Mercurial > repos > immuneml > immuneml_tools
comparison immuneml_train_recept.xml @ 7:45ca02982e1f draft
"planemo upload commit 8aef44a2b3bc8fc00a1efe0ce7ecab83eded053f-dirty"
author | immuneml |
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date | Tue, 27 Jul 2021 10:27:11 +0000 |
parents | 2d3dd9ff7e84 |
children | cd57c1c66f8b |
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94 <help><![CDATA[ | 94 <help><![CDATA[ |
95 The purpose of this tool is to train machine learning (ML) models to predict a characteristic per immune receptor, such as | 95 The purpose of this tool is to train machine learning (ML) models to predict a characteristic per immune receptor, such as |
96 antigen specificity. One or more ML models are trained to classify receptors based on the information within the CDR3 sequence(s). Finally, the performance | 96 antigen specificity. One or more ML models are trained to classify receptors based on the information within the CDR3 sequence(s). Finally, the performance |
97 of the different methods is compared. | 97 of the different methods is compared. |
98 Alternatively, if you want to predict a property per immune repertoire, such as disease status, check out the | 98 Alternatively, if you want to predict a property per immune repertoire, such as disease status, check out the |
99 `Train immune repertoire classifiers (simplified interface) <https://galaxy.immuneml.uio.no/root?tool_id=novice_immuneml_interface>`_ tool instead. | 99 `Train immune repertoire classifiers (simplified interface) <root?tool_id=novice_immuneml_interface>`_ tool instead. |
100 | 100 |
101 The full documentation can be found `here <https://docs.immuneml.uio.no/latest/galaxy/galaxy_simple_receptors.html>`_. | 101 The full documentation can be found `here <https://docs.immuneml.uio.no/latest/galaxy/galaxy_simple_receptors.html>`_. |
102 | 102 |
103 **Basic terminology** | 103 **Basic terminology** |
104 | 104 |
188 | 188 |
189 - optimal_ml_settings.zip: a .zip file containing the raw files for the optimal trained ML settings (ML model, encoding). | 189 - optimal_ml_settings.zip: a .zip file containing the raw files for the optimal trained ML settings (ML model, encoding). |
190 This .zip file can subsequently be used as an input when `applying previously trained ML models to a new AIRR dataset in Galaxy <https://docs.immuneml.uio.no/latest/galaxy/galaxy_apply_ml_models.html>`_. | 190 This .zip file can subsequently be used as an input when `applying previously trained ML models to a new AIRR dataset in Galaxy <https://docs.immuneml.uio.no/latest/galaxy/galaxy_apply_ml_models.html>`_. |
191 | 191 |
192 - receptor_classification.yaml: the YAML specification file that was used by immuneML internally to run the analysis. This file can be | 192 - receptor_classification.yaml: the YAML specification file that was used by immuneML internally to run the analysis. This file can be |
193 downloaded, altered, and run again by immuneML using the `Train machine learning models <https://galaxy.immuneml.uio.no/root?tool_id=immuneml_train_ml_model>`_ Galaxy tool. | 193 downloaded, altered, and run again by immuneML using the `Train machine learning models <root?tool_id=immuneml_train_ml_model>`_ Galaxy tool. |
194 | 194 |
195 **More analysis options** | 195 **More analysis options** |
196 | 196 |
197 A limited selection of immuneML options is available through this tool. If you wish to have full control of the analysis, consider using | 197 A limited selection of immuneML options is available through this tool. If you wish to have full control of the analysis, consider using |
198 the `Train machine learning models <https://galaxy.immuneml.uio.no/root?tool_id=immuneml_train_ml_model>`_ Galaxy tool. | 198 the `Train machine learning models <root?tool_id=immuneml_train_ml_model>`_ Galaxy tool. |
199 This tool provides other encodings and machine learning methods to choose from, as well as | 199 This tool provides other encodings and machine learning methods to choose from, as well as |
200 data preprocessing and settings for hyperparameter optimization. The interface of the YAML-based tool expects more independence and knowledge about | 200 data preprocessing and settings for hyperparameter optimization. The interface of the YAML-based tool expects more independence and knowledge about |
201 machine learning from the user. | 201 machine learning from the user. |
202 | 202 |
203 ]]> | 203 ]]> |