Cargando…

Integrating Machine Learning With Microsimulation to Classify Hypothetical, Novel Patients for Predicting Pregabalin Treatment Response Based on Observational and Randomized Data in Patients With Painful Diabetic Peripheral Neuropathy

PURPOSE: Variability in patient treatment responses can be a barrier to effective care. Utilization of available patient databases may improve the prediction of treatment responses. We evaluated machine learning methods to predict novel, individual patient responses to pregabalin for painful diabeti...

Descripción completa

Detalles Bibliográficos
Autores principales: Alexander Jr, Joe, Edwards, Roger A, Manca, Luigi, Grugni, Roberto, Bonfanti, Gianluca, Emir, Birol, Whalen, Ed, Watt, Steve, Brodsky, Marina, Parsons, Bruce
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Dove 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6827520/
https://www.ncbi.nlm.nih.gov/pubmed/31802967
http://dx.doi.org/10.2147/POR.S214412
_version_ 1783465323236687872
author Alexander Jr, Joe
Edwards, Roger A
Manca, Luigi
Grugni, Roberto
Bonfanti, Gianluca
Emir, Birol
Whalen, Ed
Watt, Steve
Brodsky, Marina
Parsons, Bruce
author_facet Alexander Jr, Joe
Edwards, Roger A
Manca, Luigi
Grugni, Roberto
Bonfanti, Gianluca
Emir, Birol
Whalen, Ed
Watt, Steve
Brodsky, Marina
Parsons, Bruce
author_sort Alexander Jr, Joe
collection PubMed
description PURPOSE: Variability in patient treatment responses can be a barrier to effective care. Utilization of available patient databases may improve the prediction of treatment responses. We evaluated machine learning methods to predict novel, individual patient responses to pregabalin for painful diabetic peripheral neuropathy, utilizing an agent-based modeling and simulation platform that integrates real-world observational study (OS) data and randomized clinical trial (RCT) data. PATIENTS AND METHODS: The best supervised machine learning methods were selected (through literature review) and combined in a novel way for aligning patients with relevant subgroups that best enable prediction of pregabalin responses. Data were derived from a German OS of pregabalin (N=2642) and nine international RCTs (N=1320). Coarsened exact matching of OS and RCT patients was used and a hierarchical cluster analysis was implemented. We tested which machine learning methods would best align candidate patients with specific clusters that predict their pain scores over time. Cluster alignments would trigger assignments of cluster-specific time-series regressions with lagged variables as inputs in order to simulate “virtual” patients and generate 1000 trajectory variations for given novel patients. RESULTS: Instance-based machine learning methods (k-nearest neighbor, supervised fuzzy c-means) were selected for quantitative analyses. Each method alone correctly classified 56.7% and 39.1% of patients, respectively. An “ensemble method” (combining both methods) correctly classified 98.4% and 95.9% of patients in the training and testing datasets, respectively. CONCLUSION: An ensemble combination of two instance-based machine learning techniques best accommodated different data types (dichotomous, categorical, continuous) and performed better than either technique alone in assigning novel patients to subgroups for predicting treatment outcomes using microsimulation. Assignment of novel patients to a cluster of similar patients has the potential to improve prediction of patient outcomes for chronic conditions in which initial treatment response can be incorporated using microsimulation. CLINICAL TRIAL REGISTRIES: www.clinicaltrials.gov: NCT00156078, NCT00159679, NCT00143156, NCT00553475.
format Online
Article
Text
id pubmed-6827520
institution National Center for Biotechnology Information
language English
publishDate 2019
publisher Dove
record_format MEDLINE/PubMed
spelling pubmed-68275202019-12-04 Integrating Machine Learning With Microsimulation to Classify Hypothetical, Novel Patients for Predicting Pregabalin Treatment Response Based on Observational and Randomized Data in Patients With Painful Diabetic Peripheral Neuropathy Alexander Jr, Joe Edwards, Roger A Manca, Luigi Grugni, Roberto Bonfanti, Gianluca Emir, Birol Whalen, Ed Watt, Steve Brodsky, Marina Parsons, Bruce Pragmat Obs Res Original Research PURPOSE: Variability in patient treatment responses can be a barrier to effective care. Utilization of available patient databases may improve the prediction of treatment responses. We evaluated machine learning methods to predict novel, individual patient responses to pregabalin for painful diabetic peripheral neuropathy, utilizing an agent-based modeling and simulation platform that integrates real-world observational study (OS) data and randomized clinical trial (RCT) data. PATIENTS AND METHODS: The best supervised machine learning methods were selected (through literature review) and combined in a novel way for aligning patients with relevant subgroups that best enable prediction of pregabalin responses. Data were derived from a German OS of pregabalin (N=2642) and nine international RCTs (N=1320). Coarsened exact matching of OS and RCT patients was used and a hierarchical cluster analysis was implemented. We tested which machine learning methods would best align candidate patients with specific clusters that predict their pain scores over time. Cluster alignments would trigger assignments of cluster-specific time-series regressions with lagged variables as inputs in order to simulate “virtual” patients and generate 1000 trajectory variations for given novel patients. RESULTS: Instance-based machine learning methods (k-nearest neighbor, supervised fuzzy c-means) were selected for quantitative analyses. Each method alone correctly classified 56.7% and 39.1% of patients, respectively. An “ensemble method” (combining both methods) correctly classified 98.4% and 95.9% of patients in the training and testing datasets, respectively. CONCLUSION: An ensemble combination of two instance-based machine learning techniques best accommodated different data types (dichotomous, categorical, continuous) and performed better than either technique alone in assigning novel patients to subgroups for predicting treatment outcomes using microsimulation. Assignment of novel patients to a cluster of similar patients has the potential to improve prediction of patient outcomes for chronic conditions in which initial treatment response can be incorporated using microsimulation. CLINICAL TRIAL REGISTRIES: www.clinicaltrials.gov: NCT00156078, NCT00159679, NCT00143156, NCT00553475. Dove 2019-10-31 /pmc/articles/PMC6827520/ /pubmed/31802967 http://dx.doi.org/10.2147/POR.S214412 Text en © 2019 Alexander Jr et al. http://creativecommons.org/licenses/by-nc/3.0/ This work is published and licensed by Dove Medical Press Limited. The full terms of this license are available at https://www.dovepress.com/terms.php and incorporate the Creative Commons Attribution – Non Commercial (unported, v3.0) License (http://creativecommons.org/licenses/by-nc/3.0/). By accessing the work you hereby accept the Terms. Non-commercial uses of the work are permitted without any further permission from Dove Medical Press Limited, provided the work is properly attributed. For permission for commercial use of this work, please see paragraphs 4.2 and 5 of our Terms (https://www.dovepress.com/terms.php).
spellingShingle Original Research
Alexander Jr, Joe
Edwards, Roger A
Manca, Luigi
Grugni, Roberto
Bonfanti, Gianluca
Emir, Birol
Whalen, Ed
Watt, Steve
Brodsky, Marina
Parsons, Bruce
Integrating Machine Learning With Microsimulation to Classify Hypothetical, Novel Patients for Predicting Pregabalin Treatment Response Based on Observational and Randomized Data in Patients With Painful Diabetic Peripheral Neuropathy
title Integrating Machine Learning With Microsimulation to Classify Hypothetical, Novel Patients for Predicting Pregabalin Treatment Response Based on Observational and Randomized Data in Patients With Painful Diabetic Peripheral Neuropathy
title_full Integrating Machine Learning With Microsimulation to Classify Hypothetical, Novel Patients for Predicting Pregabalin Treatment Response Based on Observational and Randomized Data in Patients With Painful Diabetic Peripheral Neuropathy
title_fullStr Integrating Machine Learning With Microsimulation to Classify Hypothetical, Novel Patients for Predicting Pregabalin Treatment Response Based on Observational and Randomized Data in Patients With Painful Diabetic Peripheral Neuropathy
title_full_unstemmed Integrating Machine Learning With Microsimulation to Classify Hypothetical, Novel Patients for Predicting Pregabalin Treatment Response Based on Observational and Randomized Data in Patients With Painful Diabetic Peripheral Neuropathy
title_short Integrating Machine Learning With Microsimulation to Classify Hypothetical, Novel Patients for Predicting Pregabalin Treatment Response Based on Observational and Randomized Data in Patients With Painful Diabetic Peripheral Neuropathy
title_sort integrating machine learning with microsimulation to classify hypothetical, novel patients for predicting pregabalin treatment response based on observational and randomized data in patients with painful diabetic peripheral neuropathy
topic Original Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6827520/
https://www.ncbi.nlm.nih.gov/pubmed/31802967
http://dx.doi.org/10.2147/POR.S214412
work_keys_str_mv AT alexanderjrjoe integratingmachinelearningwithmicrosimulationtoclassifyhypotheticalnovelpatientsforpredictingpregabalintreatmentresponsebasedonobservationalandrandomizeddatainpatientswithpainfuldiabeticperipheralneuropathy
AT edwardsrogera integratingmachinelearningwithmicrosimulationtoclassifyhypotheticalnovelpatientsforpredictingpregabalintreatmentresponsebasedonobservationalandrandomizeddatainpatientswithpainfuldiabeticperipheralneuropathy
AT mancaluigi integratingmachinelearningwithmicrosimulationtoclassifyhypotheticalnovelpatientsforpredictingpregabalintreatmentresponsebasedonobservationalandrandomizeddatainpatientswithpainfuldiabeticperipheralneuropathy
AT grugniroberto integratingmachinelearningwithmicrosimulationtoclassifyhypotheticalnovelpatientsforpredictingpregabalintreatmentresponsebasedonobservationalandrandomizeddatainpatientswithpainfuldiabeticperipheralneuropathy
AT bonfantigianluca integratingmachinelearningwithmicrosimulationtoclassifyhypotheticalnovelpatientsforpredictingpregabalintreatmentresponsebasedonobservationalandrandomizeddatainpatientswithpainfuldiabeticperipheralneuropathy
AT emirbirol integratingmachinelearningwithmicrosimulationtoclassifyhypotheticalnovelpatientsforpredictingpregabalintreatmentresponsebasedonobservationalandrandomizeddatainpatientswithpainfuldiabeticperipheralneuropathy
AT whalened integratingmachinelearningwithmicrosimulationtoclassifyhypotheticalnovelpatientsforpredictingpregabalintreatmentresponsebasedonobservationalandrandomizeddatainpatientswithpainfuldiabeticperipheralneuropathy
AT wattsteve integratingmachinelearningwithmicrosimulationtoclassifyhypotheticalnovelpatientsforpredictingpregabalintreatmentresponsebasedonobservationalandrandomizeddatainpatientswithpainfuldiabeticperipheralneuropathy
AT brodskymarina integratingmachinelearningwithmicrosimulationtoclassifyhypotheticalnovelpatientsforpredictingpregabalintreatmentresponsebasedonobservationalandrandomizeddatainpatientswithpainfuldiabeticperipheralneuropathy
AT parsonsbruce integratingmachinelearningwithmicrosimulationtoclassifyhypotheticalnovelpatientsforpredictingpregabalintreatmentresponsebasedonobservationalandrandomizeddatainpatientswithpainfuldiabeticperipheralneuropathy