Abstract
Differential scanning calorimetry (DSC) is a tool particularly recommended for rapid compatibility screening between active pharmaceutical ingredients (APIs) and excipients, whereas thermogravimetric analysis (TGA), a complementary technique to DSC, is primarily used to assess the thermal stability of APIs and excipients. Both DSC and TGA data can be converted using multivariate statistical methods, which are profitable tools in the detection of compatibility between ingredients. Principal component analysis (PCA) enables identification of compatibility by grouping samples into two clusters in a PCA score plot: acetazolamide and mixture with its highest content, and optionally a 1:1 mixture form one cluster, excipient and mixture with its highest quantity, and optionally a 1:1 mixture the second. Any variation from the arrangement of samples in the abovementioned clusters indicates incompatibility. By using cluster analysis, compatibility can be determined by four clusters, the first consisting of API, the second of groups mixture at the ratio of 7:3 and the third of two mixtures at ratios of 3:7 and 1:1, with the excipient in the remaining fourth cluster. Generally, the combination of DSC and TGA techniques with advanced statistical methods is favorable for the qualitative assessment of compatibility in acetazolamide mixtures with excipients such as mannitol, meglumine, lactose, magnesium stearate, β-cyclodextrin, chitosan, methylcellulose, starch 1500 and PVP K-30. In addition, PXRD revealed that acetazolamide retains its crystalline form after mixing. Accordingly, incompatibilities in acetazolamide mixtures can be attributed to chemical reactions.
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Introduction
Differential scanning calorimetry (DSC) and thermogravimetric analysis (TGA) are widely used analytical methods whose employment in the study of pharmaceuticals has been constantly on the increase. Thermal methods (DSC and TGA) rely on linear heating/cooling of the tested samples and measurement of the temperatures and heats of phase transitions or mass loses occurring under these conditions. These methods make it possible to study physical processes, including melting, sublimation, dehydration, crystallization, polymorphic transformations and glass transition, as well as chemical processes such as thermal degradation [1]. One extremely important element is the utilization of thermal methods to solve issues related to pharmaceutical technology, that is, compatibility examination between active pharmaceutical ingredients (APIs) and excipients in formulated medicinal products. The results acquired allow for a concurrent selection of excipients in order to determine the pathways of degradation in the APIs [2]. Hence, to obtain effective and safe pharmaceutical preparations, the selection of excipient is extremely important [3], no less so on account of the presence of “reactive impurities” in the excipient that could contribute to API degradation [4]. As the leading analytical methods in pharmaceutical technology, DSC and TGA are applied for API-excipient compatibility and stability assessment, and quality control of drug formulations [5, 6]. DSC allows the rapid screening of possible incompatibilities in drug products by revealing changes in melting endotherms due to the shifting, disappearance of peaks or the appearance of new ones, variations in the values of enthalpy of fusion, and alterations in the decomposition pathway as compared to the separate ingredients [7]. However, inconsiderable changes in the peak parameters, i.e., width, height and shape, can be attributed to probable differences in mixture composition. It should be noted that when the thermal properties of the mixtures, including melting point, heat of fusion and others, are the sum of the individual ingredients, then ingredients are absolutely compatible [2]. In turn, TGA is a complementary method to DSC due to its limitations in the assessment of compatibility. Interpretation of TGA is based on a comparison of thermal curve of API alone with that of physical mixtures containing API and excipients. The changes observed in the TGA curve of the mixtures in relation to the curve of API provide information on the stability of the API in the presence of excipients and, consequently, about its compatibility with these excipients [8].
Despite the fact that DSC is the primary method recommended for rapid compatibility screening, conclusions drawn solely from DSC may sometimes be unclear and require careful interpretation of the results [2]. Likewise, TGA used separately can sometimes lead to questionable conclusions. Samples analyzed with DSC or TGA are typically heated to about 300 °C, while drug formulations are stored at ambient conditions. However, the incompatibilities found at higher temperatures sometimes do not occur under storage conditions [2, 9, 10]. The kinetics of reaction increases with a rise in temperature, which may change the physicochemical properties of ingredients [10]. On the other hand, the ambiguous interpretation of the data acquired from thermal methods demands the use of assistive techniques [2, 9].
Since the interpretation of thermal analysis data does not always prove satisfactory, it may be beneficial to include advanced statistical methods. Two of these, principal component (PCA) and cluster (CA) analyses, can be used for this purpose. PCA as a dimension-reduction tool is applicable to data reduction leading to the emergence of a new set of orthogonal variables, i.e., principal components (PCs) used to describe variability in the data [11]. In contrast to PCA, CA evaluates the trend of sample clustering using an agglomeration schedule to aggregate samples according to the distance between sample pairs and the difference in the linking algorithms by which samples or clusters are merged [11, 12]. As the thermal methods provide various types of thermodynamic information, multivariate statistical methods in the interpretation of these data are particularly beneficial, especially in the case of questionable interpretation of DSC or TGA alone.
Therefore, the aim of the study was to develop a method for detecting incompatibility by a combination of DSC and TGA and an additional combination with advanced statistical methods. This combination makes it possible to improve our understanding of the thermal behavior of both ingredients, alone and in mixtures. For this purpose, model acetazolamide binary mixtures with selected excipients, such as mannitol, meglumine, lactose, magnesium stearate, β-cyclodextrin, chitosan, methylcellulose, starch 1500 and polyvinylpyrrolidone (PVP K-30), were analyzed. PCA and CA were applied to acquire additional information, not directly available from the DSC and TGA curves.
Acetazolamide (Fig. 1) is a sulfonamide carbonic anhydrase inhibitor, which it has been in use as an API since the 1950s for the treatment of various conditions, e.g., sleep apnea, altitude sickness, glaucoma, or epilepsy, but its application is often restricted due to side effects, which may be dose related [13].
Materials and methods
Materials
Acetazolamide marketed under the trade name Diamox (m.p. 258–259 °C, purity ≥ 99%) was obtained from Polfa (Warsaw, Poland), meglumine (m.p. 126–131 °C, purity ≥ 99%), β-cyclodextrin (m.p. 290–300 °C, purity ≥ 99%), chitosan shrimp shells, low viscous (glass transition at 203 °C, purity ≥ 95%) and polyvinylpyrrolidone (PVP K-30) (decomposition > 150 °C, purum) from Fluka (Siegen, Germany), lactose (m.p. 232 °C, purity Ph. Eur.) from BUFA B.V. (Uitgeest, Netherlands), magnesium stearate (m.p. 126–130 °C, purity Ph. Eur.) from Faci (Carasco Genoa, Italy), methylcellulose (decomposition 280–300 °C, purity Ph. Eur.) from the Shin’etsu Chemical Co. (Tokyo, Japan), mannitol (166–168 °C, purity Ph. Eur.) from POCh (Gliwice, Poland) and starch 1500 (decomposition > 220 °C, purity Ph. Eur.) from Colorcon (Harleysville, PA, USA).
Sample preparation
Binary mixtures of acetazolamide with β-cyclodextrin, methylcellulose, starch 1500 and PVP K-30 were composed at the mass ratios, with mixtures with mannitol, meglumine, lactose, magnesium stearate and chitosan being mixed at the molar ratios. After weighing on an analytical balance XA 105 (Mettler Toledo, Switzerland), acetazolamide and excipients at ratios of 7:3, 1:1 and 3:7 were poured into an agate mortar and homogenized with a plastic spatula over 5 min.
Thermal analysis
A DSC 822e device (Mettler Toledo, Schwerzenbach, Switzerland) controlled by STARe 9.10 software and equipped with Dewar vessel was used for the analysis of the samples under study. The 4–5 mg samples were weighed into 40 μL aluminum pans and the reference sample into an empty pan. Additionally, all pans were hermetically sealed with a pierced lid. Measurements were taken from 25 to 300 °C, at a heating rate of 10 °C min−1. During the heating–cooling–reheating program, acetazolamide was heated at a rate of 10 °C min−1, kept at 300 °C for 2 min, then cooled from 300 to − 25 °C at a rate of 10 °C min−1, kept at − 25 °C for 2 min, and finally reheated up to 300 °C at a rate of 10 °C min−1. All measurements were carried out under nitrogen (purity 99.9997%) with a flux rate of 70 mL min−1. The values of onset and peak temperatures (Tonset and Tpeak) and the heats of fusion (ΔH) were acquired from the DSC curves using STARe 9.10 software.
Indium and zinc standards (Mettler Toledo, Schwerzenbach, Switzerland) were used for the calibration of the DSC cell. The data obtained for the standards (onset temperatures and heat flows), 156.6 °C and 28.45 J g−1 for indium, and 419.6 °C and 107.5 J g−1 for zinc, respectively, were consistent with those in the literature [14].
TGA sample analysis was performed using an OD-103 Derivatograph (MOM, Budapest, Hungary). About 200 mg of the samples was heated in four flat-bottomed platinum crucibles at a rate of 5 °C min−1 up to 700 °C in air atmosphere against alumina as reference substance. From TGA and DTG curves, the values of temperature ranges of mass losses (ΔT), DTG peaks temperatures (Tpeak) and mass losses (Δm) for thermal degradation were obtained. Calcium oxalate dihydrate was used to calibrate the Derivatograph.
Powder X-ray diffraction (PXRD)
PXRD analyses were performed on a D2 Phaser diffractometer (Bruker, Karlsruhe, Germany) using DIRRRAC.SUITE software to record the diffraction patterns. Measurements were taken with a CuKα tube (k = 0.154060 nm) under ambient condition, in the range of 7°–55° at 30 kV and 10 mA, at a digitalization speed of 0.02° and at angle intervals of 2θ and an exposure time of 0.10 s.
Advanced statistical analysis
Two advanced statistical methods (PCA and CA) were used for the evaluation of the DSC and TGA datasets. The decision was taken to perform statistical calculations on combined DSC and TGA data. A total set of nine matrices were constructed for PCA and CA calculations, i.e., separate matrix for each individual excipient (mannitol, meglumine, lactose, magnesium stearate, β-cyclodextrin, chitosan, methylcellulose, starch 1500 and PVP K-30). Each matrix has a dimension of 5 × 18, where 5 specifies the number of objects (rows) and 18 the number of variables (columns). The rows of the matrix consisted of acetazolamide, excipient and their mixtures at the ratios 7:3, 1:1 and 3:7, while columns contained the values of Tonset, Tpeak, ΔH acquired from the DSC curves (Tables 1–2), and ΔT, Tpeak, Δm obtained from the TGA and DTG curves (Tables 3–4). The data acquired from DSC and TGA/DTG curves were used for multivariate calculations without further preprocessing.
The statistical model was created using Statistica StatSoft Inc. ver. 13.3 (Tulsa, OK, USA). Ward’s method (agglomerative hierarchical clustering) with Euclidian distance was used to build the CA dendrogram and Sneath’s index criterion to find the number of significant clusters at 2/3 of the maximum distance. PCA calculations were executed with an algorithm, disregarding the rotation of factors and correlation matrices. Five principal components were obtained for each matrix. Because the first two principal components explained together more than 81% of the total variability, the findings of the PCA calculations were presented in the form of two-dimensional score scatter plot. The third, fourth and fifth principal components were not used because they explained too little of the total variability.
Results and discussion
DSC constitutes the dominant instrumental technique that has increasingly being used for the rapid screening of API-excipient compatibility. However, the incompatibilities identified by DSC should be affirmed by other tools in the further stages of any study [15, 16].
Incompatibility is detected by comparing the DSC curves of mixtures with those of individual ingredients [15, 17]. Through DSC, information is acquired about the peak temperature, heat, shifts of endothermic or exothermic effects, and the appearance or disappearance of any new ones [5, 18]. The visual alterations on the DSC curve of binary mixture and changes in the value of thermodynamic parameters compared to those for the ingredients alone indicate incompatibilities between ingredients. In contrast, the DSC curve of a mixture is the sum of the thermal effects of all its constituent ingredients, if compatible [2]. TGA, in turn, shows only the percentage mass loss as a function of temperature, which is a limitation in compatibility studies [8].
Thermal characterization of acetazolamide
The DSC curve of acetazolamide (Fig. 3, the first heating) displays a single endothermic peak attributed to melting with decomposition at 260.88 °C (fusion heat − 164.64 J g−1), which is consistent with the literature data [19, 20]. The second exothermic peak can be found at 272.42 °C with an enthalpy value 69.07 J g−1 (Table 1).
Acetazolamide decomposes immediately upon melting, but its decomposition products are not described in the literature. This substance is broken down in three subsequent stages, as reported in our previous work [21]. As can be seen from the TGA curve, the first stage takes place in the range of 220–264 °C with 62% mass loss, which is probably related to formation of sulfur dicyanide by disconnection of the sulfonamide group and acetamide. The second stage occurs between 264 and 296 °C with ~ 17% mass loss due to evaporation of sulfur dicyanide, and the final, third stage over the range 296–450 °C with combustion of charred residue (Table 3). Thus, a proposed mechanism of acetazolamide decomposition is presented in Fig. 2.
The second heating curve of acetazolamide shown in Fig. 3 reveals the glass transition of the new amorphous product formed during the decomposition of the melted sample while the first heating. The presence of the amorphous product was confirmed by PXRD analysis performed for acetazolamide at successive temperatures until the API melting. As shown in Fig. 4, the last diffraction pattern recorded after cooling the sample to room temperature confirms the formation of an amorphous product.
Acetazolamide compatibility studies
As acetazolamide decomposes upon melting, the heating DSC program can only be used for compatibility confirmation. Figures 5 and 6 illustrate the DSC, TGA and derivative thermogravimetric (DTG) curves of acetazolamide, chitosan and their binary mixtures. The DSC curve of chitosan (Fig. 5e, Table 2) exhibits two broader endothermic peaks at 117.7 °C and 275.9 °C assigned to dehydration with the heat of − 229.9 J g−1 and glass transition, respectively. These are followed by the decomposition of the polymeric chain and the evaporation of volatiles. These thermal events are reflected on the TGA curve by mass loss of 8.0% in the range of 30–140 °C and 58.0% in the range of 140–315 °C, respectively (Table 4). The pyrolysis of polysaccharide structure starts with an accidental split in the glycoside bonds, which produces further decomposition as well as a series of lower fatty acids, as well as acetic and butyric acids [22].
As regards the acetazolamide-chitosan mixtures (Fig. 5b–d), all characteristic thermal events for both ingredients were observed on the DSC curves. Areas of peaks are proportional to the content of ingredients in mixture. The TGA curves also showed characteristic thermal phenomena for both ingredients with mass loss depending on the content of ingredients in these mixtures (Table 3).
Figure 6e presents a sharp endothermic DSC peak at 167.5 °C due to the melting of mannitol (Table 2, heat of fusion–282.3 J g−1). The TGA curve shows a 96.0% mass loss in the range of 150–320 °C assigned to evaporation of melted mannitol (Table 4, second stage), with combustion of carbonized residue visible at higher temperatures in the third stage. In the case of acetazolamide mixtures with mannitol (Fig. 6b–d), the characteristic DSC peaks of acetazolamide shift to lower temperatures and are widened and blurred. Gradual decreases in acetazolamide content in the mixtures results in peak expansion and shift by approx. 20 °C. The melting peak of mannitol remains, only slightly widened as the mannitol content in the mixtures increased. The course of the TGA curves for mixtures (Fig. 6b–d, Tables 3–4) differs from that of ingredients alone. This results in temperature ranges of the thermal processes and the values of mass loss for the mixtures which differ from those for ingredients. In general terms, if no obvious incompatibility is identified in the mixture by DSC, there is no need to use supplementary tools, which are usually complex and time-consuming or often difficult to implement. Nevertheless, if characteristic peaks for ingredients disappear or new peaks appear or the temperature values of DSC events for mixtures are shifted above 5 °C to lower or, more rarely, to higher temperatures, this implies thermally promoted incompatibility. In this case, confirmatory tools such as FTIR, PXRD and others are required [6]. Moreover, advanced statistical methods can be used as supporting methods for the interpretation of ambiguous thermal data.
PXRD of acetazolamide and its mixtures with excipients (Figs. 7, 8, 9) showed that excipients did not affect the crystallinity of acetazolamide immediately after physical mixing and at room temperature, but only the intensity of its characteristic diffraction lines decreased depending on its content in the mixture. This means that there is no crystalline–amorphous conversion of acetazolamide in the presence of excipients. Hence, it is likely that the incompatibilities of acetazolamide with excipients are due to chemical reactions.
Multivariate analysis of thermal data
PCA reduces a sizeable thermal dataset to components which are simplified and orthogonal in form, ultimately classifying samples by locating patterns in the relationships between variables, thus yielding a classification of the objects [11]. The variances of the data calculated by PCA are shown in Fig. 10. This figure only shows the values for the first three principal components (PCs) due to a significant decrease in the percentage of data variance explained in the next PCs. The first principal component (PC1) alone explains over 63% of the total variability, except for the matrix of acetazolamide with methylcellulose at about 54%. Since the first two PCs (PC1 and PC2) together constitute more than 81% of total data variation, the results of PCA calculations are presented in the form of a two-dimensional plot. Based on the location of the samples on this plot, compatibility or incompatibility can be clearly indicated.
Two clusters created as a result of sample grouping can be distinguished. As regards compatibility, the first cluster holds acetazolamide and mixture with its highest content and optionally a 1:1 mixture. The excipient and mixture with the highest excipient concentration can be found in the second cluster, a 1:1 mixture again being possible. In the case of incompatibility, the distribution of samples in the clusters is unpredictable, as demonstrated in Fig. 11a, where they are cumulated in two clusters. The first, found in the negative part of the x-axis, includes acetazolamide and its mixture at the ratio of 7:3. On the positive side of the x-axis, a second cluster is visible, consisting of chitosan and the remaining mixtures. Such an arrangement of samples confirms that mixture ingredients are compatible and thus can be mixed in solid dosage form technology.
In another case (Fig. 11b), the PCA plot separated two clusters, one containing acetazolamide and its mixture with mannitol at the ratio of 3:7 and the other mannitol and two mixtures at the ratio of 1:1 and 7:3. Such a distribution of samples shows the incompatibility of API and mannitol. In pharmaceutical compositions, mannitol is mainly used as a diluent in tablet formulations in an amount of 10–90% w/w. Due to the fact that this substance is not hygroscopic, it can be used with moisture-sensitive APIs. Besides, mannitol can also be used as a plasticizer, sweetener and therapeutic or tonicity agent [23].
Despite its many applications, the literature shows cases where mannitol is incompatible with APIs: with atorvastatin [24], hydroxychloroquine sulfate [25], levodopa [26], erythromycin [27] or primaquine [28]. Accordingly, various theories have been proposed to explain the incompatibility with this excipient. One of these suggests that the amino group of API and the OH group of mannitol are linked by hydrogen bonds [24, 28], another is that the disappearance of the thermal events for API in the mixture with mannitol can be explained by the fact that the melting of this excipient occurs before API melting, which consequently leads to the dissolution of the API in the melted sugar [25]. Moreover, unlike lactose, mannitol does not undergo Maillard reactions [23]. Many examples of the incompatibility of lactose as the reducing disaccharide with APIs containing amino groups can be found in the literature. The amino sugar meglumine also causes incompatibility with glipizide, for example, but the mechanism is unknown [29].
Despite magnesium stearate being widespread as a lubricant in the pharmaceutical industry, it often contributes to the chemical instability of API [30]. Its affect on API stability is mainly due to magnesium oxide impurities, catalytic effect, alkalinity, and other chemical reactions initiated and mediated by magnesium ions [29]. Theories to explain the mechanism of chemical incompatibility have been put forward, such as that magnesium stearate causes incompatibility with acetylsalicylic acid by lowering its melting point, resulting in the formation of a liquid film on the surface of the magnesium stearate particles which accelerates the decomposition of API. In the case of ibuprofen, incompatibility with stearates leads to the formation of a sublimating eutectic [29]. In turn, β-cyclodextrin, a cyclic oligosaccharide derived from starch, forms inclusion complexes with API [23], due to the structure of β-cyclodextrin, consisting of an outer hydrophilic surface and inner lipophilic cavity. This inclusion complex is formed by the binding of the lipophilic part of the API into the inner lipophilic cavity of β-cyclodextrin, and the hydrophilic portion of β-cyclodextrin is exposed to the external environment, facilitating the dissolution of API [31]. Thermal data acquired from the DSC and TGA/DTG curves (Tables 1–4) confirm the formation of inclusion complex between acetazolamide and β-cyclodextrin. However, formation of the complex can be called as “non-true incompatibility,” because it may improve the properties of the API contributing to its increased solubility.
In contrast, starch is useful as a carrier for amorphous API preparations, as it causes immediate or delayed release of API, and may improve the bioavailability of poorly soluble APIs [23]. Starch is chemically incompatible with ketoconazole, for example, as evidenced by the significantly reduced enthalpy value of their mixture at the ratio 1:1 [32]. PVP has also proved incompatible with a wide range of APIs, despite being used as a binder in tablet preparations, or as a film forming agent and for the formation of amorphous API dispersions [29]. PVP K-30 induces a suppression of the melting point of dexamethasone, which can be explained by the fact that heat assisted dissolution of dexamethasone occurred in the water resulting from PVP dehydration. It may also be feasible that dexamethasone dissolves in the elastic state of the polymer after glazing. Other authors have noted the thermal interactions of PVP with API, in the cases, for example of lipoic acid, diethylcarbamazine citrate and kaempferol [33].
The CA was used to assess the similarities and differences between objects (acetazolamide, excipient and their binary mixtures). The crucial point is that objects inside a group should be related to each other but not to objects outside in other groups. Consequently, the greater the similarity within a group, the greater the difference between groups and the more pronounced the clustering [34]. As shown in Fig. 12a, the CA dendrogram for acetazolamide, chitosan and their mixtures revealed four large clusters at 33–66% of the maximum distance. One cluster is formed by chitosan, the second contains two mixtures at ratios of 3:7 and 1:1, the third consists of the 7:3 mixture, and the last includes acetazolamide. This scheme of sample grouping proves the compatibility of ingredients. Conversely, Fig. 12b depicts an example of incompatible ingredients. In this instance, the first cluster contains a 1:1 mixture, the second includes magnesium stearate and 3:7 mixture, while the third consists of a 7:3 mixture, and the fourth contains acetazolamide alone.
Overall, incompatibilities between acetazolamide and mannitol, meglumine, lactose, magnesium stearate, β-cyclodextrin, starch 1500 and PVP K-30 were detected owing to the merging of the DSC and TGA with PCA and CA (Table 5).
Conclusions
The study performed on acetazolamide and its mixtures with selected excipients revealed that the merging of both thermal methods (DSC and TGA) and the additional combination with advanced statistical methods did fulfill their role in predicting incompatibility. PCA was applied to reduce the large thermal data set, with CA being employed to find similarities between these data. Ultimately, both methods were used to classify the samples. Integrating these methods with the interpretation of DSC and TGA data makes it possible to recognize clearly the presence or absence of incompatibilities. Additional information was also provided by PXRD measurements, which showed that acetazolamide in mixtures did not change its crystalline form at ambient temperature. This indicates that chemical reactions contribute to the incompatibility of acetazolamide with excipients. Finally, DSC along with TGA and supplementary techniques such as PCA and CA ensure reliable results and efficiently confirm the compatibility of API with the excipients under study in acetazolamide mixtures with chitosan and methylcellulose.
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This work was financed by the Ministry of Science and Higher Education, Poland, grant number 02-0015/07/505.
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BR contributed to conceptualization, methodology, software, formal analysis, investigation, data curation, writing–original draft preparation and writing–review and editing. MW contributed to conceptualization, methodology, writing–original draft preparation, writing–review and editing and supervision. All authors have read and agreed to the published version of the manuscript.
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Rojek, B., Wesolowski, M. A combined differential scanning calorimetry and thermogravimetry approach for the effective assessment of drug substance-excipient compatibility. J Therm Anal Calorim 148, 845–858 (2023). https://doi.org/10.1007/s10973-022-11849-9
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DOI: https://doi.org/10.1007/s10973-022-11849-9