Continuous in-line monitoring of electrolyte concentrations in extracorporeal circuits for individualization of dialysis treatment

One objective of dialysis treatment is to normalize the blood plasma electrolytes and remove waste products such as urea and creatinine from blood. However, due to a shift in plasma osmolarity, a rapid or excessive change of the electrolytes can lead to complications like cardiovascular instability, overhydrating of cells, disequilibrium syndrome and cardiac arrhythmias. Especially for critical ill patients in intensive care unit with sepsis or multi-organ failure, any additional stress has to be avoided. Since the exchange velocity of the electrolytes mainly depends on the concentration gradients across the dialysis membrane between blood and dialysate, it can be controlled by an individualized composition of dialysate concentrations. In order to obtain a precise concentration gradient with the individualized dialysate, it is necessary to continuously monitor the plasma concentrations. However, with in-line sensors, the required hemocompatibility is often difficult to achieve. In this work, we present a concept for continuous in-line monitoring of electrolyte concentrations using ion-selective electrodes separated from the blood flow by a dialysis membrane, and therefore meeting the fluidic requirements for hemocompatibility. First investigations of hemocompatibility with reconfigured human blood show no increased hemolysis caused by the measuring system. With this concept, it is possible to continuously measure the plasma concentrations with a relative error of less than 0.5 %.


Introduction
Dialysis is a life-saving therapy, which is used for purifying the blood in the case of kidney failure. In dialysis, blood is pumped via an extracorporeal circuit into a dialyzer consisting of a semipermeable membrane separating blood and the dialysate. Due to concentration gradients across this membrane, waste products such as urea and creatinine can be removed by diffusion and the electrolyte balance can be regulated (Sivalingam and Farrington, 2007). Critically ill patients in the intensive care unit (ICU) with, e.g., sepsis or multi-organ failure, often develop acute kidney injury (AKI), characterized by the rapid loss of kidney function (Zarjou and Agarwal, 2011;Baue et al., 2000;Bellomo et al., 2012;Bagshaw et al., 2008). The mortality rate of such patients exceeds 50 % (Ricci et al., 2006). The treatment of AKI related to critical illness is usually continuous renal replacement therapy (CRRT) with a duration of up to 72 h (Patel et al., 2010;Patschan and Müller, 2015;Ricci et al., 2006;Tumlin et al., 2008). Due to the longer treatment compared to intermitted dialyses (3-4 h every 2-3 days), CRRT enables a slower removal of waste products and regulation of electrolyte balance, resulting in a benefit for unstable patients, as a rapid change of osmotic substances can lead to complications (Patel et al., 2010).
For instance, an excessive or rapid loss of sodium in the blood, and thus an abrupt shift in plasma osmolarity, can result in cardiovascular instability, overhydrating of cells and disequilibrium syndrome with muscle cramps, fatigue symptoms and headaches. Conversely, an inefficient sodium re-moval and thus sodium accumulation can cause hypertension, increased thirst and pulmonary edema (Stiller et al., 2001;Palmer, 2001;Locatelli et al., 2015;Paula et al., 2004). Another important aspect during the dialysis session is the potassium concentration. Too low a plasma potassium concentration (hypokalemia) and too high a plasma potassium concentration (hyperkalemia) can both lead to cardiac arrhythmias (Kovesdy et al., 2007). However, not only the absolute concentration can be critical but also the rapid removal of plasma potassium may trigger arrhythmias (Buemi et al., 2005). A rapid decline in plasma concentration due to a high gradient between dialysate and blood during the first hours of the treatment can be caused by a large mismatch of the potassium concentration in the dialysate. The rapid drop of potassium in plasma can therefore be avoided by using an exponentially decreasing dialysate concentration with a fixed concentration gradient between blood and dialysate of 1.5 mmol L −1 (Redaelli et al., 1996). This leads to a slower potassium removal and prevents arrhythmia. The concentration of ionized plasma calcium (free calcium) also affects the cardiovascular system. Increasing the ionized calcium in the dialysate and thus increasing the plasma concentration leads to an improvement of the left ventricular contractility, which is particularly interesting for unstable patients (Henrich et al., 1984;Lang et al., 1988).
Furthermore, an important marker for dialysis is urea because it represents the waste products (Keshaviah et al., 1995). For instance, a parameter for evaluating the efficiency of dialysis is the urea reduction ratio (URR) according to Eq. (1): where U pre is the pre-dialysis urea concentration in blood and U post is the blood urea concentration measured 5 min after the end of dialysis. It can be shown that URRs less than 60 % are associated with a higher mortality in patients during dialysis (Owen et al., 1993). There are several approaches to determine the efficiency of dialysis treatment using urea as a marker substance, but all of these methods measure the urea concentration in the dialysate, making it difficult to continuously monitor the actual urea concentration in the patient's blood (Lindsay and Sternby, 2001). In order to ensure a precise control of the dialysis treatment by individualization of the dialysate composition, thus controlling the concentration gradients across the dialysis membrane, it is necessary to continuously monitor the electrolyte concentration in the blood. This allows a precise control of the electrolyte exchange velocity, which mainly depends on the concentration gradients. As mentioned earlier, there are specific recommendations for the concentration gradient of potassium. Therefore, we present a concept for continuous in-line measurement of electrolytes using ion-selective electrodes (ISEs) that meets the fluidic requirements for hemocompatibility. First investigations with reconfigured human blood show no increase in hemolysis. However, it should be noted that further hemocompatibility tests with blood samples are still ongoing and experimental proof of hemocompatibility is pending. In addition, this concept can be extended by a urea sensor to determine the efficiency of dialysis treatment.

State of the art and concept
Since blood parameters such as electrolyte and urea concentrations are of great medical interest, various monitoring concepts have been developed (Sharma et al., 2016). There are already devices on the market that can determine the URR online by evaluating the conductivity of the dialysate (Diascan ® Gambro Hospal GmbH; OCM; Fresenius). Furthermore, the URR can be measured optically by ultraviolet absorbance or near-infrared spectroscopy in spent dialysate (Gál et al., 1983;Cho et al., 2008). The disadvantage of these methods is that only the urea removal can be determined, while it is difficult to derive the current blood concentration. Enzymatic biosensors also allow the urea concentration to be measured. One possibility to realize such a biosensor is to immobilize the enzyme urease on an ammoniumor ammonia-selective electrode. If the urease is immobilized close to the sensitive layer of the corresponding electrode, a urea-dependent voltage between the ISE and the reference electrode is obtained by splitting the urea into ammonia and ammonium ions in aqueous solutions due to the catalytic effect of the enzyme (Eggenstein et al., 1999;Dhawan et al., 2009;Koncki, 2007;Marchenko et al., 2015;Singh et al., 2008). Immobilizing the enzyme on a dialysis membrane can further improve hemocompatibility of the sensor (Schindler and Schindler, 1983).
An optical method to determine the concentration of electrolytes such as sodium and potassium in blood is the flame photometry. Here the blood is sprayed into a nonluminous flame and the intensity and wavelength of the emitted light are measured (Domingo and Klyne, 1949). To eliminate the need for a gas flame, laser-induced breakdown spectroscopy can be used. The measurement principle is similar to flame photometry, except that the gas flame is replaced by a strong laser pulse (Knopp et al., 1996). The disadvantage of this method is the missing in-line measurement capability. An inline capable solution to determine blood gases and potassium is the Proxima System developed by Sphere Medical Ltd..
Another common method for determining the electrolyte concentrations in the liquid phase is electrochemical potentiometric measurement using ISEs or ion-selective fieldeffect transistors (ISEFETs). For this, a concentrationdependent voltage is measured between the ISEs and a reference electrode (Mikhelson, 2013;Cammann, 1979). Schindler et al. developed a flow cell for ISEs (Schindler and Schindler, 1983;Schindler and Glich, 1981). However, due to hemoincompatibility, the blood cannot go back into the patient. To reduce the required blood volume, the size of the system can be reduced with the help of microfluidic devices and miniaturized ISFETs (Liao et al., 2006;Johnson et al., 2008;Gumbrecht et al., 1990).
However, for reasons of hemo-and biocompatibility, a direct in-line measurement with ISEs in blood is usually not possible (Gavalas et al., 2006). Proteins can adsorb on the ion-selective membrane of the ISEs, leading to a so-called membrane fouling, causing a time-dependent drift of the sensor signal (Sharma et al., 2016). More importantly, the adsorbed proteins can trigger blood coagulation and hemolysis and thus threaten the patient's life, making direct measurement in blood flow impossible.
For this reason, Schindler et al. used an individual dialyzer in the extracorporeal circuit separating the measuring circuit from the direct blood flow (Schindler and Schindler, 1983). Since each dialyzer produces a certain amount of hemolysis, it is not recommended to insert a second dialyzer into the extracorporeal circuit during dialysis treatment. In addition, this approach requires considerable financial and technical effort.
Therefore, we insert the ISEs into a compartment filled with physiological electrolyte solution, which is separated from the blood flow in the extracorporeal circuit by a dialysis membrane, which we name "compartment membrane" in the following, as depicted in Fig. 1. Since the blood and liquid-filled sensor compartment are separated, the ISEs are no longer in direct contact with the blood flow. Substances which are larger than the molecular weight cutoff of the membrane, e.g., proteins and cells, are retained and do not get into contact with the sensors. However, electrolytes and urea can diffuse through this membrane, leading to a concentration equalization between the blood and sensor compartment. This offers the possibility of obtaining an in-line flow system for continuous determination of the electrolyte concentrations with less instrumental effort than the abovementioned approach by Schindler et al. and a flow concept which meets the requirements for hemocompatibility. The diameter d s of the ISE is 12 mm; h s describes the variable distance between compartment membrane and the sensitive layer of the ISE.

Simulations
In order to evaluate the time-dependent behavior of this inline-measurement concept, we used a two-dimensional simulation (COMSOL Multiphysics 5.1). Figure 2 describes the design of the simulation model. In the lower part, the blood of the extracorporeal circulation flows tangentially along the compartment membrane. Since turbulent blood flow can lead to hemolysis, a laminar flow is necessary and the flow geometry of the measuring system has to be designed accordingly. Thus, a parabolic flow profile is assumed for the simulation. The liquid-filled compartment with a diameter d k of 12.1 mm and a height of h k of 5 mm is located above the compartment membrane that is 28 µm thick. Each ISE has a diameter d s of 12 mm and is inserted into the respective compartment. The distance between the ISE and the compartment membrane is h s . At the beginning of the simulation, the concentration in the extracorporeal circuit is increased from zero to c 0 in order to obtain the step response of the system. In reality, there are usually no discontinuities in concentration during dialysis treatment. A step in concen-ment, diffusion is the only transport phenomenon. Hence, the diffusion coefficients of the different electrolytes and urea are important parameters regarding the time required to reach a concentration equilibrium between blood and the fluid in the compartment. These are specified with approximately D K = 1.9 × 10 −9 m 2 s −1 for potassium (Friedman and Kennedy, 1955), D Na = 1.4 × 10 −9 m 2 s −1 for sodium (Vitagliano and Lyons, 1956) and D Ca = 0.9 × 10 −9 m 2 s −1 for calcium (Lyons and Riley, 1954). The diffusion coefficient for urea is approximately D Urea = 1.4 × 10 −9 m 2 s −1 (Gosting and Akeley, 1952). These parameters are used in all simulations for the liquid phase and the membrane. Due to similar diffusion coefficients of urea and sodium, only sodium is considered for the following investigation of the diffusion process. It should be mentioned that the response time of the urea sensor does not only depend on the velocity of the concentration equalization between blood and compartment but also on the transport of the urea into the layer of immobilized urease (here, another dialysis membrane is used to trap/immobilize the enzymes). Furthermore, the urea biosensor requires time for the enzymatic conversion of urea into ammonia and ammonium, meaning that higher response times are expected. The response time of an ISE is only a few seconds and can therefore be neglected. In addition to the diffusion coefficient, the distance h s between the compartment membrane and the ISEs has a major effect on the response time, since it mainly defines the diffusion length and volume of the compartment. Figure 3 shows the step response of the calcium concentration in the compartment close to the ISE, after a concentration step in the extracorporeal circuit from zero to c 0 , for the distances h s = 0.9 mm (blue line) and h s = 3.5 mm (black dashed line). Both graphs are normalized to c 0 . Figure 3 indicates the strong effect of the distance h s on the required time to achieve a concentration equilibrium between the blood and sensor compartment. Additional simulations have shown that the impact of the height h k can be neglected.
The impact of the diffusion coefficient can be seen in Fig. 4. Here, the concentrations of potassium (red dashed line), sodium (blue solid line) and calcium (black dotted line) normalized to c 0 are plotted versus the time after a step in blood concentration from zero to c 0 . As expected, a higher value of the diffusion coefficient results in a faster equalization. Hence, the equalization rate for potassium is faster than for sodium. The slowest equalization rate results for calcium.
Both the impact of D and h s are depicted in Fig. 5. Here, the time t 99 required for a concentration equalization of 99 % between the blood and sensor compartment is plotted versus the distance h s and the diffusion coefficients D K (red dashed line), D Na (blue solid line) and D Ca (black dotted line) as parameters. Once again, Fig. 5 illustrates the disproportionality between equalization time t 99 and h s . Therefore, it is important to reduce h s as much as possible in order to improve the response time of the system. However, an unlimited reduction of h s is not possible as a direct contact between the sen-  sitive layer of the ISEs and the compartment membrane has to be avoided. In addition, the ISEs require a minimum volume of liquid sample. In our first experimental setup h s was set to 0.9 mm. Hence, this case will be investigated in the following simulations.
Since the treatment duration of CRRT is up to 72 h, the exchange velocity of the electrolyte in the plasma is usually slow. In the following simulation an exponentially decrease of the blood concentration c blood−sim in the extracorporeal circuit is assumed according to Eq. (2) and the compartment is now prefilled with a physiological electrolyte solution.
where t is the time in hours, c end is the limit of c blood−sim as t approaches infinity, representing the average of normal blood concentration in healthy humans, and c is the difference between c blood−sim and c end at the beginning of the simulation which decreases with 10 % h −1 . For potassium c end is approximately 4.5 mmol L −1 . As a worst case scenario, we assume that c blood−sim for potassium has a maximum of 9 mmol L −1 at the beginning of the dialysis course, resulting in a c of 4.5 mmol L −1 . Figure 6 shows c blood−sim (red dashed line) and the corresponding concentration of the compartment c comp (solid red line). The distance h s between the compartment membrane and the ISE is 0.9 mm. c comp starts at 4.5 mmol L −1 at the beginning of the simulation since the compartment is now prefilled with a physiological electrolyte solution. Then, the compartment concentration increases up to the c blood−sim . After the intersection of both concentrations at approximately 21 min, c comp follows the blood concentration. The corresponding absolute error F for potassium is shown in Fig. 7a (red solid line) and is calculated according to Eq. (3): At the beginning of the simulation, F starts at −4.5 mmol L −1 . After the intersection, where F = 0 mmol L −1 , the absolute error overshoots to a maximum error of only F = 0.018 mmol L −1 and then decreases exponentially to zero. The corresponding relative error f for potassium according to Eq. (4) is depicted in Fig. 7b (red solid line).
The required accuracies and error bands are obtained from the guidelines of the German Medical Association (Bundesärztekammer, 2014). For potassium, an error band of ±4.5 % has to be ensured, resulting in a settling time of approximately 7.5 min after starting the treatment/measurement. After the overshoot, the maximum relative error f is just about +0.2 % for the rest of the treatment. The same observation can be applied for sodium. Here, however, c end and the initial concentration in the compartment are 140 mmol L −1 and c is 40 mmol L −1 , resulting in Figure 6. Response of the sensor compartment potassium concentration c comp (solid line) to a time-dependent blood potassium concentration c blood−sim for a distance h s of 0.9 mm. The initial compartment concentration is 4.5 mmol L −1 . The difference c between the initial value of c blood−sim = 9 mmol L −1 and end value of c blood−sim = 4.5 mmol L −1 decreases exponentially with 10 % per hour.
an initial blood concentration c blood−sim of 180 mmol L −1 . Compared to potassium, the intersection of both c blood−sim and c comp is approximately 4 min later at 25 min. The corresponding absolute error F and relative error f for sodium are depicted in Fig. 7a and b (blue solid line), respectively. The absolute error F starts at −40 mmol L −1 . After the intersection point at 25 min, F overshoots, causing a maximum absolute error F of approximately +0.2 mmol L −1 . The settling time after starting the treatment/measurement is about 7.2 min for the required accuracy of ±3 %. After the overshoot, the maximum relative error f is just +0.1 % for the rest of the treatment.
For calcium, c end and the initial concentration in the compartment is 1.2 mmol L −1 and c is 1.3 mmol L −1 , resulting in an initial c blood−sim of 2.5 mmol L −1 . The lowest diffusion coefficient D Ca causes the latest intersection of the two concentrations c blood−sim and c comp at 36.5 min. After this intersection point, the absolute error F overshoots and has a maximum value of only 9.7 µmol L −1 , which can be seen in Fig. 7a (black solid line). Furthermore, the required error band of ±7.5 % can be reached within 10.7 min after starting the treatment/measurement. The maximum relative error f for calcium is just +0.4 % for the rest of the treatment.
In summary, the relative error f after the intersection point of c blood−sim and c comp is lower than 0.4 % for calcium, 0.2 % for potassium and 0.1 % for sodium. Due to the different accuracies required, the settling time varies from 7.2 min for sodium to 7.5 min for potassium and 10.7 min for calcium after starting the treatment/measurement. This improves the current standard of discrete laboratory analyses significantly, which obtain the results with a delay of several hours. It has to be mentioned that such short settling times of just a few minutes can be neglected for a treatment duration of 72 h.

Experimental setup
The demonstrator of the in-line measuring system is similar to the simulation model. Figure 8 shows a photo of the flow cell. The schematic cross section is depicted in Fig. 9. The cell is made of the thermoplastic material PEEK and consists of two components. Two hose connections are located at the lower part of the measurement system on the left and right side, allowing the system to be easily integrated into the extracorporeal circuit independently of the dialysis apparatus used. The lower part is designed to minimize Figure 9. Schematic depiction of the cross section of the measuring system. turbulent flows as much as possible by avoiding an abrupt change in the cross section of the flow geometry in order to reduce the mechanical stress on the blood cells and thus prevent hemolysis. The compartment membrane made of regenerated cellulose with a molecular weight cutoff from 10 up to 20 kDa, and a thickness of 28 µm (RCT NatureFlex-NP from Reichelt Chemietechnik) separates the ISEs from the extracorporeal circuit. The ISEs and the reference electrode are placed in the upper part of the system. Via two hose connections in the upper part, the sensor compartment can be prefilled with a physiological electrolyte solution. Furthermore, the ISEs can be calibrated this way. The potassium ISE (201/K) and calcium ISE (201/CA) were purchased from Amel in Italy. As a reference electrode, the InLab Reference electrode from Mettler Toledo was used. For sodium measurement, the polymer membrane electrode from Metrohm was used. The concentration-dependent voltage between the ISEs and reference electrode is recorded by a potentiostat from PalmSens (Polypotentiostat EmStat3 4WE).
In order to investigate the dynamic behavior of the measuring system, we simulate the extracorporeal circuit with a synthetic electrolyte solution, which was pumped from a reservoir into the in-line measuring system via a hose system and then back into the reservoir with a flow rate of 100 mL min −1 by a peristaltic pump (Ecoline VC-380 from ISMATEC). A magnetic stirrer (IKA RCT basic) continuously mixed the reservoir. All chemicals (potassium chloride, sodium chloride and calcium chloride dihydrate) were bought from Sigma-Aldrich Germany.
Hemolysis is an important characteristic of hemocompatibility that needs to be investigated. Therefore, we have built up a further circulation system filled with reconfigured human blood at a flow rate of 100 mL min −1 . In order to determine the amount of hemolysis produced by the measuring system, the circulation system was first used without the measuring system for 2 h. After that, the measuring system was integrated into the circulation system filled with new reconfigured blood. Free hemoglobin was used as a marker for hemolysis. The different increase of free hemoglobin in the circulatory system with and without the sensor provides in-formation about the hemolysis produced by the measuring system.

Results
In order to validate the simulation results, we measured the step response of the continuous in-line monitoring system with a synthetic electrolyte solution consisting of the three electrolytes potassium chloride, sodium chloride and calcium chloride in DI (deionized) water. To prevent the ISEs and reference electrode from being exposed to DI water for a longer period of time, the entire extracorporeal circuit and sensor compartment is prefilled with a very low concentrated electrolyte solution (10 −5 mol L −1 ) of sodium chloride, potassium chloride and calcium chloride. It should be noted that these low concentrations are not expected in the later application with real blood. To obtain the step response of the in-line measuring system, the concentrations are raised from zero to c 0,Na = 10 −1 mol L −1 and c 0,K = 10 −1 mol L −1 for sodium and potassium and c 0,Ca = 10 −2 mol L −1 for calcium inside the reservoir. The distances h s between dialyses membrane and ISEs are approximately 0.9 mm. Figure 10 shows the corresponding step response for potassium (red solid line) and sodium (blue solid line) normalized to c 0,Na and c 0,K and calcium (black solid line) normalized to c 0,Ca , respectively. As shown before, the differences of the equalization time are caused by the different diffusion coefficients resulting in the fastest equalization for potassium and the slowest equalization for calcium. Furthermore, Fig. 10 compares the measured and simulated step responses for a distance h s of 0.9 mm. It can be seen that the measured step responses are very similar to the simulated curves. Hence, the simulated error analysis applies to the demonstrator of the inline measuring system. It should be mentioned that ISEs are not perfectly selective to particular ion species, resulting in cross-sensitivities to other ion species described by the selectivity coefficient k A,B between the target ion A and the interfering ion B in the Nikolsky-Eisenman equation. Due to the different charge number of, e.g., calcium and potassium, the Nikolsky-Eisenman equation results in a nonlinear 3 × 3 equation system for the three electrolytes of interest. Since manufacturers obtain the selectivity coefficients k for each ISE, interferences can be corrected between all measured ions using Newton's method. Furthermore, ISEs are actually sensitive to ion activities and not to ion concentrations. The activity coefficient relates the activity to the concentration. In particular, the activity deviates from the concentration at high electrolyte concentrations. However, if the calibration solutions have similar activities to blood, it is possible to neglect the effect of the concentration-dependent variation of the activity coefficient since the blood concentration can only vary within a limited range. For instance, in the worst case the concentration of potassium can vary between 1.5 and 9 mmol L −1 , for sodium between 120 and 180 mmol L −1 and Figure 10. Comparison between the measured step response (solid lines) and the simulated response (dotted lines) for potassium (red line), sodium (blue line) and calcium (black line). The distance h s between the ISEs and compartment membrane is about 0.9 mm.
for ionized calcium between 0.6 and 2.5 mmol L −1 . It should be noted that ISEs only determine the ionized calcium and not the complexed calcium. In this particular application, the impact of the temperature of the measuring medium on the sensor signal can also be neglected, as the temperature of the blood can only vary within a narrow range. In the worst case the body temperature can be between 33 and 41 • C. In addition, the temperature of the extracorporeal circuit is controlled to reduce the fluctuation of the temperature even further. During a 72 h CRRT it is possible that the sensor signal has a drift over the time. However, it is conceivable to recalibrate the ISEs via the hose connection of the sensor compartment and thus guarantee high-precision measurements of the concentrations. At a flow rate of 100 mL min −1 within the extracorporeal circuit, the standard deviation of the voltage between the ISE and the Ag/AgCl reference electrode is about 1.33 × 10 −5 V, leading to a standard deviation of the concentration of 0.05 % for monovalent ions and 0.1 % for divalent ions, which has to be considered in the overall error. This low standard deviation is achieved by averaging the measurement signal using an averaging time of 1 s. In addition, we use a metal housing for shielding, which considerably reduces the noise and thus the standard deviation.
The circulation system filled with reconfigured human blood was used to determine the amount of hemolysis caused by the measuring system at a flow rate of 100 mL min −1 . Due to increasing hemolysis of reconfigured blood in the circulation system, the value of free hemoglobin rises continuously during the 2 h measurement. The different amount of free hemoglobin in reconfigured blood between the circulation system with and without the measuring system is therefore a measure of the hemolysis produced by the measuring system. We observed no difference in increasing free hemoglobin between the setup with or without the sensor. Therefore, we exclude significant hemolysis in this first experiment.

Conclusion
In this work, we presented the concept and preliminary investigations of a concept for a continuous in-line monitoring of electrolytes during CRRT that meets the fluidic requirements for hemocompatibility. First investigations of hemocompatibility show no increased hemolysis caused by the measuring system. However, it should be noted that hemocompatibility does not only mean hemolysis. Further tests with real blood (e.g., blood clotting) are still ongoing and experimental proof of hemocompatibility is pending. In this study, the ISEs used are separated from direct blood flow using a dialysis membrane (compartment membrane), preventing the adsorption of, e.g., proteins on the sensor surface. The dynamics of the in-line measuring system is an important factor affecting the resulting measurement error. By reducing the volume of the compartment containing the ISEs, the system dynamics can be improved. With this measuring system, the required accuracy is reached 10.7 min after starting the measurement for calcium, after 7.5 min for potassium and after 7.2 min for sodium. After this short settling time caused by the initial concentration step that only occurs at the beginning of the treatment/measurement, the presented concept enables a continuous in-line measurement with a relative error less than 0.5 % for calcium, 0.25 % for potassium and 0.15 % for sodium, significantly improving the current method of laboratory analysis, which obtains the results with a delay of several hours. Due to the continuous monitoring, the concentration gradients between blood and dialysate can be determined precisely and thus the exchange velocity of electrolytes can be controlled by individualizing the dialysate composition, resulting in a benefit especially for critically ill patients in the ICU, since a rapid change of osmotic substances can lead to complications. Furthermore, the in-line system provides the possibility to be extended by a urea sensor to determine the efficiency of dialysis treatment.
In further work, we will investigate this concept in a clinical study. In addition, we will reduce the size of the measurement system by using miniaturized sensors like ion-selective field-effect transistors (ISFETs). Furthermore, we will investigate the urea sensor. In this study, we use a very simple approach in which the enzyme is retained by another dialysis membrane and thus immobilized close to an ammonium electrode. Hence, the use of toxic chemicals for immobilization can be avoided.
Data availability. All underlying research data are given in this paper. There is no supplementary or additional underlying material.