Pharmacological cardiotoxicity
Pharmacological cardiotoxicity is a cardiac damage under the action of drugs and it can occur both affecting the performances of the cardiac muscle and by altering the ion channels/currents of cardiomyocytes.[1]
Two distinct drug classes in which cardiotoxicity can occur are in anti-cancer and antiarrhythmic drugs. Anti-cancer drug classes that can cause cardiotoxicity include anthracyclines, monoclonal antibodies, and antimetabolites. The cardiotoxicity of anti-cancer drugs generally manifests as a progressive form of heart failure, but can also manifest as an arrhythmia.[2] The mechanism of is thought to account for iron-dependent generation of reactive oxygen species with a spreading of oxidative damage to the cardiomyocytes.[2] In antiarrhythmic drugs, cardiotoxicity is due to a risk of arrhythmias resulting from an imbalance in ion currents that flow in/out of cardiomyocytes.[3]
Pharmacological action
[edit]The pharmacological action represents a mechanism by means of a specific effect can be obtained. Depending on the class and type of the drug, the pharmacological action may be different.[3]
In the case of electrophysiology, the drug directly acts at the level of the cells, affecting the mechanism of opening/closing of the ionic channels, as it happens with the anti-arrhythmic drugs. Due to the ionic permeability properties of the cardiac cells membrane, during the action potential, the opening of the ion channels generates ion currents that flow in/out of the lipophilic cell membrane.[4]
The anti-arrhythmic drugs action is that of modifying such ion currents, acting on the structure of the ion channel, and trying to restore the physiological opening/closing mechanism of the ion channels. It may be that, instead of providing a benefit to the heart, such as the aforementioned desired effect, a new drug can negatively affect the ion currents, ending up to excessively modifying the amount of ion currents flowing throughout the cell membrane, thus increasing the risk of inducing a potentially fatal arrhythmias.[5][6]
Examples of pharmacological cardiotoxicity
[edit]Anti-arrhythmic drugs cardiotoxicity
[edit]The anti-arrhythmic drugs are a class of pharmacological compounds whose action is that of restore the normal sinus rhythm when a patient is affected by an arrhythmia, so their action is that of performing a pharmacological cardioversion.[7]
Indeed, the pharmacological cardiotoxicity of anti-arrhythmic compounds is related to the action of these drugs to induce potential fatal arrhythmias such as torsade de pointes or ventricular fibrillation.[8] The anti-arrhythmic drugs directly act on the opening/closing of ion channels, thus modifying the ion currents.[9]
In treating arrhythmias, the pharmacological therapeutic action is related to the generation of a new combination of the blockage/opening of ion channels. Nevertheless, this new pharmacologically induced configuration may lead to an unbalance in ionic currents and as a consequence causing a modification in the action potential morphology which increases the risk of inducing an arrhythmia.[9]
Over the years, it has been studied how the change of the action potential shape, i.e. prolongation of the repolarization phase or early after depolarizations, is bonded to the likelihood of inducing fatal arrhythmias, such as torsade de pointes.[10] Thus, the risk of inducing a fatal arrhythmias has to be prevented assessing the pharmacological cardiotoxicity at the early stages of the manufacturing of a new drug.[10]
Clinical cardiotoxicity assessment
[edit]During the study of a new pharmacological compound, the clinical trial is one of the phases before the market release.[11]
At this level, following the directions of the clinical trial protocol, the new drug is administrated to the patient as a therapy, and the patient's clinical status is monitored aiming to evaluate possible side effects.[11][12]
Old paradigm
[edit]To assess pharmacological cardiotoxicity, it was common practice to measure QT interval in vivo and the blockage of potassium channel.[13] Nevertheless, a new paradigm has been developed to overcome the limits of the previous one since 2013. In fact, it has been demonstrated that the old paradigm was stringent, labeling as pro-arrhythmic some pharmacological compounds which actually were not.[13]
New paradigm: CiPA
[edit]The comprehensive in vitro pro-arrhythmia assay was born, accounting for both experimental data and detailed computational models which take into account multiple ionic currents instead of measuring just QT interval and potassium channel blockage. This new paradigm aims to interlink the clinical evidence with in silico modeling to reconstruct the atrial and ventricular action potential and evaluate the likelihood for early afterdepolarization to occur.[13]
In Silico cardiotoxicity assessment
[edit]Background
[edit]In the last years, in silico medicine turned out to be promising, aiding scientists and clinicians to prevent and adequately cure several diseases.[14] Computational modeling aid in understanding complex phenomena, allowing scientists to vary parameters aiming to measure variables that otherwise could have not been investigated.[14]
In the field of electrophysiology, the pharmacological cardiotoxicity assessment can be carried out leveraging specific computational models. According to the type and parameters to be investigated in the research, it is possible to analyze the pharmacological effect on the atria and ventricles separately.[15][16]
Since the two cardiac chambers are very different each other and play a key role both on a functional and anatomical basis, suitable computational models have to be accounted for to describe their different behaviour. During the years, several models have been developed o best characterize and replicate the cellular action potential behaviour of the most relevant anatomical region of the heart, such as Courtemanche model for atria or O'Hara model for ventricles.[15][16]
Creation of a population of cellular action potentials
[edit]In this way, it has been possible to create a virtual cellular population of cardiomyocytes and vary their conductances that are related to the main ionic currents which contribute to the action potential morphology, reflective of a specific anatomical region of the heart.[17][18]
In order to create a stable population of cellular action potentials, the biomarkers have to be considered. During the years, several biomarkers have been developed to best characterize the instability of cellular action potentials. Few biomarkers are reported:[17]
- APD90: it represents the action potential duration when the phase of the repolarization is at 90%, so it is possible to associate to this value a time and it can be expressed as:[19]
- APD90: it represents the action potential duration when the phase of the repolarization is at 50%, so it is possible to associate to this value a time and it can be expressed as:[19]
- APD20: it represents the action potential duration when the phase of the repolarization is at 20%, so it is possible to associate to this value a time and it can be expressed as:[19]
- Triangulation: it is a measure of how triangular is an action potential, expressed as:[19]
- APA: it represents the action potential amplitude, expressed as:[19]
Many other can be used according to the needs of the research .[20]
Regional clusterization
[edit]Once the cellular population is stable, all the action potential are compared to physiological data related to the most relevant anatomical regions to appropriately filter the action potential, aiming to consider just the physiologically relevant ones.[21]
At the atrial level, the clusterization occurs with data associated to:[21]
- Right atrium
- Right atrial appendage
- Left atrium
- Left atrial appendage
- Atrioventricular rings
- Crista terminalis
- Right Bachmann's bundle
- Left Bachmann's bundle
- Pectinate muscles
Simulation of the pharmacological action
[edit]According to pharmacokinetic and pharmacodynamic data of the drugs, the pharmacological action is integrated in the model. By means of specific electrical stimuli protocols,[22] the pharmacological effect of a new drug can be investigated in a completely safe, and controlled computational environment, providing preliminary important considerations concerning the cardiotoxicity of new pharmacological compounds.[23]
According to the outcome of the simulations, several aspects can be investigated to identify the pro-arrhythmicity of a new pharmacological compound.[24][25] The typical changes, called repolarization abnormalities, in the action potential morphology that are considered pro-arrhythmic are:[25]
- Early afterdepolarization
- Electrical alternans
- Repolarization failures
Torsade de point risk score
[edit]Simulation can be carried out at different effective plasmatic therapeutic level of the drugs to identify the level at which cardiotoxicity cannot be neglected. The data collected could be finally managed to create a score system aimed to define the torsadogenic risk, namely the risk of inducing torsade de pointes, of the new drugs.[26][6]
A possible torsade de point risk score to assess cardiotoxicity could be:[6]
where is the sum of all concentrations, [C] is the concentration taken into account, , is the total number of models in the population, and represents the number of models showing repolarization abnormalities.[6]
Tissue simulations
[edit]More detailed computation simulations can be carried out accounting for not cellular models, but taking into consideration the functional syncytium and enabling the cells to mutually interact, the so-called electrotonic coupling.[27]
In case of tissue simulation or in wider cases, such as in whole organ simulations, all the cellular models are note applicable anymore, and several corrections have to be made. Firstly, the governing equations can not be just ordinary differential equations, but a system of partial differential equations has to be accounted for.[28] A suitable choice may be the monodomain model:[29]
where is the effective conductivity tensor, is the capacitance of the cellular membrane, the transmembrane ionic current, and are the domain of interest and its boundary, respectively, with the outward boundary of .[29]
See also
[edit]References
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