AbsoluteQuantitation
- class pyopenms.AbsoluteQuantitation
Bases:
objectCython implementation of _AbsoluteQuantitation
- Original C++ documentation is available here
– Inherits from [‘DefaultParamHandler’]
- __init__()
Overload:
- __init__(self) None
Overload:
- __init__(self, in_0: AbsoluteQuantitation) None
Methods
Overload:
applyCalibration(self, component, ...)calculateBias(self, actual_concentration, ...)This function calculates the bias of the calibration
calculateBiasAndR(self, ...)calculateRatio(self, component_1, ...)fitCalibration(self, ...)getDefaults(self)Returns the default parameters
getName(self)Returns the name
getParameters(self)Returns the parameters
getQuantMethods(self)getSubsections(self)optimizeCalibrationCurveIterative(self, ...)optimizeSingleCalibrationCurve(self, ...)quantifyComponents(self, unknowns)This function applies the calibration curve, hence quantifying all the components
setName(self, in_0)Sets the name
setParameters(self, param)Sets the parameters
setQuantMethods(self, quant_methods)- applyCalibration(self, component: Feature, IS_component: Feature, feature_name: Union[bytes, str, String], transformation_model: Union[bytes, str, String], transformation_model_params: Param) float
- calculateBias(self, actual_concentration: float, calculated_concentration: float) float
This function calculates the bias of the calibration
- calculateBiasAndR(self, component_concentrations: List[AQS_featureConcentration], feature_name: Union[bytes, str, String], transformation_model: Union[bytes, str, String], transformation_model_params: Param, biases: List[float], correlation_coefficient: float) None
- calculateRatio(self, component_1: Feature, component_2: Feature, feature_name: Union[bytes, str, String]) float
- fitCalibration(self, component_concentrations: List[AQS_featureConcentration], feature_name: Union[bytes, str, String], transformation_model: Union[bytes, str, String], transformation_model_params: Param) Param
- getQuantMethods(self) List[AbsoluteQuantitationMethod]
- getSubsections(self) List[bytes]
- optimizeCalibrationCurveIterative(self, component_concentrations: List[AQS_featureConcentration], feature_name: Union[bytes, str, String], transformation_model: Union[bytes, str, String], transformation_model_params: Param, optimized_params: Param) bool
- optimizeSingleCalibrationCurve(self, component_name: Union[bytes, str, String], component_concentrations: List[AQS_featureConcentration]) None
- quantifyComponents(self, unknowns: FeatureMap) None
This function applies the calibration curve, hence quantifying all the components
- setQuantMethods(self, quant_methods: List[AbsoluteQuantitationMethod]) None