3.1. Demonstration of the Proposed Method
To demonstrate the proposed method, viscosity-sensitive time constant and RBC aggregation index (AI) were obtained for control blood and test blood. Herein, hematocrit of both bloods (test blood, control blood) was adjusted to ϕvol = 0.5 by adding normal RBCs into dextran (Cdex = 2%) and 1× PBS, respectively. Air cavity (Vair = 0.1 mL) was maintained above blood column (Vb = 0.5 mL) inside the syringe. The syringe pump was set to generate a pulsatile flow profile (i.e., Qh = 6 mL/h for 0 < t < 2 min, Ql = 1 mL/h for 2 min < t < 6 min, and T = 6 min).
As shown in
Figure 2A, time-lapse RBC aggregation index was obtained for control and test bloods.
Figure 2A-i showed temporal variations of blood velocity and RBC aggregation index for control blood. The left panel represented temporal variations of blood velocity (
Umc,
Utc) and
Qsp. The middle panel depicted temporal variations of RBC aggregation index (AI) and
Qsp. The right panel showed microscopic blood-flow images in test channel captured at
t = 50 s and 290 s. As control blood did not induce RBC aggregation in test chamber, microscopic image did not exhibit substantial variations. In contrast, control blood was replaced by test blood. As shown in
Figure 2A-ii, temporal variations of blood velocity and RBC aggregation index were acquired for test blood. The left panel represented timelapse
Umc,
Utc, and
Qsp. When the syringe flow rate was switched from
Q = 6 mL/h to
Q = 1 mL/h, test blood exhibited a longer transient response than the control blood. The middle panel depicted time-dependent AI and
Qsp. The aggregation index (AI) increased substantially under the low flow condition (
Q = 1 mL/h), whereas it remained relatively low at the high flow rate (
Q = 6 mL/h). The right panel showed microscopic blood-flow images in test channel captured at
t = 50 s and 290 s. At the high flow rate (
t = 50 s), no appreciable morphological difference was observed between the test and control bloods. However, at the low flow rate (
t = 290 s), pronounced RBC aggregation led to a marked increase in cell-free void regions.
As shown in
Figure 2B, the time constant and RBC aggregation index (AI) of the control and test bloods were quantitatively evaluated during the first and second periods.
Figure 2B-i exhibited time constant obtained from the time-lapse
Umc data over two consecutive periods. The left panel showed the temporal variation in
Umc for both bloods during the stepwise decrease in the syringe-pump flow rate from
Qh to
Ql. The results indicated that the decrease in
Umc was slower for the test blood than for the control blood. Compared with the control blood, the test blood exhibited a slower decrease in
Umc, indicating a longer transient response in the test blood. To accurately describe the transient behavior of
Umc, the time-lapse velocity data were fitted using a two-exponential model as
. Non-linear curve-fitting was performed using a curve-fitting toolbox in Matlab. The resulting fitting equations were expressed as
for control blood and
for test blood, respectively. Because
was much smaller than
,
was selected as the representative time constant characterizing the dominant rapid transient response. The higher
value of the test blood indicated that its transient flow response was slower than that of the control blood. The middle panel showed the λ
1 values obtained for the two bloods during the first period. Each blood was tested with
n = 4 ~ 8 replicates. The mean value and 95% confidence interval (CI) were superimposed on the raw data points. The λ
1 value of the test blood was substantially higher than that of the control blood. One-way ANOVA confirmed a statistically significant difference between two groups (
p-value = 0.003). The right panel presented the λ
1 values obtained for the two bloods during the second period. One-way ANOVA revealed a statistically significant difference between the control and test bloods (
p-value = 0.011). Similarly, as shown in
Figure 2B-ii, the RBC aggregation index (AI) of the control and test bloods was quantitatively evaluated during two consecutive periods. The left panel showed time-dependent AI and Q
sp for both bloods during the first period. Herein, the mean AI (<AI>) was calculated by averaging the AI values within the plateau regions observed at both
Qh and
Ql. The middle panel presented the mean AI values (<AI>) of the control and test bloods at
Qh and
Ql during the first period. One-way ANOVA confirmed statistically significant differences between the two bloods at both flow rates (
p-value < 0.001). Notably, the difference in <AI> between two bloods was more pronounced under low flow rate (
Ql). The right panel exhibited the mean AI (<AI>) values for both samples at
Qh and
Ql during the second period. One-way ANOVA indicated significant differences between two bloods at both flow rates (
p-value < 0.001).
The preliminary results showed that the proposed a single syringe pump microfluidic method could simultaneously assess viscosity-related flow dynamics and RBC aggregation under periodically modulated flow conditions. Compared with the control blood, the test blood exhibited a significantly higher time constant (λ1) and aggregation index (AI), indicating increased flow resistance and enhanced RBC aggregation, particularly under the low-flow-rate condition (Ql).
3.2. Correlation Between Blood Viscosity and Time Constant
In this subsection, to probe the linear relationship between time constant and blood viscosity, the blood flow rate was adjusted to ensure a sufficiently high shear condition of
> 10
3 s
-1. Under these high shear regimes, blood viscosity could be reasonably treated as constant. According to Eqn (6), the time constant (λ
1) was linearly proportional to blood viscosity. That is, the hydraulic resistance of a fixed microfluidic channel was linearly proportional to fluid viscosity under laminar flow, while the transient response of a compliant fluidic system was governed by a hydraulic resistance–compliance time constant [
42,
57,
58,
59,
60]. When the air volume and channel geometry were maintained constant, the compliance term remained nearly unchanged and the measured time constant (
λ1) was expected to vary linearly with blood viscosity. The linear relationship between the time constant and blood viscosity was experimentally validated by varying the infusion flow rate, hematocrit, and dextran concentration. Herein, air cavity inside a syringe was fixed at
Vair = 0.1 mL.
As shown in
Figure 3A, time constant and blood viscosity were acquired as a function of flow rate (
Qsp) (
Qsp = 1 ~ 6 mL/h). Herein, test blood (
ϕvol = 0.5) was prepared by adding normal RBCs into dextran (
Cdex = 2%). Syringe pump was abruptly stopped from the plateau value of
Qsp = 1, 2, 4, and 6 mL/h. As shown in
Figure 3A-i, time constant of test blood was obtained quantitatively from time-lapse blood flow rate in the main channel (
Qm). The left panel exhibited time-dependent
Qm with respect to plateau value of
Qsp = 2, 4, and 6 mL/h. As shown in the middle panel, time-lapse
Qm was redrawn from the onset of transient blood flow. Herein, the plateau value of
Qsp was set to
Qsp = 2 mL/h. Based on one -exponential model as
), the time-lapse
Qm was best described by
). Amplitude and time constant were obtained as
Q0 = 1.92 mL/h and
λ1 = 27.62 s, respectively. The right panel showed variations of
λ1 and
Q0 with respect to plateau value of
Qsp. Experiment at each flow rate was repeated five times (
n = 5). The
Q0 increased linearly with respect to plateau flow rate of
Qsp (
p-value < 0.001), while λ
1 decreased gradually for up to
Qsp = 4 mL/h and dropped substantially at the plateau flow rate of
Qsp = 6 mL/h (
p-value < 0.001). As shown in
Figure 3A-ii, coflowing stream method was adopted to measure blood viscosity at plateau value of
Qsp = 1 ~ 6 mL/h. The left panel showed experimental setup and microscopic image for measuring blood viscosity (
μb). According to the previous study [
29], viscosity formula of test fluid was given as,
where viscosity of reference fluid (1× PBS) was denoted as
The formula of correction factor:
Cf (
αb) was obtained experimentally and derived as polynomial expression,
Herein, test blood was set to Qb = 2 mL/h. To relocate interface near the channel center, flow rate of reference fluid (1× PBS) was adjusted to Qr = 6 mL/h. Then, blood viscosity was obtained by substituting blood-filled width (αb) into the Eqn (10). The middle panel showed time-dependent blood viscosity with respect to constant flow-rate of Qb = 1, 2, 4, and 6 mL/h. Blood viscosity remained constant over time and decreased at higher flow rate of Qb. The right panel exhibited variation of μb and with respect to Qb. Herein, shear rate formula of a rectangular microfluidic channel was given as = . From the results, the μb was decreased gradually for up to Qb = 4 mL/h, where the was calculated as about 5089 s-1. Blood viscosity was remained constant at Qb = 4 ~ 6 mL/h.
As shown in
Figure 3B, correlation between blood viscosity and time constant was validated by varying hematocrit (
ϕvol). Herein, hematocrit of test blood was adjusted to
ϕvol = 0.3 ~ 0.6 by adding normal RBCs into dextran (
Cdex = 2%). To probe time constant consistently, blood flow rate was abruptly stopped from plateau value of
Qb = 2 mL/h. Under transient blood flow, as shown in
Figure 3B-i, time constant (λ
1) was obtained as a function of
ϕvol. Multiple experiments for each hematocrit were carried out (
n = 3 ~5). The time constant (λ
1) increased remarkedly with respect to hematocrit (
p-value = 0.003). In addition, as shown in
Figure 3B-ii, blood viscosity (
μb) was obtained with respect to
ϕvol. To examine the relationship between two parameters, time constant (
λ1) and blood viscosity (
μb) were plotted on y-axis and x-axis, respectively. As shown in
Figure 3B-iii,
λ1 tended to increase with increasing
μb. Linear regression analysis yielded the following relationship:
λ1 = 8.2722
μb − 2.9861 (R
2 = 0.7376,
p-value = 0.141). Although the correlation did not reach statistical significance, the result suggested a positive association between
λ1 and
μb, supporting the potential use of the time constant as a viscosity-related parameter.
As shown in
Figure 3C, correlation between blood viscosity and time constant was evaluated as a function of dextran concentration (
Cdex). For this analysis, test blood (
ϕvol = 0.5) was prepared by suspending normal RBCs into dextran solution (
Cdex = 0.5 ~ 3%). Under transient blood flow conditions, as shown in
Figure 3C-i, time constant (λ
1) was determined as a function of dextran concentration (
Cdex). The time constant (
λ1) increased remarkedly with increasing dextran concentration, showing a statistically significant dependency on dextran concentration (
p-value = 0.012). Under steady blood flow conditions, as represented in
Figure 3C-ii, blood viscosity (
μb) was measured with respect to
Cdex. Linear regression formula was obtained as
μb = 0.8349
Cdex + 2.1811 (R
2 = 0.9586,
p-value = 0.001), indicating that the
μb increased significantly with respect to
Cdex. As shown in
Figure 3C-iii, the
λ1 was plotted against
μb. According to linear analysis, linear regression analysis yielded
λ1 = 4.7749
μb + 10.468 (R
2 = 0.9326,
p-value = 0.002).
From experimental results, including variations in infusion flow rate, hematocrit, and dextran concentration, the time constant (λ1) increased with blood viscosity (μb). Strong correlations between (λ1) and (μb), particularly under hematocrit- and dextran-dependent changes, demonstrated that (λ1) could be regarded as a reliable viscosity-related parameter.
3.3. Validation of the Proposed RBC Aggregation Index Against the Previous Methods
To validate RBC aggregation index (AI) proposed in this study, its performance was compared with those of the previously reported methods [
17,
21,
29]. As shown in
Figure 4A, the AI values obtained from the three methods were quantitatively evaluated under different blood flow conditions. Test blood with a volume fraction of
ϕvol = 0.5 was prepared by suspending normal RBCs in dextran solution at
Cdex = 2%. To examine the influence of blood flow rate on AI, the plateau blood flow rate (
Qb) was systematically varied from 1 to 6 mL/h.
As the first previous method, RBC aggregation index (AI
p1) was obtained by analyzing temporal variation in microscopic image intensity at stasis [
15,
17,
21]. As shown in
Figure 4A-i, the left panel presented time-resolved microscopic images acquired at
t = 200, 230, 260, 290, 320, and 360 s. Blood flow was suddenly stopped at 200 s after reaching a plateau flow rate of
Qon = 1 mL/h. After blood flow was stopped, RBCs gradually formed aggregates over time, resulting in a pronounced reduction in image intensity. The middle panel showed time-lapse image intensity (
I), measured at plateau flow rates of
Qon = 1, 2, 4, and 6 mL/h. According to the conventional definition of RBC aggregation index (AI
p1), the two characteristic parameters (
Sa,
Sb) were calculated from temporal intensity profile during the first 120 s after the onset of stasis. The conventional RBC aggregation index was then computed as AI
p1 =
Sa/(
Sa +
Sb). The right panel summarized variations of AI
p1 as a function of
Qon. A substantial rise in AIp1 was observed as Qon increased from 1 to 2 mL/h, and this change was found to be statistically significant (
p-value < 0.001). At higher flow rates (
Qon > 2 mL/h), the AI
p1 showed only a gradual increased, and no statistically significant difference was observed among the specific flow rate conditions.
More recently, our group suggested another RBC aggregation index (AI
p2) which could be measured under continuous blood flow [
13,
29]. Unlike the conventional method, this approach did not require repeated stopping of blood flow. Instead, blood was continuously supplied into a microfluidic device at a constant flow rate using a syringe pump. The microfluidic device comprised a main channel and a test channel. Blood flowing through the main channel was exposed to relatively high shear conditions, under which RBC aggregates were largely dispersed. In contrast, blood entering the test channel experienced a substantially lower shear rate, promoting continuous RBC aggregation. The RBC aggregation index (AI
p2) was then calculated based on the difference in image intensity between the two channels. The left panel showed microscopic image captured at
t = 240 s, when blood flow rate was maintained at
Qb = 1 mL/h. The red arrow (→) indicated the direction of blood flow in the channels. To quantify the image intensity in the main and test channels (i.e.,
Im: main channel, and
It: test channel), the ROI size in each channel was set to 3.63 mm
2 and 2 mm
2, respectively. The AI
p2 was then determined as AI
p2 = (
Im − It)/
Im.
The second panel showed time-dependent Im, It, and AIp2 at Qb = 1 mL/h. From the results, the Im remained nearly constant throughout the measurement period. In contrast, the It decreased gradually during the initial time, and increased slowly after reaching its minimum value. The AIp2 increased progressively from the initial time, reached a maximum value, and decreased gradually over time. The third panel presented time-dependent variations of AIp2 at different flow rates of Qb = 1, 2, 4, and 6 mL/h. The results clearly indicated that the Qb had a strong influence on AIp2. In particular, the AIp2 showed a relatively high value at the low flow rate of Qb =1 mL/h, whereas it decreased markedly at the higher flow rate of Qb = 6 mL/h. This trend suggested that RBC aggregation was enhanced at the lower flow rates, whereas it was suppressed at the higher flow rates. The last panel depicted variations of AIp2 as a function of Qb. For each flow condition, the measurement was repeated about n = 4 ~ 5. The results showed that the AIp2 decreased remarkedly as Qb increased from 1 mL/h to 4 mL/h (p-value < 0.001). However, no substantial difference in AIp2 was observed between Qb = 4 and Qb = 6 mL/h.
As shown in
Figure 4A-iii, the RBC aggregation index (AI) proposed in this study was obtained as a function of blood flow rate. The first panel showed blood image intensity (
I) across the test chamber under a constant flow rate of Q
b = 1 mL/h. The inset showed a microscopic image captured at
t = 250 s, where the red arrow (←) indicated the direction of blood flow through the main and bifurcation channels. Two parameters (
Sa,
Sb) were obtained from the spatial variation in
I and were subsequently used to calculate the RBC aggregation index as AI = S
a/ (
Sa +
Sb). The second panel presented time-dependent variation of AI at
Qb = 1 mL/h. When compared with AI
p2, the proposed AI remained relatively stable during measurement period of 250 s. The AI value was expressed as mean ± standard deviation. At
Qb = 1 mL/h, AI was measured as AI = 0.123 ± 0.016 (
n = 514). The third panel depicted time-lapse AI with respect to
Qb = 1, 2, 4, and 6 mL/h. The corresponding AI values of each flow rate was obtained as AI = 0.103 ± 0.008 (
n = 446) at
Qb = 2 mL/h, AI = 0.073 ± 0.006 (
n = 211) at
Qb = 4 mL/h, and AI = 0.061 ± 0.008 (
n = 214) at
Qb = 6 mL/h. The last panel summarized variations of AI with respect to
Qb. The results indicated that the constant flow rate (
Qb) had a significant influence on AI over the tested flow rate range (
p-value < 0.001). Compared with previous method (AI
p2), the proposed AI showed lower absolute values under the same flow rate conditions. However, because its temporal variation was much smaller, the proposed AI provided more stable measurements and more consistent trends with respect to the infusion flow rate.
As the first demonstration, as shown in
Figure 4B, the performance of the proposed AI was evaluated by comparing three aggregation indices (i.e., AI
p1, AI
p2, and AI) as a function of hematocrit (
ϕvol). The hematocrit of test blood was adjusted from
ϕvol = 0.3 to
ϕvol = 0.6 by suspending normal RBCs into dextran solution (
Cdex = 2%). The plateau flow rate was fixed at
Qb = 2 mL/h.
Figure 4B-i presented variation of AI
p1 with respect to
ϕvol. The results indicated that AI
p1 decreased substantially with increasing hematocrit (
p-value < 0.001). For each hematocrit condition, experiments were repeated about
n = 4 ~ 6.
Figure 4B-ii exhibited variation of AI
p2 with respect to
ϕvol. Similar to AI
p1, the AI
p2 decreased significantly as hematocrit increased (
p-value < 0.001). When compared with AI
p1, the AI
p2 exhibited lower absolute values under the same hematocrit conditions. None-the-less, both indices showed a consistent decreasing trend with increasing hematocrit.
Figure 4B-iii depicted the variation of the proposed AI with respect to
ϕvol. The proposed AI also showed a significant dependence on hematocrit (
p-value < 0.001). Importantly, it showed a similar trend to the two previous indices (AI
p1, AI
p2), supporting the reliability of the proposed AI for evaluating hematocrit-dependent changes in RBC aggregation.
As the second demonstration, as shown in
Figure 4C, three RBC aggregation indices (i.e., AI
p1, AI
p2, and AI) were compared quantitatively as a function of dextran concentration (C
dex). Test blood (
ϕvol = 0.5) was prepared by suspending normal RBCs into dextran solution with different concentrations (
Cdex = 0.5 ~ 3%). The plateau flow rate was fixed at
Qb = 2 mL/h.
Figure 4C-i presented variation of AI
p1 with respect to
Cdex. The results indicated that the AI
p1 increased significantly as the dextran concentration increased from 0.5% to 2% (
p-value < 0.001). However, it remained nearly constant when C
dex was further increased between
Cdex = 2% and
Cdex = 3%.
Figure 4C-ii depicted variation of AI
p2 as a function of
Cdex. Unlike AI
p1, the AI
P2 continued to increase significantly over the entire tested dextran concentration range from
Cdex = 0.5% to
Cdex = 3% (
p-value < 0.001).
Figure 4C-iii depicted variation of proposed AI with respect to
Cdex. The proposed AI showed a statistically significant difference across the tested dextran concentration (
p-value < 0.001). In particular, its increasing trend was similar to that of
AIp2, indicating that the proposed AI could effectively reflect dextran-induced enhancement of RBC aggregation.
From the experimental investigation, the proposed AI provided a reliable and stable quantification of RBC aggregation when compared with the previous indices (AI
p1, AI
p2). The proposed AI showed consistent and statistically significant trends with respect to both hematocrit and dextran concentration. In particular, it decreased with increasing hematocrit and increased with increasing dextran concentration, in agreement with the established behavior of RBC aggregation [
27,
29,
56,
61]. These results demonstrate that the proposed AI could serve as a robust and reproducible index for quantifying RBC aggregation under continuous blood flow.
3.4. Optimization of Infusion Pulsatile Blood Flow Profile
In this subsection, a pulsatile blood flow profile was optimized to enable effective measurement of time constant and RBC aggregation index. Herein, air cavity inside the syringe was adjusted to Vair = 0.1 mL. Test blood (ϕvol = 0.5) was prepared by suspending normal RBCs into dextran solution (Cdex = 2%). The minimum infusion flow rate was fixed at Ql = 1 mL/h. Three design variables (i.e., Qh: maximum flow rate, th: delivery time for Qh, and tl: delivery time for Ql) were then determined by evaluating time constant and RBC aggregation.
First, the suggested method was employed to examine the effect of maximum flow rate (
Qh) and overall period (
T =
th +
tl) on time constant and aggregation index (AI). As presented in
Figure 3A-ii, blood velocity remained nearly constant above
Qb = 4 mL/h, where shear rate was estimated as
= 2,667 s
-1 in the main channel and
= 135 s
-1 in the test chamber, respectively. The maximum flow rate was selected as
Qh = 4, and 6 mL/h. Period of pulsatile flow rate was set to
T = 120 ~ 480 s. As shown in
Figure 5A-i, time-dependent
Umc and AI was measured at
T = 120, 240, and 360 s under the flow rate condition (
Qh = 4 mL/h,
Ql = 1 mL/h). At
T = 120 s, both
Umc and AI did not reach plateau values during each pulsatile flow period. When period was set to 240 s or longer, the
Umc reached a plateau value in each period. Additionally, the AI showed a stable plateau response. Under the conditions, the AI was obtained about 0.3 at
Ql = 1 mL/h and 0.1 at
Qh = 4 mL/h, respectively. Furthermore, the
Umc decreased gradually from its plateau value when flow rate was changed from
Qh to
Ql. Analytical expression of the Eqn (7) could be subsequently used to determine time constant under a well-defined transient blood flow profile.
Figure 5A-ii presented time-resolved
Umc and AI as function of
T under the flow-rate condition (
Qh = 6 mL/h,
Ql =1 mL/h). When the pulsatile flow period was set to 240 s or longer, the AI reached a stable plateau value. In particular, a longer period produced a more stable AI response, indicating that sufficient delivery time at each flow rate condition was required for reliable aggregation measurement. As shown in
Figure 5A-iii, variations of time constant (
λ1) and AI were summarized as a function of
T under the flow rate conditions. The left panel showed variations of
λ1 as a function of
T under the flow rate condition (
Qh = 4 mL/h,
Ql = 1 mL/h). Experiment for each period was repeated about
n = 2 ~ 5. The results indicated that the
λ1 tended to increase substantially with respect to
T (
p-value = 0.05). The middle panels exhibited variations of
λ1 as functions of
T under the flow rate condition (
Qh = 6 mL/h,
Ql = 1 mL/h). For each period, experiment was repeated about
n = 2 ~ 4. The results showed that the
λ1 increased significantly with increasing
T (
p-value = 0.014). In addition, the
λ1 exhibited more consistent values when compared with those obtained at
Qh = 4 mL/h. The right panel depicted variations of AI as a function of
T at
Qmax = 4 and 6 mL/h. Herein, the AI was calculated by averaging plateau values obtained at Q
l = 1 mL/h. Compared with the flow rate of
Qh = 4 mL/h, the AI exhibited lower values at Qh = 6 mL/h over the tested range of
T.
Second, although the condition of
T = 360 s and
Qh = 6 mL/h provided stable values for time constant and aggregation index, the 180 s delivery at
Qh = 6 mL/h resulted in considerable blood loss because measurement was not performed during the high flow rate interval. To minimize blood loss at
Qh = 6 mL/h, it was further necessary to determine the delivery duration at
Qh (
th). As shown in
Figure 5B, the contribution of
th to both time constant and AI was quantitatively examined under the flow rate condition (
Qh = 6 mL/h,
Ql = 1 mL/h). As shown in
Figure 5B-i, the effect of delivery duration at
Qh on both AI and time constant (
λ1) was quantitatively examined. The delivery duration of
Qh was set to
th = 30, 60, 90, and 120 s. The left panel showed time-resolved
Umc as a function of
th, where
tl denoted the delivery duration at
Ql. Except for the condition of
th = 30 s, the
Umc reached a plateau value during the high flow rate interval. The middle panel presented time-lapse AI with respect to
th. The results indicated that a longer
th contributed to increasing AI. The right panel exhibited variations of
λ1 as a function of
th. Unlike AI, the
λ1 did not show a substantial difference with respect to
th (
p-value = 0.45).
Based on the results, delivery duration at
Qh was set to
th = 60 s or longer. As show in
Figure 5B-ii, variations of
λ1 and AI were obtained at specific delivery condition (i.e.,
th = 60 s,
tl = 300 s, and
T = 360 s). The left panel showed time-resolved
Umc and AI. As a plateau interval at
Qh was short, the AI did not show a plateau value. However, the AI exhibited a plateau value at longer delivery duration at
Ql.
The middle panel showed variations of
λ1 during the first and second periods. For each period, measurement was repeated about
n = 3. The results showed that the
λ1 increased remarkedly after an elapsed period (
p-value = 0.002). The right panel presented variations of AI between the first and second periods. In contrast to
λ1, the AI decreased after an elapsed period, with marginal statistical significance (
p-value = 0.054). Because the
λ1 increased remarkedly at
th = 60 s, the delivery duration at Q
h was extended to
th = 120 s. The delivery duration at
Ql was then adjusted to
tl = 240 s (i.e.,
T = 360 s). As shown in
Figure 5B-iii,
λ1 and AI were measured under this optimized delivery condition (i.e.,
th = 120 s,
tl = 240 s). The left panel showed time-lapse
Umc and AI. Both
Umc and AI showed stable plateau values at Q
h and
Ql. The middle panel presented variations of
λ1 during the first and second periods. For each period, measurement was repeated about
n = 6. The results indicated that the
λ1 remained nearly constant after an elapsed period (
p-value = 0.598). The right panel showed variations of AI between the first and second periods. According to the results, AI showed a decreasing tendency after an elapsed period, the difference was not statistically significant (
p-value = 0.328).
From the experimental investigation, the pulsatile blood flow profile was optimized to reliably measure both the time constant (λ₁) and RBC aggregation index (AI) while reducing unnecessary blood consumption. The final condition was set to Qh = 6 mL/h, Ql = 1 mL/h, th = 120 s, and tl = 240 s. Under this delivery condition, Umc and AI reached stable plateau values, and λ₁ remained reproducible across repeated periods, confirming that the optimized profile could provide a robust condition for simultaneous assessment of transient blood flow response and RBC aggregation.
3.5. Contribution of Air Compliance to Time Constant
Because the air cavity secured inside the syringe acts as a compliance element [
42], it could dampen flow fluctuations while increasing the transient response time of the microfluidic system [
57,
62]. Consequently, the compliance-induced delay may affect the plateau value of AI by altering the time required to establish a stable low-shear condition for RBC aggregation measurement.
As shown in
Figure 6A, the effect of flow rate on time constant was examined by measuring
λ1 as a function of plateau flow rate. Instead of test blood, glycerin (
Cgl = 30%) was used as test fluid. Air cavity above glycerin inside the syringe was set to
Vair = 0.1 mL.
Fluid flow was abruptly stopped from a plateau value of
Qon = 1, 2, 4, and 6 mL/h. The left panel showed time-dependent
Umc as a function of
Qon. In middle panel, the
Umc was replotted from the onset of transient flow. The results showed that the
Umc decreased more slowly at higher flow rates. Based on single exponential model, the transient velocity was fitted using
for estimating the time constant (
λ1). The right panel exhibited variations of
λ1 with respect to
Qon. The
λ1 did not show substantial difference below
Qon = 4 mL/h. However, when Q
on increased from 4 mL/h to 6 mL/h, the
λ1 increased remarkedly (
p-value = 0.01). This trend for the glycerin solution was similar to that observed for control blood as shown in
Figure 3A-i.
As shown in
Figure 6B, time constant was evaluated as a function of glycerin concentration (
Cgl) during the first and second periods. Herein, glycerin solution was infused under the optimized pulsatile flow profile, and air cavity inside a syringe was fixed at
Vair = 0.1 mL. The left panel showed time-lapse
Umc as a function of
Cgl = 10% ~ 50%. Herein,
λ1-T1 and
λ1-T2 denoted time constants obtained during the first and second periods, respectively. The middle panel presented variations of
λ1-T1 and
λ1-T2/
λ1-T1 with respect to
Cgl. The
λ1-T1 increased significantly with increasing
Cgl (
p-value = 0.001). In contrast,
λ1-T2/
λ1-T1 did not show significant dependence on C
gl (
p-value = 0.316), indicating that the time constant remained consistent between two periods. To examine the correlation between time constant (
λ1-T1) and viscosity (
μgl) [
63],
λ1-T1 was plotted against
μgl in the right panel. Linear regression analysis showed a strong proportional relationship between the time constant and viscosity, expressed as
λ1-T1 = 1.7123
μgl + 5.768 (R
2 = 0.9703, and
p-value = 0.002). The results indicated that the time constant could be effectively used to monitor viscosity variations.
As 6. C, time constants for glycerin and control blood were measured as a function of air cavity (
Vair). Both fluids were infused under the optimized flow profile. The air cavity inside the syringe was set to
Vair = 0, 0.1, and 0.2 mL.
Figure 6C-i depicted the time constant for glycerin (
Cgl = 30%) as a function of
Vair. The left panel presented time-lapse
Umc with respect to
Vair. By analyzing transient flow response during the first and second periods, two time constants (
λ1-T1,
λ1-T2) were calculated for each period.
The middle panel exhibited variations of
λ1-T1 with respect to
Vair. As expected, the
λ1-T1 increased remarkedly with respect to
Vair (
p-value < 0.001), confirming the strong influence of air compliance on the transient flow response. The right panel presented variations of
λ1-T2/
λ1-T1 with respect to
Vair. From the results, the ratio did not show significant dependence on
Vair (
p-value = 0.597), indicating that the time constant remained consistent between the two periods. As shown in
Figure 6C-ii, the time constant for test blood (normal RBCs into 1× PBS,
ϕvol = 0.5) was measured as a function of
Vair. The left panel showed time-lapse
Umc with respect to
Vair. The middle panel exhibited variations of
λ1-T1 with respect to
Vair. The
λ1-T1 increased significantly with increasing air cavity (
p-value < 0.001). The right panel showed variations of
λ1-T2/
λ1-T1 with respect to
Vair. The results indicated that the ratio did not show significant difference with respect to Vair (
p-value = 0.157), suggesting that the time constant remained reproducible between the two periods.
From the experimental investigation, the air cavity (Vair) significantly increased the time constant (λ1-T1) in both glycerin solution and control blood, confirming that syringe air compliance strongly delayed the transient flow response. However, the λ1-T2/λ1-T1 remained nearly unchanged with respect to Vair, indicating good reproducibility between repeated periods.
3.6. Monitoring Variation in Blood During Continuous Blood Infusion
Because RBC aggregation accelerates sedimentation in syringe [
27,
56,
61,
64,
65], hematocrit of delivered blood could vary continuously during blood infusion. As the final demonstration, the proposed method was applied to detect these changes in supplied blood by simultaneously monitoring two parameters, including time constant and RBC aggregation index. Herein, for consistent measurement, air cavity inside the syringe was fixed at
Vair = 0.1 mL. Test blood (normal RBCs into dextran solution) was then infused into a microfluidic device under the optimized pulsatile flow profile.
First, as shown in
Figure 7A, to examine the effect of hematocrit on both time constant and RBC aggregation index, time constant (λ
1) and AI were measured by varying hematocrit (
ϕvol). Herein, hematocrit of test blood was adjusted to
ϕvol = 0.2, 0.3, 0.4, 0.5, and 0.6 by suspending normal RBCs into a dextran solution of
Cdex = 1%.
Figure 7A-i showed variations of time constant as a function of hematocrit during the first and second periods. The first panel presented time-lapse
Umc as a function of
ϕvol = 0.2 ~ 0.6. Herein,
λ1-T1 and
λ1-T2 were obtained by analyzing transient flow response during the first and second periods. The second panel depicted snapshots of the syringe captured at the completion of blood delivery. From the results, RBC-depleted layer increased significantly at lower hematocrit. At
ϕvol = 0.6, RBC-depleted layer was not detected clearly. The third panel exhibited variations of
λ1-T1 as a function of
ϕvol. For each hematocrit, the measurement was repeated three times (
n = 3). As expected, hematocrit contributed to significantly increasing
λ1-T1 (
p-value < 0.001), which was consistent with previous hemorheological studies showing that hematocrit was a major determinant of whole-blood viscosity and flow resistance [
66,
67,
68]. Therefore, a higher hematocrit could prolong the transient flow response in a compliant microfluidic system. The last panel showed variations of
λ1-T2/
λ1-T1 with respect to
ϕvol. The ratio did not show substantial dependence on hematocrit (
p-value = 0.287), indicating that time constant remained consistent between two periods. As shown in
Figure 7A-ii, RBC aggregation index (AI) was measured as a function of hematocrit during the first and second periods. The left panel showed time-dependent AI as a function of
ϕvol. Herein, AI
1 and AI
2 were determined by averaging the plateau values at
Ql during the first and second periods, respectively. The middle panel represented variations of AI
1 with respect to
ϕvol. The AI
1 decreased remarkedly with increasing hematocrit (
p-value < 0.001). The right panel depicted variations of AI
2/AI
1 as a function of
ϕvol. The ratio increased significantly up to
ϕvol = 0.4 (
p-value < 0.001), whereas no substantial difference was observed from
ϕvol = 0.4 to
ϕvol = 0.6. From the results, RBC sedimentation occurred during blood delivery and significantly reduced AI, particularly at lower hematocrit (
ϕvol = 0.2 ~ 0.4).
Second, to examine the contribution of dextran concentration to time constant and AI, as shown in
Figure 7B, time constant and AI were probed as a function of dextran concentration. Herein, test blood (
ϕvol = 0.5) was prepared by adding normal RBCs into dextran solution (
Cdex = 1% ~ 4%).
Figure 7B-i presented variations of time constant as a function of dextran concentration during the first and second periods. The first panel showed time-lapse
Umc as a function of
Cdex. The second panel depicted snapshots of the syringe captured at the completion of blood delivery. At
Cdex = 1%, RBC-depleted layer was much smaller than those observed at higher concentration of dextran solution (
Cdex = 2% ~ 4%). The third panel exhibited variations of
λ1-T1 as a function of
Cdex. The results indicated the dextran concentration significantly increased the time constant (
p-value < 0.001). The last panel showed variations of
λ1-T2/
λ1-T1 with respect to
Cdex. Although the ratio tended to decrease from
Cdex = 2% to
Cdex = 4%, the change was not statistically significant (
p-value = 0.497).
Figure 7B-ii exhibited variations of AI as a function of dextran concentration during the first and second periods. The left panel showed time-dependent AI as a function of
Cdex. The results indicated that the AI increased remarkedly at higher concentration of dextran solution. The middle panel represented variations of AI
1 with respect to
Cdex. The AI
1 increased significantly with increasing dextran concentration (
p-value < 0.001). The right panel depicted variations of AI
2/AI
1 as a function of
Cdex. The ratio showed a significant dependence on dextran concentration (
p-value < 0.048), indicating that the AI varied substantially between the two periods.
From the experimental investigation, the proposed method enabled effective monitoring of time-dependent changes in blood properties during continuous infusion. By simultaneously measuring the time constant (λ₁) and RBC aggregation index (AI), the method detected infusion-induced variations in the delivered blood. Specifically, λ₁ reflected changes in flow resistance and viscosity-related properties, whereas AI quantified variations in RBC aggregation. These results demonstrated that the proposed approach could provide a practical and sensitive platform for real-time assessment of blood property changes during continuous delivery.
The proposed method has several limitations for practical applications. First, it was validated mainly under controlled laboratory conditions using prepared blood samples with defined hematocrit and dextran concentration. Second, the current platform still depends on external syringe-pump control, which may limit its immediate clinical translation. Further validation using fresh clinical blood samples and integration with a portable fluid-delivery system will be necessary to improve its robustness and practical applicability.