Automatic generation of conclusions from neuroradiology MRI reports through natural language processing

被引:1
作者
Lopez-Ubeda, Pilar [1 ]
Martin-Noguerol, Teodoro [2 ]
Escartin, Jorge [3 ]
Luna, Antonio [2 ]
机构
[1] HT Medica, NLP Dept, Carmelo Torres 2, Jaen 23007, Spain
[2] HT Medica, Radiol Dept, MRI Unit, Carmelo Torres 2, Jaen 23007, Spain
[3] HT Medica, HT Med, Paseo Victoria S-N, Cordoba 14004, Spain
关键词
Natural language processing; Machine learning; Informatics; Neuroradiology; Text summarization;
D O I
10.1007/s00234-024-03312-3
中图分类号
R74 [神经病学与精神病学];
学科分类号
摘要
PurposeThe conclusion section of a radiology report is crucial for summarizing the primary radiological findings in natural language and essential for communicating results to clinicians. However, creating these summaries is time-consuming, repetitive, and prone to variability and errors among different radiologists. To address these issues, we evaluated a fine-tuned Text-To-Text Transfer Transformer (T5) model for abstractive summarization to automatically generate conclusions for neuroradiology MRI reports in a low-resource language.MethodsWe retrospectively applied our method to a dataset of 232,425 neuroradiology MRI reports in Spanish. We compared various pre-trained T5 models, including multilingual T5 and those newly adapted for Spanish. For precise evaluation, we employed BLEU, METEOR, ROUGE-L, CIDEr, and cosine similarity metrics alongside expert radiologist assessments.ResultsThe findings are promising, with the models specifically fine-tuned for neuroradiology MRI achieving scores of 0.46, 0.28, 0.52, 2.45, and 0.87 in the BLEU-1, METEOR, ROUGE-L, CIDEr, and cosine similarity metrics, respectively. In the radiological experts' evaluation, they found that in 75% of the cases evaluated, the conclusions generated by the system were as good as or even better than the manually generated conclusions.ConclusionThe methods demonstrate the potential and effectiveness of customizing state-of-the-art pre-trained models for neuroradiology, yielding automatic MRI report conclusions that nearly match expert quality. Furthermore, these results underscore the importance of designing and pre-training a dedicated language model for radiology report summarization.
引用
收藏
页码:477 / 485
页数:9
相关论文
共 37 条
[1]  
Abdaoui A, 2020, ARXIV
[2]  
Banerjee Satanjeev, 2005, P ACL WORKSHOP INTRI
[3]   Radiology reporting-from Hemingway to HAL? [J].
Brady, Adrian P. .
INSIGHTS INTO IMAGING, 2018, 9 (02) :237-246
[4]  
Chopra S., 2016, P 2016 C N AM CHAPT, P93
[5]   RADIOLOGY REPORTING - ATTITUDES OF REFERRING PHYSICIANS [J].
CLINGER, NJ ;
HUNTER, TB ;
HILLMAN, BJ .
RADIOLOGY, 1988, 169 (03) :825-826
[6]  
ESR, 2011, INSIGHTS IMAGING, V2, P93, DOI 10.1007/s13244-011-0066-7
[7]  
Gao Yanjun, 2022, Proc Int Conf Comput Ling, V2022, P2979
[8]   Automated Radiology Report Summarization Using an Open-Source Natural Language Processing Pipeline [J].
Goff, Daniel J. ;
Loehfelm, Thomas W. .
JOURNAL OF DIGITAL IMAGING, 2018, 31 (02) :185-192
[9]   How to Create a Great Radiology Report [J].
Hartung, Michael P. ;
Bickle, Ian C. ;
Gaillard, Frank ;
Kanne, Jeffrey P. .
RADIOGRAPHICS, 2020, 40 (06) :1658-1670
[10]   Information extraction from multi-institutional radiology reports [J].
Hassanpour, Saeed ;
Langlotz, Curtis P. .
ARTIFICIAL INTELLIGENCE IN MEDICINE, 2016, 66 :29-39