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Factors associated with drug–drug interactions involving citalopram in the UK Biobank

Published online by Cambridge University Press:  01 August 2025

Benjamin Laplace
Affiliation:
Psychiatry Department of Research and Innovation, Esquirol Hospital Center, Limoges, France Social, Genetic & Developmental Psychiatry Centre, Institute of Psychiatry, Psychology & Neuroscience, King’s College London, London, UK
Win Lee Edwin Wong
Affiliation:
Social, Genetic & Developmental Psychiatry Centre, Institute of Psychiatry, Psychology & Neuroscience, King’s College London, London, UK Department of Pharmacology, Yong Loo Lin School of Medicine, National University of Singapore, Singapore, Singapore Centre for Affective Disorders, Department of Psychological Medicine, Institute of Psychiatry, Psychology & Neuroscience, King’s College London, London, UK
Marco Menchetti
Affiliation:
Department of Biomedical and NeuroMotor Sciences, University of Bologna, Bologna, Italy
Diana De Ronchi
Affiliation:
Department of Biomedical and NeuroMotor Sciences, University of Bologna, Bologna, Italy
Paolo Fusar-Poli
Affiliation:
Early Psychosis: Interventions and Clinical-detection (EPIC) Lab, Department of Psychosis Studies, Institute of Psychiatry, Psychology & Neuroscience, King’s College London, London, UK OASIS Service, South London and Maudsley NHS Foundation Trust, London, UK Department of Brain and Behavioral Sciences, University of Pavia, Pavia, Italy National Institute for Health Research Maudsley Biomedical Research Centre, South London and Maudsley NHS Foundation Trust, London, UK
Giuseppe Fanelli
Affiliation:
Department of Biomedical and NeuroMotor Sciences, University of Bologna, Bologna, Italy Department of Human Genetics, Radboud University Medical Center, Donders Institute for Brain, Cognition and Behaviour, Nijmegen, The Netherlands
Alessandro Serretti
Affiliation:
Department of Medicine and Surgery, Kore University of Enna, Enna, Italy Oasi Research Institute-IRCCS, Troina, Italy
Cathryn M. Lewis
Affiliation:
Social, Genetic & Developmental Psychiatry Centre, Institute of Psychiatry, Psychology & Neuroscience, King’s College London, London, UK
Chiara Fabbri*
Affiliation:
Department of Biomedical and NeuroMotor Sciences, University of Bologna, Bologna, Italy
*
Correspondence: Chiara Fabbri. Email: chiara.fabbri41@unibo.it
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Abstract

Background

Adults with mood and/or anxiety disorders have increased risks of comorbidities, chronic treatments and polypharmacy, increasing the risk of drug–drug interactions (DDIs) with antidepressants.

Aims

To use primary care records from the UK Biobank to assess DDIs with citalopram, the most widely prescribed antidepressant in UK primary care.

Method

We classified drugs with pharmacokinetic or pharmacodynamic DDIs with citalopram, then identified prescription windows for these drugs that overlapped with citalopram prescriptions in UK Biobank participants with primary care records. We tested for associations of DDI status (yes/no) with sociodemographic and clinical characteristics and with cytochrome 2C19 activity, using univariate tests, then fitted multivariable models for variables that reached Bonferroni-corrected significance.

Results

In UK Biobank primary care data, 25 508 participants received citalopram prescription(s), among which 11 941 (46.8%) had at least one DDI, with an average of 1.96 interacting drugs. The drugs most commonly involved were proton pump inhibitors (40% of co-prescription instances). Individuals with DDIs were more often female and older, had more severe and less treatment-responsive depression, and had higher rates of psychiatric and physical disorders. In the multivariable models, treatment resistance and markers of severity (e.g. history of suicidal and self-harm behaviours) were strongly associated with DDIs, as well as comorbidity with cardiovascular disorders. Cytochrome 2C19 activity was not associated with the occurrence of DDIs.

Conclusions

The high frequency of DDIs with citalopram in fragile groups confirms the need for careful consideration before prescribing and periodic re-evaluation.

Information

Type
Paper
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Copyright
© The Author(s), 2025. Published by Cambridge University Press on behalf of Royal College of Psychiatrists

Antidepressants are recommended for the treatment of depressive and anxiety disorders; given the high prevalence of these conditions, they were used by more than 12% of the adult US population in 2013,Reference Moore and Mattison1 with a slightly lower but similar rate in Europe, and evidence of an increase over time.Reference Amrein, Hengartner, Näpflin, Farcher and Huber2,Reference Verhaak, de Beurs and Spreeuwenberg3 For example, antidepressant prescriptions more than tripled between 1998 and 2018 in primary care in England and corresponded to 6% of all drugs dispensed in 2017.Reference Bogowicz, Curtis, Walker, Cowen, Geddes and Goldacre4 Chronic antidepressant use is common, e.g. in UK primary care, the average duration of antidepressant prescription was reported to be 4.8 years for depression and 6.8 years for anxiety and/or depression.Reference Petty, House, Knapp, Raynor and Zermansky5

Patients with depressive and/or anxiety disorders often take multiple medications because of frequent concomitant medical conditions, frequent chronic drug use and common psychotropic polypharmacy (affecting more than half of depressed adults).Reference Arnaud, Brister, Duckworth, Foxworth, Fulwider and Suthoff6Reference Rhee and Rosenheck8 In patients with schizophrenia or depressive disorders being treated in hospital, adverse drug reactions (ADRs) were 2–3 times higher in those receiving polytherapy compared with those receiving monotherapy.Reference Stassen, Bachmann, Bridler, Cattapan, Herzig and Schneeberger9 Polypharmacy is particularly common among older adults,Reference Delara, Murray, Jafari, Bahji, Goodarzi and Kirkham10 a group with frequent multimorbidities and chronic use of antidepressants,Reference Lunghi, Antonazzo, Burato, Raschi, Zoffoli and Forcesi11 and the risk of drug–drug interactions (DDIs) increases with the number of prescribed drugs.Reference Wolff, Reißner, Hefner, Normann, Kaier and Binder12

DDIs are unwanted increases or decreases in drug effects caused by other medication(s) taken at the same time.Reference Schellander and Donnerer13 DDIs have been reported to be an important cause of both hospital admissions and hospital visits, particularly when involving drugs that may be associated with gastrointestinal bleeding or cardiac rhythm alterations.Reference Dechanont, Maphanta, Butthum and Kongkaew14 Importantly, the majority of DDIs (35%) in older adults were reported to involve psychotropic medications.Reference Anand, Wallace and Chase15 Previous studies have reported that DDIs are common in antidepressant users, with prevalence between 25% and 61.5%, depending on the characteristics of the sample and clinical setting.Reference Lai, Alvarez, Dang, Vuong, Ngo and Jo16Reference Miyasaka and Atallah18 In patients with depression, DDIs can lead to serious ADRs such as QT-interval prolongation with cardiac arrhythmia and serotonin syndrome (a rare but potentially fatal condition); they may also reduce tolerability, treatment adherence and response.Reference Chen and Ding19 In addition to polypharmacy and age, depression itself and markers of depression severity and/or recurrence are associated with DDIs risk.Reference Wolff, Reißner, Hefner, Normann, Kaier and Binder12,Reference Chen and Ding19,Reference Hughes, Russo, Walsh, Menditto, Bennett and Cahir20 Polypharmacy in older adults with depression is also associated with a low level of education and with chronic diseases, anxiety and pain.Reference Wiersema, Oude Voshaar, van den Brink, Wouters, Verhaak and Comijs21

Citalopram was the most widely prescribed antidepressant in primary care in England in the period 1998–2018Reference Bogowicz, Curtis, Walker, Cowen, Geddes and Goldacre4 and is the most commonly prescribed antidepressant according to UK Biobank (UKB) primary care records.Reference Fabbri, Hagenaars, John, Williams, Shrine and Moles22 Citalopram is commonly prescribed in older adults and other fragile groups of patients,Reference Karkare, Bhattacharjee, Kamble and Aparasu23,Reference Guirguis, Chilcot, Almond, Davenport, Wellsted and Farrington24 making it a particularly relevant drug to consider in relation to DDIs. Citalopram has been suggested as a first-line treatment for late-life depression, as it is considered to have less potential for DDIs compared with other antidepressants, but a meta-analysis suggested that there are no differences in tolerability outcomes for citalopram versus other antidepressants.Reference Seitz, Gill and Conn25 Citalopram has also received a warning about its potential risk to induce QT-interval prolongation,Reference Funk and Bostwick26 which is one of the most frequent clinically relevant ADRs in the context of DDIs.Reference Dechanont, Maphanta, Butthum and Kongkaew14

DDIs can be divided in two main groups: pharmacokinetic and pharmacodynamic DDIs. Pharmacokinetic DDIs mainly involve interactions at the level of drug metabolism, which in the case of citalopram are substantially due to the activity of cytochrome P450 2C19 (CYP2C19).Reference Brouwer, Nijenhuis, Soree, Guchelaar, Swen and van Schaik27 In the case of pharmacodynamic interactions, the alterations in a drug’s effect occur at the site of drug action.Reference Schellander and Donnerer13

As citalopram is the most commonly prescribed antidepressant in primary care, and given the potential relevance of pharmacokinetic and pharmacodynamic DDIs, in this study, we aimed to compare the sociodemographic and clinical characteristics, as well as the CYP2C19 metabolic activity, of patients receiving citalopram with versus without interacting drugs, using primary care records linked to the UKB. We did not aim to find causal links in this work but to study the characteristics of participants with DDI and identify variables associated with co-prescription of citalopram and interacting drugs. These findings may suggest which categories of patients are more frequently exposed to DDIs with citalopram in primary care and the most common drugs involved in these DDIs, pointing to issues deserving clinical consideration.

Method

Sample

UKB is a prospective health study of ∼500 000 individuals recruited from across the UK except Northern Ireland. The main aim of the study was to identify the genetic and nongenetic determinants of diseases of middle and old age, as participants were aged between 40 and 69 years at baseline (2006–2010). UKB has collected medical history, environmental, lifestyle, multimodal imaging, genetic and other biomarker data. It combines extensive and detailed assessment of exposures with follow-up and characterisation of many different health-related outcomes. These are obtained through linkage with electronic health records such as primary care records, as well as self-reported variables.Reference Conroy, Sellors, Effingham, Littlejohns, Boultwood and Gillions28

In this study, we used information included in primary care records, which were available for ∼230 000 participants. Clinical (Read v2 or CTV3) and drug codes (Read v2, BNF 2 and/or dm+d) and associated dates were available for primary care events.29 Citalopram prescriptions and psychiatric diagnoses extracted previouslyReference Fabbri, Hagenaars, John, Williams, Shrine and Moles22 were used for this study. Further information on UKB design and data collection is available in the Supplementary Material available at https://doi.org/10.1192/bjo.2025.10060.

The UKB obtained ethics approval from the North West Multi-centre Research Ethics Committee with approval number 11/NW/0382; participants provided written informed consent before inclusion.

Definition of DDIs involving citalopram

We considered both pharmacokinetic and pharmacodynamic DDIs. According to the Dutch Pharmacogenetics Working Group (DPWG) guidelines,Reference Brouwer, Nijenhuis, Soree, Guchelaar, Swen and van Schaik27 citalopram is substantially metabolised by CYP2C19. Therefore, we considered pharmacokinetic DDIs to be those involving drugs that were CYP2C19 substrates, inhibitors or inducers.30

Pharmacodynamic DDIs were evaluated on the basis of the US Food and Drug Administration label31 and that of the French drug regulatory agency (Agence nationale de sécurité du médicament et des produits de santé);32 the latter was considered because it provides detailed information on DDIs, in particular, a classification of their clinical relevance, ranking potential DDIs on four levels: ‘Contraindicated’, ‘Not recommended’, ‘Use with caution’ and ‘To be considered’. We focused on DDIs more likely to be clinically significant; therefore, we excluded drugs belonging to the ‘To be considered’ group. Similarly, we considered DDIs with citalopram described as clinically important by the Food and Drug Administration.

A complete list of the drugs involved in DDIs with citalopram is provided in Supplementary Table 1, stratified by pharmacokinetic and pharmacodynamic interactions.

Identification of DDIs involving citalopram in the UKB

We extracted prescription records of citalopram as in previous work.Reference Fabbri, Hagenaars, John, Williams, Shrine and Moles22 We considered as a distinct prescription window any period during which consecutive prescriptions of the drug were ≤14 weeks apart, to exclude periods when the drug was probably suspended. This was done both for citalopram and for drugs included in the DDIs list. Drugs involved in DDIs with citalopram were extracted after annotation of their chemical names with other drug names (Supplementary Table 2), to consider all possible name occurrences in the prescription records, using a case-insensitive approach.

We considered overlapping prescription periods between citalopram and interacting drugs when there was any time overlap between the prescription windows of the drugs ±2 weeks, to account for the treatment span after the last prescription of citalopram and the interacting drug (Fig. 1). Individuals could receive more than one drug interacting with citalopram, at the same time or in different periods; however, the outcome was binary (i.e. occurrence of at least one DDI with citalopram), as we decided to adopt a lifetime perspective. This choice was motivated by the assumption of a certain time stability in most of the variables of interest, given the age range of participants, and the difficulty of reliably estimating the timeline of multiple events using electronic health records, which reflect naturalistic clinical practice.

Fig. 1 Examples of prescription windows (arrows) of citalopram (grey) and drugs in the DDI (drug–drug interaction) list. The start date is the date of the first prescription, and the end date of a prescription window is the date of the last prescription of a drug if there were no following prescriptions or the following prescription was >14 weeks apart.

Statistical analysis

We compared the characteristics of participants with at least one DDI involving citalopram and those who received citalopram but never had a co-prescription of an interacting drug (Fig. 1). The characteristics considered included age at first citalopram prescription, sex, psychiatric diagnoses, general comorbidities, treatment-resistant depression (TRD)Reference Fabbri, Hagenaars, John, Williams, Shrine and Moles22 and CYP2C19 metabolising activity.Reference McInnes, Lavertu, Sangkuhl, Klein, Whirl-Carrillo and Altman33 CYP2C19 metabolising activity was determined using PGxPOP, a pharmacogenetics matching engine based on PharmCAT,Reference Sangkuhl, Whirl-Carrillo, Whaley, Woon, Lavertu and Altman34 which uses allele definitions to characterise phenotypes (poor metabolisers, intermediate metabolisers, normal metabolisers, rapid or ultrarapid metabolisers). Individuals with undetermined or uncertain phenotypic classification were excluded. CYP2C19 was selected as the only relevant gene in relation to citalopram clinical effects, according to the Clinical Pharmacogenetics Implementation Consortium and Dutch Pharmacogenetics Working Group guidelines.35 A complete list of the variables and their coding is provided in Supplementary Table 3.

DDI and non-DDI groups were first compared using univariate tests (Pearson’s chi-squared test or Student’s t-test) as appropriate, applying a Bonferroni correction (34 variables tested, α = 0.05/34 = 1.47 × 10−3). Second, we used logistic regression to assess whether variables associated with DDI status in the univariate tests remained associated after adjustment for sex, age at first citalopram prescription, duration of the longest citalopram prescription, Townsend deprivation index, educational qualifications, body mass index, ethnic background and smoking history (ever smoked). The variables were selected to adjust for the possible effects of socioeconomic and demographic factors, for the length of exposure to citalopram and for possible effects of smoking on drug metabolism.Reference Li and Shi36 The significance threshold from the univariate analyses was also applied in the regression models.

As CYP2C19 metabolic activity is more likely to affect the duration of medication co-prescription within a DDI rather than prescription of the DDI medications, for CYP2C19 activity we also tested the association with the longest co-prescription duration in each participant with a DDI, including the covariates listed above except for the longest citalopram prescription (which would be highly correlated with co-prescription duration). CYP2C19 normal metabolisers were taken as the reference group. As this was a single test based on the previous literature suggesting that reduced CYP2C19 activity (poor or intermediate metabolisers) is linked with reduced citalopram tolerability,Reference Wong, Fabbri, Laplace, Li, Van Westrhenen and Lewis37 we applied a nominal significance threshold (i.e. α = 0.05).

We performed some sensitivity analyses to test the stability of results: (a) excluding topical medications, as the probability that these have clinically relevant interactions with citalopram is lower compared with systemic routes of administration; (b) including only DDIs which are considered to be contraindicated and therefore are likely to be more clinically relevant;32 (c) excluding the duration of the longest citalopram prescription from the covariates, as this variable could have effects on or interactions with other independent variables (e.g. psychiatric diagnoses); and (d) replacing the covariate longest citalopram prescription with number of citalopram prescriptions, to consider an alternative measure of length of citalopram exposure.

All analyses were performed using R version 4.1.1.

Results

Overview of participant inclusion and prescription patterns

We included 25 508 participants who had at least one prescription of citalopram. Of these participants, 11 941 (46.8%) had at least one DDI; this reduced to 11 634 (45.6%) when we excluded DDIs involving topical medications. The median number of years covered by prescription records was 18 in both the DDI and non-DDI groups, with interquartile range (IQR) values of 13–23 and 14–23 years in the two groups, respectively. At least one diagnostic record of a depressive and/or anxiety disorder was present in 18 190 individuals (71.3%).

Patients in the DDI group received on average 1.96 (s.d. = 1.33; median = 1; IQR: 1–2) distinct drugs interacting with citalopram, with 3.14 (s.d. = 3.60; median = 2, IQR: 1–4) co-prescription instances, and the duration of the prescription overlap was 175 days on average, with a median of 68 days and IQR of 28–207 days (Supplementary Fig. 1). The 24% (n = 2897) of individuals in the DDI group had only single prescriptions (i.e. not repeated) of medications in the DDI list that overlapped with citalopram prescriptions, and these were excluded from the estimation of prescription overlap duration. The median times before the first diagnostic or prescription record and the first DDI were 17 and 10 years, respectively (IQR: 13–20 years and 5––15 years, respectively) (Supplementary Fig. 2). The most common drugs involved in DDIs with citalopram were omeprazole and lansoprazole (20.8% and 17% of all co-prescription instances, respectively), followed by diazepam (10.2%) and amitriptyline (8.5%) (Fig. 2 and Supplementary Table 4). Most co-prescriptions resulting in DDIs involved only pharmacokinetic mechanisms (74.6%), whereas 13.9% involved only pharmacodynamic mechanisms, and 11.4% involved both.

Fig. 2 Most common medications involved in drug–drug interactions (DDIs) with citalopram. Percentage (y-axis) refers to the percentage for each drug calculated considering the total co-prescription instances for medications involved in DDIs (i.e. the number of times a co-prescription event occurred in the data-set), and the number reported on the top of each bar is the corresponding numerical value.

Characteristics of the DDI group

The DDI group differed in terms of sociodemographic and clinical variables compared with the non-DDI group (Table 1). Participants in the DDI group were more often females (68.5% v. 65.6%), were older when receiving their first citalopram prescription (56.41 v. 53.59 years), received a higher number of antidepressants (3.01 v. 2.49) and had higher number of depression diagnostic codes (1.59 v. 1.50), despite showing no difference in age at first diagnosis of depression. The DDI group showed characteristics suggestive of lower socioeconomic status (e.g. lower income), had higher body mass index and increased risk of TRD (20.3% v. 10.7%), and were more likely to have a history of suicidal-self harm behaviours (3.1% v. 1.5%), as well as having increased risks of several psychiatric and non-psychiatric diseases (Table 1). We observed higher prevalences of depressive and anxiety disorders (65% v. 55% and 34.4% v. 25.6%, respectively) when looking at psychiatric diagnoses, whereas angina (4.0% v. 2.2%) and history of heart attack (3.9% v. 1.6%) in terms of general medical disorders. Other lifetime physical illnesses were more common in the DDI group, namely emphysema and/or chronic bronchitis, cancer, diabetes mellitus, high blood pressure and stroke (Table 1). There was also a higher frequency of history of a long-term illness, disability or infirmity (52.6% v. 37.5%) and any other serious condition (30.9% v. 22.0%) in the DDI group versus the non-DDI group. There was no difference in the distribution of CYP2C19 metabolising groups between participants with DDIs and those without DDIs (Table 1). The results were similar when excluding DDIs involving topical medications (Supplementary Table 5).

Table 1 Distribution of variables in the DDI and non-DDI groups and results of univariate tests

DDI, drug–drug interactions; IM, intermediate metabolisers; NM, normal metabolisers; PM, poor metabolisers; RM/UM, rapid or ultrarapid metabolisers; NA, number of missing values.

a. Number and percentage are shown for categorical variables, and mean, standard deviation and median for continuous variables. Variables with significant results after multiple testing correction are shown in bold.

When considering the association between the longest co-prescription duration and CYP2C19 activity, we found a shorter co-prescription duration in intermediate versus normal metabolisers (average 376 days, median = 116.5, IQR: 28–421 v. 419 days, median = 127, IQR: 28–511; P = 0.015). No difference was found in other metabolising groups compared with normal metabolisers, and the results were similar when excluding DDIs involving topical medications (Supplementary Table 6).

In the regression analyses (Table 2), TRD and history of suicidal-self harm behaviours had the highest effect sizes (odds ratios) for being in the DDI versus non-DDI group (odds ratio = 2.12, 95% CI: 1.91–2.34; odds ratio = 2.21, 95% CI: 1.84–2.65, respectively). Other psychiatric disorders were strongly associated with DDI status, particularly depressive disorders (odds ratio = 1.46, 95% CI: 1.38–1.54) and anxiety disorders (odds ratio = 1.53, 95% CI: 1.44–1.62) but also obsessive–compulsive disorders and substance use disorders (Table 2). The physical disorder with the highest effect size estimate with respect to DDI status was history of heart attack (odds ratio = 1.91, 95% CI: 1.60–2.28), and we also found strong associations for history of a long-term illness, disability or infirmity, and any other serious condition. Other physical disorders associated with DDI risk were history of angina, stroke and cancer. Finally, the numbers of distinct depression diagnostic codes and distinct antidepressant medications prescribed were confirmed to be associated with DDI status (Table 2). The results were similar when DDIs involving topical medications were excluded (Supplementary Table 7), as well as when we removed the duration of the longest citalopram prescription from the covariates and when we replaced it with the number of citalopram prescriptions (Supplementary Tables 8 and 9). When we restricted the analyses to the drugs with contraindicated DDIs (see ‘Statistical analysis’), 1812 participants were in the DDI group (11.78% of the sample). The most common drugs involved in these DDIs were antipsychotics, quinidine and hydroxyzine (Supplementary Fig. 3). This probably explains the higher proportion of psychotic and bipolar disorders in the DDI group versus the non-DDI group in this analysis (Supplementary Table 10A). However, the results were similar to those of the main analysis, with some additional medical comorbidities associated with DDI status in the regression analysis, in particular, emphysema and/or chronic bronchitis and diabetes (Supplementary Tables 10A, B).

Table 2 Multivariable regression models for outcomes in DDI (versus non-DDI) group

DDI, drug–drug interaction.

a. Variables with significant results after multiple testing correction are shown in bold.

Discussion

In the UKB, the prevalence of DDIs involving citalopram (47%) was similar to that reported by a previous study that evaluated DDIs involving antidepressants in a population aged 65 years or older (61.5%).Reference Mark, Joish, Hay, Sheehan, Johnston and Cao17 Notably, we found that history of TRD and self-harm and/or suicidal behaviours had strong associations with being in the DDI group, after adjustment for sociodemographic variables. The DDI group also had higher prevalences of cardiovascular disorders, cancer, and other serious and chronic conditions after adjustment for sociodemographic variables. As expected, comorbidity with severe and chronic diseases was associated with polypharmacy and therefore with risk of DDIs, as discussed in the introductory section. It remains important to underline that this is a particularly fragile group of patients, and the risk/benefit ratio of polypharmacy needs to be periodically re-evaluated.

The association between DDIs and TRD was in line with the associations of DDIs with self-harm and/or suicidal behaviours, higher number of antidepressants prescribed, and higher number of depression diagnostic records, suggesting that the difficulty in effectively treating depression and high severity in this group might have played a part in the acceptance of potential risks deriving from polytherapy. These results confirm more severe and/or recurrent disorders in those with DDIs, as found in other studies.Reference Chen and Ding19,Reference Wolff, Reißner, Hefner, Normann, Kaier and Binder12 However, it was not possible to determine whether the increased risk of TRD in the DDI versus the non-DDI group (20.3% v. 10.7%) could be explained at least in part by the higher prevalence of physical disorders, as there is good consensus that these are associated with TRD risk.Reference Rybak, Lai, Ramasubbu, Vila-Rodriguez, Blumberger and Chan38 Our results showed that history of cardiovascular disorders – in particular, heart attack – was strongly associated with being in the DDI group. Cardiovascular disease has been proposed to share biological mechanisms with depression, particularly through systemic inflammation, which is also involved in TRD.Reference Khandaker, Zuber, Rees, Carvalho, Mason and Foley39 The evidence of lower socioeconomic status (Townsend deprivation index, qualifications and household income) in the DDI group was consistent with the previous literature.Reference Wiersema, Oude Voshaar, van den Brink, Wouters, Verhaak and Comijs21 These variables are likely to act as moderators of the risk of various diseases and therefore of polypharmacy and DDIs.

According to the present study and previous work, omeprazole is among the drugs most commonly involved in DDIs with antidepressants.Reference Hughes, Russo, Walsh, Menditto, Bennett and Cahir20,Reference Woroń, Chrobak, Ślęzak and Siwek40 Omeprazole and other proton pump inhibitors (PPIs) such as esomeprazole and lansoprazole interact with citalopram acting as CYP2C19 inhibitors; previous studies found that citalopram serum concentrations were higher in patients treated with PPIs (e.g. +35.3% in patients co-treated with omeprazole).Reference Gjestad, Westin, Skogvoll and Spigset41 PPIs are very commonly prescribed medications;Reference Liu, Zhu, Li, Zhang and Zhang42 for example, in England, about 60 million items of PPIs were dispensed in 2018, and this number had doubled since 2008.43 Recent studies showed that PPIs are highly overprescribed, often with no appropriate documented indication. For example, between 25% and 70% of PPI prescriptions in the USA were reported to have no appropriate indication,Reference Forgacs and Loganayagam44 and around 50% in Germany and China.Reference Liu, Zhu, Li, Zhang and Zhang42,Reference Rückert-Eheberg, Nolde, Ahn, Tauscher, Gerlach and Güntner45 Although it was not possible to verify whether an appropriate indication for prescribing a PPI was present in this study, we suggest that an important implication of this work is that careful clinical consideration is warranted when co-prescribing PPIs and citalopram or other antidepressants mainly metabolised by CYP2C19, particularly in fragile populations such as older adults.

We found no association between CYP2C19 metabolising activity and probability of being in the DDI versus non-DDI group. CYP2C19 activity was previously found to be associated with several proxies of citalopram efficacy or side-effects. For example, poor and intermediate metabolisers on citalopram showed increased odds of discontinuation and shorter prescription duration in UKB primary care records.Reference Wong, Fabbri, Laplace, Li, Van Westrhenen and Lewis37 Our results suggest that DDI status is not associated with CYP2C19 metabolising activity, as expected, as clinicians cannot know a priori CYP2C19 activity. However, physicians may adjust prescriptions based on the observed treatment tolerability, explaining our finding of shorter co-prescription periods in individuals with reduced CYP2C19 activity (intermediate metabolisers) compared with normal metabolisers.

Limitations

These results should be interpreted considering the limitations of the study. First, UKB is not representative of the UK general population, being enriched in female, older and wealthier individuals.Reference Fry, Littlejohns, Sudlow, Doherty, Adamska and Sprosen46 Second, our approach did not incorporate the temporal sequence of events (e.g. in terms of psychiatric and medical diagnoses, occurrence of TRD), and we were not able to infer causality, as this would have been beyond the scope of the study. Third, we could not determine the indication behind medication prescription, as prescription and diagnostic records are reported separately in the UKB. About 71% of included participants had a lifetime diagnosis of a depressive and/or anxiety disorder in the primary care records, suggesting that some prescriptions were motivated by another indication. Fourth, we did not consider measures of ADRs, as the naturalistic registration of these in the UKB primary care records may be associated with underreporting.Reference Wong, Fabbri, Laplace, Li, Van Westrhenen and Lewis37 Finally, this study was not intended to be comprehensive about variables associated with DDIs but to test the associations of the most common chronic physical diseases and psychiatric diagnoses and the main sociodemographic factors; the numbers of missing values were low (<5% for all variables, except for TRD, which was defined only in those with a diagnosis of depression, and household income) (Table 1).

Clinical implications

Although severe psychopathology and treatment resistance can justify polypharmacy, this work confirms the importance of periodically checking the indication to continue a medication or to start a new medication involved in a DDI, particularly in fragile patients such as those with multiple morbidities and older adults. This information is particularly relevant for physicians most involved in multimorbidity management, such as general practitioners and geriatricians. Psychiatrists working in the consultation–liaison setting should also be aware of the potential risks of citalopram in fragile patients and perform a careful risk–benefit assessment. Key points are reporting the estimated duration of treatment and reassessing regularly the indication for continuing antidepressants, especially after the introduction of new drugs.

Supplementary material

Supplementary material is available online at https://doi.org/10.1192/bjo.2025.10060

Data availability

The UKB Resource is available to bona fide researchers for health-related research in the public interest. Researchers must be registered with the UKB and be collaborators in an approved research project. Returned data and code from single publications are also available through the UKB Resource.

Acknowledgements

This research was conducted using the UKB Resource under application number 56514, ‘Stratification of health outcomes in mood disorders’. We acknowledge use of the King’s Computational Research, Engineering and Technology Environment (CREATE; https://docs.er.kcl.ac.uk/).

Author contributions

B.L., W.L.E.W. and C.F. contributed to the planning of the study, data processing and analyses. C.F. wrote the first draft of the paper. C.M.L. contributed to the planning of the study, supervision and revision of the paper. A.S. contributed to the supervision and revision of the paper. The other authors contributed to the critical review of the paper.

Funding

This research was supported by #NEXTGENERATIONEU, funded by the Ministry of University and Research, National Recovery and Resilience Plan, project MNESYS (PE0000006) – A multiscale integrated approach to the study of the nervous system in health and disease (DN. 1553 11.10.2022), the Wellcome Trust (226770/Z/22/Z) and the National Institute for Health Research Maudsley Biomedical Research Centre at South London and Maudsley NHS Foundation Trust and King’s College London. The views expressed are those of the author(s) and not necessarily those of the National Health Service, the National Institute for Health Research or the Department of Health and Social Care.

Declaration of interest

C.M.L. sits on the Scientific Advisory Board for Myriad Neuroscience and has received speaker fees from SYNLAB and consultancy fees from UCB. A.S. has been a consultant and/or speaker for Abbott, Abbvie, Angelini, AstraZeneca, Clinical Data, Boehringer, Bristol Myers Squibb, Eli Lilly, GlaxoSmithKline, Innovapharma, Italfarmaco, Janssen, Lundbeck, Naurex, Pfizer, Polifarma, Sanofi, Servier and Taliaz.

Footnotes

*

MNESYS – Mood and Psychosis Sub-Project (Spoke 5): Luigi Grassi, Tommaso Toffanin, Maria Ferrara and Martino Belvederi Murri (University of Ferrara, Ferrara, Italy); Alessio Maria Monteleone, Andrea Fiorillo, Silvana Galderisi, Vincenzo Nigro and Umberto Galderisi (University of Campania L. Vanvitelli, Naples, Italy); Alessandro Bertolino, Antonio Rampino and Enrico D’Ambrosio (University of Bari Aldo Moro, Bari, Italy); Pierluigi Politi and Laura Fusar-Poli (University of Pavia, Pavia, Italy); Mirella Ruggeri, Francesco Amaddeo, Corrado Barbui, Marcella Bellani, Giovanni Ostuzzi and Sarah Tosato (University of Verona, Verona, Italy); Valdo Ricca and Giovanni Castellini (University of Florence, Florence, Italy); Gianluca Serafini, Andrea Aguglia and Andrea Amerio (University of Genoa, Genoa, Italy); Cinzia Niolu and Giorgio Di Lorenzo (University Tor Vergata, Rome, Italy).

References

Moore, TJ, Mattison, DR. Adult utilization of psychiatric drugs and differences by sex, age, and race. JAMA Intern Med 2017; 177: 274–5.10.1001/jamainternmed.2016.7507CrossRefGoogle ScholarPubMed
Amrein, MA, Hengartner, MP, Näpflin, M, Farcher, R, Huber, CA. Prevalence, trends, and individual patterns of long-term antidepressant medication use in the adult Swiss general population. Eur J Clin Pharmacol 2023; 79: 1505–13.10.1007/s00228-023-03559-4CrossRefGoogle ScholarPubMed
Verhaak, PFM, de Beurs, D, Spreeuwenberg, P. What proportion of initially prescribed antidepressants is still being prescribed chronically after 5 years in general practice? A longitudinal cohort analysis. BMJ Open 2019; 9: e024051.10.1136/bmjopen-2018-024051CrossRefGoogle ScholarPubMed
Bogowicz, P, Curtis, HJ, Walker, AJ, Cowen, P, Geddes, J, Goldacre, B. Trends and variation in antidepressant prescribing in English primary care: a retrospective longitudinal study. BJGP Open 2021; 5: BJGPO.2021.0020.10.3399/BJGPO.2021.0020CrossRefGoogle ScholarPubMed
Petty, DR, House, A, Knapp, P, Raynor, T, Zermansky, A. Prevalence, duration and indications for prescribing of antidepressants in primary care. Age Ageing 2006; 35: 523–6.10.1093/ageing/afl023CrossRefGoogle ScholarPubMed
Arnaud, AM, Brister, TS, Duckworth, K, Foxworth, P, Fulwider, T, Suthoff, ED, et al. Impact of major depressive disorder on comorbidities: a systematic literature review. J Clin Psychiatry 2022; 83: 21r14328.10.4088/JCP.21r14328CrossRefGoogle ScholarPubMed
Holvast, F, van Hattem, BA, Sinnige, J, Schellevis, F, Taxis, K, Burger, H, et al. Late-life depression and the association with multimorbidity and polypharmacy: a cross-sectional study. Fam Pract 2017; 34: 539–45.10.1093/fampra/cmx018CrossRefGoogle ScholarPubMed
Rhee, TG, Rosenheck, RA. Psychotropic polypharmacy reconsidered: between-class polypharmacy in the context of multimorbidity in the treatment of depressive disorders. J Affect Disord 2019; 252: 450–7.10.1016/j.jad.2019.04.018CrossRefGoogle ScholarPubMed
Stassen, HH, Bachmann, S, Bridler, R, Cattapan, K, Herzig, D, Schneeberger, A, et al. Detailing the effects of polypharmacy in psychiatry: longitudinal study of 320 patients hospitalized for depression or schizophrenia. Eur Arch Psychiatry Clin Neurosci 2022; 272: 603–19.10.1007/s00406-021-01358-5CrossRefGoogle ScholarPubMed
Delara, M, Murray, L, Jafari, B, Bahji, A, Goodarzi, Z, Kirkham, J, et al. Prevalence and factors associated with polypharmacy: a systematic review and meta-analysis. BMC Geriatr 2022; 22: 601.10.1186/s12877-022-03279-xCrossRefGoogle ScholarPubMed
Lunghi, C, Antonazzo, IC, Burato, S, Raschi, E, Zoffoli, V, Forcesi, E, et al. Prevalence and determinants of long-term utilization of antidepressant drugs: a retrospective cohort study. Neuropsychiatr Dis Treat 2020; 16: 1157–70.10.2147/NDT.S241780CrossRefGoogle ScholarPubMed
Wolff, J, Reißner, P, Hefner, G, Normann, C, Kaier, K, Binder, H, et al. Pharmacotherapy, drug-drug interactions and potentially inappropriate medication in depressive disorders. PLoS One 2021; 16: e0255192.10.1371/journal.pone.0255192CrossRefGoogle ScholarPubMed
Schellander, R, Donnerer, J. Antidepressants: clinically relevant drug interactions to be considered. Pharmacology 2010; 86: 203–15.10.1159/000319744CrossRefGoogle ScholarPubMed
Dechanont, S, Maphanta, S, Butthum, B, Kongkaew, C. Hospital admissions/visits associated with drug-drug interactions: a systematic review and meta-analysis. Pharmacoepidemiol Drug Saf 2014; 23: 489–97.10.1002/pds.3592CrossRefGoogle ScholarPubMed
Anand, TV, Wallace, BK, Chase, HS. Prevalence of potentially harmful multidrug interactions on medication lists of elderly ambulatory patients. BMC Geriatr 2021; 21: 648.10.1186/s12877-021-02594-zCrossRefGoogle ScholarPubMed
Lai, LL, Alvarez, G, Dang, L, Vuong, D, Ngo, V, Jo, Y, et al. Prevalence and trend of potential drug–drug interaction among children with depression in U.S. outpatient settings. J Pharm Health Serv Res 2019; 10: 393–9.10.1111/jphs.12320CrossRefGoogle Scholar
Mark, TL, Joish, VN, Hay, JW, Sheehan, DV, Johnston, SS, Cao, Z. Antidepressant use in geriatric populations: the burden of side effects and interactions and their impact on adherence and costs. Am J Geriatr Psychiatry 2011; 19: 211–21.10.1097/JGP.0b013e3181f1803dCrossRefGoogle ScholarPubMed
Miyasaka, LS, Atallah, AN. Risk of drug interaction: combination of antidepressants and other drugs. Rev Saude Publica 2003; 37: 212–5.10.1590/S0034-89102003000200008CrossRefGoogle ScholarPubMed
Chen, Y, Ding, L. Potential drug-drug interactions in outpatients with depression of a psychiatry department. Saudi Pharm J 2023; 31: 207–13.10.1016/j.jsps.2022.12.004CrossRefGoogle ScholarPubMed
Hughes, JE, Russo, V, Walsh, C, Menditto, E, Bennett, K, Cahir, C. Prevalence and factors associated with potential drug-drug interactions in older community-dwelling adults: a prospective cohort study. Drugs Aging 2021; 38: 1025–37.10.1007/s40266-021-00898-8CrossRefGoogle ScholarPubMed
Wiersema, C, Oude Voshaar, RC, van den Brink, RHS, Wouters, H, Verhaak, P, Comijs, HC, et al. Determinants and consequences of polypharmacy in patients with a depressive disorder in later life. Acta Psychiatr Scand 2022; 146: 8597.10.1111/acps.13435CrossRefGoogle ScholarPubMed
Fabbri, C, Hagenaars, SP, John, C, Williams, AT, Shrine, N, Moles, L, et al. Genetic and clinical characteristics of treatment-resistant depression using primary care records in two UK cohorts. Mol Psychiatry 2021; 26: 3363–73.10.1038/s41380-021-01062-9CrossRefGoogle ScholarPubMed
Karkare, SU, Bhattacharjee, S, Kamble, P, Aparasu, R. Prevalence and predictors of antidepressant prescribing in nursing home residents in the United States. Am J Geriatr Pharmacother 2011; 9: 109–19.10.1016/j.amjopharm.2011.03.001CrossRefGoogle ScholarPubMed
Guirguis, A, Chilcot, J, Almond, M, Davenport, A, Wellsted, D, Farrington, K. Antidepressant usage in haemodialysis patients: evidence of sub-optimal practice patterns. J Ren Care 2020; 46: 124–32.10.1111/jorc.12320CrossRefGoogle ScholarPubMed
Seitz, DP, Gill, SS, Conn, DK. Citalopram versus other antidepressants for late-life depression: a systematic review and meta-analysis. Int J Geriat Psychiatry 2010; 25: 1296–305.10.1002/gps.2483CrossRefGoogle ScholarPubMed
Funk, KA, Bostwick, JR. A comparison of the risk of QT prolongation among SSRIs. Ann Pharmacother 2013; 47: 1330–41.10.1177/1060028013501994CrossRefGoogle ScholarPubMed
Brouwer, JMJL, Nijenhuis, M, Soree, B, Guchelaar, HJ, Swen, JJ, van Schaik, RHN, et al. Dutch Pharmacogenetics Working Group (DPWG) guideline for the gene-drug interaction between CYP2C19 and CYP2D6 and SSRIs. Eur J Hum Genet 2022; 30: 1114–20.10.1038/s41431-021-01004-7CrossRefGoogle Scholar
Conroy, M, Sellors, J, Effingham, M, Littlejohns, TJ, Boultwood, C, Gillions, L, et al. The advantages of UK Biobank’s open-access strategy for health research. J Intern Med 2019; 286: 389–97.10.1111/joim.12955CrossRefGoogle ScholarPubMed
UK Biobank. Primary Care Linked Data: Version 2.0. UKBiobank, 2024 (https://biobank.ndph.ox.ac.uk/showcase/showcase/docs/primary_care_data.pdf).Google Scholar
Clinical Pharmacology, School of Medicine. Drug Interactions FlockhartTable. Indiana University, 2023 (https://drug-interactions.medicine.iu.edu/MainTable.aspx).Google Scholar
US Food and Drug Administration (FDA). Highlights of PrescribingInformation. FDA, 2022 (https://www.accessdata.fda.gov/drugsatfda_docs/label/2022/020822s041lbl.pdf).Google Scholar
McInnes, G, Lavertu, A, Sangkuhl, K, Klein, TE, Whirl-Carrillo, M, Altman, RB. Pharmacogenetics at scale: an analysis of the UK Biobank. Clin Pharmacol Therap 2021; 109: 1528–37.10.1002/cpt.2122CrossRefGoogle ScholarPubMed
Sangkuhl, K, Whirl-Carrillo, M, Whaley, RM, Woon, M, Lavertu, A, Altman, RB, et al. Pharmacogenomics clinical annotation tool (PharmCAT). Clin Pharmacol Therap 2020; 107: 203–10.10.1002/cpt.1568CrossRefGoogle ScholarPubMed
PharmGKB. Clinical Guideline Annotations. PharmGKB, 2023 (https://www.pharmgkb.org/).Google Scholar
Li, H, Shi, Q. Drugs and diseases interacting with cigarette smoking in US prescription drug labelling. Clin Pharmacokinet 2015; 54: 493–501.10.1007/s40262-015-0246-6CrossRefGoogle ScholarPubMed
Wong, WLE, Fabbri, C, Laplace, B, Li, D, Van Westrhenen, R, Lewis, CM, et al. The effects of CYP2C19 genotype on proxies of SSRI antidepressant response in the UK Biobank. Pharmaceuticals 2023; 16: 1277.10.3390/ph16091277CrossRefGoogle ScholarPubMed
Rybak, YE, Lai, KSP, Ramasubbu, R, Vila-Rodriguez, F, Blumberger, DM, Chan, P, et al. Treatment-resistant major depressive disorder: Canadian expert consensus on definition and assessment. Depress Anxiety 2021; 38: 456–67.10.1002/da.23135CrossRefGoogle ScholarPubMed
Khandaker, GM, Zuber, V, Rees, JMB, Carvalho, L, Mason, AM, Foley, CN, et al. Shared mechanisms between coronary heart disease and depression: findings from a large UK general population-based cohort. Mol Psychiatry 2020; 25: 1477–86.10.1038/s41380-019-0395-3CrossRefGoogle ScholarPubMed
Woroń, J, Chrobak, AA, Ślęzak, D, Siwek, M. Unprescribed and unnoticed: retrospective chart review of adverse events of interactions between antidepressants and over-the-counter drugs. Front Pharmacol 2022; 13: 965432.10.3389/fphar.2022.965432CrossRefGoogle ScholarPubMed
Gjestad, C, Westin, AA, Skogvoll, E, Spigset, O. Effect of proton pump inhibitors on the serum concentrations of the selective serotonin reuptake inhibitors citalopram, escitalopram, and sertraline. Ther Drug Monit 2015; 37: 90–7.10.1097/FTD.0000000000000101CrossRefGoogle ScholarPubMed
Liu, Y, Zhu, X, Li, R, Zhang, J, Zhang, F. Proton pump inhibitor utilisation and potentially inappropriate prescribing analysis: insights from a single-centred retrospective study. BMJ Open 2020; 10: e040473.10.1136/bmjopen-2020-040473CrossRefGoogle ScholarPubMed
NHS Digital. Prescription Cost Analysis England 2018, Prescribing & Medicines Team. NHS Digital, 2019 (https://digital.nhs.uk/data-and-information/publications/statistical/prescription-cost-analysis/2018).Google Scholar
Forgacs, I, Loganayagam, A. Overprescribing proton pump inhibitors. BMJ 2008; 336: 23.10.1136/bmj.39406.449456.BECrossRefGoogle ScholarPubMed
Rückert-Eheberg, IM, Nolde, M, Ahn, N, Tauscher, M, Gerlach, R, Güntner, F, et al. Who gets prescriptions for proton pump inhibitors and why? A drug-utilization study with claims data in Bavaria, Germany, 2010-2018. Eur J Clin Pharmacol 2022; 78: 657–67.Google Scholar
Fry, A, Littlejohns, TJ, Sudlow, C, Doherty, N, Adamska, L, Sprosen, T, et al. Comparison of sociodemographic and health-related characteristics of UK Biobank participants with those of the general population. Am J Epidemiol 2017; 186: 1026–34.10.1093/aje/kwx246CrossRefGoogle ScholarPubMed
Figure 0

Fig. 1 Examples of prescription windows (arrows) of citalopram (grey) and drugs in the DDI (drug–drug interaction) list. The start date is the date of the first prescription, and the end date of a prescription window is the date of the last prescription of a drug if there were no following prescriptions or the following prescription was >14 weeks apart.

Figure 1

Fig. 2 Most common medications involved in drug–drug interactions (DDIs) with citalopram. Percentage (y-axis) refers to the percentage for each drug calculated considering the total co-prescription instances for medications involved in DDIs (i.e. the number of times a co-prescription event occurred in the data-set), and the number reported on the top of each bar is the corresponding numerical value.

Figure 2

Table 1 Distribution of variables in the DDI and non-DDI groups and results of univariate tests

Figure 3

Table 2 Multivariable regression models for outcomes in DDI (versus non-DDI) group

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