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+module OpenTox
+
+ module Model
+
+ class Lazar
+ include OpenTox
+ include Mongoid::Document
+ include Mongoid::Timestamps
+ store_in collection: "models"
+
+ field :title, as: :name, type: String
+ field :creator, type: String, default: __FILE__
+ # datasets
+ field :training_dataset_id, type: BSON::ObjectId
+ # algorithms
+ field :prediction_algorithm, type: String
+ field :neighbor_algorithm, type: String
+ field :neighbor_algorithm_parameters, type: Hash
+ # prediction feature
+ field :prediction_feature_id, type: BSON::ObjectId
+
+ attr_accessor :prediction_dataset
+ attr_accessor :training_dataset
+
+ # Create a lazar model from a training_dataset and a feature_dataset
+ # @param [OpenTox::Dataset] training_dataset
+ # @return [OpenTox::Model::Lazar] Regression or classification model
+ def self.create training_dataset
+
+ bad_request_error "More than one prediction feature found in training_dataset #{training_dataset.id}" unless training_dataset.features.size == 1
+
+ # TODO document convention
+ prediction_feature = training_dataset.features.first
+ prediction_feature.nominal ? lazar = OpenTox::Model::LazarClassification.new : lazar = OpenTox::Model::LazarRegression.new
+ lazar.training_dataset_id = training_dataset.id
+ lazar.prediction_feature_id = prediction_feature.id
+ lazar.title = prediction_feature.title
+
+ lazar.save
+ lazar
+ end
+
+ def predict object
+
+ t = Time.now
+ at = Time.now
+
+ training_dataset = Dataset.find training_dataset_id
+ prediction_feature = Feature.find prediction_feature_id
+
+ # parse data
+ compounds = []
+ case object.class.to_s
+ when "OpenTox::Compound"
+ compounds = [object]
+ when "Array"
+ compounds = object
+ when "OpenTox::Dataset"
+ compounds = object.compounds
+ else
+ bad_request_error "Please provide a OpenTox::Compound an Array of OpenTox::Compounds or an OpenTox::Dataset as parameter."
+ end
+
+ # make predictions
+ predictions = []
+ neighbors = []
+ compounds.each_with_index do |compound,c|
+ t = Time.new
+ database_activities = training_dataset.values(compound,prediction_feature)
+ if database_activities and !database_activities.empty?
+ database_activities = database_activities.first if database_activities.size == 1
+ predictions << {:compound => compound, :value => database_activities, :confidence => "measured", :warning => "Compound #{compound.smiles} occurs in training dataset with activity '#{database_activities}'."}
+ next
+ end
+ neighbors = Algorithm.run(neighbor_algorithm, compound, neighbor_algorithm_parameters)
+ # add activities
+ # TODO: improve efficiency, takes 3 times longer than previous version
+ neighbors.collect! do |n|
+ rows = training_dataset.compound_ids.each_index.select{|i| training_dataset.compound_ids[i] == n.first}
+ acts = rows.collect{|row| training_dataset.data_entries[row][0]}.compact
+ acts.empty? ? nil : n << acts
+ end
+ neighbors.compact! # remove neighbors without training activities
+ predictions << Algorithm.run(prediction_algorithm, neighbors)
+ end
+
+ # serialize result
+ case object.class.to_s
+ when "OpenTox::Compound"
+ prediction = predictions.first
+ prediction[:neighbors] = neighbors.sort{|a,b| b[1] <=> a[1]} # sort according to similarity
+ return prediction
+ when "Array"
+ return predictions
+ when "OpenTox::Dataset"
+ # prepare prediction dataset
+ prediction_dataset = LazarPrediction.new(
+ :title => "Lazar prediction for #{prediction_feature.title}",
+ :creator => __FILE__,
+ :prediction_feature_id => prediction_feature.id
+
+ )
+ confidence_feature = OpenTox::NumericFeature.find_or_create_by( "title" => "Prediction confidence" )
+ # TODO move into warnings field
+ warning_feature = OpenTox::NominalFeature.find_or_create_by("title" => "Warnings")
+ prediction_dataset.features = [ prediction_feature, confidence_feature, warning_feature ]
+ prediction_dataset.compounds = compounds
+ prediction_dataset.data_entries = predictions.collect{|p| [p[:value], p[:confidence], p[:warning]]}
+ prediction_dataset.save_all
+ return prediction_dataset
+ end
+
+ end
+
+ def training_activities
+ i = training_dataset.feature_ids.index prediction_feature_id
+ training_dataset.data_entries.collect{|de| de[i]}
+ end
+
+ end
+
+ class LazarClassification < Lazar
+ def initialize
+ super
+ self.prediction_algorithm = "OpenTox::Algorithm::Classification.weighted_majority_vote"
+ self.neighbor_algorithm = "OpenTox::Algorithm::Neighbor.fingerprint_similarity"
+ self.neighbor_algorithm_parameters = {:min_sim => 0.7}
+ end
+ end
+
+ class LazarFminerClassification < LazarClassification
+
+ def self.create training_dataset
+ model = super(training_dataset)
+ model.update "_type" => self.to_s # adjust class
+ model = self.find model.id # adjust class
+ model.neighbor_algorithm = "OpenTox::Algorithm::Neighbor.fminer_similarity"
+ model.neighbor_algorithm_parameters = {
+ :feature_calculation_algorithm => "OpenTox::Algorithm::Descriptor.smarts_match",
+ :feature_dataset_id => Algorithm::Fminer.bbrc(training_dataset).id,
+ :min_sim => 0.3
+ }
+ model.save
+ model
+ end
+ end
+
+ class LazarRegression < Lazar
+
+ def initialize
+ super
+ self.neighbor_algorithm = "OpenTox::Algorithm::Neighbor.fingerprint_similarity"
+ self.prediction_algorithm = "OpenTox::Algorithm::Regression.weighted_average"
+ self.neighbor_algorithm_parameters = {:min_sim => 0.7}
+ end
+
+ end
+
+ class PredictionModel
+ include OpenTox
+ include Mongoid::Document
+ include Mongoid::Timestamps
+ store_in collection: "models"
+
+ # TODO field Validations
+ field :endpoint, type: String
+ field :species, type: String
+ field :source, type: String
+ field :unit, type: String
+ field :model_id, type: BSON::ObjectId
+ field :crossvalidation_id, type: BSON::ObjectId
+ end
+
+ end
+
+end
+