Li Gaoab,
Zifei Qin*ab,
Beibei Zhangab,
Zhao Yinab,
Xiaojian Zhangab and
Jing Yang*ab
aDepartment of Pharmacy, The First Affiliated Hospital of Zhengzhou University, Zhengzhou 450052, China. E-mail: qzf1989@163.com
bHenan Key Laboratory of Precision Clinical Pharmacy, Zhengzhou University, Zhengzhou 450052, China. E-mail: jingyang_0101@163.com
First published on 5th March 2020
PI-103 is a phosphatidylinositol 3-kinase inhibitor that includes multiple receptor affinity modifications, and it is also a therapeutic drug candidate primarily for human malignant tumors. However, its metabolic fate and potential drug–drug interactions involving human cytochrome P450 (CYP) and UDP-glucuronosyltransferases (UGT) enzymes remain unknown. In this study, our results demonstrated that the intrinsic clearance (CLint) values of oxidated metabolite (M1) in human liver microsomes (HLM) and human intestine microsomes (HIM) were 3.10 and 0.08 μL min−1 mg−1, respectively, while PI-103 underwent efficient glucuronidation with CLint values of 15.59 and 211.04 μL min−1 mg−1 for mono-glucuronide (M2) by HLM and HIM, respectively. Additionally, reaction phenotyping results indicated that CYP1A1 (51.50 μL min−1 mg−1), 1A2 (46.96 μL min−1 mg−1), and UGT1A1 (18.80 μL min−1 mg−1), 1A7 (8.52 μL min−1 mg−1), 1A8 (8.38 μL min−1 mg−1), 1A9 (34.62 μL min−1 mg−1), 1A10 (107.01 μL min−1 mg−1) were the most important contributors for the oxidation and glucuronidation of PI-103. Chemical inhibition assays also suggest that CYP1A2 and UGT1A1, 1A9 play a predominant role in the metabolism of PI-103 in HLM. Significant activity correlations were detected between phenacetin-N-deacetylation and M1 (r = 0.760, p = 0.004) as well as β-estradiol-3-O-glucuronide and M2 (r = 0.589, p = 0.044), and propofol-O-glucuronidation and M2 (r = 0.717, p = 0.009). Furthermore, the metabolism of PI-103 revealed marked species differences, and dogs, rats, mice and mini-pigs were not the appropriate animal models. Gene silencing of breast cancer resistance protein (BCRP) or multidrug resistance-associated protein (MRPs) transporter results indicated that M2 was mainly excreted by BCRP, MRP1 and MRP4 transporters. Moreover, PI-103 displayed broad-spectrum inhibition towards human CYPs and UGTs isozymes with IC50 values ranging from 0.33 to 6.89 μM. Among them, PI-103 showed potent non-competitive inhibitory effects against CYP1A2, 2C19, 2E1 with IC50 and Ki values of less than 1 μM. In addition, PI-103 exhibited moderate non-competitive inhibition against UGT1A7, 2B7, and moderate mixed-type inhibition towards CYP2B6, 2C9 and UGT1A3. Their IC50 and Ki values were 1.16–6.89 and 0.56–5.64 μM, respectively. In contrast, PI-103 could activate the activity of UGT1A4 in a mechanistic two-site model with a Ki value of 13.76 μM. Taken together, PI-103 was subjected to significant hepatic and intestinal metabolism. CYP1A1, 1A2 and UGT1A1, 1A7, 1A8, 1A9, 1A10 were the main contributing isozymes, whereas BCRP, MRP1 and MRP4 contributed most to the efflux excretion of M2. Meanwhile, PI-103 had a potent and broad-spectrum inhibitory effect against human CYPs and UGTs isozymes. These findings could improve understanding of the metabolic fates and efflux transport of PI-103. The inhibited human CYP and UGT activities could trigger harmful DDIs when PI-103 is co-administered with clinical drugs primarily cleared by these CYPs or UGTs isoforms. Additional in vivo studies are required to evaluate the clinical significance of the data presented herein.
PI-103, as a potent PI3K inhibitor, inhibited human cancer cell lines with IC50 values of 8, 88, 48 and 150 nM for p110α, p110β, p110δ and p110γ, respectively.5 Furthermore, PI-103 could also inhibit the target of DNA-PK (IC50 = 2 nM).5 In addition, PI-103 inhibits the leukemic proliferation, clonogenicity of leukemic progenitors, and induce mitochondrial apoptosis, especially in the compartment containing leukemic stem cells.6 Furthermore, the rational combination of PI-103 and other chemotherapeutic drugs or radiotherapy show particular promise for inhibiting the growth of cancer cells and tumor in animals.7,8 Importantly, PI-103 produces little toxicity in mice,9 and has little impact on normal hematopoietic progenitors.6 Despite the increasing understanding of the pharmacological properties of PI-103, we know nothing about the metabolic fate, efflux transport and potential drug–drug interactions (DDI) involving human drug-metabolizing enzymes (DMEs), mainly cytochrome P450s (CYPs) and UDP-glucuronosyltransferases (UGTs).
Traditionally, the metabolic studies in vitro are an essential component of the clinical development of a drug candidate because they relate preclinical studies to patient treatment. Additionally, human CYPs and UGTs are primarily responsible for the elimination and detoxification of xenobiotics (e.g., clinical drugs, carcinogens, pollutants) and maintaining the balance of endogenous substances (e.g., bilirubin, estrogens, bile acids).10–12 Inhibition of human CYP or UGT functions can not only trigger potentially adverse clinical DDIs, but could also result in metabolic disorders for endogenous molecules.13–15 Considering the potential co-administration of PI-103 with other chemotherapeutic drugs, it is crucial to evaluate the potential risks of DDI in clinics.
For these goals, this study was first conducted to characterize the metabolic fates of PI-103 in HLM and HIM by ultra-high-performance liquid chromatography coupled to quadrupole time-of-flight tandem mass spectrometry (UHPLC/Q-TOF-MS) and ultra-high-performance liquid chromatography coupled with triple quadrupole tandem mass spectrometry (UHPLC/TQD-MS). Second, the in vitro metabolism involving human CYPs and UGTs was investigated. Third, a previously established UGT1A1-overexpressing HeLa cell model was applied to investigate the active function of efflux transporters, mainly including breast cancer resistance protein (BCRP) and multidrug resistance-associated proteins (MRPs) for the glucuronide. Finally, several widely recognized probe substrates of human CYPs and UGTs were selected to evaluate the potential DDI. Taken together, this study presents the preclinical metabolic fates and potential DDI of PI-103. These collective results may facilitate the design of appropriate clinical regimens for evaluating this drug candidate in phase I clinical trials.
Alamethicin, D-saccharic-1,4-lactone, magnesium chloride (MgCl2), nicotinamide adenine dinucleotide phosphate (NADPH), and uridine 5′-diphospho-glucuronosyltransferase (UDPGA) were all obtained from Sigma-Aldrich (St. Louis, MO, USA). Pooled human liver microsomes (n = 20) and pooled human intestine microsomes (n = 50), individual human liver microsomes (iHLM), dogs liver microsomes (DLM), mice liver microsomes (MLM), rats liver microsomes (RLM), mini-pig liver microsomes (MpLM), and expressed cytochrome P450 proteins (CYP1A1, 1A2, 1B1, 2A6, 2B6, 2C8, 2C9, 2C19, 2D6, 2E1, 3A4 and 3A5), recombinant UDP-glucuronosyltransferase enzymes (UGT1A1, 1A3, 1A4, 1A6, 1A7, 1A8, 1A9, 1A10, 2B4, 2B7, 2B10, 2B15 and 2B17) were all purchased form Corning Biosciences (Corning, NY, USA). All other chemicals and reagents were of analytical grade or the highest grade commercially available.
For the glucuronidation assays, a total volume of 100 μL incubation solutions contained Tris–HCl buffer (50 mM, pH = 7.4), MgCl2 (4.0 mM), alamethicin (22 μg mL−1), saccharolactone (4.4 mM), drug metabolizing enzymes, serial of PI-103 standard solutions (0.1–80 μM) and UDPGA solutions (3.5 mM). After 30 min, ice-cold acetonitrile (100 μL) was added into the incubation mixture to terminate the reaction. In addition, the supernatant (8 μL) was subjected to UHPLC analyses after centrifuging at 13800g for 10 min.
Preliminary experiment was performed to ensure that the metabolic rates of PI-103 were determined under linear conditions with respect to the incubation time (60 min for phase I metabolism and 30 min for glucuronidation) and protein concentration (0.1 mg mL−1 for phase I metabolism and 0.05 mg mL−1 for glucuronidation). Moreover, incubation without NADPH and UDPGA served as negative control to confirm the formed metabolites were NADPH-dependent and UDPGA-dependent, respectively. Similarly, the incubation system for pooled HLM, pooled HIM, individual HLM (n = 12), animal liver microsomes, and each expressed CYP and UGT enzyme was the same as above. All experiments were conducted in triplicate.
All animal procedures were performed in accordance with the Guidelines for Care and Use of Laboratory Animals of Zhengzhou University and experiments were approved by the Animal Ethics Committee of Zhengzhou University.
![]() | (1) |
![]() | (2) |
Furthermore, correlation analyses were performed between PI-103-mono-oxidation (M1) and phenacetin-N-deacetylation, nifedipine-oxidation, respectively. Similarly, correlation analyses were also performed between PI-103-O-glucuronidation (M2) and β-estradiol-3-O-glucuronidation, and propofol-O-glucuronidation, respectively. These correlation (Pearson) analyses were performed using GraphPad Prism V5 software.
The excretion rate of PI-103-O-glucuronide was calculated according to eqn (3). The apparent efflux clearance for PI-103-O-glucuronide was derived by ER/Ci, where Ci is the intracellular concentration of PI-103-O-glucuronide. The fmet value reflected the extent of PI-103-O-glucuronide in the HeLa1A9 cells and was calculated as eqn (4). Where V is the volume of the incubation medium; C is the cumulative concentration of PI-103-O-glucuronide; t is the incubation time. Here, dC/dt describes the changes in the PI-103-O-glucuronide levels with time.
![]() | (3) |
![]() | (4) |
Likewise, β-estradiol, TFP and propofol were typically used as the specific probe substrates for UGT1A1, 1A4 and 1A9, respectively, while 4-MU was used as the non-selective substrate for UGT1A3, 1A6, 1A7, 1A8, 1A10, 2B4, 2B7, 2B10, 2B15 and 2B17. Corresponding to the reported values of Km for each UGT isozyme, the concentrations of these probe substrates were as follows: 60 μM β-estradiol for UGT1A1, 1200 μM 4-MU for UGT1A3, 40 μM TFP for UGT1A4, 110 μM 4-MU for UGT1A6, 30 μM 4-MU for UGT1A7, 750 μM 4-MU for UGT1A8, 40 μM propofol for UGT1A9, 110 μM 4-MU for UGT1A10, 1000 μM 4-MU for UGT2B4, 350 μM 4-MU for UGT2B7, 1000 μM 4-MU for UGT2B10, 350 μM 4-MU for UGT2B15 and 350 μM SAHA for UGT2B17. The protein concentrations were 0.125, 0.05, 0.1, 0.025, 0.05, 0.025, 0.05, 0.05, 0.25, 0.05, 0.05, 0.2 and 0.5 mg mL−1 for UGT1A1, 1A3, 1A4, 1A6, 1A7, 1A8, 1A9, 1A10, 2B4, 2B7, 2B10, 2B15 and 2B17, respectively. Similarly, each supernatant was injected into the UHPLC-TQD-MS for analyses.
Preliminary experiments were performed to ensure that the experimental conditions were conducted within the linear ranges of the incubation times and protein concentrations. All incubations in this study were performed in triplicate. For those CYP and UGT isozymes which were strongly inhibited by PI-103, the half-inhibition concentration (IC50) values were determined using various PI-103 concentrations by non-linear regression analyses in the incubation conditions described above. The inhibition of human CYPs or UGTs was classified to four categories as follows, potent (IC50 values < 1 μM), moderate (IC50 values between 1 and 10 μM), weak (IC50 values over 10 μM), or no inhibition (IC50 values over 100 μM).
![]() | (5) |
![]() | (6) |
![]() | (7) |
In addition, a mechanistic two-site model was traditionally used to describe the data when activation was observed.22 We assumed that the enzyme had two binding sites, a reaction and an allosteric sites. The substrate only bound the reaction site, while the modifier could bond to both two sites. The Ki value was the binding affinity constant of the modifier (inducer).
To better analyze the metabolites, the UHPLC system was coupled to a hybrid quadrupole orthogonal time-of-flight tandem mass spectrometer (SYNAPT G2 HDMS, Waters, Manchester, UK) equipped with electrospray ionization (ESI). The operating parameters were as follows: capillary voltage, 3 kV (ESI+); sample cone voltage, 35 V; extraction cone voltage, 4 V; source temperature, 100 °C; de-solvation temperature, 300 °C; cone gas flow, 50 L h−1 and de-solvation gas flow, 800 L h−1. The full scan mass range was 50–1500 Da. The method employed lock spray with leucine enkephalin (m/z 556.2771 in positive ion mode) to ensure mass accuracy.
For quantification of the metabolites of specific substrates, UHPLC system was coupled to a triple quadrupole mass spectrometer (Waters Xevo TQD, Waters, Manchester, UK) equipped with ESI mode. The mass spectrometers were adjusted as follows: capillary voltage, 3.5 kV (ESI+) or 1.5 kV (ESI−); cone voltage, 50 V (ESI+) or 50 V (ESI−); source temperature, 350 °C; desolvation gas flow, 650 L h−1. The chromatographic separation and mobile phase were same as those above. Their detailed UHPLC and multiple reaction monitoring mode (MRM) conditions were listed in Table S1.† All experimental data were collected in centroid mode and processed using Masslynx 4.1 software.
Enzymes | Metabolites | Vmax (pmol min−1 mg−1) | Km (μM) | Ksi (μM) | CLint (μL min−1 mg−1) | Model |
---|---|---|---|---|---|---|
a HLM, human liver microsomes; HIM, human intestine microsomes; DLM, dog liver microsomes; MLM, mice liver microsomes; RLM, rat liver microsomes; MpLM, mini-pig liver microsomes; SI, substrate inhibition model; MM, Michaelis–Menten model. N.A.: not available. | ||||||
HLM | M1 | 6.75 ± 0.25 | 2.17 ± 0.35 | N.A. | 3.10 ± 0.51 | MM |
M2 | 41.19 ± 1.74 | 2.64 ± 0.48 | N.A. | 15.59 ± 2.88 | MM | |
HIM | M1 | 0.46 ± 0.03 | 5.60 ± 1.06 | N.A. | 0.08 ± 0.01 | MM |
M2 | 371.0 ± 12.34 | 1.76 ± 0.27 | N.A. | 211.04 ± 32.83 | MM | |
CYP1A1 | M1 | 36.21 ± 0.90 | 0.70 ± 0.09 | N.A. | 51.50 ± 6.79 | MM |
CYP1A2 | M1 | 40.62 ± 0.65 | 0.87 ± 0.07 | N.A. | 46.96 ± 3.88 | MM |
CYP1B1 | M1 | 2.19 ± 0.14 | 1.29 ± 0.39 | N.A. | 1.71 ± 0.54 | MM |
CYP3A4 | M1 | 1.46 ± 0.06 | 1.72 ± 0.35 | N.A. | 0.85 ± 0.18 | MM |
CYP3A5 | M1 | 2.58 ± 0.07 | 1.82 ± 0.22 | N.A. | 1.42 ± 0.17 | MM |
UGT1A1 | M2 | 19.03 ± 0.21 | 1.01 ± 0.06 | N.A. | 18.80 ± 1.05 | MM |
UGT1A3 | M2 | 3.20 ± 0.07 | 1.67 ± 0.16 | N.A. | 1.91 ± 0.19 | MM |
UGT1A7 | M2 | 6.63 ± 0.38 | 0.78 ± 0.15 | 270.9 ± 122.7 | 8.52 ± 1.75 | SI |
UGT1A8 | M2 | 16.71 ± 0.56 | 1.99 ± 0.30 | N.A. | 8.38 ± 1.30 | MM |
UGT1A9 | M2 | 122.9 ± 11.38 | 3.55 ± 0.74 | 86.85 ± 24.31 | 34.62 ± 7.92 | SI |
UGT1A10 | M2 | 145.20 ± 1.76 | 1.40 ± 0.08 | N.A. | 107.01 ± 6.08 | MM |
DLM | M1 | 6.18 ± 0.09 | 0.65 ± 0.05 | N.A. | 9.45 ± 0.75 | MM |
M2 | 432.2 ± 14.97 | 2.99 ± 0.43 | N.A. | 144.69 ± 21.41 | MM | |
MLM | M1 | 13.56 ± 0.65 | 1.52 ± 0.22 | 202.6 ± 56.03 | 8.91 ± 1.34 | SI |
M2 | 273.6 ± 8.32 | 2.63 ± 0.34 | N.A. | 105.37 ± 13.87 | MM | |
RLM | M1 | 9.56 ± 0.30 | 0.92 ± 0.14 | N.A. | 10.42 ± 1.64 | MM |
M2 | 95.31 ± 2.98 | 0.71 ± 0.12 | N.A. | 133.39 ± 22.00 | MM | |
MpLM | M1 | 20.46 ± 0.47 | 1.21 ± 0.14 | N.A. | 16.87 ± 1.92 | MM |
M2 | 373.1 ± 10.79 | 2.57 ± 0.32 | N.A. | 145.23 ± 18.44 | MM |
Furthermore, twelve CYP isozymes were analyzed for their catalysis activities of PI-103. The results suggested that CYP1A1, 1A2, 1B1, 2B6, 2D6, 2E1, 2C8, 2C9, 2C19, 3A4 and 3A5 all participated in the phase I metabolism of PI-103 at 1 and 10 μM (Fig. S2A†). However, due to a concentration under the limit of quantification, we were unable to determine the kinetic parameters in the absence of a full kinetic profile in CYP2B6, 2D6, 2E1, 2C8, 2C9 and 2C19. The kinetic profiles of M1 in CYP1A1 (Fig. S3A†), 1A2 (Fig. S3B†), 1B1 (Fig. S3C†), 3A4 (Fig. S3D†) and 3A5 (Fig. S3E†) were all well modeled by the Michaelis–Menten equation, which followed the same kinetic as the formation of M1 in HLM (Fig. S1A†) and HIM (Fig. S1B†). In addition, the CLint values of M1 (Fig. 2A) by CYP1A1, 1A2, 1B1, 3A4, and 3A5 were 51.50, 46.96, 1.71, 0.85, 1.42 μL min−1 mg−1, respectively (Table 1), which indicated that CYP1A1 exhibited the highest activity toward the formation of M1. Furthermore, the Km values ranged from 0.70 to 1.82 μM (Table 1), which suggested that these CYP isozymes exhibited a strong affinity towards PI-103.
Of thirteen tested UGT enzymes, UGT1A1, 1A3, 1A7, 1A8, 1A9, 1A10 and 2B7 were responsible for the glucuronidation of PI-103 at 1 and 10 μM (Fig. S2B†). Likewise, it was difficult to obtain a full kinetic profile of M2 in UGT2B7 due to the low concentration of the glucuronide. Of note, the glucuronidation of PI-103 mediated by UGT1A7 (Fig. S4C†) and 1A9 (Fig. S4E†) both followed the substrate inhibition equation, which did not always follow the same kinetics as in HLM (Fig. S1C†) and HIM (Fig. S1D†). Additionally, the kinetic profiles of M2 by UGT1A1 (Fig. S4A†), 1A3 (Fig. S4B†), 1A8 (Fig. S4D†) and 1A10 (Fig. S4F†) all followed Michaelis–Menten kinetics. The CLint value (Fig. 2B) for UGT1A10 was 107.01 μL min−1 mg−1 (Table 1). By contrast, the glucuronidation of PI-103 (Fig. 2B) by UGT1A1 (18.80 μL min−1 mg−1), 1A3 (1.91 μL min−1 mg−1), 1A7 (8.52 μL min−1 mg−1), 1A8 (8.38 μL min−1 mg−1) and 1A9 (34.62 μL min−1 mg−1) was significantly less efficient (Table 1). The Km values by these UGT isozymes were between 0.78 and 3.55 μM, which also illustrated that PI-103 could easily undergo glucuronidation.
In addition, nilotinib (10 μM) and glycyrrhetinic acid (20 μM) both produced inhibition in HLM, decreasing the activity to 82.37% and 78.63% of the control values, respectively (Fig. S5B†). Furthermore, the glucuronidation of PI-103 by HLM was decreased to 69.36% of control values in the presence of androsterone (10 μM) (Fig. S5B†). In contrast, no changes were detected when treated with CDCA (20 μM) and amitriptyline (10 μM) (Fig. S5B†). These results illustrated UGT1A1 and UGT1A9 were the important isozymes for the glucuronidation of PI-103.
Similarly, there was a correlation between the glucuronidation of PI-103 and specific marker reactions of UGT isozyme substrates. The production of M2 was significantly correlated with β-estradiol-3-O-glucuronidation (r = 0.589, p = 0.044) (Fig. S6C†) and propofol-O-glucuronidation (r = 0.717, p = 0.009) (Fig. S6D†), respectively. These results indicated that the contribution of UGT1A1 and 1A9 to the glucuronidation of PI-103 in liver was appreciable.
As shown in Fig. S8,† the glucuronidation of PI-103 by DLM (Fig. S8A†), MLM (Fig. S8B†), RLM (Fig. S8C†) and MpLM (Fig. S8D†) all followed classical Michaelis–Menten kinetics. The Km values ranged from 0.71 to 2.99 μM, and the Vmax values ranged from 95.31 to 432.2 pmol min−1 mg−1 (Table 1). In addition, the CLint values for M2 were 145.23, 144.69, 133.39, 105.37 and 15.59 μL min−1 mg−1 by MpLM, DLM, RLM, MLM and HLM (Fig. 3B).
Marked species differences (reflected by CLint values, Fig. 3) were noted for the derived kinetic parameters (Table 1). Compared with the CLint values of M1 by HLM, about 5.4, 3.4, 3.0 and 2.9-fold of the CLint values by MpLM, RLM, DLM and MLM were obtained, respectively (Table 1). Likewise, up to 9.3, 9.3, 8.6 and 6.8-fold of the CLint values for M2 were calculated between HLM, and MpLM, DLM, RLM, MLM, respectively (Table 1). Therefore, there were significant species differences in the phase I metabolism (Fig. 3A) and glucuronidation (Fig. 3B) of PI-103. Neither dogs, rats, mice or mini-pigs were the most appropriate models for the in vivo metabolism of PI-103 in humans.
We found that the knock-down of BCRP resulted in a significant reduction in excreted M2 (24.2–35.0%, p < 0.05, Fig. 4A), excretion rates of M2 (24.2%, p < 0.05, Fig. 4C) and the fraction of metabolized (fmet) PI-103 (27.6%, p < 0.05, Fig. 4E) but an increase in intracellular M2 (27.6%, p < 0.05, Fig. 4D). Furthermore, similar observations were also detected in the extracellular M2 (21.7–33.2%, p < 0.05, Fig. 4A), the efflux excretion rate of M2 (21.7%, p < 0.05, Fig. 4C), the intracellular M2 (29.9%, p < 0.05, Fig. 4D) and the fmet value (29.2%, p < 0.05, Fig. 4E) when MRP1 transporter was partially silenced. Likewise, silencing of the MRP4 transporter produced a significant decrease (25.4–38.4%, p < 0.05, Fig. 4B) in the excreted M2 as well as the efflux clearance of M2 (25.4%, p < 0.01, p < 0.05, Fig. 4C) and fmet value of PI-103 (33.8%, p < 0.01, Fig. 4E). On the contrary, a marked increase (34.7%, p < 0.05, Fig. 4D) was observed in the intracellular level of M2. However, there were almost no alterations (p > 0.05) in the efflux of extracellular M2 (5.1–11.6%, p > 0.05, Fig. 4B), the excretion rate of M2 (8.0%, p > 0.05, Fig. 4C), the intracellular level of M2 (9.4%, p > 0.05, Fig. 4D) and the fmet value of PI-103 (9.2%, p > 0.05, Fig. 4E) when MRP3 was silenced. Taken together, these findings clearly indicated that BCRP, MRP1 and MRP4 were the most important contributors to the efflux excretion of PI-103-related glucuronide.
Isozymes | Substrate | IC50 (μM) | Ki (μM) | α | Type of inhibition | Goodness of fit (R2) |
---|---|---|---|---|---|---|
a —: not available. | ||||||
UGT1A3 | 4-MU | 6.89 ± 0.73 | 2.58 ± 0.84 | 2.97 ± 1.61 | Mixed-type | 0.9757 |
UGT1A6 | 4-MU | 167.60 ± 15.28 | — | — | — | — |
UGT1A7 | 4-MU | 6.25 ± 0.84 | 5.64 ± 0.60 | — | Noncompetitive | 0.9611 |
UGT1A9 | Propofol | 16.58 ± 1.29 | — | — | — | — |
UGT2B7 | 4-MU | 1.59 ± 0.21 | 1.35 ± 0.15 | — | Noncompetitive | 0.9721 |
CYP1A1 | Ethoxyresorufin | 16.76 ± 1.76 | — | — | — | — |
CYP1A2 | Phenacetin | 0.37 ± 0.04 | 0.38 ± 0.03 | — | Noncompetitive | 0.9779 |
CYP2B6 | Bupropion | 2.25 ± 0.28 | 0.64 ± 0.22 | 5.09 ± 4.48 | Mixed-type | 0.9673 |
CYP2C9 | Tolbutamide | 1.16 ± 0.15 | 0.56 ± 0.12 | 2.45 ± 0.94 | Mixed-type | 0.9901 |
CYP2C19 | Mephenytoin | 0.59 ± 0.06 | 0.53 ± 0.03 | — | Noncompetitive | 0.9848 |
CYP2E1 | Chlorzoxazone | 0.33 ± 0.04 | 0.25 ± 0.01 | — | Noncompetitive | 0.9949 |
As shown in Fig. 5B, PI-103 displayed strong inhibitory effects on the catalytic activities of UGT1A3, 1A6, 1A7, 1A9 and 2B7, and the inhibitory effects against the activities of UGT1A1, 1A8, 1A10, 2B4, 2B10, 2B15 and 2B17 were negligible. At 100 μM for PI-103, the activities of UGT1A3, 1A6, 1A7, 1A9 and 2B7 were inhibited to 34.80%, 56.03%, 22.32%, 27.78% and 2.56% of their control activities, respectively. Furthermore, the dose-dependent inhibition curves of PI-103 against these UGTs isoforms were constructed to investigate its inhibitory potential. As shown in Fig. S11† and Table 2, PI-103 dose-dependently inhibited these tested UGTs enzyme, and the IC50 values for UGT1A3, 1A6, 1A7, 1A9 and 2B7, were calculated to be 6.89, 167.60, 6.25, 16.58 and 1.59 μM, respectively. These findings prompted us to further investigate the types of inhibition kinetics and the corresponding inhibition parameters of PI-103, specifically for CYP1A2, 2B6, 2C9, 2C19, 2E1, and UGT1A3, 1A7 and 2B7 with IC50 values less than 10 μM.
Similarly, noncompetitive and mixed-type inhibition models best fitted the inhibition data of PI-103 towards UGT1A3, 1A7 and 2B7 according to the AIC and SC values (Table S2†). The best fitting of this model to the data was also justified by the Dixon plots (Fig. 6). The Dixon plots showed that PI-103 exhibited mixed reversible inhibition behaviors towards UGT1A3, whereas it acted as a noncompetitive inhibitor against UGT1A7 and 2B7. Further, the Ki values of PI-103 against 4-MU-glucuronidation by UGT1A3, 1A7 and 2B7 were also determined as 2.58, 5.64 and 1.35 μM, respectively (Table 2). The α values for UGT1A3 was 2.97. In contrast, it was noted that PI-103 could significantly activate UGT1A4, and the maximal rate change was 1.6-fold (Fig. 6I). The binding affinity of PI-103 toward UGT1A4 was calculated as 13.76 μM. These findings suggested that PI-103 was a potent non-selective inhibitor of many human CYP and UGT isozymes with low Ki values ranging from 0.25–0.64 μM for CYPs isozymes and 1.35–5.64 μM for UGT enzymes.
Characterization of PI-103-O-glucuronidation also assumed a significant role in the understanding of its systemic exposure and disposition. Soluble PI-103-O-glucuronides were transported out of the cell through high affinity efflux transporters, and became sequestered in the water compartment of the tissues that eventually led to elimination.21 In this study, a previously developed HeLa1A9 cell model combined with a gene silencing approach was applied to evaluate the efflux transport of PI-103-O-glucuronides.21 BCRP, MRP1 and MRP4 were identified as the key contributors (Fig. 4). However, there is a significant limitation regarding the unexplained role of MRP2 in glucuronide excretion due to the absence of MRP2 in HeLa1A9 cells.21 Fortunately, a developed MDCKII-MRP2-UGT1A1 cell model,25 provides an appropriate means to determine how the over-expression of MRP2 and UGT1A9 (or UGT1A10) influences the cellular kinetics of the PI-103-O-glucuronidation processes.
Additionally, the multidrug resistance of cancer cells towards chemotherapeutic drugs is a major factor in cancer therapy, accounting for treatment failure in over 90% of human patients with metastatic or recurrent cancer.26 In this study, another important shortcoming was that this HeLa1A9 cell model is not suitable for the efflux transport of parent compounds (e.g., PI-103), because efflux transporters requires initially high intracellular concentrations of substrates (e.g., PI-103). Unfortunately, we cannot guarantee initially higher intracellular concentrations of the substrates in this model. Recently, a basal membrane vesicle model,27 has provided a practical tool to investigate the function of BCRP and MRPs in the efflux transport of PI-103. As a chemotherapeutic drug candidate, the efflux transport mechanism of PI-103 must be further elucidated.
It is well accepted that the coordinated interplay between efflux transporters and UGT enzymes indicated an interdependence between efflux transporters (i.e., BCRP, MRPs) and glucuronidation, which was determined as the “glucuronidation-transport interplay”, limiting the systemic exposure of clinical drugs.28 In this study, the reduced expression of BCRP, MRP1 and MRP4 all led to decreased glucuronidation and an increase of intracellular glucuronides (Fig. 4). This finding was attributed to the fact that the glucuronides can be hydrolyzed to the parent compound (e.g., PI-103) by β-glucuronidase within HeLa1A9 cells as previously reported.28,29 De-glucuronidation mediated by β-glucuronidase represents one important aspect of glucuronidation-efflux interplay. In addition, the decreased metabolized fraction of PI-103 was also most likely the result of the elevated impact of β-glucuronidase activity when efflux transporters were knocked-down. Therefore, de-glucuronidation is a critical determinant for the intracellular exposure of parent drug or its glucuronides.
In clinics, greater attention should be given to avoiding the potential risks of drug–drug interactions by considering the inhibitory effects of bioactive compounds on several human CYPs and UGTs.30,31 Therefore, the inhibitory effects of PI-103 against human CYP and UGT isozymes were investigated for the first time (Fig. 6), and our findings suggest that PI-103 is a potent and broad-spectrum inhibitor of human CYPs and UGTs (Table 2). Notably, PI-103 displayed potent inhibitory effects against CYP1A2, 2B6, 2C9, 2C19 and 2E1 with low Ki values ranging from 0.25 to 0.64 μM, while the Ki values for UGT1A3, 1A7 and 2B7 ranged between 1.35 and 5.64 μM. These five CYPs metabolize approximately 40% of clinically used drugs.32 CYP1A2 could metabolize many commonly used therapeutic drugs, such as phenacetin, theophylline, and caffeine.33 Furthermore, CYP2B6 is mainly involved in the metabolism of bupropion and efavirenz, whereas CYP2E1 mainly metabolizes chlorzoxazone.33 In addition, CYP2C9 participates in the metabolism of tolbutamide, phenytoin, S-warfarin, among others.33 Furthermore, CYP2C19 is an important enzyme that is responsible for the metabolism and elimination of proton pump inhibitors, benzodiazepines and antidepressants.33 The low Ki values (below 1 μM) suggest that much more caution should be exercised when PI-103 was co-administered with these CYPs substrates.
Similarly, UGT isozymes participate in metabolic elimination of endogenous compounds, and occupy more than 35% of phase II drug metabolism.34 UGT1A3 is an important enzyme that participates in the clearance of bile acids.18 Meanwhile, UGT1A3 appear to be of particular importance in the metabolism of many clinical drugs (e.g., alizarin, cyproheptadine).18 Inhibition of UGT1A3 function may lead to abnormal bile acid levels and altered systemic exposure of substrate drugs. UGT1A7, as an extra-hepatic UGT, plays a key role in the first biochemical protective barrier, and impaired UGT1A7 activity could result in increased risks for developing several types of cancers.35 UGT2B7 is an abundant UGT enzyme in the liver, kidney and intestine, and is responsible for the glucuronidation of many clinically used drugs, such as zidovudine and morphine, among others.18 It is noteworthy that UGT2B7 shows a lower catalytic capability in children below 11 years old which was approximately 25% of that observed in adults.36 Therefore, UGT2B7 substrates may undergo a slow clearance and reach a relatively high exposure in children when co-administrated with PI-103. In most cases, PI-103 is intravenously or intraperitoneally administered, and its exposure levels against these UGT enzymes may exceed the Ki values (Table 2). It can be expected that some undesired effect from low or impaired activities of these UGT isozymes could be observed in those with co-administration of PI-103.
Notably, the inhibition of PI-103 towards human CYP and UGT isozymes could also be influenced by genetic polymorphisms.35 This is because the protein expression and functional activity of several enzymes could be dramatically altered by polymorphic expression.37 For example, CYP1A1/CYP1A2 rs2472297C>T is a potential genetic marker associated with variability in CYP1A2-mediated drug metabolism.38 In addition, UGT1A1 polymorphisms (1A1*6, 1A1*28) should be investigated to reduce or avoid the dose-limiting toxicities of chemotherapy drugs.23 In contrast, two-fold higher glucuronidation toward several carcinogenic environmental contaminants was observed in UGT1A9*22/*22 livers compared with UGT1A9*1/*1 and UGT1A9*1/*22 livers.39 UGT1A10 codon 139 (Glu > Lys) polymorphism exhibited higher catalytic activities against polycyclic aromatic hydrocarbons, and this genotype is most likely an important determinant in the risk for tobacco-related cancers.40 Therefore, it is necessary to detect the genetic polymorphisms of active CYP and UGT isozymes for several substrate drugs with a narrow therapeutic window.
Footnote |
† Electronic supplementary information (ESI) available. See DOI: 10.1039/c9ra09906a |
This journal is © The Royal Society of Chemistry 2020 |