Linton Anna-Grace, Dimitrova Vania Gatseva, Downing Amy, Wagland Richard, Glaser Adam W
UKRI CDT in AI for Medical Diagnosis and Care, University of Leeds, Leeds, United Kingdom.
School of Computing, University of Leeds, Leeds, United Kingdom.
Front Digit Health. 2025 Apr 30;7:1345360. doi: 10.3389/fdgth.2025.1345360. eCollection 2025.
Free-text comments in patient-reported outcome measures (PROMs) data provide insights into health-related quality of life (HRQoL). However, these comments are typically analysed using manual methods, such as content analysis, which is labour-intensive and time-consuming. Machine learning analysis methods are largely unsupervised, necessitating post-analysis interpretation. Weakly supervised text classification (WSTC) can be a valuable analytical method of analysis for classifying domain-specific text data, especially when limited labelled data are available. In this paper, we applied five WSTC techniques to PROMs comment data to explore the extent to which they can be used to identify HRQoL themes reported by patients with prostate and colorectal cancer.
The main HRQoL themes and associated keywords were identified from a scoping review. They were used to classify PROMs comments with these themes from two national PROMs datasets: colorectal cancer ( = 5,634) and prostate cancer ( = 59,768). Classification was done using five keyword-based WSTC methods (anchored CorEx, BERTopic, Guided LDA, WeSTClass, and X-Class). To evaluate these methods, we assessed the overall performance of the methods and by theme. Domain experts reviewed the interpretability of the methods using the keywords extracted from the methods during training.
Based on the 12 papers identified in the scoping review, we determined six main themes and corresponding keywords to label PROMs comments using WSTC methods. These themes were: Comorbidities, Daily Life, Health Pathways and Services, Physical Function, Psychological and Emotional Function, and Social Function. The performance of the methods varied across themes and between the datasets. While the best-performing model for both datasets, CorEx, attained weighted F1 scores of 0.57 (colorectal cancer) and 0.61 (prostate cancer), methods achieved an F1 score of up to 0.92 (Social Function) on individual themes. By evaluating the keywords extracted from the trained models, we saw that the methods that can utilise expert-driven seed terms and extrapolate based on limited data performed the best.
Overall, evaluating these WSTC methods provided insight into their applicability for analysing PROMs comments. Evaluating the classification performance illustrated the potential and limitations of keyword-based WSTC in labelling PROMs comments when labelled data are limited.
患者报告结局测量(PROMs)数据中的自由文本评论提供了有关健康相关生活质量(HRQoL)的见解。然而,这些评论通常使用人工方法进行分析,如内容分析,这既费力又耗时。机器学习分析方法在很大程度上是无监督的,需要进行分析后解释。弱监督文本分类(WSTC)对于特定领域文本数据的分类可能是一种有价值的分析方法,尤其是在可用标记数据有限的情况下。在本文中,我们将五种WSTC技术应用于PROMs评论数据,以探讨它们在多大程度上可用于识别前列腺癌和结直肠癌患者报告的HRQoL主题。
通过范围综述确定主要的HRQoL主题和相关关键词。它们被用于对来自两个国家PROMs数据集的具有这些主题的PROMs评论进行分类:结直肠癌(n = 5634)和前列腺癌(n = 59768)。使用五种基于关键词的WSTC方法(锚定CorEx、BERTopic、引导式LDA、WeSTClass和X-Class)进行分类。为了评估这些方法,我们评估了方法的整体性能以及按主题的性能。领域专家使用训练期间从方法中提取的关键词来审查方法的可解释性。
基于范围综述中确定的12篇论文,我们确定了六个主要主题和相应的关键词,以使用WSTC方法标记PROMs评论。这些主题是:合并症、日常生活、健康途径和服务、身体功能、心理和情感功能以及社会功能。方法的性能在不同主题和数据集之间有所不同。虽然两个数据集表现最佳的模型CorEx在结直肠癌中的加权F1分数为0.57,在前列腺癌中为0.61,但各方法在个别主题上的F1分数高达0.92(社会功能)。通过评估从训练模型中提取的关键词,我们发现能够利用专家驱动的种子术语并基于有限数据进行推断的方法表现最佳。
总体而言,评估这些WSTC方法提供了对其分析PROMs评论适用性的见解。评估分类性能说明了在标记数据有限时基于关键词的WSTC在标记PROMs评论方面的潜力和局限性。