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Changing the approach to treatment choice in epilepsy using big data

Abstract Purpose A UCB–IBM collaboration explored the application of machine learning to large claims databases to construct an algorithm for antiepileptic drug (AED) choice for individual patients. Methods Claims data were collected between January 2006 and September 2011 for patients with epilepsy...

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Published in:Epilepsy & behavior 2016-03, Vol.56, p.32-37
Main Authors: Devinsky, Orrin, Dilley, Cynthia, Ozery-Flato, Michal, Aharonov, Ranit, Goldschmidt, Ya'ara, Rosen-Zvi, Michal, Clark, Chris, Fritz, Patty
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container_start_page 32
container_title Epilepsy & behavior
container_volume 56
creator Devinsky, Orrin
Dilley, Cynthia
Ozery-Flato, Michal
Aharonov, Ranit
Goldschmidt, Ya'ara
Rosen-Zvi, Michal
Clark, Chris
Fritz, Patty
description Abstract Purpose A UCB–IBM collaboration explored the application of machine learning to large claims databases to construct an algorithm for antiepileptic drug (AED) choice for individual patients. Methods Claims data were collected between January 2006 and September 2011 for patients with epilepsy > 16 years of age. A subset of patient claims with a valid index date of AED treatment change (new, add, or switch) were used to train the AED prediction model by retrospectively evaluating an index date treatment for subsequent treatment change. Based on the trained model, a model-predicted AED regimen with the lowest likelihood of treatment change was assigned to each patient in the group of test claims, and outcomes were evaluated to test model validity. Results The model had 72% area under receiver operator characteristic curve, indicating good predictive power. Patients who were given the model-predicted AED regimen had significantly longer survival rates (time until a treatment change event) and lower expected health resource utilization on average than those who received another treatment. The actual prescribed AED regimen at the index date matched the model-predicted AED regimen in only 13% of cases; there were large discrepancies in the frequency of use of certain AEDs/combinations between model-predicted AED regimens and those actually prescribed. Conclusions Chances of treatment success were improved if patients received the model-predicted treatment. Using the model's prediction system may enable personalized, evidence-based epilepsy care, accelerating the match between patients and their ideal therapy, thereby delivering significantly better health outcomes for patients and providing health-care savings by applying resources more efficiently. Our goal will be to strengthen the predictive power of the model by integrating diverse data sets and potentially moving to prospective data collection.
doi_str_mv 10.1016/j.yebeh.2015.12.039
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Methods Claims data were collected between January 2006 and September 2011 for patients with epilepsy &gt; 16 years of age. A subset of patient claims with a valid index date of AED treatment change (new, add, or switch) were used to train the AED prediction model by retrospectively evaluating an index date treatment for subsequent treatment change. Based on the trained model, a model-predicted AED regimen with the lowest likelihood of treatment change was assigned to each patient in the group of test claims, and outcomes were evaluated to test model validity. Results The model had 72% area under receiver operator characteristic curve, indicating good predictive power. Patients who were given the model-predicted AED regimen had significantly longer survival rates (time until a treatment change event) and lower expected health resource utilization on average than those who received another treatment. The actual prescribed AED regimen at the index date matched the model-predicted AED regimen in only 13% of cases; there were large discrepancies in the frequency of use of certain AEDs/combinations between model-predicted AED regimens and those actually prescribed. Conclusions Chances of treatment success were improved if patients received the model-predicted treatment. Using the model's prediction system may enable personalized, evidence-based epilepsy care, accelerating the match between patients and their ideal therapy, thereby delivering significantly better health outcomes for patients and providing health-care savings by applying resources more efficiently. Our goal will be to strengthen the predictive power of the model by integrating diverse data sets and potentially moving to prospective data collection.</description><identifier>ISSN: 1525-5050</identifier><identifier>EISSN: 1525-5069</identifier><identifier>DOI: 10.1016/j.yebeh.2015.12.039</identifier><identifier>PMID: 26827299</identifier><language>eng</language><publisher>United States: Elsevier Inc</publisher><subject>Adolescent ; Adult ; Aged ; Aged, 80 and over ; Anticonvulsants - therapeutic use ; Antiepileptic drugs ; Costs and Cost Analysis ; Data Interpretation, Statistical ; Databases, Factual ; Epilepsy ; Epilepsy - drug therapy ; Epilepsy - epidemiology ; Female ; Humans ; Insurance Claim Review ; Likelihood Functions ; Male ; Middle Aged ; Models, Statistical ; Neurology ; Predictive model ; Retrospective Studies ; Treatment decision ; Treatment Outcome ; United States - epidemiology ; Young Adult</subject><ispartof>Epilepsy &amp; behavior, 2016-03, Vol.56, p.32-37</ispartof><rights>Elsevier Inc.</rights><rights>2015</rights><rights>Crown Copyright © 2015. Published by Elsevier Inc. All rights reserved.</rights><lds50>peer_reviewed</lds50><oa>free_for_read</oa><woscitedreferencessubscribed>false</woscitedreferencessubscribed><citedby>FETCH-LOGICAL-c447t-71b0b28fec75d1137a8d214f093eea1fa59fd7e106c2a84c3d7eefeb650eac3c3</citedby><cites>FETCH-LOGICAL-c447t-71b0b28fec75d1137a8d214f093eea1fa59fd7e106c2a84c3d7eefeb650eac3c3</cites></display><links><openurl>$$Topenurl_article</openurl><openurlfulltext>$$Topenurlfull_article</openurlfulltext><thumbnail>$$Tsyndetics_thumb_exl</thumbnail><link.rule.ids>314,776,780,27901,27902</link.rule.ids><backlink>$$Uhttps://www.ncbi.nlm.nih.gov/pubmed/26827299$$D View this record in MEDLINE/PubMed$$Hfree_for_read</backlink></links><search><creatorcontrib>Devinsky, Orrin</creatorcontrib><creatorcontrib>Dilley, Cynthia</creatorcontrib><creatorcontrib>Ozery-Flato, Michal</creatorcontrib><creatorcontrib>Aharonov, Ranit</creatorcontrib><creatorcontrib>Goldschmidt, Ya'ara</creatorcontrib><creatorcontrib>Rosen-Zvi, Michal</creatorcontrib><creatorcontrib>Clark, Chris</creatorcontrib><creatorcontrib>Fritz, Patty</creatorcontrib><title>Changing the approach to treatment choice in epilepsy using big data</title><title>Epilepsy &amp; behavior</title><addtitle>Epilepsy Behav</addtitle><description>Abstract Purpose A UCB–IBM collaboration explored the application of machine learning to large claims databases to construct an algorithm for antiepileptic drug (AED) choice for individual patients. Methods Claims data were collected between January 2006 and September 2011 for patients with epilepsy &gt; 16 years of age. A subset of patient claims with a valid index date of AED treatment change (new, add, or switch) were used to train the AED prediction model by retrospectively evaluating an index date treatment for subsequent treatment change. Based on the trained model, a model-predicted AED regimen with the lowest likelihood of treatment change was assigned to each patient in the group of test claims, and outcomes were evaluated to test model validity. Results The model had 72% area under receiver operator characteristic curve, indicating good predictive power. Patients who were given the model-predicted AED regimen had significantly longer survival rates (time until a treatment change event) and lower expected health resource utilization on average than those who received another treatment. The actual prescribed AED regimen at the index date matched the model-predicted AED regimen in only 13% of cases; there were large discrepancies in the frequency of use of certain AEDs/combinations between model-predicted AED regimens and those actually prescribed. Conclusions Chances of treatment success were improved if patients received the model-predicted treatment. Using the model's prediction system may enable personalized, evidence-based epilepsy care, accelerating the match between patients and their ideal therapy, thereby delivering significantly better health outcomes for patients and providing health-care savings by applying resources more efficiently. 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behavior</jtitle></facets><delivery><delcategory>Remote Search Resource</delcategory><fulltext>fulltext</fulltext></delivery><addata><au>Devinsky, Orrin</au><au>Dilley, Cynthia</au><au>Ozery-Flato, Michal</au><au>Aharonov, Ranit</au><au>Goldschmidt, Ya'ara</au><au>Rosen-Zvi, Michal</au><au>Clark, Chris</au><au>Fritz, Patty</au><format>journal</format><genre>article</genre><ristype>JOUR</ristype><atitle>Changing the approach to treatment choice in epilepsy using big data</atitle><jtitle>Epilepsy &amp; behavior</jtitle><addtitle>Epilepsy Behav</addtitle><date>2016-03-01</date><risdate>2016</risdate><volume>56</volume><spage>32</spage><epage>37</epage><pages>32-37</pages><issn>1525-5050</issn><eissn>1525-5069</eissn><abstract>Abstract Purpose A UCB–IBM collaboration explored the application of machine learning to large claims databases to construct an algorithm for antiepileptic drug (AED) choice for individual patients. Methods Claims data were collected between January 2006 and September 2011 for patients with epilepsy &gt; 16 years of age. A subset of patient claims with a valid index date of AED treatment change (new, add, or switch) were used to train the AED prediction model by retrospectively evaluating an index date treatment for subsequent treatment change. Based on the trained model, a model-predicted AED regimen with the lowest likelihood of treatment change was assigned to each patient in the group of test claims, and outcomes were evaluated to test model validity. Results The model had 72% area under receiver operator characteristic curve, indicating good predictive power. Patients who were given the model-predicted AED regimen had significantly longer survival rates (time until a treatment change event) and lower expected health resource utilization on average than those who received another treatment. The actual prescribed AED regimen at the index date matched the model-predicted AED regimen in only 13% of cases; there were large discrepancies in the frequency of use of certain AEDs/combinations between model-predicted AED regimens and those actually prescribed. Conclusions Chances of treatment success were improved if patients received the model-predicted treatment. Using the model's prediction system may enable personalized, evidence-based epilepsy care, accelerating the match between patients and their ideal therapy, thereby delivering significantly better health outcomes for patients and providing health-care savings by applying resources more efficiently. Our goal will be to strengthen the predictive power of the model by integrating diverse data sets and potentially moving to prospective data collection.</abstract><cop>United States</cop><pub>Elsevier Inc</pub><pmid>26827299</pmid><doi>10.1016/j.yebeh.2015.12.039</doi><tpages>6</tpages><oa>free_for_read</oa></addata></record>
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subjects Adolescent
Adult
Aged
Aged, 80 and over
Anticonvulsants - therapeutic use
Antiepileptic drugs
Costs and Cost Analysis
Data Interpretation, Statistical
Databases, Factual
Epilepsy
Epilepsy - drug therapy
Epilepsy - epidemiology
Female
Humans
Insurance Claim Review
Likelihood Functions
Male
Middle Aged
Models, Statistical
Neurology
Predictive model
Retrospective Studies
Treatment decision
Treatment Outcome
United States - epidemiology
Young Adult
title Changing the approach to treatment choice in epilepsy using big data
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