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Transformer-based structuring of free-text radiology report databases
OBJECTIVES: To provide insights for on-site development of transformer-based structuring of free-text report databases by investigating different labeling and pre-training strategies. METHODS: A total of 93,368 German chest X-ray reports from 20,912 intensive care unit (ICU) patients were included....
Autores principales: | , , , , , , , , , |
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Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Springer Berlin Heidelberg
2023
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Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10181962/ https://www.ncbi.nlm.nih.gov/pubmed/36905469 http://dx.doi.org/10.1007/s00330-023-09526-y |
Sumario: | OBJECTIVES: To provide insights for on-site development of transformer-based structuring of free-text report databases by investigating different labeling and pre-training strategies. METHODS: A total of 93,368 German chest X-ray reports from 20,912 intensive care unit (ICU) patients were included. Two labeling strategies were investigated to tag six findings of the attending radiologist. First, a system based on human-defined rules was applied for annotation of all reports (termed “silver labels”). Second, 18,000 reports were manually annotated in 197 h (termed “gold labels”) of which 10% were used for testing. An on-site pre-trained model (T(mlm)) using masked-language modeling (MLM) was compared to a public, medically pre-trained model (T(med)). Both models were fine-tuned on silver labels only, gold labels only, and first with silver and then gold labels (hybrid training) for text classification, using varying numbers (N: 500, 1000, 2000, 3500, 7000, 14,580) of gold labels. Macro-averaged F1-scores (MAF1) in percent were calculated with 95% confidence intervals (CI). RESULTS: T(mlm,gold) (95.5 [94.5–96.3]) showed significantly higher MAF1 than T(med,silver) (75.0 [73.4–76.5]) and T(mlm,silver) (75.2 [73.6–76.7]), but not significantly higher MAF1 than T(med,gold) (94.7 [93.6–95.6]), T(med,hybrid) (94.9 [93.9–95.8]), and T(mlm,hybrid) (95.2 [94.3–96.0]). When using 7000 or less gold-labeled reports, T(mlm,gold) (N: 7000, 94.7 [93.5–95.7]) showed significantly higher MAF1 than T(med,gold) (N: 7000, 91.5 [90.0–92.8]). With at least 2000 gold-labeled reports, utilizing silver labels did not lead to significant improvement of T(mlm,hybrid) (N: 2000, 91.8 [90.4–93.2]) over T(mlm,gold) (N: 2000, 91.4 [89.9–92.8]). CONCLUSIONS: Custom pre-training of transformers and fine-tuning on manual annotations promises to be an efficient strategy to unlock report databases for data-driven medicine. KEY POINTS: • On-site development of natural language processing methods that retrospectively unlock free-text databases of radiology clinics for data-driven medicine is of great interest. • For clinics seeking to develop methods on-site for retrospective structuring of a report database of a certain department, it remains unclear which of previously proposed strategies for labeling reports and pre-training models is the most appropriate in context of, e.g., available annotator time. • Using a custom pre-trained transformer model, along with a little annotation effort, promises to be an efficient way to retrospectively structure radiological databases, even if not millions of reports are available for pre-training. SUPPLEMENTARY INFORMATION: The online version contains supplementary material available at 10.1007/s00330-023-09526-y. |
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