Weakly supervised spatial relation extraction from radiology reports.

IF 2.5 Q2 HEALTH CARE SCIENCES & SERVICES JAMIA Open Pub Date : 2023-07-01 DOI:10.1093/jamiaopen/ooad027
Surabhi Datta, Kirk Roberts
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引用次数: 2

Abstract

Objective: Weak supervision holds significant promise to improve clinical natural language processing by leveraging domain resources and expertise instead of large manually annotated datasets alone. Here, our objective is to evaluate a weak supervision approach to extract spatial information from radiology reports.

Materials and methods: Our weak supervision approach is based on data programming that uses rules (or labeling functions) relying on domain-specific dictionaries and radiology language characteristics to generate weak labels. The labels correspond to different spatial relations that are critical to understanding radiology reports. These weak labels are then used to fine-tune a pretrained Bidirectional Encoder Representations from Transformers (BERT) model.

Results: Our weakly supervised BERT model provided satisfactory results in extracting spatial relations without manual annotations for training (spatial trigger F1: 72.89, relation F1: 52.47). When this model is further fine-tuned on manual annotations (relation F1: 68.76), performance surpasses the fully supervised state-of-the-art.

Discussion: To our knowledge, this is the first work to automatically create detailed weak labels corresponding to radiological information of clinical significance. Our data programming approach is (1) adaptable as the labeling functions can be updated with relatively little manual effort to incorporate more variations in radiology language reporting formats and (2) generalizable as these functions can be applied across multiple radiology subdomains in most cases.

Conclusions: We demonstrate a weakly supervision model performs sufficiently well in identifying a variety of relations from radiology text without manual annotations, while exceeding state-of-the-art results when annotated data are available.

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从放射学报告中提取弱监督空间关系。
目的:弱监督通过利用领域资源和专业知识来改善临床自然语言处理,而不是单独使用大型手动注释数据集。在这里,我们的目的是评估从放射学报告中提取空间信息的弱监督方法。材料和方法:我们的弱监督方法基于数据编程,使用依赖于领域特定字典和放射学语言特征的规则(或标记函数)来生成弱标签。标签对应不同的空间关系,这对理解放射学报告至关重要。然后使用这些弱标签来微调预训练的双向编码器表示从变压器(BERT)模型。结果:我们的弱监督BERT模型在不需要人工标注的情况下提取空间关系获得了令人满意的结果(空间触发F1: 72.89,关系F1: 52.47)。当这个模型在手动注释(关系F1: 68.76)上进一步微调时,性能超过了完全监督的最先进状态。讨论:据我们所知,这是第一个自动创建与临床意义的放射信息相对应的详细弱标签的工作。我们的数据编程方法具有以下特点:(1)适应性强,因为标签功能可以通过相对较少的手工工作进行更新,以纳入放射学语言报告格式的更多变化;(2)可泛化,因为这些功能在大多数情况下可以应用于多个放射学子领域。结论:我们证明弱监督模型在没有人工注释的情况下从放射学文本中识别各种关系方面表现得足够好,而当有注释数据可用时,其结果优于最先进的结果。
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来源期刊
JAMIA Open
JAMIA Open Medicine-Health Informatics
CiteScore
4.10
自引率
4.80%
发文量
102
审稿时长
16 weeks
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