X-Git-Url: http://source.jalview.org/gitweb/?p=jalview.git;a=blobdiff_plain;f=src%2Fjalview%2Fanalysis%2FPCA.java;fp=src%2Fjalview%2Fanalysis%2FPCA.java;h=3ec7995f9f67aa84c2553fcd154df0b4c934a223;hp=9babaee1ea6928a1731b3906c1a4cbada0fa5bee;hb=e67e5f3a5b922e8a7729a0e9e9b174f46b11456c;hpb=8356850ec2f6043a65d3d892f9ebd405f23893e2 diff --git a/src/jalview/analysis/PCA.java b/src/jalview/analysis/PCA.java index 9babaee..3ec7995 100755 --- a/src/jalview/analysis/PCA.java +++ b/src/jalview/analysis/PCA.java @@ -20,9 +20,10 @@ */ package jalview.analysis; +import jalview.api.analysis.ScoreModelI; +import jalview.api.analysis.SimilarityParamsI; +import jalview.datamodel.AlignmentView; import jalview.math.MatrixI; -import jalview.schemes.ResidueProperties; -import jalview.schemes.ScoreMatrix; import java.io.PrintStream; @@ -31,8 +32,6 @@ import java.io.PrintStream; */ public class PCA implements Runnable { - boolean jvCalcMode = true; - MatrixI symm; double[] eigenvalue; @@ -41,55 +40,19 @@ public class PCA implements Runnable StringBuilder details = new StringBuilder(1024); - private String[] seqs; - - private ScoreMatrix scoreMatrix; + final private AlignmentView seqs; - /** - * Creates a new PCA object. By default, uses blosum62 matrix to generate - * sequence similarity matrices - * - * @param s - * Set of amino acid sequences to perform PCA on - */ - public PCA(String[] s) - { - this(s, false); - } - - /** - * Creates a new PCA object. By default, uses blosum62 matrix to generate - * sequence similarity matrices - * - * @param s - * Set of sequences to perform PCA on - * @param nucleotides - * if true, uses standard DNA/RNA matrix for sequence similarity - * calculation. - */ - public PCA(String[] s, boolean nucleotides) - { - this(s, nucleotides, null); - } + private ScoreModelI scoreModel; + + private SimilarityParamsI similarityParams; - public PCA(String[] s, boolean nucleotides, String s_m) + public PCA(AlignmentView s, ScoreModelI sm, SimilarityParamsI options) { this.seqs = s; - - scoreMatrix = null; - String sm = s_m; - if (sm != null) - { - scoreMatrix = ResidueProperties.getScoreMatrix(sm); - } - if (scoreMatrix == null) - { - // either we were given a non-existent score matrix or a scoremodel that - // isn't based on a pairwise symbol score matrix - scoreMatrix = ResidueProperties - .getScoreMatrix(sm = (nucleotides ? "DNA" : "BLOSUM62")); - } - details.append("PCA calculation using " + sm + this.similarityParams = options; + this.scoreModel = sm; + + details.append("PCA calculation using " + sm.getName() + " sequence similarity matrix\n========\n\n"); } @@ -206,11 +169,7 @@ public class PCA implements Runnable // long now = System.currentTimeMillis(); try { - details.append("PCA Calculation Mode is " - + (jvCalcMode ? "Jalview variant" : "Original SeqSpace") - + "\n"); - - eigenvector = scoreMatrix.computePairwiseScores(seqs); + eigenvector = scoreModel.findSimilarities(seqs, similarityParams); details.append(" --- OrigT * Orig ---- \n"); eigenvector.print(ps, "%8.2f"); @@ -252,11 +211,6 @@ public class PCA implements Runnable // + (System.currentTimeMillis() - now) + "ms")); } - public void setJvCalcMode(boolean calcMode) - { - this.jvCalcMode = calcMode; - } - /** * Answers the N dimensions of the NxN PCA matrix. This is the number of * sequences involved in the pairwise score calculation. @@ -266,6 +220,6 @@ public class PCA implements Runnable public int getHeight() { // TODO can any of seqs[] be null? - return seqs.length; + return seqs.getSequences().length; } }