Abstract
Accurate prediction of human pharmacokinetics using in vitro tools is an important task during drug development. Albeit, currently used in vitro systems for clearance extrapolation such as microsomes and primary human hepatocytes in suspension culture show reproducible turnover, the utility of these systems is limited by a rapid decline of activity of drug metabolizing enzymes. In this study, a multi-well array culture of primary human hepatocyte spheroids was compared to suspension and single spheroid cultures from the same donor. Multi-well spheroids remained viable and functional over the incubation time of 3 days, showing physiological excretion of albumin and α-AGP. Their metabolic activity was similar compared to suspension and single spheroid cultures. This physiological activity, the high cell concentration, and the prolonged incubation time resulted in significant turnover of all tested low clearance compounds (n = 8). In stark contrast, only one or none of the compounds showed significant turnover when single spheroid or suspension cultures were used. Using multi-well spheroids and a regression offset approach (log(CLint) = 1.1 × + 0.85), clearance was predicted within 3-fold for 93% (13/14) of the tested compounds. Thus, multi-well spheroids represent a novel and valuable addition to the ADME in vitro tool kit for the determination of low clearance and overall clearance prediction.
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INTRODUCTION
High-throughput ADME screening and improved in silico tools have facilitated the identification of an increasing number of compounds with low intrinsic clearance (CLint) in drug discovery (1). However, predicting the clearance of slowly metabolized compounds is frequently challenging as microsomes show rapidly declining activity limiting incubation times to less than 1 h. Functionality of primary human hepatocytes (PHH) in suspension culture is slightly more stable and activity of drug metabolizing enzymes declines within few hours (2,3,4). Cell lines like HepG2 and HepaRG cells and induced pluripotent stem cell (iPSC)-derived hepatocyte-like are viable for extended periods and have therefore been tested as an alternative for CLint determinations. Drug metabolizing enzymes in HepG2 and iPSC-derived hepatocyte-like cells have been shown to be less active compared to suspension cultures and are therefore not suitable for low clearance determinations (5). Although HepaRG cells have been shown to be similarly active as suspension cultured PHH, measured CLint values were lower (5, 6). Therefore, alternative culture methods like repeated suspension cultures (relay method) and more advanced cell culture models using PHH have been suggested to determine low CLint compounds (7,8,9,10). For the relay method, whole supernatant from suspension cultures is collected and re-incubated with fresh suspension cultures thereby extending the total incubation time. This method is however relatively laborious and technically challenging. Advanced cell culture models, such as micropatterned co-cultures (MPCC) and liver spheroids, provide alternate means to extend the incubation time as hepatocytes viability and function is preserved. These methods are less laborious and easier to perform compared to the relay method and are therefore more widely used. Kratochwil et al. reported predicted clearance within 2-fold of in vivo clearance for the majority of nine low clearance compounds when using MPCCs (5). In contrast, CLint for only 2 out of 5 low clearance compounds were predicted within 3-fold using static 2D co-cultures of PHH and stromal cells (6). In another study by Hultman et al., 50% (7/14) of the low clearance compounds were predicted within 2-fold when 2D co-cultures were used (11).
Liver spheroid cultures retain their physiological transcriptomic, proteomic, and metabolomic signatures and remain metabolic active for multiple weeks (12, 13). These cultures have been successfully used for toxicology studies and modeling of human liver diseases (14). Furthermore, their physiologically relevant phenotype has rendered interest for their use in drug metabolism and pharmacokinetic studies (15). Due to their functional stability, human liver spheroids allow for long incubation times. Their use for low clearance compounds has however been limited by low cell concentrations required in these cultures (16, 17).
Here, we present PHH spheroids in multi-well arrays in which up to 80 spheroids can be cultured per well as spatially separated, fully functional units, thus achieving high cell concentrations while maintaining activity of drug metabolizing enzymes for extended periods of time. We compared critical endpoints such as detection limit and extrapolation to in vivo clearance of PHH spheroid cultures in multi-well arrays to isogenic single spheroid and suspension cultures from the same donor, using eight low clearance and six intermediate to high clearance compounds with different metabolic routes.
MATERIALS AND METHODS
Materials
William’s E medium, l-glutamine-penicillin-streptomycin solution, midazolam, 1’OH-midazolam, 4’OH-diclofenac, dextrorphan, dextromethorphan, amodiaquine, N-desethyl-amodiaquine, dexamethasone, 7’OH-coumarin, 7’OH-coumarin glucuronide, Trypan blue, and acetonitrile were purchased from Sigma-Aldrich (St. Louis, MO, USA). Elplasia 96-well round bottom ultra-low attachment (ULA) plates, 96-well clear round bottom ULA plates, and 96-well white round bottom polystyrene microplates were purchased from Corning (Glendale, AZ, USA). Fetal bovine serum was obtained from Cytiva (Marlborough, MA, USA). The CellTiter-Glo Luminescent Cell Viability kit was purchased from Promega (Madison, WI, USA). Insulin-transferrin-selenium solution and rapid equilibrium dialysis plates were obtained from Thermo Fisher Scientific (Waltham, MA, USA). Cryopreserved primary human hepatocytes (Lot HJK), INVITROGRO Krebs-Henseleit Buffer, INVITROGRO HT medium, INVITROGRO CP medium, and TORPEDO antibiotic mix were purchased from BioreclamationIVT (NY, USA). Acetaminophen, phenacetin, diclofenac, theophylline, metoprolol, etodolac, ondansetron, ketoprofen, tolbutamide, warfarin, lorazepam, chlorpromazine, propranolol, nifedipine, verapamil, metoprolol, naloxone, and glipizide were provided by the compound management department of Merck KGaA (Darmstadt, Germany).
Cell Culture
All experiments were performed using cryopreserved PHH from a single donor (lot HJK; BioreclamationIVT). Specific donor information can be found in Supplemental Table 1. For suspension culture, PHH were thawed, and incubations were performed with a total number of 0.5 million cells in 100 μL of Krebs-Henseleit buffer (pH 7.4) as previously reported (18). Compound concentration of 1 μM was used and plates were gently agitated during the incubation.
Single spheroid cultures were formed as previously described (12). In short, PHH were thawed and seeded in 96-well ULA plates at densities of 1500 cells/well. Subsequently, spheroids were cultured in PHH medium (William’s E medium supplemented with 2 mM l-glutamine, 100 units/mL penicillin, 100 μg/mL streptomycin, 10 μg/mL insulin, 5.5 μg/mL transferrin, 6.7 ng/mL sodium selenite, and 100 nM dexamethasone) supplemented with 10% fetal bovine serum (FBS). After 5 days, the formed spheroids were shifted to serum-free PHH medium. On day 7, incubation with test compounds at a concentration of 1 μM was started in 100 μL of serum-free PHH medium.
For multi-well spheroid cultures, plates with ~ 80 microwells per macrowell were prewetted with 50 μL PHH medium supplemented with 10% FBS. Subsequently, PHH were seeded in 100 μL medium at a density of 40,000 cells per macrowell, resulting in an average cell number of 500 cells per spheroid. As with single spheroids cultures, formed spheroids were shifted to serum-free PHH medium after 5 days and incubation with 1 μM of test compound was initiated on day 7 in 150 μL of serum-free PHH medium.
Probe substrates for metabolic activity measurements were incubated in a cocktail (Table I). UGT activity was measured by incubation 100μM of substrate 7’OH-coumarin. All incubations were carried out in duplicate at 37°C, 5% CO2 and 100% humidity.
Viability, Albumin, and α-AGP Measurements
Cell viability was assessed by quantification of intracellular ATP levels using the CellTiter-Glo Luminescent Cell Viability Assay (Promega) at different timepoints as indicated. Spheroids from one macrowell were transferred in 50 μL medium to the measurement plate, mixed 1:1 with ATP reagent and the solution was agitated at 450 rpm for 30 min at room temperature before luminescence was measured. Human albumin and α1-acid glycoprotein (α-AGP) ELISA kits were purchased from Abcam (Cambridge, UK) and measurements were conducted according to the manufacturer’s instructions.
LC-MS/MS Analysis
Samples were taken at different time points and stopped with double the volume of ice-cold acetonitrile containing 3 μM of the internal standard pruvanserin. Samples were kept at – 80 °C until further use. The plates were centrifuged for 30 min at 3500 g at 4 °C and samples were diluted 1:10 with 66% acetonitrile before LC-MS/MS analysis.
LC-MS/MS analysis was performed with an AB Sciex API 6500+ triple quadrupole (AB Sciex LLC, MA, USA) coupled with a Waters Acquity I-Class UPLC (Waters Corporation, MA, USA). The software Analyst v1.7 (AB Sciex LLC) was used for control. An Acquity UPLC BEH C18 1.7 μm, 2.1 mm × 50 mm column (AB Sciex LLC) was used. Mobile phase A was 70 mM ammonium formate buffer containing 0.1% (v/v) formic acid and B was acetonitrile. Aliquots (4 μL) of the centrifuged samples were injected. The gradient conditions were the following: 0–0.1 min 0% B, 0.1–0.8 min 0–100% B, 0.8–1.0 min 100% B, 1.0–1.4 min 0% B. The flow rate was 0.8 mL/min and data collection occurred between 0.3 and 1.4 min. Electrospray ionization in positive or negative mode with multiple reaction monitoring was used. The parameter settings are summarized in Supplemental Table 2. The formation rate of the respective metabolites was calculated and corrected for cell concentration. To compare cytochrome P450 (CYP) activity measurements, a one-way ANOVA followed by a Tukey-Kramer test was performed.
Determination of Fraction Unbound in Plasma
The unbound fraction in plasma (fup) was determined by equilibrium dialysis in the RED device (Thermo Fisher Scientific) using concentrations of 1 μM. Human plasma was dialyzed against phosphate buffer at pH 7.4 for 4 h. After equilibration at 37 °C, the compound concentration was measured using LC-MS/MS. The fup was determined by dividing the drug concentration in the dialysate by the concentration in the plasma. To determine the fraction unbound in blood (fub), the obtained fup was divided by the blood-to-plasma ratio (Rb) which was obtained from literature (Table II).
Data Analysis
An overview of all steps of the in vitro in vivo extrapolation is shown in Supplemental Fig. 1.
In vitro CLint values were calculated from parent compound loss using Eq. 1:
where ke is the elimination rate constant representing the slope of the linear regression of the natural logarithm of the percentage remaining parent compound versus incubation time. Deviation of the slope from 0 was tested using a F test followed by a Bonferroni-Dunn correction. In cases, where the slope was not significantly different from zero, an estimated CLint was determined, using the slope calculated. From the In vitro CLint the scaled In vivo CLint was calculated by taking physiological scaling factors (25.7 g liver/kg body weight, 120 × 106cells/g liver), fraction unbound in the incubation (fuinc), and fub into account (Table II, Eq. 2).
The fuinc was calculated from measured binding in human hepatocytes in suspension and corrected for cell density according to Eq. 3 (19).
For in vivo CLint predictions (In vivo CLint,pred), a regression line correction was used as described previously (20), using all values obtained, including estimated CLint values for the suspension and single spheroid cultures.
In order to compare the prediction accuracy of CLint for intermediate to high clearance compounds, a leave one out cross-validation (LOOCV) was performed for each system. Here, all compounds but one were used as a training set, resulting in a specific regression correction factor. With this factor, the CLint value of the left-out compound was corrected. This procedure was repeated for each compound and the resulting absolute fold error was calculated.
Using the well-stirred model (WSM) and the In vivo CLint,pred, the predicted In vivo clearance (CLb, pred) was determined (Eq.4) with Qh being the liver blood flow (20 mL/min/kg).
The observed In vivo clearance (In vivo CLb, obs) was obtained from the In vivo plasma clearance (In vivo CLpl, obs) as described in Eq. 5.
The observed In vivo CLint (In vivo CLint, obs) was derived from the In vivo CLb, obs using the WSM (Eq. 6).
The prediction accuracy for In vivo CLb was calculated using the absolute average fold error (AAFE) according to Eq. 7, where N represents the number of compounds.
The incubation factor of different in vitro models was calculated as shown in Eq. 8.
RESULTS
Spheroids formed in micro-well arrays resulted in approximately 80 spatially separated spheroids of homogeneous size (500 PHH per spheroid) per macrowell. The kinetics of spheroids formation were similar to those in conventional single spheroid culture, taking around 6 days for the aggregation of the seeded cell suspension into spheroids with well-defined perimeters and stable morphology (Fig. 1a). Notably, viability and hepatocyte functionality as indicated by ATP measurements and albumin and α-AGP secretion, remained stable over the experimental time (Fig. 1b–d). Albumin and α-AGP secretion per cell and hour were comparable between multi-well spheroids and single spheroids (Fig. 1c, d). Furthermore, suspension, single spheroid, and multi-well spheroid cultures showed similar metabolic activity. CYP3A4 and CYP1A2 trended (not statistically significant) toward higher activities in both spheroid systems compared to isogenic suspension cultures. Tendencies were inverted for CYP2C9 with significant differences between suspension and single spheroid or multi-well cultures (adj. p = 0.03 and 0.04, respectively; Fig. 2). CYP2D6 activity was slightly reduced in single spheroids but not in multi-well spheroids compared to suspension cultures (adj. p = 0.02). For uridine 5′-diphospho-glucuronosyltransferases (UGT) the activity was similar between the different systems (Fig. 2).
To compare the utility of the different systems for low CLint measurements, we next measured the clearance of eight slowly metabolized compounds (Fig. 3). For suspension cultures, significant turnover could not be measured for any of these compounds. However, four out of eight compounds showed a negative slope, which allowed estimation of CLint. In single spheroids, significant turnover was observed for lorazepam only (CLint = 4.3 μL/min/106 cells; adj. p = 0.0018) but the resulting in vivo CLint,pred exceeded the human in vivo CLint,obs by 9-fold (Table III) and CLb, obs by 7-fold (Table IV). Three additional compounds (etodolac, ondansetron, and tolbutamide) allowed CLint estimation, while the remaining four compounds were not cleared. In stark contrast, spheroids in multi-well arrays resulted in significant (adj. p < 0.05) turnover of all eight tested low clearance compounds with the lowest measured CLint being 0.53 μL/min/106cells for theophylline (Fig. 3). A comparison of the incubation factor of the three tested systems revealed a more than ten times higher incubation factor for the multi-well system compared to the single spheroid or suspension cultures. The single spheroid cultures had an approximately two times higher incubation factor compared to suspension cultures (Table V).
Next, the accuracy of all systems for predicting intrinsic clearance was assessed. Direct scaling resulted in underprediction of most of the high clearance compounds in all systems. This systematic underprediction was corrected using a linear regression based on all available CLint values for each system including those CLint values that could only be estimated. The accuracy of CLint prediction for the high CLint compounds, defined as in vivo CLint,obs higher than 10mL/min/kg, was similar for all tested culture systems, whereas for low CLint compounds, the multi-well spheroids performed the best (Table III). Since for most of the low clearance compounds, only an estimated CLint value or no value could be determined in suspension and single spheroids, a set of six intermediate to high clearance compounds and a LOOCV was used to further compare the prediction accuracy of the different cultures. The resulting absolute fold errors for these compounds were similar between all culture systems (Fig. 4).
Further, the predictions of CLb using the different systems where compared (Table IV). The CLb prediction of rapidly metabolized compounds was similar for all systems. Using the suspension culture and single spheroids, only the clearance of nifedipine was underpredicted by more than 3-fold. Additionally, the clearance of metoprolol could not be determined using single spheroids. The CLb of all high CLint compounds were predicted within 3-fold when using the multi-well system.
For the low CLint compounds, the CLb,obs was overpredicted for two out of four compounds when suspension or single spheroids were used. Overall, CLb predictions using the multi-well system were within 2-fold and 3-fold for 86% (12/14) and 93% (13/14) of all tested compounds, respectively. Two compounds were predicted outside 2-fold: the neutral compound theophylline was overpredicted by 3.7-fold and the basic compound chlorpromazine was underpredicted by 2.04-fold. This resulted in an AAFE of 1.24 (Fig. 5, Table IV). Hence, the multi-well system allowed quantitatively accurate predictions of human in vivo CLb over two orders of magnitude.
DISCUSSION
Clinical drug candidates with a low metabolic turnover have become increasingly common in drug discovery. Low clearance is a desired property as it extends half-life and overall free exposure, allowing for prolonged target engagement and ultimately lower human doses. However, the in vitro quantification of slow metabolic hepatic drug turnover is challenging. The current gold standard method, hepatocyte suspension culture, shows a rapid loss of CYP activity, which limits the incubation time to a few hours (2). More phenotypically stable culture methods, such as spheroids and MPCCs, allow for extended incubation times but have, in comparison to suspension cultures, relatively low cell-to-medium volume ratios which curtails their performance (Table V). Pooling of spheroids has been suggested to increase the cell-to-media ratio (17). However, Riede et al. reported rapid fusing upon pooling, which was paralleled by a loss of phenotype (16).Thus, in accordance with this study, while conventional PHH spheroids remain metabolically active for several days, the cell-to-media ratio is insufficient for CLint determination of low clearance compounds. Similar limitations apply to MPCCs. Longer incubations may partially compensate for the low hepatocyte concentration. Incubation times exceeding 1 week are however likely to be associated with practical challenges such as evaporation, nutrient depletion, and chemical instability of the compounds. Clearance quantifications of MPCC have not been directly compared to multi-well spheroids in side-by-side experiments. However, given their ~ 5-fold lower incubation factor, it can be expected that MPCC will show a higher fraction of low clearance compounds with non-significant turnover. A similar incubation factor as in multi-well cultures can be achieved by using conventional 2D co-cultures but especially the activity of CYP enzymes has been reported to be lower compared to suspension cultures (5). However, Hultman et al. reported similar CLint values for seven intermediate to high clearance compounds for suspension and co-cultures (11). Hence, a comparison of the activity of drug metabolizing enzymes using donor matched cultures appears to be required to draw further conclusions.
As hepatocyte cultures from different donors differ metabolic activity, all three systems were tested using cells from the same donor to allow direct comparison. However, in order to reflect inter-donor variability in metabolic activity or to assess population averages, measurements with several donors are needed. This can be accomplished by using individual donor replicates or by using pooled donor lots for spheroids formation; however, the latter requires suitable lots for spheroid formation and monitoring of hepatocyte integration from all donors. Besides this shortcoming, multi-well spheroids address several limitations of the other systems discussed above. Firstly, spheroids remained spatially separated, avoiding fusion and dedifferentiation. Spheroids in the multi-well system consist of approximately 500 cells, whereas 1500 cells were used for single spheroid cultures. Previous work by us and others indicated that cell number had, if at all, only marginal impacts on cellular function and metabolic activity (12, 21). Furthermore, it was shown that per-cell uptake and metabolism even of polar molecules, such as glucose does not differ between spheroid sizes of 500 to 1500 cells (22). However, as uptake mechanisms differ between compounds, effects of spheroid size on drug disposition and metabolism remain to be determined. Secondly, albumin and α-AGP secretion remained constant and were similar to single spheroids. Importantly, the secretion of multi-well spheroids was comparable to in vivo rates, demonstrating their phenotypic stability (23, 24). Further, the cell-to-media ratio was higher than in other systems with unambiguous stable phenotypic expression of drug metabolizing enzymes.
Importantly, spheroids in multi-well arrays enabled accurate quantification of turnover of all tested compounds, including those with low, intermediate, and high clearance. In line with previous reports, all systems underpredicted the in vivo CLint when scaled without correction (20, 25, 26). The underlying root cause of this underestimation, which appears to be present regardless of the in vitro system used, is currently a subject to debate (10, 27). Several methods have been suggested to address the systematic underestimation (28,29,30). In the current study, we used the purely empirical regression offset approach similar to other reports focused on low clearance compounds (6, 17). This resulted in a prediction within 3-fold for 60%, 56%, and 71% of the measurable compounds for suspension, single spheroid, and multi-well cultures, respectively. A prediction within 2-fold was obtained for 50%, 22%, and 43% of the compounds for suspension, single spheroid, and multi-well cultures, respectively. Using the relay method and direct scaling, intrinsic clearance could be predicted within 2-fold for 64% and within 3-fold for 82% of the in total eleven tested compounds (4, 31). In 2D co-cultures, intrinsic clearance was predicted within 3-fold or 2-fold for 70% and 45% of 20 tested compounds, respectively (11). Hence, the prediction accuracy of CLint using multi-well cultures was similar compared to other culture systems previously used for low clearance compounds.
The extrapolated CLb was predicted within 2-fold and 3-fold for 86% and 93% of the tested compounds, respectively when using multi-well cultures. The AAFE was 1.24. Similar accuracies have been reported using suspension hepatocytes using a regression correction (20, 26, 32). Also with MPCCs, CLb was predicted within 2-fold for 70% and within 3-fold for 100% of the 10 tested low clearance drugs (33), while single spheroids achieved CLb predictions within 3-fold for 86% of seven tested compounds with an AAFE of 1.74 (16).
Hence, multi-well spheroids present a novel in vitro tool for measurements and CLb prediction and present an alternative method for clearance predictions with particular utility for slowly metabolized compounds.
Conclusion
Multi-well spheroids showed a similar metabolic activity as single spheroids and suspension cultures. This system was successfully used for long-term intrinsic clearance studies of slowly metabolized compounds. The high cell concentration combined with the stable metabolic activity over a long incubation time resulted in superior detection of CLint compared to suspension and single spheroid cultures. Prediction of in vivo CLb resulted in overall good accuracy. Thus, multi-well spheroids present a novel and valuable addition to the ADME in vitro tool kit.
Abbreviations
- α-AGP:
-
α1-acid glycoprotein
- AAFE:
-
Absolute average fold error
- ADME:
-
Absorption, distribution, metabolism, excretion
- CLint :
-
Intrinsic clearance
- CLint,obs :
-
Observed intrinsic clearance
- CLint,pred :
-
Predicted intrinsic clearance
- CLb :
-
In vivo clearance
- CLb,obs :
-
Observed in vivo clearance
- CLb,pred :
-
Predicted in vivo clearance
- CYP:
-
Cytochrome P450
- FBS:
-
Fetal bovine serum
- fub :
-
Fraction unbound in blood
- fuinc :
-
Fraction unbound in the incubation
- fup :
-
Fraction unbound in plasma
- IVIVE:
-
In vitro-in vivo extrapolation
- LOOCV:
-
Leave one out cross-validation
- MPCCs:
-
Micropattern co-cultures
- PHH:
-
Primary human hepatocytes
- pl:
-
Plasma
- Qh :
-
Liver blood flow
- Rb :
-
Blood-to-plasma ration
- UGT:
-
Uridine 5'-diphospho-glucuronosyltransferase
- ULA:
-
Ultra-low attachment
- WSM:
-
Well-stirred model
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This study received financial support from the healthcare business of Merck KGaA (Darmstadt, Germany).
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Participated in research design: Georgi, Lauschke, Petersson and Preiss. Conducted experiments: Preiss. Performed data analysis: Preiss. Interpretation of data: Lauschke, Petersson, and Preiss. Wrote or contributed to the writing of the manuscript: Georgi, Lauschke, Petersson, and Preiss.
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Katrin Georgi, Lena C. Preiss, and Carl Petersson were employed by the healthcare business of Merck KGaA (Darmstadt, Germany) when this study was conducted. Volker M. Lauschke is co-founder, CEO, and shareholder of HepaPredict AB, and co-founder and shareholder PersoMedix AB. In addition, Volker M. Lauschke discloses consultancy work for EnginZyme AB. The authors have no relevant additional financial interests.
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Preiss, L.C., Lauschke, V.M., Georgi, K. et al. Multi-Well Array Culture of Primary Human Hepatocyte Spheroids for Clearance Extrapolation of Slowly Metabolized Compounds. AAPS J 24, 41 (2022). https://doi.org/10.1208/s12248-022-00689-y
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DOI: https://doi.org/10.1208/s12248-022-00689-y