Pharmacogenetics Applied to Neurological and Psychiatric Conditions
Mental health problems are among the leading causes of disease…
Continue readingMental health problems are among the leading causes of disease burden worldwide, encompassing a variety of nervous system disorders that challenge medicine in both diagnosis and treatment.
To address these disorders, therapeutic approaches often include medications, but their effects can vary significantly among patients due to genetic factors. This is where pharmacogenetics stands out, offering a new possibility: personalized treatments based on each patient’s genetic profile. By understanding how genetic variants influence drug responses, the pharmacogenetic panel helps make neurological treatments more effective, reduces side effects, and improves outcomes.
Discover how and why this approach is revolutionizing medicine in the content we’ve prepared for you.
Pharmacogenetics is the field of medicine that studies how an individual’s genetic variations influence their response to medications. Combining pharmacology (the study of drugs) and genetics (the study of genes and inheritance), this field aims to develop personalized treatments that are more effective and have fewer adverse effects.
Pharmacogenetics is particularly relevant in areas such as neurology and psychiatry, where treatments often involve a trial-and-error process. Neurological and psychiatric disorders like epilepsy, depression, schizophrenia, and bipolar disorder can be challenging to treat due to variability in patients’ responses to medications.
Major depression (MD) is a highly prevalent neurological condition and one of the top global public health concerns.
According to the World Health Organization (WHO), over 300 million people suffer from major depression, representing 4.4% of the global population (1). Additionally, a similar number face anxiety disorders, both incurring high healthcare costs and significantly impacting patients’ lives (2, 3).
The complexity of depression, marked by variability in treatment response, presents a significant clinical management challenge. Responses to antidepressants vary widely among patients due to the interaction of genetic, environmental, and psychological factors.
Although an increasing number of medications are available, psychiatry still relies on a “trial-and-error” model when selecting treatments, limiting success rates, especially for patients with mild depression (4, 5). Issues like poor treatment adherence and adverse effects further contribute to unsatisfactory outcomes.
In some cases, depression becomes treatment-resistant, meaning it does not respond to at least two different classes of antidepressants administered at adequate doses for a sufficient period. This form of treatment-resistant depression accounts for 20% to 30% of MD cases (6), presenting an even greater challenge for professionals to find effective approaches for these patients.
The application of pharmacogenetics in the treatment of neurological and psychiatric disorders has the potential to revolutionize clinical practice. For example, in neurology, pharmacogenetics can help personalize treatments for conditions such as epilepsy, multiple sclerosis, and Parkinson’s disease. Patients with epilepsy may have genetic variants that affect the metabolism of anticonvulsants, and identifying these variants allows clinicians to adjust dosages to prevent seizures and minimize side effects.
In psychiatry, pharmacogenetic analysis is particularly useful for disorders like depression, schizophrenia, and bipolar disorder. Many patients do not respond to the first prescribed medication, and pharmacogenetics can reduce the time needed to identify the right treatment. For example, genetic variants in the genes encoding drug-metabolizing enzymes can influence the efficacy of antidepressants and antipsychotics (7).
Advances in pharmacogenomic studies have been highly relevant across various medical disciplines, especially in psychiatry. According to international guidelines, patients with complex conditions like bipolar disorder, major depressive disorder, psychotic depression, and borderline personality disorder should undergo these studies before initiating treatment due to the frequent use of combination therapies in these conditions (8).
Genetic variations can manifest at both pharmacokinetic and pharmacodynamic levels, ultimately resulting in distinct and personalized responses to specific treatments.
Pharmacokinetic factors influence the plasma and tissue drug levels achieved with a given dose, determined by the processes of absorption, distribution, metabolism, and excretion.
Pharmacodynamic factors govern the interaction between a drug and its receptor, leading to responses that may be more or less effective than expected. These factors affect receptors, enzymes, or proteins involved in signal transduction (9, 10).
Moreover, the terms pharmacogenetics and pharmacogenomics are often used interchangeably. Pharmacogenetics refers to the study of individual genetic variability in genes associated with drug responses, while pharmacogenomics is used to describe the process of utilizing documented genetic variation to guide drug selection and dosing (11).
Pharmacogenetic studies aim to identify genetic variants and establish genetic biomarkers capable of influencing the magnitude of pharmacological effects, side effects, and drug interactions. These studies have become a cornerstone of personalized medicine, defining treatments based on each patient’s genetic profile (9, 12).
However, therapeutic responses are influenced by various factors, including physiological aspects like age, sex, weight, and body fat; pathophysiological conditions like renal, hepatic, or cardiovascular function; environmental factors like smoking, alcohol consumption, nutrition, and pollutants; and genetic factors that affect the absorption, distribution, metabolism, and excretion of drugs. Personalized medicine involves tailoring patient treatment based on their genetic-molecular profile (12).
Several genes have been identified as important in psychiatric and neurological pharmacogenetics, including:
Variants in other enzymes involved in drug metabolism and transport also affect the pharmacokinetics and pharmacodynamics of drugs used in psychiatry and other medical fields.
The response to psychiatric medications varies greatly among individuals, both in therapeutic effects and the risk of adverse effects. Studies indicate that 60–70% of patients with depression do not achieve full remission with antidepressants, and 30–40% fail to respond adequately (18).
Approximately 10% of patients discontinue antidepressants due to adverse effects. Antipsychotics and mood stabilizers are also frequently associated with side effects (19–21).
It is estimated that up to 42% of variability in antidepressant response is attributable to common genetic variants (22). Hence, the establishment of pharmacogenetic biomarkers is crucial due to their implications for drug efficacy and associated side effects.
Adverse drug effects are responsible for approximately 7% of hospitalizations, 20% of all readmissions, and about 4% of drug withdrawals from the market (23–25).
In this context, pharmacogenetic analysis offers numerous benefits for both patients and healthcare professionals.
For patients, key benefits include:
For healthcare professionals, benefits include:
Understanding genetic variants involved in the expression of metabolizing enzymes enables the classification of a patient’s drug metabolism.
Discover how drug metabolism can be classified in our blog post:
What is pharmacogenetics and how it influences medication decisions
The future of pharmacogenetics in psychiatry and neurology is promising. As research progresses, pharmacogenetic analysis is expected to become a standard practice in medicine. Emerging technologies, such as next-generation sequencing (NGS), are making it easier and more affordable to identify relevant genetic variants.
Additionally, integrating pharmacogenetics with other personalized medicine approaches, such as biomarker analysis and precision medicine, may lead to even more effective treatments. Collaboration among researchers, clinicians, and the pharmaceutical industry will be vital for the successful implementation of pharmacogenetics in clinical practice (7).
The Neuro PGx Pharmacogenetic Panel offered by SYNLAB evaluates variants in genes responsible for expressing key enzymes involved in the metabolism of medications commonly used to treat neurological and psychiatric conditions, such as depression, anxiety, schizophrenia, bipolar disorder, and others.
The analysis provides relevant information on 81 medications widely used in clinical practice, based on the study of 50 genetic variants documented in scientific literature and found in 8 genes: CYP1A2, CYP2C9, CYP2C19, CYP2D6, CYP3A4, CYP3A5, CYP2B6 and ABCB1.
To standardize and facilitate the implementation of pharmacogenetics in clinical practice, international expert consortia, such as the Clinical Pharmacogenetics Implementation Consortium (CPIC), Pharmacogene Variation Consortium (PharmVar), American College of Medical Genetics and Genomics (ACMG), American College of Molecular Pathology (ACMP), and the Human Genome Variation Society (HGVS), among others, are dedicated to issuing and updating evidence-based clinical guidelines. These include drug-gene associations, evidence levels, standardized terminology, and clinical recommendations (26–31).
Currently, over 35 guidelines are available on the Pharmacogenomics Knowledge Base (PharmGKB) website (32). Various platforms store comprehensive information in their databases to guide clinicians in practice, and SYNLAB adheres to all these guidelines in the development of its pharmacogenetic panels.
The panel analyzes 81 medications from the following classes:
The SYNLAB Neuro PGx Pharmacogenetic Panel is intended for:
The SYNLAB Neuro PGx Pharmacogenetic Panel utilizes the MassARRAY platform, which employs mass spectrometry to rapidly and accurately identify genetic variations, such as single nucleotide variants (SNVs), insertions, deletions, and mutations.
The MassARRAY methodology combines DNA amplification with mass spectrometry detection. Initially, DNA is amplified via PCR. Instead of directly detecting the PCR products, the amplified fragments undergo allele-specific extension reactions. Subsequently, these fragments are ionized and analyzed by mass spectrometry, enabling the determination of the molecular weight of each genetic variant.
Human genome variation is a key factor in modulating individual responses to medications. Pharmacogenetics studies how genetic differences influence drug responses.
The metabolism of a drug involves various reactions that generally modify it into a more soluble molecule for easier excretion.
Several genes encoding enzymes involved in drug metabolism pathways contain genetic variants that alter enzyme expression, selectivity, or activity, leading to diverse drug responses. Thus, assessing the genetic profile based on these variants has become crucial for understanding drug metabolism.
SYNLAB also provides the following pharmacogenetic tests:
Conducting precise and up-to-date tests is essential for more accurate diagnoses and better treatment planning. SYNLAB is here to support you.
We offer diagnostic solutions with rigorous quality control to the companies, patients, and physicians we serve. Present in Brazil for over 10 years, we operate in 36 countries across three continents and are leaders in service provision in Europe.
Contact the SYNLAB team to learn more about the available tests.
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32. Pharmacogenomics Knowledge Base. Disponible en: https://www.pharmgkb.org/
Mental health problems are among the leading causes of disease…
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