Ejemplo n.º 1
0
  void ConsensusIDAlgorithm::apply(vector<PeptideIdentification>& ids,
                                   Size number_of_runs)
  {
    // abort if no IDs present
    if (ids.empty())
    {
      return;
    }

    number_of_runs_ = (number_of_runs != 0) ? number_of_runs : ids.size();

    // prepare data here, so that it doesn't have to happen in each algorithm:
    for (vector<PeptideIdentification>::iterator pep_it = ids.begin(); 
         pep_it != ids.end(); ++pep_it)
    {
      pep_it->sort();
      if ((considered_hits_ > 0) &&
          (pep_it->getHits().size() > considered_hits_))
      {
        pep_it->getHits().resize(considered_hits_);
      }
    }
    // make sure there are no duplicated hits (by sequence):
    IDFilter::removeDuplicatePeptideHits(ids, true);

    SequenceGrouping results;
    apply_(ids, results); // actual (subclass-specific) processing

    String score_type = ids[0].getScoreType();
    bool higher_better = ids[0].isHigherScoreBetter();
    ids.clear();
    ids.resize(1);
    ids[0].setScoreType(score_type);
    ids[0].setHigherScoreBetter(higher_better);
    for (SequenceGrouping::iterator res_it = results.begin(); 
         res_it != results.end(); ++res_it)
    {
      OPENMS_PRECONDITION(!res_it->second.second.empty(),
                          "Consensus score for peptide required");
      PeptideHit hit;

      if (res_it->second.second.size() == 2)
      {
        // filter by "support" value:
        double support = res_it->second.second[1];
        if (support < min_support_) continue;
        hit.setMetaValue("consensus_support", support);
      }
      
      hit.setSequence(res_it->first);
      hit.setCharge(res_it->second.first);
      hit.setScore(res_it->second.second[0]);
      ids[0].insertHit(hit);
#ifdef DEBUG_ID_CONSENSUS
      LOG_DEBUG << " - Output hit: " << hit.getSequence() << " "
                << hit.getScore() << endl;
#endif
    }
    ids[0].assignRanks();
  }
Ejemplo n.º 2
0
  void IDDecoyProbability::apply(vector<PeptideIdentification> & ids)
  {
    double lower_score_better_default_value_if_zero(static_cast<double>(param_.getValue("lower_score_better_default_value_if_zero")));
    double lower_score_better_default_value_if_zero_exp = pow(10.0, -lower_score_better_default_value_if_zero);
    vector<double> rev_scores, fwd_scores, all_scores;

    // get the forward scores
    for (vector<PeptideIdentification>::iterator it = ids.begin(); it != ids.end(); ++it)
    {
      String score_type = it->getScoreType();
      if (it->getHits().size() > 0)
      {
        vector<PeptideHit> hits = it->getHits();
        for (vector<PeptideHit>::iterator pit = hits.begin(); pit != hits.end(); ++pit)
        {
          double score = pit->getScore();

          pit->setMetaValue(score_type + "_Score", score);

          if (!it->isHigherScoreBetter())
          {
            if (score < lower_score_better_default_value_if_zero_exp)
            {
              score = lower_score_better_default_value_if_zero;
            }
            else
            {
              score = -log10(score);
            }
          }

          String target_decoy = (String)pit->getMetaValue("target_decoy");
          if (target_decoy == "target")
          {
            fwd_scores.push_back(score);
          }
          else if (target_decoy == "decoy")
          {
            rev_scores.push_back(score);
          }
          all_scores.push_back(score);
        }
        it->setHits(hits);
      }
    }
#ifdef IDDECOYPROBABILITY_DEBUG
    cerr << ids.size() << " " << rev_scores.size() << " " << fwd_scores.size() << " " << all_scores.size() << endl;
#endif
    apply_(ids, rev_scores, fwd_scores, all_scores);
    return;
  }
Ejemplo n.º 3
0
 auto apply(Xs && ... xs) const
 {
     constexpr size_t N = function_arity<F>::value - sizeof...(Ts);
     static_assert(N >= sizeof...(Xs), "Too many argument!");
     return apply_(std::integral_constant<size_t, N - sizeof...(Xs)>(), std::make_index_sequence<sizeof...(Xs)>(), std::forward<Xs>(xs)...);
 }
Ejemplo n.º 4
0
  void IDDecoyProbability::apply(vector<PeptideIdentification> & prob_ids, const vector<PeptideIdentification> & orig_fwd_ids, const vector<PeptideIdentification> & rev_ids)
  {
    double lower_score_better_default_value_if_zero((double)param_.getValue("lower_score_better_default_value_if_zero"));
    double lower_score_better_default_value_if_zero_exp = pow((double)10.0, -lower_score_better_default_value_if_zero);
    vector<PeptideIdentification> fwd_ids = orig_fwd_ids;
    vector<double> rev_scores, fwd_scores, all_scores;

    // get the forward scores
    for (vector<PeptideIdentification>::iterator it = fwd_ids.begin(); it != fwd_ids.end(); ++it)
    {
      String score_type = it->getScoreType();
      if (it->getHits().size() > 0)
      {
        vector<PeptideHit> hits = it->getHits();
        for (vector<PeptideHit>::iterator pit = hits.begin(); pit != hits.end(); ++pit)
        {
          double score = pit->getScore();

          pit->setMetaValue(score_type + "_Score", score);

          if (!it->isHigherScoreBetter())
          {
            if (score < lower_score_better_default_value_if_zero_exp)
            {
              score = lower_score_better_default_value_if_zero;
            }
            else
            {
              score = -log10(score);
            }
          }
          fwd_scores.push_back(score);
          all_scores.push_back(score);
        }
        it->setHits(hits);
      }
    }

    // get the reverse scores
    for (vector<PeptideIdentification>::const_iterator it = rev_ids.begin(); it != rev_ids.end(); ++it)
    {
      if (it->getHits().size() > 0)
      {
        for (vector<PeptideHit>::const_iterator pit = it->getHits().begin(); pit != it->getHits().end(); ++pit)
        {
          double score = pit->getScore();
          if (!it->isHigherScoreBetter())
          {
            if (score < lower_score_better_default_value_if_zero_exp)
            {
              score = lower_score_better_default_value_if_zero;
            }
            else
            {
              score = -log10(score);
            }
          }

          rev_scores.push_back(score);
          all_scores.push_back(score);
        }
      }
    }

    prob_ids = fwd_ids;
    apply_(prob_ids, rev_scores, fwd_scores, all_scores);
    return;
  }
 		virtual y_type eval(x_arg_type x, const std::array<double, sizeof...(ARGS)>& p) {
 			return apply_(index_bind<1>(_Fcn, x), p);
 		}