Effectiveness of neural language models for word prediction of textual mammography reports

Mihai David Marin, Elena Mocanu, C. Seifert
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引用次数: 1

Abstract

Radiologists are required to write free paper text reports for breast screenings in order to assign cancer diagnoses in a later step. The current procedure requires considerable time and needs efficiency. In this paper, to streamline the writing process and keep up with the specific vocabulary, a word prediction tool using neural language models was developed. Consequently, challenges as different languages (English, Dutch), small data sizes and low computational power have been overcome by introducing a novel English-Dutch Radiology Language Modelling process. After defining model architectures, the process involves data preparation, bilevel hyperparameters optimization, configuration transfer and evaluation. The model is able to improve the current workflow and successfully meet the computational constraints, based on both an intrinsic and extrinsic evaluation. Given its flexibility, the model opens the door for future research involving other languages and also an extensive set of real-world applications.
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神经语言模型对文本乳房x光检查报告词预测的有效性
放射科医生被要求为乳房筛查编写免费的纸质文本报告,以便在稍后的步骤中分配癌症诊断。目前的程序需要相当的时间和效率。为了简化写作过程并跟上特定的词汇量,本文开发了一个基于神经语言模型的单词预测工具。因此,通过引入一种新颖的英荷放射学语言建模过程,克服了不同语言(英语、荷兰语)、小数据量和低计算能力的挑战。在定义模型体系结构之后,该过程包括数据准备、双层超参数优化、配置传递和评估。该模型能够改进当前的工作流程,并成功地满足计算约束,基于内在和外在的评估。鉴于其灵活性,该模型为未来涉及其他语言的研究以及广泛的现实应用程序打开了大门。
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