Use of Fourier-Transform Infrared Spectroscopy (FT-IR) for Monitoring Experimental Helicobacter pylori Infection and Related Inflammatory Response in Guinea Pig Model

Infections due to Gram-negative bacteria Helicobacter pylori may result in humans having gastritis, gastric or duodenal ulcer, and even gastric cancer. Investigation of quantitative changes of soluble biomarkers, correlating with H. pylori infection, is a promising tool for monitoring the course of infection and inflammatory response. The aim of this study was to determine, using an experimental model of H. pylori infection in guinea pigs, the specific characteristics of infrared spectra (IR) of sera from H. pylori infected (40) vs. uninfected (20) guinea pigs. The H. pylori status was confirmed by histological, molecular, and serological examination. The IR spectra were measured using a Fourier-transform (FT)-IR spectrometer Spectrum 400 (PerkinElmer) within the range of wavenumbers 3000–750 cm−1 and converted to first derivative spectra. Ten wavenumbers correlated with H. pylori infection, based on the chi-square test, were selected for a K-nearest neighbors (k-NN) algorithm. The wavenumbers correlating with infection were identified in the W2 and W3 windows associated mainly with proteins and in the W4 window related to nucleic acids and hydrocarbons. The k-NN for detection of H. pylori infection has been developed based on chemometric data. Using this model, animals were classified as infected with H. pylori with 100% specificity and 97% sensitivity. To summarize, the IR spectroscopy and k-NN algorithm are useful for monitoring experimental H. pylori infection and related inflammatory response in guinea pig model and may be considered for application in humans.


Introduction
Helicobacter pylori (H. pylori) is a Gram-negative, microaerophilic, pathogenic bacterium, colonizing the human gastric mucosa. These bacteria were isolated for the first time by Marshall and Warren in 1984 from the stomachs of patients with gastritis [1]. About 50% of the world population is infected with H. pylori. However, there are areas where the rate of infection reaches 80-90% [2]. The infection occurs most often in childhood and if left untreated, can persist throughout life. H. pylori is an etiological agent of chronic gastritis, gastric and duodenal ulcers, malignant diseases: mucosa-associated lymphoid tissue lymphoma (MALT), and gastric cancer [2][3][4][5][6][7]. H. pylori induce cellular and humoral immune responses of the host. However, the chronic character of H. pylori infections suggests that the immune system is not able to eradicate these bacteria [8,9].
Some H. pylori antigens, including urease and vacuolating cytotoxic (VacA) or cytotoxin associated gene A (CagA) protein increase the inflammatory response, while others such as lipopolysaccharide (LPS) inhibit the activity of immune cells [10][11][12][13]. Knowledge about the pathogenesis and different courses of H. pylori infections is insufficient. Therefore, animal models that follow the natural history of H. pylori infection and related inflammatory and immune processes are needed. So far, mice, Mongolian gerbils, guinea pigs (Caviae porcellus), dogs, cats, pigs, and monkeys have been used [14,15]. Guinea pigs are considered the optimal model because they share similarities with humans in terms of immune responses, complement proteins, thymus and bone marrow physiology, pulmonary physiology, and corticosteroid response [16][17][18]. Guinea pigs are not naturally infected with Helicobacter spp. However, they are susceptible to H. pylori infection, which can be confirmed by histological examination of gastric tissue specimens for inflammatory response and Helicobacter-like organisms, detection of specific nucleotide sequences using molecular methods such as polymerase chain reaction (PCR), and serological examination of serum samples for specific anti-H. pylori antibodies or H. pylori antigens in stool samples [19].
The varied course of H. pylori infections prompts researchers to search for new diagnostic methods that would enable the determination of soluble markers qualitatively and quantitatively, which would be helpful in understanding the course of infection and its consequences. Recently, fast physical methods like Fourier-transform infrared spectroscopy (FT-IR) began to be used for the diagnosis of diseases and for monitoring cellular alterations based on spectral analysis of biological fluids such as blood, serum, saliva, and urine [20,21].
There are two main types of IR spectroscopy: transmission spectroscopy, in which the intensity of radiation passing through the sample is measured and reflection spectroscopy, in which the intensity of the IR radiation reflected by the tested sample is measured. In the case of reflection spectroscopy, there are three techniques of measurement: attenuated total reflectance (ATR), diffuse reflectance infrared Fourier transform spectroscopy (DRIFTS), and FT-IR microscopy. In the ATR technique, the IR radiation passes through the crystal and the tested sample closely adheres to its surface. As a result of the total reflection of the IR beam from the crystal surface, an evanescent wave is created which penetrates the sample. The examples of the use of ATR-IR in biological samples analysis are summarized in Table 1. Table 1. Selected examples of the use of attenuated total reflectance-infrared spectroscopy (ATR-IR) in biological samples analysis.

Lp
Aim FT-IR spectra of biological samples can be divided into groups of components with typical absorption bands in the wavenumber windows (W):W1-fatty acids (wavenumber range of 3000 cm −1 to 2800 cm −1 ), W2-peptides and proteins (wavenumber range of 1800 cm −1 to 1500 cm −1 ), W3-proteins, phosphate-carrying compounds and fatty acids (wavenumber range of 1500 cm −1 to 1200 cm −1 ), W4-carbohydrates (wavenumber range of 1200 cm −1 to 900 cm −1 ). The window W5 (wavenumber range of 900 cm −1 to 750 cm −1 ) corresponds to specific peaks unique for the biological samples [52][53][54][55]. The aim of this study was to determine the specific characteristics of IR spectra for H. pylori infected guinea pigs in terms of production of antibodies as well as inflammatory and metabolic biomarkers related to experimentally induced infection. The potential usefulness of this technique in the guinea pig model presumably will allow the application of this methodology to the analysis of human biological samples.

H. pylori Status
In our model, the status of H. pylori infection in guinea pigs was confirmed at 28 days after inoculation of animals with these bacteria, by histological, molecular, and serological methods, as previously described [56,57]. The gastric mucosa of guinea pigs inoculated with H. pylori was colonized by bacteria, as shown by Giemsa and Warthin-Starry staining to detect Helicobacter-like organisms. Tissue staining with hematoxylin and eosin also showed inflammation within the gastric mucosa. In the gastric tissue of infected animals, cagA and ureC sequences encoding CagA protein and subunit C of urease, respectively, were detected by polymerase chain reaction. These sequences were not detected in noninfected animals. The infected animals responded to H. pylori bacteria by producing anti-H. pylori immunoglobulins (Igs) of IgM and IgG class ( Table 1). The level of serum IgM and IgG antibodies towards H. pylori antigens, which were detected with use of glycine acid extract (GE) from the reference strain, was significantly higher in H. pylori infected animals compared to noninfected animals ( Table 2). Shown are mean values of optical density (OD) in enzyme linked immunosorbent assay (ELISA) ± standard deviation (SD). The differences between tested variables were assessed using Statistica 12 PL software with a nonparametric Mann-Whitney U test. The results were considered statistically significant when * p < 0.05.
The level of C-reactive protein (CRP), which is a key systemic marker of inflammation, in serum samples from H. pylori infected animals, was also upregulated ( Figure 1A). The level of tumor necrosis factor (TNF), which is a pro-inflammatory cytokine, in these samples was significantly lower than that in samples from control animals ( Figure 1B).

Analysis of IR Spectra of Guinea Pig Sera
The IR spectra of serum samples can be divided into different windows (W) corresponding to different components characterized by absorption bands: fatty acids (Window-W1: wavenumber range of 3000 cm −1 to 2800 cm −1 ); peptides and proteins (W2: wavenumber range of 1800 cm −1 to 1500 cm −1 ); proteins, phosphate-carrying compounds and fatty acid (W3: wavenumber range of 1500 cm −1 to 1200 cm −1 ); W4-carbohydrates (wavenumber range of 1200 cm −1 to 900 cm −1 ). The window W5 (wavenumber range of 900 cm −1 to 750 cm −1 ) corresponds to a specific peak unique to biological samples ( Figure 2).
Vibration band assignment was carried out in the infrared spectra of sera by comparing the position, relative intensity, and shape of the bands with the corresponding features of the associated molecular bands. The infrared spectra of serum samples from uninfected and H. pylori infected animals are shown in Figure 2. The absorption bands of proteins, lipids, and carbohydrates were considered during the analysis. Specific molecules, which were identified in the composition of the IR spectra of guinea pig sera, such as glucose (part B1), α2-globulins (part B2), IgM (part B3), IgG1 (part B4), transferrin (part B5), IgG4 (part B6), CRP (part B7), and TNF (part B8), allowed the differentiation between H. pylori infected and uninfected animals ( Figure 2A,B and Table 3). A vibration band assignment was made concerning frequencies of the chemical groups present in the sample. As shown in Table 2, in the spectral region (B1) corresponding to glucose, the prominent absorption band at 1062-997 cm −1 is due to the C-O symmetric stretching of the glucose region and the C-O stretching in carboxylic acids. The absorption band B2 (component group: amino acid), is characterized by the α2-globulins absorption vibration peaks at: 1060-116 cm −1 C-C-C bending, C-O stretching, and C-N stretching ( Figure 2 and Table 3). The spectral region B3, which is typical of proteins, phosphatecarrying compounds, and fatty acids (component group of carboxylic acid and amino acid), corresponds to the vibration band characteristics of IgM antibodies. The typical parameters of this region are as follows: N-O symmetric stretching, O-H bending, and methyl symmetric deformation. The main absorption peak identified for IgG was 1419-1361cm −1 (B4), due to C-H rocking, C-C stretching, and methyl symmetric deformations. The absorption peaks of transferrin were identified at 1428-1363 cm −1 (B5), and can include chemical bonds: CH 2 wagging and O-H bending of carboxylic acid. The absorption bands of IgG4 (B6) at 1538-1505 cm −1 correspond to C-N stretching and NH bending in amide II. The spectral region between 1541 cm −1 and 1600 cm −1 (B7, CRP) is predominantly related to C-C stretching, NH bending, and N-H in plane bending vibrations strongly coupled with C-N stretching of protein (amide II). The C=O symmetric stretching, C=C stretching, and NH 2 scissoring vibrations were found at 1652-1628 cm −1 (B8, TNF) (Figure 2A,B and Table 1).

Wavenumber Correlating with H. pylori Infection and Mathematical Models Identifying Sera of Infected Individuals
The regions of the infrared spectra that are correlated with H. pylori infection in guinea pigs were determined by using the chi-square statistical test. To perform the cluster analysis (HCA), 10 wavenumbers strongly correlated with this infection were considered (Table 4). Satisfactory results for analysis of the IR spectra were obtained using the k-NNs algorithm. Proposed models are characterized by 96% accuracy. The summary results for the k-NN model are presented in Table 4.
The HCA analysis of the W2-W4 regions of IR spectra and their first derivatives showed two distinct clusters (Figure 3). Cluster I corresponds to noninfected animals, while cluster II is representative for H. pylori infected animals. One wavenumber appears in the W4 window, which is associated with the vibrations generated by hydrocarbons and nucleic acids. The next five wavenumbers were correlated with H. pylori infection in the window W3. This window is associated with vibrations of different bonds (so-called mixed region); however, proteins and phosphorus-containing compounds are key to this window. The wavenumbers of 1552 cm −1 , 1541 cm −1 , and 1630 cm −1 , localized within the W2 window were strongly associated with H. pylori infection. According to the literature this window is characteristic for proteins and peptides. The peaks in this region of the spectrum for H. pylori infected animals may reflect production of antibodies and/or an increased production of inflammatory proteins. In H. pylori infected animals, it may correspond to the production of antibodies and/or greater production of inflammatory proteins. The entire IR spectra range (W2-W4) has been used to develop a k-nearest neighbor predictive model to discriminate H. pylori infected from uninfected animals. Our model is characterized by a sensitivity of 97% and a specificity of 100% ( Table 5).
Regardless of this model, we also showed that all the wavenumbers considered in the analysis IR spectra of the analyzed sera included in Table 3 were also useful for differentiation of serum samples. The average values of χ2-square test or p-value for the wavenumbers differ significantly (p < 0.0001, t-test) between H. pylori infected and noninfected animas. According to the Shapiro-Wilk test, the distribution of the wavenumber values in both groups was normal (p = 0.59 for H. pylori infected animals and p = 0.22 for uninfected animals).
H. pylori infected animals were distinguished from the control group by the following rule: if the value of the first-order derivative of all wavenumbers in the IR spectra of H. pylori infected animals vs. uninfected animals, included in Table 4, is <0.01, then the animals will be treated as H. pylori infected.

Discussion
The gold standard for detection of H. pylori infection in humans consists of an invasive endoscopic technique, during which gastric tissue samples are taken for further examination by a rapid urease test (RUT), histological staining for the presence of Helicobacter-like organisms (HLO) and inflammatory cells and/or culture [62,63]. Among non-invasive methods, the 13 C urea breath test (UBT) is generally accepted as sufficiently specific and sensitive for primary diagnosis and confirming the effectiveness of eradication therapy [64,65]. Many variants of ELISA test are used for detection of specific anti-H. pylori antibodies in serum samples. Detection of specific H. pylori DNA sequence in the gastric tissue and H. pylori antigens in stool samples was considered as a diagnostic tool [63]. However, a comprehensive method is needed to quantify selected markers to track the systemic effects of the infection that result from H. pylori colonization of gastric mucosa. Potentially, the determination of such markers may be helpful in predicting the course of infection and its consequences. It may also contribute to the confirmation of the relationship between local H. pylori infection and the development of extragastric diseases, including coronary heart disease, anemia, and type 2 diabetes [66,67].
In our study we used IR spectroscopy, which has been adopted for the characterization of biological materials, like tissue sections, cytological and histological specimens or biofluids, particularly serum samples. Using this technique to analyze serum samples, Ghimire et al. [68] identified mouse lymphoma and melanoma, while Gajjaee et al. [28] showed spectral changes in blood samples from patients with ovarian cancer. IR spectroscopy was useful for the estimation of serum cortisol levels in athletes [69], whereas Lechowicz et al. [29] used FT-IR spectroscopy to enable the differentiation between sera from patients with rheumatoid arthritis (RA) and non-RA sera. Zhou et al. [70] showed spectral changes in the HL60 cell line during various stages of cell differentiation and apoptosis. Erukhimovitch et al. [27] analyzed human plasma by FT-IR to determine spectral parameters for monitoring patients with leukemia. Shen et al. [71] used FT-IR to develop a noninvasive method to measure glucose in whole blood samples from diabetic patients [71], whereas Sankari et al. [40] analyzed serum immunoglobulins (IgA, IgM, and IgG) in patients with myeloma. FT-IR can be potentially useful for monitoring chronic infections based on changes in the systemic concentration of selected exogenous and endogenous molecules. We showed that FT-IR may help to investigate quantitative changes of selected soluble biomarkers, correlated with H. pylori infection in children and presumable consequent delayed growth [35].
Previously we developed an experimental model of H. pylori infection in guinea pigs, which was followed by the inflammatory response in gastric tissue, similarly to humans infected with these bacteria [56,57,72]. This model allowed us to study the outcome of H. pylori-driven inflammatory and immune responses as well as induction of regeneration processes in the gastric tissue in response to this infection [72,73]. The effects of H. pylori infections can vary from gastritis to gastric ulcer, duodenal ulcer, and gastric cancer, but the reasons for this are unknown. Therefore, new diagnostic methods need to be developed to assess H. pylori infection and its potential consequences. Such possibilities are offered by the experimental model of H. pylori infection in guinea pigs.
The aim of this study was to combine HCA analysis to determine the fragments of IR spectra of guinea pig sera characteristic for H. pylori infection. For this purpose, we used sera of uninfected animals (n = 20) or animals experimentally infected with H. pylori (n = 40). H. pylori infection was confirmed in all guinea pigs that received H. pylori, as previously described [56,57,73]. Infrared spectra were measured using an FT-IR Spectrum 400 spectrometer in the range of wavenumber 3000-750 cm −1 and then subjected to mathematical pre-processing (calculation of first derivative).
Sera from H. pylori infected animals showed lower absorbance values for TNF, α2globulins, and glucose, while higher absorbance values were detected for CRP, transferrin, as well as IgM, IgG1/IgG4 immunoglobulins, than in sera from H. pylori uninfected animals.
The CRP protein is a widely accepted systemic marker of the inflammatory response, in H. pylori infection [74,75]. We showed elevated levels of CRP in serum samples of H. pylori infected compared to uninfected animals, which was consistent with the development of an inflammatory response in the gastric tissue colonized with these bacteria. By comparison, levels of TNF in serum from H. pylori infected animals were significantly lower than in uninfected animals, which remains in line with a lower maximum absorption of the characteristic wavenumber of this cytokine.
This remains in line with a lower maximum absorption of the characteristic wavenumber for this cytokine. It is worth mentioning that in humans, H. pylori status was found to correlate with serum levels of CRP. In turn, increased levels of CRP were associated with elevated levels of total cholesterol and triglycerides, which are the risk factors for CHD [76]. The production of CRP in the liver is regulated by proinflammatory TNF. However, in this study we showed using FT-IR that TNF was lower in serum samples of H. pylori infected animals than uninfected animals. It could be due to neutralization of this cytokine by soluble TNF receptor. As shown by Shibata et al., during H. pylori infection the gastric epithelial cells undergo TNF-driven apoptosis and due to this the host responds by elevated production of soluble TNF receptor I in order to neutralize TNF and prevent its deleterious effects [77]. It is possible that in this study the lower level of TNF in the sera of guinea pigs infected with H. pylori as compared to uninfected animals may be due to neutralization of this cytokine by soluble TNF receptor. Previously we showed that H. pylori infection in guinea pigs was related to increased oxidative stress and apoptosis, and that the serum level of TNF in H. pylori infected animals determined by ELISA was lower than in uninfected animals [56,57].
The absorbance values of glucose and α2-globulins were also lower in H. pylori infected animals than in uninfected animals. The relationship between H. pylori infection and lower fasting blood glucose level has been previously reported [78][79][80]. Higher absorbance values shown for IgM, IgG1, IgG4, and transferrin when testing sera from H. pylori infected guinea pigs are consistent with higher levels of anti-H. pylori antibodies in this group, as evaluated by ELISA. In H. pylori infected patients, a higher systemic level of transferrin has been observed in conjunction with iron deficiency [81,82].
The study designed a predictive mathematical model: k-NN algorithm to distinguish H. pylori infected animals from uninfected animals with a sensitivity of 97% and a specificity of 100%. The proposed model can be a useful tool to detect and track the course of H. pylori infection, considering the serological and inflammatory parameters. Only one serum from the group of H. pylori infected animals was misclassified based on IR spectra. This could have been caused by the water in the samples which may affect the IR spectrum in the entire spectral range. Therefore, further studies are necessary to develop standardized protocols for the samples used for analysis.

H. pylori Infection in Caviae porcellus (Guinea Pigs)
Three-month-old, male Himalayan guinea pigs (400-600 g), free of pathogens, were housed in the Animal House at the Faculty of Biology and Environmental Protection, University of Lodz (Poland), kept in cages with free access to drinking water and fed with standard chow. The animals were inoculated per os with bacterial suspension of the reference H. pylori strain CCUG 17874 (Culture Collection University of Gothenburg, Sweden), three times in two day intervals as previously described [56,57]. Then, 28 days after the last H. pylori inoculation, the animals were euthanized according to a protocol approved by an ethics committee, and the gastric tissue was collected for analyses, whereas blood samples were processed to obtain serum and then stored at −80 • C. H. pylori infection was confirmed by microscopic imaging of HLOs, scoring tissue inflammation in thin layer preparations stained by routine histological staining, polymerase chain reaction (PCR) to detect H. pylori cagA and ureC gene sequences, as previously described [56].
In total, 60 animals were used in the study: 20 uninfected (control) and 40 infected with H. pylori. The levels of anti-H. pylori GE IgM and IgG were showed as mean ± standard deviation (SD) for each group.

ELISA for C-Reactive Protein (CRP) and Tumor Necrose Factor (TNF)
Total CPR or TNF concentrations in guinea pig serum samples were determined by ELISA with a sensitivity of 4 pg/mL for CRP (Cloud-Clone, Katy, TX, USA) and 8 pg/mL for TNF (ThermoScientific, Waltham, MA, USA), as recommended by the manufacturer. The absorbance was estimated using a Victor2 reader at a wavenumber of 450 nm. For each group the median values were calculated.

The Measurement of Infrared Spectra and Its Processing
IR spectra of animal sera were evaluated using the ATR-FTIR technique using the FT-IR/FT-near-infrared spectroscopy (NIR) Spectrum 400 spectroscope (Perkin Elmer, Waltham, MA, USA). The spectrometer was equipped with an ATR single reflection diamond crystal. Serum samples were stored at −80 • C until the measurement was made. Sera samples were thawed at 20 • C using a CH-100 (BIOSAN, Riga, Latvia) thermoblock and then shaken for 30 s using LabDancer vario (IKA, Staufen im Breisgau, Germany). Measurements were made at 20 • C with constant air humidity. Before each measurement, the ATR crystal was thoroughly cleaned with 95% alcohol and a baseline measurement was made. One microliter of serum was added to the spectroscope crystal by using a disposable sterile pipette tip and was left to evaporate the water. The amount of evaporated water was estimated based on the intensity of a band at 3400-3200 cm −1 . It was assumed that the water was evaporated from the sample when the band intensity at wavenumber 3300 cm −1 decreased to about 40% of the original value. In such conditions, the process of water evaporation lasted about 5 min. The high water content in the sample suppresses the intensity of the bands throughout the IR spectrum. After removing most of the water from the sample, the spectrum of the sediment remaining on the ATR crystal was measured. IR spectra were measured in the wavenumber range of 4000-650 cm −1 with a resolution of 1 cm −1 and then preprocessed in two steps: (a) calculation of the first derivative by a five-point stencil, (b) normalization to this range {0.1} [29].
The first derivatives were used for mathematical analysis. To develop the dendrograms, we used the Manhattan metric and Ward's method. Serum samples were collected from each guinea pig in four test tubes. One IR spectrum for each serum sample was collected as a result of 25 running scans. A total number of 240 IR spectra were measured (Figure 4.)

Mathematical Model Developing for Guinea Pigs Differentiation
For developing a prediction model we used k-NN algorithm. The k-NN classifier is one of the well-known and simple classification algorithms. It was first introduced by Fix and Hodges as a non-parametric algorithm, i.e., it does not make any assumptions on the input data distribution; thus, it is widely used in different applications [85]. In the k-NN classifier, an unknown sample is classified based on the similarity to the known, trained, or labeled samples by computing the distances between the unknown sample and all labeled samples. k-nearest samples are then selected as the basis for classification; and the unknown sample is assigned to the class which has the most samples among the k-nearest samples. For that, the k-NN classifier algorithm depends on: (a) integer k (number of neighbors)-changing the values of k parameter may change the classification result; (b) a set of labeled training data-thus, adding or removing any samples to the training samples will affect the final decision of k-NN classifier; and (c) a distance metric. In k-NN, the Euclidean distance is often used as the distance metric to measure the distance between two samples. k-NN classifier is analytically traceable and simple to implement, but one of the main problems of the k-NN algorithm is that it needs all the training samples to be in memory at run-time; for this reason, it is called memory-based classification [85,86].
The set of 240 spectra was randomly divided into two subsets: learning subset (180 cases) and validation subset (60 cases). The k-NN model is based on the spectral windows W1-W5. Calculations were performed using Statistica 12. The quality of the model was evaluated on the basis of quality indicators presented in Table 1. Hierarchical cluster analysis can be conceptualized as being agglomerative or divisive. Agglomerative hierarchical clustering separates each case into its own individual cluster in the first step so that the initial number of clusters equals the total number of cases [87]. At successive steps, similar cases-or clusters-are merged together until every case is grouped into one single cluster. Divisive hierarchical clustering works in the reverse manner with every case starting in one large cluster and gradually being separated into groups of clusters until each case is in an individual cluster [87].
HCA, an unsupervised method consisting of grouping the spectra with the same degree of similarity using the software Statistica 12, was also conducted to differentiate the serum spectra for noninfected or H. pylori infected animals. The chi-square statistical test was used to check the part of the IR spectra which correlated with the examined feature. Best predictors for H. pylori infection were used in HCA. Manhattan metric and Euclidean distances (inter-spectral distance) between all data were calculated and Ward's algorithm was used to construct the dendrogram displaying the grouping of spectra into clusters based on heterogeneity values. Euclidean distances allow for the distance between two cases to be calculated across all variables and reflected in a single distance value. At each step in the procedure, the squared Euclidean distance between all pairs of cases and clusters is calculated and shown in a proximity matrix. At each step, the pair of cases or clusters with the smallest squared Euclidean distance will be joined with one another. Ward's minimum variance method calculates the distance between cluster members and the centroid. The centroid of a cluster is defined as the point at which the sum of squared Euclidean distances between the point itself and each other point in the cluster is minimized [88].

Conclusions
Based on the chi-square test, 10 wavenumbers of IR spectra correlating with H. pylori infection were selected for HCA analysis by the use of the k-NN model. The sensitivity and specificity of this model were 97% and 100%, respectively, whereas the accuracy reached 98%. This study shows that the combination of infrared spectroscopy and HCA methods may potentially be useful for the differentiation of serum samples from guinea pigs uninfected or infected with H. pylori on the basis of TNF, CRP, transferrin, glucose, α2-globulins, and IgM, IgG1/4. Further study on a larger number of samples will allow standardization of this method for the analysis of guinea pig sera regarding H. pylori exposure in conjunction with the development of inflammatory response and antibody production as well as some metabolic markers such as glucose. The results obtained from the experimental model of H. pylori infection in guinea pigs will be helpful in adjusting this methodology to study the systemic effects of H. pylori local gastric infection in humans on the basis of different levels of selected soluble determinants in serum samples.