pharmaceutical industry. Considerable miniaturization is certainly a prerequisite for an implanted polarimetry-based CGM in order to facilitate its implantation by a simple surgical procedure. We strongly believe that if this optical CGM can be realized, it will provide a reliable in vivo CGM suitable for AP operation—an issue that unfortunately has remained only partially solved to date.

However, miniaturization poses some challenges. One of them is the fact that some of the degrees of freedom available in an optical table model are absent in a miniaturized device, or are, at least, substantially more limited. For example, the rotational precision with which components can be positioned is more coarse than that available on an optical bench. Another issue is the quality of the optical components. Typically, for reasons of volume and cost, plate geometry is preferable for a miniaturized device. Nonetheless, the performance of plate components is typically lower (e.g., a plate polarizer would typically have a lower extinction ratio (ER) in comparison with birefringent polarizers). A third issue is the extent of the feasible miniaturization. For example, what is the shortest optical path length that can still provide the required optical performance?

Thus, to advance miniaturization, there is a need for a deeper quantitative understanding of the performance limits and limiting factors of this new type of polarimeter. This, essentially, is the purpose of the current article. It provides a detailed analysis of the polarimeter, as well as some of our more recent experimental results. The content of the article following this introductory section is arranged into five additional sections. Section 2 outlines the mathematical model based on the Jones calculus formalism.23 Section 3 deals with the main aspects of performance of the polarimeter, including the angular LOD, linearity, dynamic range, and drift sensitivities, which are analyzed in detail. Section 4 contains an analysis of the susceptibility of the polarimeter to wavelength and temperature drifts. Section 5 is a discussion of the results of the previous sections, mainly from the perspective of future miniaturization of the polarimeter. Finally, Sec. 6 concludes the article.


Modeling the Polarimeter



The configuration of the polarimeter is illustrated in Fig. 1. The principle of operation was discussed in detail in our previous paper.22 In short, the measured optically active substance is moving through the flow-cell and slightly rotates the E-field vector of a linearly polarized light beam propagating into the cell, perpendicularly to the direction of the flow. The beam then propagates through a variable electro-optic (EO) retarder that modulates (with a frequency of 10 to 50 Hz) the beam’s differential phase delay, between 0 and π/2 radians. The beam is then reflected by a mirror and goes back into the variable retarder. At 0,π/2 retardance states, the same beam serves, alternately, as a reference and measurement beam, respectively. For each modulation period of the EO retarder, the measurement and reference photocurrents are subtracted. The difference between these two values is the differential photocurrent, which represents the optical rotation for the respective sampling moment.

Fig. 1

The optical configuration of the optical rotation (OR) polarimeter.



Mathematical Model

To analyze the evolution of the polarization state as the beam traverses its optical path, we use the following Jones calculus:23


where Edet and Esource are the electric fields in the x^ and z^ directions [in accordance with the directions of our x-cut, y-propagating EO (RTP, Raicol Crystals Ltd., Israel) retarder, as described below]. The specific Jones matrices are given in Appendix A.

The photocurrent provided by the detector is given by


where TpowerInOut accounts for the optical power loss incurred by the light beam as it propagates along the polarimeter (mostly due to diffraction and scattering), Rλ is the detector’s responsivity, and randn represents a random number generator with a normal distribution and unity standard deviation.

The noise current is



The components of the noise current are the thermal (Johnson) noise and shot noises related to the dark and signal currents, respectively,




The relevant parameter values (as well as other specific data) are given in Appendix B.


Component Positioning and Misalignments

The positioning of the optical components and the relevant angular parameters are described in Fig. 2.

Fig. 2

The positioning of the optical components and the angular parameters. PX, BX, and CX are the axial deviation angles with respect to the nominal (ideal) positioning. BR is the total amount of birefringence of the passive optical components. Note that the beam splitter and the flow-cell’s optical windows are assumed to have identical birefringence axis and deviation (BX). Also note that an optical gain is obtained by slightly rotating the polarizer (rather than the analyzer, which remains in its nominal position). This is unlike the original description in our previous publication.22


In this figure, the analyzer position is used as reference. BX is the axial position of the birefringence of all the passive optical components, namely the optical windows and the beam splitter (the assignment of identical BX for all passive components was done for the sake of simplicity). CX is the angular deviation of the main axis of the EO crystal. Both BX and CX are unwanted, and an effort should be made to minimize them. In contrast, PX, the angular deviation of the polarizer with respect to its ideal (perpendicular) position, is less problematic. In fact, within a range of few degrees, such a deviation serves the purpose of increasing the OA signal, as discussed below.



In Secs. 3 and 4, two types of aspects of the polarimeter are examined in detail: performance issues and susceptibility to temperature drifts.

The basic set of parameter values used throughout the following analysis is specified in Appendix B. For each of the subsections 3.13.6, the other relevant parameter values are indicated in the figures.

Throughout the analysis, the following numerical experiment is carried out: a Gaussian-like temporal rotation pulse is induced inside the flow-cell. In reality, this rotation pulse is caused by the entrance of a Gaussian-like plug of an optically active substance into the flow-cell. The resulting photocurrent is read at the signal photodiode as a function of time, and the differential photocurrent is subsequently calculated. An illustration of the relevant typical signals is shown in Fig. 3.

Fig. 3

The main signals of the OR polarimeter calculated throughout this article: (a) the Gaussian-like optical activity (OA) rotation pulse inside the flow-cell. (b) The voltage waveform on the RTP electro-optic (EO) retarder zoomed in to an interval of 0.6 s. (c) The resulting raw photocurrent at the signal detector. (d) The EO retardance resulting from applying the voltage shown in (b), with 0 and π/2 single-pass retardances marked by circles and crosses, respectively. (e) The differential photocurrent calculated as the difference between the 0 and π/2 raw sampled photocurrent vectors as marked in (f). (f) Zoom-in on the raw photocurrent waveform with 0 and π/2 single-pass retardances marked by circles and crosses, respectively. In what follows, it is primarily the differential photocurrent that is referred to.


We start with performance analysis—specifically with a numerical demonstration of the two salient features of the polarimeter: a self-reference mechanism that eliminates non-OA artifact noises and a gain mechanism used here, which we previously22 termed tilted analyzer gain mechanism (TAGM). Because for practical reasons we now prefer to rotate the polarizer, we hereby rename it rotated polarizer gain mechanism (RPGM). This demonstration is followed by an analysis of some other performance aspects.


Self-Reference Mechanism

This mechanism is mainly aimed at canceling out rotation artifacts that are not due to optical activity per se. Such artifacts are often called pseudorotation (PR) signals and are caused by RI gradients that may slightly tilt the light beam. The self-reference mechanism cancels the PR signal and leaves the OA signal intact. An example is given in Fig. 4. A pulse of PR slightly precedes a pulse of OA rotation, which is 10 times smaller [see Fig. 4(a)]. Without the self-reference, the measurement signal would look like Fig. 4(c). However, the reference signal, representing the net-PR component [see Fig. 4(d)], facilitates canceling this component out [see Fig. 4(e)].

Fig. 4

The main signals of the OR polarimeter calculated for a case in which a large pseudorotation (PR) signal artifact masks the OA signal: (a) the PR signal (dotted-blue line) and the OA (solid line) signals. (b) The raw photocurrent. (c) The measurement photocurrent. (d) The reference photocurrent. (e) The differential (net) photocurrent.


An example of the operation of the self-referencing system is shown in Fig. 5. We can see the large PR peak (caused in this case by pressure fluctuation induced by sample injection) that precedes the rotation pulse (marked by an arrow) and is more than one order of magnitude larger than the rotation pulse. Yet, by using the reference mechanism and the processing algorithm described above, this pseudopeak is nulled and the small OA peak is revealed in the net (differential photocurrent) signal.

Fig. 5

The operation of the self-referencing mechanism. The passage of the glucose sample (1  mg/dL) in the flow-cell creates considerable noise as a result of changes in the refractive index. This PR noise affects (a) both the measurement and the reference signals and, therefore, can be easily subtracted, leaving only (b) the net signal (lower panel). The arrow marks a strong PR peak caused by pressure fluctuation during the injection of the sample.



Rotated Polarizer Gain Mechanism

Usually, the polarizer and the analyzer are perpendicular. However, this may not necessarily be the optimal position. In fact, by slightly deviating from this perpendicular position, i.e., by rotating the polarizer (or the analyzer, for that matter) by a small angular amount PX, one is able to increase the photocurrent sensitivity of the polarimeter relative to that obtained in the perfectly perpendicular position. In a sense, some optical “gain” of the angular signal is obtained this way. We have previously termed this TAGM,21 although we note that rotating the polarizer (instead of the analyzer) was found to be somewhat more effective in canceling small rotations, which result from RI PR artifacts.

The principle behind the RPGM mechanism is illustrated in Fig. 6.

Fig. 6

The principle of the rotated polarizer gain mechanism (RPGM). Rotating the polarizer by angle PX increases the OA-dependent photocurrent by a factor of 2 PX.


At the photodiode, by rotating the polarizer in Fig. 1 (labeled Pol), following the analyzer, the photocurrent is given by



Because typically, PX, α1 and PXα. The derivative of this photocurrent (and consequently of the differential photocurrent) with respect to the OA rotation angle α is


Thus, the changes in photocurrent and in the differential photocurrent are proportional to PX2 and PX, respectively. The effect of this mechanism on the photocurrent and differential photocurrent signals is illustrated in Fig. 7.

Fig. 7

The RPGM. (lower panels). The photocurrent and (upper panels) differential photocurrent increase in proportion to PX2 and PX, respectively. For example, the difference between the plateau levels of (b) and (a) is about a quarter of the respective difference between (c) and (a). On the other hand, the difference between the pulse peaks of (e) and (d) is half the respective difference between (f) and (d). Note that in all subfigures, the rotation pulse is Gaussian, 20  μdeg high, and the baseline rotation is zero.


Evidently, as the angle PX is increased, the differential photocurrent is increased proportionally. This very simple gain mechanism is essentially as efficient as that of OH polarimeters, but without the added complexity.22 However, note that in practice, the use of this mechanism is not without limits, as at some point the photodiode tends to saturate. In our polarimeter, saturation occurs at PX2  deg.


Angular Limit of Detection

The angular LOD (or the resolution) of the polarimeter is defined as the smallest detectable incremental change of the rotation angle that is discernible in the differential photocurrent signal. It is defined as the smallest change that yields a signal-to-noise ratio (SNR) of 3. The result of a respective simulation is given in Fig. 8. It is based on the characteristics of a specific photodiode model (S 1226-18BQ, Hamamatsu, Japan), which is used throughout the calculation. This is a reasonably sensitive detector, although there are other more sensitive photodiodes that would probably yield a lower LOD.

Fig. 8

(a)–(d) The calculated differential photocurrent from which the angular limit of detection is inferred. It is calculated for two levels of the optical source power and two values of the rotation pulse. The thick dashed lines represent the running-average filtering (10 samples window) of the photocurrent signal. (e) Experimental differential photocurrent for 0.5  mg/dL glucose pulse in a 10 mm flow-cell equivalent to 23  μdeg OA rotation pulse.


The signal is calculated for two rotation values and two source power levels, with and without smoothing, by means of a 10-point low-pass filter. Two parameters are calculated for each case: (1) the standard deviation of the noise σn and (2) SNR, where the signal is defined as the Gaussian-like peak height, above the shoulders. The two parameters are inserted in each graph.

As can be expected, the differential photocurrent signal is less noisy as the source power increases, and consequently the LOD is lower. For example, for a 3-mW laser source [(c) and (d)] with low-pass filtering and using the above criteria (SNR=3), the LOD is 5  μdeg, whereas for the 1-mW laser source [(a) and (b)], the LOD is 9  μdeg. The implication is that by using a more powerful light source and a more sensitive photodiode, the shot-noise limit can be pushed down further.

For a comparison, (e) shows the results of a recent actual measurement. In this experiment, the laser power was 1 mW. In this case, for SNR=3, the LOD is 37  μdeg.

By comparing the 1-mW source cases of (b) and (e) in Fig. 8, it appears that our current best experimental result exceeds the shot-noise LOD limit by a factor of 4. This difference seems to stem from two main reasons. The first is thermal fluctuations that occur during the measurement and lead to small wavelength changes that add noise to the signal (see Sec. 4). The second is the power loss along the optical path that may be higher than assumed in our calculation (TpowerInOut=0.5) and result in higher shot noise. One way to reduce this gap and reach the shot-noise LOD limit is to monitor the thermally induced wavelength changes. We are currently working on that.


Dynamic Range

The dynamic range of a sensor is typically defined as the ratio between the maximal value and the minimal value detectable. It is essentially determined here by the pedestal level on which the incremental portion of the signal rides, and the LOD of the sensor. The limiting factor in our case is the dynamic range of the signal photodiode. Here, we calculate the minimal dynamic range required from the photodiode.

The pedestal level is determined mainly by the polarizer rotation angle PX, the polarizer extinction ratio ER, and the underlying rotation baseline angle α0. This leads to a minimal requirement for the dynamic range of the photodiode. We define the minimally required dynamic range (RDR) as the following photocurrents ratio


where imean and Δi1μdeg are the average differential photocurrent and the differential photocurrent change that corresponds to rotation of 1  μdeg, respectively. The results are illustrated in Fig. 9 for the baseline rotation a0=0.0048  deg. This baseline level is equivalent to an OA-induced rotation by glucose at its physiological blood concentration of 100  mg/dL.

Fig. 9

The photodiode minimally required dynamic range as function of the polarizer rotation angle, with the extinction ratio (ER) of the polarizer as a parameter. The graph demonstrates that the dynamic range required for the signal photodiode is substantially lower than 106.


For an ideal polarizer (with an infinite ER), the photocurrent leakage baseline is zero and the raw photocurrent increases with PX2, whereas the differential photocurrent increases linearly with PX. This results in a linear increase of the minimal RDR with PX. For nonideal polarizers, the raw photocurrent also increases with PX2, but is added to some leakage level that depends on the ER. As the contribution of increasing PX becomes dominant, the RDR graph becomes asymptotically linear. However, for small values of PX, the underlying leakage (due to the finite ER) is the dominant component, which results in a decreasing RDR with PX. At some point in between these two regions of PX, an optimal (minimal) RDR exists. For PX=2  deg, the RDR is lower than 106, which is obtainable in several Si photodiodes (as well as other types of detectors).



To examine the issue of linearity, two sets of Gaussian rotation pulses were applied at the polarimeter input: first, 10 pulses with 50  μdeg spacing, all riding on a baseline of a0=0  deg. The calculated result is given in Fig. 10(a). The linearity of the graph is apparent.

Fig. 10

(a) The calculated differential photocurrent versus the actual rotation, under the nominal set of conditions, a zero rotation baseline, and steps of 50  μdeg. (b) Polarimetric glucose measurements. The graph demonstrates the ability of the polarimeter to measure changes in glucose concentration as low as 0.5  mg/dL. All measurements were carried out using a high-pressure liquid chromatography system with a 10-mm long flow-cell.


For comparison, the results of a respective measurement are also given in Fig. 10(b). The polarimetric signals generated by glucose samples at concentrations ranging from 0.5 to 10  mg/dL were recorded and, in this case, saved as high-resolution (600 dpi) images. The number of pixels of the area delimited by the Gaussian peak and its baseline was counted for each run. This number represents the AUC, and is proportional to the amount of sample passing the detector and also to the sample’s concentration. The pixel number (AUC) was plotted against the known glucose concentration. Each data point represents the average and standard deviation of this pixel count for three samples of the same known concentration.



The accuracy of a sensor is typically defined as the maximum difference that will exist between the actual value and the indicated value at the output of the sensor. The accuracy can be expressed either as a percentage of full scale or in absolute terms.

Essentially, high accuracy requires high resolution, good linearity, and low sensitivity to the surrounding conditions, such as (in the case of the polarimeter) birefringence and optomechanical tolerances. We have shown above that the polarimeter is linear, and that it has high resolution (i.e., low angular LOD). This implies that under ideal conditions, the inaccuracy error is very small. We now turn to calculating this error itself under some nonideal conditions.

The sources of inaccuracy here are birefringence (e.g., at the flow-cell windows22) and mechanical deviations. These tend to change over time due to temperature and wavelength drifts, but for now, we assume that these are stable. So the question is: How do birefringence and mechanical deviations affect the accuracy?

To provide a partial answer to this question, the differential photocurrent is calculated for four example base cases. For each base case, one of the parameters is perturbed. The error is inferred from comparing the resulting signal difference with the height of the rotation pulse (50  μdeg in all cases). The results are given in Fig. 11.

Fig. 11

The calculated differential photocurrent for various conditions of birefringence and misalignment (specified on top of each subfigure). In all cases, baseline rotation is α0=0.0048  deg (equivalent to the physiological glucose concentration of 100  mg/dL) and the OA rotation pulse is αpulse=50  μdeg. The parameters BR, BX, and CX are defined in Fig. 2.


We can see by comparing (a) and (b) that misalignment of the EO crystal axial rotation by merely 1 deg causes a dramatic change in the signal level, increasing it by a factor of 2.1×106/7.1×109295. Seemingly, this is a major problem. Normally, however, the polarimeter’s signal processing can be calibrated postproduction to account for this initial deviation—assuming it is fixed in time. However, we need to take into account an incremental misalignment that might be added during normal operation due to temperature changes. This incremental contribution is typically much smaller, yet it is unpredictable, and thus causes a measurement error. The effect of such incremental misalignment is described by the difference between the two lines in each subfigure.

To estimate the error, observe the plateau level on both sides of the pulse. We can see in (a) and (b) that when the EO crystal is misaligned with respect to the analyzer by an additive amount ΔCX, the size of the resulting angular measurement error (the difference between the red and blue lines) is about the same as the size of this added misalignment. On the other hand, we can see in (c) and (d) that the polarimeter can tolerate considerably larger changes in BX and BR values than it can for the case of the EO crystal misalignment CX (recall the definition of these parameters in Fig. 2).


Analysis—Thermal Susceptibility


Wavelength Sensitivity

There are three dominant effects that make the polarimeter wavelength sensitive. The first effect is the dispersion of the dynamic retardance of the EO retarder. The half-wavelength voltage of the retarder is given by


where λ is the wavelength, rc1 is the respective EO coefficient, nz is the RI for z^-polarized wave, and dEO and lEO are the EO retarder thickness and length, respectively. As shown in Eq. (9), this voltage is proportional to the wavelength. When the wavelength drifts, and in the absence of accurate knowledge of the current wavelength, the reading of the actual V0, Vπ/2 becomes inaccurate and adds an error to the differential photocurrent. Furthermore, the presence of birefringence along the optical path accentuates this problem.

The second effect is the dispersion of the static retardance of the EO retarder. The refractive indices seen by the two linearly polarized waves propagating in the retarder, nx,z, are wavelength-dependent [i.e., nx,z(λ)], as described by the respective Sellmeier equation (see Appendix B). If not corrected properly, this results in a substantial distortion of the differential photocurrent signal.

The third effect that results in wavelength sensitivity is Fabry–Perot interference that occurs between the input and output facets of the EO retarder. This effect modulates the transmissions of the two polarized wave components x^,z^ (in accordance with the directions in an x-cut, y-propagating EO retarder) independently as a function of wavelength, according to the well-known relation:





Rx,z are the facet reflectivities for the two linear polarizations, and Tx,z are introduced into the respective Jones matrices of the EO crystal (see Appendix A).

Direct monitoring of the wavelength, independently (of the photocurrent signal) and accurately (to the scale of 1 Å or less), can, in principle, help in compensating for these effects. But in reality, this poses a difficult technical task, particularly in the context of a miniaturized device. Thus, wavelength drift would result in a distortive effect on the photocurrent signal. In this subsection, this effect is estimated numerically.

For that purpose, a slight drift is added to the center wavelength at a constant rate Δλ/Δt=0.1  nm/min. Thus, over the entire signal frame duration (i.e., 60 s in our example), the wavelength drifts by Δλ=0.1  nm. The effect on the output signal (the differential photocurrent) is calculated for various birefringence scenarios and for various facet reflectivities at the EO retarder.

To distinguish between the contributions of these three effects, we recalculate the differential photocurrent for each case separately (i.e., with the other effects muted). The results are given in Figs. 12Fig. 1314.

Fig. 12

The effect of wavelength drift due to the dispersion of the dynamic retardance of the EO retarder. The calculated differential photocurrent versus time with the center wavelength drifting at a constant rate of 0.1  nm/min. The facet reflectivities of the EO crystal are zero (so there is no Fabry–Perot effect), and the static retardance is nulled by imposing nx=nz. To simplify, all birefringent components (optical windows, beam splitter) were assumed to have a similar axis, and BR and BX represent the total amount of birefringence (excluding the EO retarder) and the direction of this birefringence axis, respectively. The baseline and OA rotations were α0=0.0048  deg and αpulse=50  μdeg, respectively.


Fig. 13

The effect of wavelength drift due to the dispersion of the static retardance of the EO retarder. The calculated differential photocurrent versus time with the center wavelength drifting at a constant rate of 0.1  nm/min. The facet reflectivities of the EO crystal are zero (so there is no Fabry–Perot effect) and the dynamic retardance is nulled by imposing BX=BR=CX=0. In these examples, the baseline and OA rotations were α0=0.0048  deg and αpulse=20  mdeg, respectively.


Fig. 14

The effect of wavelength drift due to the Fabry–Perot interference between the EO retarder facets. The calculated differential photocurrent versus time with the center wavelength drifting at a constant rate of 0.33 nm/min. The dynamic and static retardances are nulled by imposing BX=BR=CX=0 and nx=nz, respectively. In these examples, the baseline and OA rotations were α0=0.0048  deg and αpulse=240  μdeg, respectively.


Figure 12 illustrates the effect of a wavelength drift, a change in Vπ with the wavelength, for two birefringence conditions: an ideal condition (BX=BR=CX=0) and an example of a medium-size misalignment condition (BX=BR=CX=1  deg). The Fabry–Perot effect and the dispersion of the static retardance were muted by assigning zero-facet reflectivities (Rx,z=0) and imposing nx=nz, respectively. The left graph shows that the signal is insensitive to wavelength drifts as long as no birefringence is present and the components are perfectly aligned. The right graph implies that for misalignment on the order of 1 deg, the signal is mildly sensitive to wavelength drifts on the order of a fraction of 1 nm.

Normally, for a well-designed polarimeter, 1 deg alignment accuracy is attainable in fabrication, and so the dynamic dispersion is not of major concern here.

The second effect, due to the wavelength dispersion of the static EO crystal retardance, is considerably larger. The conditions in this simulation were basically similar to the case above except for a much larger rotation pulse (apulse=20  mdeg), which was used to match the magnitude of the static effect. As in the previous case, the dynamic dispersion and the Fabry–Perot effect were muted by holding Vπ constant and assigning zero-facet reflectivities. An example is given in Fig. 13. The upper part shows the signal for the case where a single RTP crystal is used as an EO retarder. Clearly, the distortion effect is on the order of the OA rotation pulse, i.e., a few millidegrees.

This effect can be reduced by replacing the single crystal with a matched, orthogonal pair of RTP half-length crystals (lower part). Clearly, one cannot achieve a microdegree resolution by using a single crystal EO retarder.

The third effect, due to the Fabry–Perot interference that takes place within the crystal boundaries, has a different shape, which is periodical with the wavelength. It is also substantial in magnitude. Thus, note that in order to demonstrate it properly, a larger rotation pulse is used to simulate this case (αpulse=240  μdeg) than in the case of Fig. 12. The results are given in Fig. 14.

This interference effect superimposes an amplitude-modulated artifact on the signal. This artifact is periodical with the wavelength and has two periodicities: the faster (“carrier wave”) is due to Fabry–Perot interference. This periodicity represents a free spectral range (FSR) of 0.01  nm at the EO retarder. The slower (“envelope”) periodicity is due to the accumulating phase difference between δx and δz [see Eq. (11)] as a function of wavelength. As a result of this pattern, the magnitude of the error caused by the Fabry–Perot effect, which is mainly reflectivity dependent, is also wavelength dependent. For the purpose of assessment, one should normally refer to the worst-case scenario. As an example, for a facet reflectivity of 0.5%, it is apparent that the size of this noise effect is equivalent to 100  μdeg or less (depending on the operating wavelength). This effect can be reduced in a number of ways. For example: (1) using a suitable antireflective coating; (2) polishing the crystal facets at a slight angle; (3) using a source that has a spectrum substantially wider than the EO retarder FSR, such as a visible vertical cavity surface emitting laser (VCSEL), or even a light-emitting diode (LED); and (4) removing the periodical artifact by a suitable signal processing.

We note that Fabry–Perot interference can also be caused by reflections from the two windows of the flow-cell, and can be taken into account and dealt with in a similar manner. It is, however, a weaker effect (mainly due to the lower RI difference), and it is thus not included in the current analysis.


Thermal Susceptibility

A temperature drift typically leads to respective source wavelength changes (e.g., drift, mode hopping). These affect the output signal of the polarimeter (i.e., the differential photocurrent) via the mechanisms discussed in the previous subsection. In addition, the physical expansion of some of the optical components can similarly generate noise. For example, the expansion of the EO retarder can result in modulated transmission due to the Fabry–Perot effect. The expansion of the passive optical elements (optical windows and beam splitter) can change the contribution of these elements to the total birefringence.

Underlying the following calculation is an assumption that the temperature is uniform throughout the polarimeter, i.e., no thermal gradients are present. More specifically, regarding the various contributions mentioned above, we observe and assume the following:

  • The thermal effect on the EO retardance can be minimized by using a matched, temperature-compensated, half-length retarder pair. In fact, we have implemented this solution in our experimental model and, therefore, its contribution to the total noise can be neglected.

  • The thermally induced drift of the source wavelength is assumed to have a coefficient of dλ/dT=0.045  nm/°C, which is typical of a visible VCSEL.

  • With respect to the passive optical elements, we assume the following: (1) all elements are made of fused silica; (2) their birefringence is the maximal value given by the “Permissible optical path difference per cm glass path” in ISO 10110 part 2 for polarization optics,24 which is <2  nm/cm between the two polarizations. For the working wavelength assumed here, this value gives a birefringence of BR=2×2π/650  radians/cm glass. (3) The thermal expansion coefficient of fused silica (FS) is 6×107/°C; (4) the total thickness of the passive optical elements (at T0=20°C) is lFS=0.3  cm, i.e., BR=2×2π0.3/650  radians; and (5) there is an effective birefringence axis for the combination of these optical elements and it is aligned with the analyzer axis to within a range of BX deg.

To calculate the effect of these thermal contributions, we introduce the following temperature relations into the model:






where T is the temperature, λ0=650  nm, and T0=20°C. The temperature-dependent retarder transmissions Tx,z are calculated by using Eqs. (10) and (11) with the underlying notations lEO(T), nx,z(T), and λ(T), where nx,z(T) is calculated as detailed in Appendix B.

For the purpose of the following calculation, the temperature is linearly drifted over a time interval of 60 s. Some respective results, which demonstrate the thermally induced effect of the above described EO retarder mechanisms, are given in Fig. 15.

Fig. 15

The calculated differential photocurrent versus time with the ambient temperature center wavelength drifting at four constant dT/dt rates. Various condition sets that relate to thermal effects taking place within the EO retarder are described. In all cases, α0=0.0048  deg, αpulse=240  μdeg, CX=0  deg, and the EO retarder is made of a pair of matched orthogonal half-length retarders.


The results are given for four thermal drift rates (dT/dt=0,0.2,0.5,1°C/min). They represent, respectively, four temperature ranges: ΔT=0°C, ±0.1°C, ±0.25°C, and ±0.5°C. For each rate, two facet reflectivities (Rx=0.0005 and 0.0025) are used.

It is evident that the larger the temperature drift is and the higher the facet reflectivities are, the more distorted the signal becomes. The temperature range of ±0.25°C may be considered a typical condition within the human body, where the temperature is normally stable around 36.5 °C. In these cases, the periodical artifacts can easily be of the order of tens of microdegrees. Yet, if we recall that the OA-induced pulse height of 240  μdeg is equivalent (for an optical path length of 10 mm) to a glucose pulse of 5  mg/dL, these thermally induced artifacts shall not preclude a reasonably accurate measurement of the glucose level.


Discussion: the Path to Better Polarimeter Performance and Miniaturization

There are several issues relevant to this task. Most important are aspects of sensitivity and stability, including (though not limited to) the LOD, physical dimensions and optomechanical tolerances, various thermal coefficients and the specifications of the light source, EO retarder, and electrical components.

The analysis given in the previous sections sheds light on some of these issues. Some implications of the above results are discussed briefly in this section, without getting into a detailed numerical analysis.


Limit of Detection

For a polarimeter serving as a chiral detector in an HPLC system in the pharmaceutical industry, there is no lower bound for the LOD. The lower the LOD, the better, because it immediately means better and purer drugs. For a glucose sensor for diabetics, the minimal requirement to make it suitable to control an AP, with respect to the acceptable error, is ±15  mg/dL.21 This puts a stringent requirement on the LOD, ±15  mg/dL. For an optical path length of 10 mm, this translates into an optical rotation of ±720  μdeg. As was demonstrated above (see Fig. 8), the shot noise LOD for a 1-mW laser source is 10  μdeg, i.e., 72 times smaller. This large difference leaves substantial room for those mechanisms that degrade the shot noise LOD, such as thermal drifts and optomechanical deviations.


Physical Dimensions

The optical configuration is essentially flat and partially folded. The largest physical dimension is the length. The total length may be approximated by (see Fig. 1), assuming a 25% margin


lPol(llightsource+lpolarizer+lbeamsplitter+lflowcell+lEO)×1.25(10+5+5+10+10)×1.2550  mm.

This figure shows that our polarimeter can easily fit into almost any existing HPLC system, and an implantable polarimetric sensor would be viable in that respect.


Light Source Considerations

In the above analysis, a monochromatic light source was assumed. In reality, a slight wavelength drift of such a source would induce a change of the output signal (see Figs. 12Fig. 1314). The dominant effect is the Fabry–Perot interference effect at the EO retarder, which would result in a respective noise (see Fig. 14). To reduce or even eliminate this noise effect, a low-coherence light source is preferred. The spectral width of this source should be much wider than the FSR of the EO retarder, which is (for a 10-mm long RTP crystal; see Fig. 14) 0.01  nm. In fact, we believe that this conclusion is more general and applicable to any polarimeter employing a laser light source and optical elements (such as a flow-cell and Faraday rotator) that allow for Fabry–Perot interference.

The light source (which operates CW) also needs to have an output power in the range of 1 mW and high power efficiency—to minimize heat dissipation and thermal effects. In this regard, a visible VCSEL or superluminescent LED would satisfy the above requirements.


Thermal Considerations

A major issue is the effect of temperature instability. An internal stabilization mechanism would not be a problem for an HPLC chiral detector, but would be impractical in an implanted device in light of its small size, available temperature gradient, and very limited electrical power. On the other hand, the human body temperature is stabilized, normally to a range of few tenths of a degree Celsius. Thus, the question is: What magnitude of thermal uncertainty can the polarimeter tolerate? The analysis above shows (Fig. 15) that within a range of ±0.25°C, and for a light source with a thermal coefficient of dλ/dT=0.045  nm/°C (typical for a visible VCSEL), the differential photocurrent changes by an amount equivalent to only a few tens of microdegrees. Within a wider range of ±0.5  deg, the differential photocurrent may amount to an order of 100  μdeg (still lower than the required LOD target of 720  μdeg). In either case, the magnitude of this effect can be reduced substantially by lowering the facet reflectivity of the EO and flow-cell windows to a fraction of a percent.


Signal Detector Considerations

Two of the issues relevant to the polarimeter’s signal detector are the detectivity parameters (that determine the angular LOD) and the required dynamic range (because the small signal superposes a substantial background level). We assume a noncooled detector, particularly in the context of an implanted device, where the physical space and electrical current are very limited. In the case of an HPLC system, cooling might be an option.

The sensor assumed for the analysis above (S 1226-18BQ, Hamamatsu), is a commercially available small, light detector that is not the state-of-the-art in this field. Nonetheless, the calculated shot-noise limit of the angular LOD is 10  μdeg (see Fig. 8), which is almost two orders of magnitude better than the clinically induced requirement.

With respect to the required dynamic range, it was calculated above (see Fig. 9) to be lower than 106. This requirement is within the capability of several Si photodiodes.


Some EO Retarder Considerations

One conclusion from the above analysis is that the EO retarder must be temperature-compensated in order to achieve accuracy of few tens of microdegrees. This somewhat complicates the application of the retarder, but can certainly be done.

Two other issues relevant to the EO retarder are the amplitude of the modulating voltage waveform and the physical dimensions of the retarder. These two are linked [see Eq. (9)]. The half-wavelength voltage can be reduced by using a shorter wavelength and/or by using a lower thickness-to-length ratio. In fact, a shorter wavelength is doubly beneficial in that respect, as it results in lower diffraction and thus facilitates a lower thickness-to-length ratio, roughly in proportion. By this argument, it is possible, in principle, to reduce the modulation peak voltage, which is currently Vπ/2240  V, roughly in proportion to the operating wavelength squared.


Optomechanical Tolerances

The effects of three types of optomechanical misalignments were considered in detail in this article: CX—the angular misalignment of the EO retarder, BX—the effective misalignment of the passive optical elements along the optical path (which were assumed to have an effective birefringence phase BR), and PX—the deviation of the polarizer axis from its ideal position. Of these, CX is the most critical parameter, and, roughly speaking, adds angular error of similar magnitude (as the OA-induced rotation). The tolerance on BX is more relaxed, on the order of few tens of a degree. PX is also a noncritical parameter, and can be controlled to within an angular deviation of one degree. In any case, a slight error in setting PX would mainly affect the magnitude of the signal, and much less the accuracy of the polarimeter.



The detailed analysis in this article demonstrates the advantages inherent to the design of our OR polarimeter—namely its small size and noise rejection capability. The current resolution and accuracy of this polarimeter equal, and sometimes even surpass, that of the best available commercial OR polarimeters. Its unique ability to efficiently reject PR artifacts, which is not shared by any other OR polarimeter, makes it especially attractive for HPLC analyses in the pharmaceutical industry. The ability to miniaturize it to the size of a pacemaker opens the door for its future use as a chronically implanted CGM for diabetics and a viable alternative to current enzyme-based CGMs.

This article also lays out the path to further improvements to the polarimeter’s performance. Some of these improvements, mainly in the control of wavelength drift, are currently underway and show promise to enable substantial increase in the polarimeter’s resolution and accuracy.


Appendix A:

Component Jones Matrices

The Jones matrices that apply to the various components along the optical path are as follows.

The analyzer matrix is

where θAn is the angle of the analyzer transmission axis with respect to the x-axis. It is assumed that the analyzer passes the vertical polarization (i.e., directed at the z-axis), tx,z refers to the E-field transmission, and 20log10(tx/tz)=ER is the ER of the analyzer (and the polarizer).

Similarly, for the other optical components

where BS, FC, OA, EO, and Pol stand for the beam splitter, flow-cell, optical activity, EO retarder, and polarizer, respectively. θ and ϕ stand for the rotation angle of the component axis with respect to the x-axis and the birefringence-induced phase shift between the two orthogonal polarization components, respectively.

Appendix B: Relevant Numerical/Physical Data


Photodiode Parameters

In the calculation above, we used the parameters of a specific Si photo diode (S 1226-18BQ, Hamamatsu). The values and universal constants are as follows:23

Idark=2·1012A,Rsh=20  GΩ,BWn=10  Hz,Rλ=650  nm=0.33  A/W,kB=1.38×1023  m2kgs2K1,qe=1.60217657×1019  coulombs.


Dispersion Relations

The EO retarder in our polarimeter22 was made of an x-cut, y-propagating, RTP (RbTiOPO4) crystal (Raicol Crystals Ltd.). The electrodes were placed perpendicular to the z-axis (with spacing dEO=2  mm), to facilitate using the r33 EO tensor component. Sellmeier relations for RTP crystals, as well as their temperature dependence, are documented in the literature.25,26 In particular, the temperature-dependent dispersion relations of RTP as reported recently are as follows:25

where λ is in microns. The temperature dependence was given by


Optical Component Parameters

Throughout the article, the basic set of parameter values used in the calculations is as follows:

λ=650  nm,ERpolarizer=ERanalyzer=40  dB,lEO=10  mm,dEO=2  mm,αEO=1.1×1051/degC(RTP),αFS=0.4×1051/degC.



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Zeev Weissman is currently a staff member at the Department of Electrical Engineering, Shenkar College of Engineering and Design. He holds a BSc degree in electrical engineering from the Technion in Haifa, Israel, and MSc and PhD degrees in engineering from Tel Aviv University. His research interests are in optical waveguide devices and optical polarimetry for biomedical applications.

Doron Goldberg is a researcher at the MIGAL Galilee Research Institute, where he develops optical sensors for analytical and biomedical applications. He is also a staff member and senior lecturer at the Tel-Hai Academic College. He holds a BSc degree from the Department of Biochemistry and Human Nourishment, the Faculty of Agriculture at the Hebrew University (Cum laude), MSc (summa cum laude), and PhD degrees from the Department of Biochemistry, Hebrew University, Jerusalem.

Zeev Weissman, Doron Goldberg, "Self-referenced, microdegree, optical rotation polarimeter for biomedical applications: an analysis," Journal of Biomedical Optics 21(7), 071104 (22 December 2015). http://dx.doi.org/10.1117/1.JBO.21.7.071104


Biomedical optics

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