A hierarchical anatomical classification schema for prediction of phenotypic side effects.

Prediction of adverse drug reactions is an important problem in drug discovery endeavors which can be addressed with data-driven strategies. SIDER is one of the most reliable and frequently used datasets for identification of key features as well as building machine learning models for side effects...

Full description

Bibliographic Details
Main Authors: Somin Wadhwa, Aishwarya Gupta, Shubham Dokania, Rakesh Kanji, Ganesh Bagler
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2018-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC5832387?pdf=render
id doaj-cca8dc69dc27414da0bacb0530f35296
record_format Article
spelling doaj-cca8dc69dc27414da0bacb0530f352962020-11-25T01:31:38ZengPublic Library of Science (PLoS)PLoS ONE1932-62032018-01-01133e019395910.1371/journal.pone.0193959A hierarchical anatomical classification schema for prediction of phenotypic side effects.Somin WadhwaAishwarya GuptaShubham DokaniaRakesh KanjiGanesh BaglerPrediction of adverse drug reactions is an important problem in drug discovery endeavors which can be addressed with data-driven strategies. SIDER is one of the most reliable and frequently used datasets for identification of key features as well as building machine learning models for side effects prediction. The inherently unbalanced nature of this data presents with a difficult multi-label multi-class problem towards prediction of drug side effects. We highlight the intrinsic issue with SIDER data and methodological flaws in relying on performance measures such as AUC while attempting to predict side effects.We argue for the use of metrics that are robust to class imbalance for evaluation of classifiers. Importantly, we present a 'hierarchical anatomical classification schema' which aggregates side effects into organs, sub-systems, and systems. With the help of a weighted performance measure, using 5-fold cross-validation we show that this strategy facilitates biologically meaningful side effects prediction at different levels of anatomical hierarchy. By implementing various machine learning classifiers we show that Random Forest model yields best classification accuracy at each level of coarse-graining. The manually curated, hierarchical schema for side effects can also serve as the basis of future studies towards prediction of adverse reactions and identification of key features linked to specific organ systems. Our study provides a strategy for hierarchical classification of side effects rooted in the anatomy and can pave the way for calibrated expert systems for multi-level prediction of side effects.http://europepmc.org/articles/PMC5832387?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Somin Wadhwa
Aishwarya Gupta
Shubham Dokania
Rakesh Kanji
Ganesh Bagler
spellingShingle Somin Wadhwa
Aishwarya Gupta
Shubham Dokania
Rakesh Kanji
Ganesh Bagler
A hierarchical anatomical classification schema for prediction of phenotypic side effects.
PLoS ONE
author_facet Somin Wadhwa
Aishwarya Gupta
Shubham Dokania
Rakesh Kanji
Ganesh Bagler
author_sort Somin Wadhwa
title A hierarchical anatomical classification schema for prediction of phenotypic side effects.
title_short A hierarchical anatomical classification schema for prediction of phenotypic side effects.
title_full A hierarchical anatomical classification schema for prediction of phenotypic side effects.
title_fullStr A hierarchical anatomical classification schema for prediction of phenotypic side effects.
title_full_unstemmed A hierarchical anatomical classification schema for prediction of phenotypic side effects.
title_sort hierarchical anatomical classification schema for prediction of phenotypic side effects.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2018-01-01
description Prediction of adverse drug reactions is an important problem in drug discovery endeavors which can be addressed with data-driven strategies. SIDER is one of the most reliable and frequently used datasets for identification of key features as well as building machine learning models for side effects prediction. The inherently unbalanced nature of this data presents with a difficult multi-label multi-class problem towards prediction of drug side effects. We highlight the intrinsic issue with SIDER data and methodological flaws in relying on performance measures such as AUC while attempting to predict side effects.We argue for the use of metrics that are robust to class imbalance for evaluation of classifiers. Importantly, we present a 'hierarchical anatomical classification schema' which aggregates side effects into organs, sub-systems, and systems. With the help of a weighted performance measure, using 5-fold cross-validation we show that this strategy facilitates biologically meaningful side effects prediction at different levels of anatomical hierarchy. By implementing various machine learning classifiers we show that Random Forest model yields best classification accuracy at each level of coarse-graining. The manually curated, hierarchical schema for side effects can also serve as the basis of future studies towards prediction of adverse reactions and identification of key features linked to specific organ systems. Our study provides a strategy for hierarchical classification of side effects rooted in the anatomy and can pave the way for calibrated expert systems for multi-level prediction of side effects.
url http://europepmc.org/articles/PMC5832387?pdf=render
work_keys_str_mv AT sominwadhwa ahierarchicalanatomicalclassificationschemaforpredictionofphenotypicsideeffects
AT aishwaryagupta ahierarchicalanatomicalclassificationschemaforpredictionofphenotypicsideeffects
AT shubhamdokania ahierarchicalanatomicalclassificationschemaforpredictionofphenotypicsideeffects
AT rakeshkanji ahierarchicalanatomicalclassificationschemaforpredictionofphenotypicsideeffects
AT ganeshbagler ahierarchicalanatomicalclassificationschemaforpredictionofphenotypicsideeffects
AT sominwadhwa hierarchicalanatomicalclassificationschemaforpredictionofphenotypicsideeffects
AT aishwaryagupta hierarchicalanatomicalclassificationschemaforpredictionofphenotypicsideeffects
AT shubhamdokania hierarchicalanatomicalclassificationschemaforpredictionofphenotypicsideeffects
AT rakeshkanji hierarchicalanatomicalclassificationschemaforpredictionofphenotypicsideeffects
AT ganeshbagler hierarchicalanatomicalclassificationschemaforpredictionofphenotypicsideeffects
_version_ 1725085488392437760