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Toxicological assessment of SGLT2 inhibitors metabolites using in silico approach

Abstract

Sodium-glucose cotransporter 2 inhibitors (SGLT2i) are the latest class of drugs approved to treat type 2 DM (T2DM). Although adverse effects are often caused by a metabolite rather than the drug itself, only the safety assessment of disproportionate drug metabolites is usually performed, which is of particular concern for drugs of chronic use, such as SGLT2i. Bearing this in mind, in silico tools are efficient strategies to reveal the risk assessment of metabolites, being endorsed by many regulatory agencies. Thereby, the goal of this study was to apply in silico methods to provide the metabolites toxicity assessment of the SGLT2i. Toxicological assessment from SGLT2i metabolites retrieved from the literature was estimated using the structure and/or statistical-based alert implemented in DataWarrior and ADMET predictorTM softwares. The drugs and their metabolites displayed no mutagenic, tumorigenic or cardiotoxic risks. Still, M1-2 and M3-1 were recognized as potential hepatotoxic compounds and M1-2, M1-3, M3-1, M3-2, M3-3 and M4-3, were estimated to have very toxic LD50 values in rats. All SGLT2i and the metabolites M3-4, M4-1 and M4-2, were predicted to have reproductive toxicity. These results support the awareness that metabolites may be potential mediators of drug-induced toxicities of the therapeutic agents.

Key words
diabetes; in silico toxicology; metabolism; SGLT2 inhibitors; SGLT2i metabolites

INTRODUCTION

Diabetes Mellitus (DM) is a chronic progressive metabolic disorder with an increasing prevalence worldwide. Type 2 DM (T2DM) is the most common, accounting for around 90% of diabetes cases. T2DM is a non-insulin dependent DM, caused by insulin decreased sensitivity of target tissues (WHO 2020WHO – WORLD HEALTH ORGANIZATION. 2020. Diabetes. https://www.who.int/news-room/fact-sheets/detail/diabetes. Accessed 1 April 2021.
https://www.who.int/news-room/fact-sheet...
). As a result of this, blood glucose concentration increases, promoting increased excretion of both sodium and glucose in the urine (Guyton & Hall 2006GUYTON AC & HALL JE. 2006. Textbook of Medical physiology. 11th ed, Amsterdam: Elsevier Inc, 1168 p.).

Sodium-glucose cotransporter-2 inhibitors (SGLT2i) are the latest therapeutic class for T2DM. SGLT2i reduces the renal tubular glucose reabsorption, producing a reduction in blood glucose without stimulating insulin release (Hsia et al. 2017HSIA DS, GROVE O & CEFALU WT. 2017. An update on sodium-glucose co-transporter-2 inhibitors for the treatment of diabetes mellitus. Curr Opin Endocrinol Diabetes Obes 24: 73-79.). Currently, there are four SGLT2i approved by FDA: canagliflozin (1) (Invokana®), dapagliflozin (2) (Farxiga®), empagliflozin (3) (Jardiance®), and ertugliflozin (4) (Steglatro®) (Hsia et al. 2017HSIA DS, GROVE O & CEFALU WT. 2017. An update on sodium-glucose co-transporter-2 inhibitors for the treatment of diabetes mellitus. Curr Opin Endocrinol Diabetes Obes 24: 73-79.) (Figure 1).

Figure 1
Chemical structures of SGLT2i: canagliflozin (1), dapagliflozin (2), empagliflozin (3) and ertugliflozin (4).

The adverse events of SGLT2i include symptomatic hypotension, hypoglycemia, urinary tract infections, and mycotic infections (Halimi & Vergès 2014HALIMI S & VERGÈS B. 2014. Adverse effects and safety of SGLT-2 inhibitors. Diabetes Metab 40: S28-S34.). Furthermore, DM is associated with chronic liver disease increase associated with cirrhosis, non-alcoholic fatty liver disease, alcoholic cirrhosis, chronic hepatitis C (CHC), and hemochromatosis (Li et al. 2019LI X, JIAO Y, XING Y & GAO P. 2019. Diabetes Mellitus and Risk of Hepatic Fibrosis/Cirrhosis. Biomed Res Int 2019: 5308308., Kita et al. 2007KITA Y, MIZUKOSHI E, TAKAMURA T, SAKURAI M, TAKATA Y, ARAI K, YAMASHITA T, NAKAMOTO Y & KANEKO S. 2007. Impact of diabetes mellitus on prognosis of patients infected with hepatitis C virus. Metabolism 56: 1682-1688.). Previous reports also pointed out that T2DM is associated with an increased incidence of overall cancer (Tsilidis et al. 2015TSILIDIS KK, KASIMIS JC, LOPEZ DS, NTZANI EE & IOANNIDIS JP. 2015. Type 2 diabetes and cancer: umbrella review of meta-analyses of observational studies. BMJ 350: g7607., Yuan et al. 2020YUAN S, KAR S, CARTER P, VITHAYATHIL M, MASON AM, BURGESS S & LARSSON SC. 2020. Is Type 2 Diabetes Causally Associated With Cancer Risk? Evidence From a Two-Sample Mendelian Randomization Study. Diabetes 69: 1588-1596.). Phase III clinical trials with dapagliflozin (2) reported an imbalance of bladder cancer in men and breast cancer in women, which delayed its FDA approval (Burki 2012BURKI TK. 2012. FDA rejects novel diabetes drug over safety fears. Lancet 379: 507., Scheen 2014SCHEEN AJ. 2014. Evaluating SGLT2 inhibitors for type 2 diabetes: pharmacokinetic and toxicological considerations. Expert Opin Drug Metab Toxicol 10: 647-663.). An increased risk of bladder cancer was also observed in the individuals taking either empagliflozin (3) or dapagliflozin (2) (Tang et al. 2017TANG H, DAI Q, SHI W, ZHAI S, SONG Y & HAN J. 2017. SGLT2 inhibitors and risk of cancer in type 2 diabetes: a systematic review and meta-analysis of randomised controlled trials. Diabetologia 60: 1862-1872., Scheen 2014SCHEEN AJ. 2014. Evaluating SGLT2 inhibitors for type 2 diabetes: pharmacokinetic and toxicological considerations. Expert Opin Drug Metab Toxicol 10: 647-663.). Corroborating these findings, a recent analysis reported a high number of cases of bladder cancer among users of SGLT2i (García et al. 2021GARCÍA M, ARTECHE-MARTINEZ U, LERTXUNDI U & AGUIRRE C. 2021. SGLT2 Inhibitors and Bladder Cancer: Analysis of Cases Reported in the European Pharmacovigilance Database. J Clin Pharmacol 61: 187-192.). These adverse effects are a significant public health problem and a challenge for the pharmaceutical industry. Thus, further studies are required to support these pieces of evidence related to the SGLT2i therapy and long-term outcomes (Shao et al. 2020SHAO SC, KUO LT, CHIEN RN, HUNG MJ & LAI EC. 2020. SGLT2 inhibitors in patients with type 2 diabetes with non-alcoholic fatty liver diseases: an umbrella review of systematic reviews. BMJ Open Diabetes Res Care 8: e001956.).

It is well-established that adverse effects often occur due to a metabolite rather than the drug itself (Park et al. 2001PARK BK, KITTERINGHAM NR, KENNY JR & PIRMOHAMED M. 2001. Drug metabolism and drug toxicity. Inflammopharmacology 9: 183-199., Thompson et al. 2016THOMPSON RA, ISIN EM, OGESE MO, METTETAL JT & WILLIAMS DP. 2016. Reactive Metabolites: Current and Emerging Risk and Hazard Assessments. Chem Res Toxicol 29: 505-533., Mumtaz & Durkin 1992MUMTAZ MM & DURKIN PR. 1992. A weight-of-evidence approach for assessing interactions in chemical mixtures. Toxicol Ind Health 8: 377-406., Luffer-Atlas & Atrakchi 2017LUFFER-ATLAS D & ATRAKCHI A. 2017. A decade of drug metabolite safety testing: industry and regulatory shared learning. Expert Opin Drug Metab Toxicol 13: 897-900.). Regulatory agencies recommend performing the safety assessment only for disproportionate drug metabolites, i.e., those present at > 10% of total drug-related human exposure at steady-state, while no tests are performed for the remaining metabolites. This lack of toxicological data is of particular concern since their contribution to the parent drug’s overall toxicity remains unknown, particularly for metabolites of chronic use drugs (FDA 2020, Luffer-Atlas & Atrakchi 2017LUFFER-ATLAS D & ATRAKCHI A. 2017. A decade of drug metabolite safety testing: industry and regulatory shared learning. Expert Opin Drug Metab Toxicol 13: 897-900.). Nowadays, computational methods play a vital role in the safety assessment of molecules with challenging isolation, quantification, or synthesis. In silico toxicology is one of the alternatives to animal testing to toxicity assessment that uses computational resources to organize, analyze, model, simulate, visualize, or predict the toxicity of chemicals (Raies & Bajic 2016RAIES AB & BAJIC VB. 2016. In silico toxicology: computational methods for the prediction of chemical toxicity. Wiley Interdiscip Rev Comput Mol Sci 6: 147-172.). The use of computer-based models using machine learning and structural alert to predict toxicity has increased significantly due to improvements in the performance of the models and their ease of use (De Mello et al. 2018DE MELLO MVP, ABRAHIM-VIEIRA BDA, DOMINGOS TFS, DE JESUS JB, SOUSA ACC, RODRIGUES CR & SOUZA AMT. 2018. A comprehensive review of chalcone derivatives as antileishmanial agents. Eur J Med Chem 150: 920-929., Myatt et al. 2018MYATT GJ ET AL. 2018. In silico toxicology protocols. Regul Toxicol Pharmacol 96: 1-17., Graham et al. 2021GRAHAM JC, RODAS M, HILLEGASS J & SCHULZE G. 2021. The performance, reliability and potential application of in silico models for predicting the acute oral toxicity of pharmaceutical compounds. Regul Toxicol Pharmacol 119: 104816.). Also, in silico studies are being endorsed by regulatory agencies, as they are typically based on human data, with an enhancement of interspecies transferability. Mutagenicity, carcinogenicity, acute oral toxicity, liver adverse effects, allergenic skin sensitization, and reproductive toxicity are some of the toxicity endpoints usually estimated for chemicals (Archibald et al. 2018ARCHIBALD K, TSAIOUN K, KENNA JG & POUND P. 2018. Better science for safer medicines: the human imperative. J R Soc Med 111: 433-438., Vedani & Smiesko 2009VEDANI A & SMIESKO M. 2009. In silico toxicology in drug discovery - concepts based on three-dimensional models. ATLA 37: 477-496.). In this context, in silico methods is an efficient strategy to assess the safety profile of SGLT2i metabolites in humans.

MATERIALS AND METHODS

The metabolites of canagliflozin (1), dapagliflozin (2), empagliflozin (3), and ertugliflozin (4) generated in humans were retrieved from previous studies (Mamidi et al. 2014MAMIDI RN ET AL. 2014. Metabolism and excretion of canagliflozin in mice, rats, dogs, and humans. Drug Metab Dispos 42: 903-916., Obermeier et al. 2010OBERMEIER M ET AL. 2010. In vitro characterization and pharmacokinetics of dapagliflozin (BMS-512148), a potent sodium-glucose cotransporter type II inhibitor, in animals and humans. Drug Metab Dispos 38: 405-414., Kasichayanula et al. 2014KASICHAYANULA S, LIU X, LACRETA F, GRIFFEN SC & BOULTON DW. 2014. Clinical pharmacokinetics and pharmacodynamics of dapagliflozin, a selective inhibitor of sodium-glucose co-transporter type 2. Clin. Pharmacokinet 53: 17-27., Chen et al. 2015CHEN LZ, JUNGNIK A, MAO Y, PHILIP E, SHARP D, UNSELD A, SEMAN L, WOERLE HJ & MACHA S. 2015. Biotransformation and mass balance of the SGLT2 inhibitor empagliflozin in healthy volunteers. Xenobiotica 45: 520-529., Miao et al. 2013MIAO Z, NUCCI G, AMIN N, SHARMA R, MASCITTI V, TUGNAIT M, VAZ AD, CALLEGARI E & KALGUTKAR AS. 2013. Pharmacokinetics, metabolism, and excretion of the antidiabetic agent ertugliflozin (PF-04971729) in healthy male subjects. Drug Metab Dispos 41: 445-456.) and the two-dimensional structures were drawn with ACD/ChemSketch version 2020.2.0 (Advanced Chemistry Development, Inc., Toronto, ON, Canada).

The mutagenicity, hepatotoxicity, cardiotoxicity, reproductive toxicity and acute toxicity endpoints were evaluated using statistical-based models implemented in ADMET predictorTM version 9.5 (Simulations Plus, Inc., Lancaster, CA, USA, 2019).

The mutagenicity endpoint was predicted based on the Ames Test. This test applied models of Artificial Neural Network Ensembles as qualitative models for five strains of Salmonella (TA97 or TA1537, TA98, TA100, TA102, and TA1535 strains) with and without microsomal activation (Bakhtyari et al. 2013BAKHTYARI NG, RAITANO G, BENFENATI E, MARTIN T & YOUNG D. 2013. Comparison of in silico models for prediction of mutagenicity. J Environ Sci Health C Environ Carcinog Ecotoxicol Rev 31: 45-66., Honma et al. 2019HONMA M ET AL. 2019. Improvement of quantitative structure-activity relationship (QSAR) tools for predicting Ames mutagenicity: outcomes of the Ames/QSAR International Challenge Project. Mutagenesis 34: 3-16.). Hepatotoxicity parameters were studied using five relevant biomarkers: alkaline phosphatase (ALP), serum glutamic oxaloacetic transaminase (SGOT), serum glutamic pyruvic transaminase (SGPT), gamma-glutamyl transferase (GGT), and lactate dehydrogenase (LDH) (Abreu et al. 2020ABREU LCL, ABRAHIM-VIEIRA BA, SOUZA AMT, PINTO EC, GONÇALVES MS, SIMON A, VIANA GM, RODRIGUES CR, SOUSA VP & CABRAL LM. 2020. Forced degradation studies of norepinephrine and epinephrine from dental anesthetics: development of stability-indicating HPLC method and in silico toxicity evaluation. Biomed Chromatogr 34: e4832., Garcia et al. 2021GARCIA AR ET AL. 2021. Identification of Chalcone Derivatives as Inhibitors of Leishmania infantum Arginase and Promising Antileishmanial Agents. Front Chem 8: 624678: 1-10.). The Cardiotoxicity model predicted the likelihood that a compound will block the hERG channel, related to ventricular arrhythmias and sudden death (Garcia et al. 2021GARCIA AR ET AL. 2021. Identification of Chalcone Derivatives as Inhibitors of Leishmania infantum Arginase and Promising Antileishmanial Agents. Front Chem 8: 624678: 1-10.). The reproductive toxicity endpoint includes anything that disturbs the reproductive process of organisms, including adverse effects to sexual organs, behavior, ease of conception, teratogenicity, and developmental toxicity to offspring before or after birth. Lastly, the acute toxicity model predicted the capability of the amount of orally administered chemical (mg/kg body weight) required to kill 50% of the rats population within 24 h of exposure (LD50).

Besides statistical-based models, an expert rule-based method was also performed to evaluate mutagenicity and tumorigenicity using DataWarrior software (Sander et al. 2015SANDER T, FREYSS J, VON KORFF M & RUFENER C. 2015. DataWarrior: an open-source program for chemistry aware data visualization and analysis. J Chem Inf Model 55: 460-473., Guerra et al. 2017GUERRA LR, DE SOUZA AMT, CÔRTES JA, LIONE V, CASTRO HC & ALVES GG. 2017. Assessment of predictivity of volatile organic compounds carcinogenicity and mutagenicity by freeware in silico models. Regul Toxicol Pharmacol 91: 1-8.). The mutagenicity prediction includes 20 specific test systems, both in vitro and in vivo, with tested organisms including bacteria, molds, yeast, protozoa, insects, and mammalian cell lines. The tumorigenic effect data is predicted considering three criterias: carcinogenic by RTECS (Registry of Toxic Effects of Chemical Substances), neoplastic by RTECS, and equivocal tumorigenic results (Von Korff & Sander 2006VON KORFF M & SANDER T. 2006. Toxicity-indicating structural patterns. J Chem Inf Model 46: 536-544., CDC 2011CDC – CENTERS FOR DISEASE CONTROL AND PREVENTION. 2011. Features of the RTECS Database (June 2011). Atlanta, GA: U.S. Department of Health and Human Services, Centers for Disease Control and Prevention. https://www.cdc.gov/niosh/rtecs/rtecsfeatures.html. Accessed 1 April 2021.
https://www.cdc.gov/niosh/rtecs/rtecsfea...
).

RESULTS

Compilation of SGLT2i metabolites

In vitro metabolic profiles from liver microsomes and hepatocyte incubations can be poor predictors of in vivo circulating major human metabolites (Luffer-Atlas & Atrakchi 2017LUFFER-ATLAS D & ATRAKCHI A. 2017. A decade of drug metabolite safety testing: industry and regulatory shared learning. Expert Opin Drug Metab Toxicol 13: 897-900.). Thus, we retrieved from literature data of metabolic profile from SGLT2i after single oral dose administration to healthy humans (Mamidi et al. 2014MAMIDI RN ET AL. 2014. Metabolism and excretion of canagliflozin in mice, rats, dogs, and humans. Drug Metab Dispos 42: 903-916., Obermeier et al. 2010OBERMEIER M ET AL. 2010. In vitro characterization and pharmacokinetics of dapagliflozin (BMS-512148), a potent sodium-glucose cotransporter type II inhibitor, in animals and humans. Drug Metab Dispos 38: 405-414., Kasichayanula et al. 2014KASICHAYANULA S, LIU X, LACRETA F, GRIFFEN SC & BOULTON DW. 2014. Clinical pharmacokinetics and pharmacodynamics of dapagliflozin, a selective inhibitor of sodium-glucose co-transporter type 2. Clin. Pharmacokinet 53: 17-27., Chen et al. 2015CHEN LZ, JUNGNIK A, MAO Y, PHILIP E, SHARP D, UNSELD A, SEMAN L, WOERLE HJ & MACHA S. 2015. Biotransformation and mass balance of the SGLT2 inhibitor empagliflozin in healthy volunteers. Xenobiotica 45: 520-529., Miao et al. 2013MIAO Z, NUCCI G, AMIN N, SHARMA R, MASCITTI V, TUGNAIT M, VAZ AD, CALLEGARI E & KALGUTKAR AS. 2013. Pharmacokinetics, metabolism, and excretion of the antidiabetic agent ertugliflozin (PF-04971729) in healthy male subjects. Drug Metab Dispos 41: 445-456.). The biotransformation of SGLT2i in humans occurs primarily by O-glucuronidation and, to a lesser extent, by oxidation. Mamidi et al. (2014)MAMIDI RN ET AL. 2014. Metabolism and excretion of canagliflozin in mice, rats, dogs, and humans. Drug Metab Dispos 42: 903-916. identified three metabolites of canagliflozin (1): a hydroxylated canagliflozin by CYP3A4 (M1-1) and two pharmacologically inactive O-glucuronide conjugates by UGT2B4 (M1-2) and UGT1A9 (M1-3) (Figure 2) (Mamidi et al. 2014MAMIDI RN ET AL. 2014. Metabolism and excretion of canagliflozin in mice, rats, dogs, and humans. Drug Metab Dispos 42: 903-916.).

Figure 2
The chemical structures of metabolites M1-1, M1-2 and M1-3 of canagliflozin (1).

Two major metabolites of dapagliflozin (2) were identified in clinical samples, the nonpharmacological active dapagliflozin 3-O-glucuronide (M2-1) and dapagliflozin 2-O-glucuronide (M2-2) (Figure 3) (Obermeier et al. 2010OBERMEIER M ET AL. 2010. In vitro characterization and pharmacokinetics of dapagliflozin (BMS-512148), a potent sodium-glucose cotransporter type II inhibitor, in animals and humans. Drug Metab Dispos 38: 405-414., Kasichayanula et al. 2014KASICHAYANULA S, LIU X, LACRETA F, GRIFFEN SC & BOULTON DW. 2014. Clinical pharmacokinetics and pharmacodynamics of dapagliflozin, a selective inhibitor of sodium-glucose co-transporter type 2. Clin. Pharmacokinet 53: 17-27.).

Figure 3
The chemical structures of the metabolites for dapagliflozin (2).

The in vivo biotransformation of empagliflozin (3) resulted in six metabolites described by Chen et al. (2015)CHEN LZ, JUNGNIK A, MAO Y, PHILIP E, SHARP D, UNSELD A, SEMAN L, WOERLE HJ & MACHA S. 2015. Biotransformation and mass balance of the SGLT2 inhibitor empagliflozin in healthy volunteers. Xenobiotica 45: 520-529., but one of them is related as an oxidation/dehydrogenation metabolite and did not have its structure completely elucidated. Thereby, two metabolites were products from Phase I metabolism (M3-1 and M3-2) and three of them from glucuronidation by UGT1A9 (M3-3, M3-4, and M3-5) (Figure 4).

Figure 4
The chemical structures of empagliflozin (3) and its metabolites.

Oxidation of ertugliflozin (4) by CYP3A4 and 3A5 occurs to a minor extent to yield monohydroxylated metabolites (M4-1 and M4-2) whilst the main biotransformation pathway involves glucuronidation by UGT1A9 and 2B7, yielding two regioisomers metabolites (M4-3 and M4-4) (Figure 5) (Miao et al. 2013MIAO Z, NUCCI G, AMIN N, SHARMA R, MASCITTI V, TUGNAIT M, VAZ AD, CALLEGARI E & KALGUTKAR AS. 2013. Pharmacokinetics, metabolism, and excretion of the antidiabetic agent ertugliflozin (PF-04971729) in healthy male subjects. Drug Metab Dispos 41: 445-456.).

Figure 5
The chemical structures of the metabolites for ertugliflozin (4).

In silico toxicity assessment of metabolites

The in silico toxicity assessment of SGLT2i and its metabolites were performed using two methodologies, that complement each other, a statistical-based and an expert rule-based, from ADMET PredictorTM (Simulations Plus 2019) and DataWarrior, respectively (Sander et al. 2015SANDER T, FREYSS J, VON KORFF M & RUFENER C. 2015. DataWarrior: an open-source program for chemistry aware data visualization and analysis. J Chem Inf Model 55: 460-473., Guerra et al. 2017GUERRA LR, DE SOUZA AMT, CÔRTES JA, LIONE V, CASTRO HC & ALVES GG. 2017. Assessment of predictivity of volatile organic compounds carcinogenicity and mutagenicity by freeware in silico models. Regul Toxicol Pharmacol 91: 1-8.) (Table I). Statistical-based models apply machine learning algorithms to analyze the correlations between molecular structures and biological activity. Expert rule-based models find the compounds most similar to the parent compound based on similarity while leaving the selected structure untouched using fragments from known drugs (Goel & Valerio Jr 2020GOEL R & VALERIO JR LG. 2020. Predicting the mutagenic potential of chemicals in tobacco products using in silico toxicology tools. Toxicol Mech Methods 30: 672-678., Sander et al. 2015SANDER T, FREYSS J, VON KORFF M & RUFENER C. 2015. DataWarrior: an open-source program for chemistry aware data visualization and analysis. J Chem Inf Model 55: 460-473.).

Table I
Mutagenic and tumorigenic prediction of SGLT2i and its metabolites.

The mutagenicity predictions indicated that neither the drugs nor their metabolites might be mutagenic, considering results from the statistical-based model (Table I). In the expert rule-based analysis, ertugliflozin (4) and its metabolites presented mutagenic potential (Table I). Also, DataWarrior results indicated that all SGLT2i and metabolites are not tumorigenic based on RTECS criteria (Table I).

Cardiotoxicity evaluation indicated that these metabolites do not interact with the hERG potassium channel (Table II). Concerning hepatotoxicity, only canagliflozin and empagliflozin metabolites M1-2 and M3-1, respectively, presented potential risk (Table II). All SGLT2i, the empagliflozin metabolite M3-4, and the ertugliflozin metabolites M4-1 and M4-2 presented reproductive toxicity risk. Finally, solely the O-glucuronide metabolites of canagliflozin M1-2 and M1-3 presented acute rat toxicity (Table II).

Table II
In silico cardiotoxicity, hepatotoxicity and acute toxicity in rats (LD50) of SGLT2i and its metabolites using ADMET PredictorTM.

DISCUSSION

Nowadays, the increasing interest and acceptance of in silico methods are providing their inclusion for regulatory purposes. Based on the FDA recommended studies for assessing the safety of the disproportionate metabolites (FDA 2020FDA – US FOOD AND DRUG ADMINISTRATION. 2020. Center for Drug Evaluation and Research (CDER). Safety Testing of Drug Metabolites - Guidance for Industry, p. 1-11.), we conducted mutagenicity, tumorigenicity, and general toxicity studies for the SGLT2i metabolites using established in silico approaches (National Research Council 2007NATIONAL RESEARCH COUNCIL. 2007. Toxicity Testing in the 21st Century: A Vision and a Strategy. Washington: The National Academies Press, 216 p.). Mutagenicity evaluations were carried out using two different approaches: statistical-based and expert-system rule-based (ICH 2015ICH. 2015. EMA/CHMP/ICH/83812/2013: ICH guideline M7(R1) on assessment and control of DNA reactive (mutagenic) impurities in pharmaceuticals to limit potential carcinogenic risk, p. 1-110.). The statistical-based model presented non-mutagenicity results for all drugs and their metabolites corroborating the data from drug registration (Table I). In the expert rule-based analysis, ertugliflozin (4) and its metabolites (M4-1 to M4-4) presented structural alert, which suggest the potential mutagenicity of the dioxabicyclo[3.2.1]octane moiety. Indeed, non-mutagenic data was attributed to this group in the literature and the statistical-based method does not indicate this toxicity. In order to rationalize the final conclusion, the expert knowledge was applied to support this evidence, deciding that non-mutagenic results were linked to these metabolites (ICH 2015ICH. 2015. EMA/CHMP/ICH/83812/2013: ICH guideline M7(R1) on assessment and control of DNA reactive (mutagenic) impurities in pharmaceuticals to limit potential carcinogenic risk, p. 1-110.).

Carcinogenicity studies should be conducted on metabolites of drugs that are used regularly for at least 6 months or for the treatment of chronic diseases. Hence, we also conducted carcinogenicity evaluation of SGLT2i metabolites (FDA 2020). DataWarrior results indicated low tumorigenic risk to all SGLT2i and its metabolites, following SGLT2i clinical outcomes (Janssen Pharmaceutical Companies 2013JANSSEN PHARMACEUTICAL COMPANIES. 2013. Invokana (canagliflozin) [package insert]. Titusville, NJ: Janssen Pharmaceutical, p. 1-19., Boehringer Ingelheim Pharmaceuticals 2014BOEHRINGER INGELHEIM PHARMACEUTICALS. 2014. Jardiance (empagliflozin) [package insert], Ridgefield, CT: Boehringer Ingelheim, p. 1-39., Bristol-Myers Squibb Company 2014BRISTOL-MYERS SQUIBB COMPANY. 2014. Farxiga (dapagliflozin) [package insert]. Princeton, NJ: Bristol-Myers Squibb Company, p. 1-43., Merck Sharp & Dohme Corp. 2017MERCK SHARP & DOHME CORP. 2017. Steglatro (ertugliflozin) [package insert]. Whitehouse Station, NJ: Merck Sharp & Dohme Corp, p. 1-23., Tang et al. 2017TANG H, DAI Q, SHI W, ZHAI S, SONG Y & HAN J. 2017. SGLT2 inhibitors and risk of cancer in type 2 diabetes: a systematic review and meta-analysis of randomised controlled trials. Diabetologia 60: 1862-1872.). For this endpoint, SGLT2i and its metabolites were outside the applicability domain (AD) of the carcinogenicity model implemented in ADMET PredictorTM. In other words, these molecules were out-of-scope and the predictions were not considered due to its low reliability (Simulations Plus 2019SIMULATIONS PLUS. 2019. Simulations Plus, Inc., Lancaster, CA, USA., Ruiz et al. 2017RUIZ P, SACK A, WAMPOLE M, BOBST S & VRACKO M. 2017. Integration of in silico methods and computational systems biology to explore endocrine-disrupting chemical binding with nuclear hormone receptors. Chemosphere 178: 99-109., El-Saadi et al. 2015EL-SAADI MW, WILLIAMS-HART T, SALVATORE BA & MAHDAVIAN E. 2015. Use of in-silico assays to characterize the ADMET profile and identify potential therapeutic targets of fusarochromanone, a novel anti-cancer agent. In Silico Pharmacol 3: 6.).

None of the SGLT2i metabolites were predicted to interact with the hERG potassium channel. These data may be supported by the clinical evidence for cardioprotective effects of SGLT2i (Table II) (Rahman et al. 2017RAHMAN A, HITOMI H & NISHIYAMA A. 2017. Cardioprotective effects of SGLT2 inhibitors are possibly associated with normalization of the circadian rhythm of blood pressure. Hypertension Res 40: 535-540., Simulations Plus 2019).

Evidence for the cardiovascular benefits of SGLT2i continues to accumulate. Treatment with SGLT2 inhibitors has been linked to a reduced risk of heart failure and cardiovascular death in clinical trials (Sayour et al. 2021SAYOUR AA, CELENG C, OLÁH A, RUPPERT M, MERKELY B & RADOVITS T. 2021. Sodium–glucose cotransporter 2 inhibitors reduce myocardial infarct size in preclinical animal models of myocardial ischaemia–reperfusion injury: a meta-analysis. Diabetologia 64: 737-748.).

While some parent drugs can directly cause hepatotoxicity, it is generally the metabolites of these compounds that lead to liver injury (Tarantino et al. 2009TARANTINO G, DI MINNO MND & CAPONE D. 2009. Drug-induced liver injury: Is it somehow foreseeable? World J Gastroenterol 15: 2817-2833.). Thus, it is crucial to evaluate the hepatotoxicity of SGTL2i metabolites. Due to SGOT and SGPT increased levels, canagliflozin and empagliflozin metabolites (M1-2 and M3-1, respectively) are potential hepatotoxic compounds (Table II). Indeed, in multiple large randomized controlled trials, the hepatotoxicity of SGLT2i was unproven but suspected to be a rare cause of clinically apparent liver injury due to serum enzyme elevations (Livertox 2012LIVERTOX. 2012. LiverTox: Clinical and Research Information on Drug-Induced Liver Injury [Internet]. Bethesda (MD): National Institute of Diabetes and Digestive and Kidney Diseases. SGLT-2 Inhibitors. [Updated 2018 Dec 17]. Available at: https://www.ncbi.nlm.nih.gov/books/NBK548289, p. 1-10.
https://www.ncbi.nlm.nih.gov/books/NBK54...
). Furthermore, it has been suggested that for every 10 SGPT cases reported in a clinical trial, there will be one case of more severe liver injury. This case develops once the drug is of chronic use (Bell & Chalasani 2009BELL LN & CHALASANI N. 2009. Epidemiology of idiosyncratic drug-induced liver injury. Semin Liver Dis 29: 337-347.). Since the canagliflozin (1) and empagliflozin (3) metabolites (M1-2 and M3-1, respectively) cause hepatotoxicity, it may affect the metabolism of other drugs (Bell & Chalasani 2009BELL LN & CHALASANI N. 2009. Epidemiology of idiosyncratic drug-induced liver injury. Semin Liver Dis 29: 337-347., Tarantino et al. 2009TARANTINO G, DI MINNO MND & CAPONE D. 2009. Drug-induced liver injury: Is it somehow foreseeable? World J Gastroenterol 15: 2817-2833.). In addition to M1-2 hepatotoxicity, the starting dose of canagliflozin (1) is 100 mg/day orally (Janssen Pharmaceutical Companies 2013JANSSEN PHARMACEUTICAL COMPANIES. 2013. Invokana (canagliflozin) [package insert]. Titusville, NJ: Janssen Pharmaceutical, p. 1-19.). Therefore, these outcomes lead to a possible safety concern, as daily doses of ≥ 50 mg are significantly more likely to cause liver injury (Lammert et al. 2008LAMMERT C, EINARSSON S, SAHA C, NIKLASSON A, BJORNSSON E & CHALASANI N. 2008. Relationship between daily dose of oral medications and idiosyncratic drug-induced liver injury: search for signals. Hepatology 47: 2003-2009.). Furthermore, SGLT2i shares similar pharmacokinetic characteristics, with an extensive hepatic metabolism, mainly via glucuronidation (Scheen 2015SCHEEN AJ. 2015. Pharmacokinetics, Pharmacodynamics and Clinical Use of SGLT2 Inhibitors in Patients with Type 2 Diabetes Mellitus and Chronic Kidney Disease. Clin Pharmacokinet 54: 691-708.). And there is a higher number of liver injury cases from drugs that undergo significant hepatic metabolism (Chan & Benet 2017CHAN R & BENET LZ. 2017. Evaluation of DILI Predictive Hypotheses in Early Drug Development. Chem Res Toxicol 30: 1017-1029.). On the other hand, the recommended empagliflozin (3) starting dose is 10 mg once daily (Boehringer Ingelheim Pharmaceuticals 2014), which leads to a less relevant safety concern compared with canagliflozin metabolite.

The acute toxicity endpoint predicts the amount of orally administered substance (in mg/kg body weight) required to kill 50% of the rats tested (LD50) (Simulations Plus 2019). The rat oral LD50 ADMET PredictorTM model is supported by data from two sources, CDC’s Registry of Toxic Effects of Chemical Substances (RTECS), and the ChemIDplus database (Ruiz et al. 2012RUIZ P, BEGLUITTI G, TINCHER T, WHEELER J & MUMTAZ M. 2012. Prediction of acute mammalian toxicity using QSAR methods: a case study of sulfur mustard and its breakdown products. Molecules (Basel, Switzerland) 17: 8982-9001.). One of the most common scales used for the final interpretation of acute rat toxicity results is the Hodge and Sterner scale (Hodge & Sterner 2005HODGE A & STERNER B. 2005. Toxicity Classes. In: Canadian Center for Occupational Health and Safety. https://www.ccohs.ca/oshanswers/chemicals/ld50.html. Accessed 20 October 2021.
https://www.ccohs.ca/oshanswers/chemical...
, Erhirhie et al. 2018ERHIRHIE EO, IHEKWEREME CP & ILODIGWE EE. 2018. Advances in acute toxicity testing: strengths, weaknesses and regulatory acceptance. Interdiscip Toxicol 11: 5-12., Ruiz et al. 2012RUIZ P, BEGLUITTI G, TINCHER T, WHEELER J & MUMTAZ M. 2012. Prediction of acute mammalian toxicity using QSAR methods: a case study of sulfur mustard and its breakdown products. Molecules (Basel, Switzerland) 17: 8982-9001.). According to toxicity classes of Hodge & Sterner (2005)HODGE A & STERNER B. 2005. Toxicity Classes. In: Canadian Center for Occupational Health and Safety. https://www.ccohs.ca/oshanswers/chemicals/ld50.html. Accessed 20 October 2021.
https://www.ccohs.ca/oshanswers/chemical...
, the O-glucuronide metabolites of canagliflozin M1-2 and M1-3, empagliflozin (3) and its metabolites M3-1, M3-2 and M3-3, and ertugliflozin metabolite M4-3 were estimated to have worrying toxicity, with LD50 values <500mg/kg. The remaining SGLT2i and its metabolites were estimated to have moderately toxic level, with LD50 values (500–5000 mg/kg) (Table II). The Globally Harmonized System (GHS) of Classification and Labelling of Chemicals criteria are used to determine the nature and the relative severity of the hazard of a chemical substance or mixture. According to GHS criteria, chemicals are assigned to one of the five toxicity categories on the basis of LD50 (oral, dermal) or LC50 (inhalation) from acute toxicity studies (United Nations 2021UNITED NATIONS. 2021. Globally harmonized system of classification and labelling of chemicals (GHS). Ninth revised edition. New York: United Nations, 556 p.). The LD50 of the O-glucuronide metabolites of canagliflozin M1-2 and M1-3 places them within the category 3 of the Organization for Economic Cooperation and Development (OECD) GHS classification system (LD50<300 mg/kg), while the SGLT2i and the remaining metabolites were classified in the less severe hazard category 4 (300 < LD50 < 2000 mg/kg). Furthermore, the European Union regulation is currently furthering alternative toxicity studies that decrease the use of animals. Consequently, this impacts specific regulations, for instance, REACH (Registration, Evaluation, Authorisation and Restriction of Chemicals) (Diaza et al. 2015DIAZA RG, MANGANELLI S, ESPOSITO A, RONCAGLIONI A, MANGANARO A & BENFENATI E. 2015. Comparison of in silico tools for evaluating rat oral acute toxicity. SAR QSAR Environ Res 26: 1-27.).

All SGLT2i, the empagliflozin metabolite M3-4, and the ertugliflozin metabolites M4-1 and M4-2 presented reproductive toxicity risk (Table II). Clinical trial evidence (Monami et al. 2014MONAMI M, NARDINI C & MANNUCCI E. 2014. Efficacy and safety of sodium glucose co-transport-2 inhibitors in type 2 diabetes: a meta-analysis of randomized clinical trials. Diabetes Obes Metab 16: 457-466., Rizzi & Trevisan 2016RIZZI M & TREVISAN R. 2016. Genitourinary infections in diabetic patients in the new era of diabetes therapy with sodium glucose cotransporter-2 inhibitors. Nutr Metab Cardiovasc Dis 26: 963-970., Zaccardi et al. 2016ZACCARDI F, WEBB DR, HTIKE ZZ, YOUSSEF D, KHUNTI K & DAVIES MJ. 2016. Efficacy and safety of sodium-glucose co-transporter-2 inhibitors in type 2 diabetes mellitus: systematic review and network meta-analysis. Diabetes Obes Metab 18: 783-794.) and post-marketing safety analysis corroborates these findings (Raschi et al. 2017RASCHI E, PARISOTTO M, FORCESI E, LA PLACA M, MARCHESINI G, DE PONTI F & POLUZZI E. 2017. Adverse events with sodium-glucose co-transporter-2 inhibitors: a global analysis of international spontaneous reporting systems. Nutr Metab Cardiovasc Dis 12: 1098-1107.). According to this analysis, SGLT2i are associated with a high report of reproductive adverse effects in the international pharmacovigilance databases. Signals of reproductive events in the post-marketing analysis were largely in agreement with data obtained from pre-approval RCTs (Randomized control trials) (Monami et al. 2014MONAMI M, NARDINI C & MANNUCCI E. 2014. Efficacy and safety of sodium glucose co-transport-2 inhibitors in type 2 diabetes: a meta-analysis of randomized clinical trials. Diabetes Obes Metab 16: 457-466., Rizzi & Trevisan 2016RIZZI M & TREVISAN R. 2016. Genitourinary infections in diabetic patients in the new era of diabetes therapy with sodium glucose cotransporter-2 inhibitors. Nutr Metab Cardiovasc Dis 26: 963-970., Zaccardi et al. 2016ZACCARDI F, WEBB DR, HTIKE ZZ, YOUSSEF D, KHUNTI K & DAVIES MJ. 2016. Efficacy and safety of sodium-glucose co-transporter-2 inhibitors in type 2 diabetes mellitus: systematic review and network meta-analysis. Diabetes Obes Metab 18: 783-794.). In addition to this clinical evidence, these results reinforced the guidance that prescribers should be aware of these common safety issues and should monitor patients to avoid them. These results support the awareness that metabolites may be potential mediators of drug-induced toxicities of the therapeutic agents and should be structurally and toxicologically characterized.

CONCLUSIONS

It is well-established that metabolite rather than the drug itself causes adverse reactions. Herein, we showed that all SGLT2i and its metabolites were non-tumorigenic, non-mutagenic and non-cardiotoxic. However, particular attention must be given to canagliflozin and empagliflozin metabolites M1-2, M1-3, M3-1, M3-2 and M3-3, which present hepatotoxicity (M1-2 and M3-1) and high LD50 values according to Hodge and Sterner scale (M1-2, M1-3, M3-1, M3-2 and M3-3). In agreement with clinical trials evidence and post-marketing analysis, all SGLT2i, the empagliflozin M3-4, and ertugliflozin M4-1 and M4-2 were predicted to have reproductive toxicity. Concerning these endpoints, our in silico results support the awareness that even minority metabolites may be potential mediators of drug-induced toxicities, especially for drugs of chronic use, and thus should be evaluated by sponsors and regulators.

ACKNOWLEDGMENTS

This study was partially financed by the Coordenação de Aperfeiçoamento de Pessoal de Nível Superior - Brazil/CAPES - Finance Code 001, by Fundação de Amparo à Pesquisa do Estado do Rio de Janeiro - Brazil/FAPERJ, Institutos Nacionais de Ciência e Tecnologia-Conselho Nacional de Desenvolvimento Científico e Tecnológico - Brazil/CNPq.

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Publication Dates

  • Publication in this collection
    03 Oct 2022
  • Date of issue
    2022

History

  • Received
    20 Sept 2021
  • Accepted
    1 Feb 2022
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