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Development of a Structured Query Language and Natural Language Processing Algorithm to Identify Lung Nodules in a Cancer Centre
by
Reis, Sara
, Matharu, Sheila
, Ratnakumar, Prashanthi
, Bloch, Susannah
, Mercuri, Luca
, Al-Lazikani, Bisan
, Hunter, Benjamin
, Kalsi, Hardeep
, Glampson, Ben
, Robinson, Emily J.
, Campbell, Des
, Mayer, Erik
, Hindocha, Sumeet
, Scerri, Lisa
, Lee, Richard
in
Accuracy
/ Algorithms
/ Cancer
/ Data processing
/ Datasets
/ Deep learning
/ Hospitals
/ Informatics
/ Language
/ lung nodule
/ Machine learning
/ Medical imaging
/ Medicine
/ Metastasis
/ Natural language processing
/ natural language processing (NLP)
/ Online transaction processing
/ Patients
/ Structured Query Language-SQL
2021
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Development of a Structured Query Language and Natural Language Processing Algorithm to Identify Lung Nodules in a Cancer Centre
by
Reis, Sara
, Matharu, Sheila
, Ratnakumar, Prashanthi
, Bloch, Susannah
, Mercuri, Luca
, Al-Lazikani, Bisan
, Hunter, Benjamin
, Kalsi, Hardeep
, Glampson, Ben
, Robinson, Emily J.
, Campbell, Des
, Mayer, Erik
, Hindocha, Sumeet
, Scerri, Lisa
, Lee, Richard
in
Accuracy
/ Algorithms
/ Cancer
/ Data processing
/ Datasets
/ Deep learning
/ Hospitals
/ Informatics
/ Language
/ lung nodule
/ Machine learning
/ Medical imaging
/ Medicine
/ Metastasis
/ Natural language processing
/ natural language processing (NLP)
/ Online transaction processing
/ Patients
/ Structured Query Language-SQL
2021
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Development of a Structured Query Language and Natural Language Processing Algorithm to Identify Lung Nodules in a Cancer Centre
by
Reis, Sara
, Matharu, Sheila
, Ratnakumar, Prashanthi
, Bloch, Susannah
, Mercuri, Luca
, Al-Lazikani, Bisan
, Hunter, Benjamin
, Kalsi, Hardeep
, Glampson, Ben
, Robinson, Emily J.
, Campbell, Des
, Mayer, Erik
, Hindocha, Sumeet
, Scerri, Lisa
, Lee, Richard
in
Accuracy
/ Algorithms
/ Cancer
/ Data processing
/ Datasets
/ Deep learning
/ Hospitals
/ Informatics
/ Language
/ lung nodule
/ Machine learning
/ Medical imaging
/ Medicine
/ Metastasis
/ Natural language processing
/ natural language processing (NLP)
/ Online transaction processing
/ Patients
/ Structured Query Language-SQL
2021
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Development of a Structured Query Language and Natural Language Processing Algorithm to Identify Lung Nodules in a Cancer Centre
Journal Article
Development of a Structured Query Language and Natural Language Processing Algorithm to Identify Lung Nodules in a Cancer Centre
2021
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Overview
Importance:
The stratification of indeterminate lung nodules is a growing problem, but the burden of lung nodules on healthcare services is not well-described. Manual service evaluation and research cohort curation can be time-consuming and potentially improved by automation.
Objective:
To automate lung nodule identification in a tertiary cancer centre.
Methods:
This retrospective cohort study used Electronic Healthcare Records to identify CT reports generated between 31st October 2011 and 24th July 2020. A structured query language/natural language processing tool was developed to classify reports according to lung nodule status. Performance was externally validated. Sentences were used to train machine-learning classifiers to predict concerning nodule features in 2,000 patients.
Results:
14,586 patients with lung nodules were identified. The cancer types most commonly associated with lung nodules were lung (39%), neuro-endocrine (38%), skin (35%), colorectal (33%) and sarcoma (33%). Lung nodule patients had a greater proportion of metastatic diagnoses (45 vs. 23%,
p
< 0.001), a higher mean post-baseline scan number (6.56 vs. 1.93,
p
< 0.001), and a shorter mean scan interval (4.1 vs. 5.9 months,
p
< 0.001) than those without nodules. Inter-observer agreement for sentence classification was 0.94 internally and 0.98 externally. Sensitivity and specificity for nodule identification were 93 and 99% internally, and 100 and 100% at external validation, respectively. A linear-support vector machine model predicted concerning sentence features with 94% accuracy.
Conclusion:
We have developed and validated an accurate tool for automated lung nodule identification that is valuable for service evaluation and research data acquisition.
Publisher
Frontiers Media SA,Frontiers Media S.A
Subject
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