Skip to main content
Advertisement
Browse Subject Areas
?

Click through the PLOS taxonomy to find articles in your field.

For more information about PLOS Subject Areas, click here.

  • Loading metrics

Potential Drug-Drug Interactions in Prescriptions to Patients over 45 Years of Age in Primary Care, Southern Brazil

  • Jorge Juarez Vieira Teixeira ,

    jjvteixeira@uem.br

    Affiliations Departamento de Análises Clínicas e Biomedicina, Centro de Ciências da Saúde, Universidade Estadual de Maringá, Maringá–Paraná, Brazil, Departamento de Prática de Saúde Pública, Faculdade de Saúde Pública, Universidade de São Paulo. São Paulo, Brazil

  • Márcia Terezinha Lonardoni Crozatti,

    Affiliation Departamento de Ciências Biológicas, Universidade Federal de São Paulo, Diadema-São Paulo, Brazil

  • Carlos Aparecido dos Santos,

    Affiliation Departamento de Estatística, Centro de Ciências Exatas. Universidade Estadual de Maringá, Maringá–Paraná, Brazil

  • Nicolina Silvana Romano-Lieber

    Affiliation Departamento de Prática de Saúde Pública, Faculdade de Saúde Pública, Universidade de São Paulo. São Paulo, Brazil

Abstract

Background

Few cross-sectional studies involving adults and elderly patients with major DDIs have been conducted in the primary care setting. The study aimed to investigate the prevalence of potential drug-drug interactions (DDIs) in patients treated in primary care.

Methodology/Principal Findings

A cross-sectional study involving patients aged 45 years or older was conducted at 25 Basic Health Units in the city of Maringá (southern Brazil) from May to December 2010. The data were collected from prescriptions at the pharmacy of the health unit at the time of the delivery of medication to the patient. After delivery, the researcher checked the electronic medical records of the patient. A total of 827 patients were investigated (mean age: 64.1; mean number of medications: 4.4). DDIs were identified in the Micromedex® database. The prevalence of potential DDIs and major DDIs was 63.0% and 12.1%, respectively. In both the univariate and multivariate analyses, the number of drugs prescribed was significantly associated with potential DDIs, with an increasing risk from three to five drugs (OR = 4.74; 95% CI: 2.90–7.73) to six or more drugs (OR = 23.03; 95% CI: 10.42–50.91). Forty drugs accounted for 122 pairs of major DDIs, the most frequent of which involved simvastatin (23.8%), captopril/enalapril (16.4%) and fluoxetine (16.4%).

Conclusions/Significance

This is the first large-scale study on primary care carried out in Latin America. Based on the findings, the estimated prevalence of potential DDIs was high, whereas clinically significant DDIs occurred in a smaller proportion. Exposing patients to a greater number of prescription drugs, especially three or more, proved to be a significant predictor of DDIs. Prescribers should be more aware of potential DDIs. Future studies should assess potential DDIs in primary care over a longer period of time.

Introduction

Treatment with drugs is an essential tool of modern health care, but may also be a cause of illness and death, leading to a huge economic burden for society [1]. Although the concurrent use of multiple drugs often increases therapeutic effectiveness, certain combinations are harmful [2] and the growing use of new pharmacological agents has led to an increased risk of drug interactions [3]. Drug interactions are common in older adults [4] and usually result from shared metabolism pathways or intersecting drug action pathways [5]. The drugs most commonly implicated in major potential interactions are those used in the day-to-day clinical management of elderly patients with chronic diseases [6]. Given the wide variety of drugs prescribed [7], the safety of medications in primary care is a topic of considerable importance. Improvement in drug safety is essential in terms of patient morbidity/mortality as well as in economic terms [1]. Prescribers in all fields of medicine must become more aware of medication safety for older adults [8].

Studies on primary care report prevalence values for potential drug-drug interactions (DDIs) ranging 12% to 80% [3], [9][11] and prevalence values for clinically relevant DDIs ranging from 1.9% to 28.3% [2], [3], [9][13]. On the other hand, studies carried out in different healthcare settings report lower prevalence values for clinically relevant DDIs, ranging from 0.4% to 17.3% [14][24]. However, the studies cited differ with regard to patient characteristics, features of the interaction analysis software and sample size.

Few cross-sectional studies involving adults and elderly patients with major DDIs have been conducted in the primary care setting. Moreover, DDIs in ambulatory settings have not been widely studied [17]. In Brazil, a number of studies on clinically important potential DDIs have been carried out in different settings. Studies involving community-dwelling individuals report prevalence rates ranging from 4.6 to 17.6% [20], [24]. Studies conducted in hospital settings report prevalence rates ranging from 0.6 to 18.3% [23], [25][27] and a study carried out in a primary health care unit reports a prevalence rate of 6.8% [28]. To the best of our knowledge, this is the first large-scale study on primary care carried out in Latin America. The aim of the present study was to investigate the prevalence of potential drug-drug interactions in patients aged 45 years or older treated in the primary care setting in southern Brazil.

Methods

Setting and design

A cross-sectional observational study was conducted at all 25 Basic Health Units in the city of Maringá, state of Paraná, southern Brazil, from May to December 2010. The estimated population of the city is 357,117 inhabitants.

Patients and data collection

A convenience sample involving 827 patients and their respective prescriptions was determined for the data collection. A researcher spent one day at each Basic Health Unit throughout the period of service (7∶30 am to 6 pm). Information was collected from prescriptions at the pharmacy of the health unit at the time of the delivery of medication to the patient. After delivery, the researcher checked the electronic medical records to retrieve all medications prescribed to the patient. All prescription drugs are provided free by municipal healthcare service, except indapamide, meloxicam, norfloxacin and rosuvastatin, which are not included on the list of standard public health drugs. Prescription drugs, age and gender were the variables of interest. All information was recorded on a standardized form. The criteria for the inclusion of patients were having been treated in primary care by the physician of the Basic Health Unit, age 45 years or older and the use of at least two drugs prescribed by a physician.

Organization and data quality

Two methods were used to ensure greater accuracy of the findings. The data were first manually transferred to standardized forms, then double entered into the Epi Data 3.1® (The EpiData Association, Denmark, Europe) program and conferred patient by patient twice. The results between methods were compared for overall agreement.

Analysis of potential DDIs

All potential drug-drug interactions were identified in the Micromedex® database (Thomson Reuters Inc., 2011. Micromedex Healthcare Series Greenwood Village/CO) according to the degree of severity (contraindicated, major, moderate, minor) and entered into the Epi Data 3.1® program. The interactions were also analyzed for potential risk. All potential DDIs were analyzed in pairs. When a pair of drugs was not available in the Micromedex® database, the interaction was not analyzed.

Statistical analysis

The data were analyzed using the Statistica® program version 8.0 (StatSoft Company Information, Tulsa, Oklahoma, USA). In the univariate analyses of factors associated with potential drug-drug interactions, the chi-square test was used for the comparison of the groups. In the multivariate analysis, all variables with a p-value of <0.05 and all confounding variables were incorporated into the model. The data were controlled for gender, age and number of drugs. The odds ratio (OR) and respective confidence interval (CI) was calculated in the multivariate analysis for each variable. A p-value of <0.05 was considered statistically significant.

Ethical considerations

This study received approval from the Ethics Committee on Research Involving Human Subjects, State University of Maringá, in accordance with Resolution 196/1996 of the Brazilian Ministry of Health. Patient consent was waived (document 119/2010) due to the fact that the study involved information from a secondary database. Moreover, the team of researchers did not have contact with the patients at any time during the study. The researchers complied with Resolution 196/1996, ensuring complete confidentiality and anonymity. The Center for Continuing Education and Training of Health Workers (CECAPS)/Municipal Department of Health also approved this study.

Results

From May 1 to December 29, 2010, 827 patients aged 45 years or older were investigated at 25 Basic Health Units for the identification of potential drug-drug interactions. Most patients were between 45 and 69 years of age (70.1%; mean age: 64.1±10.6 years) and female (65.9%). The number of concomitant prescription medications ranged from 2 to 11 (mean: 4.4±1.8) and 43.1% of patients took more than four drugs. Among the 827 patients, 521 had a potential DDI, resulting in a prevalence value of 63.0%. More than three fifths (320/521) of these patients had one to two potential DDIs (mean 2.5±1.9). The prevalence of major DDIs was 12.1% (100/827) and among these 100 patients, 81.0% had at least one potential DDI (Table 1).

thumbnail
Table 1. General patients characteristics attendance in primary care.

https://doi.org/10.1371/journal.pone.0047062.t001

No statistically significant differences were found regarding the presence/absence of potential DDI between men and women (p = 0.61) or different age groups (p>0.05). In both the univariate and multivariate analyses, the number of drugs prescribed was significantly associated with potential DDIs, with an increasing risk from three to five drugs (OR = 4.74; 95% CI: 2.90–7.73) to six or more drugs (OR = 23.03; 95% CI: 10.42–50.91) (Table 2).

thumbnail
Table 2. Predictors of potential drug-drug interactions in patients attendance in primary care (n = 827).

https://doi.org/10.1371/journal.pone.0047062.t002

A total of 160 active substances were prescribed to patients, 16 of which were not analyzed in the Micromedex® database, thereby enabling the assessment of 90%. Forty active substances accounted for 122 pairs of major potential DDIs, classified as Drug A and Drug B. The drugs of Group A most involved in major potential DDIs were simvastatin (23.8%), captopril/enalapril (16.4%) and fluoxetine (16.4%). Drugs acting on the cardiovascular system (CVS) accounted for 69.0% of potential major DDIs and those acting on the central nervous system (CNS) accounted for 28.5% (Table 3)

thumbnail
Table 3. Frequency of pairs of major potential drug-drug interactions in prescriptions dispensed in primary care (n = 122).

https://doi.org/10.1371/journal.pone.0047062.t003

Table 4 displays data regarding the 521 patients with potential DDIs. For all age groups, potential moderate DDIs were the most frequent (70.2%), followed by potential major DDIs (19.2%). The age group with the highest frequency of potential major DDIs was 45 to 69 years (70.0%).

thumbnail
Table 4. Distribution de patients exposed to potential drug-drug interactions, attendance in primary care (n = 521).

https://doi.org/10.1371/journal.pone.0047062.t004

Discussion

The mean age of the sample (64 years) was similar to that reported in other studies conducted on primary care (62 to 69 years) [2], [11]. The mean number of prescription drugs was 4.4, which is was consistent with a study conducted in similar settings in Italy (4.3 drugs) [29]. Approximately 43% of the patients were prescribed more than four drugs, which is similar to the frequencies reported in previous studies (30.4% to 50.5%) [11], [29]. Although the relative frequency in the present study is consistent with the two studies cited, it should be stressed that mean age and number prescription drugs were different.

The prevalence for all potential DDIs in patients treated in the primary care setting was 63%. Rates ranging from 9.2% to 78.8% have been described in patients under ambulatory care for all potential DDIs [11], [30]. This broad range of prevalence values may be partially explained by factors such as study design, methodology, definitions, characteristics of the population, number of medications prescribed, therapeutic traditions and compendium of drug interactions [10], [30], [31].

In the present study, the prevalence of potential major DDIs was 12.1% (100/827). This finding is in agreement with that described in studies involving ambulatory patients, which report values ranging from 3.8% to 16% [11], [12], [14], [29]. Population-based studies report prevalence values ranging from 10% to 17.6% [10], [20]. Major DDIs are considered clinically important and should be avoided by healthcare professionals, especially physicians and pharmacists. Pharmacists, in particular, should avoid dispensing combinations of drugs that may have serious DDIs [32]. In the present study, only 0.4% of the patients (3/827) had contraindicated DDIs, which is similar to figures reported in studies carried out in France (0.4%) [33] and Taiwan (0.2%) [18]. A previous population-based study conducted in Brazil using the same database found a frequency of 2.4% [20]. Although this result is much higher than the frequency found in the present study, the difference may partially be explained by the study design and characteristics of the population.

No statistically significant differences were found between men and women regarding DDIs, which is consistent with findings described in previous studies carried out in primary care settings [11], [29], [34] as well as investigations carried out in other settings [35], [36]. Age is another important variable to consider in relation to drug use. In the present study, no statistically significant independent association was found regarding age, which is in agreement with a number of studies conducted in different settings [20], [22], [37] and in disagreement with other studies that report a positive association between age and potential DDIs [11], [20], [29], [38].

Three or more drugs prescribed to patients was significantly associated with potential DDIs. Similar studies report a trend of increasing prevalence of potential DDIs with the increase in the number of drugs prescribed [11], [29], [33]. Research worldwide has shown that polypharmacy (5 or more drugs) [39] contributes to the increased risk of potential DDIs [18], [19] In the present study, approximately two fifths of the patients were taking five or more drugs. The increasing prevalence of potential interactions with age reflects the increase in the number of prescriptions [33]. The number of drugs prescribed and used by patients is a significant predictor of potential DDIs in pharmacoepidemiological studies. Thus, steps should be taken to promote rational therapy in primary care.

The three most active substances involved in potentially clinically significant interactions were simvastatin, captopril/enalapril and fluoxetine. Simvastatin, which is used to control elevated cholesterol levels, is one of the most widely prescribed drugs [40]. However, it requires considerable care and vigilance, as it may expose patients to an increased risk of myopathy or rhabdomyolysis [2], [16], [41][44]. Moreover, when used in combination with drugs with a potential DDI, the risk is even greater. An older age is a risk factor for rhabdomyolysis among statin users. Patients at high risk for developing rhabdomyolysis should be closely monitored for signs and symptoms of the disease [44]. Captopril/enalapril in combination with potassium-sparing drugs may increase the risk of hyperkalemia [15], [45][49]. Fluoxetine interacting with an anti-inflammatory agent may increase the risk of bleeding [21], [50][52]. The prescription of these drugs in combination should always be carefully analyzed according to risk/benefit ratio [7].

The largest number of active substances prescribed with major DDIs were related to the CVS (diuretics, ACE inhibitors, digoxin, beta-blockers and calcium channel blockers), which is similar to findings described in studies carried out in different settings [3], [19], [22]. An Italian study reports acetylsalicylic acid, digoxin and enalapril as the most prescribed substances [29]. A study carried out in Mexico City reports that drugs for the alimentary tract and metabolism were the most commonly prescribed, whereas drugs for diabetes accounted for only 6.7% versus 24.8% for drugs acting on the CVS. A higher frequency of prescription drugs acting on the CVS is expected among adults and elderly individuals. The second class of drugs most involved with major DDIs were those acting on the CNS, which is consistent with findings described in a previous study [33]. Public health services should have a standard list of drugs, respecting the epidemiological characteristics and actual situation of each health service. If prescribers have access to a wider array of drugs at the health service, they could prescribe safer drugs with less of a chance of potential DDIs.

The results of the present investigation are similar to those described in international studies that show an exponential growth in major DDIs. The prevention of clinically relevant interactions in primary care is the responsibility of all healthcare professionals. As treatment should offer the advantage of better pharmacotherapy for patients, it is imperative for physicians to be more aware of the risks involved when exposing patients to major DDIs. These predictable interactions are the primary responsibility of the prescriber rather than the patient and care must therefore be taken to develop reliable prescribing strategies that can be continuously monitored and revised [6]. A number of programs for analyzing potential drug-drug interactions and technical information are available. The collaboration of healthcare professionals regarding this problem could reduce the impact of potential DDIs on public health.

The present study has some limitations that should be addressed. First, the study involved a convenience sample and consisted of only one day of data collection at each Basic Health Unit. Second, the analysis of the pairs of potential drug-drug interactions was based on only one database. Three, the study was conducted in only one type of setting and the results may not be generalizable to other settings or patients in different age groups. Despite these limitations, the present study offers important information on the prescription of drugs with potential DDIs in patients aged 45 years or older in primary care.

In conclusion, the findings of the present study showed that the estimated prevalence of potential DDIs among adults and elderly individuals was high, whereas clinically significant DDIs occurred in a smaller proportion and within the rates reported in the literature. Exposing patients to a greater number of prescription drugs, three or more, proved to be a significant predictor of DDIs. Future studies should assess potential DDIs in primary care over a longer period of time.

Author Contributions

Conceived and designed the experiments: JJVT NSR-L CAS. Performed the experiments: JJVT NSR-L MTLC. Analyzed the data: JJVT NSR-L MTLC CAS. Contributed reagents/materials/analysis tools: JJVT NSR-L MTLC CAS. Wrote the paper: JJVT NSR-L MTLC CAS.

References

  1. 1. Mannheimer B, Ulfvarson J, Eklof S, Bergqvist M, Andersen-Karlsson E, et al. (2006) Drug-related problems and pharmacotherapeutic advisory intervention at a medicine clinic. Eur J Clin Pharmacol 62: 1075–1081.
  2. 2. Bergk V, Gasse C, Rothenbacher D, Loew M, Brenner H, et al. (2004) Drug interactions in primary care: impact of a new algorithm on risk determination. Clin Pharmacol Ther 76: 85–96.
  3. 3. Bjerrum L, Andersen M, Petersen G, Kragstrup J (2003) Exposure to potential drug interactions in primary health care. Scand J Prim Health Care 21: 153–158.
  4. 4. Steinman MA, Hanlon JT (2010) Managing medications in clinically complex elders: “There's got to be a happy medium”. JAMA 304: 1592–1601.
  5. 5. Tatonetti NP, Denny JC, Murphy SN, Fernald GH, Krishnan G, et al. (2011) Detecting drug interactions from adverse-event reports: interaction between paroxetine and pravastatin increases blood glucose levels. Clin Pharmacol Ther 90: 133–142.
  6. 6. Seymour RM, Routledge PA (1998) Important drug-drug interactions in the elderly. Drugs Aging 12: 485–494.
  7. 7. Avery AJ, Sheikh A, Hurwitz B, Smeaton L, Chen YF, et al. (2002) Safer medicines management in primary care. Br J Gen Pract 52 Suppl: S17–22.
  8. 8. Zurakowski T (2009) The practicalities and pitfalls of polypharmacy. Nurse Pract 34: 36–41; quiz 41–32.
  9. 9. Linnarsson R (1993) Drug interactions in primary health care. A retrospective database study and its implications for the design of a computerized decision support system. Scand J Prim Health Care 11: 181–186.
  10. 10. Bjorkman IK, Fastbom J, Schmidt IK, Bernsten CB (2002) Pharmaceutical Care of the Elderly in Europe Research G (2002) Drug-drug interactions in the elderly. Ann Pharmacother 36: 1675–1681.
  11. 11. Doubova Dubova SV, Reyes-Morales H, Torres-Arreola Ldel P, Suarez-Ortega M (2007) Potential drug-drug and drug-disease interactions in prescriptions for ambulatory patients over 50 years of age in family medicine clinics in Mexico City. BMC Health Serv Res 7: 147.
  12. 12. Putnam W, Lawson B, Frail D, Bower K, Archibald G, et al. (2006) Potential for drug interactions in seniors with osteoarthritis. Can Fam Physician 52: 340–341.
  13. 13. Lopez-Picazo JJ, Ruiz JC, Sanchez JF, Ariza A, Aguilera B, et al. (2010) Prevalence and typology of potential drug interactions occurring in primary care patients. Eur J Gen Pract 16: 92–99.
  14. 14. Astrand B, Astrand E, Antonov K, Petersson G (2006) Detection of potential drug interactions - a model for a national pharmacy register. Eur J Clin Pharmacol 62: 749–756.
  15. 15. Chatsisvili A, Sapounidis I, Pavlidou G, Zoumpouridou E, Karakousis VA, et al. (2010) Potential drug-drug interactions in prescriptions dispensed in community pharmacies in Greece. Pharm World Sci 32: 187–193.
  16. 16. Egger SS, Drewe J, Schlienger RG (2003) Potential drug-drug interactions in the medication of medical patients at hospital discharge. Eur J Clin Pharmacol 58: 773–778.
  17. 17. Halkin H, Katzir I, Kurman I, Jan J, Malkin BB (2001) Preventing drug interactions by online prescription screening in community pharmacies and medical practices. Clin Pharmacol Ther 69: 260–265.
  18. 18. Lin CF, Wang CY, Bai CH (2011) Polypharmacy, aging and potential drug-drug interactions in outpatients in Taiwan: a retrospective computerized screening study. Drugs Aging 28: 219–225.
  19. 19. Schuler J, Duckelmann C, Beindl W, Prinz E, Michalski T, et al. (2008) Polypharmacy and inappropriate prescribing in elderly internal-medicine patients in Austria. Wien Klin Wochenschr 120: 733–741.
  20. 20. Secoli SR, Figueras A, Lebrao ML, de Lima FD, Santos JL (2010) Risk of potential drug-drug interactions among Brazilian elderly: a population-based, cross-sectional study. Drugs Aging 27: 759–770.
  21. 21. Smithburger PL, Kane-Gill SL, Seybert AL (2010) Drug-drug interactions in cardiac and cardiothoracic intensive care units: an analysis of patients in an academic medical centre in the US. Drug Saf 33: 879–888.
  22. 22. Fokter N, Možina M, Brvar M (2010) Potential drug-drug interactions and admissions due to drug-drug interactions in patients treated in medical departments. Wien Klin Wochenschr 122: 81–88.
  23. 23. Cruciol-Souza JM, Thomson JC (2006) A pharmacoepidemiologic study of drug interactions in a Brazilian teaching hospital. Clinics (Sao Paulo) 61: 515–520.
  24. 24. Bleich GW, Bleich A, Chiamulera P, Sanches AC, Schneider DS, et al. (2009) Frequency of potential interactions between drugs in medical prescriptions in a city in southern Brazil. Sao Paulo Med J 127: 206–210.
  25. 25. Miyasaka LS, Atallah AN (2003) Risk of drug interaction: combination of antidepressants and other drugs. Rev Saude Publica 37: 212–215.
  26. 26. Pivatto Júnior F, Godoy DB, Pires DFS, Pietrobon E, Rosa FTA, et al. (2009) Potential drug interactions among prescriptions of a teaching hospital in Porto Alegre. Rev AMRIGS 53: 251–256.
  27. 27. Silva NMO, Carvalho RP, Bernardes ACA, Moriel P, Mazzola PG, et al. (2010) Potential drug interaction evaluation in medical prescriptions in a public hospital specialized in women care, in Campinas, SP. Rev Ciênc Farm Básica Apl 31: 171–176.
  28. 28. Codagnone Neto V, Garcia VP, Santa Helena ET (2010) Possible pharmacological interactions in hypertensive and/or diabetic elderly in family health units at Blumenau (SC). Braz J Pharm Sci 46: 795–804.
  29. 29. Nobili A, Pasina L, Tettamanti M, Lucca U, Riva E, et al. (2009) Potentially severe drug interactions in elderly outpatients: results of an observational study of an administrative prescription database. J Clin Pharm Ther 34: 377–386.
  30. 30. Jankel CA, Speedie SM (1990) Detecting drug interactions: a review of the literature. DICP 24: 982–989.
  31. 31. Abarca J, Malone DC, Armstrong EP, Grizzle AJ, Hansten PD, et al. (2004) Concordance of severity ratings provided in four drug interaction compendia. J Am Pharm Assoc (2003) 44: 136–141.
  32. 32. Becker ML, Kallewaard M, Caspers PW, Schalekamp T, Stricker BH (2005) Potential determinants of drug-drug interaction associated dispensing in community pharmacies. Drug Saf 28: 371–378.
  33. 33. Guedon-Moreau L, Ducrocq D, Duc MF, Quieureux Y, L'Hote C, et al. (2003) Absolute contraindications in relation to potential drug interactions in outpatient prescriptions: analysis of the first five million prescriptions in 1999. Eur J Clin Pharmacol 59: 689–695.
  34. 34. Weingart SN, Toth M, Sands DZ, Aronson MD, Davis RB, et al. (2003) Physicians' decisions to override computerized drug alerts in primary care. Arch Intern Med 163: 2625–2631.
  35. 35. Lapi F, Vietri M, Moschini M, Cecchi E, Pugi A, et al. (2010) Potential drug-drug interactions and radiodiagnostic procedures: an in-hospital survey. Pharm World Sci 32: 200–205.
  36. 36. Magnus D, Rodgers S, Avery AJ (2002) GPs' views on computerized drug interaction alerts: questionnaire survey. J Clin Pharm Ther 27: 377–382.
  37. 37. Passarelli MC, Jacob-Filho W, Figueras A (2005) Adverse drug reactions in an elderly hospitalised population: inappropriate prescription is a leading cause. Drugs Aging 22: 767–777.
  38. 38. Brvar M, Fokter N, Bunc M, Mozina M (2009) The frequency of adverse drug reaction related admissions according to method of detection, admission urgency and medical department specialty. BMC Clin Pharmacol 9: 8.
  39. 39. Viktil KK, Blix HS, Moger TA, Reikvam A (2007) Polypharmacy as commonly defined is an indicator of limited value in the assessment of drug-related problems. Br J Clin Pharmacol 63: 187–195.
  40. 40. Yang HJ, Choi MJ, Wen H, Kwon HN, Jung KH, et al. (2011) An effective assessment of simvastatin-induced toxicity with NMR-based metabonomics approach. PLoS One 6: e16641.
  41. 41. Becquemont L, Neuvonen M, Verstuyft C, Jaillon P, Letierce A, et al. (2007) Amiodarone interacts with simvastatin but not with pravastatin disposition kinetics. Clin Pharmacol Ther 81: 679–684.
  42. 42. Morera T, Gervasini G, Carrillo JA, Benitez J (2005) Evaluation of a drug-drug interaction alert structure through the retrospective analysis of statins-macrolides co-prescriptions. Basic Clin Pharmacol Toxicol 96: 289–294.
  43. 43. Oshima Y (2011) Characteristics of drug-associated rhabdomyolysis: analysis of 8,610 cases reported to the U.S. Food and Drug Administration. Intern Med 50: 845–853.
  44. 44. Schech S, Graham D, Staffa J, Andrade SE, La Grenade L, et al. (2007) Risk factors for statin-associated rhabdomyolysis. Pharmacoepidemiol Drug Saf 16: 352–358.
  45. 45. Haueis P, Greil W, Huber M, Grohmann R, Kullak-Ublick GA, et al. (2011) Evaluation of drug interactions in a large sample of psychiatric inpatients: a data interface for mass analysis with clinical decision support software. Clin Pharmacol Ther 90: 588–596.
  46. 46. Mallet L, Spinewine A, Huang A (2007) The challenge of managing drug interactions in elderly people. Lancet 370: 185–191.
  47. 47. Paige NM, Nagami GT (2009) The top 10 things nephrologists wish every primary care physician knew. Mayo Clin Proc 84: 180–186.
  48. 48. Indermitte J, Burkolter S, Drewe J, Krahenbuhl S, Hersberger KE (2007) Risk factors associated with a high velocity of the development of hyperkalaemia in hospitalised patients. Drug Saf 30: 71–80.
  49. 49. Juurlink DN, Gomes T, Ko DT, Szmitko PE, Austin PC, et al. (2009) A population-based study of the drug interaction between proton pump inhibitors and clopidogrel. CMAJ 180: 713–718.
  50. 50. Kravitz RL, Ford DE (2008) Introduction: chronic medical conditions and depression–the view from primary care. Am J Med 121: S1–7.
  51. 51. Pirmohamed M, James S, Meakin S, Green C, Scott AK, et al. (2004) Adverse drug reactions as cause of admission to hospital: prospective analysis of 18 820 patients. BMJ 329: 15–19.
  52. 52. de Abajo FJ, Montero D, Rodriguez LA, Madurga M (2006) Antidepressants and risk of upper gastrointestinal bleeding. Basic Clin Pharmacol Toxicol 98: 304–310.