X-Git-Url: http://source.jalview.org/gitweb/?a=blobdiff_plain;f=src%2Fjalview%2Fviewmodel%2FPCAModel.java;h=1693294bf556920989784beaa734246bbbc6a468;hb=b9b1f47cc74bbec8c28b75776e1d00c258215dfb;hp=5e7fca26507662e2235e774754c6abc8241ff9e9;hpb=3d0101179759ef157b088ea135423cd909512d9f;p=jalview.git diff --git a/src/jalview/viewmodel/PCAModel.java b/src/jalview/viewmodel/PCAModel.java index 5e7fca2..1693294 100644 --- a/src/jalview/viewmodel/PCAModel.java +++ b/src/jalview/viewmodel/PCAModel.java @@ -25,31 +25,39 @@ import jalview.api.RotatableCanvasI; import jalview.api.analysis.ScoreModelI; import jalview.api.analysis.SimilarityParamsI; import jalview.datamodel.AlignmentView; +import jalview.datamodel.Point; import jalview.datamodel.SequenceI; import jalview.datamodel.SequencePoint; +import java.util.List; import java.util.Vector; public class PCAModel { - private volatile PCA pca; - - int top; + /* + * inputs + */ + private AlignmentView inputData; - AlignmentView seqstrings; + private final SequenceI[] seqs; - SequenceI[] seqs; + private final SimilarityParamsI similarityParams; /* - * Name of score model used to calculate PCA + * options - score model, nucleotide / protein */ - ScoreModelI scoreModel; + private ScoreModelI scoreModel; private boolean nucleotide = false; - private Vector points; + /* + * outputs + */ + private PCA pca; - private SimilarityParamsI similarityParams; + int top; + + private List points; /** * Constructor given sequence data, score model and score calculation @@ -64,17 +72,21 @@ public class PCAModel public PCAModel(AlignmentView seqData, SequenceI[] sqs, boolean nuc, ScoreModelI modelName, SimilarityParamsI params) { - seqstrings = seqData; + inputData = seqData; seqs = sqs; nucleotide = nuc; scoreModel = modelName; similarityParams = params; } - public void run() + /** + * Performs the PCA calculation (in the same thread) and extracts result data + * needed for visualisation by PCAPanel + */ + public void calculate() { - pca = new PCA(seqstrings, scoreModel, similarityParams); - pca.run(); + pca = new PCA(inputData, scoreModel, similarityParams); + pca.run(); // executes in same thread, wait for completion // Now find the component coordinates int ii = 0; @@ -88,13 +100,13 @@ public class PCAModel // top = pca.getM().height() - 1; top = height - 1; - points = new Vector(); - float[][] scores = pca.getComponents(top - 1, top - 2, top - 3, 100); + points = new Vector<>(); + Point[] scores = pca.getComponents(top - 1, top - 2, top - 3, 100); for (int i = 0; i < height; i++) { SequencePoint sp = new SequencePoint(seqs[i], scores[i]); - points.addElement(sp); + points.add(sp); } } @@ -114,17 +126,22 @@ public class PCAModel } /** + * Answers the index of the principal dimension of the PCA * - * - * @return index of principle dimension of PCA + * @return */ public int getTop() { return top; } + public void setTop(int t) + { + top = t; + } + /** - * update the 2d coordinates for the list of points to the given dimensions + * Updates the 3D coordinates for the list of points to the given dimensions. * Principal dimension is getTop(). Next greatest eigenvector is getTop()-1. * Note - pca.getComponents starts counting the spectrum from rank-2 to zero, * rather than rank-1, so getComponents(dimN ...) == updateRcView(dimN+1 ..) @@ -136,11 +153,11 @@ public class PCAModel public void updateRcView(int dim1, int dim2, int dim3) { // note: actual indices for components are dim1-1, etc (patch for JAL-1123) - float[][] scores = pca.getComponents(dim1 - 1, dim2 - 1, dim3 - 1, 100); + Point[] scores = pca.getComponents(dim1 - 1, dim2 - 1, dim3 - 1, 100); for (int i = 0; i < pca.getHeight(); i++) { - points.elementAt(i).coord = scores[i]; + points.get(i).coord = scores[i]; } } @@ -149,9 +166,14 @@ public class PCAModel return pca.getDetails(); } - public AlignmentView getSeqtrings() + public AlignmentView getInputData() + { + return inputData; + } + + public void setInputData(AlignmentView data) { - return seqstrings; + inputData = data; } public String getPointsasCsv(boolean transformed, int xdim, int ydim, @@ -192,42 +214,58 @@ public class PCAModel } else { - // output current x,y,z coords for points - fl = getPointPosition(s); - for (int d = 0; d < fl.length; d++) - { - csv.append(","); - csv.append(fl[d]); - } + Point p = points.get(s).coord; + csv.append(",").append(p.x); + csv.append(",").append(p.y); + csv.append(",").append(p.z); } csv.append("\n"); } return csv.toString(); } + public String getScoreModelName() + { + return scoreModel == null ? "" : scoreModel.getName(); + } + + public void setScoreModel(ScoreModelI sm) + { + this.scoreModel = sm; + } + /** + * Answers the parameters configured for pairwise similarity calculations * - * @return x,y,z positions of point s (index into points) under current - * transform. + * @return */ - public double[] getPointPosition(int s) + public SimilarityParamsI getSimilarityParameters() { - double pts[] = new double[3]; - float[] p = points.elementAt(s).coord; - pts[0] = p[0]; - pts[1] = p[1]; - pts[2] = p[2]; - return pts; + return similarityParams; } - public String getScoreModelName() + public List getSequencePoints() { - return scoreModel == null ? "" : scoreModel.getName(); + return points; } - public void setScoreModel(ScoreModelI sm) + public void setSequencePoints(List sp) { - this.scoreModel = sm; + points = sp; + } + + /** + * Answers the object holding the values of the computed PCA + * + * @return + */ + public PCA getPcaData() + { + return pca; } + public void setPCA(PCA data) + { + pca = data; + } }