Cargando…

A Machine Learning Approach to Identify Clinical Trials Involving Nanodrugs and Nanodevices from ClinicalTrials.gov

BACKGROUND: Clinical Trials (CTs) are essential for bridging the gap between experimental research on new drugs and their clinical application. Just like CTs for traditional drugs and biologics have helped accelerate the translation of biomedical findings into medical practice, CTs for nanodrugs and...

Descripción completa

Detalles Bibliográficos
Autores principales: de la Iglesia, Diana, García-Remesal, Miguel, Anguita, Alberto, Muñoz-Mármol, Miguel, Kulikowski, Casimir, Maojo, Víctor
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2014
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4210133/
https://www.ncbi.nlm.nih.gov/pubmed/25347075
http://dx.doi.org/10.1371/journal.pone.0110331
_version_ 1782341329423958016
author de la Iglesia, Diana
García-Remesal, Miguel
Anguita, Alberto
Muñoz-Mármol, Miguel
Kulikowski, Casimir
Maojo, Víctor
author_facet de la Iglesia, Diana
García-Remesal, Miguel
Anguita, Alberto
Muñoz-Mármol, Miguel
Kulikowski, Casimir
Maojo, Víctor
author_sort de la Iglesia, Diana
collection PubMed
description BACKGROUND: Clinical Trials (CTs) are essential for bridging the gap between experimental research on new drugs and their clinical application. Just like CTs for traditional drugs and biologics have helped accelerate the translation of biomedical findings into medical practice, CTs for nanodrugs and nanodevices could advance novel nanomaterials as agents for diagnosis and therapy. Although there is publicly available information about nanomedicine-related CTs, the online archiving of this information is carried out without adhering to criteria that discriminate between studies involving nanomaterials or nanotechnology-based processes (nano), and CTs that do not involve nanotechnology (non-nano). Finding out whether nanodrugs and nanodevices were involved in a study from CT summaries alone is a challenging task. At the time of writing, CTs archived in the well-known online registry ClinicalTrials.gov are not easily told apart as to whether they are nano or non-nano CTs—even when performed by domain experts, due to the lack of both a common definition for nanotechnology and of standards for reporting nanomedical experiments and results. METHODS: We propose a supervised learning approach for classifying CT summaries from ClinicalTrials.gov according to whether they fall into the nano or the non-nano categories. Our method involves several stages: i) extraction and manual annotation of CTs as nano vs. non-nano, ii) pre-processing and automatic classification, and iii) performance evaluation using several state-of-the-art classifiers under different transformations of the original dataset. RESULTS AND CONCLUSIONS: The performance of the best automated classifier closely matches that of experts (AUC over 0.95), suggesting that it is feasible to automatically detect the presence of nanotechnology products in CT summaries with a high degree of accuracy. This can significantly speed up the process of finding whether reports on ClinicalTrials.gov might be relevant to a particular nanoparticle or nanodevice, which is essential to discover any precedents for nanotoxicity events or advantages for targeted drug therapy.
format Online
Article
Text
id pubmed-4210133
institution National Center for Biotechnology Information
language English
publishDate 2014
publisher Public Library of Science
record_format MEDLINE/PubMed
spelling pubmed-42101332014-10-30 A Machine Learning Approach to Identify Clinical Trials Involving Nanodrugs and Nanodevices from ClinicalTrials.gov de la Iglesia, Diana García-Remesal, Miguel Anguita, Alberto Muñoz-Mármol, Miguel Kulikowski, Casimir Maojo, Víctor PLoS One Research Article BACKGROUND: Clinical Trials (CTs) are essential for bridging the gap between experimental research on new drugs and their clinical application. Just like CTs for traditional drugs and biologics have helped accelerate the translation of biomedical findings into medical practice, CTs for nanodrugs and nanodevices could advance novel nanomaterials as agents for diagnosis and therapy. Although there is publicly available information about nanomedicine-related CTs, the online archiving of this information is carried out without adhering to criteria that discriminate between studies involving nanomaterials or nanotechnology-based processes (nano), and CTs that do not involve nanotechnology (non-nano). Finding out whether nanodrugs and nanodevices were involved in a study from CT summaries alone is a challenging task. At the time of writing, CTs archived in the well-known online registry ClinicalTrials.gov are not easily told apart as to whether they are nano or non-nano CTs—even when performed by domain experts, due to the lack of both a common definition for nanotechnology and of standards for reporting nanomedical experiments and results. METHODS: We propose a supervised learning approach for classifying CT summaries from ClinicalTrials.gov according to whether they fall into the nano or the non-nano categories. Our method involves several stages: i) extraction and manual annotation of CTs as nano vs. non-nano, ii) pre-processing and automatic classification, and iii) performance evaluation using several state-of-the-art classifiers under different transformations of the original dataset. RESULTS AND CONCLUSIONS: The performance of the best automated classifier closely matches that of experts (AUC over 0.95), suggesting that it is feasible to automatically detect the presence of nanotechnology products in CT summaries with a high degree of accuracy. This can significantly speed up the process of finding whether reports on ClinicalTrials.gov might be relevant to a particular nanoparticle or nanodevice, which is essential to discover any precedents for nanotoxicity events or advantages for targeted drug therapy. Public Library of Science 2014-10-27 /pmc/articles/PMC4210133/ /pubmed/25347075 http://dx.doi.org/10.1371/journal.pone.0110331 Text en © 2014 de la Iglesia et al http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
de la Iglesia, Diana
García-Remesal, Miguel
Anguita, Alberto
Muñoz-Mármol, Miguel
Kulikowski, Casimir
Maojo, Víctor
A Machine Learning Approach to Identify Clinical Trials Involving Nanodrugs and Nanodevices from ClinicalTrials.gov
title A Machine Learning Approach to Identify Clinical Trials Involving Nanodrugs and Nanodevices from ClinicalTrials.gov
title_full A Machine Learning Approach to Identify Clinical Trials Involving Nanodrugs and Nanodevices from ClinicalTrials.gov
title_fullStr A Machine Learning Approach to Identify Clinical Trials Involving Nanodrugs and Nanodevices from ClinicalTrials.gov
title_full_unstemmed A Machine Learning Approach to Identify Clinical Trials Involving Nanodrugs and Nanodevices from ClinicalTrials.gov
title_short A Machine Learning Approach to Identify Clinical Trials Involving Nanodrugs and Nanodevices from ClinicalTrials.gov
title_sort machine learning approach to identify clinical trials involving nanodrugs and nanodevices from clinicaltrials.gov
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4210133/
https://www.ncbi.nlm.nih.gov/pubmed/25347075
http://dx.doi.org/10.1371/journal.pone.0110331
work_keys_str_mv AT delaiglesiadiana amachinelearningapproachtoidentifyclinicaltrialsinvolvingnanodrugsandnanodevicesfromclinicaltrialsgov
AT garciaremesalmiguel amachinelearningapproachtoidentifyclinicaltrialsinvolvingnanodrugsandnanodevicesfromclinicaltrialsgov
AT anguitaalberto amachinelearningapproachtoidentifyclinicaltrialsinvolvingnanodrugsandnanodevicesfromclinicaltrialsgov
AT munozmarmolmiguel amachinelearningapproachtoidentifyclinicaltrialsinvolvingnanodrugsandnanodevicesfromclinicaltrialsgov
AT kulikowskicasimir amachinelearningapproachtoidentifyclinicaltrialsinvolvingnanodrugsandnanodevicesfromclinicaltrialsgov
AT maojovictor amachinelearningapproachtoidentifyclinicaltrialsinvolvingnanodrugsandnanodevicesfromclinicaltrialsgov
AT delaiglesiadiana machinelearningapproachtoidentifyclinicaltrialsinvolvingnanodrugsandnanodevicesfromclinicaltrialsgov
AT garciaremesalmiguel machinelearningapproachtoidentifyclinicaltrialsinvolvingnanodrugsandnanodevicesfromclinicaltrialsgov
AT anguitaalberto machinelearningapproachtoidentifyclinicaltrialsinvolvingnanodrugsandnanodevicesfromclinicaltrialsgov
AT munozmarmolmiguel machinelearningapproachtoidentifyclinicaltrialsinvolvingnanodrugsandnanodevicesfromclinicaltrialsgov
AT kulikowskicasimir machinelearningapproachtoidentifyclinicaltrialsinvolvingnanodrugsandnanodevicesfromclinicaltrialsgov
AT maojovictor machinelearningapproachtoidentifyclinicaltrialsinvolvingnanodrugsandnanodevicesfromclinicaltrialsgov