Abstract

BackgroundThere are numerous barriers to identifying patients with silent brain infarcts (SBIs) and white matter disease (WMD) in routine clinical care. A natural language processing (NLP) algorithm may identify patients from neuroimaging reports, but it is unclear if these reports contain reliable information on these findings.MethodsFour radiology residents reviewed 1000 neuroimaging reports (RI) of patients age > 50 years without clinical histories of stroke, TIA, or dementia for the presence, acuity, and location of SBIs, and the presence and severity of WMD. Four neuroradiologists directly reviewed a subsample of 182 images (DR). An NLP algorithm was developed to identify findings in reports. We assessed interrater reliability for DR and RI, and agreement between these two and with NLP.ResultsFor DR, interrater reliability was moderate for the presence of SBIs (k = 0.58, 95 % CI 0.46–0.69) and WMD (k = 0.49, 95 % CI 0.35–0.63), and moderate to substantial for characteristics of SBI and WMD. Agreement between DR and RI was substantial for the presence of SBIs and WMD, and fair to substantial for characteristics of SBIs and WMD. Agreement between NLP and DR was substantial for the presence of SBIs (k = 0.64, 95 % CI 0.53–0.76) and moderate (k = 0.52, 95 % CI 0.39–0.65) for the presence of WMD.ConclusionsNeuroimaging reports in routine care capture the presence of SBIs and WMD. An NLP can identify these findings (comparable to direct imaging review) and can likely be used for cohort identification.

Highlights

  • Silent brain infarcts (SBIs) and white matter disease (WMD) present a conundrum in clinical practice and research

  • To assess the feasibility of using a text-based artificial intelligence (AI) to identify patients from electronic health records (EHRs), we assessed agreement between neuroimages directly reviewed by neuroradiologists and an natural language processing (NLP) algorithm, using report interpretation by radiologists as a link

  • Interrater reliability for report interpretation: link between direct review and NLP For RI, interrater reliability was almost perfect for most findings including SBI presence, SBI number, WMD presence, and WMD grade (Supplemental Table 1)

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Summary

Introduction

Silent brain infarcts (SBIs) and white matter disease (WMD) present a conundrum in clinical practice and research. Despite the development of consensus radiological definitions for SBIs and WMD, it is unclear how reliably these findings are reported in routine care [7]. It is uncertain whether an NLP algorithm can identify SBIs and WMD from neuroimaging reports in agreement with a neuroradiologist reviewing the neuroimages directly. There are numerous barriers to identifying patients with silent brain infarcts (SBIs) and white matter disease (WMD) in routine clinical care. A natural language processing (NLP) algorithm may identify patients from neuroimaging reports, but it is unclear if these reports contain reliable information on these findings

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