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  1. Article ; Online: MD-PhD Students Are Underrepresented in the Gold Humanism Honor Society.

    Wissel, Benjamin D / Percy, Zana / Mihalic, Angela P / Ellis, Robert V / Hershey, Gurjit K Khurana

    Academic medicine : journal of the Association of American Medical Colleges

    2022  Volume 97, Issue 9, Page(s) 1254–1255

    MeSH term(s) Humanism ; Humans ; Societies ; Students
    Language English
    Publishing date 2022-08-26
    Publishing country United States
    Document type Journal Article
    ZDB-ID 96192-9
    ISSN 1938-808X ; 1040-2446
    ISSN (online) 1938-808X
    ISSN 1040-2446
    DOI 10.1097/ACM.0000000000004781
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  2. Article ; Online: Early Identification of Candidates for Epilepsy Surgery: A Multicenter, Machine Learning, Prospective Validation Study.

    Wissel, Benjamin D / Greiner, Hansel M / Glauser, Tracy A / Pestian, John P / Ficker, David M / Cavitt, Jennifer L / Estofan, Leonel / Holland-Bouley, Katherine D / Mangano, Francesco T / Szczesniak, Rhonda D / Dexheimer, Judith W

    Neurology

    2024  Volume 102, Issue 4, Page(s) e208048

    Abstract: Background and objectives: Epilepsy surgery is often delayed. We previously developed machine learning (ML) models to identify candidates for resective epilepsy surgery earlier in the disease course. In this study, we report the prospective validation.!# ...

    Abstract Background and objectives: Epilepsy surgery is often delayed. We previously developed machine learning (ML) models to identify candidates for resective epilepsy surgery earlier in the disease course. In this study, we report the prospective validation.
    Methods: In this multicenter, prospective, longitudinal cohort study, random forest models were validated at a pediatric epilepsy center consisting of 2 hospitals and 14 outpatient neurology clinic sites and an adult epilepsy center with 2 hospitals and 27 outpatient neurology clinic sites. The models used neurology visit notes, EEG and MRI reports, visit patterns, hospitalizations, and medication, laboratory, and procedure orders to identify candidates for surgery. The models were trained on historical data up to May 10, 2019. Patients with an ICD-10 diagnosis of epilepsy who visited from May 11, 2019, to May 10, 2020, were screened by the algorithm and assigned surgical candidacy scores. The primary outcome was area under the curve (AUC), which was calculated by comparing scores from patients who underwent epilepsy surgery before November 10, 2020, against scores from nonsurgical patients. Nonsurgical patients' charts were reviewed to determine whether patients with high scores were more likely to be missed surgical candidates. Delay to surgery was defined as the time between the first visit that a surgical candidate was identified by the algorithm and the date of the surgery.
    Results: A total of 5,285 pediatric and 5,782 adult patients were included to train the ML algorithms. During the study period, 41 children and 23 adults underwent resective epilepsy surgery. In the pediatric cohort, AUC was 0.91 (95% CI 0.87-0.94), positive predictive value (PPV) was 0.08 (0.05-0.10), and negative predictive value (NPV) was 1.00 (0.99-1.00). In the adult cohort, AUC was 0.91 (0.86-0.97), PPV was 0.07 (0.04-0.11), and NPV was 1.00 (0.99-1.00). The models first identified patients at a median of 2.1 years (interquartile range [IQR]: 1.2-4.9 years, maximum: 11.1 years) before their surgery and 1.3 years (IQR: 0.3-4.0 years, maximum: 10.1 years) before their presurgical evaluations.
    Discussion: ML algorithms can identify surgical candidates earlier in the disease course. Even at specialized epilepsy centers, there is room to shorten the time to surgery.
    Classification of evidence: This study provides Class II evidence that a machine learning algorithm can accurately distinguish patients with epilepsy who require resective surgery from those who do not.
    MeSH term(s) Adult ; Humans ; Child ; Longitudinal Studies ; Epilepsy/diagnosis ; Epilepsy/surgery ; Prospective Studies ; Cohort Studies ; Machine Learning ; Retrospective Studies
    Language English
    Publishing date 2024-02-05
    Publishing country United States
    Document type Multicenter Study ; Journal Article
    ZDB-ID 207147-2
    ISSN 1526-632X ; 0028-3878
    ISSN (online) 1526-632X
    ISSN 0028-3878
    DOI 10.1212/WNL.0000000000208048
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  3. Article ; Online: Automated, machine learning-based alerts increase epilepsy surgery referrals: A randomized controlled trial.

    Wissel, Benjamin D / Greiner, Hansel M / Glauser, Tracy A / Mangano, Francesco T / Holland-Bouley, Katherine D / Zhang, Nanhua / Szczesniak, Rhonda D / Santel, Daniel / Pestian, John P / Dexheimer, Judith W

    Epilepsia

    2023  Volume 64, Issue 7, Page(s) 1791–1799

    Abstract: Objective: To determine whether automated, electronic alerts increased referrals for epilepsy surgery.: Methods: We conducted a prospective, randomized controlled trial of a natural language processing-based clinical decision support system embedded ... ...

    Abstract Objective: To determine whether automated, electronic alerts increased referrals for epilepsy surgery.
    Methods: We conducted a prospective, randomized controlled trial of a natural language processing-based clinical decision support system embedded in the electronic health record (EHR) at 14 pediatric neurology outpatient clinic sites. Children with epilepsy and at least two prior neurology visits were screened by the system prior to their scheduled visit. Patients classified as a potential surgical candidate were randomized 2:1 for their provider to receive an alert or standard of care (no alert). The primary outcome was referral for a neurosurgical evaluation. The likelihood of referral was estimated using a Cox proportional hazards regression model.
    Results: Between April 2017 and April 2019, at total of 4858 children were screened by the system, and 284 (5.8%) were identified as potential surgical candidates. Two hundred four patients received an alert, and 96 patients received standard care. Median follow-up time was 24 months (range: 12-36 months). Compared to the control group, patients whose provider received an alert were more likely to be referred for a presurgical evaluation (3.1% vs 9.8%; adjusted hazard ratio [HR] = 3.21, 95% confidence interval [CI]: 0.95-10.8; one-sided p = .03). Nine patients (4.4%) in the alert group underwent epilepsy surgery, compared to none (0%) in the control group (one-sided p = .03).
    Significance: Machine learning-based automated alerts may improve the utilization of referrals for epilepsy surgery evaluations.
    MeSH term(s) Humans ; Child ; Prospective Studies ; Electronic Health Records ; Machine Learning ; Epilepsy/diagnosis ; Epilepsy/surgery ; Referral and Consultation
    Language English
    Publishing date 2023-05-27
    Publishing country United States
    Document type Randomized Controlled Trial ; Journal Article ; Research Support, U.S. Gov't, P.H.S. ; Research Support, N.I.H., Extramural
    ZDB-ID 216382-2
    ISSN 1528-1167 ; 0013-9580
    ISSN (online) 1528-1167
    ISSN 0013-9580
    DOI 10.1111/epi.17629
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  4. Article ; Online: Predicting seizure recurrence after an initial seizure-like episode from routine clinical notes using large language models: a retrospective cohort study.

    Beaulieu-Jones, Brett K / Villamar, Mauricio F / Scordis, Phil / Bartmann, Ana Paula / Ali, Waqar / Wissel, Benjamin D / Alsentzer, Emily / de Jong, Johann / Patra, Arijit / Kohane, Isaac

    The Lancet. Digital health

    2023  Volume 5, Issue 12, Page(s) e882–e894

    Abstract: Background: The evaluation and management of first-time seizure-like events in children can be difficult because these episodes are not always directly observed and might be epileptic seizures or other conditions (seizure mimics). We aimed to evaluate ... ...

    Abstract Background: The evaluation and management of first-time seizure-like events in children can be difficult because these episodes are not always directly observed and might be epileptic seizures or other conditions (seizure mimics). We aimed to evaluate whether machine learning models using real-world data could predict seizure recurrence after an initial seizure-like event.
    Methods: This retrospective cohort study compared models trained and evaluated on two separate datasets between Jan 1, 2010, and Jan 1, 2020: electronic medical records (EMRs) at Boston Children's Hospital and de-identified, patient-level, administrative claims data from the IBM MarketScan research database. The study population comprised patients with an initial diagnosis of either epilepsy or convulsions before the age of 21 years, based on International Classification of Diseases, Clinical Modification (ICD-CM) codes. We compared machine learning-based predictive modelling using structured data (logistic regression and XGBoost) with emerging techniques in natural language processing by use of large language models.
    Findings: The primary cohort comprised 14 021 patients at Boston Children's Hospital matching inclusion criteria with an initial seizure-like event and the comparison cohort comprised 15 062 patients within the IBM MarketScan research database. Seizure recurrence based on a composite expert-derived definition occurred in 57% of patients at Boston Children's Hospital and 63% of patients within IBM MarketScan. Large language models with additional domain-specific and location-specific pre-training on patients excluded from the study (F1-score 0·826 [95% CI 0·817-0·835], AUC 0·897 [95% CI 0·875-0·913]) performed best. All large language models, including the base model without additional pre-training (F1-score 0·739 [95% CI 0·738-0·741], AUROC 0·846 [95% CI 0·826-0·861]) outperformed models trained with structured data. With structured data only, XGBoost outperformed logistic regression and XGBoost models trained with the Boston Children's Hospital EMR (logistic regression: F1-score 0·650 [95% CI 0·643-0·657], AUC 0·694 [95% CI 0·685-0·705], XGBoost: F1-score 0·679 [0·676-0·683], AUC 0·725 [0·717-0·734]) performed similarly to models trained on the IBM MarketScan database (logistic regression: F1-score 0·596 [0·590-0·601], AUC 0·670 [0·664-0·675], XGBoost: F1-score 0·678 [0·668-0·687], AUC 0·710 [0·703-0·714]).
    Interpretation: Physician's clinical notes about an initial seizure-like event include substantial signals for prediction of seizure recurrence, and additional domain-specific and location-specific pre-training can significantly improve the performance of clinical large language models, even for specialised cohorts.
    Funding: UCB, National Institute of Neurological Disorders and Stroke (US National Institutes of Health).
    MeSH term(s) Child ; Humans ; Young Adult ; Adult ; Retrospective Studies ; Seizures/diagnosis ; Epilepsy ; Machine Learning ; Electronic Health Records
    Language English
    Publishing date 2023-11-24
    Publishing country England
    Document type Journal Article ; Research Support, N.I.H., Extramural
    ISSN 2589-7500
    ISSN (online) 2589-7500
    DOI 10.1016/S2589-7500(23)00179-6
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  5. Article ; Online: An interactive online dashboard for tracking COVID-19 in U.S. counties, cities, and states in real time.

    Wissel, Benjamin D / Van Camp, P J / Kouril, Michal / Weis, Chad / Glauser, Tracy A / White, Peter S / Kohane, Isaac S / Dexheimer, Judith W

    Journal of the American Medical Informatics Association : JAMIA

    2020  Volume 27, Issue 7, Page(s) 1121–1125

    Abstract: Objective: The study sought to create an online resource that informs the public of coronavirus disease 2019 (COVID-19) outbreaks in their area.: Materials and methods: This R Shiny application aggregates data from multiple resources that track COVID- ...

    Abstract Objective: The study sought to create an online resource that informs the public of coronavirus disease 2019 (COVID-19) outbreaks in their area.
    Materials and methods: This R Shiny application aggregates data from multiple resources that track COVID-19 and visualizes them through an interactive, online dashboard.
    Results: The Web resource, called the COVID-19 Watcher, can be accessed online (https://covid19watcher.research.cchmc.org/). It displays COVID-19 data from every county and 188 metropolitan areas in the United States. Features include rankings of the worst-affected areas and auto-generating plots that depict temporal changes in testing capacity, cases, and deaths.
    Discussion: The Centers for Disease Control and Prevention does not publish COVID-19 data for local municipalities, so it is critical that academic resources fill this void so the public can stay informed. The data used have limitations and likely underestimate the scale of the outbreak.
    Conclusions: The COVID-19 Watcher can provide the public with real-time updates of outbreaks in their area.
    MeSH term(s) Betacoronavirus ; COVID-19 ; Centers for Disease Control and Prevention, U.S. ; Cities ; Consumer Health Informatics ; Coronavirus Infections/epidemiology ; Coronavirus Infections/mortality ; Disease Outbreaks/statistics & numerical data ; Humans ; Pandemics ; Pneumonia, Viral/epidemiology ; Pneumonia, Viral/mortality ; SARS-CoV-2 ; Software ; United States/epidemiology ; User-Computer Interface
    Keywords covid19
    Language English
    Publishing date 2020-05-26
    Publishing country England
    Document type Journal Article
    ZDB-ID 1205156-1
    ISSN 1527-974X ; 1067-5027
    ISSN (online) 1527-974X
    ISSN 1067-5027
    DOI 10.1093/jamia/ocaa071
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  6. Article ; Online: Early identification of epilepsy surgery candidates: A multicenter, machine learning study.

    Wissel, Benjamin D / Greiner, Hansel M / Glauser, Tracy A / Pestian, John P / Kemme, Andrew J / Santel, Daniel / Ficker, David M / Mangano, Francesco T / Szczesniak, Rhonda D / Dexheimer, Judith W

    Acta neurologica Scandinavica

    2021  Volume 144, Issue 1, Page(s) 41–50

    Abstract: Objectives: Epilepsy surgery is underutilized. Automating the identification of potential surgical candidates may facilitate earlier intervention. Our objective was to develop site-specific machine learning (ML) algorithms to identify candidates before ... ...

    Abstract Objectives: Epilepsy surgery is underutilized. Automating the identification of potential surgical candidates may facilitate earlier intervention. Our objective was to develop site-specific machine learning (ML) algorithms to identify candidates before they undergo surgery.
    Materials & methods: In this multicenter, retrospective, longitudinal cohort study, ML algorithms were trained on n-grams extracted from free-text neurology notes, EEG and MRI reports, visit codes, medications, procedures, laboratories, and demographic information. Site-specific algorithms were developed at two epilepsy centers: one pediatric and one adult. Cases were defined as patients who underwent resective epilepsy surgery, and controls were patients with epilepsy with no history of surgery. The output of the ML algorithms was the estimated likelihood of candidacy for resective epilepsy surgery. Model performance was assessed using 10-fold cross-validation.
    Results: There were 5880 children (n = 137 had surgery [2.3%]) and 7604 adults with epilepsy (n = 56 had surgery [0.7%]) included in the study. Pediatric surgical patients could be identified 2.0 years (range: 0-8.6 years) before beginning their presurgical evaluation with AUC =0.76 (95% CI: 0.70-0.82) and PR-AUC =0.13 (95% CI: 0.07-0.18). Adult surgical patients could be identified 1.0 year (range: 0-5.4 years) before beginning their presurgical evaluation with AUC =0.85 (95% CI: 0.78-0.93) and PR-AUC =0.31 (95% CI: 0.14-0.48). By the time patients began their presurgical evaluation, the ML algorithms identified pediatric and adult surgical patients with AUC =0.93 and 0.95, respectively. The mean squared error of the predicted probability of surgical candidacy (Brier scores) was 0.018 in pediatrics and 0.006 in adults.
    Conclusions: Site-specific machine learning algorithms can identify candidates for epilepsy surgery early in the disease course in diverse practice settings.
    MeSH term(s) Adolescent ; Adult ; Algorithms ; Child ; Child, Preschool ; Cohort Studies ; Early Diagnosis ; Electroencephalography/methods ; Epilepsy/diagnostic imaging ; Epilepsy/physiopathology ; Epilepsy/surgery ; Female ; Humans ; Longitudinal Studies ; Machine Learning ; Magnetic Resonance Imaging/methods ; Male ; Middle Aged ; Retrospective Studies ; Young Adult
    Language English
    Publishing date 2021-03-26
    Publishing country Denmark
    Document type Journal Article ; Multicenter Study
    ZDB-ID 90-5
    ISSN 1600-0404 ; 0001-6314
    ISSN (online) 1600-0404
    ISSN 0001-6314
    DOI 10.1111/ane.13418
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  7. Article ; Online: Investigation of bias in an epilepsy machine learning algorithm trained on physician notes.

    Wissel, Benjamin D / Greiner, Hansel M / Glauser, Tracy A / Mangano, Francesco T / Santel, Daniel / Pestian, John P / Szczesniak, Rhonda D / Dexheimer, Judith W

    Epilepsia

    2019  Volume 60, Issue 9, Page(s) e93–e98

    Abstract: Racial disparities in the utilization of epilepsy surgery are well documented, but it is unknown whether a natural language processing (NLP) algorithm trained on physician notes would produce biased recommendations for epilepsy presurgical evaluations. ... ...

    Abstract Racial disparities in the utilization of epilepsy surgery are well documented, but it is unknown whether a natural language processing (NLP) algorithm trained on physician notes would produce biased recommendations for epilepsy presurgical evaluations. To assess this, an NLP algorithm was trained to identify potential surgical candidates using 1097 notes from 175 epilepsy patients with a history of resective epilepsy surgery and 268 patients who achieved seizure freedom without surgery (total N = 443 patients). The model was tested on 8340 notes from 3776 patients with epilepsy whose surgical candidacy status was unknown (2029 male, 1747 female, median age = 9 years; age range = 0-60 years). Multiple linear regression using demographic variables as covariates was used to test for correlations between patient race and surgical candidacy scores. After accounting for other demographic and socioeconomic variables, patient race, gender, and primary language did not influence surgical candidacy scores (P > .35 for all). Higher scores were given to patients >18 years old who traveled farther to receive care, and those who had a higher family income and public insurance (P < .001, .001, .001, and .01, respectively). Demographic effects on surgical candidacy scores appeared to reflect patterns in patient referrals.
    MeSH term(s) Adolescent ; Adult ; Age Factors ; Algorithms ; Child ; Child, Preschool ; Electroencephalography ; Epilepsy/surgery ; Healthcare Disparities ; Humans ; Infant ; Machine Learning ; Middle Aged ; Patient Selection ; Prejudice ; Referral and Consultation ; Young Adult
    Language English
    Publishing date 2019-08-23
    Publishing country United States
    Document type Journal Article ; Research Support, N.I.H., Extramural ; Research Support, Non-U.S. Gov't
    ZDB-ID 216382-2
    ISSN 1528-1167 ; 0013-9580
    ISSN (online) 1528-1167
    ISSN 0013-9580
    DOI 10.1111/epi.16320
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  8. Article: An interactive online dashboard for tracking COVID-19 in U.S. counties, cities, and states in real time

    Wissel, Benjamin D / Van Camp, P J / Kouril, Michal / Weis, Chad / Glauser, Tracy A / White, Peter S / Kohane, Isaac S / Dexheimer, Judith W

    J Am Med Inform Assoc

    Abstract: OBJECTIVE: The study sought to create an online resource that informs the public of coronavirus disease 2019 (COVID-19) outbreaks in their area. MATERIALS AND METHODS: This R Shiny application aggregates data from multiple resources that track COVID-19 ... ...

    Abstract OBJECTIVE: The study sought to create an online resource that informs the public of coronavirus disease 2019 (COVID-19) outbreaks in their area. MATERIALS AND METHODS: This R Shiny application aggregates data from multiple resources that track COVID-19 and visualizes them through an interactive, online dashboard. RESULTS: The Web resource, called the COVID-19 Watcher, can be accessed online (https://covid19watcher.research.cchmc.org/). It displays COVID-19 data from every county and 188 metropolitan areas in the United States. Features include rankings of the worst-affected areas and auto-generating plots that depict temporal changes in testing capacity, cases, and deaths. DISCUSSION: The Centers for Disease Control and Prevention does not publish COVID-19 data for local municipalities, so it is critical that academic resources fill this void so the public can stay informed. The data used have limitations and likely underestimate the scale of the outbreak. CONCLUSIONS: The COVID-19 Watcher can provide the public with real-time updates of outbreaks in their area.
    Keywords covid19
    Publisher WHO
    Document type Article
    Note WHO #Covidence: #116250
    Database COVID19

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  9. Article ; Online: An interactive online dashboard for tracking COVID-19 in U.S. counties, cities, and states in real time

    Wissel, Benjamin D / Van Camp, P J / Kouril, Michal / Weis, Chad / Glauser, Tracy A / White, Peter S / Kohane, Isaac S / Dexheimer, Judith W

    Journal of the American Medical Informatics Association

    2020  Volume 27, Issue 7, Page(s) 1121–1125

    Abstract: Abstract Objective The study sought to create an online resource that informs the public of coronavirus disease 2019 (COVID-19) outbreaks in their area. Materials and Methods This R Shiny application aggregates data from multiple resources that track ... ...

    Abstract Abstract Objective The study sought to create an online resource that informs the public of coronavirus disease 2019 (COVID-19) outbreaks in their area. Materials and Methods This R Shiny application aggregates data from multiple resources that track COVID-19 and visualizes them through an interactive, online dashboard. Results The Web resource, called the COVID-19 Watcher, can be accessed online (https://covid19watcher.research.cchmc.org/). It displays COVID-19 data from every county and 188 metropolitan areas in the United States. Features include rankings of the worst-affected areas and auto-generating plots that depict temporal changes in testing capacity, cases, and deaths. Discussion The Centers for Disease Control and Prevention does not publish COVID-19 data for local municipalities, so it is critical that academic resources fill this void so the public can stay informed. The data used have limitations and likely underestimate the scale of the outbreak. Conclusions The COVID-19 Watcher can provide the public with real-time updates of outbreaks in their area.
    Keywords covid19
    Language English
    Publisher Oxford University Press (OUP)
    Publishing country uk
    Document type Article ; Online
    ZDB-ID 1205156-1
    ISSN 1527-974X ; 1067-5027
    ISSN (online) 1527-974X
    ISSN 1067-5027
    DOI 10.1093/jamia/ocaa071
    Database BASE - Bielefeld Academic Search Engine (life sciences selection)

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  10. Article ; Online: Prospective validation of a machine learning model that uses provider notes to identify candidates for resective epilepsy surgery.

    Wissel, Benjamin D / Greiner, Hansel M / Glauser, Tracy A / Holland-Bouley, Katherine D / Mangano, Francesco T / Santel, Daniel / Faist, Robert / Zhang, Nanhua / Pestian, John P / Szczesniak, Rhonda D / Dexheimer, Judith W

    Epilepsia

    2019  Volume 61, Issue 1, Page(s) 39–48

    Abstract: Objective: Delay to resective epilepsy surgery results in avoidable disease burden and increased risk of mortality. The objective was to prospectively validate a natural language processing (NLP) application that uses provider notes to assign epilepsy ... ...

    Abstract Objective: Delay to resective epilepsy surgery results in avoidable disease burden and increased risk of mortality. The objective was to prospectively validate a natural language processing (NLP) application that uses provider notes to assign epilepsy surgery candidacy scores.
    Methods: The application was trained on notes from (1) patients with a diagnosis of epilepsy and a history of resective epilepsy surgery and (2) patients who were seizure-free without surgery. The testing set included all patients with unknown surgical candidacy status and an upcoming neurology visit. Training and testing sets were updated weekly for 1 year. One- to three-word phrases contained in patients' notes were used as features. Patients prospectively identified by the application as candidates for surgery were manually reviewed by two epileptologists. Performance metrics were defined by comparing NLP-derived surgical candidacy scores with surgical candidacy status from expert chart review.
    Results: The training set was updated weekly and included notes from a mean of 519 ± 67 patients. The area under the receiver operating characteristic curve (AUC) from 10-fold cross-validation was 0.90 ± 0.04 (range = 0.83-0.96) and improved by 0.002 per week (P < .001) as new patients were added to the training set. Of the 6395 patients who visited the neurology clinic, 4211 (67%) were evaluated by the model. The prospective AUC on this test set was 0.79 (95% confidence interval [CI] = 0.62-0.96). Using the optimal surgical candidacy score threshold, sensitivity was 0.80 (95% CI = 0.29-0.99), specificity was 0.77 (95% CI = 0.64-0.88), positive predictive value was 0.25 (95% CI = 0.07-0.52), and negative predictive value was 0.98 (95% CI = 0.87-1.00). The number needed to screen was 5.6.
    Significance: An electronic health record-integrated NLP application can accurately assign surgical candidacy scores to patients in a clinical setting.
    MeSH term(s) Adolescent ; Adult ; Child ; Child, Preschool ; Decision Support Systems, Clinical ; Electronic Health Records ; Epilepsy/surgery ; Female ; Humans ; Infant ; Infant, Newborn ; Machine Learning ; Male ; Middle Aged ; Natural Language Processing ; Patient Selection ; Prospective Studies ; Young Adult
    Language English
    Publishing date 2019-11-29
    Publishing country United States
    Document type Journal Article ; Research Support, N.I.H., Extramural ; Research Support, U.S. Gov't, P.H.S. ; Validation Study
    ZDB-ID 216382-2
    ISSN 1528-1167 ; 0013-9580
    ISSN (online) 1528-1167
    ISSN 0013-9580
    DOI 10.1111/epi.16398
    Database MEDical Literature Analysis and Retrieval System OnLINE

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