Ejemplo n.º 1
0
        public void FeatureFind(List <ProteinSpectrumMatch> prsms, LcMsRun run, string outTsvFilePath)
        {
            var featureFinder = new LcMsPeakMatrix(run, new LcMsFeatureLikelihood());
            // write result files
            var tsvWriter = new StreamWriter(outTsvFilePath);

            tsvWriter.WriteLine(LcMsFeatureFinderLauncher.GetHeaderString(false));

            var featureId = 1;

            foreach (var match in prsms)
            {
                var minScan = run.GetPrevScanNum(match.ScanNum, 1);
                var maxScan = run.GetNextScanNum(match.ScanNum, 1);
                var feature = featureFinder.GetLcMsPeakCluster(match.Mass, match.Charge, minScan, maxScan);

                if (feature == null)
                {
                    continue;
                }

                tsvWriter.WriteLine("{0}\t{1}", featureId, LcMsFeatureFinderLauncher.GetString(feature, false));
                featureId++;
            }

            tsvWriter.Close();
        }
Ejemplo n.º 2
0
        public void TestQuantifyIdedProteoforms()
        {
            var methodName = MethodBase.GetCurrentMethod().Name;

            Utils.ShowStarting(methodName);

            const string rawFolder           = @"\\proto-11\MSXML_Cache\PBF_Gen_1_193\2015_2";
            const string promexOutFolder     = @"D:\MassSpecFiles\UTEX\MSAlign";
            const string msAlignResultFolder = @"D:\MassSpecFiles\UTEX\MSAlign";

            if (!Directory.Exists(rawFolder))
            {
                Assert.Ignore(@"Skipping test {0} since folder not found: {1}", methodName, rawFolder);
            }

            var nDataset = 32;
            var dataset  = new string[nDataset];

            for (var i = 0; i < nDataset; i++)
            {
                dataset[i] = string.Format("Syn_utex2973_Top_{0,2:D2}_TopDown_7May15_Bane_14-09-01RZ", i + 1);
                //var rawFile = string.Format(@"{0}\{1}.pbf", rawFolder, dataset[i]);
            }

            var prsmReader = new ProteinSpectrumMatchReader(0.01);

            var filesProcessed = 0;

            var tolerance = new Tolerance(10);

            for (var i = 0; i < dataset.Length; i++)
            {
                var rawFile = string.Format(@"{0}\{1}.pbf", rawFolder, dataset[i]);
                if (!File.Exists(rawFile))
                {
                    Console.WriteLine(@"Warning: Skipping file not found: {0}", rawFile);
                    continue;
                }
                var run = PbfLcMsRun.GetLcMsRun(rawFile);

                var path = string.Format(@"{0}\{1}_MSAlign_ResultTable.txt", msAlignResultFolder, dataset[i]);
                if (!File.Exists(path))
                {
                    Console.WriteLine(@"Warning: Skipping file not found: {0}", path);
                    continue;
                }

                var prsmList = prsmReader.LoadIdentificationResult(path, ProteinSpectrumMatch.SearchTool.MsAlign);

                filesProcessed++;

                for (var j = 0; j < prsmList.Count; j++)
                {
                    var match = prsmList[j];
                    match.ProteinId = match.ProteinName.Substring(match.ProteinName.IndexOf(ProteinNamePrefix) + ProteinNamePrefix.Length, 5);
                }

                // PrSM To Feature
                var prsmToFeatureIdMap = new int[prsmList.Count];
                for (var k = 0; k < prsmToFeatureIdMap.Length; k++)
                {
                    prsmToFeatureIdMap[k] = -1;
                }

                // Feature To PrSM
                var featureToPrsm = new List <ProteinSpectrumMatchSet>();

                var featureFinder = new LcMsPeakMatrix(run, new LcMsFeatureLikelihood());
                var featureList   = new List <LcMsPeakCluster>();
                var featureId     = 0;
                for (var j = 0; j < prsmList.Count; j++)
                {
                    if (prsmToFeatureIdMap[j] >= 0)
                    {
                        continue;
                    }

                    var match      = prsmList[j];
                    var minScanNum = match.ScanNum;
                    var maxScanNum = match.ScanNum;
                    var mass       = match.Mass;
                    var charge     = match.Charge;
                    var massTh     = tolerance.GetToleranceAsMz(mass);
                    var id1        = match.ProteinId;

                    var feature = featureFinder.GetLcMsPeakCluster(mass, charge, minScanNum, maxScanNum);
                    var prsmSet = new ProteinSpectrumMatchSet(i)
                    {
                        match
                    };
                    if (feature == null)
                    {
                        feature = featureFinder.GetLcMsPeaksFromNoisePeaks(mass, charge, minScanNum, maxScanNum, charge, charge);
                        prsmToFeatureIdMap[j] = featureId;
                    }
                    else
                    {
                        prsmToFeatureIdMap[j] = featureId;
                        var etTol = Math.Max(run.GetElutionTime(run.MaxLcScan) * 0.005, feature.ElutionLength * 0.2);

                        for (var k = j + 1; k < prsmList.Count; k++)
                        {
                            var otherMatch = prsmList[k];
                            var id2        = otherMatch.ProteinId;
                            var et2        = run.GetElutionTime(otherMatch.ScanNum);

                            if (id1.Equals(id2) &&
                                feature.MinElutionTime - etTol < et2 && et2 < feature.MaxElutionTime - etTol &&
                                Math.Abs(otherMatch.Mass - mass) < massTh)
                            {
                                prsmToFeatureIdMap[k] = featureId;
                                prsmSet.Add(otherMatch);
                            }
                        }
                    }
                    featureId++;

                    feature.Flag = 1;
                    featureList.Add(feature);
                    featureToPrsm.Add(prsmSet);
                }

                // Overlap between features???
                for (var j = 0; j < featureList.Count; j++)
                {
                    var f1 = featureList[j];
                    if (f1.Flag < 1)
                    {
                        continue;
                    }
                    var prsm1 = featureToPrsm[j];

                    for (var k = j + 1; k < featureList.Count; k++)
                    {
                        var f2 = featureList[k];
                        if (f2.Flag < 1)
                        {
                            continue;
                        }

                        var prsm2 = featureToPrsm[k];
                        if (Math.Abs(f1.Mass - f2.Mass) > tolerance.GetToleranceAsMz(f1.Mass))
                        {
                            continue;
                        }
                        if (!f1.CoElutedByNet(f2, 0.005))
                        {
                            continue;
                        }
                        if (!prsm1.ShareProteinId(prsm2))
                        {
                            continue;
                        }

                        // let us merge!!
                        if (f1.ScanLength > f2.ScanLength)
                        {
                            prsm1.AddRange(prsm2);
                            prsm2.Clear();
                            f2.Flag = 0;
                        }
                        else
                        {
                            prsm2.AddRange(prsm1);
                            prsm1.Clear();
                            f1.Flag = 0;
                        }
                    }
                }

                // now output results!!
                var ms1ftFilePath = string.Format(@"{0}\{1}.ms1ft", promexOutFolder, dataset[i]);
                var writer        = new StreamWriter(ms1ftFilePath);
                writer.WriteLine(LcMsFeatureFinderLauncher.GetHeaderString());

                for (var j = 0; j < featureList.Count; j++)
                {
                    var f1 = featureList[j];
                    if (f1.Flag < 1)
                    {
                        continue;
                    }
                    var prsm1 = featureToPrsm[j];

                    var minScanNum = run.GetPrevScanNum(prsm1.MinScanNum, 1);
                    var maxScanNum = run.GetNextScanNum(prsm1.MaxScanNum, 1);
                    f1.ExpandScanRange(minScanNum, maxScanNum);

                    writer.Write("{0}\t", j + 1);
                    writer.WriteLine(LcMsFeatureFinderLauncher.GetString(f1));
                }
                writer.Close();

                Console.WriteLine(ms1ftFilePath);
            }

            if (filesProcessed == 0)
            {
                Assert.Ignore("Skipped since data files not found");
            }
        }
Ejemplo n.º 3
0
        public void TestAlignFeatures()
        {
            var methodName = MethodBase.GetCurrentMethod().Name;

            Utils.ShowStarting(methodName);

            const string rawFolder           = @"\\proto-11\MSXML_Cache\PBF_Gen_1_193\2015_2";
            const string promexOutFolder     = @"D:\MassSpecFiles\UTEX\MSAlign";
            const string msAlignResultFolder = @"D:\MassSpecFiles\UTEX\MSAlign";

            if (!Directory.Exists(rawFolder))
            {
                Assert.Ignore(@"Skipping test {0} since folder not found: {1}", methodName, rawFolder);
            }

            var nDataset = 32;
            var dataset  = new string[nDataset];

            for (var i = 0; i < nDataset; i++)
            {
                dataset[i] = string.Format("Syn_utex2973_Top_{0,2:D2}_TopDown_7May15_Bane_14-09-01RZ", i + 1);
                //var rawFile = string.Format(@"{0}\{1}.pbf", rawFolder, dataset[i]);
            }

            var tolerance      = new Tolerance(10);
            var ftComparer     = new UtexFeatureComparer(tolerance);
            var align          = new LcMsFeatureAlignment(ftComparer);
            var prsmReader     = new ProteinSpectrumMatchReader(0.01);
            var filesProcessed = 0;

            for (var i = 0; i < dataset.Length; i++)
            {
                var rawFile = string.Format(@"{0}\{1}.pbf", rawFolder, dataset[i]);
                if (!File.Exists(rawFile))
                {
                    Console.WriteLine(@"Warning: Skipping file not found: {0}", rawFile);
                    continue;
                }
                var run = PbfLcMsRun.GetLcMsRun(rawFile);

                var path = string.Format(@"{0}\{1}_MSAlign_ResultTable.txt", msAlignResultFolder, dataset[i]);
                if (!File.Exists(path))
                {
                    Console.WriteLine(@"Warning: Skipping file not found: {0}", path);
                    continue;
                }

                var ms1ftPath = string.Format(@"{0}\{1}.ms1ft", promexOutFolder, dataset[i]);
                if (!File.Exists(ms1ftPath))
                {
                    Console.WriteLine(@"Warning: Skipping file not found: {0}", ms1ftPath);
                    continue;
                }

                filesProcessed++;

                //var map = new ProteinSpectrumMathMap(run, i, dataset[i]);
                //map.LoadIdentificationResult(path, ProteinSpectrumMatch.SearchTool.MsAlign);
                var prsmList = prsmReader.LoadIdentificationResult(path, ProteinSpectrumMatch.SearchTool.MsAlign);

                for (var j = 0; j < prsmList.Count; j++)
                {
                    var match = prsmList[j];
                    match.ProteinId =
                        match.ProteinName.Substring(
                            match.ProteinName.IndexOf(ProteinNamePrefix) + ProteinNamePrefix.Length, 5);
                }

                var features = LcMsFeatureAlignment.LoadProMexResult(i, ms1ftPath, run);

                // tag features by PrSMs
                for (var j = 0; j < features.Count; j++)
                {
                    //features[j].ProteinSpectrumMatches = new ProteinSpectrumMatchSet(i);
                    var massTol = tolerance.GetToleranceAsMz(features[j].Mass);
                    foreach (var match in prsmList)
                    {
                        if (features[j].MinScanNum < match.ScanNum && match.ScanNum < features[j].MaxScanNum && Math.Abs(features[j].Mass - match.Mass) < massTol)
                        {
                            features[j].ProteinSpectrumMatches.Add(match);
                        }
                    }
                }

                align.AddDataSet(i, features, run);
            }

            if (filesProcessed == 0)
            {
                Assert.Ignore("Skipped since input files not found");
            }

            align.AlignFeatures();
            Console.WriteLine("{0} alignments ", align.CountAlignedFeatures);
            align.RefineAbundance();

            var alignedFeatureList = align.GetAlignedFeatures();

            for (var i = 0; i < nDataset; i++)
            {
                var ms1ftPath = string.Format(@"{0}\{1}_aligned.ms1ft", promexOutFolder, dataset[i]);
                var writer    = new StreamWriter(ms1ftPath);
                writer.Write(LcMsFeatureFinderLauncher.GetHeaderString());
                writer.WriteLine("\tIdedMs2ScanNums");

                for (var j = 0; j < alignedFeatureList.Count; j++)
                {
                    writer.Write(j + 1);
                    writer.Write("\t");

                    if (alignedFeatureList[j][i] == null)
                    {
                        for (var k = 0; k < 14; k++)
                        {
                            writer.Write("0\t");
                        }
                        writer.Write("0\n");
                    }
                    else
                    {
                        writer.Write(LcMsFeatureFinderLauncher.GetString(alignedFeatureList[j][i]));
                        writer.Write("\t");

                        if (alignedFeatureList[j][i].ProteinSpectrumMatches == null)
                        {
                            writer.Write("");
                        }
                        else
                        {
                            var scanNums = string.Join(";", alignedFeatureList[j][i].ProteinSpectrumMatches.Select(prsm => prsm.ScanNum));
                            writer.Write(scanNums);
                        }

                        writer.Write("\n");
                    }
                }
                writer.Close();
            }
        }
Ejemplo n.º 4
0
        private void OutputAlignmentResult(LcMsFeatureAlignment align, string outFilePath, IReadOnlyList <string> rawFiles, bool isTemp = true)
        {
            var alignedFeatureList = align.GetAlignedFeatures();

            var writer = new StreamWriter(outFilePath);

            writer.Write("MonoMass\tMinElutionTime\tMaxElutionTime");
            for (var i = 0; i < align.CountDatasets; i++)
            {
                var dataSetName = Path.GetFileNameWithoutExtension(rawFiles[i]);
                writer.Write("\t{0}", dataSetName);
            }

            for (var i = 0; i < align.CountDatasets; i++)
            {
                //var dataSetName = Path.GetFileNameWithoutExtension(align.RawFileList[i]);
                writer.Write("\t{0}_Score", i);
            }

            /*
             * for (var i = 0; i < align.CountDatasets; i++)
             * {
             *  //var dataSetName = Path.GetFileNameWithoutExtension(align.RawFileList[i]);
             *  writer.Write("\t{0}_Net", i);
             * }*/

            writer.Write("\n");
            for (var i = 0; i < align.CountAlignedFeatures; i++)
            {
                var features  = alignedFeatureList[i];
                var minMaxNet = GetMinMaxNet(features);

                writer.Write(@"{0}\t{1:0.00000}\t{2:0.00000}", minMaxNet.Item1, minMaxNet.Item3, minMaxNet.Item4);

                for (var j = 0; j < align.CountDatasets; j++)
                {
                    var feature = features[j];
                    writer.Write("\t");
                    writer.Write(feature?.Abundance ?? 0d);
                }

                for (var j = 0; j < align.CountDatasets; j++)
                {
                    var feature = features[j];
                    writer.Write("\t");
                    writer.Write(feature?.Score ?? 0d);
                }

                /*
                 * for (var j = 0; j < align.CountDatasets; j++)
                 * {
                 *  var feature = features[j];
                 *  writer.Write("\t");
                 *  if (feature != null) writer.Write("{0:0.00000}", feature.MinNet);
                 *  else writer.Write(0);
                 * }
                 *
                 * for (var j = 0; j < align.CountDatasets; j++)
                 * {
                 *  var feature = features[j];
                 *  writer.Write("\t");
                 *  if (feature != null) writer.Write("{0:0.00000}", feature.MaxNet);
                 *  else writer.Write(0);
                 * }*/

                writer.Write("\n");
            }
            writer.Close();

            if (isTemp)
            {
                return;
            }

            var outDirectory = Path.GetDirectoryName(Path.GetFullPath(outFilePath));

            for (var i = 0; i < align.CountDatasets; i++)
            {
                var dataSetName = Path.GetFileNameWithoutExtension(rawFiles[i]);
                //writer.Write("\t{0}", dataSetName);
                // now output results!!
                var ms1ftFilePath = string.Format(@"{0}\{1}.aligned.ms1ft", outDirectory, dataSetName);
                var writer2       = new StreamWriter(ms1ftFilePath);
                writer2.WriteLine(LcMsFeatureFinderLauncher.GetHeaderString());

                for (var j = 0; j < align.CountAlignedFeatures; j++)
                {
                    var f1 = alignedFeatureList[j][i];
                    writer2.Write("{0}\t", j + 1);
                    writer2.WriteLine(LcMsFeatureFinderLauncher.GetString(f1));
                }
                writer2.Close();
            }
        }