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Using natural language processing and machine learning to identify breast cancer local recurrence
by
Roy, Ankita
, Clare, Susan E.
, Luo, Yuan
, Li, Xiaoyu
, Khan, Seema A.
, Jiang, Xia
, Zeng, Zexian
, Espino, Sasa
, Neapolitan, Richard
in
Algorithms
/ Analysis
/ Artificial intelligence
/ Automation
/ Bioinformatics
/ Biomarkers
/ Biomedical and Life Sciences
/ Breast cancer
/ Breast cancer local recurrence
/ Cancer
/ Cancer therapies
/ Care and treatment
/ Computational Biology/Bioinformatics
/ Computer Appl. in Life Sciences
/ EHR
/ Electronic health records
/ Language
/ Learning algorithms
/ Life Sciences
/ Machine learning
/ Medicare
/ Microarrays
/ Natural language processing
/ NLP
/ Pathology
/ Patients
/ Prediction models
/ Researchers
/ Risk factors
/ Sentences
/ Studies
/ Support vector machines
/ SVM
/ Training
/ Women's health
2018
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Using natural language processing and machine learning to identify breast cancer local recurrence
by
Roy, Ankita
, Clare, Susan E.
, Luo, Yuan
, Li, Xiaoyu
, Khan, Seema A.
, Jiang, Xia
, Zeng, Zexian
, Espino, Sasa
, Neapolitan, Richard
in
Algorithms
/ Analysis
/ Artificial intelligence
/ Automation
/ Bioinformatics
/ Biomarkers
/ Biomedical and Life Sciences
/ Breast cancer
/ Breast cancer local recurrence
/ Cancer
/ Cancer therapies
/ Care and treatment
/ Computational Biology/Bioinformatics
/ Computer Appl. in Life Sciences
/ EHR
/ Electronic health records
/ Language
/ Learning algorithms
/ Life Sciences
/ Machine learning
/ Medicare
/ Microarrays
/ Natural language processing
/ NLP
/ Pathology
/ Patients
/ Prediction models
/ Researchers
/ Risk factors
/ Sentences
/ Studies
/ Support vector machines
/ SVM
/ Training
/ Women's health
2018
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Do you wish to request the book?
Using natural language processing and machine learning to identify breast cancer local recurrence
by
Roy, Ankita
, Clare, Susan E.
, Luo, Yuan
, Li, Xiaoyu
, Khan, Seema A.
, Jiang, Xia
, Zeng, Zexian
, Espino, Sasa
, Neapolitan, Richard
in
Algorithms
/ Analysis
/ Artificial intelligence
/ Automation
/ Bioinformatics
/ Biomarkers
/ Biomedical and Life Sciences
/ Breast cancer
/ Breast cancer local recurrence
/ Cancer
/ Cancer therapies
/ Care and treatment
/ Computational Biology/Bioinformatics
/ Computer Appl. in Life Sciences
/ EHR
/ Electronic health records
/ Language
/ Learning algorithms
/ Life Sciences
/ Machine learning
/ Medicare
/ Microarrays
/ Natural language processing
/ NLP
/ Pathology
/ Patients
/ Prediction models
/ Researchers
/ Risk factors
/ Sentences
/ Studies
/ Support vector machines
/ SVM
/ Training
/ Women's health
2018
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Using natural language processing and machine learning to identify breast cancer local recurrence
Journal Article
Using natural language processing and machine learning to identify breast cancer local recurrence
2018
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Overview
Background
Identifying local recurrences in breast cancer from patient data sets is important for clinical research and practice. Developing a model using natural language processing and machine learning to identify local recurrences in breast cancer patients can reduce the time-consuming work of a manual chart review.
Methods
We design a novel concept-based filter and a prediction model to detect local recurrences using EHRs. In the training dataset, we manually review a development corpus of 50 progress notes and extract partial sentences that indicate breast cancer local recurrence. We process these partial sentences to obtain a set of Unified Medical Language System (UMLS) concepts using MetaMap, and we call it positive concept set. We apply MetaMap on patients’ progress notes and retain only the concepts that fall within the positive concept set. These features combined with the number of pathology reports recorded for each patient are used to train a support vector machine to identify local recurrences.
Results
We compared our model with three baseline classifiers using either full MetaMap concepts, filtered MetaMap concepts, or bag of words. Our model achieved the best AUC (0.93 in cross-validation, 0.87 in held-out testing).
Conclusions
Compared to a labor-intensive chart review, our model provides an automated way to identify breast cancer local recurrences. We expect that by minimally adapting the positive concept set, this study has the potential to be replicated at other institutions with a moderately sized training dataset.
Publisher
BioMed Central,BioMed Central Ltd,Springer Nature B.V,BMC
Subject
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