Does integrating administrative claims data with rule-based NLP algorithms improve the accuracy of pulmonary embolism detection in hospitalized patients?
1,712 hospitalized patients (with and without pulmonary embolism) at Mass General Brigham hospitals (2016-2021), with weighted estimates derived from a cohort of 381,642 hospitalized patients.
Approach C: Rule-based NLP algorithms applied to radiology reports of patients with PE discharge codes or a Present-on-Admission (POA) indicator ('Y') for PE.
Approach A (NLP applied to all patients) and Approach B (NLP limited to radiology reports of patients with principal or secondary ICD-10 PE discharge codes).
F1 scores (harmonic mean of sensitivity and positive predictive value) for pulmonary embolism detection compared to physician chart review.surrogate
Integrating administrative claims data with radiology report NLP algorithms significantly improves the accuracy (F1 score) of pulmonary embolism detection by reducing false positives while maintaining high sensitivity.
Rule-based natural language processing (NLP) tools can identify pulmonary embolism (PE) via radiology reports. However, their external validity remains uncertain.In this cross-sectional study, 1,712 hospitalized patients (with and without PE) at Mass General Brigham (MGB) hospitals (2016-2021) were analyzed. Two previously published NLP algorithms were applied to radiology reports to identify PE. Chart review by two physicians was the reference standard. We tested three approaches: (A) NLP applied to all patients; (B) NLP limited to radiology reports of patients with principal or secondary International Classification of Diseases 10th revision (ICD-10) PE discharge codes; and (C) NLP applied to patients with PE discharge codes or a Present-on-Admission (POA) indicator ("Y") for PE. All others were assumed PE-negative in Approaches B and C to minimize NLP false positives. Weighted estimates were derived from the MGB hospitalized cohort (n = 381,642) to calculate F1 scores (as the harmonic mean of sensitivity and positive predictive value PPV).In Approach A, both NLP tools showed high sensitivity (82.5%, 93.0%) and specificity (98.9%, 98.7%) but low PPV (60.3%, 59.6%). Approach B improved PPV (95.2%, 94.9%) but reduced sensitivity (74.1%, 76.2%), while Approach C preserved both high sensitivity (82.5%, 93.0%) and PPV (95.6%, 95.8%). Approach C demonstrated the best performance, yielding significantly higher F1 scores for both NLP tools (88.6%, 94.4%) compared with Approach A (69.7%, 72.6%) and Approach B (83.3%, 84.5%) (P < 0.001).The accuracy of PE detection improves when rule-based NLP algorithms are operationalized using administrative claims data in addition to radiology reports.
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Sina Rashedi
Syed Bukhari
Darsiya Krishnathasan
Thrombosis and Haemostasis
Harvard University
Johns Hopkins University
Yale University
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Rashedi et al. (Wed,) studied this question.
www.synapsesocial.com/papers/69a75becc6e9836116a24221 — DOI: https://doi.org/10.1055/a-2796-1975
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