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Assessment of the predictive accuracy of five in silico prediction tools, alone or in combination, and two metaservers to classify long QT syndrome gene mutations

Abstract

Background

Long QT syndrome (LQTS) is an autosomal dominant condition predisposing to sudden death from malignant arrhythmia. Genetic testing identifies many missense single nucleotide variants of uncertain pathogenicity. Establishing genetic pathogenicity is an essential prerequisite to family cascade screening. Many laboratories use in silico prediction tools, either alone or in combination, or metaservers, in order to predict pathogenicity; however, their accuracy in the context of LQTS is unknown. We evaluated the accuracy of five in silico programs and two metaservers in the analysis of LQTS 1–3 gene variants.

Methods

The in silico tools SIFT, PolyPhen-2, PROVEAN, SNPs&GO and SNAP, either alone or in all possible combinations, and the metaservers Meta-SNP and PredictSNP, were tested on 312 KCNQ1, KCNH2 and SCN5A gene variants that have previously been characterised by either in vitro or co-segregation studies as either “pathogenic” (283) or “benign” (29). The accuracy, sensitivity, specificity and Matthews Correlation Coefficient (MCC) were calculated to determine the best combination of in silico tools for each LQTS gene, and when all genes are combined.

Results

The best combination of in silico tools for KCNQ1 is PROVEAN, SNPs&GO and SIFT (accuracy 92.7%, sensitivity 93.1%, specificity 100% and MCC 0.70). The best combination of in silico tools for KCNH2 is SIFT and PROVEAN or PROVEAN, SNPs&GO and SIFT. Both combinations have the same scores for accuracy (91.1%), sensitivity (91.5%), specificity (87.5%) and MCC (0.62). In the case of SCN5A, SNAP and PROVEAN provided the best combination (accuracy 81.4%, sensitivity 86.9%, specificity 50.0%, and MCC 0.32). When all three LQT genes are combined, SIFT, PROVEAN and SNAP is the combination with the best performance (accuracy 82.7%, sensitivity 83.0%, specificity 80.0%, and MCC 0.44). Both metaservers performed better than the single in silico tools; however, they did not perform better than the best performing combination of in silico tools.

Conclusions

The combination of in silico tools with the best performance is gene-dependent. The in silico tools reported here may have some value in assessing variants in the KCNQ1 and KCNH2 genes, but caution should be taken when the analysis is applied to SCN5A gene variants.

Peer Review reports

Background

Long QT syndrome (LQTS) is a heritable cardiac disorder characterised by a prolonged QT-interval detected on an electrocardiogram (ECG), episodes of syncope, and the risk of sudden death. The estimated number of affected people is 1 in 2,500 [1,2], and 13 causative genes have been identified. The majority of these genes encode for the cardiac ion channels (potassium, sodium and calcium). Loss-of-function mutations in the KCNQ1 and KCNH2 genes (LQT1 and LQT2, respectively) account for ~65% of all LQTS cases, and gain-of-function mutations in the SCN5A gene (LQT3) account for 10% of all LQTS cases [3,4]. Genotype-phenotype correlation studies have established genotype-specific ECG patterns, arrhythmia triggers and outcomes [5,6]. Genetic diagnosis permits better risk stratification, clinical management and cascade family screening [7].

As genetic testing becomes more widely available, an increasing number of variants of unknown/uncertain significance are being discovered. Before family cascade screening can be undertaken, it is essential to be confident of the pathogenicity of the variant. While nonsense and frameshift mutations, which cause premature termination of protein production, are usually pathogenic, missense mutations are very commonly benign. The interpretation of novel single nucleotide variants (SNVs) is difficult. SNVs represent ~75% of clinically positive LQTS test results [8]. Approximately 1 in 25 healthy individuals are expected to have a rare, benign variant in one of the three major LQTS genes [9,10]. The best methods to assess the pathogenicity of novel mutations are to undertake phenotype-genotype family co-segregation studies, and functional/biophysical studies in an in vitro system or animal models. However, many families are too small, and the latter two methods are expensive and time-consuming and unavailable to most diagnostic services. With the growing number of unclassified SNVs, many diagnostic laboratories use in silico missense mutation prediction tools to determine whether a novel SNV is pathogenic in relation to the evolutionary conservation of specific amino acids, as well as protein structure and function.

The prediction tools can be broadly divided into three categories: sequence and evolutionary conservation-based methods, protein sequence and structure-based methods, and supervised learning methods (refer to [3,11-13] for reviews of the different categories). The sequence and evolutionary conservation-based methods assess the pathogenicity of a mutation based on the conservation of a particular amino acid across different species [14-16]. Protein sequence and structure-based methods assess SNVs based on their location in the protein structure and how they may impact/disrupt the overall protein [17]. The supervised learning methods are trained on large defined datasets so that they can “learn” to distinguish pathogenic mutations from benign variants [15,18,19].

Several studies have investigated the use of multiple in silico prediction tools to assess the predictive accuracy of these tools [20-28]. There are also consensus programs (metservers) that combine the output from several in silico prediction tools and produce a single consensus outcome, all of which have been reported to offer improved performance over individual tools [29-31]. However, no study has investigated the combination(s) of individual in silico prediction tools with the best performance for LQTS genes or whether the use of metaservers is better.

The aim of the study described here was to assess the predictive accuracy of five in silico programs (SIFT, PolyPhen-2, PROVEAN, SNPs&GO and SNAP), alone or in combination, and two metaservers (Meta-SNP and PredictSNP) in evaluating SNVs in the three major LQTS genes (KCNQ1, KCNH2 and SCN5A). All mutations reported in the Inherited Arrhythmia Database [32] for these genes were analysed to determine the combination of the in silico programs with the best performance, and how the combinations compared to the use of the metaservers.

Methods

All LQTS gene SNVs (both deleterious, polymorphisms and rare SNVs) were collated from the Inherited Arrhythmia Database (http://www.fsm.it/cardmoc/ last accessed October 2014), Kapplinger et al. [33], Giudicessi et al. [5] and the LQTS gene LOVD database [34]. Only SNVs that caused missense amino acid changes were considered for analysis. For this study the SNVs were divided into two groups: pathogenic and benign. To be considered for the pathogenic group, SNVs must either be functionally characterised by in vitro and/or have undergone co-segregation studies to prove they are pathogenic. In the case of the benign group, SNVs must either be functionally characterised by in vitro studies and/or must have an allele frequency of greater than 1%. SNVs in the SCN5A gene reported by Kapplinger et al. [33] were found in either LQTS and/or Brugada syndrome patients. All the mutations that were analysed and their respective results are shown in Additional file 1: Data tables, and their locations in respect of the different protein regions (transmembrane domains, pore regions, etc.) are shown in Additional file 2: Figures S1–S3.

Five in silico missense mutation prediction tools and two metaservers, listed in Table 1, were used to analyse all the LQTS genes SNVs and the exact methodology and algorithms used by each of these have been described previously according to the references given here: PolyPhen-2 [17], SIFT [14], PROVEAN [16], SNPs&GO [18,35], SNAP [19], Meta-SNP [30] and PredictSNP [31].

Table 1 In silico prediction tools and metaservers used in the current study

PolyPhen-2 uses annotated UniProt entries to predict if a missense mutation is situated in a structurally important/functional site in the protein using a naïve Bayesian approach [17]. Therefore, PolyPhen-2 could belong to the supervised-learning method of in silico analysis [13]. LQTS SNVs were analysed by accessing the web-based method PolyPhen-2, using default settings [17]. PolyPhen-2 classified each variant as “Probably damaging”, “Possibly damaging”, or “Benign”. For the purposes of this study, SNVs assigned as “Probably damaging” or “Possibly damaging” were classified as “damaging” for downstream analysis.

SNPs&GO incorporates sequence information, evolutionary information, and information from the GO (Gene Ontology) database [18]. The default settings were used. SNPs&GO classified each mutation variant as either “Neutral” or “Disease” [15,18].

SIFT uses sequence homology from multiple sequence alignments to predict the pathogenicity of a mutation [14,15]. SIFT non-synonymous single nucleotide variants (genome-scale) was used. The chromosomal location, genomic coordinate, transcript orientation and base-pair change of each SNVs were required for the SIFT nonsynonymous single nucleotide variants (genome-scale) input format. The web-based Variant Effect Predictor – Ensembl (http://asia.ensembl.org/info/docs/tools/vep/index.html) was used to generate the required information. The default settings were used for this study. SIFT classified each variant as either “Tolerated” or “Damaging”.

The web-based PROVEAN Protein Batch Human was used [16]. The PROVEAN algorithm classified each SNV as either “Neutral” or “Deleterious”.

SNAP makes predictions based on protein secondary structure, solvent accessibility and the conservation of the amino acid of interest in a protein [19]. The default settings were used. SNAP classified each mutation as either “Neutral” or “Non-neutral” [19].

Meta-SNP [30] and PredictSNP [31] are metaservers that combine the predicted outcomes from several in silico tools to form a consensus prediction for a given SNV. Meta-SNP uses a random forest approach to integrate the predictions from in silico tools [30] (these are listed in Table 1). Each mutation is classified as either “Disease” or “Neutral” [30]. PredictSNP is a consensus classifier that integrates the results from six in silico prediction tools (listed in Table 1) as well as experimental annotations from Protein Mutant Database and UniProt [31].

The raw data output of all LQTS gene SNVs can be found in the Additional file 3: Raw Data. The functional predictions of all LQTS gene SNVs from all five in silico tools and two metaservers were collated in Excel spreadsheets. The location of each LQTS gene mutation in the context of protein structure, as well as information about whether the SNVs were functionally characterised are shown in Additional file 1: Data tables and Additional file 2: Figures S1–S3.

The data output were initially compared with the functional studies’ results to determine the accuracy of the programs. SNVs that were not functionally characterised but were proven to be pathogenic through co-segregation studies, or had an allelic frequency of greater than 1%, were assumed to be pathogenic or benign, respectively. These results were subcategorised into four groups: true positives (TP, correct predictions for deleterious mutations), true negatives (TN, correct predictions for neutral mutations), false positives (FP, incorrect predictions for neutral mutations) and false negatives (FN, incorrect predictions for deleterious mutations). The sensitivity (true positive rate) and specificity (true negative rate) for each in silico tool were determined using the four different categories. Sensitivity was defined as the probability of identifying true deleterious mutations, and this was calculated by [TP/(TP + FN)] x 100 [36]. Specificity was defined as the probability of identifying true neutral mutations, and this was calculated by [TN/(TN + FP)] x 100 [36]. The Matthews Correlation Coefficient (MCC) was also calculated for each category using the following equation (TP x TN) – (FP x FN)/sqrt((TP + FP)(TP + FN)(TN + FP)(TN + FN)) [37]. The MCC measures how the predictions correlate with the real target values, and the scores range from +1 (always correct) to −1 (always false), and 0 represents a completely random prediction [36]. An MCC score of more than 0.5 was considered acceptable as this corresponds to more than 75% accuracy in balanced data [38].

Receiver operating characteristic (ROC) curves and the area under the ROC curve (AUC) [39] for each of the single in silico tools and the two metaservers were calculated using the pROC package in R [40]. ROC curve plots sensitivity against 1-specificity, which depicts the relative tradeoffs between the true positives and false positives [39]. The probability scores of each in silico prediction tool were used to calculate the curves and AUC. An AUC of 1 represents a perfect prediction, an AUC of 0.5 relates to predictions that are made by “pure chance”, and an AUC less than 0.5 shows the predictions are wrong.

The sensitivity percentage represents how well the in silico tools and metaservers correctly predict pathogenicity, and the specificity percentage represents how well they correctly predict non-pathogenic outcomes [36]. MCC, ROC curve and AUC were a more balanced overall evaluation of the ability of the prediction tools to correctly classify the SNVs compared to just analysing the accuracy. ROC curves do not directly indicate the performance of a method, but only shows the method’s ranking potential for its overall performance [38].

The data output for each in silico tool were then analysed in combinations of two, three, four or all five in silico tools, and the accuracy of the predictions, sensitivity, specificity and MCC were determined for each combination. The conditions that an SNV must meet in order to be categorised as “Tolerated” or “Damaging” in the case of being assessed by two, three, four or all five in silico missense prediction tools are shown in Table 2. The AUC scores were used as an indicator as to which in silico tools performed best for a particular LQTS gene.

Table 2 Conditions for SNV data output from two, three, four and all in silico missense prediction tools in order to be considered tolerated and damaging

The differences between single tools and differing combinations of tools in accuracy was calculated using the Kruskal-Wallis test [41]. The best performing in silico tool/combination of tools were chosen based on their MCC scores, which is a more balanced approach to investigate performance because it is less sensitive to different numbers of pathogenic and benign SNVs for each gene [36].

Results

A total of 312 missense SNVs (including pathogenic and benign variants, see Table 3) in three LQTS genes were analysed using five different in silico missense prediction tools and two metaservers. To verify that the combined in silico tools have different decision cutoffs, pairwise correlations of the in silico prediction tools were calculated to ensure no strong correlation between any pair of tools would affect the combined results (Additional file 4: Tables S1–S4). ROC curves were calculated for each individual in silico prediction tools and metaservers (Table 4), and the possible outcomes for the five in silico tools and metaservers are shown in Figures 1 and 2.

Table 3 The total number of functionally characterised KCNQ1 , KCNH2 and SCN5A gene variants investigated in this study
Table 4 Area under the curve (AUC) calculated from Receiver operating curves for each of the in silico prediction tools alone using their respective probabilities/scores for KCNQ1 , KCNH2 , SCN5A and all genes combined
Figure 1
figure 1

The accuracy (acc), sensitivity (sens), specificity (spec) and MCC scores of all the different combinations of in silico prediction tools and metaservers for variants in the KCNQ1, KCNH2, SCN5A genes, and all genes combined. The sensitivity and specificity percentages highlighted in light green represent the combination of in silico tools and metaservers with high sensitivity or specificity percentages; dark green represents the combination of in silico tools or metaservers with the best performance; light blue represents the combination of in silico tools and metaservers with high MCC scores, and dark blue represents the combination of in silico tools or metaservers with the best performance; light orange represents the combination of in silico tools and metaservers with high accuracy percentages; yellow represents the combination of in silico tools or metaservers with the best performance; red represents the combination of in silico tools and metaservers with MCC scores below 0.

Figure 2
figure 2

The accuracy (acc), sensitivity (sens), specificity (spec) and MCC scores of all the different combinations of in silico prediction tools and metaservers for the whole of SCN5A, only the amino-/carboxyl-terminus and transmembrane domain (N/TM/C) of SCN5A, and only the loop regions of SCN5A. The sensitivity and specificity percentages highlighted in light green represent the combination of in silico tools and metaservers with high sensitivity or specificity percentages; dark green represents the combination of in silico tools or metaservers with the best performance; light blue represents the combination of in silico tools and metaservers with high MCC scores, and dark blue represents the combination of in silico tools or metaservers with the best performance; light orange represents the combination of in silico tools and metaservers with high accuracy percentages; yellow represents the combination of in silico tools or metaservers with the best performance; red represents the combination of in silico tools and metaservers with MCC scores below 0.

KCNQ1

The ROC curves of the individual in silico prediction tools and metaservers showed that Meta-SNP, PROVEAN, SNPs&GO and SIFT were the best tools for KCNQ1 gene predictions (Figure 3). The AUC scores showed that Meta-SNP, PROVEAN, PolyPhen-2 and SNPs&GO were the best tools (Table 4), while MCC scores ranked SIFT, Meta-SNP, PolyPhen-2, PROVEAN and PredictSNP as the best tools (Figure 1) for KCNQ1 gene predictions.

Figure 3
figure 3

Receiver operating characteristic (ROC) curves for KCNQ1, KCNH2, SCN5A and all genes combined for each of the single in silico prediction tools and the two metaservers.

There were no significant differences between the accuracy of the different combinations of in silico tools and the metaservers alone. However, based on the MCC scores, the best combination of in silico tools for KCNQ1 was PROVEAN, SNPs&GO and SIFT (MCC score of 0.70; Figure 1). This combination had an accuracy of 92.7%, sensitivity of 93.1% and specificity of 100% (Figure 1). Despite not having the highest accuracy (94.5% achieved by SNAP and SNPs&GO), the combination of PROVEAN, SNPs&GO and SIFT was able to correctly classify both pathogenic and benign SNVs equally well (Figure 1). When all five in silico tools were used, the combined results were almost as good with an MCC score of 0.69 (Figure 1). The two combinations of tools also surpassed the performance of both metaservers in terms of accuracy, sensitivity and MCC scores.

KCNH2

According to the ROC curves, PROVEAN, Meta-SNP, SIFT and SNPs&GO were the best tools (Figure 3), and the AUC scores ranked Meta-SNP, PROVEAN, SNPs&GO and SIFT as the best tools for KCNH2 gene predictions (Table 4). PROVEAN, Meta-SNP and SIFT had the highest MCC scores (Figure 1).

Like KCNQ1, there were no significant differences in the accuracy of the different combinations of in silico tools and the metaservers alone. Based on the MCC scores, SIFT and PROVEAN, and PROVEAN, SNPs&GO and SIFT were the best combinations for KCNH2 gene predictions (Figure 1). Both combinations had an accuracy of 91.1%, with sensitivity of 91.5%, specificity of 87.5%, and an MCC score of 0.62 (Figure 1). PROVEAN-alone; PolyPhen-2, SIFT and PROVEAN and SIFT, PROVEAN and SNAP were almost as good (MCC of 0.57; Figure 1). The two metaservers did not perform as well compared to the two best combinations of in silico tools.

SCN5A

SNVs in the SCN5A gene cause either LQTS and/or Brugada syndrome (BrS) and the analysis was performed on the group of SNVs without separating them by phenotype. The combination of in silico tools with the best performance, based on the MCC scores, remains the same for the SCN5A gene regardless of whether BrS variants were included or not (Additional file 4). No single predictive tool appeared to work well for the SCN5A gene (Figure 3), and the AUC scores ranked SNPs&GO, SIFT, Meta-SNP and PolyPhen-2 as the best programs (Table 4); however, the scores suggested that the chances of the correct prediction being made was a little better than “pure chance”. This was also reflected by the MCC scores (Figure 1).

None of the combinations of in silico tools performed as well for the SCN5A gene as for KCNQ1 and KCNH2 genes (Figure 1). There were no significant differences between the different combination of in silico tools regarding accuracy. The overall MCC scores were low, with SNAP and PROVEAN giving the highest score of 0.32. For this combination, the accuracy was 81.4%, with sensitivity of 86.9% and specificity of 50.0% (Figure 1). Both metaservers performed poorly.

Due to the poor performance of the in silico tools on SNVs in the SCN5A gene as a whole, the analysis of the SNVs was separated into two groups: those that lay in the amino-/carboxyl-terminus and all transmembrane domains, and those that lay in all the loop regions of SCN5A. The MCC scores for all in silico tools and metaservers tested improved when only the amino-/carboxyl-terminus and all transmembrane domains were considered; however, the scores were still very low compared to both the KCNQ1 and KCNH2 gene results (Figure 2). The combination with the best performance for the amino-/carboxyl-terminus and all transmembrane domains of SCN5A was SIFT and PROVEAN (MCC score 0.36; Figure 2). The analysis of variants in the loop regions was very poor, with MCC scores ranging from −0.50 – 0.35 (Figure 2). SNAP and PROVEAN is the best in silico tool combination for analysing SNVs in the SCN5A loop regions (MCC score 0.35; Figure 2). Both metaservers performed poorly for these regions (Figure 2). As these results are comparable to the analysis of SCN5A as a whole, it was decided that the combination of tools with the best performance will be based on that analysis.

All genes

According to the ROC curves SIFT, Meta-SNP, SNPs&GO and PolyPhen-2 were the top four single programs when all three LQTS genes’ SNVs were combined (Figure 3). The AUC scores ranked Meta-SNP, PROVEAN, SNPs&GO and PolyPhen-2 as the best tools for all gene predictions (Table 4). The MCC scores ranked SIFT, PROVEAN, Meta-SNP and PredictSNP as the best tools (Figure 1).

There were no significant differences between the accuracy of the different combinations of in silico tools. Based on MCC scores the combination of in silico tools with the best performance was SIFT, PROVEAN and SNAP (Figures 1 and 3). This combination had an accuracy of 82.7%, with sensitivity of 83.0%, specificity of 80.0% and MCC of 0.44 (Figure 1). SIFT and PROVEAN, as well as PolyPhen-2, SIFT and PROVEAN, and PROVEAN, SNPs&GO and SIFT, performed almost as well (MCC score 0.43; Figure 1). These three combinations of in silico tools had higher accuracy and sensitivity but lower specificity compared to SIFT, PROVEAN and SNAP (Figure 1). The metaservers did not perform as well as the combination of in silico tools with the best performance in terms of accuracy and sensitivity (Figure 1).

Discussion

The current study investigated the combination of in silico prediction tools with the best performance for LQT 1–3 genes. The analysis was restricted to mutations in these genes as they account for approximately 70%-75% of congenital LQTS cases, and the remaining genes only make up ~5% of cases [42]. For the minor genes, very few SNVs (both pathogenic and benign) fit the strict criteria set for the current study and therefore these genes were not analysed. In the case of SCN5A, both LQTS and BrS SNVs were analysed together. This was done as the distinction between both LQT3 and Brugada syndrome is not clear cut as some mutations in the SCN5A gene are associated with both diseases [43-46]; however, the combination of in silico tools with the best performance remained the same regardless of whether the LQTS and BrS mutations were separated or not.

PolyPhen-2, SIFT, PROVEAN and SNPs&GO were chosen as they are routinely used in the author’s diagnostic laboratory. Both PolyPhen-2 and SIFT are the most common prediction tools used in diagnostic laboratories. SNAP was chosen as another supervised-learning based tool that incorporates a wider range of features (evolutionary information, structural features and protein annotation information) [47], and it uses a different learning algorithm than SNPs&GO. Both metaservers (Meta-SNP and PredictSNP) were chosen as they incorporate the results from a good selection of in silico prediction tools that span different types of methods.

The approach that was used to categorise variants as “pathogenic” or “benign” based on combined results from the five in silico prediction tools as shown in Table 2. This approach was taken to ensure that all likely pathogenic SNVs would not be missed and that benign SNVs were correctly called. “Over-calling” pathogenic SNVs may occur when an even number of in silico tools are used as the conditions set out for this study “call” an SNV with equal numbers of “pathogenic” and “benign” results as “pathogenic”. For KCNQ1, 4%-15% of SNVs; KCNH2, 5%-21% of SNVs; and SCN5A, 8%-24% of SNVs fall into this category. However, these conditions ensured that the classification of “benign” SNVs is more stringent, and so would minimise the chance of a possible pathogenic SNVs being classified as “benign” and therefore dismissed.

In silico tools that correctly predict pathogenic variants do not necessarily perform well for benign predictions. The combinations that were chosen for all three genes were based on how well the prediction tools were able to identify both pathogenic and benign SNVs, thereby reducing the number of false positive and false negative calls. The tools chosen for each gene do not necessarily yield the highest accuracy. In the clinical setting it may in fact be preferable to use an in silico tool which is likely to under-call the likelihood of malignancy in favour of improved specificity. This will mean that in a family cascade, fewer people will be erroneously labelled as having the disease on the basis of a genetic test result. In the case of calling a truly pathogenic variant as benign, the clinician must use clinical evaluation of family members in order to reveal the truth in a segregation study. In the current study, the optimal number of in silico tools for KNCQ1, KCNH2, and when all genes are considered together, is three. Only SCN5A requires two in silico tools to make the best predictions. Therefore, the “over-calling” issue should be minimised.

The current study also highlights the need to systematically test which combinations of in silico tools perform the best for a given gene, and not assume that a large number of programs will provide the best prediction outcomes. The results from these in silico methods disagree frequently due to the different algorithms they are based on [21,23]. When considering the predictions for pathogenic KCNQ1 SNVs by all five in silico tools, 82 SNVs (81%) had concordant results; however, when only considering KCNQ1’s combination of tools with the best performance (PROVEAN, SNPs&GO and SIFT), an additional six SNVs were agreed upon (88 SNVs, 88%; Additional file 2). In the case of benign KCNQ1 SNVs, there were no improvements when considering only the results of the tools with the best performance compared to considering all five tools (two SNVs, 25%; Additional file 2). All five tools agreed for 58 KCNH2 pathogenic SNVs (71%), and this increased to 68 SNVs (83%) when only considering the results from the combination of tools with the best performance. There were three benign SNVs (37.5%) that had the same predictions for all five tools and this increased by one SNV (4, 50%; Additional file 2) when considering the tools with the best performance. In the case of pathogenic SCN5A gene mutations, 61 SNVs (62%) had the same predictions for all five in silico tools and this increased to 79 SNVs (80%) when only considering PROVEAN and SNAP (Additional file 2). Five benign SCN5A SNVs (36%) had the same predictions for all five tools and this increased by two SNVs (7, 50%) when only considering PROVEAN and SNAP (Additional file 2). When considering the predictions for all pathogenic SNVs, 201 SNVs (71%) had the same predictions for all five in silico tools; however, when considering the results from PROVEAN, SIFT and SNAP, this increased by 26 SNVs (227, 81%; Additional file 2). For all benign mutations, only 10 SNVs (33%) had the same predictions from all five tools, and this increased by four SNVs (14, 47%) when only PROVEAN, SIFT and SNAP were considered (Additional file 2).

Both KCNQ1 and KCNH2 encode for cardiac potassium channels and the structure of these two proteins are very similar. This could be the reason why the combination of in silico prediction tools with the best performance are the same for these two genes (PROVEAN, SNPs&GO and SIFT), with KCNH2 having SIFT and PROVEAN as an additional combination. The reason for both SIFT and PROVEAN working well together could be because they belong to the sequence and evolutionary conservation-based evaluation method, which relies solely on evolutionary sequence conservation information and does not take into account protein structural information (unlike PolyPhen-2) [14-16]. Studies conducted by Chan et al. [20] showed that methods based on evolutionary sequence conservation had high predictive values regardless of whether protein information is used. The addition of SNPs&GO to SIFT and PROVEAN could be because SNPs&GO uses evolutionary derived information [18], which is similar to SIFT and PROVEAN, and the inclusion of the information from the Gene Ontology database makes this combination best suited for the KCNQ1 and KCNH2 genes.

No prediction tools are considered suitable for analysing variants in the SCN5A gene from this study. The results for tools that incorporate protein structure and function into their algorithms (PolyPhen-2, SNPs&GO and SNAP) had low specificity suggesting that functional and structural information hampered predictions for variants in the SCN5A gene. This may be due to the two different SCN5A isoforms present in the normal human heart. The isoforms differ by only one amino acid (NP_000326 has glutamine-1077 deleted compared to NP_932173) [48]. The transcript encoding for NP_000326 represents 65% of the SCN5A gene in the normal heart [48], and depending on which isoform the SNV is present in, the effect of the mutation may differ [49]. A study investigating the functional characteristics of eight common SCN5A gene polymorphisms found five of the eight polymorphisms were similar to the unaffected SCN5A protein in the NP_000326 isoform, and only three of the eight were similar to the unaffected SCN5A protein in the NP_932173 isoform [49]. The polymorphisms that affected the function of the SCN5A protein, regardless of which isoform they were present in, affected the protein in different ways [49]. These results could account for the large number of polymorphisms characterised as damaging in this study (14 of 18 polymorphisms were classified as damaging; Additional file 1: Data Tables); of relevance here is the need to specify the protein isoform in some of the in silico programs.

Another confounding factor in the in silico analysis may lie in the fact that some SCN5A SNVs can cause both LQTS and BrS. Gain-of-function mutations are associated with BrS and loss-of-function mutations are associated with LQTS [50]. Flanagan et al., found that both SIFT and PolyPhen-2 had more success predicting loss-of-function compared to gain-of-function mutations [22] and this could also be the case with the other three in silico tools used here, hence the low MCC and AUC scores.

The protein context (isoform) of SNVs in SCN5A highlights an important issue when reporting results for diagnostic tests using in silico prediction tools. These tools make predictions based only on amino acid sequence and protein structure information, and very little information about protein function. Caution should be used when making clinical diagnosis based solely on predictive results. As demonstrated by the two isoforms of SCN5A, a single amino acid difference can have a significant effect in terms of protein function and interactions between the ion channels and their accessory proteins. The ideal prediction tool should incorporate information of not just the amino acid sequence and protein structure, but also the protein’s function and interaction with other proteins. While some of the latter aspects are included in the SNPs&GO and SNAP programs, more research is required to resolve protein function and interactions in order for these to be incorporated into prediction tools. Therefore, in silico predictions should act as an indicator of whether a variant of unknown significance is pathogenic or benign, and if functional studies are available, clinical information should be used to characterise the variant.

Compared to the different combinations of in silico tools, the metaservers were not significantly better despite their claims of improved performance over individual integrated tools [30,31]. Both Meta-SNP’s and PredictSNP’s performance were comparable to many of the different combinations of in silico prediction tools, with Meta-SNP performing slightly better. The metaservers performed better than individual in silico tools; however, compared to the combination of tools with the best performance the metaservers’ accuracy, sensitivity and MCC scores were not as good. Despite this the metaservers had high specificity compared to some of the in silico tools.

A major limitation of this study is the low number of benign SNVs for all three LQTS genes. Attempts to address this deficiency by including polymorphisms that have not been functionally characterised only led to a marginal increase in benign SNVs. Therefore, the analysis of the ability of the in silico tools to correctly predict an SNV to be benign may not be as reliable as the analysis of the tools’ ability to correctly predict an SNV to be pathogenic.

Another limitation is that in the current study only SIFT, PolyPhen-2, PROVEAN, SNPs&GO, SNAP, Meta-SNP and PredictSNP were investigated in the prediction of SNVs for LQT 1–3 genes; however, it is not to say that these are the only programs that are effective for these genes. For both KCNQ1 and KCNH2, sequence and evolutionary conservation-based in silico prediction tools appear to work best as demonstrated by the success of PROVEAN, SIFT and SNPs&GO. The results for SCN5A and an overall combination of in silico tools for all three genes did not appear promising. However, for SCN5A a combination of sequence and evolutionary conservation-based method with a supervised-learning method that uses a wide-spread method may be the best choice. In this study, SNAP appeared to work better than the other five in silico tools in analysing SCN5A gene variants. SNAP is a supervised-learning method using neural networks to make predictions, and it incorporates evolutionary constraints, structural features and protein annotation information [19].

Conclusions

The reliance on in silico prediction tools to make a diagnosis is high in light of the inability to functionally characterise each LQTS mutation that is discovered in diagnostic laboratories. This study confirms that these tools must never be relied on as the final arbiter of pathogenicity. Rather, a result should be seen as raising or lowering probability. This study shows that the level of confidence in the result and the combinations of prediction tools with the best performance are gene-dependent, and metaservers, while better than the single in silico prediction tools, did not perform better than the combinations of in silico tools with the best performance for each of the LQTS genes investigated. The assessment of variants in the SCN5A gene is significantly less reliable than those in the KCNQ1 or KCNH2 genes, and should be used with caution. Figure 4 summarises the in silico tools with the best performance for all three genes.

Figure 4
figure 4

Procedure used for assessing new missense mutations using in silico prediction tools for KCNQ1, KCNH2 and SCN5A. The in silico prediction tools for SCN5A are italicised as SNAP & PROVEAN should be used with caution for the prediction of SCN5A SNVs.

Wherever possible, clinical family-based co-segregation studies centred around clinical registries, and supported with in vitro evidence, should form the basis of an assignment of pathogenicity [3,7]. Careful genetic counselling should convey the probabilistic nature of genetic testing both to the patient and their attending clinicians.

Abbreviations

BrS:

Brugada syndrome

ECG:

Electrocardiogram

FP:

False positives

FN:

False negatives

GO:

Gene ontology

KCNQ1 gene:

Potassium voltage-gated channel, KQT-like subfamily, member 1(LQT1)

KCNH2 gene:

Potassium voltage-gated channel, subfamily H (eag-related), member 2 (LQT2)

LOVD:

Leiden open variation database

LQTS:

Long QT syndrome

MCC:

Matthews correlation coefficient

PROVEAN:

Protein variation effect analyzer

SCN5A gene:

sodium channel, voltage-gated, type V, alpha subunit (LQT3)

SNVs:

Single nucleotide variants

TP:

True positives

TN:

True negatives

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Acknowledgements

We would also like to thank Charlene Nell, Desktop Support Administrator, Green Lane Cardiovascular Services/Cardiology Department, for excellent secretarial assistance.

Funding sources

The Cardiac Inherited Disease Group is supported by Cure Kids, who also partially fund Dr Skinner’s salary. Dr Leong was financially supported by The Rutherford Foundation as a New Zealand Postdoctoral Fellow. We acknowledge the financial support of the Maurice and Phyllis Paykel Trust, Auckland Medical Research Foundation, Lottery Health Research and Green Lane Research and Educational Fund.

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Correspondence to Jonathan R Skinner.

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The authors declare that they have no competing interests.

Authors’ contributions

IUSL and DL were responsible for the acquisition of data, and the original analysis. AS was responsible for the statistical analysis and the data analysis of the revised manuscript. All authors have made substantial contributions to conception and design and interpretation of data. All authors have been involved in drafting the manuscript or revising it critically for important intellectual content. All authors have given final approval of the version to be published. All authors agree to be accountable for all aspects of the work in ensuring that questions related to the accuracy or integrity of any part of the work are appropriately investigated and resolved.

Additional files

Additional file 1:

Data tables for all the mutations forKCNQ1, KCNH2andSCN5Agenes that were analysed and their respective results.

Additional file 2:

Figure legends for all five supplementary figures. The zipped file contains all supplementary figures in eps format.

Additional file 3:

Raw data. The zipped file contains all raw data results in txt format from the five different in silico prediction tools and two metaservers.

Additional file 4:

Tables S1-S4. Data tables of the pairwise correlation of in silico prediction tools for KCNQ1, KCNH2 and SCN5A genes, and all three genes.

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Leong, I.U., Stuckey, A., Lai, D. et al. Assessment of the predictive accuracy of five in silico prediction tools, alone or in combination, and two metaservers to classify long QT syndrome gene mutations. BMC Med Genet 16, 34 (2015). https://doi.org/10.1186/s12881-015-0176-z

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