2 Nov 2012: Gao YF, Chen L, Cai YD, Feng KY, Huang T, et al. (2012) Correction: Predicting Metabolic Pathways of Small Molecules and Enzymes Based on Interaction Information of Chemicals and Proteins. PLOS ONE 7(11): 10.1371/annotation/83922541-168a-4d4f-846a-cb5d127aa7a9. https://doi.org/10.1371/annotation/83922541-168a-4d4f-846a-cb5d127aa7a9 View correction
Metabolic pathway analysis, one of the most important fields in biochemistry, is pivotal to understanding the maintenance and modulation of the functions of an organism. Good comprehension of metabolic pathways is critical to understanding the mechanisms of some fundamental biological processes. Given a small molecule or an enzyme, how may one identify the metabolic pathways in which it may participate? Answering such a question is a first important step in understanding a metabolic pathway system. By utilizing the information provided by chemical-chemical interactions, chemical-protein interactions, and protein-protein interactions, a novel method was proposed by which to allocate small molecules and enzymes to 11 major classes of metabolic pathways. A benchmark dataset consisting of 3,348 small molecules and 654 enzymes of yeast was constructed to test the method. It was observed that the first order prediction accuracy evaluated by the jackknife test was 79.56% in identifying the small molecules and enzymes in a benchmark dataset. Our method may become a useful vehicle in predicting the metabolic pathways of small molecules and enzymes, providing a basis for some further analysis of the pathway systems.
Citation: Gao Y-F, Chen L, Cai Y-D, Feng K-Y, Huang T, Jiang Y (2012) Predicting Metabolic Pathways of Small Molecules and Enzymes Based on Interaction Information of Chemicals and Proteins. PLoS ONE 7(9): e45944. https://doi.org/10.1371/journal.pone.0045944
Editor: Eugene A. Permyakov, Russian Academy of Sciences, Institute for Biological Instrumentation, Russian Federation
Received: June 25, 2012; Accepted: August 23, 2012; Published: September 21, 2012
Copyright: © Gao et al. This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
Funding: National Basic Research Program of China (2011CB510102, 2011CB510101), Innovation Program of Shanghai Municipal Education Commission (No.12YZ120, No. 12ZZ087). The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.
Competing interests: The authors have declared that no competing interests exist.
Metabolism defines a series of chemical reactions that occur in a cell, maintaining the lives of living organisms by supplying the necessary molecules and energy . Metabolism is composed of metabolic pathways in which chemical reactions are organized in such a way that one molecule is transformed into another through a cascade of reactions recruiting small molecules and enzymes. Thus, small molecules and enzymes are part of the basic components of metabolic pathways. Determining the functioning of the small molecules and enzymes of each metabolic pathway is key to understanding the metabolic pathway and its biological functions.
During the past decade, large amounts of information concerning different organisms have been gathered on both the genetic and metabolic levels. Some databases pertaining to chemicals and proteins, such as KEGG (Kyoto Encyclopedia of Genes and Genomes) , , ENZYME , STITCH (Search Tool for Interactions of Chemicals)  and STRING (Search Tool for the Retrieval of Interacting Genes/Proteins) , have been established, from which descriptions of the properties of small molecules and enzymes can be readily acquired. Such information also provides an opportunity to study the metabolic pathways in greater detail computationally. A computational approach is another avenue by which to gain insight into metabolic pathways, apart from biochemical experiments. In recent years, some efforts , ,  have been made to tackle the problem by mapping small molecules to the corresponding metabolic pathways. However, besides small molecules, enzymes are also important basic components of metabolic pathways. As far as we know, this study is the first to map small molecules and enzymes to the metabolic pathways simultaneously, thus providing some additional information for use in studying metabolic pathways.
A large body of data concerning protein-protein interactions and chemical-chemical interactions has been applied extensively to predicting the attributes of proteins and compounds , , , , , , . This work led to the conclusion that interactive proteins or interactive compounds were more likely to share common biological functions than non-interactive ones. Most of these approaches studied chemical-chemical interactions or protein-protein interactions separately to construct classification models. In this study, we proposed a novel method, integrating interactions among chemicals and proteins including chemical-chemical interactions, protein-protein interactions, and chemical-protein interactions, to predict metabolic pathways in which small molecules and enzymes of yeast participate. Since some small molecules and enzymes participate in more than one metabolic pathway, our method sorts the probabilities of metabolic pathways to which a small molecule or enzyme may belong rather than predicting only the most probable metabolic pathway.
Materials and Methods
The dataset of small molecules to be studied was downloaded from the FTP site of the public database KEGG ,  at ftp://ftp.genome.jp/pub/kegg (June, 2011), from which we extracted 17,641 small molecules. After excluding small molecules that do not participate in any metabolic pathway, 4,487 small molecules were retained. The dataset of enzymes of yeast were also acquired from the FTP site of the public database KEGG ,  at ftp://ftp.genome.jp/pub/kegg (November, 2010). Likewise, those enzymes that do not participate in any metabolic pathway were excluded. Thus, we retained 655 enzymes of yeast, whose data on participation in metabolic pathways is available.
As described above, 4,487 small molecules and 655 enzymes of yeast have recoverable information concerning their participation in metabolic pathways. These samples were used to comprise a dataset Sce. However, not all samples can be used in our method due to the lack of interaction information. Those not having any interactions with other compounds or proteins in Sce were excluded. Finally, we obtained 4,002 samples including 3,348 small molecules and 654 enzymes, formulated by S = Sc∪Se, where S denotes the benchmark dataset consisting of 4,002 samples, Sc the dataset consisting of 3,348 small molecules, and Se the dataset set consisting of 654 enzymes.
According to KEGG (http://www.genome.jp/kegg/pathway.html), there exist more than 150 metabolic pathways, classified into 11 major metabolic pathway classes (see column 2 of Table 1). Subsequently, 3,348 small molecules and 654 enzymes were mapped into the 11 major metabolic pathway classes. The distribution of these small molecules and enzymes is shown in Table 1. The coding of small molecules and enzymes in each of the 11 major metabolic pathway classes can be found in Online Supporting Information S1. From column 3 of Table 1, the sum of small molecules in all pathways is greater than the total number of small molecules in the dataset, indicating that some small molecules belong to more than one pathway class. In detail, 3,020 small molecules belong to only one pathway class, while others belong to more than one pathway class - see Figure 1 for the number of small molecules versus the number of pathway classes. Likewise, as given in column 4 of Table 1, some enzymes also appear in more than one pathway class. In detail, 477 enzymes appear in only one pathway class, while others appear in at least two pathway classes (see Figure 2 for detail). In view of this, it appears to be a multi-label problem to predict the pathway classes of small molecules and enzymes. Similar to the cases in predicting some other attributes of proteins and compounds , , , , , the proposed method needs to provide a series of candidate pathway classes for a query small molecule or enzyme.
Construction of Hybrid Network
It is known that interactive proteins and compounds are more likely to share common biological functions , , , , ,  than would non-interactive ones; given a compound, its biological functions may share the same functions with its interactive proteins. Conversely, the biological functions of a protein may also be similar to the functions of its interactive compounds. In this case, if a compound and a protein are interactive with one another, it would be more likely that they appear in the same metabolic pathway. In view of this, a hybrid interaction network was constructed as follows.
The constructed network takes small molecules and enzymes as its nodes, and an edge is drawn between two nodes if and only if the corresponding small molecule and enzyme can interact with one another. Different combinations of the participants lead to three kinds of interactions: chemical-chemical interactions, chemical-protein interactions, and protein-protein interactions. The data concerning chemical-chemical interactions and chemical-protein interactions was acquired from STITCH (http://stitch.embl.de/) , a well-known database containing known and predicted interactions of chemicals and proteins derived from experiments, literature and other databases. To more accurately represent the interaction network, each edge in the network was labeled with a score given as the edge weight to quantify the interaction confidence, i.e., the likelihood that an interaction may occur. For any two small molecules c1 and c2, their interaction confidence score, i.e., the weight of the edge with c1 and c2 as endpoints, was denoted by Qcc(c1, c2). Specifically, if the interaction between c1 and c2 does not exist in STITCH, their interaction confidence score was set to 0, i.e., Qcc(c1, c2) = 0. Likewise, the weight of the edge with one small molecule c and one enzyme e as endpoints was denoted by Qcp(c, e). In particular, the confidence score was set to be 0 if the interaction between c and p does not exist in STITCH. The data concerning protein-protein interactions was retrieved from STRING (http://string.embl.de/) , a large database containing known and predicted protein interactions including direct (physical) and indirect (functional) interactions that were derived from several sources such as experimental repositories and computational prediction methods. Like the previous case of chemical-chemical interactions and chemical-protein interactions, each edge with two proteins p1 and p2 as endpoints was labeled with a score, denoted by Qpp(p1, p2), to quantify the interaction confidence, i.e., the likelihood that an interaction may occur. In particular, if p1 and p2 are non-interactive proteins according to the data in STRING, their interaction confidence score was set to 0, i.e., Qpp(p1, p2) = 0.
To describe the method more clearly, it is necessary to introduce some notations - let M1, M2, …, M11 denote 11 metabolic pathway classes, where M1 denotes “Carbohydrate Metabolism”, M2 the “Energy Metabolism”, and so forth (see column 1 and 2 of Table 1). In addition, if one supposes that there are n samples in the training set, say s1, s2, …, sn. The pathway class of a sample si can be formulated as.(1)where
(2)Toward a query sample (small molecule or enzyme) s, its pathway class was predicted by not only its neighbors in the network but also the weights of edges between the query one and its neighbors. Let N(s) denote a node set consisting of the neighbors of s. The likelihood that s belongs to Mj was calculated by.(3)where
(4)Obviously, the larger the value of is, the more likely s belongs to Mj. If for some j, it implies that there are no interactive compounds or proteins of the query sample s in the training set that belong to pathway class Mj. In this case, it is thought that the probability of s belonging to Mj is zero. For a query sample s, if the results obtained from Eq. 3 are(5)which suggests that it is most likely that s belongs to is M3, followed by M6, and so forth. Also, M3 is called the 1-st order predicted pathway class of s, and M6 the 2-nd order predicted pathway class of s, and so forth.
In statistical prediction, the jackknife test , one of the cross-validation methods, is often used to evaluate various predictors for their effectiveness. Compared with other cross-validation methods (independent dataset test and subsampling test), the jackknife test is deemed to be more objective , , . For a given benchmark dataset, each sample can always be assigned to a unique predicted result through the jackknife test. Therefore, many investigators adopt this method to evaluate the accuracies of their predictors , , , , , , , , , , . It was also adopted here to evaluate the generalization of predicting the metabolic pathways.
The X-axis is the confidence score. The Y-axis is the proportion of interactions contributing to the prediction. Generally, chemical-protein curve and protein-protein curve are ascending with the increase of confidence score, while chemical-chemical curve remains at a low level for low confidence scores and starts to increase quickly for high confidence scores.
For any query sample (small molecule or enzyme), the prediction method described in Section “Prediction method” will provide a series of candidate pathway classes. For the j-th order predicted pathway class, its prediction accuracy can be calculated by(6)where CMj denotes the number of samples that are predicted correctly according its j-th order predicted pathway class, and N denotes the total number of samples in the dataset. For these 11 prediction accuracies, high with small j and low with large j indicate that the method arranges the candidate pathway classes well. The first order prediction accuracy is more important than others, because it has the smallest index of j.
Since the 11 prediction accuracies calculated by Eq. 6 cannot evaluate the prediction method on the whole, another measurement is needed to calculate the probability of all pathway classes that are correctly predicted according to the first m predicted candidate pathways classes as follows , .(7)where Si,m denotes the number of the correctly predicted pathway classes of the i-th sample among its first m predicted candidate pathway classes, and Ni denotes the number of pathway classes that the i-th sample belongs to. Usually, we calculate Eq. 7 by taking m as the smallest integer equal to or greater than the average number of samples’ pathway classes in the dataset, which is calculated by
Results and Discussion
Performance of the Prediction Method for Small Molecules
In the training dataset, 3,348 small molecules comprised the dataset Sc. The pathway classes of these molecules were predicted by the prediction method described in Section “Prediction method” by the jackknife test based on all samples in benchmark dataset. Here, an example is given to demonstrate how we made the prediction. “C07277”, belonging to M9, is a sample in Sc. Its interactive compounds and proteins were shown from row 1 to 6 in Table 2. Using Eq. 3, the likelihood that “C07277” belongs to each of 11 pathway classes was calculated and shown in Table 3. As a result, “C07277” belongs to M1 with the highest likelihood, followed by M9, M10 and M4. The 1-st order predicted pathway class was not its true pathway class, while its 2-nd order predicted pathway class was its true pathway class. After the pathway classes of each sample in Sc were predicted, 11 ordered prediction accuracies were obtained by Eq. 6 and listed in column 2 of Table 4, from which we can see that the first order prediction accuracy was 77.12%. It is also observed form column 2 of Table 4 that the prediction accuracy generally followed a descending trend when increasing the order number, which indicates that our method sorted the predicted pathway classes well. The average number of pathway classes for small molecules was 1.15 (3,844/3,348) according to Eq. 8, i.e., M = 1.15. Thus we consider the first 2 predicted pathway classes for each small molecule. After collecting these pathway classes calculated according to Eq. 7, it was observed that the probability that all true pathway classes were covered by them was 83.81%. Our results are comparable to that in , where the results were obtained by only chemical-chemical interactions.
Performance of the Prediction Method for Enzymes
In addition to the small molecules, there were 654 enzymes in the training dataset, which comprised dataset Se. Our prediction method was also applied to predict their metabolic pathway classes, evaluated by the jackknife test. Likewise, “YLL058W”, a sample in Se, was selected to demonstrate how its predicted pathway classes were obtained. “YLL058W” belongs to two pathway classes: M2 and M5. Its interactive compounds and proteins were shown from row 7 to 17 in Table 2 and the likelihood of “YLL058W” belonging to each of 11 pathway classes was shown in Table 3, from which we can see that “YLL058W” belonging to M5 is most likely, followed by M2, M6 and M1. The first two predicted pathway classes were its true pathway classes. After processing by Eq. 6, 11 ordered prediction accuracies were obtained. These accuracies were listed in column 3 of Table 4, from which we can see that the first order prediction accuracy was 92.05%. The average number of pathway classes for enzymes was 1.37 (898/654) according to Eq. 8, i.e., M = 1.37, meaning that the average success rate by a random guess would be 12.46% (1.37/11), which is much lower than that by our method. Like the 11 ordered prediction accuracies for small molecules, those for enzymes also generally followed a descending trend when increasing the order number (cf. Table 4), which suggests that the predicted pathway classes were sorted quite well. As described above, the average number of pathway classes for enzymes was 1.37. Eq. 7 was calculated by taking m = 2, yielding a probability of 83.41% that all true pathway classes were covered by the first 2 predicted classes.
Performance of the Prediction Method for All Samples
The predicted results for all samples in the benchmark dataset S combined the results of small molecules in dataset Sc and enzymes in dataset Se. Listed in column 4 of Table 4 were 11 ordered prediction accuracies, from which the first ordered prediction accuracy was 79.56%. The average number of pathway classes for the samples in S was 1.18 (4,742/4,002) according to Eq. 8, i.e., M = 1.18, meaning that the average success rate by a random guess would be 10.73% (1.18/11), much lower than that obtained by our method. Meanwhile, it is observed from column 4 of Table 4 that the 11 prediction accuracies followed a descending trend when increasing the order number, suggesting that the predicted pathway classes, for both small molecules and enzymes, were sorted quite well by our method. Since the average number of pathway classes for all samples in S was 1.18, the first two predicted pathway classes for each sample were considered. After collecting these pathway classes calculated by Eq. 7 by taking m = 2, 83.74% true pathway classes were covered by the first 2 predicted pathway classes.
Confidence Scores of Small Molecules or Enzymes
As illustrated by the above sections, our method is very effective in predicting the metabolic pathway classes of small molecules and enzymes, indicating that interactive small molecules or enzymes are very likely to appear in a common metabolic pathway. In this section, we analyze the confidence score and illustrate the value in utilizing such scores.
The network constructed contains 4,002 samples and 100,754 interactions, including 66,942 chemical-chemical interactions, 19,695 chemical-protein interactions, and 14,117 protein-protein interactions. As described in Section “Construction of hybrid network”, each interaction was labeled with a confidence score ranging from 1 to 999, quantifying the likelihood that an interaction occurs. For each integer k in the interval [1, 999], the following rate was calculated for each kind of interaction.(9)where Ik is the number of interactions with confidence score to be at least k, and IMk is the number of interactions with their confidence score to be at least k and their corresponding small molecules or enzymes belonging to at least one common pathway class. The superscript of Eq. 9 was to differentiate three different kinds of interactions – is for chemical-chemical interaction, for chemical-protein interaction, and for protein-protein interaction. It is clear that the value of Eq. 9 quantifies the contribution of the interactions with confidence score at least k for predicting the pathway classes of small molecules and enzymes in our method. For each kind of interaction, we can plot a curve with as its Y-axis and the subscript k as its X-axis. For clarity, the curve for chemical-chemical interactions is named the chemical-chemical curve, the curve for chemical-protein interactions is the chemical-protein curve, and that for protein-protein interactions is the protein-protein curve. Shown in Figure 3 are three curves, from which we can see that the chemical-protein curve and protein-protein curve generally follow an increasing trend when increasing the confidence score; while the chemical-chemical curve does not look good in terms of its overall trend – the rate remains at a low level (between 40%−60%) when k < ∼900, and when k > ∼900, the rate starts to increase quickly. These data indicate that the proportions of the interactions contributing to the prediction in the method become higher and higher with the increasing of confidence score, meaning that the confidence scores of interactions are related to the prediction of enzymes and compounds in a metabolic pathway. It is, therefore, foreseeable that as the interactions become more evidenced in STRING and STITCH, predictions requiring confidence scores will also be improved accordingly. Finally, it is important to note that when taking all interactive enzymes or compounds into consideration, more than half of the interactions would provide contributions to the prediction, indicating that using interaction information of proteins and chemicals to predict their metabolic pathways is reasonable. It is also the basis upon which our method performs well.
Analysis of Samples with Incorrect 1-st Order Predictions
Although our method performs well, where the 1-st order prediction accuracy for all samples achieved 79.56%, 818 samples (818/4002, 20.44%) achieved incorrect 1-st order predictions. The distribution of these misclassified samples in the 11 pathway classes is shown in Table 5. We investigate these samples in depth and explain why these samples were misclassified as follows. Based on the principle of the method, the likelihood that a misclassified sample belongs to its 1-st order predicted pathway class was greater than those of true pathway classes, while the likelihood of a sample belonging to one class is calculated by summing the confidence scores between the sample and its neighbors belonging to that class. Thus, it would be interesting to investigate sum terms of the likelihood that a misclassified sample belongs to a 1-st order predicted pathway class and true pathway classes. The misclassified sample “C00439” belongs to pathway class M5, while its 1-st order predicted pathway class was M8. Shown in Table 6 are the interactive compounds and enzymes of “C00439” in M5 and M8, and the last row of Table 6 shows the likelihood of “C00439” belonging to M5 and M8. Two difficult situations were observed from Table 6 as follows: (1) sum terms for 1-st order predicted pathway class were greater than those of true pathway classes; (2) sum terms with values greater than 700, which is deemed the threshold of interactions with high confidence , , for 1-st order predicted pathway class were greater than those of true pathway classes. Due to the method of calculating the likelihood (cf. Eq. 3), it is highly possible that a query sample satisfying one of the above situations would be predicted incorrectly. Among 818 misclassified samples, 556 (556/818, 67.97%) samples fit the first situation; while 604 (604/818, 73.84%) samples fit the second situation. Furthermore, 762 (762/818, 93.15%) samples fit at least one of the two situations. As a result, these samples were all misclassified. On the other hand, the incompleteness of the interaction information may be another important reason. When interactions, especially those with high confidence scores, for the true class are missing in the calculation, the prediction is likely to be incorrect.
By integrating the data for chemical-chemical interactions, chemical-protein interactions, and protein-protein interactions, a multi-label prediction model was developed to identify the metabolic pathway classes of small molecules and enzymes. Since interactive chemicals and proteins are more likely to involve a common pathway, the first order prediction accuracy achieved by our method was 79.56%, much higher than the average success rate by a random guess. Our analysis shows that interactive chemicals or proteins with higher confidence scores would be more likely to participate in the same metabolic pathway. We hope that this method may facilitate the understanding of metabolic pathway systems. It is also anticipated that prediction accuracy will increase as more and more interaction information concerning chemicals and proteins becomes available.
Conceived and designed the experiments: LC YJ YDC. Performed the experiments: YFG LC. Analyzed the data: YFG LC KYF TH. Contributed reagents/materials/analysis tools: YJ YDC TH. Wrote the paper: YFG LC KYF.
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